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Detecting Abnormalities in Resting-State Dynamics: An Unsupervised Learning Approach

机译:检测休息状态动态的异常:无监督的学习方法

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Resting-state functional MRI (rs-fMRI) is a rich imaging modality that captures spontaneous brain activity patterns, revealing clues about the connectomic organization of the human brain. While many rs-fMRI studies have focused on static measures of functional connectivity, there has been a recent surge in examining the temporal patterns in these data. In this paper, we explore two strategies for capturing the normal variability in resting-state activity across a healthy population: (a) an autoencoder approach on the rs-fMRI sequence, and (b) a next frame prediction strategy. We show that both approaches can learn useful representations of rs-fMRI data and demonstrate their novel application for abnormality detection in the context of discriminating autism patients from healthy controls.
机译:休息状态功能MRI(RS-FMRI)是一种丰富的成像模态,捕获了自发性脑活动模式,揭示了关于人脑的Connectomic组织的线索。虽然许多RS-FMRI研究专注于功能连通性的静态测量,但最近在检查这些数据中的时间模式方面是最近的浪涌。在本文中,我们探讨了捕获健康人群休息状态活动的正常变异的两种策略:(a)RS-FMRI序列上的AutoEncoder方法,(B)下一个帧预测策略。我们表明,两种方法都可以学习RS-FMRI数据的有用表示,并证明他们在鉴别健康对照的患者的背景下进行异常检测的新应用。

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