论文标题

贝叶斯地标的肿瘤病理学图像的形状分析

Bayesian Landmark-based Shape Analysis of Tumor Pathology Images

论文作者

Zhang, Cong, Xiao, Guanghua, Moon, Chul, Chen, Min, Li, Qiwei

论文摘要

医学成像是一种技术形式,在过去的一个世纪彻底改变了医学领域。除了对肿瘤组织的放射学成像外,在高空间分辨率中捕获组织学细节的数字病理学成像正迅速成为癌症诊断支持和治疗计划的常规临床程序。深度学习方法的最新发展有助于几乎从数字病理图像的细胞水平上分割肿瘤区域。用于表征放射学中肿瘤边界粗糙度的传统形状特征不适用。迫切需要在病理图像中建模肿瘤形状的可靠统计方法。在本文中,我们考虑了用封闭的多边形链建模肿瘤边界的问题。提出了一个基于贝叶斯的地标形状分析(贝叶斯拉)模型,以将多边形链分为相互排斥的片段,以量化边界粗糙度分段。我们的完全贝叶斯推理框架提供了地标的数量和位置的不确定性估计。在准确性和效率方面,贝叶斯拉(Bayeslasa)的表现优于最近开发的平面弹性曲线的具有里程碑意义的检测模型。我们通过案例研究对143名非小细胞肺癌患者的246个病理图像的案例研究表明,基于模型的分析如何比普通方法更明显。案例研究表明,肿瘤边界粗糙度的异质性预测患者的预后(P值<0.001)。这种统计方法不仅提出了一个新模型,用于通过使用地标表征数字化对象的形状特征,而且还提供了一种新的观点,可以理解肿瘤表面在癌症进展中的作用。

Medical imaging is a form of technology that has revolutionized the medical field in the past century. In addition to radiology imaging of tumor tissues, digital pathology imaging, which captures histological details in high spatial resolution, is fast becoming a routine clinical procedure for cancer diagnosis support and treatment planning. Recent developments in deep-learning methods facilitate the segmentation of tumor regions at almost the cellular level from digital pathology images. The traditional shape features that were developed for characterizing tumor boundary roughness in radiology are not applicable. Reliable statistical approaches to modeling tumor shape in pathology images are in urgent need. In this paper, we consider the problem of modeling a tumor boundary with a closed polygonal chain. A Bayesian landmark-based shape analysis (BayesLASA) model is proposed to partition the polygonal chain into mutually exclusive segments to quantify the boundary roughness piecewise. Our fully Bayesian inference framework provides uncertainty estimates of both the number and locations of landmarks. The BayesLASA outperforms a recently developed landmark detection model for planar elastic curves in terms of accuracy and efficiency. We demonstrate how this model-based analysis can lead to sharper inferences than ordinary approaches through a case study on the 246 pathology images from 143 non-small cell lung cancer patients. The case study shows that the heterogeneity of tumor boundary roughness predicts patient prognosis (p-value < 0.001). This statistical methodology not only presents a new model for characterizing a digitized object's shape features by using its landmarks, but also provides a new perspective for understanding the role of tumor surface in cancer progression.

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