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A recursive partitioning approach for subgroup identification in brain-behaviour correlation analysis

机译:行为特征分析中的亚组识别的递归分区方法

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摘要

In neural correlates studies, the goal is to understand the brain-behaviour relationship characterized by correlation between brain activation responses and human behaviour measures. Such correlation depends on subject-related covariates such as age and gender, so it is necessary to identify subgroups within the population that have different brain-behaviour correlations. The subgrouping is made by manual specification in current practice, which is inefficient and may ignore potential covariates whose effects are unknown in the literature. This study proposes a recursive partitioning approach, called correlation tree, for automatic subgroup identification in brain-behaviour correlation analysis. In constructing a correlation tree, the split variable at each node is selected through an unbiased variable selection method based on partial correlation test, and then, the optimal cutpoint of the selected split variable is determined through exhaustive search under an objective function. Three types of meaningful objective functions are considered to meet various practical needs. Results of simulation and application to real data from optical brain imaging demonstrate effectiveness of the proposed approach.
机译:在神经相关研究中,目标是了解以大脑激活反应与人类行为测量之间的相关性为特征的脑与行为的关系。这种相关性取决于与受试者相关的协变量,例如年龄和性别,因此有必要在人群中识别出具有不同大脑行为相关性的亚组。该分组由当前实践中的手动规范进行,效率低下并且可以忽略其影响在文献中未知的潜在协变量。这项研究提出了一种称为相关树的递归划分方法,用于脑行为相关分析中的自动亚组识别。在构造相关树时,通过基于偏相关检验的无偏变量选择方法选择每个节点处的分割变量,然后在目标函数下通过穷举搜索确定所选分割变量的最优切点。考虑了三种有意义的目标函数来满足各种实际需求。仿真结果和对光学大脑成像的真实数据的应用结果证明了该方法的有效性。

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