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Patterns of risk—Using machine learning and structural neuroimaging to identify pedophilic offenders

BACKGROUND: Child sexual abuse (CSA) has become a focal point for lawmakers, law enforcement, and mental health professionals. With high prevalence rates around the world and far-reaching, often chronic, individual, and societal implications, CSA and its leading risk factor, pedophilia, have been we...

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Autores principales: Popovic, David, Wertz, Maximilian, Geisler, Carolin, Kaufmann, Joern, Lähteenvuo, Markku, Lieslehto, Johannes, Witzel, Joachim, Bogerts, Bernhard, Walter, Martin, Falkai, Peter, Koutsouleris, Nikolaos, Schiltz, Kolja
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10157073/
https://www.ncbi.nlm.nih.gov/pubmed/37151966
http://dx.doi.org/10.3389/fpsyt.2023.1001085
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author Popovic, David
Wertz, Maximilian
Geisler, Carolin
Kaufmann, Joern
Lähteenvuo, Markku
Lieslehto, Johannes
Witzel, Joachim
Bogerts, Bernhard
Walter, Martin
Falkai, Peter
Koutsouleris, Nikolaos
Schiltz, Kolja
author_facet Popovic, David
Wertz, Maximilian
Geisler, Carolin
Kaufmann, Joern
Lähteenvuo, Markku
Lieslehto, Johannes
Witzel, Joachim
Bogerts, Bernhard
Walter, Martin
Falkai, Peter
Koutsouleris, Nikolaos
Schiltz, Kolja
author_sort Popovic, David
collection PubMed
description BACKGROUND: Child sexual abuse (CSA) has become a focal point for lawmakers, law enforcement, and mental health professionals. With high prevalence rates around the world and far-reaching, often chronic, individual, and societal implications, CSA and its leading risk factor, pedophilia, have been well investigated. This has led to a wide range of clinical tools and actuarial instruments for diagnosis and risk assessment regarding CSA. However, the neurobiological underpinnings of pedosexual behavior, specifically regarding hands-on pedophilic offenders (PO), remain elusive. Such biomarkers for PO individuals could potentially improve the early detection of high-risk PO individuals and enhance efforts to prevent future CSA. AIM: To use machine learning and MRI data to identify PO individuals. METHODS: From a single-center male cohort of 14 PO individuals and 15 matched healthy control (HC) individuals, we acquired diffusion tensor imaging data (anisotropy, diffusivity, and fiber tracking) in literature-based regions of interest (prefrontal cortex, anterior cingulate cortex, amygdala, and corpus callosum). We trained a linear support vector machine to discriminate between PO and HC individuals using these WM microstructure data. Post hoc, we investigated the PO model decision scores with respect to sociodemographic (age, education, and IQ) and forensic characteristics (psychopathy, sexual deviance, and future risk of sexual violence) in the PO subpopulation. We assessed model specificity in an external cohort of 53 HC individuals. RESULTS: The classifier discriminated PO from HC individuals with a balanced accuracy of 75.5% (sensitivity = 64.3%, specificity = 86.7%, P(5000) = 0.018) and an out-of-sample specificity to correctly identify HC individuals of 94.3%. The predictive brain pattern contained bilateral fractional anisotropy in the anterior cingulate cortex, diffusivity in the left amygdala, and structural prefrontal cortex-amygdala connectivity in both hemispheres. This brain pattern was associated with the number of previous child victims, the current stance on sexuality, and the professionally assessed risk of future sexual violent reoffending. CONCLUSION: Aberrant white matter microstructure in the prefronto-temporo-limbic circuit could be a potential neurobiological correlate for PO individuals at high-risk of reoffending with CSA. Although preliminary and exploratory at this point, our findings highlight the general potential of MRI-based biomarkers and particularly WM microstructure patterns for future CSA risk assessment and preventive efforts.
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spelling pubmed-101570732023-05-05 Patterns of risk—Using machine learning and structural neuroimaging to identify pedophilic offenders Popovic, David Wertz, Maximilian Geisler, Carolin Kaufmann, Joern Lähteenvuo, Markku Lieslehto, Johannes Witzel, Joachim Bogerts, Bernhard Walter, Martin Falkai, Peter Koutsouleris, Nikolaos Schiltz, Kolja Front Psychiatry Psychiatry BACKGROUND: Child sexual abuse (CSA) has become a focal point for lawmakers, law enforcement, and mental health professionals. With high prevalence rates around the world and far-reaching, often chronic, individual, and societal implications, CSA and its leading risk factor, pedophilia, have been well investigated. This has led to a wide range of clinical tools and actuarial instruments for diagnosis and risk assessment regarding CSA. However, the neurobiological underpinnings of pedosexual behavior, specifically regarding hands-on pedophilic offenders (PO), remain elusive. Such biomarkers for PO individuals could potentially improve the early detection of high-risk PO individuals and enhance efforts to prevent future CSA. AIM: To use machine learning and MRI data to identify PO individuals. METHODS: From a single-center male cohort of 14 PO individuals and 15 matched healthy control (HC) individuals, we acquired diffusion tensor imaging data (anisotropy, diffusivity, and fiber tracking) in literature-based regions of interest (prefrontal cortex, anterior cingulate cortex, amygdala, and corpus callosum). We trained a linear support vector machine to discriminate between PO and HC individuals using these WM microstructure data. Post hoc, we investigated the PO model decision scores with respect to sociodemographic (age, education, and IQ) and forensic characteristics (psychopathy, sexual deviance, and future risk of sexual violence) in the PO subpopulation. We assessed model specificity in an external cohort of 53 HC individuals. RESULTS: The classifier discriminated PO from HC individuals with a balanced accuracy of 75.5% (sensitivity = 64.3%, specificity = 86.7%, P(5000) = 0.018) and an out-of-sample specificity to correctly identify HC individuals of 94.3%. The predictive brain pattern contained bilateral fractional anisotropy in the anterior cingulate cortex, diffusivity in the left amygdala, and structural prefrontal cortex-amygdala connectivity in both hemispheres. This brain pattern was associated with the number of previous child victims, the current stance on sexuality, and the professionally assessed risk of future sexual violent reoffending. CONCLUSION: Aberrant white matter microstructure in the prefronto-temporo-limbic circuit could be a potential neurobiological correlate for PO individuals at high-risk of reoffending with CSA. Although preliminary and exploratory at this point, our findings highlight the general potential of MRI-based biomarkers and particularly WM microstructure patterns for future CSA risk assessment and preventive efforts. Frontiers Media S.A. 2023-04-20 /pmc/articles/PMC10157073/ /pubmed/37151966 http://dx.doi.org/10.3389/fpsyt.2023.1001085 Text en Copyright © 2023 Popovic, Wertz, Geisler, Kaufmann, Lähteenvuo, Lieslehto, Witzel, Bogerts, Walter, Falkai, Koutsouleris and Schiltz. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Psychiatry
Popovic, David
Wertz, Maximilian
Geisler, Carolin
Kaufmann, Joern
Lähteenvuo, Markku
Lieslehto, Johannes
Witzel, Joachim
Bogerts, Bernhard
Walter, Martin
Falkai, Peter
Koutsouleris, Nikolaos
Schiltz, Kolja
Patterns of risk—Using machine learning and structural neuroimaging to identify pedophilic offenders
title Patterns of risk—Using machine learning and structural neuroimaging to identify pedophilic offenders
title_full Patterns of risk—Using machine learning and structural neuroimaging to identify pedophilic offenders
title_fullStr Patterns of risk—Using machine learning and structural neuroimaging to identify pedophilic offenders
title_full_unstemmed Patterns of risk—Using machine learning and structural neuroimaging to identify pedophilic offenders
title_short Patterns of risk—Using machine learning and structural neuroimaging to identify pedophilic offenders
title_sort patterns of risk—using machine learning and structural neuroimaging to identify pedophilic offenders
topic Psychiatry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10157073/
https://www.ncbi.nlm.nih.gov/pubmed/37151966
http://dx.doi.org/10.3389/fpsyt.2023.1001085
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