大型树状结构数据的统计检验

Statistical Tests for Large Tree-Structured Data

Journal of the American Statistical Association · 2016
被引 9
ABS 4

中文导读

针对大型树状结构数据,提出一套统计框架,开发渐近拟合优度检验,并应用于脑癌肿瘤异质性检测,检验统计量简单且渐近服从卡方或F分布。

Abstract

We develop a general statistical framework for the analysis and inference of large tree-structured data, with a focus on developing asymptotic goodness-of-fit tests. We first propose a consistent statistical model for binary trees, from which we develop a class of invariant tests. Using the model for binary trees, we then construct tests for general trees by using the distributional properties of the continuum random tree, which arises as the invariant limit for a broad class of models for tree-structured data based on conditioned Galton–Watson processes. The test statistics for the goodness-of-fit tests are simple to compute and are asymptotically distributed as χ2 and F random variables. We illustrate our methods on an important application of detecting tumor heterogeneity in brain cancer. We use a novel approach with tree-based representations of magnetic resonance images and employ the developed tests to ascertain tumor heterogeneity between two groups of patients. Supplementary materials for this article are available online.

统计检验树状数据生物医学统计随机树