论文标题
用于多元配对数据和配对匹配的新的非参数测试
A New Non-parametric Test for Multivariate Paired Data and Pair Matching
论文作者
论文摘要
在配对的设计研究中,通常在不同条件下对同一组受试者进行多次测量。在观察性研究中,在治疗组和对照组之间进行多个协变量进行对匹配并测试由多个响应变量对良好成对匹配的数据表示的处理效果,这是多次的兴趣。但是,缺乏对多元配对数据的有效测试。有时可以使用多元配对Hotelling的$ T^2 $测试,但是随着尺寸的增加,其功率降低了。在匹配的观察性研究中评估多个协变量平衡的现有方法通常忽略配对结构,因此在某些情况下它们的表现不佳。在这项工作中,我们为配对数据提出了一项新的非参数测试,该测试在广泛的情况下对现有方法表现出很大的功能改进。我们还通过模拟研究得出了新测试的渐近分布,在有限样本下,即使尺寸大于样本量,大约$ p $ value在有限样本下相当准确,这使得新测试成为真实应用的易于选择的工具。通过对阿尔茨海默氏病研究的真实数据集的分析来说明拟议的测试。
In paired design studies, it is common to have multiple measurements taken for the same set of subjects under different conditions. In observational studies, it is many times of interest to conduct pair matching on multiple covariates between a treatment group and a control group, and to test the treatment effect represented by multiple response variables on well pair-matched data. However, there is a lack of an effective test on multivariate paired data. The multivariate paired Hotelling's $T^2$ test can sometimes be used, but its power decreases fast as the dimension increases. Existing methods for assessing the balance of multiple covariates in matched observational studies usually ignore the paired structure and thus they do not perform well under some settings. In this work, we propose a new non-parametric test for paired data, which exhibits a substantial power improvement over existing methods under a wide range of situations. We also derive the asymptotic distribution of the new test and the approximate $p$-value is reasonably accurate under finite samples through simulation studies even when the dimension is larger than the sample size, making the new test an easy-off-the-shelf tool for real applications. The proposed test is illustrated through an analysis of a real data set on the Alzheimer's disease research.