- 1School of Arts and Design, Yanshan University, Qinhuangdao, China
- 2Department of Humanities and Social Sciences, Hebei University of Environmental Engineering, Qinhuangdao, China
Introduction: How to scientifically assess the health status of cities and effectively assist in formulating policies and planning for health city development remains a profound challenge in building a global “health community.”
Methods: This study employs the Building Research Establishment’s International Healthy Cities Index (BRE HCI), encompassing ten environmental categories and fifty-eight indicators, to guide and support the scientific development of healthy cities. The entropy weight-TOPSIS method and the rank sum ratio (RSR) method were applied to comprehensively rank and categorize the health development levels of fifteen global cities. Furthermore, through cluster analysis, this research identifies universal and unique indicators that influence the development of healthy cities.
Results: The results indicate that: (1) Within the scope of 58 evaluation indicators, the precedence in weight allocation is accorded to the kilometres of bicycle paths and lanes per 100,000 population (0.068), succeeded by m2 of public indoor recreation space per capita (0.047), and kilometres of bicycle paths and lanes per 100,000 population (0.042). (2) Among the ten environmental categories, the top three in terms of weight ranking are transport (0.239), leisure and recreation (0.172), and resilience (0.125). Significant disparities exist between different cities and environmental categories, with the issue of uneven health development within cities being particularly prominent. (3) The study categorizes the development levels of healthy cities into three tiers based on composite scores: it classifies Singapore, Shanghai, and Amsterdam at an excellent level; places Dubai and Johannesburg at a comparatively poor level; and situates the remaining ten cities at a moderate level. (4) The analysis identifies 53 international common indicators and 5 characteristic indicators from the 58 indicators based on the significance of the clustering analysis (p < 0.05).
Discussion: The study proposes four strategic recommendations based on these findings: establishing a comprehensive policy assurance system, refining urban spatial planning, expanding avenues for multi-party participation, and augmenting distinctive health indicators. These measures aim to narrow the developmental disparities between cities and contribute to healthy global cities’ balanced and sustainable growth. However, due to existing limitations in sample selection, research methodology application, and the control of potential confounding variables, further in-depth studies are required in the future.
1 Introduction
The rapid development of urbanization globally has significantly improved residents’ material standard of living and quality of life. However, it has also presented unprecedented threats and challenges to public health and safety. These challenges include environmental pollution caused by industrial production, motorized transportation, and the spread of diseases triggered by population concentration and mobility, among other urban issues (1). According to the United Nations “World Population Prospects 2022,” the global urban population is expected to grow from 3.3 billion in 2007 to 6.3 billion by 2050 (2). This exponential population growth sharpens the contradiction between urban development and human health. In this context, the construction of healthy cities, as an effective strategy for managing “urban diseases,” has garnered widespread attention worldwide (3). To effectively address global health challenges, it is crucial to accurately understand the trends in urban health development worldwide, evaluate urban health status, identify health issues and weaknesses, design and implement targeted measures, and monitor and provide feedback on their effectiveness. This comprehensive process constitutes the evaluation framework for healthy cities and is an essential policy tool. As a tool for comprehensively measuring the health levels of urban residents and evaluating the factors influencing urban environmental health, the healthy city assessment index system plays a leading and guiding role in meeting the urgent need for continuous improvement and promoting high-quality development of healthy cities.
“Healthy City” originated from the survey Report on the Health status of the British Working Population published by the British scholar Edwin Chadwick in 1842, followed by the establishment of the British Healthy Cities Association (4). In 1984, the World Health Organization (WHO) first proposed the concept of a “healthy city” at the “Health Toronto 2000” conference in Canada, calling for extensive cooperation between departments, institutions and the public to address health cities and health-related issues (5). In 1986, the WHO launched the Healthy Cities Project (6), which aims to improve public health and public health through urban planning. In 1994, WHO defined a healthy city as “a healthy city that continuously develops, develops the natural and social environment, and expands social resources so that people can support each other in enjoying life and exerting their full potential” (7). Since then, the global concept has carried out research on health-supportive environment building (8), health impact assessment (9), health cities planning (10), developed health cities plans and launched a health cities campaign. So far, the campaign has covered (11) in 7,500 cities worldwide.
Developing an evaluation system for healthy cities, based on the concept of “Healthy City, “is an indispensable policy tool to guide the construction of healthy cities (12). By utilizing indicators to measure the health status of cities, the system provides a deeper understanding of the level of health of city development. It reveals the gap with the ultimate goals of “Healthy Cities.” As such, it plays a crucial role in guiding the construction of healthy cities and acting as a benchmark for progress (13). The WHO European Healthy Cities Network introduced 53 Healthy Cities Indicators (HCIs) in 1992, which marked the first systematic collection and analysis of health city data in Europe (14). Further refinement, building on this initial analysis, identified core indicators that are more closely and effectively related to healthy cities, thus optimizing the list to 32 secondary indicators (15). These indicators include qualitative and quantitative data to facilitate comprehensive and feasible data collection. Based on this framework, scholars have developed indicator systems focused on sustainable development (16), eco-cities (17), low-carbon cities (18), and smart cities (19) to measure the sustainable development and ecological livability of healthy cities. However, these indicators primarily focus on sustainable development capabilities and the ecological environment, with less attention given to cities’ overall health development status.
Current evaluative research on the ‘healthy cities’ developmental level predominantly focuses on three aspects. Firstly, grounded in public health ideology, emphasis is placed on the public health status at national or regional levels. The World Health Organization 2015 published the “Global Reference List of 100 Core Health Indicators” (20), which organizes these indicators into four analytical categories: inputs and processes, outputs, outcomes, and impacts. This framework enables stakeholders to comprehend the interconnectivity among indicators and their respective roles in the regulatory mechanisms of health city systems, thus facilitating the formulation of more effective intervention strategies. In response to the State Council of China’s directive for “establishing a health cities construction indicator and evaluation system suited to our national conditions,” as stated in the “Opinions on Further Strengthening Patriotic Health Work in the New Era” from 2018, the Chinese Patriotic Health Campaign Committee devised an indicator system for healthful urban environments that reflects China’s unique socio-economic context (21). Secondly, based on the concept of significant health, the index setting is no longer limited to the field of public health; it pays attention to the three dimensions of various health-influencing factors, health services, and health status. For example, Remington P L et al. established the US County Health Ranking Index (County Health Rankings, CHR) based on health outcomes and factors to quantify the health differences (22) between counties and counties in the United States. Barboza et al. quantitatively assesses the health effects (23) of different types of green space exposure in 980 cities in 31 European countries. Third, a comprehensive set of indicators is employed to form a holistic assessment based on the broad concepts of health and sustainable development, encompassing multiple dimensions such as socio-economics, industrial employment, education, culture, and public safety. For example, Lv et al. (24) used the full-array polygon (EAP) method to evaluate and compare the environment, economy, population, service, space and overall health status of the typical cities in China. Yan et al. (25) analyzed the health status of 258 cities in China, using the perspective of a healthy environment, healthy society, health services, healthy population, healthy economy and healthy culture. Pineo et al. (26) adopted the Delphi expert consultation method, cooperation with pilot cities, and continuous improvement to establish the international Healthy Cities Index evaluation system (BRE HCI). They evaluated the healthy development of different global cities through two weight systems to provide a scientific basis for formulating more perfect health city planning policies.
Existing literature indicates that current research on the evaluation of healthy cities is predominantly limited to single countries, individual cities, and specific urban clusters, lacking comparative analysis across cities from different countries globally. Additionally, in terms of evaluation methodologies, existing studies either entirely rely on quantified statistical data or employ expert consultation to select evaluation systems, which are then combined with methods such as the Analytic Hierarchy Process (AHP), Entropy Weight method, and TOPSIS method to determine indicator weights and calculate comprehensive level values. However, these studies often depend on a singular evaluation method, which may not accurately or comprehensively reflect the developmental levels of healthy cities. Therefore, we recommend fully leveraging the complementary advantages of various evaluation methods to conduct a more comprehensive assessment (27). By integrating the Entropy Weight Method with the TOPSIS method, it is possible to eliminate the effects of differing units of measurement, and the approach does not impose specific restrictions on sample size or data distribution. However, this combined method does not categorize or tier the sample results. The rank sum ratio (RSR) method can address the categorization and tiering that the Entropy-TOPSIS method does not fulfill. Nevertheless, due to its non-parametric transformation, the RSR method can result in the loss of original data, a deficiency that the Entropy-TOPSIS method can rectify. The synergistic application of the Entropy-TOPSIS and RSR methods can overcome the limitations inherent in single evaluation approaches, rendering the assessment results more objective and applicable.
The study is based on 707 cities that were part of the Globalization and World Cities Research Network (GaWC) ranking in 2020. It considers the characteristics of the research area’s high integration with the global economy and the availability of indicator data to select 15 cities as the research subjects. The entropy weight-TOPSIS and rank sum ratio methods are comprehensively applied to evaluate these cities’ health development levels. The aim was to identify and analyze the differences in health development levels among global cities, assist urban management departments in accurately pinpointing strengths and issues, and reasonably assess and diagnose the overall health levels and deficiencies of the sample cities. Further, cluster analysis identifies common and unique indicators for evaluating cities’ health across different countries to implement city-specific policies. This approach provides pathways and scientific strategies for healthy city planning, optimizes the healthy city development goals, makes up for the shortcomings of healthy city construction, and tackles prominent issues of uneven health city development, which is conducive to the realization of the goal of promoting sustainable development of living environment.
2 Materials and methods
2.1 Study area and indicators selection
2.1.1 Study area
Based on the city classification standards developed by the Globalization and World Cities Research Network (GaWC), major cities worldwide are categorized into Alpha, Beta, and Gamma levels according to their connectivity with the global economy (28). Alpha-level cities are major metropolises that play a leading role in global political, economic, and other social activities and can influence and drive development. A city’s economic advantages can create a siphon effect, attracting a large influx of high-quality talent (29) and capital (30), making it easier for these cities to finance, construct, and maintain public infrastructure (31), offering higher-quality health services, social support, and welfare programs. Such developments can contribute to reducing social inequalities and enhancing the overall health literacy of residents. Additionally, Alpha-level cities often serve as pioneers in constructing healthy cities, and their successful experiences and strategies can offer valuable references and lessons for other cities. Thus, considering the potential impact of economic development levels on the construction of healthy cities and data availability, 15 Alpha-level cities closely linked to the world’s major economic regions with significant economic growth were selected as research cases. These cities include Amsterdam, Boston, Buenos Aires, Dubai, Johannesburg, London, Los Angeles, Melbourne, New York, Paris, Santiago, Shanghai, Singapore, Tokyo, and Toronto. Their geographic locations are illustrated in Figure 1.
2.1.2 Selection of the evaluation system
The research adheres to scientific rigor, systematic analysis, and operational feasibility principles. It utilizes the evaluation indicator system of 10 environmental categories and 58 indicators from the Building Research Establishment’s International Healthy Cities Index (BRE HCI). This index offers a comprehensive assessment framework covering multiple dimensions, including healthcare, environmental quality, social culture, and economic development, ensuring a holistic evaluation approach (26). The BRE HCI has garnered widespread international recognition. Its methodology, based on extensive, objective data, ensures the scientific accuracy and comparability of evaluations among different cities’ health development levels. Moreover, the continuous updating and dynamics of its data can help research capture and analyze the latest trends in healthy urban development and provide adequate decision support for policymakers. Therefore, using the BRE International Healthy Cities Index as the evaluation indicator system in this study not only promotes in-depth theoretical and practical exploration but also enhances the applicability of the research findings. Furthermore, this evaluative schema has been independently applied to the mentioned 11 cities, indicating that the screening of these cities has good applicability.
2.1.3 Data sources
The evaluation indicator data is sourced from numerous international open data repositories, including the World Bank Open Data (WBOD), UN-Habitat’s Global Urban Observatory, the World Council on City Data (WCCD), the World Health Organization (WHO), as well as official statistical data websites of various countries. To address gaps in the data, a scientific quantitative analysis approach is employed in which the average annual growth rate is calculated using data from adjacent years to fill in missing values. In cases where individual indicator gaps are too large to be filled using the above method, strictly adhering to relevant ethical norms and legal regulations is essential. Using the Chrome browser’s Developer Tools, perform a detailed analysis of official websites or public data platforms (such as government transportation departments, environmental agencies, statistics bureaus, and other relevant authorities) that publish relevant indicator data. Locate and obtain the request data packets that contain the list of issues and parse the JSON data to extract all question codes. Subsequently, write a Python web scraping program to obtain and process data corresponding to the relevant year’s keywords for the indicators. Finally, the panda’s library will store the extracted data into a CSV file for subsequent analysis and processing, ensuring the data’s legality, continuity, and completeness. Ultimately, the study collected and organized 870 data points across 58 indicators, as detailed in Table 1.
2.2 Research method
The study employs the entropy weight method to determine the objective weights of each indicator. Subsequently, the TOPSIS method is used to compare the relative closeness of the 58 evaluation indicators of the 15 cities to the ideal health cities, thereby determining each city’s overall ranking. Finally, the rank sum ratio method is utilized to sort the results and categorize them into levels of excellence, medium, and poor, providing an intuitive display of the global cities’ health hierarchy levels. This approach facilitates a more in-depth assessment and analysis of the health development levels of the 15 cities.
2.2.1 Entropy weight
The Entropy Weight Method (EWM) represents an objective weighting technique that capitalizes on the inherent properties of the raw data to quantify information content (32). Predicated on the principles of information entropy, this methodology asserts that a reduction in entropy within a system concomitantly increases data dispersion and informational richness, thereby augmenting the associated weights. In contrast, diminished variance in data leads to a reduction in both information content and respective weights. The advantage of the entropy weight method lies in its ability to objectively assign weights based on existing data information, thereby avoiding biases introduced by subjective weighting. This method enhances the objectivity and accuracy of decision-making, offering better precision than subjective methods like the Analytic Hierarchy Process (AHP) (33). The specific steps are as follows:
1. Normalization of Indicators
To eliminate the dimensional and unit differences between the indicators, the data of each index were normalized. Due to the different meanings of positive indicators and negative indicators, the specific calculation formulas are also different, as follows:
Positive indicators—where a higher score reflects a higher level of health cities—the normalization approach is as Eq. 1:
Negative indicators—where a higher score indicates a lower level of health cities—the normalization approach is as Eq. 2:
Where represents the normalized datum of the evaluative criterion corresponding to the specimen, where ranges from 1 to , being the cumulative count of specimens, and spans from 1 to , signifying the total indicators within the analyzed system. Herein, specifies the raw score of the specimen’s criterion. The terms and delineate the extremities of the observed spectrum for the criterion, interpreted as the maximal and minimal valuations, respectively.
1. Calculate the specific gravity of the index under the samples Eq. 3:
1. Calculation of the Information Entropy for the Indicator Eq. 4:
1. Calculating the Weight of the Indicator Eq. 5:
2.2.2 TOPSIS
The Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS), proposed by C.L. Hwang and K. Yoon in 1981, is a multi-criteria decision analysis method. Its principle lies in selecting the option closest to the positive ideal solution and furthest from the negative one. A comprehensive evaluation index is derived by calculating the degree of closeness and distance of the evaluated object to the ideal solution (34), accurately reflecting the disparities among the evaluated targets (35). The computational steps are as follows::
1. Constructing the Weighted Normalization Matrix Eq. 6
1. Calculation of the Positive and Negative Ideal Solutions Eq. 7, R– Eq. 8:
1. Calculation of the Euclidean Distance from the Evaluated Objects to the Positive and Negative Ideal Solutions Eq. 9, Eq. 10:
1. Calculation of the Relative Closeness to the Ideal Solution for Each Evaluation Object (Composite Scores) Eq. 11:
Where represents the level of a health cities, with values ranging from 0 to 1. A higher value indicates that the healthiness level of the city under study is closer to the optimal level. Drawing upon the classification method used by Lei et al. (36) for assessing land use performance, the natural breaks method (Jenks) is employed to divide the proximity values into four distinct categories. The specifics are illustrated in Table 2.
2.2.3 RSR
The Rank-Sum Ratio (RSR) method, proposed by Tian Fengtiao in 1988, is a multi-indicator assessment method based on non-parametric statistics. Its principle is based on converting data into ranks, creating a dimensionless statistical measure called the RSR, which is then used to sort and grade the objects of study (37). The RSR method addresses the limitations of the entropy weight-TOPSIS method, which cannot classify evaluation results. It makes the evaluation process more scientific and practical and the results more objective and reliable. The steps of the RSR method are as follows:
1. Assign Ranks and Calculate the rank-sum ratio:
In conducting the study, the obtained proximity values of each criterion are employed as ranks within the Rank-Sum Ratio (RSR) method. These ranks are then ordered in an ascending fashion, from the smallest to the largest RSR value, to assign the rank order for each group.
1. Calculate the cumulative frequency Eq. 12:
The cumulative frequency, denoted as P, was converted into a probability measure using the NORMSINV function. Lower resultant values indicated a superior evaluation of the subject under consideration.
1. Calculate the linear regression equation Eq. 13:
Using SPSS 26.0 software to build a regression equation with as independent variable and RSR ( ) value as dependent variable, namely:
1. Classification and ranking:
By checking the regression equation, the critical value is output, which is divided into <4,4~ and 6~three grades according to the unit of probability , which means difference, medium and excellent, and ranks each city.
3 Results
3.1 Sub-indicator weights results
The outcomes of the weight calculations for 58 evaluative indicators about the development levels of 15 healthy cities via the Entropy Weight Method are presented in Figure 2. Within these 58 secondary indicators, the top three, arranged by weight, are the kilometers of bicycle paths and lanes per 100,000 population (0.068), m2 of public indoor recreation space per capita (0.047), and kilometers of bicycle paths and lanes per 100,000 population (0.042). The indicator attributed with the minimum weight is the endorsement of Signee to Milan Urban Food Policy Pact” (0.005).
Figure 2. Sub-indicator weights of each environmental category in the healthy cities evaluation system.
In the category of air quality, the indicator with the highest weight is the percentage of population living within 500 m of highway or significant road (0.015); within the category of food access, the highest weighted indicator is availability (work): number of food stores selling fruits and vegetables within 500 m of retail and commercial properties (0.021); in green infrastructure, the most heavily weighted indicator is hectares of green area per 100,000 population (0.023); in the housing and buildings category, the highest weight is given to % of refurbished building stock certified with a sustainable building standard (e.g., BREEAM and LEED) (0.030); for the category of leisure and recreation, the most significant weight is placed on m2 of public indoor recreation space per capita (0.047); in the noise pollution category, the most significant weight is assigned to % of population exposed to noise pollution measured at Lden > 55 dB (0.016); in the category of resilience, the weightiest indicator is greenhouse gas emissions (tonnes per capita) (0.019); within the safety and security category, the highest weight is attributed to Crimes against property per 100,000 population (0.016); in the transportation category, the highest weighted indicator is the number of kilometers of bicycle paths and lanes per 100,000 population (0.068); and in the category of utilities and services, the highest weight is given to % of population served by wastewater collection (0.019).
Within the global assessment of health city levels across 10 environmental categories, the top three with the highest weights are transport (0.239), leisure and recreation (0.172), and resilience (0.125). This indicates that these three categories play a significant role in affecting the health levels of cities worldwide. Conversely, the three categories with the lowest weights are safety and security (0.041), green infrastructure (0.050), and noise pollution (0.052), suggesting that their impact on the global health of city levels is comparatively weaker.
3.2 Environmental category evaluation results
The TOPSIS method calculates the distance of each evaluation indicator to the ideal target (Di+) and the negative-ideal target (Di-), ultimately determining the closeness of the evaluated object to the optimal goal. A Ci value closer to 1 indicates a more favorable evaluation of the object. According to Table 3, within the most influential factor of global health cities levels, the transport category, only 33.33% of cities reach a moderate level, and 60.00% perform poorly. This suggests considerable room for improvement in this dimension among the 15 cities evaluated. Singapore leads with a proximity value of 0.592, indicating its transportation system is the closest to the ideal state among the cities studied; Los Angeles has the lowest proximity value at 0.271, highlighting an urgent need for improvements in its transportation sector. In the leisure and recreation category, Singapore once again leads with the highest proximity value of 0.658, showcasing its superior leisure and recreational facilities compared to the other cities; Buenos Aires ranks last with a proximity value of 0.149, indicating significant potential for development in its leisure and recreation offerings. In the resilience category, Paris has the highest proximity value at 0.752, signifying a reasonable level and indicating that Paris performs best in terms of resilient design; New York has the lowest proximity value at 0.343, which suggests it has considerable scope for improvement in resilience practices compared to other cities. In the category of safety and security, which has a minor impact on global cities’ overall health development levels, Johannesburg has the highest proximity value at 0.644, suggesting that it performs best in safety and security matters. In contrast, Dubai has the lowest proximity value at 0.356, indicating the poorest performance in this category. In the category of green infrastructure, most cities are at a medium level (73.34%), with Boston having the highest proximity value at 0.683. This indicates that Boston’s green infrastructure is the best among the 15 cities studied, whereas Tokyo, with the lowest proximity value at 0.330, has room for improvement. The category of noise pollution showcases particularly notable variations in performance among cities; Shanghai has the highest proximity value at 0.925, demonstrating exceptional control over noise pollution among the cities, while Tokyo’s lowest proximity value at 0.171 suggests that it has a severe noise pollution issue.
Table 3. Composite closeness values of each environmental category in the health cities evaluation system.
3.3 Composite evaluation results of healthy cities development levels
The composite evaluation result is based on the closeness-to-ideal scores across 10 environmental categories, including air quality, food accessibility, green infrastructure, etc. The TOPSIS method is utilized to calculate the urban health scores, which determine the cities’ ranking. This method provides a comprehensive measure of the level of urban health development. From the composite closeness-to-ideal scores and rankings of the 15 global cities in Figure 3, the top three cities are Singapore, Shanghai, and Amsterdam, indicating superior overall health levels. Conversely, Dubai, Johannesburg, and Los Angeles are the bottom three cities.
Applying Probit and RSR values presented in Table 4, a regression equation was formulated (F = 316.304, p < 0.001) with a coefficient of determination R2 of 0.961, substantiating the statistical significance of the regression model. The study conformed to the RSR optimal stratification criteria (38), stipulating that each division should encompass at least two cases. According to the reasonable grading table, the health levels of the 15 cities were segregated into three tiers: poor, medium, and excellent. Dubai and Johannesburg are classified as “poor” (13.3%), while Singapore, Shanghai, and Amsterdam are classified as “excellent” (20.0%). The remaining cities are categorized as “medium” (66.7%). Detailed stratification results are illustrated in Figure 4.
4 Discussion
4.1 Analysis of factors influencing the level of healthy cities
Based on the entropy weight analysis results (Figure 2), the highest weighting is assigned to the metric concerning the kilometers of bicycle paths and lanes per 100,000 population (0.068). This indicates that the said metric is a critical determinant in evaluating the healthiness of urban areas. The indicator reflects the level of a city’s bicycle infrastructure development, revealing the bicycle network’s density and demonstrating the city’s strategic investment and policy prioritization in sustainable transportation planning (39). Moreover, this metric is associated with multiple societal values, including promoting healthy lifestyles, reducing environmental pollution, enhancing economic benefits, and improving residents’ quality of life (40). The findings of Heath et al. support this study’s conclusions. Research by Heath et al. (41–45) has demonstrated that sustainable transportation infrastructure (such as cycling, walking, and public transit) can foster positive health patterns. Specifically, creating an appropriate environment and facilities for cycling in urban areas significantly impacts improving residents’ health levels. Furthermore, a study by Egiguren et al. (46) assessed the risks and benefits of mortality associated with replacing car travel with cycling (both traditional and electric bikes) among urban populations aged 20 to 64 in 17 countries. The findings suggest that achieving a high rate of bicycle use by 2050 could prevent 205,424 premature deaths annually (assuming 100% of bicycle trips replace car travel). In October 2023, the European Union announced the “European Bicycle Declaration,” which officially recognizes the significant role of cycling in decarbonizing the EU’s transport sector, further acknowledging the essential contribution of bicycle transportation to the healthy development of cities. In contrast, Signee to Milan Urban Food Policy Pact holds the least weight (0.005), indicating a relatively minor impact on the comprehensive assessment of urban health. However, the MUFPP aims to address challenges faced by the global food system, such as unhealthy diets, food security, food waste, and the environmental impacts of agriculture. The role of this pact in developing healthy cities is long-term and incremental. It positively affects urban residents’ health by improving the urban food environment and promoting healthy eating habits among residents (47). For instance, the Baltimore Healthy Eating Zones project, initiated in 2012, has encouraged healthier food choices through interventions in corner stores, leading to a reduction in overweight and obesity rates among low-income African American youth (48). This project continues to have an impact to this day. The study failed to account for potential confounding variables that could impact urban health levels, such as narrow cycling spaces, uneven road surfaces, and poor maintenance of bicycle lanes. These factors might lead to biased results and an inaccurate assessment of the benefits to residents’ health. When formulating policy recommendations, it is essential to involve experts from multiple fields to consider all potential confounding variables affecting health levels comprehensively. This approach ensures that healthy city planning and design are scientifically sound and practical in real-world applications, ultimately better promoting and improving urban health levels.
When comparing the weightings of indicators across different environmental categories (see Figure 2), it becomes clear that a distinct emphasis is placed on the impact weights assigned to secondary indicators within each environmental category. Taking the air quality category as an example, the percentage of population living within 500 m of highway or major road (0.015) plays a significant role in gauging the health level of urban air quality. This indicator, which outlines the proportion of residents living close to major traffic arteries, serves as a critical measure of residents’ convenience to transportation and holds significant importance in assessing the health risks (such as noise and air pollution) that residents may face. Moreover, this indicator also illuminates the balance struck by urban planning and development strategies between facilitating transportation convenience and ensuring the quality of residential environments (49). Human activities are identified as a primary source of poor air quality (50). Higher population densities lead to reduced urban green spaces, increased building density, traffic congestion, and inadequate urban air circulation, elevating PM2.5 concentration levels and deteriorating local air quality (51). However, research conducted by Karathodorou et al. (52) indicates that densely populated cities exhibit significantly lower per capita fuel consumption and car usage rates due to the availability of public transportation and shorter average commute times, reducing air pollution (53). The variation in research findings may be attributed to factors such as urban planning and infrastructure development (54), types of cities and environmental protection policies (51, 55), urban economic conditions and residents’ behavioral habits (56), as well as technological advancements, particularly innovations in the energy and transportation sectors (57). When measuring the percentage of population living within 500 m of highway or major road, it is crucial to consider the impact of confounding factors such as topography and meteorological conditions (e.g., wind speed and direction). These factors can directly influence the dispersion patterns and concentrations of pollutants, affecting air quality and ultimately impacting residents’ quality of life and health. Given these factors’ complex and dynamic interactions, future research should extensively utilize Geographic Information Systems (GIS) for evaluation, analysis, and prediction. This approach will aid in developing more effective air quality management strategies and urban planning policies.
4.2 Analysis of difference in environmental categories of healthy cities
Horizontal comparison of proximity values corresponding to environmental categories (Table 3) reveals significant spatial heterogeneity within the same environmental category across different cities. Taking the transport category as an example, its impact on healthy cities is relatively significant (0.239). This aligns with the findings of Nieuwenhuijsen et al. and Khreis et al. (58, 59), who have emphasized the significant influence of urban transportation planning and policies on public health, noting that motor vehicle collisions and traffic-related environmental exposures lead to premature deaths and substantial disease burdens. Although current trends are concerning, new evidence suggests that promoting healthy and sustainable transportation infrastructure, as well as adopting modes of transportation such as cycling, walking, and public transit, can effectively encourage positive travel behaviors (60, 61) and potentially reduce traffic-related environmental exposures (62), thereby improving the health status of cities. In this category, Singapore exhibits the highest proximity value (0.592), indicating that the city performs best in transportation. Singapore is internationally renowned for its integrated land use and transportation planning approach. By emphasizing public transit-led axial development, enhancing the levels and network of public transportation services, advocating a green transportation system primarily consisting of “slow travel + public transit,” and implementing the transit-oriented development (TOD) model, Singapore has established a travel mode hierarchy of “walking − cycling − Taking (public transportation)” that exemplifies ease and efficiency. These measures have effectively created Singapore’s more livable, healthy, high-quality urban living environment. In contrast, Johannesburg exhibits a poorer performance in this category (0.254), characterized by dispersed commuting and cycling spaces: a lack of integration between cycling activities and urban public transportation infrastructure, most public transportation stations are not easily accessible by non-motorized transport, and a deficiency in shared infrastructure. These issues hinder the city’s progress towards healthier development (63).
A vertical comparison of the proximity values corresponding to environmental categories (Table 3) suggests that healthy cities can be categorized into two types: those with balanced development and those with unbalanced development. A city possesses balanced, healthy development if the proximity values for all 10 environmental categories are above the median. Conversely, suppose the proximity value of any single environmental category falls below the median. In that case, it indicates a significant developmental shortfall, classifying the city as having unbalanced development. To facilitate a more intuitive observation of the cities’ healthy development status, this study employs radar charts to contrast the proximity values of different environmental categories for each city against the median proximity value of each category (Figure 5). Examining 15 cities reveals a prevailing state of unbalanced development across the board. Taking Singapore and Dubai as examples, it is noted that Singapore ranks highly in environmental categories such as air quality (0.746), leisure and recreation (0.658), and housing and buildings (0.653). However, its proximity value for green infrastructure (0.352) is ranked only 12th. This may be attributed to the scarcity of land caused by its high-density, compact urban characteristics and ineffective environmental regulation (64). Despite these challenges, Singapore’s achievements in air quality, leisure and recreation, and housing construction are credited to implementing strict environmental laws and policies, urban planning oriented towards residents’ quality of life, and using sustainable design and construction technologies.
On the other hand, Dubai, while underperforming in categories such as air quality, leisure and recreation, and transport, demonstrates exemplary performance in noise pollution management. The city, by employing noise monitoring systems, precise noise index assessments, and the implementation of open data sharing and institutional collaboration, provides support for government agencies in formulating noise reduction strategies to achieve a more tranquil and healthy urban environment (65). Even cities with a higher overall health rating have shortcomings that constrain their progression towards enhanced healthfulness. Similarly, those ranked lower overall may still possess commendable practices that can serve as valuable references. Conversely, cities that rank lower overall may still possess commendable successful experiences worth learning from. Within the context of globalization, Liu et al. (66) have discovered that uneven development within cities is related to public health risks, ecosystem destruction, and social inequalities. These issues lead to unequal urban development and may widen the gap between cities. Nijman et al. (67) argue that phenomena such as economic disparities, housing inequality, food deserts, spatial mismatches, and unequal access to government services exist within urban development. These issues stem primarily from the demands of economic restructuring and quality improvement in the context of the new economic normal (27), differentiation of interests among different groups (68), uneven distribution of organic food stores (69), urban expansion and decentralization of work (70), and the limited diffusion intensity of policies (71), among other factors. Consequently, Singapore needs to improve its weaknesses further to prevent the “barrel effect” in developing healthy city construction. In contrast, Dubai urgently requires the integration of various forces to push forward comprehensively.
4.3 Overall analysis of healthy cities level
The comprehensive health status of urban environments results from collaborative efforts across multiple sectors. An assessment employing the integrated entropy weight-TOPSIS and RSR methods indicates that the overall development level of healthy cities is relatively low. Singapore, Shanghai, and Amsterdam rank within the top three, denoting a higher echelon within the sampled cities. In contrast, the remaining 80% of cities are deemed to have moderate to low levels of health, suggesting a global imperative for holistic urban health development. Following the promulgation of the United Nations’ 2030 Agenda for Sustainable Development in 2016, the agenda has been extensively promoted worldwide, offering a strategic blueprint for the sustainable evolution of urban areas, with a keen emphasis on reducing the disparities in health benefit distribution. Singapore’s preeminent position in the global health cities rankings can be ascribed to the foresight of its government’s long-term planning. This encompasses the creation of a highly effective health care system and a robust medical insurance framework, the application of regulatory measures grounded in the rule of law, and the holistic implementation of initiatives such as the “Garden City” vision, the “Home Ownership for Public Housing” policy, and the equalization of public services (72). As one of China’s earliest megacities to propose the construction of a healthy city, Shanghai has methodically carried out eco-environmental and health applicability and cutting-edge scientific and technological research focusing on safeguarding public health. Furthermore, environmental health risk pilot surveys and evaluations have been conducted in typical pilot areas, providing a robust basis for further enhancing health city management (73). Against the backdrop of the “Dutch National Bicycle Plan,” Amsterdam has endeavored to create a compact, high-density, pedestrian-friendly, and bicycle-friendly city to foster a bicycling-friendly environment, thereby improving the health and well-being of residents (74). By analyzing and identifying these successful cases, valuable insights and strategies can be provided for cities with lower health levels. These can be promoted and implemented globally, significantly advancing the construction and development of healthy cities worldwide. However, many city governments need more means and tools to monitor the progress of implementation measures, leading to urban sprawl, mismanagement, displacement of residents, inadequate public health infrastructure, and land expropriation, exacerbating inequality in urban areas (75). Hence, it is evident that achieving sustainable development for global healthy cities remains a significant and challenging task.
To scientifically measure the development level of healthy cities, combining the Comprehensive Healthy City Index scores with an analysis of balanced development is essential. Qing et al. (76) pointed out that a city is considered a high-quality, healthy city if it has a high level of healthy development and balanced progress among its constituent factors. Conversely, a city is categorized as a low-quality healthy city if its healthy development level is low and its constituent factors are unevenly developed. The current study shows that all 15 cities exhibit unbalanced development, falling into the low-quality healthy city development model. Therefore, in formulating relevant policies, it is crucial to fully consider the objective reality of these cities’ overall low development levels and the significant differences in environmental categories among cities. This approach allows for tailored and precise policy-making to address the challenges of unbalanced and inadequate urban development, promoting high-quality urban spaces focused on residents’ health and well-being.
4.4 Heterogeneity analysis of health cities evaluation indicators
To further clarify the differences among the health cities evaluation indicators, cluster analysis (K-Means) was employed to identify potential commonalities among variable indicators and to examine the heterogeneity in health indicators across different cities. The results were calculated using the mean ± standard deviation for differential analysis. As shown in Table 5, there are no significant differences among 53 indicators, including Concentration of PM2.5 μg/m3 (p = 0.288 > 0.05), availability (home): number of food stores selling fruits and vegetables within 500 m of domestic properties (p = 0.134 > 0.05), and hectares of green area per 100,000 population (p = 0.905 > 0.05). This indicates that these indicators share common characteristics in evaluating healthy cities and are suitable for widespread application across various countries or cities. Significant disparities were identified among five indicators: m2 of public outdoor recreation space per capita (p = 0.029 < 0.05), greenhouse gas emissions (p = 0.043 < 0.05), residential electricity use per capita (p = 0.028 < 0.05), electricity consumption of public building per year (p = 0.000 < 0.05), and kilometers of light passenger public transport system per 100,000 people (p = 0.019 < 0.05). These findings indicate substantial characteristic differences among cities concerning these indicators. Therefore, when applying these indicators for the health assessment and planning of specific cities, it is imperative to consider the actual circumstances of regional culture, economic conditions, and social systems. Implementing targeted evaluations and strategies is essential to ensure the scientific rigor and practicality of the assessment.
Table 5. Results of single indicator clustering analysis in the evaluation index system of healthy cities.
This investigation categorizes 15 cities into developing and developed nations, computing the standard deviation across five distinct indicators to evaluate the dispersion of data. An elevated standard deviation signifies increased dispersion, indicating pronounced disparities among cities within each classification; conversely, a lower standard deviation suggests minimal differences. Figure 6 illustrates that developed nations demonstrate significant standard deviation concerning two metrics: m2 of public outdoor recreation space per capita and electricity consumption of public buildings per year. These disparities underscore the presence of substantial variation between cities, likely attributable to variations in municipal policy decisions, funding allocation priorities, and disparities in the lifestyles and cultural norms of the inhabitants. M2 of public outdoor recreation space per capita is defined as the average amount of outdoor space accessible to each individual, which is intrinsically linked to the residents’ living quality and health. An increased per capita provision of such spaces affords residents more significant opportunities for physical exercise, nature engagement, and community involvement, thereby enhancing life quality and fostering physical well-being. Moreover, it alleviates the psychological effects of congested environments prevalent in densely populated urban areas (77). Electricity consumption of public buildings per year quantifies the total energy utilization within a given period by a range of public infrastructures, including but not limited to government bodies and educational, medical, and cultural institutions. This indicator sheds light on the efficiency of operations and energy usage of public service buildings. Structures boasting higher energy efficiency manage to reduce electricity consumption while maintaining operational capabilities, reducing greenhouse gas emissions and environmental pollution (78). In the progression toward health-centric urban development, governments play a crucial role in improving urban air quality and enhancing residents’ health by implementing strategies to reduce pollution and lower energy consumption.
Figure 6. Comparison of standard deviations of individual indicators between developing and developed countries.
In developing countries, cities exhibited a higher degree of dispersion across three metrics: greenhouse gas emissions, residential electricity use per capita, and electricity consumption of public buildings per year. Such disparities likely mirror the variations in the degree of industrialization, the configuration and efficiency of energy use, and the levels of investment in infrastructure. Greenhouse gas emissions quantify the average emissions discharged over a specified timeframe by a nation or region, divided by its total population (79). Employed to evaluate the average contribution of residents from various countries or areas to climate change, this indicator measures their collective impact on global climate challenges. Effective management of greenhouse gas emissions is crucial for diminishing the negative consequences associated with global warming, preserving the ecological systems of urban areas, and ensuring the health of inhabitants and the sustainable development of cities over the long term. Residential electricity use per capita is determined by dividing the total electricity consumed by the residential sector of a country or region over a specified period by its overall population (80). This indicator gauges the average electricity consumption per resident, providing an essential measure for assessing residents’ quality of life, economic development, and the efficiency of electricity usage. It plays a pivotal role in monitoring the allocation of electrical resources, tracking alterations in consumption behaviors, and underpinning relevant energy policies and strategic planning. Through the optimization of per capita electricity consumption, it is feasible to fulfill the everyday needs of the populace while mitigating environmental strains, thereby fostering the sustainable progression of cities. Kilometers of light passenger public transport system per 100,000 people individuals evaluates the urban public transportation network’s density and accessibility (81). It offers insights into the coverage provided by public transport, the efficacy of urban planning, and governmental endorsement of eco-friendly commuting practices. An extensive network of public transit routes promotes public transportation among residents, which helps ease traffic congestion, decrease greenhouse gas emissions from private car usage, and improve travel efficiency and convenience for urban dwellers. This, in turn, supports the sustainable advancement of healthy city environments.
Therefore, it is crucial to balance standard and individualized metrics in formulating and applying global health city assessment indicators. This balance ensures that the assessment of healthy cities retains universality and accounts for the specific needs and contexts of different locales. This approach enables a more scientific assessment of urban health development status and assists in formulating urban health policies and planning.
4.5 Recommendations
In light of this, reflecting on the successful experiences of leading global cities in health development and aiming to improve evaluation practices, it is advisable to proceed from four aspects: government leadership, regulatory planning, consensus building, and strategic implementation. The following recommendations are proposed to foster the sustainable development of urban health on a global scale.
4.5.1 Strengthening the policy support system
The advancement of a robust policy framework for healthy urban planning is posited as a prerequisite for the development of health-oriented urban spaces, ensuring effective construction and management, optimized mechanisms, and accessible information to safeguard the evolution of healthy cities. Drawing from Singapore’s developmental paradigm, it is proposed that, at the legislative level, policies pertinent to public health be crafted and refined, with the enactment of corresponding laws and regulations, thus providing a legal basis for regulatory governance. On a mechanistic level, the refinement of decision-making processes is imperative, necessitating a tight integration of evaluation outcomes and strategic adjustments, bolstering demonstration and incentivization efforts, and enhancing the safety and health emergency command and support system. At the implementation level, drawing upon the advanced experiences of Shanghai, the establishment of a periodic and continuous evaluation system for urban health initiatives proves beneficial in understanding the efficacy levels post-policy implementation. Moreover, the enhancement of international exchanges and collaboration provides access to global best practices and avant-garde experiences in health cities construction, thereby presenting new developmental opportunities for the optimization and reinforcement of healthy urban environments.
4.5.2 Refining urban spatial planning
Establishing a healthy, safe, and resilient spatial structure is a critical foundation for executing urban health development strategies. Therefore, it is imperative to integrate the concept of health across the entire lifecycle into the current national spatial planning. This involves identifying significant ecologically sensitive areas within cities and regions that substantially impact citizens’ health, proposing appropriate health graduation standards, and optimizing the allocation of health-related spatial resources. Following the example set by Dubai, in the new context of accelerated data openness and sharing, it is vital to fully leverage the internet and data-sharing platforms to integrate urban and population health network data. This approach dismantles barriers across public health, medical insurance, urban–rural planning, ecological environment, and safety disaster prevention sectors. It provides functions for the release, inquiry, service, and emergency alert of ample data information pertinent to healthy urban spaces, thereby ensuring the spatial implementation of planning and construction schemes.
4.5.3 Expanding paths for multi-stakeholder participation
The government’s leadership and interdepartmental collaboration are significant driving forces in advancing healthy urban construction. Drawing from Amsterdam’s successful experiences in social mobilization and citizen participation, it is advocated to diversify the institutions implementing evaluations. This promotes a shift from government-led initiatives to societal collaboration, thereby stimulating citizen engagement in the construction of healthy cities and the active allocation of health resources. It is essential to establish and refine investment platforms dedicated to this purpose to facilitate the construction of healthy cities. Moving away from paths that rely solely on government investment can encourage market-oriented approaches and promote participation from private capital. This strategy helps to mitigate the risk of ‘involution’—a term that describes inward, competitive intensity without corresponding increases in value—in the design and implementation of related public policies. By guiding healthy cities’ development toward a collaborative governance model, a win-win situation can be achieved that simultaneously benefits economic, social, and ecological interests.
4.5.4 Incorporating distinctive health indicators
The construction of healthy cities in different cities should align with their unique health conditions, economic development levels, and social backgrounds. To ensure the accuracy of evaluations, differentiated assessments should be conducted by optimizing the evaluation indicator system for healthy cities. This involves considering various aspects such as the development stage, geographical location, and cultural background of different types of cities. As the development of healthy cities progresses, in addition to universal indicators, it is necessary to introduce indicators that reflect the characteristics of each city and develop evaluation methods that balance continuity and localization. For cities in developing countries, evaluation indicators should focus on infrastructure and technologies that reflect urban development and support sustainable lifestyles rather than merely meeting residents’ basic needs. In contrast, for cities in developed countries, there should be a greater emphasis on technological and industrial innovation and indicators that reflect climate change. By establishing governance models for healthy cities tailored to their characteristics, scientific support can be provided for the fine-tuned construction and management of healthy cities. This will help enhance the convergence of local initiatives with global standards in health city development.
5 Conclusion
Drawing upon the Healthy City concept proposed by the World Health Organization, this study employs the BRE international set of indicators for evaluating healthy cities. Using the entropy weight-TOPSIS method and the rank sum ratio (RSR) technique, a comparative assessment and hierarchical classification of the health development statuses of 15 cities globally is conducted. Cluster analysis is deployed to discern common and unique indicators, allowing for necessary adjustments in the health evaluation of different cities based on their developmental characteristics. This provides a foundation for formulating specific recommendations for improvement, aiming to serve as a reference for constructing healthy cities. The ultimate goal is to reduce developmental disparities between cities and to promote the balanced and sustainable development of healthy cities worldwide. The primary outcomes of the research are as follows:
1. Sub-indicator Importance: In assessing urban health, the kilometers of bicycle paths and lanes per 100,000 population emerges as the paramount indicator. Conversely, the effect of signee to Milan Urban Food Policy Pact has been minimal. The emphasis varies across different environmental categories; for instance, the percentage of the population within 500 meters of a highway or major road significantly influences the air quality category, while the per capita green space has a more considerable impact on the green infrastructure category.
2. Environmental Categories Importance: From the perspective of various environmental categories, the transport category has the most significant impact on assessing healthy cities. In contrast, the safety and security category exhibits the most minor influence. Specific disparities remain among different cities and environmental categories, indicating imbalanced health development. Using Singapore and Dubai as examples, Singapore shows commendable performance in air quality, leisure and recreation, and housing and buildings. However, its performance in the green infrastructure category is merely moderate. On the other hand, Dubai displays subpar performance in air quality, leisure and recreation, and transport categories yet ranks favorably in the noise pollution category.
3. Composite Rankings of Healthy Cities: The overall level of healthy city development in the 15 cities is relatively low, and all fall into the low-quality healthy city development model. Overall, cities like Singapore, Shanghai, and Amsterdam have achieved a higher level of health infrastructure development. Others, including Boston, Buenos Aires, London, Los Angeles, Melbourne, New York, Paris, Santiago, Tokyo, and Toronto, fall into the medium range of the spectrum. Meanwhile, Dubai and Johannesburg are ranked lower regarding their health infrastructure development.
4. Common and Unique Indicators: Concentration of PM2.5 μg/m3, availability (home): number of food stores selling fruits and vegetables within 500 m of domestic properties., and hectares of green area per 100,000 population, among other 53 indicators, constitute the common indicators of the health cities evaluation system, demonstrating universality. However, for different cities, it is essential to highlight distinctive indicators such as m2 of public outdoor recreation space per capita, greenhouse gas emissions, residential electricity use per capita, electricity consumption of public buildings per year, and kilometers of light passenger public transport system per 100,000 people. These five indicators aim to reflect the health status of cities more accurately.
In the global assessment of healthy cities, individual indicators, environmental categories, and overall health city rankings are designed to diagnose the weaknesses cities face in their development process effectively. Specifically, ranking by individual indicators helps to establish strategic priorities, guiding the specific areas of governance that need prioritized development and improvement across various environmental categories. Ranking by environmental categories helps fully reflect the health disparities among different evaluation subjects, identifying a city’s strengths and issues and optimizing resource allocation to ensure the balanced development of healthy cities. The global comprehensive ranking of healthy cities helps to assess the overall health status of cities, facilitating the discovery of exemplary practices that can provide reference and inspiration for cities with lower health levels, promoting international learning and experience exchange, and accelerating the construction of global healthy cities toward sustainable and equitable urban development goals. Generic indicators aim to provide reliable support for formulating universally applicable policies for healthy city development, ensuring their broad applicability and operability. Distinctive indicators reflect the unique health needs of each city. By identifying these indicators, targeted health interventions can be implemented to meet the specific health needs of different cities, driving high-quality development of healthy cities.
Selecting Alpha-level cities, which are highly connected in the global economic network, as the primary sample for assessing the development level of healthy cities is straightforward and widely accepted. However, with rapid economic growth, improving objective well-being has not significantly led to a corresponding increase in public health and subjective happiness (82). Therefore, future research should avoid the limitations of a single economic perspective and consider economic, political, cultural, social, and ecological civilization aspects to expand the research dimensions, leading to more accurate and comprehensive conclusions. Additionally, in terms of research methods, although the entropy method has the advantage of objective weighting, it does not consider the decision-makers subjective preferences and importance judgments when calculating weights based on the objective distribution of indicator data. It also assumes that each indicator is independent without considering possible significant correlations between them. This method of ignoring decision-makers preferences and inter-indicator correlations may lead to unreasonable allocation of indicator weights, resulting in biased assessment results and affecting the accuracy of overall healthy city scores. In subsequent research, it is necessary to comprehensively consider the decision-makers’ subjective judgments and inter-indicator correlations, introducing subjective weights of decision-makers, and combining methods such as the entropy method, CRITIC method, and AHP method to compare results from different methods and identify and adjust potential biases.
Data availability statement
The original contributions presented in the study are included in the article/supplementary material, further inquiries can be directed to the corresponding author.
Author contributions
YW: Supervision, Writing – review & editing. YL: Data curation, Investigation, Methodology, Software, Writing – original draft, Writing – review & editing. YZ: Resources, Writing – review & editing. BL: Data curation, Writing – review & editing.
Funding
The author(s) declare that financial support was received for the research, authorship, and/or publication of this article. This work was supported by Research on the Guidance and Control of Healthy Community Construction from the Perspective of Scene Theory—Hebei Province Social Science Development Research Topic (no. 20230403112).
Conflict of interest
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Publisher’s note
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Keywords: health city, evaluation system, entropy weight-TOPSIS, rank-sum ratio (RSR), global health
Citation: Wen Y, Li Y, Zhang Y and Liu B (2024) Comprehensive evaluation of global health cities development levels. Front. Public Health. 12:1437647. doi: 10.3389/fpubh.2024.1437647
Edited by:
Pier Luigi Sacco, University of Studies G. d’Annunzio Chieti and Pescara, ItalyReviewed by:
Dalia Perkumiene, Vytautas Magnus University, LithuaniaCarlos Alberto Pereira de Oliveira, Rio de Janeiro State University, Brazil
Copyright © 2024 Wen, Li, Zhang and Liu. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
*Correspondence: Yu Wen, d2VueXVAeXN1LmVkdS5jbg==