Delineating COVID-19 subgroups using routine clinical data identifies distinct in-hospital outcomes

The COVID-19 pandemic has been a great challenge to healthcare systems worldwide. It highlighted the need for robust predictive models which can be readily deployed to uncover heterogeneities in disease course, aid decision-making and prioritise treatment. We adapted an unsupervised data-driven mode...

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Hauptverfasser: Rangelov, B, Young, A, Lilaonitkul, W, Aslani, S, Taylor, P, Guðmundsson, E, Yang, Q, Hu, Y, Hurst, J.R, Hawkes, D.J, Jacob, J, Cushnan, D, Halling-Brown, M, Jefferson, E, Lemarchand, F, Sarellas, A, Schofield, D, Sutherland, J, Watt, M, Alexander, D, Aziz, H, Lewis, E, Lip, G, Manser, P, Quinlan, P, Sebire, N, Swift, A, Shetty, S, Williams, P, Bennett, O, Dorgham, S, Favaro, A, Gan, S, Ganepola, T, Imreh, G, Puri, N, Rodrigues, J.L.C, Oliver, H, Hudson, B, Robinson, G, Wood, R, Moreton, A, Lomas, K, Marchbank, N, Law, C, Chana, H, Gandy, N, Sharif, B, Ismail, L, Patel, J, Wai, D, Mathers, L, Clark, R, Harrar, A, Bettany, A, Foley, K, Pothecary, C, Buckle, S, Roche, L, Shah, A, Kirkham, F, Bown, H, Seal, S, Connoley, H, Tugwell-Allsup, J, Owen, W.B, Jones, M, Moth, A, Colman, J, Maskell, G, Kim, D, Sanchez-Cabello, A, Lewis, H, Thorley, M, Kruger, R, Chifu, M, Ashley, N, Spas, S, Bates, A, Halson, P, Heafey, C, McCann, C, McCreavy, D, Duvva, D, Siah, T, Deane, J, Pearlman, E, MacKay, J, Sia, M, Easter, E, Brookes, D, Burford, P, Barbara, R.R, Payne, T, Ingram, M, Bhatia, B, Yusuf, S, Rotherham, F
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Zusammenfassung:The COVID-19 pandemic has been a great challenge to healthcare systems worldwide. It highlighted the need for robust predictive models which can be readily deployed to uncover heterogeneities in disease course, aid decision-making and prioritise treatment. We adapted an unsupervised data-driven model—SuStaIn, to be utilised for short-term infectious disease like COVID-19, based on 11 commonly recorded clinical measures. We used 1344 patients from the National COVID-19 Chest Imaging Database (NCCID), hospitalised for RT-PCR confirmed COVID-19 disease, splitting them equally into a training and an independent validation cohort. We discovered three COVID-19 subtypes (General Haemodynamic, Renal and Immunological) and introduced disease severity stages, both of which were predictive of distinct risks of in-hospital mortality or escalation of treatment, when analysed using Cox Proportional Hazards models. A low-risk Normal-appearing subtype was also discovered. The model and our full pipeline are available online and can be adapted for future outbreaks of COVID-19 or other infectious disease.
DOI:10.1038/s41598-023-32469-9