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Sökning: id:"swepub:oai:gup.ub.gu.se/285560" > Training machine le...

Training machine learning models to predict 30-day mortality in patients discharged from the emergency department: A retrospective, population-based registry study

Blom, Mathias Carl (författare)
Department of Clinical Sciences, Lund University, Lund, Sweden
Ashfaq, Awais, 1990- (författare)
Högskolan i Halmstad,CAISR Centrum för tillämpade intelligenta system (IS-lab),Halland Hospital, Region Halland, Halmstad, Sweden
Pinheiro Sant'Anna, Anita, 1983- (författare)
Högskolan i Halmstad,CAISR Centrum för tillämpade intelligenta system (IS-lab)
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Anderson, Philip D. (författare)
Department of Emergency Medicine, Brigham and Women’s Hospital, Boston, Massachusetts, USA & Harvard Medical School, Boston, Massachusetts, USA
Lingman, Markus, 1975 (författare)
Gothenburg University,Göteborgs universitet,Institutionen för medicin, avdelningen för molekylär och klinisk medicin,Institute of Medicine, Department of Molecular and Clinical Medicine,Halland Hospital, Region Halland, Sweden & Department of Molecular and Clinical Medicine/Cardiology, Sahlgrenska Academy, University of Gothenburg, Gothenburg, Sweden
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 (creator_code:org_t)
2019-08-10
2019
Engelska.
Ingår i: BMJ Open. - London : BMJ. - 2044-6055. ; 9
  • Tidskriftsartikel (refereegranskat)
Abstract Ämnesord
Stäng  
  • Objectives The aim of this work was to train machine learning models to identify patients at end of life with clinically meaningful diagnostic accuracy, using 30-day mortality in patients discharged from the emergency department (ED) as a proxy. Design Retrospective, population-based registry study. Setting Swedish health services. Primary and secondary outcome measures All cause 30-day mortality. Methods Electronic health records (EHRs) and administrative data were used to train six supervised machine learning models to predict all-cause mortality within 30 days in patients discharged from EDs in southern Sweden, Europe. Participants The models were trained using 65 776 ED visits and validated on 55 164 visits from a separate ED to which the models were not exposed during training. Results The outcome occurred in 136 visits (0.21%) in the development set and in 83 visits (0.15%) in the validation set. The model with highest discrimination attained ROC-AUC 0.95 (95% CI 0.93 to 0.96), with sensitivity 0.87 (95% CI 0.80 to 0.93) and specificity 0.86 (0.86 to 0.86) on the validation set. Conclusions Multiple models displayed excellent discrimination on the validation set and outperformed available indexes for short-term mortality prediction interms of ROC-AUC (by indirect comparison). The practical utility of the models increases as the data they were trained on did not require costly de novo collection but were real-world data generated as a by-product of routine care delivery.

Ämnesord

MEDICIN OCH HÄLSOVETENSKAP  -- Klinisk medicin -- Kardiologi (hsv//swe)
MEDICAL AND HEALTH SCIENCES  -- Clinical Medicine -- Cardiac and Cardiovascular Systems (hsv//eng)
MEDICIN OCH HÄLSOVETENSKAP  -- Medicinska och farmaceutiska grundvetenskaper -- Samhällsfarmaci och klinisk farmaci (hsv//swe)
MEDICAL AND HEALTH SCIENCES  -- Basic Medicine -- Social and Clinical Pharmacy (hsv//eng)

Nyckelord

advance care planning
emergency medicine
machine learning
mortality

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