Abstract
The timely identification of patients who are at risk of a mental health crisis can lead to improved outcomes and to the mitigation of burdens and costs. However, the high prevalence of mental health problems means that the manual review of complex patient records to make proactive care decisions is not feasible in practice. Therefore, we developed a machine learning model that uses electronic health records to continuously monitor patients for risk of a mental health crisis over a period of 28 days. The model achieves an area under the receiver operating characteristic curve of 0.797 and an area under the precision-recall curve of 0.159, predicting crises with a sensitivity of 58% at a specificity of 85%. A follow-up 6-month prospective study evaluated our algorithm’s use in clinical practice and observed predictions to be clinically valuable in terms of either managing caseloads or mitigating the risk of crisis in 64% of cases. To our knowledge, this study is the first to continuously predict the risk of a wide range of mental health crises and to explore the added value of such predictions in clinical practice.
Machine learning applied on electronic health records can predict mental health crises 28 days in advance and become a clinically valuable tool for managing caseloads and mitigating the risk of crisis.
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Details
; Mas, Javier 2
; Abraha, Semhar 3
; Nolan, Jon 4 ; Harrison, Oliver 5
; Tadros, George 6 ; Matic, Aleksandar 7
1 Koa Health, Barcelona, Spain; Universitat Pompeu Fabra, Department of Information and Communication Technologies, Barcelona, Spain (GRID:grid.5612.0) (ISNI:0000 0001 2172 2676)
2 Koa Health, Barcelona, Spain (GRID:grid.5612.0); Kannact, Barcelona, Spain (GRID:grid.5612.0)
3 Birmingham and Solihull Mental Health NHS Foundation Trust, Birmingham, UK (GRID:grid.450453.3) (ISNI:0000 0000 9709 8550); University of Warwick, Warwick, UK (GRID:grid.7372.1) (ISNI:0000 0000 8809 1613)
4 Birmingham and Solihull Mental Health NHS Foundation Trust, Birmingham, UK (GRID:grid.450453.3) (ISNI:0000 0000 9709 8550)
5 Koa Health, Barcelona, Spain (GRID:grid.450453.3)
6 Birmingham and Solihull Mental Health NHS Foundation Trust, Birmingham, UK (GRID:grid.450453.3) (ISNI:0000 0000 9709 8550); Aston University, Aston Medical School, Aston, UK (GRID:grid.7273.1) (ISNI:0000 0004 0376 4727)
7 Koa Health, Barcelona, Spain (GRID:grid.7273.1)





