Delineating COVID-19 subgroups using routine clinical data identifies distinct in-hospital outcomes
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Published:2023-06-20
Issue:1
Volume:13
Page:
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ISSN:2045-2322
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Container-title:Scientific Reports
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language:en
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Short-container-title:Sci Rep
Author:
Rangelov BojidarORCID, Young AlexandraORCID, Lilaonitkul Watjana, Aslani Shahab, Taylor Paul, Guðmundsson Eyjólfur, Yang Qianye, Hu Yipeng, Hurst John R., Hawkes David J., Jacob Joseph, Bains Pardeep, Cushnan Dominic, Halling-Brown Mark, Jacob Joseph, Jefferson Emily, Lemarchand Francois, Sarellas Anastasios, Schofield Daniel, Sutherland James, Watt Mathew, Alexander Daniel, Aziz Hena, Hurst John R., Lewis Emma, Lip Gerald, Manser Peter, Quinlan Philip, Sebire Neil, Swift Andrew, Shetty Smita, Williams Peter, Bennett Oscar, Dorgham Samie, Favaro Alberto, Gan Samantha, Ganepola Tara, Imreh Gergely, Puri Neha, Rodrigues Jonathan Carl Luis, Oliver Helen, Hudson Benjamin, Robinson Graham, Wood Richard, Moreton Annette, Lomas Katy, Marchbank Nigel, Law Chinnoi, Chana Harmeet, Gandy Nemi, Sharif Ban, Ismail Leila, Patel Jaymini, Wai Debbie, Mathers Liz, Clark Rachel, Harrar Anisha, Bettany Alison, Foley Kieran, Pothecary Carla, Buckle Stephen, Roche Lisa, Shah Aarti, Kirkham Fiona, Bown Hannah, Seal Simon, Connoley Hayley, Tugwell-Allsup Jenna, Owen Bethan Wyn, Jones Mary, Moth Andrew, Colman Jordan, Maskell Giles, Kim Daniel, Sanchez-Cabello Alexander, Lewis Hannah, Thorley Matthew, Kruger Ross, Chifu Madalina, Ashley Nicholas, Spas Susanne, Bates Angela, Halson Peter, Heafey Chris, McCann Caroline, McCreavy David, Duvva Dileep, Siah Tze, Deane Janet, Pearlman Emily, MacKay James, Sia Melissa, Easter Esme, Brookes Doreen, Burford Paul, Barbara Ramona-Rita, Payne Thomas, Ingram Mark, Bhatia Bahadar, Yusuf Sarah, Rotherham Fiona, Warren Gayle, Heeney Angela, Bowen Angela, Wilson Adele, Hussain Zahida, Kellett Joanne, Harrison Rachael, Watkins Janet, Patterson Lisa, Welsh Tom, Redwood Dawn, Greig Natasha, Van Pelt Lindsay, Palmer Susan, Milne Kate, Tilley Joanna, Alexander Melissa, Frary Amy J., Babar Judith L., Sadler Timothy, Neil-Gallacher Edward, Cardona Sarah, Gill Avneet, Omeje Nnenna, Ridgeon Claire, Gleeson Fergus, Johnstone Annette, Frood Russell, Rabani Mohammed Atif, Scarsbrook Andrew, Lyttle Mark D., Lyen Stephen, James Gareth, Sheedy Sarah, Homer Kiarna, Glover Alison, Gibbison Ben, Blazeby Jane, Baquedano Mai, Payne Thomas, Jacob Teresa, Grubnic Sisa, Crick Tony, Crawford Debbie, Prestwood Fiona, Cooper Margaret, Radon Mark, , , , ,
Abstract
AbstractThe 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.
Funder
Microsoft Research
Publisher
Springer Science and Business Media LLC
Subject
Multidisciplinary
Cited by
1 articles.
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