Development and validation of a machine learning model for prediction of type 2 diabetes in patients with mental illness

Author:

Bernstorff Martin123ORCID,Hansen Lasse123ORCID,Enevoldsen Kenneth123ORCID,Damgaard Jakob123ORCID,Hæstrup Frida123ORCID,Perfalk Erik12ORCID,Danielsen Andreas Aalkjær12ORCID,Østergaard Søren Dinesen12ORCID

Affiliation:

1. Department of Affective Disorders Aarhus University Hospital – Psychiatry Aarhus Denmark

2. Department of Clinical Medicine Aarhus University Aarhus Denmark

3. Center for Humanities Computing Aarhus University Aarhus Denmark

Abstract

AbstractBackgroundType 2 diabetes (T2D) is approximately twice as common among individuals with mental illness compared with the background population, but may be prevented by early intervention on lifestyle, diet, or pharmacologically. Such prevention relies on identification of those at elevated risk (prediction). The aim of this study was to develop and validate a machine learning model for prediction of T2D among patients with mental illness.MethodsThe study was based on routine clinical data from electronic health records from the psychiatric services of the Central Denmark Region. A total of 74,880 patients with 1.59 million psychiatric service contacts were included in the analyses. We created 1343 potential predictors from 51 source variables, covering patient‐level information on demographics, diagnoses, pharmacological treatment, and laboratory results. T2D was operationalised as HbA1c ≥48 mmol/mol, fasting plasma glucose ≥7.0 mmol/mol, oral glucose tolerance test ≥11.1 mmol/mol or random plasma glucose ≥11.1 mmol/mol. Two machine learning models (XGBoost and regularised logistic regression) were trained to predict T2D based on 85% of the included contacts. The predictive performance of the best performing model was tested on the remaining 15% of the contacts.ResultsThe XGBoost model detected patients at high risk 2.7 years before T2D, achieving an area under the receiver operating characteristic curve of 0.84. Of the 996 patients developing T2D in the test set, the model issued at least one positive prediction for 305 (31%).ConclusionA machine learning model can accurately predict development of T2D among patients with mental illness based on routine clinical data from electronic health records. A decision support system based on such a model may inform measures to prevent development of T2D in this high‐risk population.

Funder

Lundbeck Foundation

Health Research Fund of Central Denmark Region

Kræftens Bekæmpelse

Novo Nordisk Fonden

Danmarks Frie Forskningsfond

Publisher

Wiley

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