2021
DOI: 10.1101/2021.02.21.21252132
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Subphenotyping of COVID-19 patients at pre-admission towards anticipated severity stratification: an analysis of 778 692 Mexican patients through an age-gender unbiased meta-clustering technique

Abstract: Objective To describe COVID-19 subphenotypes regarding severity patterns including prognostic, ICU and morbimortality outcomes, through stratification based on gender and age groups, as described by inter-patient variability patterns in clinical phenotypes and demographic features. Materials and methods We used the COVID-19 open data from the Mexican Government including patient-level epidemiological and clinical data from 778 692 SARS-CoV-2 patients from January 13, 2020 to September 30, 2020. Inter-patient … Show more

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References 62 publications
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“… Li et al (September 2020) [101] Diagnose COVID-19; Identify subphenotypes Public dataset: 413 patients with COVID-19 and 1071 patients with influenza XGBoost model; a self-organizing map (SOM) Sensitivity = 92.5%; Specificity = 97.9%; Identified 4 subphenotypes which showed much difference in terms of gender distribution and levels of CRP and serum immune cells. Zhou et al (April 2020) [169] Identify subphenotypes Mexican Government COVID-19 open data including 778,692 COVID-19 patients. meta-clustering technique Identify 3 clusters which showed different recovery rates Su et al (July 2020) [103] Identify subphenotypes NYP-WCMC eligible 318 patients extracted from 1661 patients with COVID-19 and NYP-LMH eligible 84 patients extracted from 458 patients with COVID-19.…”
Section: Ai In Covid-19 Clinical Researchmentioning
confidence: 99%
“… Li et al (September 2020) [101] Diagnose COVID-19; Identify subphenotypes Public dataset: 413 patients with COVID-19 and 1071 patients with influenza XGBoost model; a self-organizing map (SOM) Sensitivity = 92.5%; Specificity = 97.9%; Identified 4 subphenotypes which showed much difference in terms of gender distribution and levels of CRP and serum immune cells. Zhou et al (April 2020) [169] Identify subphenotypes Mexican Government COVID-19 open data including 778,692 COVID-19 patients. meta-clustering technique Identify 3 clusters which showed different recovery rates Su et al (July 2020) [103] Identify subphenotypes NYP-WCMC eligible 318 patients extracted from 1661 patients with COVID-19 and NYP-LMH eligible 84 patients extracted from 458 patients with COVID-19.…”
Section: Ai In Covid-19 Clinical Researchmentioning
confidence: 99%