Wang Yuan, Hobbs Brian P, Hu Jianhua, Ng Chaan S, Do Kim-Anh
Department of Biostatistics, University of Texas M.D. Anderson Cancer Center, Houston, Texas, U.S.A.
Department of Diagnostic Radiology, University of Texas M.D. Anderson Cancer Center, Houston, Texas, U.S.A.
Biometrics. 2015 Sep;71(3):792-802. doi: 10.1111/biom.12304. Epub 2015 Apr 7.
Perfusion computed tomography (CTp) is an emerging functional imaging modality that uses physiological models to quantify characteristics pertaining to the passage of fluid through blood vessels. Perfusion characteristics provide physiological correlates for neovascularization induced by tumor angiogenesis. Thus CTp offers promise as a non-invasive quantitative functional imaging tool for cancer detection, prognostication, and treatment monitoring. In this article, we develop a Bayesian probabilistic framework for simultaneous supervised classification of multivariate correlated objects using separable covariance. The classification approach is applied to discriminate between regions of liver that contain pathologically verified metastases from normal liver tissue using five perfusion characteristics. The hepatic regions tend to be highly correlated due to common vasculature. We demonstrate that simultaneous Bayesian classification yields dramatic improvements in performance in the presence of strong correlation among intra-subject units, yet remains competitive with classical methods in the presence of weak or no correlation.
灌注计算机断层扫描(CTp)是一种新兴的功能成像模态,它使用生理模型来量化与液体通过血管的过程相关的特征。灌注特征为肿瘤血管生成诱导的新生血管形成提供了生理关联。因此,CTp有望成为一种用于癌症检测、预后评估和治疗监测的非侵入性定量功能成像工具。在本文中,我们开发了一个贝叶斯概率框架,用于使用可分离协方差对多变量相关对象进行同时监督分类。该分类方法应用于利用五种灌注特征来区分包含经病理证实的转移灶的肝区域与正常肝组织。由于共同的脉管系统,肝区域往往高度相关。我们证明,在受试者内部单元之间存在强相关性的情况下,同时贝叶斯分类在性能上有显著提高,但在相关性较弱或无相关性的情况下仍与经典方法具有竞争力。