Robust Feature Selection in Resting-State fMRI Connectivity Based on Population Studies.

Archana Venkataraman, Marek Kubicki, Carl-Fredrik Westin, Polina Golland
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Abstract

We propose an alternative to univariate statistics for identifying population differences in functional connectivity. Our feature selection method is based on a procedure that searches across subsets of the data to isolate a set of robust, predictive functional connections. The metric, known as the Gini Importance, also summarizes multivariate patterns of interaction, which cannot be captured by univariate techniques. We compare the Gini Importance with univariate statistical tests to evaluate functional connectivity changes induced by schizophrenia. Our empirical results indicate that univariate features vary dramatically across subsets of the data and have little classification power. In contrast, relevant features based on Gini Importance are considerably more stable and allow us to accurately predict the diagnosis of a test subject.

Abstract Image

Abstract Image

Abstract Image

基于种群研究的静息状态fMRI连接鲁棒特征选择。
我们提出了一种替代单变量统计来识别功能连通性的人口差异。我们的特征选择方法基于一个过程,该过程在数据的子集中搜索,以分离出一组鲁棒的、可预测的功能连接。这个指标被称为基尼重要性,它还总结了相互作用的多变量模式,单变量技术无法捕捉到这些模式。我们将基尼重要性与单变量统计检验进行比较,以评估精神分裂症引起的功能连接变化。我们的经验结果表明,单变量特征在数据子集之间变化很大,并且分类能力很小。相比之下,基于基尼重要性的相关特征要稳定得多,并允许我们准确地预测测试对象的诊断。
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