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ORIGINAL RESEARCH article

Front. Microbiol., 29 April 2022
Sec. Infectious Agents and Disease

The Gut Microbiota: Master of Puppets Connecting the Epidemiology of Infectious, Autoimmune, and Metabolic Disease

  • Athena Institute for Research on Innovation and Communication in Health and Life Sciences, Vrije Universiteit Amsterdam, Amsterdam, Netherlands

Infectious, autoimmune, and metabolic diseases put an enormous pressure on both quality of life and the economy. For all three disease types, it is known that the quality of the gut microbiota composition is correlated to both onset and progression of disease. Hence, maintaining eubiosis and preventing gradual irreversible loss of beneficial microbes within the gut microbial ecosystem is of utmost importance. As such, the epidemiological trends of these disease types may serve as proxies for the integrity of the human gut microbiota. Here, we present incidence data covering the last decades for prototypical infectious diseases (tuberculosis and measles), autoimmune disorders (type-1 diabetes and multiple sclerosis), and the prevalence of metabolic syndrome. Our findings reveal that vaccination efforts correlate with relatively low levels of archetypal infectious disease incidence. However, autoimmune and metabolic disorders are, together with the usage of antibiotics, steeply on the rise. These findings suggest that the status of the gut microbiota is persistently deteriorating, as reflected by the proxies. As such, the epidemiological trends shown here may serve as a starting point for a mechanistic understanding of the interplay between these different disease types that can be used for future prevention and mitigation strategies like targeted stimulation and suppletion of microorganisms by means of, e.g., fermented foods, prebiotics and probiotics.

Introduction

The twenty-first century boldly demonstrates that infectious diseases are far from eradicated, exemplified by emerging zoonotic diseases like SARS, MERS and, most notably, COVID-19 (Allen et al., 2017; Hu et al., 2021). The impact of this trend cannot be underestimated. Currently, the SARS-CoV-2 pandemic has resulted in about 6 million deaths globally (WHO, 2022), while the global population growth is expected to decelerate, caused by, among other factors, continued flare ups of COVID-19 (World Bank, 2022). On top of that, it is predicted that more infectious diseases will emerge, driven by processes like international travel and trade, labor migration and increasing population density (Jones et al., 2008; Elias et al., 2021). Hence, new strategies that efficiently tackle these emerging pandemics, like the proposed blockchain-facilitated sharing of research efforts (van der Waal et al., 2020), are of utmost importance to warrant quality of life and economic stability for the future.

While infectious diseases are generally spread by the transmission of pathogenic microorganisms between humans, zoonotic diseases like COVID-19 involve not only interhuman interactions but also other ecosystems like soil and animals. As such, it is a prerequisite to get a thorough understanding of both the pathogenic and mutualistic microbial interactions crossing these different domains in order to effectively prevent and manage possible new outbreaks (Larsen and van de Burgwal, 2021). For instance, it is nowadays well established that a balanced gut microbiota (eubiotic state) is a prerequisite for developing an adequate immune response system (Maynard et al., 2012). Proper maintenance of the gut microbiota requires continuous replenishment of microorganisms, and hence one should prevent diminished exchange of beneficial microorganisms between different domains. Especially in early childhood, limited exposure to specific microorganisms (“old friends”) is indicated to give rise to suboptimal functioning of the immune system (Rook and Brunet, 2005). Indeed, earlier results showed that a diminished exposure to microorganisms in early life is correlated to a higher susceptibility to health problems like atopic diseases and behavioral problems (Von Mutius et al., 2000; Dawson et al., 2021).

The integrity of the human gut microbiota is shown to be correlated with the susceptibility to and the outcome of infectious, metabolic, and autoimmune diseases (Libertucci and Young, 2019). This has become even more pronounced with the onset of the SARS-CoV-2 pandemic. Right at the start of the pandemic, the gut microbiota was suggested to influence the course of COVID-19 disease (Dhar and Mohanty, 2020). Recently, a cohort study indeed demonstrated that the gut microbiota composition is linked with disease severity for patients with COVID-19 (Yeoh et al., 2021). Moreover, in line with metabolic diseases being (causally) related to the gut microbiota (Fan and Pedersen, 2021), SARS-CoV-2 infection is now being recognized as exacerbator of metabolic disease complications (le Roux, 2021). Vice versa, while dysbiosis of the gut microbiota has been linked to autoimmune disease development before (Wu and Wu, 2012; Xu et al., 2019), it is now shown to also increase the risk for developing COVID-19 (Akiyama et al., 2021).

Taken all this, the recent historic trends in infectious, autoimmune, and metabolic disease should be investigated, as these data can serve as proxies for our exposure to beneficial microbes. This exposure contributes to the integrity of the gut microbiota and hence our resilience toward disease in general. Insights into disease trends are urgently needed; earlier perspectives already warned for the consequences of a gradual loss of our gut microbes (Blaser and Falkow, 2009). Population-wide losses of beneficial microbes are not only dependent on improved hygiene, but also on the usage of antibiotics. The consequences of which are not limited to reduced resilience against (newly emerging) infectious diseases, as Bach’s seminal 2002 paper already showed a rapid increase in the incidence of autoimmune diseases like Type-1 Diabetes (T1D) and asthma in the Western world during the last 50 years of the twentieth century. This increase was accompanied by a profound decline in the incidence of “classical” infectious diseases like tuberculosis and measles, attributed to improved hygiene and vaccination programs (Bach, 2002).

Therefore, we inventoried the incidence of various archetypical, “classical” infectious diseases for the last 40 years, providing an update of the data presented in Bach (2002). With “classical” we exclude newly emerging infectious disease like SARS and COVID-19, as their historical data only covers very few years, hence having limited statistical validity. Next to this, we collected incidence data of several autoimmune diseases during the same time period, as well as the prevalence of metabolic disease. These data were put in perspective by data on antibiotics usage and vaccination coverage, which we also analyzed.

Materials and Methods

Study Demarcation and Data Collection

Similar to Bach (2002), we included data from a number of countries in Western Europe and the United States. The countries from Western Europe comprised Finland, France, Germany, Italy, the Netherlands, and the United Kingdom, to cover the north-south gradient within Western Europe that may attribute to differences in autoimmune disease incidence (Bach, 2002). Data from 1980 to 2020 were covered in this study, to be able to make a comparison with trends presented by Bach (2002) regarding the twentieth century, as well as provide insight into whether and, if so, how these trends continue into the twenty-first century.

The epidemiological data of two infectious diseases, two autoimmune diseases and one metabolic disease were included in this study. Tuberculosis (TB) was chosen to represent infectious diseases as the disease is still prevalent in most countries and the pathogenesis is similar to COVID-19. Data on TB was extracted from the 2020 Global Tuberculosis report of the World Health Organization (WHO, 2020a), which contained the number of reported cases for all included countries from 1980 until 2019. Also, data on vaccine coverage was included to provide a clear overview of the effects of vaccination. The Bacillus Calmette–Guérin (BCG) vaccine against TB is currently not mandatory in any of the investigated countries, however, in Germany, Finland, and France, this was the case until 1998, 2006, and 2007, respectively (Zwerling et al., 2011).

Data on measles was also collected, as this infectious disease can be considered archetypical in its mode of transmission as well as in being vaccine preventable. Presently, measles vaccination is highly recommended in Finland, the Netherlands, and the United Kingdom and mandatory in Germany, France, Italy and the United States (Our World in Data, 2021). Therefore, analogous to the data on BCG vaccine coverage, data on Measles-Containing-Vaccine dose 1 (MCV1) coverage was included as well. The WHO vaccine-preventable diseases monitoring system (WHO, 2020b) was used to retrieve data on measles incidence, and BCG and MCV1 vaccination coverage since 1980 for the included countries. The data were further supplemented with data from Vanderslott et al. (2019), providing information on vaccine coverage in years not included in the WHO data.

T1D and Multiple Sclerosis (MS) were included as archetypical autoimmune diseases due to their different characteristics. Whereas T1D is an autoimmune disorder that is mostly diagnosed at a young age, MS is a neurological disorder that is usually diagnosed in a later stage of life and progresses during the course of life (Milo and Miller, 2014). For T1D, several published articles provided data on the incidence in the included countries or representative regions thereof during varying time periods [United States: 2001–2015 (Rogers et al., 2017), Netherlands: 1999 and 2011 (Fazeli Farsani et al., 2016), Finland: 1984–2005 (Harjutsalo et al., 2008), 2006–2011 (Harjutsalo et al., 2013), 2014 and 2018 (Parviainen et al., 2020), France: 2010–2015 (Piffaretti et al., 2019), Germany and United Kingdom: 1993–2013 (Patterson et al., 2019), Italy: 1992–2003 (Bruno et al., 2010)]. When the incidences of T1D in representative regions were provided, a weighted average was calculated to estimate the incidence rate for the entire country. Most studies focused on children between the age of 0–14 years, however, two studies (Fazeli Farsani et al., 2016; Rogers et al., 2017) included all children below the age of 19. As most cases of T1D are diagnosed in children around 13–14 years old (CDC, 2021), we did not consider this to significantly skew the data. For MS, individuals who were newly diagnosed at all ages were included. The Atlas of MS created by the MS International Federation (MSIF) provided data on the incidence of MS at three points in time (2008, 2013, 2020) for the countries included in this study (MSIF, 2020).

The prevalence and incidence of metabolic diseases are growing at an alarming rate, and metabolic syndrome (MetS) in particular has been deemed an epidemic (Vrdoljak et al., 2022). MetS data were included to gain insight into the growing problem of and to compare trends in the incidences of infectious, autoimmune, and also metabolic disease. Data on MetS prevalence in the United States were derived from articles based on the Centers for Disease Control and Prevention (CDC) National Health and Nutrition Examination Survey (NHANES) and consisted of data on individuals ≥20 years of age, suffering from three or more indications required for the diagnosis of MetS (Aguilar et al., 2015; Marcotte-Chenard et al., 2019; Liang et al., 2021). As the NHANES was performed biannually since 1999, only data from 1999 to 2018 were included in this study.

Antibiotics are frequently used as a highly effective treatment for bacterial infections, but they can also lead to antimicrobial resistance (AMR) or infections with opportunistic pathogens (Raplee et al., 2021). Data on antibiotics usage were included to study its effect on the incidence of infectious, autoimmune and metabolic disease from 1980 to 2020 as well as provide insight into possible developing trends of antimicrobial resistance. Data on the use of antibiotics was retrieved from the antimicrobial consumption database (ESAC-Net) of the European Centre for Disease Prevention and Control (ECDC, 2020). This database uses the Anatomical Therapeutic Chemical (ATC) classification system. Anti-infectives classified as ATC J, consisting of all antibacterials, antimycotics, antimycobacterials, and antivirals for systemic use, were included in this study. To the best of our knowledge, no data could be found for the United States and for the period 1980–1996. Additionally, since data on antibiotics use in the hospital sector were largely incomplete, this study only included antibiotics use specified by the ECDC as “community (primary care sector).” For clarity, in this study the term antibiotics refers to antimicrobials in general and not solely to antibacterials.

Data Analysis

In this study the incidence was determined, as it provides crucial information on the rate at which the disease is spreading in case of infectious diseases (Williams and Wright, 1998). The incidence of autoimmune diseases can indicate if the disease is becoming a more significant problem for public health. If the incidence of autoimmune diseases remains stable, this indicates that there is no change in factors that influence the development of the disease. However, if the incidence of autoimmune diseases is increasing, this means that either factors are changing that influence the development of the disease, or detection methods have improved. For both MS and T1D, there are no new methods to diagnose disease that have been widely incorporated in the period of 1980–2020.

Based on the available newly reported cases of each disease for each country every year, the incidence per 100,000 inhabitants in that year was calculated. Data on the annual population of each of the included countries were retrieved from the World Population Prospects by the United Nations (2019). Since the data on T1D is based on the incidence of the disease in 0–14-year-olds, the incidence was not measured per 100,000 inhabitants, but rather per 100,000 person-years. This unit of measurement indicates the total amount of time contributed by each individual while they remained at risk (Boskey, 2020). For MetS, the prevalence is displayed, rather than the incidence. This is because individuals with MetS are not diagnosed at one identifiable point since it is an accumulation of symptoms. Additionally, as one of the included studies on MetS prevalence presented data per ethnicity (Marcotte-Chenard et al., 2019), a weighted average was calculated based on the ethnicity data of the United States population included in that study. The vaccination coverage for BCG against TB and MCV1 against measles is displayed as the percentage of 1-year-olds that were immunized that year. Regarding antibiotics use, according to the ECDC, the antibiotics consumption is measured in Defined Daily Dose (DDD) per 1,000 inhabitants per day.

To enhance clarity of the data visualization, trendlines were presented. For data on the incidence of T1D and MS, as well as the percentage of the United States population with MetS and antibiotics consumption in European countries, a linear trendline was added as a guide for the eye. For the incidence data on TB and measles, an exponential trendline was added as a guide for the eye. These trendlines were constructed by calculating the average value of all included countries per year and formulating a linear or exponential equation based on the values of all available years. Significance of a trend (based on averages) was calculated using the Mann Kendall Trend Test performed in R (R Core Team, 2020).

Results

Incidences of Prototypical Infectious Diseases Decrease to Low Plateau Values

The incidences (measured in numbers of new cases per 100,000 inhabitants) of two common infectious diseases, TB and measles were constructed for several Western European countries as well as for the United States, for the time period 1980–2019. As displayed in Figures 1A,C, the incidences of both diseases in selected countries rapidly decreased during this time period. For TB, the incidence in Italy remained relatively stable, being ∼6 in 1980, and ∼5 in 2019. Contrastingly, the incidences in Finland, Germany and France declined drastically during the last four decades, with Finland having an incidence of ∼47 in 1980, that lowered steeply to ∼4 in 2019. For the Netherlands, the United Kingdom and the United States, this lowering in incidence was also observed, albeit less pronounced since initial 1980 values were already low (19, 12, and 12 respectively). The data of the last 5 years of analysis did not show any particular trend up- or downwards, suggesting a plateau is reached, with incidences lower than 10 for all countries.

FIGURE 1
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Figure 1. While incidences of prototypical infectious diseases declined, incidences of autoimmune diseases increased. Figure shows incidences of prototypical infectious and autoimmune diseases for Finland, France, Germany, Italy, the Netherlands, United Kingdom and United States. The trendlines (exponential for TB and measles incidences, and linear for T1D and MS incidences) are based on the average values, and merely serve as a guide to the eye. A Mann Kendall Trend Test was performed for all figures (except for the data on MS due to the limited amount of data). The test showed significance: P < 0.05, for all incidences (except for the MS data, which did not allow a test to be performed). (A) The incidence of TB from 1980 until 2019. (B) The incidence of T1D from 1984 until 2018. (C) The incidence of measles from 1980 until 2019. (D) The incidence of MS from 2008 until 2020.

As shown in Figure 1C, measles has, just like TB, almost been eradicated in the selected countries. The incidence data show a pronounced decrease for all countries. Flare ups of the virus are clearly visible during the timespan 1980–2000. When zooming in on the last two decades, only minor temporary outbreaks of the virus are detected. Nevertheless, in comparison to measles incidences in the twentieth century, the associated numbers are very minor, with the highest incidence being ∼24 in 2011 in France, as compared to ∼276 in 1991, indicating a tenfold decrease.

Incidences of Prototypical Autoimmune Diseases Anticorrelate With the Incidences of Common Infectious Diseases

Data on the incidences of autoimmune diseases was more challenging to retrieve, as compared to the data of infectious diseases. Several articles on the incidences of T1D of children between 0–14 and 0–19 years old (for the Netherlands and United States only) were found and included in this study. Although data was not available for every year for the countries studied, a clear upward trend was observed when merging the available data, as can be seen in Figure 1B. The incidence in Finland seems to be declining after steadily rising until ∼2005. Nevertheless, also for Finland an increase in the incidence was clearly observed when examining the total timespan from 1980 to 2019. We included a linear trendline based on the average values for clarity.

The Atlas of MS provided a clear and nearly complete dataset on the incidences of MS for the total population of the studied countries for the years 2008, 2013, and 2020. Just like for T1D, a convincing trend upward can be observed, which is also confirmed by the linear trendline that we included (Figure 1D), based on the average values. Using this trendline it can be estimated that the MS incidence on average doubled between 2008 and 2020, for the countries selected. In 2008, the average incidence equaled ∼4, whereas a number of ∼9 was found in 2020.

The Prevalence of MetS in the United States Persistently Rises to Almost 40%

In Figure 2, the prevalence of MetS was constructed from three articles published in scientific literature, all three based on the CDC NHANES. All articles used provided the percentages of individuals ≥20 years old with three or more indications for MetS. A trendline was constructed based on average values for clarity as well. The percentage of the United States population suffering from MetS has been increasing over the past two decades. While the prevalence in the year 2000 was already close to 30%, it reached close to 40% in 2018, emphasizing the immense scale of this problem.

FIGURE 2
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Figure 2. Prevalence of MetS in the United States. The percentage of people in the United States suffering from at least 3 indications responsible for MetS. Data derived from 3 articles based on NHANES by CDC. A linear trendline was added as guide to the eye (Mann Kendall Trend test: P < 0.05).

Antibiotics Usage Shows Moderate Increase Over the Last Decades in Europe

To get insight on antibiotics usage and possible associated AMR, we provide an overview of antibiotics consumption in Western European countries for the period 1997–2019 (Figure 3). The antibiotics consumption, as defined by the DDD per 1,000 inhabitants and per day seems relatively stable. According to the trendline we constructed, based on the average, a moderate increase of ∼0.09 DDD per year is seen. Hence, based on this number, an increase from ∼16.5 DDD on average in 1997 to ∼18.5 DDD in 2019 on average can be deduced, corresponding to an increase of ∼12%. Interestingly, the countries with the highest DDD are located in Southern Europe (Italy, France) whereas the more Western and Northern European countries displayed a lower DDD. Data on antibiotics consumption from the United States could not be retrieved.

FIGURE 3
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Figure 3. Antibiotics usage in Europe. Antibiotics consumption in Defined Daily Dose per 1000 inhabitants and per day in Western European countries, from 1997 until 2019. A linear trendline was added as guide to the eye (Mann Kendall Trend test: P < 0.05).

Vaccination Coverage Is Associated With the Stabilization of Infectious Disease Incidence

We investigated vaccination coverages for both TB and measles in the countries studied. Finland, France and Germany included the BCG vaccine in their vaccination program, inducing immunity against TB. As can be seen in Figure 4A, the vaccination coverage of Finland was close to 100% (in fact 98%) for 1-year-olds immunized from 1991 until 2006, when the mandatory vaccination stopped. In France, the vaccination coverage was lower, fluctuating between 77 and 85% during the same time period until mandatory vaccination stopped in 2007. When these countries stopped vaccinating with BCG, the number of new cases stabilized at approximately 4 and 7 new cases per 100,000 inhabitants per year, respectively. Although the BCG vaccine was also mandatory in Germany until 1998, no vaccination coverage data could be retrieved.

FIGURE 4
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Figure 4. Vaccination coverages for TB and measles. (A) Vaccination coverage of BCG vaccine and corresponding incidence of TB in Finland and France between 1980 and 2019. Line graphs represent the BCG vaccination coverage. Bar graphs represent the incidence of TB per 100,000 inhabitants. (B) Percentage of 1-year-olds immunized with MCV1 per country between 1980 and 2019. Line graphs represent the MCV1 vaccination coverage. Bar graphs represent the incidence of measles per 100,000 inhabitants.

In Figure 4B, the percentage of immunized 1-year-olds from each country studied is presented for the measles-containing-vaccine dose-one (MCV1). In 1980, vaccination coverage of MCV1 was relatively high for both the Netherlands and the United States (91 and 86%, respectively), whereas vaccination coverages as low as 25% were observed for Germany. However, in 2014, at least 90% of all 1-year-olds in all the countries studied was vaccinated, and a stabilization of vaccination coverage was observed. When comparing the incidences of measles with the MCV1 vaccine coverage, both displayed in Figure 4B, a correlation between reaching a plateau in incidence and reaching a plateau in vaccination coverage can be seen, which approximately sets in at the year 2000.

Discussion

Our data demonstrate that prototypical autoimmune disease incidence is still steadily increasing and accompanied by a plateauing decline in prototypical infectious disease incidence. Moreover, our data show a strong association between the level of eradication of infectious disease and the population coverage of vaccination programs. Two decades after Bach’s seminal paper indicating a clear link between reduced infectious disease incidence and increased autoimmune and allergic disease incidence (Bach, 2002), the trend has not been reverted but rather continues into the twenty-first century. These results are a reinforcement of the epidemiological trends observed in the twentieth century, that were interpreted as resulting not only from effective vaccination programs and improved hygienic standards, but also from diminished exchange of beneficial microorganisms between different domains. Decreased exposure especially in early childhood, is recognized to give rise to a disproportional immune response towards these beneficial microbes (“old friends”) in later life, contributing to the onset of autoimmune type indications (Rook and Brunet, 2005).

Our data demonstrate a sharp increase in autoimmune disease, as exemplified by the incidences of T1D and MS. In general, autoimmunity is considered to be a predisposition for infectious disease (Maddur et al., 2010). The autoimmune indication T1D increases the severity of COVID-19 symptoms significantly, just like its metabolic counterpart Type-2 Diabetes (T2D) (Gregory et al., 2021). However, recent meta-analyses suggest that, in general, autoimmune diseases do not lead to a more severe outcome of COVID-19 (Liu et al., 2020; Druyan et al., 2021). The comorbidities that patients with autoimmune indications may suffer from, as well as the immune therapies these patients receive, can, however, lead to increased vulnerability to COVID-19, as was recently shown for MS patients (Chaudhry et al., 2021; Reder et al., 2021).

Next, our data show a profound increase in prevalence of MetS in the United States, being close to 40% in 2018. Obesity and metabolic syndrome are known to impact immunity, leading to increased susceptibility to infectious disease, its associated disease progression and vaccine efficacy (Karlsson and Beck, 2010; Andersen et al., 2016). Moreover, perturbations in the cross talk between the immune and metabolic system may lead to autoimmune disease (Zmora et al., 2017; Medina et al., 2018). Recent data obtained by CDC has shown that for hospitalized COVID-19 patients, the prevalence of metabolic indications ranked highest (up to ∼50%) when listing underlying comorbidities, with essential hypertension, disorders in lipid metabolism, obesity, diabetes with complication, and atherosclerosis and other heart disease comprising the top 5 of indications (Gundlapalli, 2021). SARS-CoV-2 is now being recognized as a facilitator of metabolic disease complications.

Antibiotics usage can lead to the propagation of AMR genes in the human microbiota—the resistome—and the societal effects are staggering. A recent study showed that over 1.2 million deaths in 2019 can be attributed to bacterial AMR (Murray et al., 2022). As the resistome is inherited maternally as well as developed throughout life (Pärnänen et al., 2018), this problem is likely to further exacerbate in the coming years. While the rise of AMR is an alarming health problem in and of itself, the complications of antibiotic-induced changes to the gut microbiota are more profound. Associations between antibiotic usage and conditions as diverse as obesity, diabetes (T1D and T2D), and asthma have been described (see Patangia et al., 2022 for an overview). Considering that the gut microbiota is strongly correlated to metabolic indications (Fan and Pedersen, 2021) and also to autoimmune disorders (Xu et al., 2019), it is suggested that a gradual decrease of the quality of the gut microbiota during the last decades is the common factor in explaining both metabolic and autoimmune incidence data. Importantly, however, our data show that despite relatively higher use of antibiotics in France and Italy, these countries report lower incidence rates of autoimmune diseases such as MS and T1D. This reinforces the notion that the effect of antibiotics on the incidence of autoimmune diseases is multifactorial and should be considered in comprehension (Bach, 2021).

While improved hygiene measures have contributed to a reduction in prototypical infectious diseases, simultaneously, a sharp increase in the number of emerging and re-emerging infectious diseases is seen across the globe. A progressively deviating microbiota composition has been indicated in disturbed immune maturation, leading to reduced response to pathogenic infections (Patangia et al., 2022). In light of this, the association between both disturbed microbiota composition and reduction of known pathogenic infections with the rise in autoimmune diseases, should be further investigated (Bach, 2021). Promising results of functional foods in the management of the intestinal resistome should also be viewed in this light (Tsigalou et al., 2020). It remains to be seen whether these changes to the gut microbiome enable hosts to maintain sufficient resilience against infections with newly emerging infectious diseases. Moreover, considering the wide implementation of COVID-19 hygiene measures it is of interest to study the effect on the incidence of autoimmune and infectious diseases in the years to follow. Early declines in influenza infections might be a canary in the coalmine, indicating reductions in the spread of beneficial as well as pathogenic microbes as a result of social distancing measures (Sullivan et al., 2020).

The primary strength of this study is that, to the best of our knowledge, it shows for the first time the most complete overview of the available epidemiological data on MS, TB, T1D, MS, and MetS for several Western European countries and the United States, from 1980 till 2020. A limitation is that there is no direct evidence yet whether and to what extent these epidemiological trends are being explained by a diminished exposure to beneficial microbes. For example, the data on the incidence of TB and measles will be a convolution of both vaccination efficacy as well as other factors like a diminished microbial exposure due to excessive hygiene.

To conclude, our information serves as an update of the data already provided in 2002 by Bach, providing us with a more complete picture also covering the last decades. As such, these data can provide a first step toward further unraveling a mechanistic understanding of the interplay between these different disease types in the context of different (microbial) ecosystems. This serves as a starting point for the development of future prevention and mitigation strategies.

Data Availability Statement

Publicly available datasets were analyzed in this study. This data can be found here: United Nations (2019), Vanderslott et al. (2019), ECDC (2020), MSIF (2020), and (WHO, 2020a,b).

Author Contributions

OL: conceptualization, writing, and editing. MG: analysis and writing. CW and LB: reviewing and editing. All authors contributed to the article and approved the submitted version.

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

Aguilar, M., Bhuket, T., Torres, S., Liu, B., and Wong, R. J. (2015). Prevalence of the metabolic syndrome in the United States, 2003-2012. Jama 313, 1973–1974. doi: 10.1001/jama.2015.4260

PubMed Abstract | CrossRef Full Text | Google Scholar

Akiyama, S., Hamdeh, S., Micic, D., and Sakuraba, A. (2021). Prevalence and clinical outcomes of COVID-19 in patients with autoimmune diseases: a systematic review and meta-analysis. Ann. Rheum. Dis. 80, 384–391. doi: 10.1136/annrheumdis-2020-218946

PubMed Abstract | CrossRef Full Text | Google Scholar

Allen, T., Murray, K. A., Zambrana-Torrelio, C., Morse, S. S., Rondinini, C., Di Marco, M., et al. (2017). Global hotspots and correlates of emerging zoonotic diseases. Nat. Commun. 8, 1–10. doi: 10.1038/s41467-017-00923-8

PubMed Abstract | CrossRef Full Text | Google Scholar

Andersen, C. J., Murphy, K. E., and Fernandez, M. L. (2016). Impact of obesity and metabolic syndrome on immunity. Adv. Nutr. 7, 66–75. doi: 10.3945/an.115.010207

PubMed Abstract | CrossRef Full Text | Google Scholar

Bach, J. F. (2002). The effect of infections on susceptibility to autoimmune and allergic diseases. NEJM 347, 911–920. doi: 10.1056/NEJMra020100

PubMed Abstract | CrossRef Full Text | Google Scholar

Bach, J. F. (2021). Revisiting the hygiene hypothesis in the context of autoimmunity. Front. Immunol. 2021:192. doi: 10.3389/fimmu.2020.615192

PubMed Abstract | CrossRef Full Text | Google Scholar

Blaser, M. J., and Falkow, S. (2009). What are the consequences of the disappearing human microbiota? Nat. Rev. Microbiol. 7, 887–894. doi: 10.1038/nrmicro2245

PubMed Abstract | CrossRef Full Text | Google Scholar

Boskey, E. (2020). Person years and person months in research studies. Available online at: https://www.verywellhealth.com/person-years-and-person-months-3132812 [Accessed February 26, 2022].

Google Scholar

Bruno, G., Maule, M., Merletti, F., Novelli, G., Falorni, A., Iannilli, A., et al. (2010). Age-period-cohort analysis of 1990–2003 incidence time trends of childhood diabetes in Italy: the RIDI study. Diabetes 59, 2281–2287. doi: 10.2337/db10-0151

PubMed Abstract | CrossRef Full Text | Google Scholar

CDC (2021). Just diagnosed with type 1 diabetes. Available online at: https://www.cdc.gov/diabetes/basics/diabetes-type-1-diagnosis.html [Accessed February 26, 2022].

Google Scholar

Chaudhry, F., Jageka, C., Levy, P. D., Cerghet, M., and Lisak, R. P. (2021). Review of the COVID-19 risk in multiple sclerosis. Cell. Immunol. 3:68. doi: 10.33696/immunology.3.080

PubMed Abstract | CrossRef Full Text | Google Scholar

Dawson, S. L., OHely, M., Jacka, F. N., Ponsonby, A.-L., Symeonides, C., Loughman, A., et al. (2021). Maternal prenatal gut microbiota composition predicts child behavior. EBioMedicine 68:103400. doi: 10.1016/j.ebiom.2021.103400

PubMed Abstract | CrossRef Full Text | Google Scholar

Dhar, D., and Mohanty, A. (2020). Gut microbiota and Covid-19-possible link and implications. Virus Res. 285:198018. doi: 10.1016/j.virusres.2020.198018

PubMed Abstract | CrossRef Full Text | Google Scholar

Druyan, A., Lidar, M., Brodavka, M., Levy, I., Barzilai, A., and Pavlotsky, F. (2021). The risk for severe COVID 19 in patients with autoimmune and/or inflammatory diseases: first wave lessons. Dermatol. Ther. 34:e14627. doi: 10.1111/dth.14627

PubMed Abstract | CrossRef Full Text | Google Scholar

ECDC (2020). Antimicrobial consumption database (ESAC-Net). Available online at: https://www.ecdc.europa.eu/en/antimicrobial-consumption/database/rates-country [Accessed December 14, 2021].

Google Scholar

Elias, C., Nkengasong, J. N., and Qadri, F. (2021). Emerging Infectious diseases-learning from the past and looking to the future. NEJM 384, 1181–1184. doi: 10.1056/NEJMp2034517

PubMed Abstract | CrossRef Full Text | Google Scholar

Fan, Y., and Pedersen, O. (2021). Gut microbiota in human metabolic health and disease. Nat. Rev. Microbiol. 19, 55–71. doi: 10.1038/s41579-020-0433-9

PubMed Abstract | CrossRef Full Text | Google Scholar

Fazeli Farsani, S., Souverein, P. C., van der Vorst, M. M., Knibbe, C. A., Herings, R. M., de Boer, A., et al. (2016). Increasing trends in the incidence and prevalence rates of type 1 diabetes among children and adolescents in the Netherlands. Pediatr. Diab. 17, 44–52. doi: 10.1111/pedi.12232

PubMed Abstract | CrossRef Full Text | Google Scholar

Gregory, J. M., Slaughter, J. C., Duffus, S. H., Smith, T. J., LeStourgeon, L. M., Jaser, S. S., et al. (2021). COVID-19 severity is tripled in the diabetes community: a prospective analysis of the pandemic’s impact in type 1 and type 2 diabetes. Diab. Care 44, 526–532. doi: 10.2337/dc20-2260

PubMed Abstract | CrossRef Full Text | Google Scholar

Gundlapalli, M. D. (2021). Underlying medical conditions and severe illness among 540,667 adults hospitalized With COVID-19, March 2020–March 2021. Prev. Chron. Dis 18:123. doi: 10.5888/pcd18.210123

PubMed Abstract | CrossRef Full Text | Google Scholar

Harjutsalo, V., Sjöberg, L., and Tuomilehto, J. (2008). Time trends in the incidence of type 1 diabetes in Finnish children: a cohort study. Lancet 371, 1777–1782. doi: 10.1016/S0140-6736(08)60765-5

PubMed Abstract | CrossRef Full Text | Google Scholar

Harjutsalo, V., Sund, R., Knip, M., and Groop, P. H. (2013). Incidence of type 1 diabetes in Finland. Jama 310, 427–428. doi: 10.1001/jama.2013.8399

PubMed Abstract | CrossRef Full Text | Google Scholar

Hu, B., Guo, H., Zhou, P., and Shi, Z. L. (2021). Characteristics of SARS-CoV-2 and COVID-19. Nat. Rev. Microbiol. 19, 141–154. doi: 10.1038/s41579-020-00459-7

PubMed Abstract | CrossRef Full Text | Google Scholar

Jones, K. E., Patel, N. G., Levy, M. A., Storeygard, A., Balk, D., Gittleman, J. L., et al. (2008). Global trends in emerging infectious diseases. Nature 451, 990–993. doi: 10.1038/nature06536

PubMed Abstract | CrossRef Full Text | Google Scholar

Karlsson, E. A., and Beck, M. A. (2010). The burden of obesity on infectious disease. Exp. Biol. Med. 235, 1412–1424. doi: 10.1258/ebm.2010.010227

PubMed Abstract | CrossRef Full Text | Google Scholar

Larsen, O. F., and van de Burgwal, L. H. (2021). On the verge of a catastrophic collapse? the need for a multi-ecosystem approach to microbiome studies. Front. Microbiol. 12:797. doi: 10.3389/fmicb.2021.784797

PubMed Abstract | CrossRef Full Text | Google Scholar

le Roux, C. W. (2021). COVID-19 alters thinking and management in metabolic diseases. Nat. Rev. Endocrinol. 17, 71–72. doi: 10.1038/s41574-020-00449-y

PubMed Abstract | CrossRef Full Text | Google Scholar

Liang, X., Or, B., Tsoi, M. F., Cheung, C. L., and Cheung, B. M. (2021). Prevalence of metabolic syndrome in the united states national health and nutrition examination survey (NHANES) 2011-2018. Eur. Heart J. 42:2420. doi: 10.21203/rs.3.rs-581879/v1

CrossRef Full Text | Google Scholar

Libertucci, J., and Young, V. B. (2019). The role of the microbiota in infectious diseases. Nat. Microbiol. 4, 35–45. doi: 10.1038/s41564-018-0278-4

PubMed Abstract | CrossRef Full Text | Google Scholar

Liu, M., Gao, Y., Zhang, Y., Shi, S., Chen, Y., and Tian, J. (2020). The association between severe or dead COVID-19 and autoimmune diseases: a systematic review and meta-analysis. J. Infect. 81, e93–e95. doi: 10.1016/j.jinf.2020.05.065

PubMed Abstract | CrossRef Full Text | Google Scholar

Maddur, M. S., Vani, J., Lacroix-Desmazes, S., Kaveri, S., and Bayry, J. (2010). Autoimmunity as a predisposition for infectious diseases. PLoS Pathog. 6:e1001077. doi: 10.1371/journal.ppat.1001077

PubMed Abstract | CrossRef Full Text | Google Scholar

Marcotte-Chenard, A., Deshayes, T. A., Ghachem, A., and Brochu, M. (2019). Prevalence of the metabolic syndrome between 1999 and 2014 in the United States adult population and the impact of the 2007–2008 recession: an NHANES study. Appl. Physiol. Nutr. Metab. 44, 861–868. doi: 10.1139/apnm-2018-0648

PubMed Abstract | CrossRef Full Text | Google Scholar

Maynard, C. L., Elson, C. O., Hatton, R. D., and Weaver, C. T. (2012). Reciprocal interactions of the intestinal microbiota and immune system. Nature 489, 231–241. doi: 10.1038/nature11551

PubMed Abstract | CrossRef Full Text | Google Scholar

Medina, G., Vera-Lastra, O., Peralta-Amaro, A. L., Jiménez-Arellano, M. P., Saavedra, M. A., Cruz-Domínguez, M. P., et al. (2018). Metabolic syndrome, autoimmunity and rheumatic diseases. Pharmacol. Res. 133, 277–288. doi: 10.1016/j.phrs.2018.01.009

PubMed Abstract | CrossRef Full Text | Google Scholar

Milo, R., and Miller, A. (2014). Revised diagnostic criteria of multiple sclerosis. Autoimmun. Rev. 13, 518–524. doi: 10.1016/j.autrev.2014.01.012

PubMed Abstract | CrossRef Full Text | Google Scholar

MSIF (2020). Number of people with MS. Available online at: https://www.atlasofms.org/map/global/epidemiology/number-of-people-with-ms [Accessed December 14, 2021].

Google Scholar

Murray, C. J., Ikuta, K. S., Sharara, F., Swetschinski, L., Aguilar, G. R., Gray, A., et al. (2022). Global burden of bacterial antimicrobial resistance in 2019: a systematic analysis. Lancet 399, 629–655. doi: 10.1016/S0140-6736(21)02724-0

CrossRef Full Text | Google Scholar

Our World in Data (2021). How do childhood vaccination policies vary across the world? Available online at: https://www.ourworldindata.org/childhood-vaccination-policies [Accessed February 24, 2022].

Google Scholar

Pärnänen, K., Karkman, A., Hultman, J., Lyra, C., Bengtsson-Palme, J., Larsson, D. G., et al. (2018). Maternal gut and breast milk microbiota affect infant gut antibiotic resistome and mobile genetic elements. Nat. Commun. 9, 1–11. doi: 10.1038/s41467-018-06393-w

PubMed Abstract | CrossRef Full Text | Google Scholar

Parviainen, A., But, A., Siljander, H., and Knip, M. (2020). Decreased incidence of type 1 diabetes in young Finnish children. Diab. Care 43, 2953–2958. doi: 10.2337/dc20-0604

PubMed Abstract | CrossRef Full Text | Google Scholar

Patangia, D. V., Ryan, C. A., Dempsey, E., Ross, R. P., and Stanton, C. (2022). Impact of antibiotics on the human microbiome and consequences for host health. MicrobiologyOpen 11:e1260. doi: 10.1002/mbo3.1260

PubMed Abstract | CrossRef Full Text | Google Scholar

Patterson, C. C., Harjutsalo, V., Rosenbauer, J., Neu, A., Cinek, O., Skrivarhaug, T., et al. (2019). Trends and cyclical variation in the incidence of childhood type 1 diabetes in 26 European centres in the 25 year period 1989–2013: a multicentre prospective registration study. Diabetologia 62, 408–417. doi: 10.1007/s00125-018-4763-3

PubMed Abstract | CrossRef Full Text | Google Scholar

Piffaretti, C., Mandereau-Bruno, L., Guilmin-Crepon, S., Choleau, C., Coutant, R., and Fosse-Edorh, S. (2019). Trends in childhood type 1 diabetes incidence in France, 2010–2015. Diab. Res. Clin. Pract. 149, 200–207. doi: 10.1016/j.diabres.2018.11.005

PubMed Abstract | CrossRef Full Text | Google Scholar

R Core Team (2020). R: A language and environment for statistical computing. Vienna: R Foundation for Statistical Computing.

Google Scholar

Raplee, I., Walker, L., Xu, L., Surathu, A., Chockalingam, A., Stewart, S., et al. (2021). Emergence of nosocomial associated opportunistic pathogens in the gut microbiome after antibiotic treatment. Antimicrob. Resist. Infect. Cont. 10, 1–11. doi: 10.1186/s13756-021-00903-0

PubMed Abstract | CrossRef Full Text | Google Scholar

Reder, A. T., Centonze, D., Naylor, M. L., Nagpal, A., Rajbhandari, R., Altincatal, A., et al. (2021). COVID-19 in patients with multiple sclerosis: associations with disease-modifying therapies. CNS Drugs 35, 317–330. doi: 10.1007/s40263-021-00804-1

PubMed Abstract | CrossRef Full Text | Google Scholar

Rogers, M. A., Kim, C., Banerjee, T., and Lee, J. M. (2017). Fluctuations in the incidence of type 1 diabetes in the United States from 2001 to 2015: a longitudinal study. BMC Med. 15, 1–9. doi: 10.1186/s12916-017-0958-6

PubMed Abstract | CrossRef Full Text | Google Scholar

Rook, G. A. W., and Brunet, L. R. (2005). Microbes, immunoregulation, and the gut. Gut 54, 317–320. doi: 10.1136/gut.2004.053785

PubMed Abstract | CrossRef Full Text | Google Scholar

Sullivan, S. G., Carlson, S., Cheng, A. C., Chilver, M. B., Dwyer, D. E., Irwin, M., et al. (2020). Where has all the influenza gone? The impact of COVID-19 on the circulation of influenza and other respiratory viruses, Australia, March to September 2020. Euro. Surveill. 25:2001847. doi: 10.2807/1560-7917.ES.2020.25.47.2001847

PubMed Abstract | CrossRef Full Text | Google Scholar

Tsigalou, C., Konstantinidis, T., Stavropoulou, E., Bezirtzoglou, E. E., and Tsakris, A. (2020). Potential elimination of human gut resistome by exploiting the benefits of functional foods. Front. Microbiol. 11:50. doi: 10.3389/fmicb.2020.00050

PubMed Abstract | CrossRef Full Text | Google Scholar

United Nations (2019). World population prospects 2019. Available online at: https://www.un.org/development/desa/publications/world-population-prospects-2019-highlights.html [Accessed December 14, 2021].

Google Scholar

van der Waal, M. B., dos, S., Ribeiro, C., Ma, M., Haringhuizen, G. B., Claassen, E., et al. (2020). Blockchain-facilitated sharing to advance outbreak R&D. Science 368, 719–721. doi: 10.1126/science.aba1355

PubMed Abstract | CrossRef Full Text | Google Scholar

Vanderslott, S., Dadonaite, B., and Roser, M. (2019). Vaccination. Our world in data. Available online at: https://ourworldindata.org/vaccination [Accessed December 15, 2021].

Google Scholar

Von Mutius, E., Braun-Fahrlander, C., Schierl, R., Riedler, J., Ehlermann, S., Maisch, S., et al. (2000). Exposure to endotoxin or other bacterial components might protect against the development of atopy. Clin. Exp. Allerg. 30, 1230–1234. doi: 10.1046/j.1365-2222.2000.00959.x

PubMed Abstract | CrossRef Full Text | Google Scholar

Vrdoljak, J., Kumric, M., Vilovic, M., Martinovic, D., Rogosic, V., Borovac, J. A., et al. (2022). Can fasting curb the metabolic syndrome epidemic? Nutrients 14:456. doi: 10.3390/nu14030456

PubMed Abstract | CrossRef Full Text | Google Scholar

WHO (2020a). Global tuberculosis report. Available online at: https://www.who.int/publications/i/item/9789240013131 [Accessed December 13, 2021].

Google Scholar

WHO (2020b). WHO vaccine preventable diseases monitoring system 2020 global summary. Available online at: https://apps.who.int/immunization_monitoring/globalsummary [Accessed December 15, 2021].

Google Scholar

WHO (2022). WHO coronavirus (COVID-19) dashboard. Available online at: https://covid19.who.int/ [Accessed March 22, 2022].

Google Scholar

Williams, R., and Wright, J. (1998). Epidemiological issues in health needs assessment. Bmj 316:1379. doi: 10.1136/bmj.316.7141.1379

PubMed Abstract | CrossRef Full Text | Google Scholar

World Bank (2022). Global economic prospects. Washington, DC: World Bank. doi: 10.1596/978-1-4648-1758-8

PubMed Abstract | CrossRef Full Text | Google Scholar

Wu, H. J., and Wu, E. (2012). The role of gut microbiota in immune homeostasis and autoimmunity. Gut. Microb. 3, 4–14. doi: 10.4161/gmic.19320

PubMed Abstract | CrossRef Full Text | Google Scholar

Xu, H., Liu, M., Cao, J., Li, X., Fan, D., Xia, Y., et al. (2019). The dynamic interplay between the gut microbiota and autoimmune diseases. J. Immunol. Res. 2019:47. doi: 10.1155/2019/7546047

PubMed Abstract | CrossRef Full Text | Google Scholar

Yeoh, Y. K., Zuo, T., Lui, G. C. Y., Zhang, F., Liu, Q., Li, A. Y., et al. (2021). Gut microbiota composition reflects disease severity and dysfunctional immune responses in patients with COVID-19. Gut 70, 698–706. doi: 10.1136/gutjnl-2020-323020

PubMed Abstract | CrossRef Full Text | Google Scholar

Zmora, N., Bashiardes, S., Levy, M., and Elinav, E. (2017). The role of the immune system in metabolic health and disease. Cell Metab. 25, 506–521. doi: 10.1016/j.cmet.2017.02.006

PubMed Abstract | CrossRef Full Text | Google Scholar

Zwerling, A., Behr, M. A., Verma, A., Brewer, T. F., Menzies, D., and Pai, M. (2011). The BCG World Atlas: a database of global BCG vaccination policies and practices. PLoS Med. 8:e1001012. doi: 10.1371/journal.pmed.1001012

PubMed Abstract | CrossRef Full Text | Google Scholar

Keywords: gut microbiota, epidemiology, infectious disease, autoimmune disease, metabolic syndrome, antibiotics usage, vaccination

Citation: Larsen OFA, van der Grint M, Wiegers C and van de Burgwal LHM (2022) The Gut Microbiota: Master of Puppets Connecting the Epidemiology of Infectious, Autoimmune, and Metabolic Disease. Front. Microbiol. 13:902106. doi: 10.3389/fmicb.2022.902106

Received: 22 March 2022; Accepted: 13 April 2022;
Published: 29 April 2022.

Edited by:

George Grant, University of Aberdeen, United Kingdom

Reviewed by:

Mian Adnan Kakakhel, Lanzhou University, China
Joseph Selvin, Pondicherry University, India

Copyright © 2022 Larsen, van der Grint, Wiegers and van de Burgwal. 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: Olaf F. A. Larsen, o.f.a.larsen@vu.nl

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