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IHC Color Histograms for Unsupervised Ki67 Proliferation Index Calculation

机译:IHC彩色直方图用于无监督的Ki67扩散指数计算

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摘要

Automated image analysis tools for Ki67 breast cancer digital pathology images would have significant value if integrated into diagnostic pathology workflows. Such tools would reduce the workload of pathologists, while improving efficiency, and accuracy. Developing tools that are robust and reliable to multicentre data is challenging, however, differences in staining protocols, digitization equipment, staining compounds, and slide preparation can create variabilities in image quality and color across digital pathology datasets. In this work, a novel unsupervised color separation framework based on the IHC color histogram (IHCCH) is proposed for the robust analysis of Ki67 and hematoxylin stained images in multicentre datasets. An “overstaining” threshold is implemented to adjust for background overstaining, and an automated nuclei radius estimator is designed to improve nuclei detection. Proliferation index and F1 scores were compared between the proposed method and manually labeled ground truth data for 30 TMA cores that have ground truths for Ki67+ and Ki67− nuclei. The method accurately quantified the PI over the dataset, with an average proliferation index difference of 3.25%. To ensure the method generalizes to new, diverse datasets, 50 Ki67 TMAs from the Protein Atlas were used to test the validated approach. As the ground truth for this dataset is PI ranges, the automated result was compared to the PI range. The proposed method correctly classified 74 out of 80 TMA images, resulting in a 92.5% accuracy. In addition to these validations experiments, performance was compared to two color-deconvolution based methods, and to six machine learning classifiers. In all cases, the proposed work maintained more consistent (reproducible) results, and higher PI quantification accuracy.
机译:如果将Ki67乳腺癌数字病理图像的自动化图像分析工具集成到诊断病理工作流程中,将具有重要价值。这样的工具将减少病理学家的工作量,同时提高效率和准确性。开发强大,可靠的多中心数据工具颇具挑战性,但是,染色方案,数字化设备,染色化合物和载玻片制备方法的差异会在整个数字病理数据集中产生图像质量和颜色的差异。在这项工作中,提出了一种基于IHC颜色直方图(IHCCH)的新型无监督分色框架,用于对多中心数据集中Ki67和苏木精染色的图像进行稳健的分析。实施“过度染色”阈值以调整背景过度染色,并且设计了自动核半径估计器来改善核检测。比较了所提出的方法和人工标记的30个TMA核心的真实数据的增殖指数和F1分数,这些数据具有Ki67 +和Ki67-核的真实情况。该方法准确量化了整个数据集中的PI,平均增殖指数差异为3.25%。为了确保该方法能够推广到新的多样化数据集,使用了来自Protein Atlas的50个Ki67 TMA来测试经过验证的方法。由于此数据集的基本事实是PI范围,因此将自动化结果与PI范围进行了比较。所提出的方法正确地对80个TMA图像中的74个进行了分类,从而获得了92.5%的准确性。除了这些验证实验之外,还将性能与两种基于颜色反卷积的方法以及六个机器学习分类器进行了比较。在所有情况下,拟议的工作均能保持更一致(可重现)的结果,并具有更高的PI定量准确性。

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