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Hauptverfasser: Li, Yijun, Choi, Ki Sueng, Dunlop, Boadie W., Craighead, Wade Edward, Mayberg, Helen S., Garmire, Lana, Guo, Ying, Kang, Jian
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2410.02965
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author Li, Yijun
Choi, Ki Sueng
Dunlop, Boadie W.
Craighead, Wade Edward
Mayberg, Helen S.
Garmire, Lana
Guo, Ying
Kang, Jian
author_facet Li, Yijun
Choi, Ki Sueng
Dunlop, Boadie W.
Craighead, Wade Edward
Mayberg, Helen S.
Garmire, Lana
Guo, Ying
Kang, Jian
contents Brain connectivity analysis is crucial for understanding brain structure and neurological function, shedding light on the mechanisms of mental illness. To study the association between individual brain connectivity networks and the clinical characteristics, we develop BSNMani: a Bayesian scalar-on-network regression model with manifold learning. BSNMani comprises two components: the network manifold learning model for brain connectivity networks, which extracts shared connectivity structures and subject-specific network features, and the joint predictive model for clinical outcomes, which studies the association between clinical phenotypes and subject-specific network features while adjusting for potential confounding covariates. For posterior computation, we develop a novel two-stage hybrid algorithm combining Metropolis-Adjusted Langevin Algorithm (MALA) and Gibbs sampling. Our method is not only able to extract meaningful subnetwork features that reveal shared connectivity patterns, but can also reveal their association with clinical phenotypes, further enabling clinical outcome prediction. We demonstrate our method through simulations and through its application to real resting-state fMRI data from a study focusing on Major Depressive Disorder (MDD). Our approach sheds light on the intricate interplay between brain connectivity and clinical features, offering insights that can contribute to our understanding of psychiatric and neurological disorders, as well as mental health.
format Preprint
id arxiv_https___arxiv_org_abs_2410_02965
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle BSNMani: Bayesian Scalar-on-network Regression with Manifold Learning
Li, Yijun
Choi, Ki Sueng
Dunlop, Boadie W.
Craighead, Wade Edward
Mayberg, Helen S.
Garmire, Lana
Guo, Ying
Kang, Jian
Methodology
Brain connectivity analysis is crucial for understanding brain structure and neurological function, shedding light on the mechanisms of mental illness. To study the association between individual brain connectivity networks and the clinical characteristics, we develop BSNMani: a Bayesian scalar-on-network regression model with manifold learning. BSNMani comprises two components: the network manifold learning model for brain connectivity networks, which extracts shared connectivity structures and subject-specific network features, and the joint predictive model for clinical outcomes, which studies the association between clinical phenotypes and subject-specific network features while adjusting for potential confounding covariates. For posterior computation, we develop a novel two-stage hybrid algorithm combining Metropolis-Adjusted Langevin Algorithm (MALA) and Gibbs sampling. Our method is not only able to extract meaningful subnetwork features that reveal shared connectivity patterns, but can also reveal their association with clinical phenotypes, further enabling clinical outcome prediction. We demonstrate our method through simulations and through its application to real resting-state fMRI data from a study focusing on Major Depressive Disorder (MDD). Our approach sheds light on the intricate interplay between brain connectivity and clinical features, offering insights that can contribute to our understanding of psychiatric and neurological disorders, as well as mental health.
title BSNMani: Bayesian Scalar-on-network Regression with Manifold Learning
topic Methodology
url https://arxiv.org/abs/2410.02965