用于全景肾病理分割的通用命题学习。

Ruining Deng, Quan Liu, Can Cui, Tianyuan Yao, Jialin Yue, Juming Xiong, Lining Yu, Yifei Wu, Mengmeng Yin, Yu Wang, Shilin Zhao, Yucheng Tang, Haichun Yang, Yuankai Huo
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引用次数: 0

摘要

了解肾脏病理解剖对推进疾病诊断、治疗评估和临床研究至关重要。复杂的肾脏系统包括多个层面的各种组成部分,包括区域(皮质、髓质)、功能单位(肾小球、小管)和细胞(肾小球的足细胞、系膜细胞)。先前的研究主要忽略了临床知识对象之间复杂的空间相互关系。在这项研究中,我们引入了一种新的通用命题学习方法,称为全景肾脏病理分割(PrPSeg),旨在通过整合肾脏解剖学的广泛知识来全面分割肾脏内的全景结构。在本文中,我们提出(1)设计一个肾脏病理学的综合通用命题矩阵,促进将分类和空间关系纳入分割过程;(2)基于令牌的动态头部单网络架构,改进了部分标签图像分割和未来数据扩展的能力;(3)解剖损失函数,量化整个肾脏的物体间关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PrPSeg: Universal Proposition Learning for Panoramic Renal Pathology Segmentation.

Understanding the anatomy of renal pathology is crucial for advancing disease diagnostics, treatment evaluation, and clinical research. The complex kidney system comprises various components across multiple levels, including regions (cortex, medulla), functional units (glomeruli, tubules), and cells (podocytes, mesangial cells in glomerulus). Prior studies have predominantly overlooked the intricate spatial interrelations among objects from clinical knowledge. In this research, we introduce a novel universal proposition learning approach, called panoramic renal pathology segmentation (PrPSeg), designed to segment comprehensively panoramic structures within kidney by integrating extensive knowledge of kidney anatomy. In this paper, we propose (1) the design of a comprehensive universal proposition matrix for renal pathology, facilitating the incorporation of classification and spatial relationships into the segmentation process; (2) a token-based dynamic head single network architecture, with the improvement of the partial label image segmentation and capability for future data enlargement; and (3) an anatomy loss function, quantifying the inter-object relationships across the kidney.

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