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Disease Prediction based on Functional Connectomes using a Scalable and Spatially-Informed Support Vector Machine

机译:使用可扩展的空间信息支持向量机基于功能连接体的疾病预测

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摘要

Substantial evidence indicates that major psychiatric disorders are associated with distributed neural dysconnectivity, leading to strong interest in using neuroimaging methods to accurately predict disorder status. In this work, we are specifically interested in a multivariate approach that uses features derived from whole-brain resting state functional connectomes. However, functional connectomes reside in a high dimensional space, which complicates model interpretation and introduces numerous statistical and computational challenges. Traditional feature selection techniques are used to reduce data dimensionality, but are blind to the spatial structure of the connectomes. We propose a regularization framework where the 6-D structure of the functional connectome (defined by pairs of points in 3-D space) is explicitly taken into account via the fused Lasso or the GraphNet regularizer. Our method only restricts the loss function to be convex and margin-based, allowing non-differentiable loss functions such as the hinge-loss to be used. Using the fused Lasso or GraphNet regularizer with the hinge-loss leads to a structured sparse support vector machine (SVM) with embedded feature selection. We introduce a novel efficient optimization algorithm based on the augmented Lagrangian and the classical alternating direction method, which can solve both fused Lasso and GraphNet regularized SVM with very little modification. We also demonstrate that the inner subproblems of the algorithm can be solved efficiently in analytic form by coupling the variable splitting strategy with a data augmentation scheme. Experiments on simulated data and resting state scans from a large schizophrenia dataset show that our proposed approach can identify predictive regions that are spatially contiguous in the 6-D “connectome space,” offering an additional layer of interpretability that could provide new insights about various disease processes.
机译:大量证据表明,主要的精神疾病与分布式神经连接不良有关,这引起了人们对使用神经影像学方法准确预测疾病状态的浓厚兴趣。在这项工作中,我们特别关注使用从全脑静止状态功能连接体衍生的特征的多元方法。但是,功能连接套位于高维空间中,这使模型解释变得复杂,并带来了许多统计和计算难题。传统的特征选择技术用于减少数据维数,但对连接组的空间结构不了解。我们提出了一种正则化框架,其中通过融合的套索或GraphNet正则化函数明确考虑了功能连接体的6维结构(由3-D空间中的点对定义)。我们的方法仅将损失函数限制为凸和基于余量,允许使用不可微分的损失函数,例如铰链损失。将融合的Lasso或GraphNet正则器与铰链损耗一起使用会导致具有嵌入式特征选择的结构化稀疏支持向量机(SVM)。我们介绍了一种基于增强拉格朗日和经典交替方向方法的新型高效优化算法,只需很少的修改即可解决融合的套索和GraphNet正则化SVM。我们还证明,通过将变量拆分策略与数据增强方案耦合,可以以解析形式有效地解决算法的内部子问题。对来自大型精神分裂症数据集的模拟数据和静止状态扫描进行的实验表明,我们提出的方法可以识别在6维“连接组空间”中在空间上连续的预测区域,从而提供了一层可解释性,从而可以为各种疾病提供新的见解流程。

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