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A Novel Support Vector Classifier for Longitudinal High-Dimensional Data and Its Application to Neuroimaging Data

机译:纵向高维数据的新型支持向量分类器及其在神经影像数据中的应用

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摘要

Recent technological advances have made it possible for many studies to collect high dimensional data (HDD) longitudinally, for example, images collected during different scanning sessions. Such studies may yield temporal changes of selected features that, when incorporated with machine learning methods, are able to predict disease status or responses to a therapeutic treatment. Support vector machine (SVM) techniques are robust and effective tools well suited for the classification and prediction of HDD. However, current SVM methods for HDD analysis typically consider cross-sectional data collected during one time period or session (e.g., baseline). We propose a novel support vector classifier (SVC) for longitudinal HDD that allows simultaneous estimation of the SVM separating hyperplane parameters and temporal trend parameters, which determine the optimal means to combine the longitudinal data for classification and prediction. Our approach is based on an augmented reproducing kernel function and uses quadratic programming for optimization. We demonstrate the use and potential advantages of our proposed methodology using a simulation study and a data example from the Alzheimer's disease Neuroimaging Initiative. The results indicate that our proposed method leverages the additional longitudinal information to achieve higher accuracy than methods using only cross-sectional data and methods that combine longitudinal data by naively expanding the feature space.
机译:最近的技术进步使许多研究有可能纵向收集高维数据(HDD),例如在不同扫描期间收集的图像。这样的研究可能会产生选定特征的时间变化,这些特征与机器学习方法结合后能够预测疾病状态或对治疗的反应。支持向量机(SVM)技术是强大而有效的工具,非常适合HDD的分类和预测。但是,当前用于HDD分析的SVM方法通常考虑在一个时间段或会话(例如基线)期间收集的横截面数据。我们为纵向HDD提出了一种新颖的支持向量分类器(SVC),该支持向量分类器允许同时估计分离超平面参数和时间趋势参数的SVM,从而确定组合纵向数据进行分类和预测的最佳方法。我们的方法基于增强的复制内核功能,并使用二次编程进行优化。我们通过模拟研究和阿尔茨海默氏病神经影像学计划的数据示例,证明了我们提出的方法的用途和潜在优势。结果表明,与仅使用横截面数据的方法和通过天真的扩展特征空间组合纵向数据的方法相比,我们提出的方法利用了额外的纵向信息来实现更高的精度。

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