key: cord-0929478-jjbuqg6x authors: Ruiz-Correa, Salvador; López-Revilla, Rubén; Díaz-Barriga, Fernando; Marmolejo-Cossío, Francisco; del Carmen Robledo-Valero, Viridiana; Hernández-Huérfano, Emilio Ernesto; Álvarez-Rivera, Leonardo; Rangel-Martínez, Mónica Liliana; Lutzow-Steiner, Miguel Ángel; Ortiz-Vázquez, Luis Alfredo; Mendoza-Lara, Andrea Rebeca; Olivo-Rodríguez, Montserrat; Galván-Ramírez, Marco Sebastián; Morales-Neri, Ángel Emanuel; Martínez-Donjuan, Víctor Uriel; Cervantes-Irurzo, Massiel Isabella; Comas-García, Andreu; Hernández-Maldonado, Fernando; Aguilar-Acosta, Carlos title: Health Sentinel: a mobile crowdsourcing platform for self-reported surveys provides early detection of COVID-19 clusters in San Luis Potosí, Mexico date: 2021-05-28 journal: Int J Med Inform DOI: 10.1016/j.ijmedinf.2021.104508 sha: 0a3d188b854a1ee564450637448e3be8ffe5c40e doc_id: 929478 cord_uid: jjbuqg6x BACKGROUND: The Health Sentinel (Centinela de la Salud, CDS), a mobile crowdsourcing platform that includes the CDS app, was deployed to assess its utility as a tool for COVID-19 surveillance in San Luis Potosí, Mexico. METHODS: The CDS app allowed anonymized individual surveys of demographic features and COVID-19 risk of transmission and exacerbation factors from users of the San Luis Potosí Metropolitan Area (SLPMA). The platform’s data processing pipeline computed and geolocalized the risk index of each user and enabled the analysis of the variables and their association. Point process analysis identified geographic clustering patterns of users at risk and these were compared with the patterns of COVID-19 cases confirmed by the State Health Services. RESULTS: A total of 1,554 COVID-19 surveys were administered through the CDS app. Among the respondents, 50.4% were men and 49.6% women, with an average age of 33.5 years. Overall risk index frequencies were, in descending order: no-risk 77.8%, low risk 10.6%, respiratory symptoms 6.7%, medium risk 1.4%, high risk 2.0%, very high risk 1.5%. Comorbidity was the most frequent vulnerability category (32.4%), followed by the inability to keep home lockdown (19.2%). Statistically significant risk clusters identified at a spatial scale between 5 and 730 meters coincided with those in neighborhoods containing substantial numbers of confirmed COVID-19 cases. CONCLUSIONS: The CDS platform enables the analysis of the sociodemographic features and spatial distribution of individual risk indexes of COVID-19 transmission and exacerbation. It is a useful epidemiological surveillance and early detection tool because it identifies statistically significant and consistent risk clusters in neighborhoods with a substantial number of confirmed COVID-19 cases. The coronavirus disease 2019 (COVID-19) epidemic in Mexico is part of the pandemic caused by the Severe Acute Respiratory Syndrome Coronavirus Virus 2, SARS-CoV-2 [1] . Mexican health authorities confirmed the first COVID-19 case on February 27, 2020 [2] and declared a health emergency on April 9, 2020. Mitigation measures implemented in early March 2020 to avoid healthcare saturation, included voluntary home confinement, maintaining a safe distance between people, suspension of non-critical school and work activities, and frequent hand hygiene [3] . At the time of writing (January 27, 2021), there had been 1,788,905 confirmed COVID-19 cases, 152,016 deaths, and a case fatality ratio (CFR) of 8.5% in Mexico, the country with the largest CFR [4] . COVID-19 features in Mexico are summarized in Table 1 J o u r n a l P r e -p r o o f COVID-19 spreads in clusters [5] , as individuals pass the virus to their contacts, resulting in clusters of geographically localized infections [6] [7] [8] . Cluster mapping has been useful to explore transmission characterized by spatial features distinctive of early infection scattering, community spread, and full-scale outbreak [9, 10] . Epidemiological surveillance of COVID-19 cases in Mexico is carried out through sentinel surveillance for early detection of suspected cases through their most frequent signs and symptoms and epidemiological antecedents [11] . Only 0.4 qRT-PCR COVID-19 tests per 1,000 inhabitants have been administered since only symptomatic subjects are eligible for testing [11] . COVID-19 apps are informational, self-assessment/medical-reporting, contact tracing, multipurpose, and others; multipurpose apps combine the functionality of at least two of the first three categories [12] . The limited resources to conduct diagnostic tests for early detection of SARS-CoV-2 in San Luis Potosí prompted us to develop the Health Sentinel (CDS), a mobile crowdsourcing platform with a multipurpose app (Table S 1) for collecting real-time surveys of self-reported demographic data, signs and symptoms, and vulnerabilities related to COVID-19. The CDS app also serves as a public surveillance tool, to educate users about their risk, and as a community triage to support the Epidemiological Intelligence task force of the UASLP School of Medicine to address the COVID-19 pandemic. CDS data collected from April 1 to July 31, 2020, presented here address the research questions listed in Table 2 . This study stemmed from the local VIRUS Program, inspired by the United Nations Human Security methodology [13] , focused on collective actions to address community threats and comorbidities associated with COVID-19. It allowed our research team to evaluate the potential contribution of the CDS app for epidemiological surveillance of COVID-19 in the SLPMA, through a descriptive analysis of the users (demographics, risk categories, geographic location, and clusters), and by statistically comparing their spatial and temporal distribution with confirmed COVID-19 cases as a way of validating the CDS app (Table 2 ). The SLPMA includes the San Luis Potosi City and Soledad de Graciano Sánchez municipalities, subdivided into primary geostatistical areas (AGEBs) [15] . Data collected in the SLPMA consists of two distinct data sets: one originating from survey responses of volunteer app users, and another one of confirmed COVID-19 cases provided by the local health department. Out of the 9,971 anonymized COVID-19 cases confirmed through qRT-PCR tests between March 12 and August 3 in the SLPMA, only 9,453 (94.8%) with known postal addresses were included. Privacy laws did not allow app users to indicate if they had been tested and included in the COVID-19 confirmed cases database. The Mexican Health Ministry established that COVID-19 testing was required for people with suspected COVID-19 symptoms [11] . The overall spectrum of symptom severity is included in the confirmed cases database. Federal regulations require subjects manifesting COVID-19 symptoms to provide consent for the use of their data. SSSLP records were stored in the National Supercomputing Center data center at IPICYT, a tier 3 facility designed to assure data integrity and privacy according to Mexican law. Only authorized personnel had access to the SSSLP data. The CDS requires 11.76 MB of data space and uses state-of-the-art mobile crowdsourcing [14] to collect self-assessment survey data; it was deployed on April 1, 2020, in the SLPMA, and became available through Google Play Store on May 1. CDS app users do not require a personal account and their data are sent to the cloud through an open Wi-Fi connection to prevent the use of their data; users can participate multiple times. The local health department registered the CDS app after checking its compliance with data privacy, security, and ethical requirements. To activate the app, users had to read and agree with the terms of use and consent form. CDS architecture is described in Appendix A. The CDS app was available for Android OS only; 68.3% of Mexico's population has access to a smartphone, with 82.5% Android OS users, and 17.1% iOS users. A group of medical and public health experts from UASLP School of Medicine, SSSLP, and IPICYT developed the algorithm to compute the individual risk assessment. Risk calculation combines information about the risk of infection and risk of disease severity into one category. This category is most useful at the individual level to help users decide on an informed course of action by following official recommendations from local health authorities, based on the COVID-19 operational definition of the World Health Organization [16] . This category is also helpful to understand the risk of infection across the SLPMA area, but its use to investigate the risk of severity is limited. The personal profile includes the user's gender, age, and occupation. Risk index calculation depends on three categories of variables: contact, signs-and-symptoms, and comorbidity. The CDS app enables the administration of the eight questions on risk items (Table 3) , conforming to the COVID-19 guidelines of the World Health Organization [17] and the Mexican System for Epidemiological Surveillance [18] . Contact considers whether the user recently traveled to a country with a COVID-19 epidemic, had close contact with someone recently returned from abroad, or has suspected or confirmed infection. Signs and symptoms include cough and fever above 37.5 °C, six general symptoms, and two respiratory symptoms. Comorbidity includes risk factors that can exacerbate the disease, and whether the user belongs to one or more risk groups or has one or more concomitant illnesses that can worsen COVID-19. Risk groups are pregnant women and people aged 65 years or more. Concomitant diseases include diabetes, hypertension, heart problems, liver disease, asthma, chronic pulmonary obstructive disease (COPD), HIV/AIDS, cancer, chronic kidney failure, obesity, and smoking which increase the risk of fatal outcomes associated with COVID-19 [19] . Two questions address social vulnerabilities: 1) Can you stay home regardless of developing COVID-19 symptoms? and 2) Do you have someone (relative, friend, neighbor) who can help you in case you get ill?; these questions are motivated by the fact that a significant proportion of Mexicans have informal employment and cannot stay at home [20] . Personal risk indexes are, in order of increasing severity: risk-free, low-risk, moderate-risk, high-risk, severe-risk. Based on their risk index, users were subdivided into risk-free cases, risk cases (low-to severe-risk), and respiratory-risk cases (Table 4 ). Since the risk index is a J o u r n a l P r e -p r o o f triage tool, respiratory-risk cases without evidence of COVID-19 are treated separately, atypical pneumonia being one of the possible diagnoses [21] . Data collected through CDS includes the georeferenced users' contributions, and a web application allows data visualization through a dashboard ( Fig. 1) as soon as the user completes the survey. During the survey collection period, health authorities issued a home confinement recommendation. Visual inspection of the GPS data shows that most users completed and sent their surveys from residential areas, probably from their place of residence. These areas also encompass social and recreational activities. Coronavirus infection spreads in clusters, whose early identification is essential for slowing down SARS-CoV-2 transmission [9, 22] . The spatial analysis allowed us to determine whether the geographical features of the data collected with the CDS app suggest the presence of COVID-19 clusters across geographical space and whether they coincide with those of confirmed COVID-19 case clusters. Two complementary statistical tools enabled quantification of spatial features: computation of point process descriptive statistics, and spatial correlation modeling. We emphasize that the risk index calculation combines information about risk of infection and risk of disease severity into one category. Therefore, clustering information derived from the index is useful to understand risk of infection, but not about risk of disease severity. This is important to interpret the data presnted in the results section. J o u r n a l P r e -p r o o f We used kernel density estimation tools to estimate point process intensity functions [23] and visually explore risk-free and risk cases. We used Ripley's K-function and Monte Carlo simulations to describe how point patterns occur over a given area and to determine whether they are dispersed, clustered, or randomly distributed. Point process statistics computation is described in Appendix B. Point process statistics allowed us to establish clustering features in CDS geographic data from observed point pattern correlations. An approach to account for these correlations is the log-Gaussian Cox process model [24] , which describes the spatial distribution of symptoms as a function of explanatory variables and estimates a residual process independent of these variables (Appendix C). Contributors to CDS surveys resided in Mexico (n = 2,125) and other countries (United States, Bolivia, Chile, Spain, Argentina, France, and Bangladesh; n = 64). Only SLPMA users (n = 1,554) were included in this study, whose overall mean age ± SD was 33.5 ± 11.5 years, with a median of 30.0 years ( J o u r n a l P r e -p r o o f The SLPMA has 1,094,177 inhabitants distributed over 1,787.72 km 2 . This area is subdivided into AGEBs with a mean ± SD size of 3.80 ± 5.88 km 2 , and a mean ± SD population of 2,348 ± 3,098 inhabitants. A population density map is shown in Fig. 2 , and the AGEBs heat-map of risk cases shown in Fig. 3 depicts the normalized number of risk reports per AGEB, conditioned to a given risk index, to provide information on the conditional probability of the number of reports. This figure intends to depict the normalized number of risk reports per AGEB, conditioned to a given risk category (low-risk, medium-risk, etc.); namely the heat maps provide information a conditional probability on the number of reports. The following data are presented as supplementary material: personal risk index distribution by gender and age in Point process analysis of the risk cases generated darker green areas indicating higher intensity. Most CDS contributions corresponded to non-risk cases (Fig. 4b) ; risk cases amounted to 15 .77%, and their maximum intensity was located in an area of high mobility and social interaction (Fig. 4c ) which is also a populated residential area. Ripley's L function was computed using Procedure I of Appendix B to test whether the point patterns of risk cases fulfill the nonhomogeneous CSR hypothesis. The reference probability measure was given by the AGEBs population ( We conducted Bayesian inference of a log-Gaussian Cox model of the risk cases data [25] considering seven covariates: population density, male proportion, age, travel abroad or contact with someone who traveled abroad, contact with a suspect COVID-19 case, contact with a confirmed COVID-19 case, risk conditions, and comorbidities. Calculations were conducted over a 128 × 128 grid. The Markov chain Monte Carlo inference algorithm was run with 2,200,000 iterations, an initial burn-in of 200,000 iterations followed by 2,000,000 further iterations from which every 1,000 th sample was stored. Markov chain mixing and convergence were conducted through standard techniques [24] . To reveal SLPMA areas with a high incidence of risk symptoms (Fig. 7) we also computed exceedance probabilities (Appendix C) with the variance σ 2 , scale φ, and other latent field parameters enlisted in Table 6 . We compared the distribution of clusters identified from the 9,971 SLPMA COVID-19 cases confirmed between March 12 and August 3, with the distribution of risk case clusters identified from the April-July surveys (Period II). Only 9,453 confirmed COVID-19 patients (94.8%) with known postal addresses were included in the comparison. Individual records included demographics, date when symptoms started, and date when the diagnosis was confirmed. Several neighborhoods had clusters of COVID-19 cases confirmed during Periods I and II (Table 7) . A summary of the findings retaled to RQ4 are listed in Table 10 . Early detection of COVID-19 hotspots has been achieved in Israel through one-minute population-wide surveys [9] . In the United Kingdom, a mobile app for real-time tracking of self-reported symptoms predicted potential COVID-19 [26] . CDS is a multi-use platform allowing early detection of COVID-19 hotspots that may be of use to prevent spreading, especially at the beginning of the epidemic, when data of confirmed cases are scarce. The sociodemographic features of CDS users result in a sampling bias whose sources, listed in Table 9 , restrict the assessment to the surveyed population [27] . Most CDS contributions corresponded to non-risk cases (Fig. 4b) ; risk cases amounted to 15 .77% and their maximum intensity was located in an area of high mobility and social interaction (Fig. 4c) . This urban space is also a populated residential area. Risk cases from Period II (April-July) had statistically significant spatial clustering independent of population density across geographical scales from 0 to 730 m (Fig. 6 d- Similar results were obtained for clusters of COVID-19 cases confirmed in Period I (April-May) at a scale of 600 m (Fig. 6 a-c) . Many Period II clusters have significant overlap, are more prominent, and expand several Period I clusters (Fig. 8) . Interestingly, Period II clusters also overlap city areas where the exceedance probabilities are close to one (Fig. 7) . Risk case clusters in areas with a high incidence of risk of symptoms in Period I evolved to become the larger confirmed COVID-19 clusters of Period II (Fig. 8) . Risk clusters computed with Period I and Period II data have significant spatial overlapping of neighborhoods with a high incidence of SARS-CoV-2 hotspots (Figs. 8 and 9 ) and a substantial number of COVID-19 cases confirmed from March 12 to August 3. The exponential growth of COVID-19 cases in the SLPMA began in June when public activities partially reopened, and SARS-CoV-2 hotspots increased significantly between May and August (Tables 7 and 8 ). The top infected neighborhood reached 161 confirmed COVID-19 cases with an 82% increase between June and August ( Table 8 ). shed light on the associations between risk clusters, symptoms, and actual infection hotspots ( Fig. 9 ). Analysis of cluster A (Fig. 8b and c) showed that risk cases had symptoms between April and May (red line of Fig. 9 ) before confirmed COVID-19 cases started to appear during the transition to the exponential phase of the pandemic (black line of Fig. 9 ). Despite the biases of this study (Table 9 ), our results support the hypothesis that the risk clusters identified early coincide with the infection hotspots confirmed later, and that early risk-clusters predict the areas of further SARS-CoV-2 spreading. The key points for future work are listed in Table 11 . The authors report no declarations of interest. The study was partially funded by Consejo Estatal Electoral y de Participación Ciudadana Table 9 Sources of data bias [14, 27] Source Features Age of the sampled population The highest proportion of CDS users were those of 20-29 years (44.02%) and 30-39 years (26.96%). The predominant age groups were, in descending order, those of 10-19 years (18.65%), 20-29 years (17.54%), 0-9 years (16.65%), and 40-49-years (13.29%). Children under 10 years were not considered in this study. The predominant CDS groups are adults with a smartphone and internet connection. The elderly population is less likely to have access to and master the mobile technology deployed in the field; the analysis was directed to risk cases younger than 65 years. The CDS app was available for Android OS only; 68.3% of Mexico's population has access to a smartphone, with 82.5% Android OS users, and 17.1% iOS users; the rest use Samsung, Windows, and PlayStation devices. Asymptomatic individuals infected with SARS-CoV-2 are not eligible for COVID-19 testing due to the limited number of tests available and therefore are not considered in the SSSLP data. Most CDS contributions corresponded to non-risk cases (Fig. 4b) ; risk cases amounted to 15.77%, and their maximum intensity was located in a densely populated residential area of high mobility and social interaction (Fig. 4c) . Risk cases from Period II (April-July) had statistically significant spatial clustering independent of population density across geographical scales from 5 to 730 m (Fig. 6 d-f ) and risk clusters were computed at a scale of 730 m. Similar results were obtained for clusters of COVID-19 cases confirmed in Period I (April-May) at a scale of 600 m (Fig. 6 a-c). Many Period II clusters have significant overlap, are more prominent and expand several Period I clusters (Fig. 8) . Period II clusters also overlap city areas where the exceedance probabilities are close to one (Fig. 7) . Risk case clusters in areas with a high incidence of risk of symptoms in Period I evolved to become the larger confirmed COVID-19 clusters of Period II (Fig. 8) . Risk case clusters A-E (Fig. 8) were compared with the quantitative cluster analysis of COVID-19 confirmed cases. Cluster A (294 cases) had several cases comparable to the top-five confirmed neighborhoods. Cluster B (138 cases) and Cluster C (37 cases) intersect an area ranking second among confirmed SARS-CoV-2 hotspots. Cluster D (56 cases) includes the largest city park surrounded by a trail for strolling/jogging/biking. Cluster E (68 cases), on the northwest side of the park, intersects five neighborhoods. Cluster F (77 cases) intersects the Graciano Sanchez municipality, which includes seven neighborhoods. Comparing the curve of cluster A showing the cumulative number of risk cases per week surveyed in Period II with that of confirmed cases in March 12 and August 3 ( Fig. 9 ) we observed that risk cases started in Period I, before the transition to the exponential phase of confirmed COVID-19 cases. An adequate response to the COVID-19 pandemic demands a fine-grained understanding of the population under study, since interventions have disparate effects on target populations, depending on multiple factors [28] . Since variation in the outcomes of pandemic interventions involves allocating extremely limited resources to different population sectors elicit different outcomes, the CDS platform may be used as a valuable tool to optimize resource allocation. Having a limited supply of COVID-19 tests is not a constraint unique to San Luis Potosí. Whatever few tests available used to diagnose those already with symptoms is not as informative when 40% to 45% of those infected with SARS-CoV-2 will remain asymptomatic and the potential of the virus to spread silently may be significant [29] . Whereas extensive contact tracing via testing has been successful in South Korea and other countries, such a scale of testing is infeasible in Mexico. One possible solution involves using heterogeneous population factors to decide how to allocate tests differentially [30] . This approach may profit from using a tool as CDS to quantify risk and different citizen profiles in diverse geographies. Information on the spatial distribution of cases during the spread of transmissible diseases is crucial to design and execute effective interventions. The CDS platform allows documentation and exploration of COVID-19 risk self-assessment data to enable epidemiological intelligence tasks, and may be extended to address epidemiological events concurrent with COVID-19, such as the next expected influenza A and B outbreaks. Survey data could also provide useful information to allocate vaccination campaigns across the state of San Luis Potosí and elsewhere. Fig. 1 . CDS platform front-end dashboard. The web application allows epidemiologists and public health specialists to visualize real-time data through a dashboard. The geographic information system displays several data layers, including population density, poverty index, overcrowding, medical center locations, business locations, and contributing users' locations. The dashboard also shows descriptive statistics of all the variables of the CDS survey. Color codes: green (risk-free), low-risk (yellow), medium-risk (orange), high-risk (red), very high risk (maroon), respiratory signs only (purple). The image on the top right shows the location of the SLPMA (population 1.4 million) within Mexico (population 135 million). (Fig. 4c) is located across the street of the City's ISSSTE Hospital General, a few meters away from one of the oldest tree-lined pedestrian streets (Calzada de Guadalupe). People use this avenue for recreational/religious purposes, such as visiting the Nuestra Señora de Guadalupe Sanctuary. Close to this location is a children's park, the Center for the Arts, the Red Cross, and a military garrison. Mobility and social interactions in this area were significant during the study period despite the mitigation measures recommended by health authorities. Tables 6 and 7 . Cluster B (138 confirmed COVID-19 cases) intersects the Tequisquiapan area that ranks second among the confirmed SARS-CoV-2 clusters. Cluster C (37 confirmed COVID-19 cases) intersects neighborhoods adjacent to the Tequisquiapan area. Cluster D (56 confirmed COVID-19 cases) includes the largest city park surrounded by a trail for strolling/jogging/biking. Cluster E (68 COVID-19 cases), on the northwest side of the park, intersect five neighborhoods. Cluster F (77 confirmed COVID-19 cases) intersects Graciano Sanchez municipality, which includes seven neighborhoods. H and J are groups of risk cases that also intersect areas with a high incidence of COVID-19 confirmed cases. (a) April-May data, (b) April-July data, (c) Exceedance probabilities P(exp(Y ) > k=1 |X) associated with the covariate-adjusted latent field Y (April-July data). The COVID-19 epidemic Epidemiología de COVID-19 en México: del 27 de febrero al 30 de abril de 2020 Inicia la fase 3 por COVID-19 -Coronavirus, Inicia La Fase 3 Por COVID-19 Mortality Analyses -Johns Hopkins Coronavirus Resource Center Geographic and Demographic Transmission Patterns of the 2009 A/H1N1 Influenza Pandemic in the United States Indirect Virus Transmission in Cluster of COVID-19 Cases Interventions to mitigate early spread of SARS-CoV-2 in Singapore: a modelling study Preliminary case report on the SARS-CoV-2 cluster in the UK, France, and Spain A framework for identifying regional outbreak and spread of COVID-19 from one-minute population-wide surveys Exploring Urban Spatial Features of COVID-19 Transmission in Wuhan Based on Social Media Data Comunicado emergente sobre el uso de pruebas para la detección de antígeno SARS-CoV-2 en México Human Security Handbook. An integrated approach for the realization of the SDG's A Review of Mobile Crowdsourcing Architectures and Challenges: Toward Crowd-Empowered Internet-of-Things Único de Claves de Áreas Geoestadísticas Estatales, Municipales y Localidades COVID-2019) situation reports Digital technology for COVID-19 response Sitio oficial COVID-19 México Comorbidities and the risk of severe or fatal outcomes associated with coronavirus disease 2019: A systematic review and meta-analysis Informal employment in Mexico: current situation, policies and challenges Flujograma diagnóstico de la enfermedad respiratoria aguda en el contexto de la sindemia COVID19-influenza Geographic and Demographic Transmission Patterns of the 2009 A/H1N1 Influenza Pandemic in the United States Intensity estimation for spatial point processes observed with noise, Scand Bayesian inference and data augmentation schemes for spatial, spatiotemporal and multivariate log-gaussian cox processes in R Applied spatial statistics for public health data Real-time tracking of self-reported symptoms to predict potential COVID-19 Crowdsourcing in health and medical research: A systematic review Socioeconomic Network Heterogeneity and Pandemic Policy Response Prevalence of Asymptomatic SARS-CoV-2 Infection : A Narrative Review COVID-19: Strategies for Allocation of Test Kits Geospatial Spread of the COVID-19 Pandemic in Mexico Obesity is the comorbidity more strongly associated for Covid-19 in Mexico. A case-control study Epidemiología de COVID-19 en México: del 27 de febrero al 30 de abril de 2020 Table 1 Main COVID-19 features in Mexico Around 80% of patients infected by SARS-CoV-2 recover without needing hospital admission Around one out of five people who get COVID-19 become seriously ill and develop difficulty breathing Obesity is the strongest predictor for COVID-19, followed by diabetes and hypertension in both sexes, and chronic renal failure in women only Active smoking is associated with an increased risk of COVID-19 Men are more likely to be hospitalized and to die than women Individuals more than 50 years old are more likely to be hospitalized and die Individuals with hypertension, obesity, and diabetes are more likely to be hospitalized and die than those without these morbidities Individuals infected by SARS-CoV-2 have a higher chance of dying if they are simultaneously affected by two or more chronic conditions There is a high risk of fatal complications from COVID-19 due to the high prevalence of chronic non-degenerative diseases in Mexicans Table 3 .