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

机译:在静止状态动力学中检测异常:一种无监督的学习方法

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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:静止状态功能性MRI(rs-fMRI)是一种丰富的成像方式,可捕获自发性大脑活动模式,揭示有关人脑结缔组织的线索。尽管许多rs-fMRI研究集中于功能连通性的静态测量,但最近在检查这些数据的时间模式方面出现了激增。在本文中,我们探索了两种在健康人群中捕获静止状态活动的正常变异性的策略:(a)rs-fMRI序列的自动编码器方法,以及(b)下一帧预测策略。我们表明,这两种方法都可以学习rs-fMRI数据的有用表示,并在将自闭症患者与健康对照区分开的情况下证明了它们在异常检测中的新颖应用。

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