Prevalence of Mental Illnesses in Domestic Violence Police Records: Text Mining Study

BackgroundThe New South Wales Police Force (NSWPF) records details of significant numbers of domestic violence (DV) events they attend each year as both structured quantitative data and unstructured free text. Accessing information contained in the free text such as the victi...

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Main Authors: Karystianis, George, Simpson, Annabeth, Adily, Armita, Schofield, Peter, Greenberg, David, Wand, Handan, Nenadic, Goran, Butler, Tony
Format: Article
Language:English
Published: JMIR Publications 2020-12-01
Series:Journal of Medical Internet Research
Online Access:http://www.jmir.org/2020/12/e23725/
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spelling doaj-27fba8a3a71b4d50b5b0ba735b7caf432021-04-02T21:36:07ZengJMIR PublicationsJournal of Medical Internet Research1438-88712020-12-012212e2372510.2196/23725Prevalence of Mental Illnesses in Domestic Violence Police Records: Text Mining StudyKarystianis, GeorgeSimpson, AnnabethAdily, ArmitaSchofield, PeterGreenberg, DavidWand, HandanNenadic, GoranButler, Tony BackgroundThe New South Wales Police Force (NSWPF) records details of significant numbers of domestic violence (DV) events they attend each year as both structured quantitative data and unstructured free text. Accessing information contained in the free text such as the victim’s and persons of interest (POI's) mental health status could be useful in the better management of DV events attended by the police and thus improve health, justice, and social outcomes. ObjectiveThe aim of this study is to present the prevalence of extracted mental illness mentions for POIs and victims in police-recorded DV events. MethodsWe applied a knowledge-driven text mining method to recognize mental illness mentions for victims and POIs from police-recorded DV events. ResultsIn 416,441 police-recorded DV events with single POIs and single victims, we identified 64,587 events (15.51%) with at least one mental illness mention versus 4295 (1.03%) recorded in the structured fixed fields. Two-thirds (67,582/85,880, 78.69%) of mental illnesses were associated with POIs versus 21.30% (18,298/85,880) with victims; depression was the most common condition in both victims (2822/12,589, 22.42%) and POIs (7496/39,269, 19.01%). Mental illnesses were most common among POIs aged 0-14 years (623/1612, 38.65%) and in victims aged over 65 years (1227/22,873, 5.36%). ConclusionsA wealth of mental illness information exists within police-recorded DV events that can be extracted using text mining. The results showed mood-related illnesses were the most common in both victims and POIs. Further investigation is required to determine the reliability of the mental illness mentions against sources of diagnostic information.http://www.jmir.org/2020/12/e23725/
collection DOAJ
language English
format Article
sources DOAJ
author Karystianis, George
Simpson, Annabeth
Adily, Armita
Schofield, Peter
Greenberg, David
Wand, Handan
Nenadic, Goran
Butler, Tony
spellingShingle Karystianis, George
Simpson, Annabeth
Adily, Armita
Schofield, Peter
Greenberg, David
Wand, Handan
Nenadic, Goran
Butler, Tony
Prevalence of Mental Illnesses in Domestic Violence Police Records: Text Mining Study
Journal of Medical Internet Research
author_facet Karystianis, George
Simpson, Annabeth
Adily, Armita
Schofield, Peter
Greenberg, David
Wand, Handan
Nenadic, Goran
Butler, Tony
author_sort Karystianis, George
title Prevalence of Mental Illnesses in Domestic Violence Police Records: Text Mining Study
title_short Prevalence of Mental Illnesses in Domestic Violence Police Records: Text Mining Study
title_full Prevalence of Mental Illnesses in Domestic Violence Police Records: Text Mining Study
title_fullStr Prevalence of Mental Illnesses in Domestic Violence Police Records: Text Mining Study
title_full_unstemmed Prevalence of Mental Illnesses in Domestic Violence Police Records: Text Mining Study
title_sort prevalence of mental illnesses in domestic violence police records: text mining study
publisher JMIR Publications
series Journal of Medical Internet Research
issn 1438-8871
publishDate 2020-12-01
description BackgroundThe New South Wales Police Force (NSWPF) records details of significant numbers of domestic violence (DV) events they attend each year as both structured quantitative data and unstructured free text. Accessing information contained in the free text such as the victim’s and persons of interest (POI's) mental health status could be useful in the better management of DV events attended by the police and thus improve health, justice, and social outcomes. ObjectiveThe aim of this study is to present the prevalence of extracted mental illness mentions for POIs and victims in police-recorded DV events. MethodsWe applied a knowledge-driven text mining method to recognize mental illness mentions for victims and POIs from police-recorded DV events. ResultsIn 416,441 police-recorded DV events with single POIs and single victims, we identified 64,587 events (15.51%) with at least one mental illness mention versus 4295 (1.03%) recorded in the structured fixed fields. Two-thirds (67,582/85,880, 78.69%) of mental illnesses were associated with POIs versus 21.30% (18,298/85,880) with victims; depression was the most common condition in both victims (2822/12,589, 22.42%) and POIs (7496/39,269, 19.01%). Mental illnesses were most common among POIs aged 0-14 years (623/1612, 38.65%) and in victims aged over 65 years (1227/22,873, 5.36%). ConclusionsA wealth of mental illness information exists within police-recorded DV events that can be extracted using text mining. The results showed mood-related illnesses were the most common in both victims and POIs. Further investigation is required to determine the reliability of the mental illness mentions against sources of diagnostic information.
url http://www.jmir.org/2020/12/e23725/
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