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Disentangled Representation Learning for Capturing Individualized Brain Atrophy Via Pseudo-Healthy Synthesis

IEEE journal of biomedical and health informatics(2025)

Brainnetome Center | Department of Radiology | Department of Neurology | Queen Mary School Hainan

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Abstract
Brain atrophy emerges as a distinctive hallmark in various neurodegenerative diseases, demonstrating a progressive trajectory across diverse disease stages and concurrently manifesting in tandem with a discernible decline in cognitive abilities. Understanding the individualized patterns of brain atrophy is critical for precision medicine and the prognosis of neurodegenerative diseases. However, it is difficult to obtain longitudinal data to compare changes before and after the onset of diseases. In this study, we present a deep disentangled generative model (DDGM) for capturing individualized atrophy patterns via disentangling patient images into “realistic” healthy counterfactual images and abnormal residual maps. The proposed DDGM consists of four modules: normal MRI synthesis, residual map synthesis, input reconstruction module, and mutual information neural estimator (MINE). The MINE and adversarial learning strategy together ensure independence between disease-related features and features shared by both disease and healthy controls. In addition, we proposed a comprehensive evaluation of the effectiveness of synthetic pseudo-healthy images, focusing on both their healthiness and subject identity. The results indicated that the proposed DDGM effectively preserves these characteristics in the synthesized pseudo-healthy images, outperforming existing methods. The proposed method demonstrates robust generalization capabilities across two independent datasets from different races and sites. Analysis of the disease residual/saliency maps revealed specific atrophy patterns associated with Alzheimer's disease (AD), particularly in the hippocampus and amygdala regions. These accurate individualized atrophy patterns enhance the performance of AD classification tasks, resulting in an improvement in classification accuracy to 92.50 $\pm$ 2.70%.
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Key words
Biological validity,brain atrophy,disentangled representation learning,pseudo-healthy synthesis
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要点】:本研究提出了一种深度解耦生成模型(DDGM),通过生成伪健康图像和异常残差图来捕捉个体化的大脑萎缩模式,以提高神经退行性疾病分类准确性。

方法】:DDGM由正常MRI合成、残差图合成、输入重构模块和互信息神经网络估计器(MINE)四部分组成,通过MINE和对抗性学习策略确保疾病相关特征与疾病和健康对照共享特征的独立性。

实验】:实验在两个独立的数据集上进行了验证,结果表明DDGM在生成的伪健康图像中有效保留了健康性和个体身份特征,性能优于现有方法,并在阿尔茨海默病(AD)分类任务中将准确度提高至92.50±2.70%。数据集名称未明确提及。