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ORIGINAL RESEARCH article

Front. Endocrinol., 29 November 2022
Sec. Cancer Endocrinology
This article is part of the Research Topic The Clinical Application and Progress of Precise Diagnosis and Treatment of Thyroid Tumors View all 7 articles

Environmental and social determinants of thyroid cancer: A spatial analysis based on the Geographical Detector

  • 1School of Life Sciences, Beijing University of Chinese Medicine, Beijing, China
  • 2School of Chinese Medicine, Beijing University of Chinese Medicine, Beijing, China
  • 3Department of Ultrasound, China-Japan Friendship Hospital, Beijing, China

Introduction: Thyroid cancer has increased sharply in China in recent years. This change may be attributable to multiple factors. The current study aimed to explore the environmental and social determinants of thyroid cancer.

Methods: Incidence data from 487 cancer registries in 2016 were collected. Eight factors were considered, namely, air pollution, green space, ambient temperature, ultraviolet radiation, altitude, economic status, healthcare, and education level. A geographical detector (measured by q statistic) was used to evaluate the independent and interactive impact of the eight factors on thyroid cancer.

Results: Social factors, especially economic status and healthcare level (q > 0.2), were most influential on thyroid cancer.Ultraviolet radiation, air pollution, and temperature had more impact on women, while green space and altitude had more influence on men. Enhanced effects were observed when two factors interacted. Spatially, economic status, healthcare, and air pollution were positively associated with thyroid cancer, while education level, green space, and altitude were negatively related to thyroid cancer.

Conclusion: The socio-environmental determinants and spatial heterogeneity of thyroid cancer were observed in this study. These findings may improve our understanding of thyroid cancer epidemiology and help guide public health interventions.

Introduction

Thyroid cancer ranks as the 10th most common cancer (1) in the world. Both genetic and environmental factors contribute to the etiology of thyroid cancer. Factors that have been definitively associated with increased risk of thyroid cancer include female sex (female-to-male ratio 3:1); radiation (2, 3); excessive dietary iodine intake (4); mutations of the RET, BRAF, and TP53 genes (1); and autoimmune diseases (e.g., Hashimoto’s thyroiditis) (5).

In addition to the traditional factors (e.g., excessive iodine intake), many other environmental factors have been linked to thyroid cancer. These include air pollution (6, 7), green space (8), ambient temperature (9), ultraviolet radiation (10), and geomorphological features(e.g., altitude and slope) (11). A variety of social factors, including economic status, healthcare, and education level (12, 13), have also been associated with thyroid cancer.

A majority of the past studies focused on the impact of a single factor. Also, the geographical area covered by these studies was typically small. The contribution by other socio-environmental factors and the interaction among these factors were neglected. In this study, we took advantage of the vast socio-environmental disparity in China to tackle this complex issue. The current study was based on 487 county-level cancer registries and included 5 environmental and 3 social factors as independent variables in the analysis. Since linear regression analysis could not capture the interaction among the potential risk factors, Geographical Detector (Geodetector) analysis was used as the primary tool (14). The underlying principle of Geodetector analysis is the spatial consistency between the geographical distribution of the target disease and the risk factor. The degree of association is presented as q statistic: a value of 1 indicates that incidence variation could be solely explained by the factor, and a value of 0 indicates that there is absolutely no contribution of the factor to incidence variation.

Materials and methods

Incidence data

The age-standardized rate (ASR) of thyroid cancer incidence in 2016 was obtained from the 2019 China Cancer Registry Annual Report (the most recent available data). Usually, the cancer incidences of each registry have a 3-year lag behind the current year. This report included a total of 487 subregistries across all 31 provinces, autonomous regions, municipalities, and Xinjiang Production and Construction Corps (15). Particularly, incidence data by gender was used for analysis since the overall incidence of each county was not available. Since all data have been previously published, ethical approval is not applicable.

Environmental and social data

Thyroid cancer determinants from the literature include variant factors in social and environmental aspects, and most of these factors are difficult to measure directly. Nonetheless, the proxy variables of these determinants could be obtained using geographical information system techniques or from published yearbooks (conceptual framework in Figure 1).

FIGURE 1
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Figure 1 Conceptual framework.

The analysis included five environmental factors: annual average fine particulate matter concentration (PM2.5), annual average normalized difference vegetation index (NDVI), annual average temperature, annual average ultraviolet radiance, and altitude. These factors were included as potential risk factors based on previous studies and the availability of accurate estimates. Data on PM2.5 (micrograms per cubic meter) were downloaded from NASA Earthdata (16). Annual average NDVI, temperature, and altitude were extracted from the Resource and Environment Science and Data Center (RESDC) (17). Data on ultraviolet radiance were downloaded from the National Earth System Science Data Center (18).

Three social factors were considered at the provincial level: gross regional product (GRP) per capita, medical personnel per 1,000 people (medical level), and illiterate population percentage (education level). GRP per capita and medical personnel per 1,000 people were obtained from China Health Statistics Yearbook 2017 (19). Illiterate population percentage was obtained from China Population and Employment Statistics Yearbook 2017 (20).

Statistical analysis

Geodetector is based on the core hypothesis that if a risk factor is related to a disease, the distribution of the factor and disease would be spatially consistent (14). This analysis could reduce random effects caused by small samples, and unlike classic linear models, it is immune to collinearity among variables and unrestricted by the assumption of linearity.

The q statistic (range: 0–1) is used to measure the effect or determinant power of a certain factor. The q statistic is calculated as

q=11Aσ2h=1L(Ah·σh2)

In the equation, A is the total area of the study region and σ2 is the variance of the outcome measure (disease incidence). The incidence is dispersed to the L strata (h = 1, 2, …L). Ah and σh2 represent stratum h and the variance of stratum h. q = 1 indicates that the variation in disease incidence can be explained completely by a given factor. q = 0 indicates that there is no association between disease incidence and the factor. Statistical significance was set at P<0.05 (tested using the Geodetector software).

Three detectors of this statistical tool that were implemented in the current study are as follows:

1) The factor detector quantifies the determinant power of each explanatory factor.

2) The interactive detector reveals if two factors, x1 and x2, have an interactive impact on thyroid cancer. This relationship is quantified by

   q(x1x2) including five intervals as follows: weaken, non-linear,

   q(x1x2)<Min(q(x1),q(x2))

   Min(q(x1),q(x2))<q(x1x2)<Max(q(x1),q(x2))

   q(x1x2)>Max(q(x1),q(x2))

   q(x1x2)=q(x1)+q(x2)

   q(x1x2)>q(x1)+q(x2)

   Min(q(x1),q(x2)),Max(q(x1),q(x2)) refer to the minimum and maximum q values of two detected factors, respectively.

3) The risk detector maps statistically significant differences in thyroid cancer incidence in the categories of an explored factor.

Since the analysis is more reliable when exposures are included as categorical data (21), continuous variables were transformed into categorical variables, as previously described (22). The stratification results are shown in Table 1. All data were processed and extracted in grids (10 km × 10 km) with a fishnet tool in ArcGIS 10.7 and then analyzed in Excel format by Geodetector.

TABLE 1
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Table 1 Classification results and strategies of nine factors.

Results

Thyroid cancer incidence in China in 2016

In 2016, 487 cancer registries were included, covering a total of 382 million subjects (194 million men, 188 million women), about 27.60% of the total population in China. Overall, there were 50,424 new thyroid cancer cases (12,240 men and 38,184 women). The overall ASR of thyroid cancer incidence was 9.70/105 with 4.71/105 in men and 14.79/105 in women (15). The spatial distributions of thyroid cancer incidence by gender are shown in Figure 2. Overall, thyroid cancer incidence in women was about 3 times higher than that in men. Higher incidence rates were observed in eastern areas.

FIGURE 2
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Figure 2 Spatial distributions of 487 registries and TC incidence by sex in China, 2016.

Environmental and social determinants of thyroid cancer

The results of the factor detector are shown in Figure 3. All factors had statistically significant determinant power on thyroid cancer (P< 0.05). According to their q values, GRP was the most influential factor that determined the thyroid cancer distribution in women, followed by medical level, ultraviolet radiation, PM2.5, education level, altitude, NDVI, and temperature. As for men, medical level was the most influential factor of thyroid cancer, followed by GRP, ultraviolet radiation, altitude, NDVI, PM2.5, education level, and temperature. For both genders, GRP (men: 0.241, women: 0.254) and MED (men: 0.254, women: 0.240) had the largest impact on thyroid cancer. Most environmental factors had smaller (q< 0.1) determinant power especially temperature which had a q value of only 0.007 in men which implied that this factor had a little influence on men. Noticeably, ultraviolet radiation (q value in women: 0.100) and PM2.5 (q value in women: 0.080) ranked as the third and fourth most dominant factors in women. Another gender difference that was found was that most environmental factors had more determinant power on women, except altitude (men: 0.068, women: 0.059) and NDVI (men: 0.063, women: 0.045).

FIGURE 3
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Figure 3 Results of the factor detector by gender. GRP, gross regional product per capita; MED, medical level; UV, ultraviolet radiation; PM2.5, fine particulate matter; EDU, education level; NDVI, normalized difference vegetation index; TEM, temperature.

Interactions between paired factors

The interactive detector was implemented to find out if two potential risk factors worked separately or independently. The outcomes are presented in Figure 4. Interactions of any paired factors could enhance their impact on thyroid cancer, either a bivariate enhancement or a non-linear one. To interpret the results, the interaction of two pairs of factors including GRP and medical level and GRP and PM2.5 were used as examples. The independent determinant power of GRP, medical level, and PM2.5 on men were 0.241, 0.254, and 0.056, respectively. However, the combination of GRP and medical level enhanced each other with a q value of 0.468 (less than their sum of 0.495 but bigger than either of their independent q), representing a bivariate enhancement. This also indicated that though the enhanced interaction was compromised, medical level was more dominant since its q value is closer to the sum. GRP and PM2.5 operated together resulting in a non-linear enhancement with a q value of 0.318 (bigger than their sum of 0.297), which implied that PM2.5 and GDP immensely strengthened the determinant power of each other.

FIGURE 4
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Figure 4 Interactive results between paired factors, by sex. Green and magenta colors represent men and women, respectively. The diagonal squares were labeled with independent q value of each factor. The intersection of each row and each column represents the interactive determinant power of paired factors. GRP, gross regional product per capita; MED, medical level; UV, ultraviolet radiation; PM2.5, fine particulate matter; EDU, education level; NDVI, normalized difference vegetation index; TEM, temperature.

Spatial patterns of thyroid cancer

The results of the risk detector are shown in Figure 5. Thyroid cancer incidence rates were positively related to PM2.5 concentrations. In the areas with PM2.5 concentration higher than 5.97 μg/m3, the thyroid cancer incidence was significantly higher than that in areas with PM2.5 concentration lower than 5.97 μg/m3. In registries with ultraviolet radiation between 0.67 and 1.11 MJ/m2, thyroid cancer incidence increased; however, it declined as the radiation increased to more than 1.11 MJ/m2. Noticeably, thyroid cancer incidence rates in women declined with increasing temperature and altitude. The incidence in areas with a temperature lower than 5°C was 50% higher than that in warmer areas. It is also worth noting that the negative association between NDVI and thyroid cancer incidence rates was more evident in men than in women. In areas with NDVI between 0.19 and 0.35, the incidence in men was about 2 times higher than in areas with NDVI between 0.82 and 0.89.

FIGURE 5
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Figure 5 Spatial distributions of thyroid cancer incidence rates in different intervals of eight factors. The intervals of each factor are given along the horizontal axis. The vertical axis represents the thyroid cancer incidence rate (1/105). Solid dots and squares are the average thyroid cancer incidence rates in the different subtypes of the eight factors. Green and magenta colors represent men and women, respectively. (A) GRP, gross regional product; (B) medical level; (C) education level; (D) PM2.5, fine particulate matter; (E) NDVI, normalized difference vegetation index; (F) temperature; (G) ultraviolet; (H) altitude.

For social factors, thyroid cancer incidence rates were positively related to GRP and medical level but negatively related to education level. The incidence rates in regions with the highest number of medical personnel (7.1–10.8 per 1,000 people) were nearly 4 times (for women) and 5 times (for men) higher than those in regions with medical personnel between 4.5 and 5.2 per 1,000 people. Though larger fluctuations of thyroid cancer incidence rates were shown when GRP or education level increased, higher incidence rates were often found in regions with better economic status.

Discussion

To the best of our knowledge, this Geodetector-based study is novel in terms of exploring multiple socio-environmental determinants of thyroid cancer on a large spatial scale in China. In addition, our study was under ecological design and collected data from a publicly available data source, which provided an economical and easier way to help develop a better understanding of thyroid cancer epidemiology.

Our results revealed that social factors especially medical level and economic status were the most dominant determinants (q > 0.2) of thyroid cancer in China in 2016. Moreover, thyroid cancer incidence rates appeared to be higher in areas with better development (higher per capita GRP, medical level, lower illiterate rate), which indicated that individuals in these areas had more access to healthcare with good quality; thus, potential overdiagnosis trend might have existed in China. These findings are consistent with previous research. Studies conducted in the USA and Australia (23, 24) found that more access to medical resources and the application of new diagnostic practices might be partially responsible for the rising thyroid cancer incidence, especially papillary thyroid cancer. One Chinese population-based study (25) estimated that in 2017, approximately 1,000 individuals might have been overdiagnosed with thyroid cancer daily, and during the period 2019–2030, more than 5 million patients could be overdiagnosed with thyroid cancer. Therefore, interventions are urgently needed to reduce the overtreatment of thyroid cancer, such as inventing more accurate diagnostic tools or guidelines.

The results of the factor detector showed that most environmental factors had less impact (q< 0.1) on thyroid cancer, but the risk detector disclosed that thyroid cancer incidence tended to increase in registries with severe ambient pollution, less green space, cold climate, more ultraviolet radiation, and lower altitude. Though the basis of the correlations between these environmental factors and thyroid cancer is not well-established, there are some possible explanations. PM2.5 is a surrogate parameter for air pollution and has been classified as one of the carcinogens by the International Agency for Research on Cancer (IACR) (26). It contains non-metal oxides and heavy metals, which could induce oxidative stress reaction leading to DNA damage (27, 28). Additionally, a complex of compounds in PM2.5 could disturb thyroid functions (29) which might potentially increase the risk of thyroid autoimmune diseases that are known as thyroid cancer-related (5). As for cold climate, an inverse correlation between thyroid cancer and temperature has been described in a previous study conducted in the USA (9). Our study observed that thyroid cancer incidence in women was higher in areas with lower ambient temperature in China though temperature had a very limited impact on women with a determinant power of 0.029. The possible bases for this finding are as follows: first, thyroid-stimulating hormone (TSH) increases with the decrease of environmental temperature (29); second, the inherent difference of thyroid hormone level between women and men (30) and a higher level of TSH were defined as a risk factor in some studies (31). Therefore, people, especially women, living in a cold environment are more likely to keep a higher TSH level than women living in a warmer climate and become more prone to thyroid cancer.

NDVI, a parameter implicating vegetation coverage, is often associated with insect-borne, tropical diseases (32). Some investigations mentioned that green space might be protective against several cancers, consistent with our findings that thyroid cancer incidence declined with the increase of vegetation coverage (33, 34) except in regions with poor vegetation and fewer cancer registries since these areas are not ideal habitats. Even though there is no well-established theory to explain the current findings, we speculate that higher vegetation coverage may enhance air quality; thus, exposure to harmful chemical compounds could be reduced.

To date, the results from previous studies suggested that variations in thyroid hormones might be correlated to the change in meteorological factors, but the results were not conclusive (35). In our study, we found that ultraviolet radiation had a certain influence on thyroid cancer (q< 0.1). There was a non-linear relationship between thyroid cancer and ultraviolet radiance. Our results showed that the annual average of ultraviolet radiation in northern, northwestern, and southeastern China exceeded 0.93 MJ/m2; thus, individuals living in these regions are exposed to more ultraviolet radiation. Ultraviolet radiation is considered to induce DNA damage, leading to skin cancer (36). A prospective study in France reported that residential UV exposure is associated with the risk of thyroid cancer (37). Higher thyroid cancer incidence rates observed in these areas might be partially due to increased ultraviolet radiation exposure. Noticeably, we also observed that as the ultraviolet radiation increased to 1.11 MJ/m2, the thyroid cancer incidence declined. Though there is no well-established theory for this trend, our explanation is that, due to the health and economic disparities between eastern and western China (38), only a few cancer registries have been established in areas with ultraviolet radiation exposure at more than 1.11 MJ/m2 (mainly in northwestern and southwestern China). Therefore, a small sample size might not reflect the true effect of exposure to higher ultraviolet radiation.

Another possible explanation is that UV-induced gene damage could be repaired by certain proteins such as DNA photolyase/cryptochrome family, methyltransferase-like 14 (37, 39). It is possible to say that residents habituated to a high level of ultraviolet radiation may have a greater resistance to UV-induced DNA damage by developing a stronger DNA repair response.

One study in the USA also reported a non-linear relation between ultraviolet radiation exposure and thyroid cancer (10); however, a higher ultraviolet radiation exposure increased the risk of thyroid cancer. As for ELE, higher thyroid cancer incidences were observed in low-altitude areas. A possible basis for these findings is that other socio-environmental features on different elevations such as the economic development level, endocrine-disturbing chemicals (EDCs) in the soil and air pollution might also play important roles in the development of thyroid cancer (40). As previous studies suggested (11, 41), on the one hand, human activities, especially industrial production and transportation, tend to take place in lower and flat lands, which could discharge a tremendous amount of deleterious chemicals; on the other hand, environmental pollutants are more likely to accumulate in low-altitude habitats (21). It is plausible to assume that people living in lower lands have much higher exposure to harmful chemicals through the food chain and respiratory pathway, which could increase the risk of thyroid cancer.

It is also worth noting that the interaction between any paired environmental and social factors enhanced each other’s impact on thyroid cancer and the risk areas of all factors were also detected. Taken together, the interests in further research and prevention strategies for thyroid cancer should vary according to the social and environmental characteristics of the study areas. For example, in northern and eastern China, where the health resources are concentrated and air pollution is a challenge, future thyroid cancer epidemiology investigations should focus on overdiagnosis and ambient pollution. In addition, in high-latitude areas such as northwestern China and inner Mongolia, the risk of ultraviolet radiation and cold climate should be taken into consideration.

There are limitations to our study. One of them is ecological fallacy, a common and inherent flaw of ecological studies since the inferences about the nature of individuals are based on the population to which they belong (42). Consequently, our results may not be able to reveal the true relationship between risk factors and thyroid cancer. Individual-level studies should be carried out in the future. Moreover, gender was the only confounding factor considered since other baseline information on population such as age distribution of each registry was not available. We would like to include more confounding factors in our further studies. Another problem is that thyroid cancer includes various subtypes (e.g., papillary, follicular, medullar, and anaplastic), but the environmental or social risk factors for these subtypes remain unclear. The calculation of ASR of thyroid cancer, according to the 2019 China Cancer Registry Annual Report, was based on the new cases from all subtypes of thyroid cancer. However, the incidence of each thyroid cancer subtype was not mentioned in the published data source. Although we have tried to obtain the incidence data of thyroid cancer subtypes, to date, the available data were not found. Perhaps this problem could be addressed in our future work. Lastly, though the incidence data of 2016 with a bigger sample size enabled us to explore the spatial patterns of thyroid cancer with more precision, this study was under a cross-sectional design, which could not reflect the temporal trends of thyroid cancer determinants.

Conclusions

The socio-environmental determinants of thyroid cancer and spatial heterogeneity of thyroid cancer were observed in this study. Social factors, especially economic status and healthcare, exhibited more influences on thyroid cancer, suggesting potential overdiagnosis trends. Interactions between any two factors enhanced their impact on thyroid cancer. Spatial heterogeneity of thyroid cancer indicated that ambient pollution, less green space, cold climate, and ultraviolet radiation were linked to higher thyroid cancer incidences. These findings may help guide public health interventions and improve our understanding of thyroid cancer epidemiology in China. However, this study is under an ecological design, and future investigations at the individual level are needed to confirm our findings.

Data availability statement

The raw data supporting the conclusions of this article will be made available by the authors, without undue reservation.

Ethics statement

Ethical review and approval was not required for the study on human participants in accordance with the local legislation and institutional requirements. Written informed consent from the participants’ legal guardian/next of kin was not required to participate in this study in accordance with the national legislation and the institutional requirements.

Author contributions

SH and BZ contributed to the conceptualization of the study. SH, YL, and BZ completed the methodology. SH applied the software. SH and AS contributed to the data curation and formal analysis. BZ and YL contributed to the investigation. BZ and YL provided the resources. SH wrote the original draft. BZ and YL were responsible for the review and editing of the manuscript, supervision, and project administration. BZ was responsible for the funding acquisition. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Beijing Municipal Natural Science Foundation (Grant No. 7192152) and the Discipline Construction Project of Peking Union Medical College (Grant No. 201920102305).

Acknowledgments

The authors thank Dr. L. Wang for the valuable advice on statistical analyses and K. Zhang for the text review and valuable advice.

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

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.

References

1. Sung H, Ferlay J, Siegel RL, Laversanne M, Soerjomataram I, Jemal A, et al. Global cancer statistics 2020: Globocan estimates of incidence and mortality worldwide for 36 cancers in 185 countries. CA Cancer J Clin (2021) 71(3):209–49. doi: 10.3322/caac.21660

PubMed Abstract | CrossRef Full Text | Google Scholar

2. Furukawa K, Preston D, Funamoto S, Yonehara S, Ito M, Tokuoka S, et al. Long-term trend of thyroid cancer risk among Japanese atomic-bomb survivors: 60 years after exposure. Int J Cancer (2013) 132(5):1222–6. doi: 10.1002/ijc.27749

PubMed Abstract | CrossRef Full Text | Google Scholar

3. Iglesias ML, Schmidt A, Ghuzlan AA, Lacroix L, Vathaire F, Chevillard S, et al. Radiation exposure and thyroid cancer: A review. Arch Endocrinol Metab (2017) 61(2):180–7. doi: 10.1590/2359-3997000000257

PubMed Abstract | CrossRef Full Text | Google Scholar

4. Zimmermann MB, Galetti V. Iodine intake as a risk factor for thyroid cancer: A comprehensive review of animal and human studies. Thyroid Res (2015) 8:8. doi: 10.1186/s13044-015-0020-8

PubMed Abstract | CrossRef Full Text | Google Scholar

5. Ferrari SM, Fallahi P, Elia G, Ragusa F, Ruffilli I, Paparo SR, et al. Thyroid autoimmune disorders and cancer. Semin Cancer Biol (2020) 64:135–46. doi: 10.1016/j.semcancer.2019.05.019

PubMed Abstract | CrossRef Full Text | Google Scholar

6. Cong X. Air pollution from industrial waste gas emissions is associated with cancer incidences in shanghai, China. Environ Sci pollut Res Int (2018) 25(13):13067–78. doi: 10.1007/s11356-018-1538-9

PubMed Abstract | CrossRef Full Text | Google Scholar

7. Turner MC, Krewski D, Diver WR, Pope CA 3rd, Burnett RT, Jerrett M, et al. Ambient air pollution and cancer mortality in the cancer prevention study ii. Environ Health Perspect (2017) 125(8):087013. doi: 10.1289/EHP1249

PubMed Abstract | CrossRef Full Text | Google Scholar

8. Zare Sakhvidi MJ, Yang J, Siemiatycki J, Dadvand P, de Hoogh K, Vienneau D, et al. Greenspace exposure and cancer incidence: A 27-year follow-up of the French gazel cohort. Sci Total Environ (2021) 787:147553. doi: 10.1016/j.scitotenv.2021.147553

PubMed Abstract | CrossRef Full Text | Google Scholar

9. Lehrer S, Rosenzweig KE. Cold climate is a risk factor for thyroid cancer. Clin Thyroidol (2014) 26(10):273–6. doi: 10.1089/ct.2014;26.273-276

PubMed Abstract | CrossRef Full Text | Google Scholar

10. Lin SW, Wheeler DC, Park Y, Cahoon EK, Hollenbeck AR, Freedman DM, et al. Prospective study of ultraviolet radiation exposure and risk of cancer in the united states. Int J Cancer (2012) 131(6):E1015–23. doi: 10.1002/ijc.27619

PubMed Abstract | CrossRef Full Text | Google Scholar

11. Fei X, Wu J, Liu Q, Ren Y, Lou Z. Spatiotemporal analysis and risk assessment of thyroid cancer in hangzhou, China. Stoch Environ Res Risk Assess (2015) 30(8):2155–68. doi: 10.1007/s00477-015-1123-4

CrossRef Full Text | Google Scholar

12. Goodarzi E, Moslem A, Feizhadad H, Jarrahi A, Adineh H, Sohrabivafa M, et al. Epidemiology, incidence and mortality of thyroid cancer and their relationship with the human development index in the world: An ecology study in 2018. Adv Hum Biol (2019) 9(2):162–7. doi: 10.4103/AIHB.AIHB_2_19

CrossRef Full Text | Google Scholar

13. Hanley JP, Jackson E, Morrissey LA, Rizzo DM, Sprague BL, Sarkar IN, et al. Geospatial and temporal analysis of thyroid cancer incidence in a rural population. Thyroid (2015) 25(7):812–22. doi: 10.1089/thy.2015.0039

PubMed Abstract | CrossRef Full Text | Google Scholar

14. Wang JF. Geodetector, software for measure and attribution of spatial stratified heterogeneity (SSH) (2017). Available at: http://www.geodetector.cn/ (Accessed March 28, 2021).

Google Scholar

15. He J, Chen WQ. 2019 China cancer registry annual report. 1st ed. Beijing: People's Medical Publishing House (2021) p. 270–756.

Google Scholar

16. van Donkelaar A, Martin RV, Brauer M, Hsu NC, Kahn RA, Levy RC, et al. Global Annual PM2.5 Grids from MODIS, MISR and SeaWiFS Aerosol Optical Depth (AOD) with GWR, 1998-2016. (2018) Palisades NY: NASA Socioeconomic Data and Applications Center (SEDAC) (Accessed April 23, 2021). doi: 10.7927/H4ZK5DQS

CrossRef Full Text | Google Scholar

17. Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences. Resource and environment science and data center. Available at: http://www.resdc.cn/ (Accessed November 19, 2020).

Google Scholar

18. National Earth System Science Data Center, National Science&Technology Infrastructure of China. Average monthly ultraviolet radiation dataset with 10km resolution, 1991-2000 (Accessed July 20, 2022).

Google Scholar

19. National Health Commission of the People’s Republic of China. 2017 China health statistics yearbook. 1st ed. Beijing: Peking Union Medical College Press (2017).

Google Scholar

20. National Bureau of Statistics of China. 2017 China population &Employment statistics yearbook. 1st ed. Beijing: China Statistics Press (2017).

Google Scholar

21. Wang JF, Li XH, Christakos G, Liao YL, Zhang T, Gu X, et al. Geographical detectors-based health risk assessment and its application in the neural tube defects study of the heshun region, China. Int J Geogr Inf Sci (2010) 24(1):107–27. doi: 10.1080/13658810802443457

CrossRef Full Text | Google Scholar

22. Cao F, Ge Y, Wang J-F. Optimal discretization for geographical detectors-based risk assessment. GISci Remote Sens (2013) 50(1):78–92. doi: 10.1080/15481603.2013.778562

CrossRef Full Text | Google Scholar

23. Sprague BL, Warren Andersen S, Trentham-Dietz A. Thyroid cancer incidence and socioeconomic indicators of health care access. Cancer Causes Control (2008) 19(6):585–93. doi: 10.1007/s10552-008-9122-0

PubMed Abstract | CrossRef Full Text | Google Scholar

24. Rahman ST, McLeod DSA, Pandeya N, Neale RE, Bain CJ, Baade P, et al. Understanding pathways to the diagnosis of thyroid cancer: Are there ways we can reduce over-diagnosis? Thyroid (2019) 29(3):341–8. doi: 10.1089/thy.2018.0570

PubMed Abstract | CrossRef Full Text | Google Scholar

25. Liu Y, Lai F, Long J, Peng S, Wang H, Zhou Q, et al. Screening and the epidemic of thyroid cancer in China: An analysis of national representative inpatient and commercial insurance databases. Int J Cancer (2021) 148(5):1106–14. doi: 10.1002/ijc.33298

PubMed Abstract | CrossRef Full Text | Google Scholar

26. Fiore M, Oliveri Conti G, Caltabiano R, Buffone A, Zuccarello P, Cormaci L, et al. Role of emerging environmental risk factors in thyroid cancer: A brief review. Int J Environ Res Public Health (2019) 16(7):1185. doi: 10.3390/ijerph16071185

PubMed Abstract | CrossRef Full Text | Google Scholar

27. Rodrigues AS, Arruda MS, Garcia PV. Evidence of DNA damage in humans inhabiting a volcanically active environment: A useful tool for biomonitoring. Environ Int (2012) 49:51–6. doi: 10.1016/j.envint.2012.08.008

PubMed Abstract | CrossRef Full Text | Google Scholar

28. Grzywa-Celinska A, Krusinski A, Milanowski J. 'Smoging kills' - effects of air pollution on human respiratory system. Ann Agric Environ Med (2020) 27(1):1–5. doi: 10.26444/aaem/110477

PubMed Abstract | CrossRef Full Text | Google Scholar

29. Zeng Y, He H, Wang X, Zhang M, An Z. Climate and air pollution exposure are associated with thyroid function parameters: A retrospective cross-sectional study. J Endocrinol Invest (2020):1515–23. doi: 10.1007/s40618-020-01461-9

PubMed Abstract | CrossRef Full Text | Google Scholar

30. Wang D, Cheng X, Yu S, Qiu L, Lian X, Guo X, et al. Data mining: Seasonal and temperature fluctuations in thyroid-stimulating hormone. Clin Biochem (2018) 60:59–63. doi: 10.1016/j.clinbiochem.2018.08.008

PubMed Abstract | CrossRef Full Text | Google Scholar

31. Schiffmann L, Kostev K, Kalder M. Association between various thyroid gland diseases, tsh values and thyroid cancer: A case-control study. J Cancer Res Clin Oncol (2020) 146(11):2989–94. doi: 10.1007/s00432-020-03283-x

PubMed Abstract | CrossRef Full Text | Google Scholar

32. Cao Z, Liu T, Li X, Wang J, Lin H, Chen L, et al. Individual and interactive effects of socio-ecological factors on dengue fever at fine spatial scale: A geographical detector-based analysis. Int J Environ Res Public Health (2017) 14(7):795. doi: 10.3390/ijerph14070795

PubMed Abstract | CrossRef Full Text | Google Scholar

33. Datzmann T, Markevych I, Trautmann F, Heinrich J, Schmitt J, Tesch F. Outdoor air pollution, green space, and cancer incidence in Saxony: A semi-individual cohort study. BMC Public Health (2018) 18(1):715. doi: 10.1186/s12889-018-5615-2

PubMed Abstract | CrossRef Full Text | Google Scholar

34. Porcherie M, Linn N, Le Gall AR, Thomas MF, Faure E, Rican S, et al. Relationship between urban green spaces and cancer: A scoping review. Int J Environ Res Public Health (2021) 18(4):1751. doi: 10.3390/ijerph18041751

PubMed Abstract | CrossRef Full Text | Google Scholar

35. Mahwi TO, Abdulateef DS. Relation of different components of climate with human pituitary-thyroid axis and Ft3/Ft4 ratio: A study on euthyroid and sch subjects in two different seasons. Int J Endocrinol (2019) 2019:2762978. doi: 10.1155/2019/2762978

PubMed Abstract | CrossRef Full Text | Google Scholar

36. Vechtomova YL, Telegina TA, Buglak AA, Kritsky MS. UV radiation in DNA damage and repair involving DNA-photolyases and cryptochromes. Biomedicines (2021) 9(11):1564. doi: 10.3390/biomedicines9111564

PubMed Abstract | CrossRef Full Text | Google Scholar

37. Mesrine S, Kvaskoff M, Bah T, Wald L, Clavel-Chapelon F, Boutron-Ruault MC. Nevi, ambient ultraviolet radiation, and thyroid cancer risk: A French prospective study. Epidemiology (2017) 28(5):694–702. doi: 10.1097/EDE.0000000000000673

PubMed Abstract | CrossRef Full Text | Google Scholar

38. Chiang YC, Chu M, Zhang S. Social factors tend to decline age-standardized all-cause mortality rates in China during 2005-2015: Evidence from an ecological study. Public Health (2021) 196:158–64. doi: 10.1016/j.puhe.2021.04.034

PubMed Abstract | CrossRef Full Text | Google Scholar

39. Yang Z, Yang S, Cui YH, Wei J, Shah P, Park G, et al. Mettl14 facilitates global genome repair and suppresses skin tumorigenesis. Proc Natl Acad Sci U.S.A. (2021) 118(35):e2025948118. doi: 10.1073/pnas.2025948118

PubMed Abstract | CrossRef Full Text | Google Scholar

40. Boas M, Feldt-Rasmussen U, Main KM. Thyroid effects of endocrine disrupting chemicals. Mol Cell Endocrinol (2012) 355(2):240–8. doi: 10.1016/j.mce.2011.09.005

PubMed Abstract | CrossRef Full Text | Google Scholar

41. Zhang Z, Su S, Xiao R, Jiang D, Wu J. Identifying determinants of urban growth from a multi-scale perspective: A case study of the urban agglomeration around hangzhou bay, China. Appl Geogr (2013) 45:193–202. doi: 10.1016/j.apgeog.2013.09.013

CrossRef Full Text | Google Scholar

42. Sedgwick P. Understanding the ecological fallacy. BMJ (2015) 351:h4773. doi: 10.1136/bmj.h4773

PubMed Abstract | CrossRef Full Text | Google Scholar

Keywords: thyroid cancer, environmental, social, risk factor, ecological study, geographical detector

Citation: Huo S, Liu Y, Sun A and Zhang B (2022) Environmental and social determinants of thyroid cancer: A spatial analysis based on the Geographical Detector. Front. Endocrinol. 13:1052606. doi: 10.3389/fendo.2022.1052606

Received: 24 September 2022; Accepted: 08 November 2022;
Published: 29 November 2022.

Edited by:

Veronica Vella, University of Catania, Italy

Reviewed by:

Giuseppe Fanciulli, University of Sassari, Italy
Tatjana Bogović Crnčić, University of Rijeka, Croatia

Copyright © 2022 Huo, Liu, Sun and Zhang. 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: Bo Zhang, throidus@163.com

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