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Classification of multi-site MR images in the presence of heterogeneity using multi-task learning()

With the advent of Big Data Imaging Analytics applied to neuroimaging, datasets from multiple sites need to be pooled into larger samples. However, heterogeneity across different scanners, protocols and populations, renders the task of finding underlying disease signatures challenging. The current w...

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Autores principales: Ma, Qiongmin, Zhang, Tianhao, Zanetti, Marcus V., Shen, Hui, Satterthwaite, Theodore D., Wolf, Daniel H., Gur, Raquel E., Fan, Yong, Hu, Dewen, Busatto, Geraldo F., Davatzikos, Christos
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6029565/
https://www.ncbi.nlm.nih.gov/pubmed/29984156
http://dx.doi.org/10.1016/j.nicl.2018.04.037
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author Ma, Qiongmin
Zhang, Tianhao
Zanetti, Marcus V.
Shen, Hui
Satterthwaite, Theodore D.
Wolf, Daniel H.
Gur, Raquel E.
Fan, Yong
Hu, Dewen
Busatto, Geraldo F.
Davatzikos, Christos
author_facet Ma, Qiongmin
Zhang, Tianhao
Zanetti, Marcus V.
Shen, Hui
Satterthwaite, Theodore D.
Wolf, Daniel H.
Gur, Raquel E.
Fan, Yong
Hu, Dewen
Busatto, Geraldo F.
Davatzikos, Christos
author_sort Ma, Qiongmin
collection PubMed
description With the advent of Big Data Imaging Analytics applied to neuroimaging, datasets from multiple sites need to be pooled into larger samples. However, heterogeneity across different scanners, protocols and populations, renders the task of finding underlying disease signatures challenging. The current work investigates the value of multi-task learning in finding disease signatures that generalize across studies and populations. Herein, we present a multi-task learning type of formulation, in which different tasks are from different studies and populations being pooled together. We test this approach in an MRI study of the neuroanatomy of schizophrenia (SCZ) by pooling data from 3 different sites and populations: Philadelphia, Sao Paulo and Tianjin (50 controls and 50 patients from each site), which posed integration challenges due to variability in disease chronicity, treatment exposure, and data collection. Some existing methods are also tested for comparison purposes. Experiments show that classification accuracy of multi-site data outperformed that of single-site data and pooled data using multi-task feature learning, and also outperformed other comparison methods. Several anatomical regions were identified to be common discriminant features across sites. These included prefrontal, superior temporal, insular, anterior cingulate cortex, temporo-limbic and striatal regions consistently implicated in the pathophysiology of schizophrenia, as well as the cerebellum, precuneus, and fusiform, middle temporal, inferior parietal, postcentral, angular, lingual and middle occipital gyri. These results indicate that the proposed multi-task learning method is robust in finding consistent and reliable structural brain abnormalities associated with SCZ across different sites, in the presence of multiple sources of heterogeneity.
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spelling pubmed-60295652018-07-06 Classification of multi-site MR images in the presence of heterogeneity using multi-task learning() Ma, Qiongmin Zhang, Tianhao Zanetti, Marcus V. Shen, Hui Satterthwaite, Theodore D. Wolf, Daniel H. Gur, Raquel E. Fan, Yong Hu, Dewen Busatto, Geraldo F. Davatzikos, Christos Neuroimage Clin Regular Article With the advent of Big Data Imaging Analytics applied to neuroimaging, datasets from multiple sites need to be pooled into larger samples. However, heterogeneity across different scanners, protocols and populations, renders the task of finding underlying disease signatures challenging. The current work investigates the value of multi-task learning in finding disease signatures that generalize across studies and populations. Herein, we present a multi-task learning type of formulation, in which different tasks are from different studies and populations being pooled together. We test this approach in an MRI study of the neuroanatomy of schizophrenia (SCZ) by pooling data from 3 different sites and populations: Philadelphia, Sao Paulo and Tianjin (50 controls and 50 patients from each site), which posed integration challenges due to variability in disease chronicity, treatment exposure, and data collection. Some existing methods are also tested for comparison purposes. Experiments show that classification accuracy of multi-site data outperformed that of single-site data and pooled data using multi-task feature learning, and also outperformed other comparison methods. Several anatomical regions were identified to be common discriminant features across sites. These included prefrontal, superior temporal, insular, anterior cingulate cortex, temporo-limbic and striatal regions consistently implicated in the pathophysiology of schizophrenia, as well as the cerebellum, precuneus, and fusiform, middle temporal, inferior parietal, postcentral, angular, lingual and middle occipital gyri. These results indicate that the proposed multi-task learning method is robust in finding consistent and reliable structural brain abnormalities associated with SCZ across different sites, in the presence of multiple sources of heterogeneity. Elsevier 2018-05-09 /pmc/articles/PMC6029565/ /pubmed/29984156 http://dx.doi.org/10.1016/j.nicl.2018.04.037 Text en © 2018 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Regular Article
Ma, Qiongmin
Zhang, Tianhao
Zanetti, Marcus V.
Shen, Hui
Satterthwaite, Theodore D.
Wolf, Daniel H.
Gur, Raquel E.
Fan, Yong
Hu, Dewen
Busatto, Geraldo F.
Davatzikos, Christos
Classification of multi-site MR images in the presence of heterogeneity using multi-task learning()
title Classification of multi-site MR images in the presence of heterogeneity using multi-task learning()
title_full Classification of multi-site MR images in the presence of heterogeneity using multi-task learning()
title_fullStr Classification of multi-site MR images in the presence of heterogeneity using multi-task learning()
title_full_unstemmed Classification of multi-site MR images in the presence of heterogeneity using multi-task learning()
title_short Classification of multi-site MR images in the presence of heterogeneity using multi-task learning()
title_sort classification of multi-site mr images in the presence of heterogeneity using multi-task learning()
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6029565/
https://www.ncbi.nlm.nih.gov/pubmed/29984156
http://dx.doi.org/10.1016/j.nicl.2018.04.037
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