论文标题
纹理模式异质性的贝叶斯非参数模型
A Bayesian Nonparametric model for textural pattern heterogeneity
论文作者
论文摘要
癌症放射素学是一种新兴的学科,有望通过增强,质地,形态和形状的模式来阐明病变表型和肿瘤异质性。图像纹理分析的流行技术依赖于灰度共发生矩阵(GLCM)的构建和合成。当前的实践将GLCM的结构化计数数据减少到还原性和冗余汇总统计信息,分析需要可变选择和每个应用程序的多重比较,从而限制了可重复性。在本文中,我们开发了一个贝叶斯多元概率框架,用于分析GLCM对象样本的分析和无监督聚类。通过适当考虑观察到的计数的偏度和零通胀,并同时调整附近细胞处现有的空间自相关,该方法学促进了GLCM晶格本身内纹理模式分布的估计。这些技术应用于从具有和不给予对比的CT扫描获得的肾上腺病变的聚类图像。我们进一步评估所得亚型是否通过研究其与病理诊断的对应关系在临床上取向。此外,我们将性能与当前在癌症放射素学中使用的机器学习方法进行了比较。
Cancer radiomics is an emerging discipline promising to elucidate lesion phenotypes and tumor heterogeneity through patterns of enhancement, texture, morphology, and shape. The prevailing technique for image texture analysis relies on the construction and synthesis of Gray-Level Co-occurrence Matrices (GLCM). Practice currently reduces the structured count data of a GLCM to reductive and redundant summary statistics for which analysis requires variable selection and multiple comparisons for each application, thus limiting reproducibility. In this article, we develop a Bayesian multivariate probabilistic framework for the analysis and unsupervised clustering of a sample of GLCM objects. By appropriately accounting for skewness and zero-inflation of the observed counts and simultaneously adjusting for existing spatial autocorrelation at nearby cells, the methodology facilitates estimation of texture pattern distributions within the GLCM lattice itself. The techniques are applied to cluster images of adrenal lesions obtained from CT scans with and without administration of contrast. We further assess whether the resultant subtypes are clinically oriented by investigating their correspondence with pathological diagnoses. Additionally, we compare performance to a class of machine-learning approaches currently used in cancer radiomics with simulation studies.