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Journal Article

Citation

Bittar A, Velupillai S, Roberts A, Dutta R. Stud. Health Technol. Inform. 2019; 264: 40-44.

Affiliation

South London and Maudsley NHS Foundation Trust, London, UK.

Copyright

(Copyright © 2019, IOS Press)

DOI

10.3233/SHTI190179

PMID

31437881

Abstract

Assessing a patient's risk of an impending suicide attempt has been hampered by limited information about dynamic factors that change rapidly in the days leading up to an attempt. The storage of patient data in electronic health records (EHRs) has facilitated population-level risk assessment studies using machine learning techniques. Until recently, most such work has used only structured EHR data and excluded the unstructured text of clinical notes. In this article, we describe our experiments on suicide risk assessment, modelling the problem as a classification task. Given the wealth of text data in mental health EHRs, we aimed to assess the impact of using this data in distinguishing periods prior to a suicide attempt from those not preceding such an attempt. We compare three different feature sets, one structured and two text-based, and show that inclusion of text features significantly improves classification accuracy in suicide risk assessment.


Language: en

Keywords

Natural Language Processing; Risk Assessment; Suicide

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