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Cortical graph neural network for AD and MCI diagnosis and transfer learning across populations

Combining machine learning with neuroimaging data has a great potential for early diagnosis of mild cognitive impairment (MCI) and Alzheimer's disease (AD). However, it remains unclear how well the classifiers built on one population can predict MCI/AD diagnosis of other populations. This study...

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Autores principales: Wee, Chong-Yaw, Liu, Chaoqiang, Lee, Annie, Poh, Joann S., Ji, Hui, Qiu, Anqi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6627731/
https://www.ncbi.nlm.nih.gov/pubmed/31491832
http://dx.doi.org/10.1016/j.nicl.2019.101929
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author Wee, Chong-Yaw
Liu, Chaoqiang
Lee, Annie
Poh, Joann S.
Ji, Hui
Qiu, Anqi
author_facet Wee, Chong-Yaw
Liu, Chaoqiang
Lee, Annie
Poh, Joann S.
Ji, Hui
Qiu, Anqi
author_sort Wee, Chong-Yaw
collection PubMed
description Combining machine learning with neuroimaging data has a great potential for early diagnosis of mild cognitive impairment (MCI) and Alzheimer's disease (AD). However, it remains unclear how well the classifiers built on one population can predict MCI/AD diagnosis of other populations. This study aimed to employ a spectral graph convolutional neural network (graph-CNN), that incorporated cortical thickness and geometry, to identify MCI and AD based on 3089 T(1)-weighted MRI data of the ADNI-2 cohort, and to evaluate its feasibility to predict AD in the ADNI-1 cohort (n = 3602) and an Asian cohort (n = 347). For the ADNI-2 cohort, the graph-CNN showed classification accuracy of controls (CN) vs. AD at 85.8% and early MCI (EMCI) vs. AD at 79.2%, followed by CN vs. late MCI (LMCI) (69.3%), LMCI vs. AD (65.2%), EMCI vs. LMCI (60.9%), and CN vs. EMCI (51.8%). We demonstrated the robustness of the graph-CNN among the existing deep learning approaches, such as Euclidean-domain-based multilayer network and 1D CNN on cortical thickness, and 2D and 3D CNNs on T(1)-weighted MR images of the ADNI-2 cohort. The graph-CNN also achieved the prediction on the conversion of EMCI to AD at 75% and that of LMCI to AD at 92%. The find-tuned graph-CNN further provided a promising CN vs. AD classification accuracy of 89.4% on the ADNI-1 cohort and >90% on the Asian cohort. Our study demonstrated the feasibility to transfer AD/MCI classifiers learned from one population to the other. Notably, incorporating cortical geometry in CNN has the potential to improve classification performance.
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spelling pubmed-66277312019-07-23 Cortical graph neural network for AD and MCI diagnosis and transfer learning across populations Wee, Chong-Yaw Liu, Chaoqiang Lee, Annie Poh, Joann S. Ji, Hui Qiu, Anqi Neuroimage Clin Regular Article Combining machine learning with neuroimaging data has a great potential for early diagnosis of mild cognitive impairment (MCI) and Alzheimer's disease (AD). However, it remains unclear how well the classifiers built on one population can predict MCI/AD diagnosis of other populations. This study aimed to employ a spectral graph convolutional neural network (graph-CNN), that incorporated cortical thickness and geometry, to identify MCI and AD based on 3089 T(1)-weighted MRI data of the ADNI-2 cohort, and to evaluate its feasibility to predict AD in the ADNI-1 cohort (n = 3602) and an Asian cohort (n = 347). For the ADNI-2 cohort, the graph-CNN showed classification accuracy of controls (CN) vs. AD at 85.8% and early MCI (EMCI) vs. AD at 79.2%, followed by CN vs. late MCI (LMCI) (69.3%), LMCI vs. AD (65.2%), EMCI vs. LMCI (60.9%), and CN vs. EMCI (51.8%). We demonstrated the robustness of the graph-CNN among the existing deep learning approaches, such as Euclidean-domain-based multilayer network and 1D CNN on cortical thickness, and 2D and 3D CNNs on T(1)-weighted MR images of the ADNI-2 cohort. The graph-CNN also achieved the prediction on the conversion of EMCI to AD at 75% and that of LMCI to AD at 92%. The find-tuned graph-CNN further provided a promising CN vs. AD classification accuracy of 89.4% on the ADNI-1 cohort and >90% on the Asian cohort. Our study demonstrated the feasibility to transfer AD/MCI classifiers learned from one population to the other. Notably, incorporating cortical geometry in CNN has the potential to improve classification performance. Elsevier 2019-07-04 /pmc/articles/PMC6627731/ /pubmed/31491832 http://dx.doi.org/10.1016/j.nicl.2019.101929 Text en © 2019 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
Wee, Chong-Yaw
Liu, Chaoqiang
Lee, Annie
Poh, Joann S.
Ji, Hui
Qiu, Anqi
Cortical graph neural network for AD and MCI diagnosis and transfer learning across populations
title Cortical graph neural network for AD and MCI diagnosis and transfer learning across populations
title_full Cortical graph neural network for AD and MCI diagnosis and transfer learning across populations
title_fullStr Cortical graph neural network for AD and MCI diagnosis and transfer learning across populations
title_full_unstemmed Cortical graph neural network for AD and MCI diagnosis and transfer learning across populations
title_short Cortical graph neural network for AD and MCI diagnosis and transfer learning across populations
title_sort cortical graph neural network for ad and mci diagnosis and transfer learning across populations
topic Regular Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6627731/
https://www.ncbi.nlm.nih.gov/pubmed/31491832
http://dx.doi.org/10.1016/j.nicl.2019.101929
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