DeepFDR:基于深度学习的神经影像数据错误发现率控制方法。

Taehyo Kim, Hai Shu, Qiran Jia, Mony J de Leon
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引用次数: 0

摘要

基于体素的多重检验广泛应用于神经影像数据分析。传统的误诊率(FDR)控制方法通常会忽略基于体素的测试之间的空间依赖性,从而导致测试能力大幅下降。虽然最近出现了一些空间 FDR 控制方法,但在处理大脑复杂的空间依赖性时,这些方法的有效性和最优性仍然值得怀疑。与此同时,深度学习方法彻底改变了图像分割,这是一项与基于体素的多重测试密切相关的任务。在本文中,我们提出了 DeepFDR,这是一种新型的空间 FDR 控制方法,它利用基于深度学习的无监督图像分割来解决基于体素的多重测试问题。包括综合模拟和阿尔茨海默病 FDG-PET 图像分析在内的数值研究证明了 DeepFDR 优于现有方法。DeepFDR 不仅在 FDR 控制方面表现出色,有效降低了错误未发现率,而且具有卓越的计算效率,非常适合处理大规模神经影像数据。
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DeepFDR: A Deep Learning-based False Discovery Rate Control Method for Neuroimaging Data.

Voxel-based multiple testing is widely used in neuroimaging data analysis. Traditional false discovery rate (FDR) control methods often ignore the spatial dependence among the voxel-based tests and thus suffer from substantial loss of testing power. While recent spatial FDR control methods have emerged, their validity and optimality remain questionable when handling the complex spatial dependencies of the brain. Concurrently, deep learning methods have revolutionized image segmentation, a task closely related to voxel-based multiple testing. In this paper, we propose DeepFDR, a novel spatial FDR control method that leverages unsupervised deep learning-based image segmentation to address the voxel-based multiple testing problem. Numerical studies, including comprehensive simulations and Alzheimer's disease FDG-PET image analysis, demonstrate DeepFDR's superiority over existing methods. DeepFDR not only excels in FDR control and effectively diminishes the false nondiscovery rate, but also boasts exceptional computational efficiency highly suited for tackling large-scale neuroimaging data.

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