Abstract

Self-harm occurring within pregnancy and the postnatal year ("perinatal self-harm") is a clinically important yet under-researched topic. Current research likely under-estimates prevalence due to methodological limitations. Electronic healthcare records (EHRs) provide a source of clinically rich data on perinatal self-harm. (1) To create a Natural Language Processing (NLP) tool that can, with acceptable precision and recall, identify mentions of acts of perinatal self-harm within EHRs. (2) To use this tool to identify service-users who have self-harmed perinatally, based on their EHRs. We used the Clinical Record Interactive Search system to extract de-identified EHRs of secondary mental healthcare service-users at South London and Maudsley NHS Foundation Trust. We developed a tool that applied several layers of linguistic processing based on the spaCy NLP library for Python. We evaluated mention-level performance in the following domains: span, status, temporality and polarity. Evaluation was done against a manually coded reference standard. Mention-level performance was reported as precision, recall, F-score and Cohen's kappa for each domain. Performance was also assessed at 'service-user' level and explored whether a heuristic rule improved this. We report per-class statistics for service-user performance, as well as likelihood ratios and post-test probabilities. Mention-level performance: micro-averaged F-score, precision and recall for span, polarity and temporality >0.8. Kappa for status 0.68, temporality 0.62, polarity 0.91. Service-user level performance with heuristic: F-score, precision, recall of minority class 0.69, macro-averaged F-score 0.81, positive LR 9.4 (4.8-19), post-test probability 69.0% (53-82%). Considering the task difficulty, the tool performs well, although temporality was the attribute with the lowest level of annotator agreement. It is feasible to develop an NLP tool that identifies, with acceptable validity, mentions of perinatal self-harm within EHRs, although with limitations regarding temporality. Using a heuristic rule, it can also function at a service-user-level.

Highlights

  • Self-harm is defined by the National Institute for Health and Care Excellence as an “act of selfpoisoning or self-injury carried out by a person, irrespective of their motivation” [1]

  • We developed a tool that applied several layers of linguistic processing based on the spaCy Natural Language Processing (NLP) library for Python

  • Considering the task difficulty, the tool performs well, temporality was the attribute with the lowest level of annotator agreement

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Summary

Introduction

During pregnancy and the postnatal year, a time known as “the perinatal period”, around 5–14% of women are estimated to experience thoughts of self-harm [4]. There remains an evidence gap around acts of perinatal self-harm [5]. Given self-harm is strongly associated with mental disorder [6], this is likely to be the case for perinatal self-harm. It may be a marker of unmet treatment need. Self-harm occurring within pregnancy and the postnatal year (“perinatal self-harm”) is a clinically important yet under-researched topic. Electronic healthcare records (EHRs) provide a source of clinically rich data on perinatal self-harm. Editor: Natalia Grabar, STL UMR8163 CNRS, FRANCE Received: February 25, 2021 Accepted: June 14, 2021 Published: August 4, 2021

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