组织病理学图像的肿瘤组织分割

Xiansong Huang, Hong-Ju He, Pengxu Wei, Chi Zhang, Juncen Zhang, Jie Chen
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引用次数: 4

摘要

组织病理学图像分析被认为是鉴别和诊断癌症的金标准。组织病理图像的肿瘤分割是最重要的研究课题之一,其性能直接影响到医生对肿瘤种类和周期的诊断判断。随着深度学习方法的显著发展,人们提出了广泛的肿瘤分割方法。然而,对肿瘤分割的具体流程分析的研究却很少。此外,很少有研究对肿瘤分割的硬例挖掘进行了详细的研究。为了弥补这一空白,本研究首先总结了一种特定的肿瘤分割管道。然后,对肿瘤分割中的硬例挖掘进行了探讨。最后,通过实验对该方法的分割性能进行了评价,验证了该方法和硬例挖掘的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tumor Tissue Segmentation for Histopathological Images
Histopathological image analysis is considered as a gold standard for cancer identification and diagnosis. Tumor segmentation for histopathological images is one of the most important research topics and its performance directly affects the diagnosis judgment of doctors for cancer categories and their periods. With the remarkable development of deep learning methods, extensive methods have been proposed for tumor segmentation. However, there are few researches on analysis of specific pipeline of tumor segmentation. Moreover, few studies have done detailed research on the hard example mining of tumor segmentation. In order to bridge this gap, this study firstly summarize a specific pipeline of tumor segmentation. Then, hard example mining in tumor segmentation is also explored. Finally, experiments are conducted for evaluating segmentation performance of our method, demonstrating the effects of our method and hard example mining.
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