Predicting patient outcomes in psychiatric hospitals with routine data: a machine learning approach

Abstract Background A common problem in machine learning applications is availability of data at the point of decision making. The aim of the present study was to use routine data readily available at admission to predict aspects relevant to the organization of psychiatric hospital care. A further a...

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Main Authors: J. Wolff, A. Gary, D. Jung, C. Normann, K. Kaier, H. Binder, K. Domschke, A. Klimke, M. Franz
Format: Article
Language:English
Published: BMC 2020-02-01
Series:BMC Medical Informatics and Decision Making
Subjects:
Online Access:https://doi.org/10.1186/s12911-020-1042-2
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spelling doaj-b9768756970141188bb5d529500372012021-02-07T12:45:31ZengBMCBMC Medical Informatics and Decision Making1472-69472020-02-012011910.1186/s12911-020-1042-2Predicting patient outcomes in psychiatric hospitals with routine data: a machine learning approachJ. Wolff0A. Gary1D. Jung2C. Normann3K. Kaier4H. Binder5K. Domschke6A. Klimke7M. Franz8Department of Psychiatry and Psychotherapy, Medical Center - University of Freiburg, Faculty of Medicine, University of FreiburgDepartment of Business Development, Forensic Commitment and Quality Management, Vitos GmbHVitos Hospital for Psychiatry und PsychotherapyDepartment of Psychiatry and Psychotherapy, Medical Center - University of Freiburg, Faculty of Medicine, University of FreiburgInstitute of Medical Biometry and Statistics, Medical Center - University of Freiburg, Faculty of Medicine, University of FreiburgInstitute of Medical Biometry and Statistics, Medical Center - University of Freiburg, Faculty of Medicine, University of FreiburgDepartment of Psychiatry and Psychotherapy, Medical Center - University of Freiburg, Faculty of Medicine, University of FreiburgVitos HochtaunusVitos Hospital Giessen-MarburgAbstract Background A common problem in machine learning applications is availability of data at the point of decision making. The aim of the present study was to use routine data readily available at admission to predict aspects relevant to the organization of psychiatric hospital care. A further aim was to compare the results of a machine learning approach with those obtained through a traditional method and those obtained through a naive baseline classifier. Methods The study included consecutively discharged patients between 1st of January 2017 and 31st of December 2018 from nine psychiatric hospitals in Hesse, Germany. We compared the predictive performance achieved by stochastic gradient boosting (GBM) with multiple logistic regression and a naive baseline classifier. We tested the performance of our final models on unseen patients from another calendar year and from different hospitals. Results The study included 45,388 inpatient episodes. The models’ performance, as measured by the area under the Receiver Operating Characteristic curve, varied strongly between the predicted outcomes, with relatively high performance in the prediction of coercive treatment (area under the curve: 0.83) and 1:1 observations (0.80) and relatively poor performance in the prediction of short length of stay (0.69) and non-response to treatment (0.65). The GBM performed slightly better than logistic regression. Both approaches were substantially better than a naive prediction based solely on basic diagnostic grouping. Conclusion The present study has shown that administrative routine data can be used to predict aspects relevant to the organisation of psychiatric hospital care. Future research should investigate the predictive performance that is necessary to provide effective assistance in clinical practice for the benefit of both staff and patients.https://doi.org/10.1186/s12911-020-1042-2PsychiatryHospitalsDecision support techniquesMachine learningHealth services administration
collection DOAJ
language English
format Article
sources DOAJ
author J. Wolff
A. Gary
D. Jung
C. Normann
K. Kaier
H. Binder
K. Domschke
A. Klimke
M. Franz
spellingShingle J. Wolff
A. Gary
D. Jung
C. Normann
K. Kaier
H. Binder
K. Domschke
A. Klimke
M. Franz
Predicting patient outcomes in psychiatric hospitals with routine data: a machine learning approach
BMC Medical Informatics and Decision Making
Psychiatry
Hospitals
Decision support techniques
Machine learning
Health services administration
author_facet J. Wolff
A. Gary
D. Jung
C. Normann
K. Kaier
H. Binder
K. Domschke
A. Klimke
M. Franz
author_sort J. Wolff
title Predicting patient outcomes in psychiatric hospitals with routine data: a machine learning approach
title_short Predicting patient outcomes in psychiatric hospitals with routine data: a machine learning approach
title_full Predicting patient outcomes in psychiatric hospitals with routine data: a machine learning approach
title_fullStr Predicting patient outcomes in psychiatric hospitals with routine data: a machine learning approach
title_full_unstemmed Predicting patient outcomes in psychiatric hospitals with routine data: a machine learning approach
title_sort predicting patient outcomes in psychiatric hospitals with routine data: a machine learning approach
publisher BMC
series BMC Medical Informatics and Decision Making
issn 1472-6947
publishDate 2020-02-01
description Abstract Background A common problem in machine learning applications is availability of data at the point of decision making. The aim of the present study was to use routine data readily available at admission to predict aspects relevant to the organization of psychiatric hospital care. A further aim was to compare the results of a machine learning approach with those obtained through a traditional method and those obtained through a naive baseline classifier. Methods The study included consecutively discharged patients between 1st of January 2017 and 31st of December 2018 from nine psychiatric hospitals in Hesse, Germany. We compared the predictive performance achieved by stochastic gradient boosting (GBM) with multiple logistic regression and a naive baseline classifier. We tested the performance of our final models on unseen patients from another calendar year and from different hospitals. Results The study included 45,388 inpatient episodes. The models’ performance, as measured by the area under the Receiver Operating Characteristic curve, varied strongly between the predicted outcomes, with relatively high performance in the prediction of coercive treatment (area under the curve: 0.83) and 1:1 observations (0.80) and relatively poor performance in the prediction of short length of stay (0.69) and non-response to treatment (0.65). The GBM performed slightly better than logistic regression. Both approaches were substantially better than a naive prediction based solely on basic diagnostic grouping. Conclusion The present study has shown that administrative routine data can be used to predict aspects relevant to the organisation of psychiatric hospital care. Future research should investigate the predictive performance that is necessary to provide effective assistance in clinical practice for the benefit of both staff and patients.
topic Psychiatry
Hospitals
Decision support techniques
Machine learning
Health services administration
url https://doi.org/10.1186/s12911-020-1042-2
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