稀疏多视图任务集中学习在ASD诊断中的应用。

Jun Wang, Qian Wang, Shitong Wang, Dinggang Shen
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引用次数: 1

摘要

从自闭症谱系障碍(ASD)的神经影像学数据中获得早期诊断具有挑战性。在这项工作中,我们提出了一种新的稀疏多视图任务集中(sparse - mvtc)分类方法用于ASD的计算机辅助诊断。特别是,由于已知ASD与年龄和性别有关,我们将所有受试者划分为不同的年龄/性别组,每个组都可以被视为学习的分类任务。同时,我们从功能磁共振成像中提取多视图特征来描述每个被试的大脑连通性。这就形成了一个多视图多任务的稀疏学习问题,并采用一种新的稀疏mvtc方法进行求解。具体来说,我们把每一项任务当作中心任务,把其他任务当作辅助任务。然后我们考虑中心任务和每个辅助任务之间的任务-任务和视图-视图关系。我们可以使用这种以任务为中心的策略来获得高效的解决方案。在ABIDE数据库上的综合实验表明,我们提出的稀疏- mvtc方法在ASD诊断方面明显优于现有的分类方法。
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Sparse Multi-view Task-Centralized Learning for ASD Diagnosis.

It is challenging to derive early diagnosis from neuroimaging data for autism spectrum disorder (ASD). In this work, we propose a novel sparse multi-view task-centralized (Sparse-MVTC) classification method for computer-assisted diagnosis of ASD. In particular, since ASD is known to be age- and sex-related, we partition all subjects into different groups of age/sex, each of which can be treated as a classification task to learn. Meanwhile, we extract multi-view features from functional magnetic resonance imaging to describe the brain connectivity of each subject. This formulates a multi-view multi-task sparse learning problem and it is solved by a novel Sparse-MVTC method. Specifically, we treat each task as a central task and other tasks as the auxiliary ones. We then consider the task-task and view-view relations between the central task and each auxiliary task. We can use this task-centralized strategy for a highly efficient solution. The comprehensive experiments on the ABIDE database demonstrate that our proposed Sparse-MVTC method can significantly outperform the existing classification methods in ASD diagnosis.

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