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Ensemble of ROI-based convolutional neural network classifiers for staging the Alzheimer disease spectrum from magnetic resonance imaging

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posted on 2025-02-26, 04:28 authored by Samsuddin Ahmed, Byeong C Kim, Kun Ho Lee, Ho Yub Jung
Patches from three orthogonal views of selected cerebral regions can be utilized to learn convolutional neural network (CNN) models for staging the Alzheimer disease (AD) spectrum including preclinical AD, mild cognitive impairment due to AD, and dementia due to AD and normal controls. Hippocampi, amygdalae and insulae were selected from the volumetric analysis of structured magnetic resonance images (MRIs). Three-view patches (TVPs) from these regions were fed to the CNN for training. MRIs were classified with the SoftMax-normalized scores of individual model predictions on TVPs. The significance of each region of interest (ROI) for staging the AD spectrum was evaluated and reported. The results of the ensemble classifier are compared with state-of-the-art methods using the same evaluation metrics. Patch-based ROI ensembles provide comparable diagnostic performance for AD staging. In this work, TVP-based ROI analysis using a CNN provides informative landmarks in cerebral MRIs and may have significance in clinical studies and computer-aided diagnosis system design.

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Location

San Francisco, Calif.

Open access

  • Yes

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Editor/Contributor(s)

Ginsberg SD

Journal

PLoS ONE

Volume

15

Article number

e0242712

Pagination

1-23

ISSN

1932-6203

eISSN

1932-6203

Issue

12

Publisher

Public Library of Science