We propose a ridge-penalized adaptive Mantel test (AdaMant) for evaluating the association of two high-dimensional sets of features. By introducing a ridge penalty, AdaMant tests the association across many metrics simultaneously. We demonstrate how ridge penalization bridges Euclidean and Mahalanobis distances and their corresponding linear models from the perspective of association measurement and testing. This result is not only theoretically interesting but also has important implications in penalized hypothesis testing, especially in high dimensional settings such as imaging genetics. Applying the proposed method to an imaging genetic study of visual working memory in health adults, we identified interesting associations of brain connectivity (measured by EEG coherence) with selected genetic features.
翻译:我们建议进行脊脊膜应激适应性曼特尔测试(AdaMant),以评价两组高维特征的关联性。通过引入脊椎罚款,AdaMant同时在多个尺度上测试该关联性。我们从关联度和测试的角度,展示了脊脊脊惩罚桥Euclidean和Mahalanobis的距离及其相应的线性模型。这一结果不仅在理论上有趣,而且在受罚的假设测试中也具有重要影响,特别是在高维环境下,如成像遗传学。我们运用拟议方法对成人健康视觉工作记忆进行成像遗传研究,我们发现了与某些遗传特征的有趣的脑连接联系(以EG的一致性衡量)。