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Discriminating Paradoxical and Psychophysiological Insomnia Based on Structural and Functional Brain Images: A Preliminary Machine Learning Study

Insomnia disorder (ID) is a prevalent mental illness. Several behavioral and neuroimaging studies suggested that ID is a heterogenous condition with various subtypes. However, neurobiological alterations in different subtypes of ID are poorly understood. We aimed to assess whether unimodal and multi...

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Autores principales: Afshani, Mortaza, Mahmoudi-Aznaveh, Ahmad, Noori, Khadijeh, Rostampour, Masoumeh, Zarei, Mojtaba, Spiegelhalder, Kai, Khazaie, Habibolah, Tahmasian, Masoud
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10136511/
https://www.ncbi.nlm.nih.gov/pubmed/37190637
http://dx.doi.org/10.3390/brainsci13040672
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author Afshani, Mortaza
Mahmoudi-Aznaveh, Ahmad
Noori, Khadijeh
Rostampour, Masoumeh
Zarei, Mojtaba
Spiegelhalder, Kai
Khazaie, Habibolah
Tahmasian, Masoud
author_facet Afshani, Mortaza
Mahmoudi-Aznaveh, Ahmad
Noori, Khadijeh
Rostampour, Masoumeh
Zarei, Mojtaba
Spiegelhalder, Kai
Khazaie, Habibolah
Tahmasian, Masoud
author_sort Afshani, Mortaza
collection PubMed
description Insomnia disorder (ID) is a prevalent mental illness. Several behavioral and neuroimaging studies suggested that ID is a heterogenous condition with various subtypes. However, neurobiological alterations in different subtypes of ID are poorly understood. We aimed to assess whether unimodal and multimodal whole-brain neuroimaging measurements can discriminate two commonly described ID subtypes (i.e., paradoxical and psychophysiological insomnia) from each other and healthy subjects. We obtained T1-weighted images and resting-state fMRI from 34 patients with ID and 48 healthy controls. The outcome measures were grey matter volume, cortical thickness, amplitude of low-frequency fluctuation, degree centrality, and regional homogeneity. Subsequently, we applied support vector machines to classify subjects via unimodal and multimodal measures. The results of the multimodal classification were superior to those of unimodal approaches, i.e., we achieved 81% accuracy in separating psychophysiological vs. control, 87% for paradoxical vs. control, and 89% for paradoxical vs. psychophysiological insomnia. This preliminary study provides evidence that structural and functional brain data can help to distinguish two common subtypes of ID from each other and healthy subjects. These initial findings may stimulate further research to identify the underlying mechanism of each subtype and develop personalized treatments for ID in the future.
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spelling pubmed-101365112023-04-28 Discriminating Paradoxical and Psychophysiological Insomnia Based on Structural and Functional Brain Images: A Preliminary Machine Learning Study Afshani, Mortaza Mahmoudi-Aznaveh, Ahmad Noori, Khadijeh Rostampour, Masoumeh Zarei, Mojtaba Spiegelhalder, Kai Khazaie, Habibolah Tahmasian, Masoud Brain Sci Brief Report Insomnia disorder (ID) is a prevalent mental illness. Several behavioral and neuroimaging studies suggested that ID is a heterogenous condition with various subtypes. However, neurobiological alterations in different subtypes of ID are poorly understood. We aimed to assess whether unimodal and multimodal whole-brain neuroimaging measurements can discriminate two commonly described ID subtypes (i.e., paradoxical and psychophysiological insomnia) from each other and healthy subjects. We obtained T1-weighted images and resting-state fMRI from 34 patients with ID and 48 healthy controls. The outcome measures were grey matter volume, cortical thickness, amplitude of low-frequency fluctuation, degree centrality, and regional homogeneity. Subsequently, we applied support vector machines to classify subjects via unimodal and multimodal measures. The results of the multimodal classification were superior to those of unimodal approaches, i.e., we achieved 81% accuracy in separating psychophysiological vs. control, 87% for paradoxical vs. control, and 89% for paradoxical vs. psychophysiological insomnia. This preliminary study provides evidence that structural and functional brain data can help to distinguish two common subtypes of ID from each other and healthy subjects. These initial findings may stimulate further research to identify the underlying mechanism of each subtype and develop personalized treatments for ID in the future. MDPI 2023-04-17 /pmc/articles/PMC10136511/ /pubmed/37190637 http://dx.doi.org/10.3390/brainsci13040672 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Brief Report
Afshani, Mortaza
Mahmoudi-Aznaveh, Ahmad
Noori, Khadijeh
Rostampour, Masoumeh
Zarei, Mojtaba
Spiegelhalder, Kai
Khazaie, Habibolah
Tahmasian, Masoud
Discriminating Paradoxical and Psychophysiological Insomnia Based on Structural and Functional Brain Images: A Preliminary Machine Learning Study
title Discriminating Paradoxical and Psychophysiological Insomnia Based on Structural and Functional Brain Images: A Preliminary Machine Learning Study
title_full Discriminating Paradoxical and Psychophysiological Insomnia Based on Structural and Functional Brain Images: A Preliminary Machine Learning Study
title_fullStr Discriminating Paradoxical and Psychophysiological Insomnia Based on Structural and Functional Brain Images: A Preliminary Machine Learning Study
title_full_unstemmed Discriminating Paradoxical and Psychophysiological Insomnia Based on Structural and Functional Brain Images: A Preliminary Machine Learning Study
title_short Discriminating Paradoxical and Psychophysiological Insomnia Based on Structural and Functional Brain Images: A Preliminary Machine Learning Study
title_sort discriminating paradoxical and psychophysiological insomnia based on structural and functional brain images: a preliminary machine learning study
topic Brief Report
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10136511/
https://www.ncbi.nlm.nih.gov/pubmed/37190637
http://dx.doi.org/10.3390/brainsci13040672
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