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Methods for Nuclei Detection, Segmentation, and Classification in Digital Histopathology: A Review—Current Status and Future Potential

机译:数字组织病理学中核检测,分割和分类的方法:综述-现状和未来潜力

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摘要

Digital pathology represents one of the major evolutions in modern medicine. Pathological examinations constitute the gold standard in many medical protocols, and also play a critical and legal role in the diagnosis process. In the conventional cancer diagnosis, pathologists analyze biopsies to make diagnostic and prognostic assessments, mainly based on the cell morphology and architecture distribution. Recently, computerized methods have been rapidly evolving in the area of digital pathology, with growing applications related to nuclei detection, segmentation, and classification. In cancer research, these approaches have played, and will continue to play a key (often bottleneck) role in minimizing human intervention, consolidating pertinent second opinions, and providing traceable clinical information. Pathological studies have been conducted for numerous cancer detection and grading applications, including brain, breast, cervix, lung, and prostate cancer grading. Our study presents, discusses, and extracts the major trends from an exhaustive overview of various nuclei detection, segmentation, feature computation, and classification techniques used in histopathology imagery, specifically in hematoxylin–eosin and immunohistochemical staining protocols. This study also enables us to measure the challenges that remain, in order to reach robust analysis of whole slide images, essential high content imaging with diagnostic biomarkers and prognosis support in digital pathology.
机译:数字病理学是现代医学的主要发展之一。病理检查是许多医学方案中的金标准,并且在诊断过程中也起着至关重要的法律作用。在传统的癌症诊断中,病理学家主要根据细胞形态和结构分布情况对活检组织进行分析,以进行诊断和预后评估。最近,计算机化方法在数字病理学领域迅速发展,与核检测,分割和分类相关的应用不断增长。在癌症研究中,这些方法已经发挥并将继续发挥关键作用(通常是瓶颈),以最大程度地减少人为干预,巩固相关的第二意见并提供可追溯的临床信息。已经针对许多癌症检测和分级应用进行了病理学研究,包括脑癌,乳腺癌,子宫颈癌,肺癌和前列腺癌分级。我们的研究从组织病理学成像中使用的各种核检测,分割,特征计算和分类技术(特别是苏木精-曙红和免疫组织化学染色方案)的详尽概述中,提出,讨论和提取了主要趋势。这项研究还使我们能够衡量仍然存在的挑战,以便对整个幻灯片图像,具有诊断性生物标志物的必要的高内涵成像以及数字病理学的预后支持进行可靠的分析。

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