Understanding Clinical Progression of Late-Life Depression to Alzheimer's Disease Over 5 Years with Structural MRI.

Lintao Zhang, Minhui Yu, Lihong Wang, David C Steffens, Rong Wu, Guy G Potter, Mingxia Liu
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引用次数: 2

Abstract

Previous studies have shown that late-life depression (LLD) may be a precursor of neurodegenerative diseases and may increase the risk of dementia. At present, the pathological relationship between LLD and dementia, in particularly Alzheimer's disease (AD) is unclear. Structural MRI (sMRI) can provide objective biomarkers for the computer-aided diagnosis of LLD and AD, providing a promising solution to understand the clinical progression of brain disorders. But few studies have focused on sMRI-based predictive analysis of clinical progression from LLD to AD. In this paper, we develop a deep learning method to predict the clinical progression of LLD to AD up to 5 years after baseline time using T1-weighted structural MRIs. We also analyze several important factors that limit the diagnostic performance of learning-based methods, including data imbalance, small-sample-size, and multi-site data heterogeneity, by leveraging a relatively large-scale database to aid model training. Experimental results on 308 subjects with sMRIs acquired from 2 imaging sites and the publicly available ADNI database demonstrate the potential of deep learning in predicting the clinical progression of LLD to AD. To the best of our knowledge, this is among the first attempts to explore the complex pathophysiological relationship between LLD and AD based on structural MRI using a deep learning method.

通过结构MRI了解老年抑郁症到阿尔茨海默病的临床进展。
先前的研究表明,晚年抑郁(LLD)可能是神经退行性疾病的前兆,并可能增加患痴呆的风险。目前,LLD与痴呆,特别是阿尔茨海默病(AD)的病理关系尚不清楚。结构磁共振成像(sMRI)可以为LLD和AD的计算机辅助诊断提供客观的生物标志物,为了解脑部疾病的临床进展提供了有希望的解决方案。但很少有研究关注基于smri的从LLD到AD临床进展的预测分析。在本文中,我们开发了一种深度学习方法,使用t1加权结构mri预测LLD在基线时间后长达5年的临床进展。我们还分析了限制基于学习的方法诊断性能的几个重要因素,包括数据不平衡、小样本量和多站点数据异质性,通过利用相对大规模的数据库来辅助模型训练。来自2个影像站点和公开可用的ADNI数据库的308名sMRIs受试者的实验结果表明,深度学习在预测LLD到AD的临床进展方面具有潜力。据我们所知,这是首次尝试使用深度学习方法基于结构MRI探索LLD和AD之间复杂的病理生理关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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