MRI-based Alzheimer's disease classification using Vision Transformer and time-series transformer: A step-by-step guide

基于MRI的阿尔茨海默病分类:使用Vision Transformer和时间序列Transformer的分步指南

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Abstract

This study introduces a reproducible pipeline for classifying Alzheimer's Disease from structural brain MRI utilizing a joint transformer architecture that integrates Vision Transformer and Time-Series Transformer models. The proposed framework uses pre-trained ViT for feature extraction from 2D slices of MRI volumes, followed by sequential modeling with a transformer-based classifier to capture inter-slice dependencies. The method is evaluated on the ADNI dataset, involving both binary (AD vs. NC) and multiclass (AD, MCI, NC) classification tasks across axial, sagittal, and coronal planes.

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