mSPD-NN: A Geometrically Aware Neural Framework for Biomarker Discovery from Functional Connectomics Manifolds.

Niharika S D'Souza, Archana Venkataraman
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Abstract

Connectomics has emerged as a powerful tool in neuroimaging and has spurred recent advancements in statistical and machine learning methods for connectivity data. Despite connectomes inhabiting a matrix manifold, most analytical frameworks ignore the underlying data geometry. This is largely because simple operations, such as mean estimation, do not have easily computable closed-form solutions. We propose a geometrically aware neural framework for connectomes, i.e., the mSPD-NN, designed to estimate the geodesic mean of a collections of symmetric positive definite (SPD) matrices. The mSPD-NN is comprised of bilinear fully connected layers with tied weights and utilizes a novel loss function to optimize the matrix-normal equation arising from Fréchet mean estimation. Via experiments on synthetic data, we demonstrate the efficacy of our mSPD-NN against common alternatives for SPD mean estimation, providing competitive performance in terms of scalability and robustness to noise. We illustrate the real-world flexibility of the mSPD-NN in multiple experiments on rs-fMRI data and demonstrate that it uncovers stable biomarkers associated with subtle network differences among patients with ADHD-ASD comorbidities and healthy controls.

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mSPD-NN:用于从功能连接组学簇中发现生物标记物的几何感知神经框架。
连接组学已成为神经影像学的一个强大工具,并推动了连接数据统计和机器学习方法的最新进展。尽管连接组栖息在矩阵流形中,但大多数分析框架都忽略了底层数据的几何形状。这主要是因为均值估计等简单操作没有容易计算的闭式解。我们提出了一种几何感知神经框架,即 mSPD-NN,用于估计对称正定(SPD)矩阵集合的大地平均值。mSPD-NN 由具有绑定权重的双线性全连接层组成,并利用新颖的损失函数来优化弗雷谢特均值估计所产生的矩阵-正态方程。通过对合成数据的实验,我们证明了 mSPD-NN 在 SPD 均值估计方面的功效,与常见的替代方法相比,它在可扩展性和对噪声的鲁棒性方面提供了有竞争力的性能。我们在 rs-fMRI 数据的多个实验中说明了 mSPD-NN 在现实世界中的灵活性,并证明它能发现与 ADHD-ASD 并发症患者和健康对照组之间微妙网络差异相关的稳定生物标记物。
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