Machine learning of COVID-19 clinical data identifies population structures with therapeutic potential.
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Author
Greenwood, DavidTaverner, Thomas
Adderley, Nicola J
Price, Malcolm James
Gokhale, Krishna
Sainsbury, Christopher
Gallier, Suzy
Welch, Carly
Sapey, Elizabeth
Murray, Duncan
Fanning, Hilary
Ball, Simon
Nirantharakumar, Krishnarajah
Croft, Wayne
Moss, Paul
Publication date
2022-05-31
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linical outcomes for patients with COVID-19 are heterogeneous and there is interest in defining subgroups for prognostic modeling and development of treatment algorithms. We obtained 28 demographic and laboratory variables in patients admitted to hospital with COVID-19. These comprised a training cohort (n = 6099) and two validation cohorts during the first and second waves of the pandemic (n = 996; n = 1011). Uniform manifold approximation and projection (UMAP) dimension reduction and Gaussian mixture model (GMM) analysis was used to define patient clusters. 29 clusters were defined in the training cohort and associated with markedly different mortality rates, which were predictive within confirmation datasets. Deconvolution of clinical features within clusters identified unexpected relationships between variables. Integration of large datasets using UMAP-assisted clustering can therefore identify patient subgroups with prognostic information and uncovers unexpected interactions between clinical variables. This application of machine learning represents a powerful approach for delineating disease pathogenesis and potential therapeutic interventions.Citation
Greenwood D, Taverner T, Adderley NJ, Price MJ, Gokhale K, Sainsbury C, Gallier S, Welch C, Sapey E, Murray D, Fanning H, Ball S, Nirantharakumar K, Croft W, Moss P. Machine learning of COVID-19 clinical data identifies population structures with therapeutic potential. iScience. 2022 Jul 15;25(7):104480. doi: 10.1016/j.isci.2022.104480. Epub 2022 May 31Type
ArticlePMID
35665240Journal
iSciencePublisher
Cell Pressae974a485f413a2113503eed53cd6c53
10.1016/j.isci.2022.104480