key: cord-351722-3mw1te94 authors: Recalde, M.; Roel, E.; Pistillo, A.; Sena, A. G.; Prats-Uribe, A.; Ahmed, W. U.-R.; Alghoul, H.; Alshammari, T. M.; Alser, O.; Areia, C.; Burn, E.; Casajust, P.; Dawoud, D.; DuVall, S. L.; Falconer, T.; Fernandez-Bertolin, S.; Golozar, A.; Gong, M.; Lai, L. Y. H.; Lane, J. C. E.; Lynch, K. E.; Matheny, M. E.; Mehta, P. P.; Morales, D. R.; Natarjan, K.; Nyberg, F.; Posada, J. D.; Reich, C. G.; Schilling, L. M.; Shah, K.; Shah, N. H.; Subbian, V.; Zhang, L.; Zhu, H.; Ryan, P.; Prieto-Alhambra, D.; Kostka, K.; Duarte-Salles, T. title: Characteristics and outcomes of 627 044 COVID-19 patients with and without obesity in the United States, Spain, and the United Kingdom date: 2020-09-03 journal: nan DOI: 10.1101/2020.09.02.20185173 sha: doc_id: 351722 cord_uid: 3mw1te94 Background: COVID-19 may differentially impact people with obesity. We aimed to describe and compare the demographics, comorbidities, and outcomes of obese patients with COVID-19 to those of non-obese patients with COVID-19, or obese patients with seasonal influenza. Methods: We conducted a cohort study based on outpatient/inpatient care, and claims data from January to June 2020 from the US, Spain, and the UK. We used six databases standardized to the OMOP common data model. We defined two cohorts of patients diagnosed and/or hospitalized with COVID-19. We created corresponding cohorts for patients with influenza in 2017-2018. We followed patients from index date to 30 days or death. We report the frequency of socio-demographics, prior comorbidities, and 30-days outcomes (hospitalization, events, and death) by obesity status. Findings: We included 627 044 COVID-19 (US: 502 650, Spain: 122 058, UK: 2336) and 4 549 568 influenza (US: 4 431 801, Spain: 115 224, UK: 2543) patients. The prevalence of obesity was higher among hospitalized COVID-19 (range: 38% to 54%) than diagnosed COVID-19 (30% to 47%), or diagnosed/hospitalized influenza (15% to 48%) patients. Obese hospitalized COVID-19 patients were more often female and younger than non-obese COVID-19 patients or obese influenza patients. Obese COVID-19 patients were more likely to have prior comorbidities, present with cardiovascular and respiratory events during hospitalization, require intensive services, or die compared to non-obese COVID-19 patients. Obese COVID-19 patients were also more likely to require intensive services or die compared to obese influenza patients, despite presenting with fewer comorbidities. Interpretation: We show that obesity is more common among COVID-19 than influenza patients, and that obese patients present with more severe forms of COVID-19 with higher hospitalization, intensive services, and fatality than non-obese patients. These data are instrumental for guiding preventive strategies of COVID-19 infection and complications is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. . https://doi.org/10.1101/2020.09.02.20185173 doi: medRxiv preprint Previous evidence suggests that obese individuals are a high risk population for COVID -19 infection and complications. We searched PubMed for articles published from December 2019 until June 2020, using terms referring to SARS-CoV-2 or COVID-19 combined with terms for obesity. Few studies reported obesity and most of them were limited by small sample sizes and restricted to hospitalized patients. Further, they used different definitions for obesity (i.e. some reported together overweight and obesity, others only reported obesity with BMI>40kg/m 2 ). To date, no study has provided detailed information on the characteristics of obese COVID-19 patients, such as the prevalence of comorbidities or COVID-19 related outcomes. In addition, despite the fact that COVID-19 has been often compared to seasonal influenza, there are no studies assessing whether obese patients with COVID-19 differ from obese patients with seasonal influenza. We report the largest cohort of obese patients with COVID-19 and provide information on more than 29 000 aggregate characteristics publicly available. Our findings were consistent across the participating databases and countries. We found that the prevalence of obesity is higher among COVID-19 compared to seasonal influenza patients. Obese patients with COVID-19 are more commonly female and have worse outcomes than non-obese patients. Further, they have worse outcomes than obese patients with influenza, despite presenting with fewer comorbidities. Our results show that individuals with obesity present more comorbidities and worse outcomes for COVID-19 than non-obese patients. These findings may be useful in guiding clinical practice and future preventative strategies for obese individuals, as well as provide useful data to support subsequent association studies focussed on obesity and COVID-19. is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint Introduction Obesity is associated with increased mortality and is a well-known risk factor of chronic conditions, such as diabetes, hypertension, cardiovascular disease and, cancer. 1 Due to its proinflammatory state that impairs the immune response, obesity has also been related to increased risk of viral infections, including seasonal influenza. 2 The novel coronavirus disease 2019 , caused by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), has been compared to seasonal influenza in terms of symptoms and complications. 3 Both viruses cause respiratory tract infection with clinical manifestations ranging from asymptomatic/mild symptoms to severe illness requiring intensive services. Partly due to its similarities with influenza, people with obesity were soon labelled as "at-risk" individuals. 4 Recent studies have found that obesity is common among severe and fatal COVID-19 cases. [5] [6] [7] [8] In hospitalized cohorts from the United States (US), obesity prevalence in COVID-19 cases ranges from 40 to 50%, [9] [10] [11] while lower prevalence has been reported in non-hospitalized cases. A primary care study from Spain found that 20% of COVID-19 cases were obese, 12 while in a populationbased study from Denmark only 9% were obese. 13 Since obesity is a worldwide public health priority, granular information on obese patients with COVID-19 is needed to guide preventive strategies. 14 In this study, we aimed to describe and compare the demographics, comorbidities, and outcomes of obese patients with COVID-19 to those of 1) non-obese patients with COVID-19, and 2) obese patients with seasonal influenza, among inpatient or outpatient settings. We conducted a multinational cohort study using routinely-collected healthcare data from January to June 2020 from the US, Spain, and the United Kingdom (UK). All data were standardized to the Observational Medical Outcomes Partnership (OMOP) Common Data Model (CDM). 15 The openscience Observational Health Data Sciences and Informatics (OHDSI) network maintains the OMOP-CDM, along with a wide range of tools developed by its members to facilitate analyses of mapped data. 16 . CC-BY-NC-ND 4.0 International license It is made available under a perpetuity. is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. IQVIA Open Claims, which are pre-adjudicated claims collected from office based physicians and specialists covering over 300 million lives (~80% of the US population); and the United States Department of Veterans Affairs (VA-OMOP), covering the national Department of Veterans Affairs health care system which serves more than 9 million enrolled Veterans (of whom 93% are male). A more detailed description of the included data sources is available in Appendix 1. Patients hospitalized with COVID-19 were identified as those having a hospitalization episode along with a clinical diagnosis or positive SARS-CoV-2 test within a time window from 21 days prior to admission up to the end of their hospitalization. We chose this time window to include patients with a diagnosis prior to hospitalization and to allow for a record delay in test results or diagnoses. Both the diagnosed and hospitalized COVID-19 cohorts were stratified by obesity (obese vs nonobese). Obesity was defined as having an ever-recorded obesity diagnosis (Appendix 3) and/or a body mass index (BMI) measurement between 30 and 60 kg/m 2 and/or a body weight measurement between 120 and 200 kilograms prior or at index date. Non-obese patients were those who did not fulfil the obesity definition. is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. We obtained information on the participants' sex (female, male) and age at index date. Clinical epidemiologists generated a list of codes for the identification of prior medical conditions and outcomes of interest using a web-based integrated platform (ATLAS tool). 20 We identified comorbidities from up to one year prior to index date. We selected conditions based on their prevalence in the cohorts of the participating sites, as well as on their clinical relevance to the obesity and the COVID-19 research field. 4, 21 Comorbidities were identified based on the Systematized Nomenclature of Medicine (SNOMED) hierarchy, with all descendant codes included. 20 We created specific definitions for comorbidities of particular interest; the detailed definitions of these variables can be consulted in Appendix 3. Our main 30-day outcomes of interest were hospitalization and death for the diagnosed cohorts, and requirement of intensive services (identified by a recorded mechanical ventilation and/or a tracheostomy and/or extracorporeal membrane oxygenation procedure) and death for the hospitalized cohorts. For the hospitalized cohort of COVID-19 patients, we also report respiratory, cardiovascular, thromboembolic, and other events occurring in the 30 days after the index date. We describe the number of patients included and the prevalence of obesity in each database. We report the percentage of COVID-19 diagnoses that was identified by a positive SARS-CoV-2 test, as well as the socio-demographics, comorbidities, and outcomes as proportions (calculated by the number of persons within a given category, divided by the total number of persons) for each database, by obesity status. A common analytical code was developed for the OHDSI Methods library which was run locally in each database (available at https://github.com/ohdsi-studies/Covid19CharacterizationCharybdis), and only aggregate results from each database were publicly-shared. We used R version 3.6 for data visualization. All the data partners obtained Institutional Review Board (IRB) approval or exemption to conduct this study. is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. . https://doi.org/10.1101/2020.09.02.20185173 doi: medRxiv preprint The COVID-19 dataset included 627 044 diagnosed and 160 013 hospitalized patients. The (40%) were obese, respectively. In all databases, the prevalence of obesity was lower among diagnosed patients than among those hospitalized, with differences ranging from 5% (IQVIA-OpenClaims) to 16% (SIDIAP) ( Table 1 ). The influenza dataset included 4 549 568 patients diagnosed and 239 535 patients hospitalized with influenza. Among patients diagnosed or hospitalized with influenza, 688 553 (15%) and 67 257 (28%) were obese, respectively. Aside from VA-OMOP, obesity prevalence was lower among patients diagnosed or hospitalized with influenza compared to those with COVID-19, with differences ranging from 9% (CPRD) to 18% (IQVIA-OpenClaims) among diagnosed, and ranging from 5% (VA-OMOP) to 11% (CUIMC) among hospitalized patients. Overall, diagnosed patients were mainly female and aged between 18 and 64 years (Table 1 and Supplementary table 3) . However, the proportion of patients aged above 64 years was higher among obese patients with COVID-19 compared to non-obese for SIDIAP, STARR-OMOP, CUIMC, and VA-OMOP and slightly lower for CPRD and IQVIA-OpenClaims. The proportion of patients younger than 18 was very low for obese diagnosed COVID-19 patients, with less than 2% in all databases, whereas it was greater than 10% in four databases for obese influenza patients. Aside from VA-OMOP, in the hospitalized cohorts, female sex was more common among obese COVID-19 (ranging from 51% to 55%) and influenza cases (from 55% to 63%) than in non-obese COVID-19 (from 40% to 50%) (Table 1) . Overall, hospitalized patients were older than those diagnosed. In the hospitalized cohorts, obese patients with COVID-19 were fairly consistently younger than non-obese (except for SIDIAP) and obese influenza patients. The proportion of patients aged above 65 ranged from 36% to 63% for obese, from 43% to 73% for non-obese and from 54% to 72% for obese influenza patients. is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. . https://doi.org/10.1101/2020.09.02.20185173 doi: medRxiv preprint In the diagnosed cohorts, obese patients with COVID-19 consistently had a higher prevalence of comorbidities compared to non-obese patients (upper part of Figure 1 . A and Supplementary table 4 ). For example, while the prevalence of hypertension for the obese ranged from 30% to 32% in Europe (CPRD and SIDIAP) and from 55% to 81% in the US, in the non-obese it ranged from 12% to 16% and from 26 to 53%, respectively. When compared to obese patients with influenza, obese patients with COVID-19 had a higher prevalence of comorbidities for SIDIAP, STARR-OMOP, and IQVIA-OpenClaims whereas they had fewer comorbidities for CPRD and CUIMC (Figure 1 .B, Supplementary table 6). As in the diagnosed cohort, hospitalized obese patients with COVID-19 had a higher prevalence of comorbidities than non-obese; however, the differences between groups were less obvious (lower part of Figure 1 In the diagnosed cohorts, hospitalizations rates were higher among obese COVID-19 patients than among non-obese and obese influenza patients in all databases ( Figure 2 ). For example, in IQVIA-OpenClaims, the proportion of patients hospitalized was 32% and 26% for obese and non-obese patients with COVID-19 and 9% for obese patients with influenza. Among obese COVID-19 patients, fatality ranged from 5% to 12%. While CPRD and VA-OMOP had similar fatality in obese and non-obese; in SIDIAP and CUIMC, obese patients had a higher fatality than non-obese (7% vs 3% and 8% vs 5%, respectively). Among obese COVID-19 patients, fatality was higher than among obese influenza patients (range: 0·1% to 3%). In the hospitalized cohorts, obese patients with COVID-19 required intensive services more frequently than non-obese in STARR-OMOP (obese: 9% vs non-obese: 6%), IQVIA-OpenClaims (13% vs 10%) and VA-OMOP (22% vs 15%). Percentages in CUIMC were too small to assess differences (2·3% vs 2·0%). Hospitalized obese patients with COVID-19 also required intensive services more often than obese patients with influenza in IQVIA-OpenClaims (13% vs 3%) and VA-OMOP (22% vs 6%) whereas in CUIMC (2% vs 6%) the opposite was observed. is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. . https://doi.org/10.1101/2020.09.02.20185173 doi: medRxiv preprint There were no notable differences in fatality between obese and non-obese hospitalized patients with COVID-19: 14% vs 11% in SIDIAP, 20% vs 21% in CUIMC and 16% vs 18% in VA-OMOP. However, fatality among obese COVID-19 cases was much higher than among obese influenza patients (2% in CUIMC and 4% in VA-OMOP). Overall, obese patients with COVID-19 had adverse events occurring in the 30 days after the index date more frequently than non-obese (Table 2 ). This was especially evident for the most frequent events, namely acute respiratory distress syndrome (ARDS) (range: 15% to 46% among obese, range: 10% to 41% among non-obese) and heart failure (7% to 23% among obese, 3% to 17% among non-obese) during hospitalization. Sepsis, cardiac arrhythmia, and total cardiovascular disease events were also slightly more frequent among obese COVID-19 patients compared to nonobese. Acute kidney injury was the only outcome that was more frequent among non-obese; however, except for CUIMC, differences were small. For the rest of the reported events, numbers were too small to assess differences between obese and non-obese COVID-19 patients. In this large cohort including 627 044 COVID-19 and 4 549 568 influenza patients from the US, Spain, and the UK, we found that the prevalence of obesity was higher among COVID-19 patients hospitalized compared to those diagnosed and was higher in both COVID-19 cohorts compared to the influenza cohorts. Obese patients diagnosed and hospitalized with COVID-19 were more commonly female, and presented with more comorbidities and adverse outcomes than non-obese patients. Although obese COVID-19 patients were younger and less likely to have comorbidities than obese influenza patients in the hospitalized cohorts, they more frequently had adverse outcomes. Given the prevalence of obesity in the US (37%), the UK (27%) and Spain (24%), a high proportion of obese patients among COVID-19 cases was expected. 22 However, the prevalence of obesity among COVID-19 patients was higher than the general population in the three countries, which is suggestive of an increased risk of diagnosis in obese patients. Obese individuals could be more likely to seek care and be tested for SARS-CoV-2 since they are a high-risk, multimorbid population and could be more prone to respiratory symptoms due to their compromised pulmonary function. Alternatively, they might have an increased risk of COVID-19 infection that could be explained through differences in exposure and/or vulnerability. Two studies from Spain and the UK found a higher risk of being diagnosed with COVID-19 in obese individuals. 7, 23 We also found a is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. . https://doi.org/10.1101/2020.09.02.20185173 doi: medRxiv preprint higher proportion of obesity among hospitalized COVID-19 patients compared to those diagnosed. The prevalence of obesity from this study was similar to three cohort studies from the US that reported 40%, 42% and 48% of hospitalized patients were obese. [9] [10] [11] These findings could reflect a preferential care in high-risk populations but also an increased risk of severe disease among obese patients. Prior characterization studies from the hospital setting have consistently reported that COVID-19 hospitalized patients are more frequently male. 10, 11 We found, however, that women predominate among hospitalized obese patients. Since the prevalence of obesity is similar for men and women in the three countries, our findings could reflect that obesity is a greater risk factor for hospitalization among women compared to men. 22 Some of the biological hypotheses that have been posited to explain the greater risk of poor COVID-19 outcomes among men are similar to those proposed for obese individuals. For example, one hypothesis argues that sex differences in the immune response increase men's vulnerability. Men have higher levels of interleukin-6 and tumour necrosis factor alpha, which are the main drivers of the phenomenon of "cytokine storm" that has been observed in severe COVID-19 patients. 24, 25 Obese individuals also have higher levels of these pro-inflammatory cytokines. 26 Similarly, men have higher levels of angiotensin-converting enzyme 2, which are also elevated in obese individuals. 25, 27 We also found that compared to non-obese, patients with obesity were older among those diagnosed with COVID-19 and younger in those hospitalized. The former observation might be explained by the early identification of both older age and obesity as risk factors for COVID-19. 4 This could have increased the frequency of testing among people with these characteristics. Conversely, the differences observed in the hospital setting could be related to a greater risk of severe outcomes among individuals with obesity younger than 60. 28 Although younger individuals have less risk of infections and complications than older people due to having fewer comorbidities and a stronger immune system, 29,30 this is not the case for obese individuals. 31, 32 Therefore, the more fragile health of obese patients even in the young may contribute to the observed age pattern for the individuals hospitalized with obesity. Obese individuals differed also in terms of comorbidities. Unsurprisingly, the highest differences were observed in obesity-related conditions, such as hypertension, diabetes, and heart disease, which have been identified as risk factors for severe COVID-19 outcomes. 7, 8, 10, 13 The selected comorbidities likely represent only a small proportion of the differences that should be considered when assessing the links between obesity and COVID-19. For instance, obesity is strongly interlinked with socioeconomic status and ethnicity, and disproportionately affects disadvantaged populations. 29 In the US, the prevalence of obesity is higher among Hispanic and African Americans than among their White counterparts. These disparities have been hypothesized as a contributing factor explaining ethnic differences in the proportion of hospitalizations. 33 Given the links between obesity and the social determinants of health, obese individuals might be more at risk is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. . https://doi.org/10.1101/2020.09.02.20185173 doi: medRxiv preprint of COVID-19 infection and complications due to more precarious working conditions and barriers in healthcare access. Unfortunately, due to data unavailability, we could not directly explore socioeconomic status or ethnicity differences in our study. Finally, obese individuals experienced more frequently adverse events than non-obese, including hospitalization and requirement of intensive services. These results, however, must be interpreted carefully considering the differences in socio-demographics and comorbidities between obese and non-obese individuals. Despite this limitation, our results are in line with previous studies where obesity was associated with an increased risk of hospitalization and mortality, adjusting for sex, age, and comorbidities. 7, 810, 13 Given the scarcity of evidence regarding the frequency of specific adverse events during hospitalization among obese patients, our findings are of special interest to the field and should be addressed in upcoming associative studies. Since obesity has been associated with different forms of influenza, an association with COVID-19 was expected from the beginning of the pandemic. 34 Interestingly, we found that the prevalence of obesity was higher among both COVID-19 diagnosed and hospitalized patients compared to those with seasonal influenza, which may be suggestive of an inherent vulnerability towards COVID-19 among obese patients. In both COVID-19 and influenza cohorts, female sex was more frequent than male sex. A large study comparing hospitalized patients with COVID-19 to those with influenza found that COVID-19 patients were predominantly male whereas those with influenza were mostly women. 35 While our study replicated those findings for non-obese patients, we observed that women predominated among obese patients hospitalized with COVID-19. Thus, our results provide a finer picture of the most frequent sex of patients with COVID-19 among those with obesity. Older age has been associated with an increased risk of more severe forms of both COVID-19 and influenza, 3 however, we observed obese patients with COVID-19 were younger than those with influenza. Our findings are in line with previous studies that reported younger ages among individuals with H1N1 and COVID-19 compared to seasonal influenza (obese and non-obese individuals together). 35, 36 Finally, although obese patients diagnosed with COVID-19 had more comorbidities than obese influenza patients the opposite was observed among hospitalized patients. This could reflect either a higher virulence of SARS-CoV-2 compared to influenza or a differential pattern in clinical practice, with a lower threshold for hospitalization in COVID-19 cases. However, obese patients with COVID-19 consistently had worse outcomes than influenza patients. These results put in to question the justification that worse outcomes among obese patients with COVID-19 are merely due to a higher prevalence of co-existing conditions. 37 Our study has several strengths, such as its large amount of data. This study contains information on 627 044 COVID-19 cases from six databases of three different countries and provides a wide is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. . https://doi.org/10.1101/2020.09.02.20185173 doi: medRxiv preprint overview of the characteristics and outcomes of patients with and without obesity. Almost 29 000 unique aggregate characteristics were generated and made publicly available. This was accomplished through the coordinated efforts of the OHDSI community to provide a rapid response to the COVID-19 pandemic. We employed a federated analysis approach that allowed us to respect the confidentiality of patient records at all times, and we emphasized transparency throughout the study, making methods, tools, and results publicly available. Our study also has limitations. One limitation is its descriptive nature. Since we aimed to characterize and compare patients with and without obesity, statistical tests and modelling were out of scope in the developed analytical packages. However, our findings were consistent across databases. In addition, the exhaustive characterization performed in this study supports the generation of new hypotheses that can be tested in detail in future studies. Second, we cannot exclude a selection bias of COVID-19 cases due to underreporting in the context of testing restrictions and asymptomatic or paucisymptomatic cases that usually do not seek medical care. Additionally, testing policies have varied across countries and time depending on the course of the pandemic. The inclusion of COVID-19 cases clinically diagnosed (without being tested) in different countries and settings likely provided consistency to our data, although it might have incurred in false positives. Third, we did not have information on BMI as a continuous variable, which prevented us from investigating the impact of different categories of obesity in COVID-19 outcomes. This might explain the higher proportion of comorbidities and outcomes observed in the US databases, as obese individuals from the US might be more obese than those from Europe. Fourthly, we cannot discard that the differences found in the COVID-19/seasonal influenza comparison may have been influenced by temporal changes in clinical practice standards and coding. Further, the use of influenza vaccination among high-risk population groups likely contributed to the observed low proportion of adverse events among influenza patients. 38 Finally, this study was underpinned by routinely-collected data which can raise concerns about the quality of the data. Some databases are prone to oversampling certain groups of people as a result of how these data are captured (e.g. the Veterans Affairs system historically serves more men than women, routine claims data may only reflect health outcomes in commercially insured populations, etc). Obesity, comorbidities, and outcomes were assessed based on having a record of a condition/measurement, therefore they may be underestimated. Even still, the consistency of our findings across several databases that differ by setting and country lends credence to the generalizability of our findings. In this large international cohort, we showed that obese patients with COVID-19 were more likely to be female, had more comorbidities and worse outcomes than non-obese patients. We provide novel evidence that the prevalence of obesity is higher among COVID-19 patients compared to those with seasonal influenza and that obese hospitalized COVID-19 patients have worse outcomes is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. Analyses were performed locally in compliance with all applicable data privacy laws. Although the underlying data is not readily available to be shared, authors contributing to this paper have direct access to the data sources used in this study. All results (e.g. aggregate statistics, not presented at a patient-level with redactions for minimum cell count) are available for public inquiry. These results are inclusive of site-identifiers by contributing data sources to enable interrogation of each contributing site. All analytic code and result sets are made available at: https://github.com/ohdsistudies/Covid19CharacterizationCharybdis . CC-BY-NC-ND 4.0 International license It is made available under a perpetuity. is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. . https://doi.org/10.1101/2020.09.02.20185173 doi: medRxiv preprint A. Obese and non-obese COVID-19 patients Prevalence of comorbidities for obese (red) and non-obese (blue) patients are depicted in overlapped horizontal bars. Grey colour is the overlap between groups (therefore, it shows the lowest value). For example, in CPRD, 32% of obese and 16% of non-obese patients have hypertension. Prevalence of comorbidities for obese COVID-19 (red) and obese Influenza (green) patients are depicted in overlapped horizontal bars. Grey colour is the overlap between groups (lowest value). is the author/funder, who has granted medRxiv a license to display the preprint in (which was not certified by peer review) preprint The copyright holder for this this version posted September 3, 2020. . https://doi.org/10.1101/2020.09.02.20185173 doi: medRxiv preprint Body-mass index and all-cause mortality: individual-participant-data meta-analysis of 239 prospective studies in four continents Underweight, overweight, and obesity as independent risk factors for hospitalization in adults and children from influenza and other respiratory viruses CDC. Similarities and Differences between Flu and COVID-19. Centers Dis. 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The Book of OHDSI Certain Medical Conditions and Risk for Severe COVID-19 Illness | CDC Obesity and risk of COVID-19: analysis of UK biobank COVID-19: consider cytokine storm syndromes and immunosuppression Sex and gender differences in the outcome of patients with 26 Insight into the relationship between obesity-induced low-level chronic inflammation and COVID-19 infection Obesity and COVID-19: ACE 2, the Missing Tile Obesity in Patients Younger Than 60 Years Is a Risk Factor for COVID-19 Hospital Admission Ageing and the epidemiology of multimorbidity Evolution of the immune system in humans from infancy to old age Social determinants of obesity The impact of obesity on the immune response to infection Covid-19 and Disparities in Nutrition and Obesity Influenza and obesity: its odd relationship and the lessons for COVID-19 pandemic Deep phenotyping of 34,128 patients hospitalised with COVID-19 and a comparison with 81,596 influenza patients in America, Europe and Asia: an international network study Factors Associated With Death or Hospitalization Due to Pandemic 2009 Influenza A(H1N1) Infection in California Effect of body mass index on the outcome of infections: A systematic review: Obesity Comorbidities Effects of Influenza Vaccination in the United States during the 2017-2018 Influenza Season We would like to acknowledge the patients who suffered from or died of this devastating disease, and their families and carers. We would also like to thank the healthcare professionals involved in