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10.1371/journal.pone.0247235

http://scihub22266oqcxt.onion/10.1371/journal.pone.0247235
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34081724!8174716!34081724
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suck abstract from ncbi

pmid34081724      PLoS+One 2021 ; 16 (6): e0247235
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  • Leveraging a health information exchange for analyses of COVID-19 outcomes including an example application using smoking history and mortality #MMPMID34081724
  • Tortolero GA; Brown MR; Sharma SV; de Oliveira Otto MC; Yamal JM; Aguilar D; Gunther MD; Mofleh DI; Harris RD; John JC; de Vries PS; Ramphul R; Serbo DM; Kiger J; Banerjee D; Bonvino N; Merchant A; Clifford W; Mikhail J; Xu H; Murphy RE; Wei Q; Vahidy FS; Morrison AC; Boerwinkle E
  • PLoS One 2021[]; 16 (6): e0247235 PMID34081724show ga
  • Understanding sociodemographic, behavioral, clinical, and laboratory risk factors in patients diagnosed with COVID-19 is critically important, and requires building large and diverse COVID-19 cohorts with both retrospective information and prospective follow-up. A large Health Information Exchange (HIE) in Southeast Texas, which assembles and shares electronic health information among providers to facilitate patient care, was leveraged to identify COVID-19 patients, create a cohort, and identify risk factors for both favorable and unfavorable outcomes. The initial sample consists of 8,874 COVID-19 patients ascertained from the pandemic's onset to June 12th, 2020 and was created for the analyses shown here. We gathered demographic, lifestyle, laboratory, and clinical data from patient's encounters across the healthcare system. Tobacco use history was examined as a potential risk factor for COVID-19 fatality along with age, gender, race/ethnicity, body mass index (BMI), and number of comorbidities. Of the 8,874 patients included in the cohort, 475 died from COVID-19. Of the 5,356 patients who had information on history of tobacco use, over 26% were current or former tobacco users. Multivariable logistic regression showed that the odds of COVID-19 fatality increased among those who were older (odds ratio = 1.07, 95% CI 1.06, 1.08), male (1.91, 95% CI 1.58, 2.31), and had a history of tobacco use (2.45, 95% CI 1.93, 3.11). History of tobacco use remained significantly associated (1.65, 95% CI 1.27, 2.13) with COVID-19 fatality after adjusting for age, gender, and race/ethnicity. This effort demonstrates the impact of having an HIE to rapidly identify a cohort, aggregate sociodemographic, behavioral, clinical and laboratory data across disparate healthcare providers electronic health record (HER) systems, and follow the cohort over time. These HIE capabilities enable clinical specialists and epidemiologists to conduct outcomes analyses during the current COVID-19 pandemic and beyond. Tobacco use appears to be an important risk factor for COVID-19 related death.
  • |Age Factors[MESH]
  • |COVID-19/*mortality[MESH]
  • |Cohort Studies[MESH]
  • |Comorbidity[MESH]
  • |Ethnicity[MESH]
  • |Health Information Exchange/*statistics & numerical data/*trends[MESH]
  • |Healthcare Disparities[MESH]
  • |Hospitalization[MESH]
  • |Humans[MESH]
  • |Pandemics[MESH]
  • |Prospective Studies[MESH]
  • |Retrospective Studies[MESH]
  • |Risk Factors[MESH]
  • |SARS-CoV-2/metabolism/pathogenicity[MESH]
  • |Sex Factors[MESH]
  • |Smoking[MESH]


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