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Adaptive Functional Connectivity Network Using Parallel Hierarchical BiLSTM for MCI Diagnosis

机译:使用并行分层BiLSTM进行MCI诊断的自适应功能连接网络

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Most of the existing dynamic functional connectivity (dFC) analytical methods compute the correlation between pairs of time courses with the sliding window. However, there is no clear indication on the standard window characteristics (length and shape) that best suit for all analyses, and it cannot pinpoint to compute the dynamic correlation of brain region for each time point. Besides, most of the current studies that utilize the dFC for MCI identification mainly relied on the local clustering coefficient for extracting dynamic features and the support vector machine (SVM) as a classifier. In this paper, we propose a novel adaptive dFC inference method and a deep learning classifier for MCI identification. Specifically, a group-constrained structure detection algorithm is first designed to identify the refined topology of the effective connectivity network, in which the individual information is preserved via different connectivity values. Second, based on the identified topology structure, the adaptive dFC network is then constructed by using the Kalman Filter algorithm to estimate the brain region connectivity strength for each time point. Finally, the adaptive dFC network is validated in MCI identification using a new Parallel Hierarchical Bidirectional Long Short-Term Memory (PH-BiLSTM) network, which extracts as much brain status change information as possible from both the past and future information. The results show that the proposed method achieves relatively high classification accuracy.
机译:大多数现有的动态功能连接(dFC)分析方法都会计算带有滑动窗口的时程对之间的相关性。但是,没有最适合所有分析的标准窗口特征(长度和形状)明确指示,也无法精确计算每个时间点的大脑区域动态相关性。此外,目前大多数利用dFC进行MCI识别的研究主要依靠局部聚类系数来提取动态特征,并以支持向量机(SVM)作为分类器。在本文中,我们提出了一种新颖的自适应dFC推理方法和一种用于MCI识别的深度学习分类器。具体而言,首先设计一种组约束结构检测算法,以识别有效连接网络的精炼拓扑,其中通过不同的连接值保留各个信息。其次,基于确定的拓扑结构,然后使用卡尔曼滤波算法构建自适应dFC网络,以估计每个时间点的大脑区域连接强度。最后,使用新的并行分层双向长期短期记忆(PH-BiLSTM)网络在MCI识别中对自适应dFC网络进行了验证,该网络可以从过去和将来的信息中提取尽可能多的大脑状态变化信息。结果表明,该方法具有较高的分类精度。

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