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Machine learning classification of conduct disorder with high versus low levels of callous-unemotional traits based on facial emotion recognition abilities

Conduct disorder (CD) with high levels of callous-unemotional traits (CD/HCU) has been theoretically linked to specific difficulties with fear and sadness recognition, in contrast to CD with low levels of callous-unemotional traits (CD/LCU). However, experimental evidence for this distinction is mix...

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Autores principales: Pauli, Ruth, Kohls, Gregor, Tino, Peter, Rogers, Jack C., Baumann, Sarah, Ackermann, Katharina, Bernhard, Anka, Martinelli, Anne, Jansen, Lucres, Oldenhof, Helena, Gonzalez-Madruga, Karen, Smaragdi, Areti, Gonzalez-Torres, Miguel Angel, Kerexeta-Lizeaga, Iñaki, Boonmann, Cyril, Kersten, Linda, Bigorra, Aitana, Hervas, Amaia, Stadler, Christina, Fernandez-Rivas, Aranzazu, Popma, Arne, Konrad, Kerstin, Herpertz-Dahlmann, Beate, Fairchild, Graeme, Freitag, Christine M., Rotshtein, Pia, De Brito, Stephane A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Berlin Heidelberg 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10115711/
https://www.ncbi.nlm.nih.gov/pubmed/34661765
http://dx.doi.org/10.1007/s00787-021-01893-5
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author Pauli, Ruth
Kohls, Gregor
Tino, Peter
Rogers, Jack C.
Baumann, Sarah
Ackermann, Katharina
Bernhard, Anka
Martinelli, Anne
Jansen, Lucres
Oldenhof, Helena
Gonzalez-Madruga, Karen
Smaragdi, Areti
Gonzalez-Torres, Miguel Angel
Kerexeta-Lizeaga, Iñaki
Boonmann, Cyril
Kersten, Linda
Bigorra, Aitana
Hervas, Amaia
Stadler, Christina
Fernandez-Rivas, Aranzazu
Popma, Arne
Konrad, Kerstin
Herpertz-Dahlmann, Beate
Fairchild, Graeme
Freitag, Christine M.
Rotshtein, Pia
De Brito, Stephane A.
author_facet Pauli, Ruth
Kohls, Gregor
Tino, Peter
Rogers, Jack C.
Baumann, Sarah
Ackermann, Katharina
Bernhard, Anka
Martinelli, Anne
Jansen, Lucres
Oldenhof, Helena
Gonzalez-Madruga, Karen
Smaragdi, Areti
Gonzalez-Torres, Miguel Angel
Kerexeta-Lizeaga, Iñaki
Boonmann, Cyril
Kersten, Linda
Bigorra, Aitana
Hervas, Amaia
Stadler, Christina
Fernandez-Rivas, Aranzazu
Popma, Arne
Konrad, Kerstin
Herpertz-Dahlmann, Beate
Fairchild, Graeme
Freitag, Christine M.
Rotshtein, Pia
De Brito, Stephane A.
author_sort Pauli, Ruth
collection PubMed
description Conduct disorder (CD) with high levels of callous-unemotional traits (CD/HCU) has been theoretically linked to specific difficulties with fear and sadness recognition, in contrast to CD with low levels of callous-unemotional traits (CD/LCU). However, experimental evidence for this distinction is mixed, and it is unclear whether these difficulties are a reliable marker of CD/HCU compared to CD/LCU. In a large sample (N = 1263, 9–18 years), we combined univariate analyses and machine learning classifiers to investigate whether CD/HCU is associated with disproportionate difficulties with fear and sadness recognition over other emotions, and whether such difficulties are a reliable individual-level marker of CD/HCU. We observed similar emotion recognition abilities in CD/HCU and CD/LCU. The CD/HCU group underperformed relative to typically developing (TD) youths, but difficulties were not specific to fear or sadness. Classifiers did not distinguish between youths with CD/HCU versus CD/LCU (52% accuracy), although youths with CD/HCU and CD/LCU were reliably distinguished from TD youths (64% and 60%, respectively). In the subset of classifiers that performed well for youths with CD/HCU, fear and sadness were the most relevant emotions for distinguishing them from youths with CD/LCU and TD youths, respectively. We conclude that non-specific emotion recognition difficulties are common in CD/HCU, but are not reliable individual-level markers of CD/HCU versus CD/LCU. These findings highlight that a reduced ability to recognise facial expressions of distress should not be assumed to be a core feature of CD/HCU. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s00787-021-01893-5.
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spelling pubmed-101157112023-04-21 Machine learning classification of conduct disorder with high versus low levels of callous-unemotional traits based on facial emotion recognition abilities Pauli, Ruth Kohls, Gregor Tino, Peter Rogers, Jack C. Baumann, Sarah Ackermann, Katharina Bernhard, Anka Martinelli, Anne Jansen, Lucres Oldenhof, Helena Gonzalez-Madruga, Karen Smaragdi, Areti Gonzalez-Torres, Miguel Angel Kerexeta-Lizeaga, Iñaki Boonmann, Cyril Kersten, Linda Bigorra, Aitana Hervas, Amaia Stadler, Christina Fernandez-Rivas, Aranzazu Popma, Arne Konrad, Kerstin Herpertz-Dahlmann, Beate Fairchild, Graeme Freitag, Christine M. Rotshtein, Pia De Brito, Stephane A. Eur Child Adolesc Psychiatry Original Contribution Conduct disorder (CD) with high levels of callous-unemotional traits (CD/HCU) has been theoretically linked to specific difficulties with fear and sadness recognition, in contrast to CD with low levels of callous-unemotional traits (CD/LCU). However, experimental evidence for this distinction is mixed, and it is unclear whether these difficulties are a reliable marker of CD/HCU compared to CD/LCU. In a large sample (N = 1263, 9–18 years), we combined univariate analyses and machine learning classifiers to investigate whether CD/HCU is associated with disproportionate difficulties with fear and sadness recognition over other emotions, and whether such difficulties are a reliable individual-level marker of CD/HCU. We observed similar emotion recognition abilities in CD/HCU and CD/LCU. The CD/HCU group underperformed relative to typically developing (TD) youths, but difficulties were not specific to fear or sadness. Classifiers did not distinguish between youths with CD/HCU versus CD/LCU (52% accuracy), although youths with CD/HCU and CD/LCU were reliably distinguished from TD youths (64% and 60%, respectively). In the subset of classifiers that performed well for youths with CD/HCU, fear and sadness were the most relevant emotions for distinguishing them from youths with CD/LCU and TD youths, respectively. We conclude that non-specific emotion recognition difficulties are common in CD/HCU, but are not reliable individual-level markers of CD/HCU versus CD/LCU. These findings highlight that a reduced ability to recognise facial expressions of distress should not be assumed to be a core feature of CD/HCU. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s00787-021-01893-5. Springer Berlin Heidelberg 2021-10-18 2023 /pmc/articles/PMC10115711/ /pubmed/34661765 http://dx.doi.org/10.1007/s00787-021-01893-5 Text en © The Author(s) 2021 https://creativecommons.org/licenses/by/4.0/Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Original Contribution
Pauli, Ruth
Kohls, Gregor
Tino, Peter
Rogers, Jack C.
Baumann, Sarah
Ackermann, Katharina
Bernhard, Anka
Martinelli, Anne
Jansen, Lucres
Oldenhof, Helena
Gonzalez-Madruga, Karen
Smaragdi, Areti
Gonzalez-Torres, Miguel Angel
Kerexeta-Lizeaga, Iñaki
Boonmann, Cyril
Kersten, Linda
Bigorra, Aitana
Hervas, Amaia
Stadler, Christina
Fernandez-Rivas, Aranzazu
Popma, Arne
Konrad, Kerstin
Herpertz-Dahlmann, Beate
Fairchild, Graeme
Freitag, Christine M.
Rotshtein, Pia
De Brito, Stephane A.
Machine learning classification of conduct disorder with high versus low levels of callous-unemotional traits based on facial emotion recognition abilities
title Machine learning classification of conduct disorder with high versus low levels of callous-unemotional traits based on facial emotion recognition abilities
title_full Machine learning classification of conduct disorder with high versus low levels of callous-unemotional traits based on facial emotion recognition abilities
title_fullStr Machine learning classification of conduct disorder with high versus low levels of callous-unemotional traits based on facial emotion recognition abilities
title_full_unstemmed Machine learning classification of conduct disorder with high versus low levels of callous-unemotional traits based on facial emotion recognition abilities
title_short Machine learning classification of conduct disorder with high versus low levels of callous-unemotional traits based on facial emotion recognition abilities
title_sort machine learning classification of conduct disorder with high versus low levels of callous-unemotional traits based on facial emotion recognition abilities
topic Original Contribution
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10115711/
https://www.ncbi.nlm.nih.gov/pubmed/34661765
http://dx.doi.org/10.1007/s00787-021-01893-5
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