Using explainable machine learning to identify patients at risk of reattendance at discharge from emergency departments

被引:13
|
作者
Chmiel, F. P. [1 ]
Burns, D. K. [1 ]
Azor, M. [2 ]
Borca, F. [2 ,3 ]
Boniface, M. J. [1 ]
Zlatev, Z. D. [1 ]
White, N. M. [1 ]
Daniels, T. W., V [4 ,5 ]
Kiuber, M. [6 ]
机构
[1] Univ Southampton, Sch Elect & Comp Sci, Southampton, Hants, England
[2] Univ Hosp Southampton NHS Fdn Trust, Southampton, Hants, England
[3] Univ Southampton, Clin Informat Res Unit, Fac Med, Southampton, Hants, England
[4] Univ Hosp NHS Fdn Trust, Dept Resp Med, Southampton, Hants, England
[5] Southampton Gen Hosp, NIHR Southampton Biomed Res Ctr, Southampton Ctr Biomed Res, Southampton, Hants, England
[6] Univ Hosp Southampton NHS Fdn Trust, Emergency Dept, Southampton, Hants, England
基金
英国工程与自然科学研究理事会;
关键词
D O I
10.1038/s41598-021-00937-9
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Short-term reattendances to emergency departments are a key quality of care indicator. Identifying patients at increased risk of early reattendance could help reduce the number of missed critical illnesses and could reduce avoidable utilization of emergency departments by enabling targeted post-discharge intervention. In this manuscript, we present a retrospective, single-centre study where we created and evaluated an extreme gradient boosting decision tree model trained to identify patients at risk of reattendance within 72 h of discharge from an emergency department (University Hospitals Southampton Foundation Trust, UK). Our model was trained using 35,447 attendances by 28,945 patients and evaluated on a hold-out test set featuring 8847 attendances by 7237 patients. The set of attendances from a given patient appeared exclusively in either the training or the test set. Our model was trained using both visit level variables (e.g., vital signs, arrival mode, and chief complaint) and a set of variables available in a patients electronic patient record, such as age and any recorded medical conditions. On the hold-out test set, our highest performing model obtained an AUROC of 0.747 (95% CI 0.722-0.773) and an average precision of 0.233 (95% CI 0.194-0.277). These results demonstrate that machine-learning models can be used to classify patients, with moderate performance, into low and high-risk groups for reattendance. We explained our models predictions using SHAP values, a concept developed from coalitional game theory, capable of explaining predictions at an attendance level. We demonstrated how clustering techniques (the UMAP algorithm) can be used to investigate the different sub-groups of explanations present in our patient cohort.
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页数:11
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