Predicting criminal and violent outcomes in psychiatry : a meta-analysis of diagnostic accuracy
Autor(a) principal: | |
---|---|
Data de Publicação: | 2022 |
Outros Autores: | , , , , , , , |
Tipo de documento: | Artigo |
Idioma: | eng |
Título da fonte: | Repositório Institucional da UFRGS |
Texto Completo: | http://hdl.handle.net/10183/259725 |
Resumo: | Although reducing criminal outcomes in individuals with mental illness have long been a priority for governments worldwide, there is still a lack of objective and highly accurate tools that can predict these events at an individual level. Predictive machine learning models may provide a unique opportunity to identify those at the highest risk of criminal activity and facilitate personalized rehabilitation strategies. Therefore, this systematic review and meta-analysis aims to describe the diagnostic accuracy of studies using machine learning techniques to predict criminal and violent outcomes in psychiatry. We performed meta-analyses using the mada, meta, and dmetatools packages in R to predict criminal and violent outcomes in psychiatric patients (n = 2428) (Registration Number: CRD42019127169) by searching PubMed, Scopus, and Web of Science for articles published in any language up to April 2022. Twenty studies were included in the systematic review. Overall, studies used single-nucleotide polymorphisms, text analysis, psychometric scales, hospital records, and resting-state regional cerebral blood flow to build predictive models. Of the studies described in the systematic review, nine were included in the present meta-analysis. The area under the curve (AUC) for predicting violent and criminal outcomes in psychiatry was 0.816 (95% Confidence Interval (CI): 70.57–88.15), with a partial AUC of 0.773, and average sensitivity of 73.33% (95% CI: 64.09–79.63), and average specificity of 72.90% (95% CI: 63.98–79.66), respectively. Furthermore, the pooled accuracy across models was 71.45% (95% CI: 60.88–83.86), with a tau squared (τ 2 ) of 0.0424 (95% CI: 0.0184–0.1553). Based on available evidence, we suggest that prospective models include evidence-based risk factors identified in prior actuarial models. Moreover, there is a need for a greater emphasis on identifying biological features and incorporating novel variables which have not been explored in prior literature. Furthermore, available models remain preliminary, and prospective validation with independent datasets, and across cultures, will be required prior to clinical implementation. Nonetheless, predictive machine learning models hold promise in providing clinicians and researchers with actionable tools to improve how we prevent, detect, or intervene in relevant crime and violent-related outcomes in psychiatry. |
id |
UFRGS-2_e1c3864522158f82fb18be70fd1fe9fa |
---|---|
oai_identifier_str |
oai:www.lume.ufrgs.br:10183/259725 |
network_acronym_str |
UFRGS-2 |
network_name_str |
Repositório Institucional da UFRGS |
repository_id_str |
|
spelling |
Watts, DevonCardoso, Taiane de AzevedoGarcia, Diego LibrenzaBallester, Pedro LemosPassos, Ives CavalcanteKessler, Felix Henrique PaimReilly, JimChaimowitz, GaryKapczinski, Flávio Pereira2023-07-01T03:39:28Z20222158-3188http://hdl.handle.net/10183/259725001166900Although reducing criminal outcomes in individuals with mental illness have long been a priority for governments worldwide, there is still a lack of objective and highly accurate tools that can predict these events at an individual level. Predictive machine learning models may provide a unique opportunity to identify those at the highest risk of criminal activity and facilitate personalized rehabilitation strategies. Therefore, this systematic review and meta-analysis aims to describe the diagnostic accuracy of studies using machine learning techniques to predict criminal and violent outcomes in psychiatry. We performed meta-analyses using the mada, meta, and dmetatools packages in R to predict criminal and violent outcomes in psychiatric patients (n = 2428) (Registration Number: CRD42019127169) by searching PubMed, Scopus, and Web of Science for articles published in any language up to April 2022. Twenty studies were included in the systematic review. Overall, studies used single-nucleotide polymorphisms, text analysis, psychometric scales, hospital records, and resting-state regional cerebral blood flow to build predictive models. Of the studies described in the systematic review, nine were included in the present meta-analysis. The area under the curve (AUC) for predicting violent and criminal outcomes in psychiatry was 0.816 (95% Confidence Interval (CI): 70.57–88.15), with a partial AUC of 0.773, and average sensitivity of 73.33% (95% CI: 64.09–79.63), and average specificity of 72.90% (95% CI: 63.98–79.66), respectively. Furthermore, the pooled accuracy across models was 71.45% (95% CI: 60.88–83.86), with a tau squared (τ 2 ) of 0.0424 (95% CI: 0.0184–0.1553). Based on available evidence, we suggest that prospective models include evidence-based risk factors identified in prior actuarial models. Moreover, there is a need for a greater emphasis on identifying biological features and incorporating novel variables which have not been explored in prior literature. Furthermore, available models remain preliminary, and prospective validation with independent datasets, and across cultures, will be required prior to clinical implementation. Nonetheless, predictive machine learning models hold promise in providing clinicians and researchers with actionable tools to improve how we prevent, detect, or intervene in relevant crime and violent-related outcomes in psychiatry.application/pdfengTranslational psychiatry. New York. Vol. 12 (2022), artigo 470, 11 p.PsiquiatriaViolênciaMetanáliseAprendizado de máquinaPrognósticoPredicting criminal and violent outcomes in psychiatry : a meta-analysis of diagnostic accuracyEstrangeiroinfo:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/openAccessreponame:Repositório Institucional da UFRGSinstname:Universidade Federal do Rio Grande do Sul (UFRGS)instacron:UFRGSTEXT001166900.pdf.txt001166900.pdf.txtExtracted Texttext/plain57811http://www.lume.ufrgs.br/bitstream/10183/259725/2/001166900.pdf.txt24d6281a5c6c85a021baf9b8d7102c0dMD52ORIGINAL001166900.pdfTexto completo (inglês)application/pdf837041http://www.lume.ufrgs.br/bitstream/10183/259725/1/001166900.pdf477270899acc461afb7ef680dd7e0957MD5110183/2597252023-07-02 03:41:36.047863oai:www.lume.ufrgs.br:10183/259725Repositório de PublicaçõesPUBhttps://lume.ufrgs.br/oai/requestopendoar:2023-07-02T06:41:36Repositório Institucional da UFRGS - Universidade Federal do Rio Grande do Sul (UFRGS)false |
dc.title.pt_BR.fl_str_mv |
Predicting criminal and violent outcomes in psychiatry : a meta-analysis of diagnostic accuracy |
title |
Predicting criminal and violent outcomes in psychiatry : a meta-analysis of diagnostic accuracy |
spellingShingle |
Predicting criminal and violent outcomes in psychiatry : a meta-analysis of diagnostic accuracy Watts, Devon Psiquiatria Violência Metanálise Aprendizado de máquina Prognóstico |
title_short |
Predicting criminal and violent outcomes in psychiatry : a meta-analysis of diagnostic accuracy |
title_full |
Predicting criminal and violent outcomes in psychiatry : a meta-analysis of diagnostic accuracy |
title_fullStr |
Predicting criminal and violent outcomes in psychiatry : a meta-analysis of diagnostic accuracy |
title_full_unstemmed |
Predicting criminal and violent outcomes in psychiatry : a meta-analysis of diagnostic accuracy |
title_sort |
Predicting criminal and violent outcomes in psychiatry : a meta-analysis of diagnostic accuracy |
author |
Watts, Devon |
author_facet |
Watts, Devon Cardoso, Taiane de Azevedo Garcia, Diego Librenza Ballester, Pedro Lemos Passos, Ives Cavalcante Kessler, Felix Henrique Paim Reilly, Jim Chaimowitz, Gary Kapczinski, Flávio Pereira |
author_role |
author |
author2 |
Cardoso, Taiane de Azevedo Garcia, Diego Librenza Ballester, Pedro Lemos Passos, Ives Cavalcante Kessler, Felix Henrique Paim Reilly, Jim Chaimowitz, Gary Kapczinski, Flávio Pereira |
author2_role |
author author author author author author author author |
dc.contributor.author.fl_str_mv |
Watts, Devon Cardoso, Taiane de Azevedo Garcia, Diego Librenza Ballester, Pedro Lemos Passos, Ives Cavalcante Kessler, Felix Henrique Paim Reilly, Jim Chaimowitz, Gary Kapczinski, Flávio Pereira |
dc.subject.por.fl_str_mv |
Psiquiatria Violência Metanálise Aprendizado de máquina Prognóstico |
topic |
Psiquiatria Violência Metanálise Aprendizado de máquina Prognóstico |
description |
Although reducing criminal outcomes in individuals with mental illness have long been a priority for governments worldwide, there is still a lack of objective and highly accurate tools that can predict these events at an individual level. Predictive machine learning models may provide a unique opportunity to identify those at the highest risk of criminal activity and facilitate personalized rehabilitation strategies. Therefore, this systematic review and meta-analysis aims to describe the diagnostic accuracy of studies using machine learning techniques to predict criminal and violent outcomes in psychiatry. We performed meta-analyses using the mada, meta, and dmetatools packages in R to predict criminal and violent outcomes in psychiatric patients (n = 2428) (Registration Number: CRD42019127169) by searching PubMed, Scopus, and Web of Science for articles published in any language up to April 2022. Twenty studies were included in the systematic review. Overall, studies used single-nucleotide polymorphisms, text analysis, psychometric scales, hospital records, and resting-state regional cerebral blood flow to build predictive models. Of the studies described in the systematic review, nine were included in the present meta-analysis. The area under the curve (AUC) for predicting violent and criminal outcomes in psychiatry was 0.816 (95% Confidence Interval (CI): 70.57–88.15), with a partial AUC of 0.773, and average sensitivity of 73.33% (95% CI: 64.09–79.63), and average specificity of 72.90% (95% CI: 63.98–79.66), respectively. Furthermore, the pooled accuracy across models was 71.45% (95% CI: 60.88–83.86), with a tau squared (τ 2 ) of 0.0424 (95% CI: 0.0184–0.1553). Based on available evidence, we suggest that prospective models include evidence-based risk factors identified in prior actuarial models. Moreover, there is a need for a greater emphasis on identifying biological features and incorporating novel variables which have not been explored in prior literature. Furthermore, available models remain preliminary, and prospective validation with independent datasets, and across cultures, will be required prior to clinical implementation. Nonetheless, predictive machine learning models hold promise in providing clinicians and researchers with actionable tools to improve how we prevent, detect, or intervene in relevant crime and violent-related outcomes in psychiatry. |
publishDate |
2022 |
dc.date.issued.fl_str_mv |
2022 |
dc.date.accessioned.fl_str_mv |
2023-07-01T03:39:28Z |
dc.type.driver.fl_str_mv |
Estrangeiro info:eu-repo/semantics/article |
dc.type.status.fl_str_mv |
info:eu-repo/semantics/publishedVersion |
format |
article |
status_str |
publishedVersion |
dc.identifier.uri.fl_str_mv |
http://hdl.handle.net/10183/259725 |
dc.identifier.issn.pt_BR.fl_str_mv |
2158-3188 |
dc.identifier.nrb.pt_BR.fl_str_mv |
001166900 |
identifier_str_mv |
2158-3188 001166900 |
url |
http://hdl.handle.net/10183/259725 |
dc.language.iso.fl_str_mv |
eng |
language |
eng |
dc.relation.ispartof.pt_BR.fl_str_mv |
Translational psychiatry. New York. Vol. 12 (2022), artigo 470, 11 p. |
dc.rights.driver.fl_str_mv |
info:eu-repo/semantics/openAccess |
eu_rights_str_mv |
openAccess |
dc.format.none.fl_str_mv |
application/pdf |
dc.source.none.fl_str_mv |
reponame:Repositório Institucional da UFRGS instname:Universidade Federal do Rio Grande do Sul (UFRGS) instacron:UFRGS |
instname_str |
Universidade Federal do Rio Grande do Sul (UFRGS) |
instacron_str |
UFRGS |
institution |
UFRGS |
reponame_str |
Repositório Institucional da UFRGS |
collection |
Repositório Institucional da UFRGS |
bitstream.url.fl_str_mv |
http://www.lume.ufrgs.br/bitstream/10183/259725/2/001166900.pdf.txt http://www.lume.ufrgs.br/bitstream/10183/259725/1/001166900.pdf |
bitstream.checksum.fl_str_mv |
24d6281a5c6c85a021baf9b8d7102c0d 477270899acc461afb7ef680dd7e0957 |
bitstream.checksumAlgorithm.fl_str_mv |
MD5 MD5 |
repository.name.fl_str_mv |
Repositório Institucional da UFRGS - Universidade Federal do Rio Grande do Sul (UFRGS) |
repository.mail.fl_str_mv |
|
_version_ |
1815447830222864384 |