Training machine learning models to predict 30-day mortality in patients discharged from the emergency department: a retrospective, population based registry studyShow others and affiliations
2019 (English)In: BMJ Open, ISSN 2044-6055, E-ISSN 2044-6055, Vol. 9, no 8, article id e028015
Article in journal (Refereed) Published
Abstract [en]
Background: Aggressive treatment at end-of-life (EOL) can be traumatic to patients and may not add clinical benefit. Absent an accurate prognosis of death, individual level biases may prevent timely discussions about the scope of EOL care and patients are at risk of being subject to care against their desire. The aim of this work is to develop predictive algorithms for identifying patients at EOL, with clinically meaningful discriminatory power.
Methods: Retrospective, population-based study of patients utilizing emergency departments (EDs) in Sweden, Europe. Electronic health records (EHRs) were used to train supervised learning algorithms to predict all-cause mortality within 30 days following ED discharge. Algorithm performance was validated out of sample on EHRs from a separate hospital, to which the algorithms were previously unexposed.
Results: Of 65,776 visits in the development set, 136 (0.21%) experienced the outcome. The algorithm with highest discrimination attained ROC-AUC 0.945 (95% CI 0.933 - 0.956), with sensitivity 0.869 (95% CI 0.802, 0.931) and specificity 0.858 (0.855, 0.860) on the validation set.
Conclusions: Multiple algorithms displayed excellent discrimination and outperformed available indexes for short-term mortality prediction. The practical utility of the algorithms increases as the required data were captured electronically and did not require de novo data collection.
Trial registration number: Not applicable.
Place, publisher, year, edition, pages
London: BMJ Publishing Group Ltd, 2019. Vol. 9, no 8, article id e028015
National Category
Social and Clinical Pharmacy
Identifiers
URN: urn:nbn:se:hh:diva-39307DOI: 10.1136/bmjopen-2018-028015PubMedID: 31401594OAI: oai:DiVA.org:hh-39307DiVA, id: diva2:1313022
Note
Funding: This work was partly funded by Region Halland, Sweden.The initial stage of MCBs involvement in the work was funded by a grant for post-doctoral research from the Tegger Foundation.
2019-05-022019-05-022019-08-15Bibliographically approved
In thesis