An Interpretable Brain Network Atlas-Based Hybrid Model for Mild Cognitive Impairment Progression Prediction

Xianglong Guan, Li Ma, Yunyou Huang, Suqin Tang, Tinghui Li
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Abstract

The process of Alzheimer’s disease (AD) is irreversible, but reasonable medical intervention for preclinical AD can delay AD’s onset. Progressive mild cognitive impairment (pMCI) is the most critical stage for AD preclinical intervention. Therefore, accurate identification of pMCI will significantly improve patient benefits. Functional MRI is a neuroimaging modality that has been widely utilized to study brain activity related to AD. However, it is challenging to obtain functional MRI data, and a small amount of data will easily lead to the overfitting of the identification model. In addition, the current pMCI identification model lack interpretability leads to difficulty in acceptance by clinicians. In this work, we propose an interpretable hybrid model based on a brain network atlas to identify pMCI subjects. First, the hybrid model utilizes multi-layer perceptron to obtain categorical global features to help graph neural networks reduce overfitting. Second, the attention mechanism is introduced into the model to explain the recognition behavior of the model. The results show that our model outperforms the comparison models on multiple metrics.
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基于可解释脑网络图谱的轻度认知障碍进展预测混合模型
阿尔茨海默病(AD)的发病过程是不可逆的,但对临床前AD进行合理的医学干预可以延缓AD的发病。进行性轻度认知障碍(pMCI)是AD临床前干预的最关键阶段。因此,准确识别pMCI将显著提高患者获益。功能MRI是一种神经成像技术,已广泛用于研究与AD相关的脑活动。然而,功能性MRI数据的获取具有挑战性,数据量少容易导致识别模型的过拟合。此外,目前的pMCI识别模型缺乏可解释性,导致临床医生难以接受。在这项工作中,我们提出了一个基于脑网络图谱的可解释混合模型来识别pMCI受试者。首先,混合模型利用多层感知器获取分类全局特征,帮助图神经网络减少过拟合。其次,在模型中引入注意机制来解释模型的识别行为。结果表明,我们的模型在多个指标上优于比较模型。
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