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SPARSE GENERALIZED FUNCTIONAL LINEAR MODEL FOR PREDICTING REMISSION STATUS OF DEPRESSION PATIENTS

机译:抑郁症患者缓解状况的稀疏广义函数线性模型

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摘要

Complex diseases such as major depression affect people over time in complicated patterns. Longitudinal data analysis is thus crucial for understanding and prognosis of such diseases and has received considerable attention in the biomedical research community. Traditional classification and regression methods have been commonly applied in a simple (controlled) clinical setting with a small number of time points. However, these methods cannot be easily extended to the more general setting for longitudinal analysis, as they are not inherently built for time-dependent data. Functional regression, in contrast, is capable of identifying the relationship between features and outcomes along with time information by assuming features and/or outcomes as random functions over time rather than independent random variables. In this paper, we propose a novel sparse generalized functional linear model for the prediction of treatment remission status of the depression participants with longitudinal features. Compared to traditional functional regression models, our model enables high-dimensional learning, smoothness of functional coefficients, longitudinal feature selection and interpretable estimation of functional coefficients. Extensive experiments have been conducted on the Sequenced Treatment Alternatives to Relieve Depression (STAR*D) data set and the results show that the proposed sparse functional regression method achieves significantly higher prediction power than existing approaches.
机译:随着时间的流逝,诸如重度抑郁症等复杂疾病会以复杂的方式影响人们。因此,纵向数据分析对于了解和预测此类疾病至关重要,在生物医学研究界已得到相当大的关注。传统的分类和回归方法已普遍应用于具有少量时间点的简单(受控)临床环境中。但是,这些方法不能轻易扩展到纵向分析的更一般的设置,因为它们并不是为时间相关的数据固有地构建的。相反,功能回归通过将特征和/或结果假定为随时间的随机函数而不是独立的随机变量,可以识别特征和结果以及时间信息之间的关系。在本文中,我们提出了一种新颖的稀疏广义函数线性模型,用于预测具有纵向特征的抑郁症参与者的治疗缓解状态。与传统的功能回归模型相比,我们的模型可以进行高维学习,功能系数的平滑性,纵向特征选择和功能系数的可解释性估计。已经对缓解抑郁的序列治疗替代方案(STAR * D)数据集进行了广泛的实验,结果表明,所提出的稀疏功能回归方法比现有方法具有更高的预测能力。

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