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Detection of advanced brain aging in schizophrenia and its structural underpinning by using normative brain age metrics

Conceptualizing mental disorders as deviations from normative functioning provides a statistical perspective for understanding the individual heterogeneity underlying psychiatric disorders. To broaden the understanding of the idiosyncrasy of brain aging in schizophrenia, we introduced an imaging-der...

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Autores principales: Chen, Chang-Le, Hwang, Tzung‐Jeng, Tung, Yu-Hung, Yang, Li-Ying, Hsu, Yung-Chin, Liu, Chih‐Min, Lin, Yi-Tin, Hsieh, Ming-Hsien, Liu, Chen-Chung, Chien, Yi-Ling, Hwu, Hai‐Gwo, Tseng, Wen-Yih Isaac
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9018160/
https://www.ncbi.nlm.nih.gov/pubmed/35413648
http://dx.doi.org/10.1016/j.nicl.2022.103003
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author Chen, Chang-Le
Hwang, Tzung‐Jeng
Tung, Yu-Hung
Yang, Li-Ying
Hsu, Yung-Chin
Liu, Chih‐Min
Lin, Yi-Tin
Hsieh, Ming-Hsien
Liu, Chen-Chung
Chien, Yi-Ling
Hwu, Hai‐Gwo
Tseng, Wen-Yih Isaac
author_facet Chen, Chang-Le
Hwang, Tzung‐Jeng
Tung, Yu-Hung
Yang, Li-Ying
Hsu, Yung-Chin
Liu, Chih‐Min
Lin, Yi-Tin
Hsieh, Ming-Hsien
Liu, Chen-Chung
Chien, Yi-Ling
Hwu, Hai‐Gwo
Tseng, Wen-Yih Isaac
author_sort Chen, Chang-Le
collection PubMed
description Conceptualizing mental disorders as deviations from normative functioning provides a statistical perspective for understanding the individual heterogeneity underlying psychiatric disorders. To broaden the understanding of the idiosyncrasy of brain aging in schizophrenia, we introduced an imaging-derived brain age paradigm combined with normative modeling as novel brain age metrics. We constructed brain age models based on GM, WM, and their combination (multimodality) features of 482 normal participants. The normalized predicted age difference (nPAD) was estimated in 147 individuals with schizophrenia and their 130 demographically matched controls through normative models of brain age metrics and compared between the groups. Regression analyses were also performed to investigate the associations of nPAD with illness duration, onset age, symptom severity, and intelligence quotient. Finally, regional contributions to advanced brain aging in schizophrenia were investigated. The results showed that the individuals exhibited significantly higher nPAD (P < 0.001), indicating advanced normative brain age than the normal controls in GM, WM, and multimodality models. The nPAD measure based on WM was positively associated with the negative symptom score (P = 0.009), and negatively associated with the intelligence quotient (P = 0.039) and onset age (P = 0.006). The imaging features that contributed to nPAD mostly involved the prefrontal, temporal, and parietal lobes, especially the precuneus and uncinate fasciculus. This study demonstrates that normative brain age metrics could detect advanced brain aging and associated clinical and neuroanatomical features in schizophrenia. The proposed nPAD measures may be useful to investigate aberrant brain aging in mental disorders and their brain-phenotype relationships.
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spelling pubmed-90181602022-04-20 Detection of advanced brain aging in schizophrenia and its structural underpinning by using normative brain age metrics Chen, Chang-Le Hwang, Tzung‐Jeng Tung, Yu-Hung Yang, Li-Ying Hsu, Yung-Chin Liu, Chih‐Min Lin, Yi-Tin Hsieh, Ming-Hsien Liu, Chen-Chung Chien, Yi-Ling Hwu, Hai‐Gwo Tseng, Wen-Yih Isaac Neuroimage Clin Regular Article Conceptualizing mental disorders as deviations from normative functioning provides a statistical perspective for understanding the individual heterogeneity underlying psychiatric disorders. To broaden the understanding of the idiosyncrasy of brain aging in schizophrenia, we introduced an imaging-derived brain age paradigm combined with normative modeling as novel brain age metrics. We constructed brain age models based on GM, WM, and their combination (multimodality) features of 482 normal participants. The normalized predicted age difference (nPAD) was estimated in 147 individuals with schizophrenia and their 130 demographically matched controls through normative models of brain age metrics and compared between the groups. Regression analyses were also performed to investigate the associations of nPAD with illness duration, onset age, symptom severity, and intelligence quotient. Finally, regional contributions to advanced brain aging in schizophrenia were investigated. The results showed that the individuals exhibited significantly higher nPAD (P < 0.001), indicating advanced normative brain age than the normal controls in GM, WM, and multimodality models. The nPAD measure based on WM was positively associated with the negative symptom score (P = 0.009), and negatively associated with the intelligence quotient (P = 0.039) and onset age (P = 0.006). The imaging features that contributed to nPAD mostly involved the prefrontal, temporal, and parietal lobes, especially the precuneus and uncinate fasciculus. This study demonstrates that normative brain age metrics could detect advanced brain aging and associated clinical and neuroanatomical features in schizophrenia. The proposed nPAD measures may be useful to investigate aberrant brain aging in mental disorders and their brain-phenotype relationships. Elsevier 2022-04-06 /pmc/articles/PMC9018160/ /pubmed/35413648 http://dx.doi.org/10.1016/j.nicl.2022.103003 Text en © 2022 The Authors. Published by Elsevier Inc. https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Regular Article
Chen, Chang-Le
Hwang, Tzung‐Jeng
Tung, Yu-Hung
Yang, Li-Ying
Hsu, Yung-Chin
Liu, Chih‐Min
Lin, Yi-Tin
Hsieh, Ming-Hsien
Liu, Chen-Chung
Chien, Yi-Ling
Hwu, Hai‐Gwo
Tseng, Wen-Yih Isaac
Detection of advanced brain aging in schizophrenia and its structural underpinning by using normative brain age metrics
title Detection of advanced brain aging in schizophrenia and its structural underpinning by using normative brain age metrics
title_full Detection of advanced brain aging in schizophrenia and its structural underpinning by using normative brain age metrics
title_fullStr Detection of advanced brain aging in schizophrenia and its structural underpinning by using normative brain age metrics
title_full_unstemmed Detection of advanced brain aging in schizophrenia and its structural underpinning by using normative brain age metrics
title_short Detection of advanced brain aging in schizophrenia and its structural underpinning by using normative brain age metrics
title_sort detection of advanced brain aging in schizophrenia and its structural underpinning by using normative brain age metrics
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9018160/
https://www.ncbi.nlm.nih.gov/pubmed/35413648
http://dx.doi.org/10.1016/j.nicl.2022.103003
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