Zhang Lintao, Wang Lihong, Yu Minhui, Wu Rong, Steffens David C, Potter Guy G, Liu Mingxia
School of Information Science and Engineering, Linyi University, Linyi, Shandong 27600, China; Department of Radiology and BRIC, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599, United States.
Department of Psychiatry, University of Connecticut School of Medicine, University of Connecticut, Farmington, CT 06030, United States.
Med Image Anal. 2024 May;94:103135. doi: 10.1016/j.media.2024.103135. Epub 2024 Mar 6.
Late-life depression (LLD) is a highly prevalent mood disorder occurring in older adults and is frequently accompanied by cognitive impairment (CI). Studies have shown that LLD may increase the risk of Alzheimer's disease (AD). However, the heterogeneity of presentation of geriatric depression suggests that multiple biological mechanisms may underlie it. Current biological research on LLD progression incorporates machine learning that combines neuroimaging data with clinical observations. There are few studies on incident cognitive diagnostic outcomes in LLD based on structural MRI (sMRI). In this paper, we describe the development of a hybrid representation learning (HRL) framework for predicting cognitive diagnosis over 5 years based on T1-weighted sMRI data. Specifically, we first extract prediction-oriented MRI features via a deep neural network, and then integrate them with handcrafted MRI features via a Transformer encoder for cognitive diagnosis prediction. Two tasks are investigated in this work, including (1) identifying cognitively normal subjects with LLD and never-depressed older healthy subjects, and (2) identifying LLD subjects who developed CI (or even AD) and those who stayed cognitively normal over five years. We validate the proposed HRL on 294 subjects with T1-weighted MRIs from two clinically harmonized studies. Experimental results suggest that the HRL outperforms several classical machine learning and state-of-the-art deep learning methods in LLD identification and prediction tasks.
老年期抑郁症(LLD)是一种在老年人中高度流行的情绪障碍,常伴有认知障碍(CI)。研究表明,LLD可能会增加患阿尔茨海默病(AD)的风险。然而,老年抑郁症表现的异质性表明其可能存在多种生物学机制。目前关于LLD进展的生物学研究纳入了将神经影像数据与临床观察相结合的机器学习方法。基于结构磁共振成像(sMRI)对LLD患者的认知诊断结局进行的研究较少。在本文中,我们描述了一种基于T1加权sMRI数据预测5年认知诊断的混合表示学习(HRL)框架的开发。具体而言,我们首先通过深度神经网络提取面向预测的MRI特征,然后通过Transformer编码器将其与手工制作的MRI特征集成,用于认知诊断预测。本研究调查了两项任务,包括(1)识别患有LLD的认知正常受试者和从未患抑郁症的老年健康受试者,以及(2)识别在五年内发展为CI(甚至AD)的LLD受试者和认知保持正常的受试者。我们在来自两项临床协调研究的294名拥有T1加权MRI的受试者上验证了所提出的HRL。实验结果表明,在LLD识别和预测任务中,HRL优于几种经典机器学习方法和最新的深度学习方法。