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Disentangling The Spatio-Temporal Heterogeneity of Alzheimer’s Disease Using A Deep Predictive Stratification Network

机译:使用深度预测分层网络解开阿尔茨海默病的时空异质性

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Alzheimer's disease (AD) is clinically heterogeneous in presentation and progression, demonstrating variable topographic distributions of clinical phenotypes, progression rate, and underlying neuro-degeneration mechanisms. Although striking efforts have been made to disentangle the massive heterogeneity in AD by identifying latent clusters with similar imaging or phenotype patterns, such unsupervised clustering techniques often yield sub-optimal stratification results that do not agree with clinical manifestations. To address this limitation, we present a novel deep predictive stratification network (DPS-Net) to learn the best feature representations from neuroimages, which allows us to identify latent fine-grained clusters (aka subtypes) with greater neuroscientific insight. The driving force of DPS-Net is a series of clinical outcomes from different cognitive domains (such as language and memory), which we consider as the benchmark to alleviate the heterogeneity issue of neurodegeneration pathways in the AD population. Since subject-specific longitudinal change is more relevant to disease progression, we propose to identify the latent subtypes from longitudinal neuroimaging data. Because AD manifests disconnection syndrome, we have applied our datadriven subtyping approach to longitudinal structural connectivity networks from the ADNI database. Our deep neural network identified more separated and clinically backed subtypes than conventional unsupervised methods used to solve the subtyping task- indicating its great applicability in future neuroimaging studies.
机译:阿尔茨海默病(AD)在介绍和进展中是临床异质的,证明了可变地形发布的临床表型,进展率和神经变性机制的潜在地形分布。虽然已经通过识别具有类似的成像或表型模式的潜伏簇来解开AD中的巨大异质性,但这种无调节的聚类技术通常会产生不同意临床表现的次良定期结果的潜伏簇。为了解决这个限制,我们提出了一种新的深度预测分层网络(DPS-Net),以学习来自神经图像的最佳特征表示,这使我们能够以更大的神经科学洞察力识别潜在细粒度的簇(AKA亚型)。 DPS-Net的驱动力是来自不同认知域(如语言和记忆)的一系列临床结果,我们认为是为了缓解广告人群中神经变性途径的异质性问题的基准。由于特异性特异性纵向变化与疾病进展更相关,因此我们建议从纵向神经影像数据中识别潜伏的亚型。因为广告表现出综合征,我们已将DataDRIN的亚型方法应用于来自ADNI数据库的纵向结构连接网络。我们的深神经网络识别出比传统的无监督方法更加分离和临床支持的亚型,用于解决亚型任务 - 表明其在未来神经影像学研究中的良好适用性。

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