Classification of adrenal lesions through spatial Bayesian modeling of GLCM

X. Li, M. Guindani, C. Ng, B. Hobbs
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引用次数: 5

Abstract

Radiomics, an emerging field of quantitative imaging, encompasses a broad class of analytical techniques. Recent literature have interrogated associations between quantitatively derived GLCM-based texture features and clinical/pathology information using machine learning algorithms in many cancer settings, but often fail to elucidate the predictive power of these features. Moreover, for many cancers characterized by complex histopathological profiles, such as adrenocortical carcinoma, reducing the multivariate functional structure of GLCM to a set of summary statistics is potentially reductive, masking the patterns that distinguish malignancy from benignity. We develop a Bayesian probabilistic framework for predictive classification of lesion types, based on the entire GLCM. Our method, which uses a spatial Gaussian random field to model dependencies among neighboring cells of the GLCMs, was applied in a cancer detection context to discriminant malignant from benign adrenal lesions using GLCMs arising from non-contrast CT scans. Our method is shown to yield improved predictive power both in simulations as well as the adrenal CT application when compared to state-of-the-art diagnostic algorithms that use GLCM derived features.
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基于GLCM空间贝叶斯模型的肾上腺病变分类
放射组学是定量成像的一个新兴领域,涵盖了广泛的分析技术。最近的文献已经在许多癌症环境中使用机器学习算法询问了定量衍生的基于glcm的纹理特征与临床/病理信息之间的关联,但通常无法阐明这些特征的预测能力。此外,对于许多以复杂的组织病理学特征为特征的癌症,如肾上腺皮质癌,将GLCM的多变量功能结构简化为一组汇总统计数据可能会减少,从而掩盖了区分恶性和良性的模式。我们开发了一个基于整个GLCM的病灶类型预测分类的贝叶斯概率框架。我们的方法使用空间高斯随机场来模拟glcm相邻细胞之间的依赖关系,并应用于癌症检测环境中,利用非对比CT扫描产生的glcm来区分肾上腺病变的恶性和良性。与使用GLCM衍生特征的最先进的诊断算法相比,我们的方法在模拟和肾上腺CT应用中都显示出更高的预测能力。
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