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Automated quantitative analysis of Ki-67 staining and HE images recognition and registration based on whole tissue sections in breast carcinoma

机译:基于乳腺癌整体组织切片的KI-67染色自动定量分析及其在乳腺癌中的识别和登记

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BACKGROUND:The scoring of Ki-67 is highly relevant for the diagnosis, classification, prognosis, and treatment in breast invasive ductal carcinoma (IDC). Traditional scoring method of Ki-67 staining followed by manual counting, is time-consumption and inter-/intra observer variability, which may limit its clinical value. Although more and more algorithms and individual platforms have been developed for the assessment of Ki-67 stained images to improve its accuracy level, most of them lack of accurate registration of immunohistochemical (IHC) images and their matched hematoxylin-eosin (HE) images, or did not accurately labelled each positive and negative cell with Ki-67 staining based on whole tissue sections (WTS). In view of this, we introduce an accurate image registration method and an automatic identification and counting software of Ki-67 based on WTS by deep learning.METHODS:We marked 1017 breast IDC whole slide imaging (WSI), established a research workflow based on the (i) identification of IDC area, (ii) registration of HE and IHC slides from the same anatomical region, and (iii) counting of positive Ki-67 staining.RESULTS:The accuracy, sensitivity, and specificity levels of identifying breast IDC regions were 89.44, 85.05, and 95.23%, respectively, and the contiguous HE and Ki-67 stained slides perfectly registered. We counted and labelled each cell of 10 Ki-67 slides as standard for testing on WTS, the accuracy by automatic calculation of Ki-67 positive rate in attained IDC was 90.2%. In the human-machine competition of Ki-67 scoring, the average time of 1 slide was 2.3?min with 1 GPU by using this software, and the accuracy was 99.4%, which was over 90% of the results provided by participating doctors.CONCLUSIONS:Our study demonstrates the enormous potential of automated quantitative analysis of Ki-67 staining and HE images recognition and registration based on WTS, and the automated scoring of Ki67 can thus successfully address issues of consistency, reproducibility and accuracy. We will provide those labelled images as an open-free platform for researchers to assess the performance of computer algorithms for automated Ki-67 scoring on IHC stained slides.
机译:背景:KI-67的评分对于乳腺侵入性导管癌(IDC)的诊断,分类,预后和治疗非常相关。 ki-67染色随后的传统评分方法,随后是手动计数,是时间消耗和/内部观察者间变异性,可能限制其临床价值。尽管已经开发了越来越多的算法和各个平台用于评估KI-67染色的图像,但其大多数人缺乏免疫组织化学(IHC)图像的准确登记及其匹配的血毒素 - eosin(HE)图像,或者没有基于整个组织切片(WTS)的KI-67染色没有准确标记阳性和阴性细胞。鉴于此,我们通过深度学习介绍了基于WTS的ki-67的准确图像登记方法和自动识别和计数软件。方法:我们标记了1017个乳房IDC整个幻灯片成像(WSI),建立了基于的研究工作流程(i)IDC区域的识别,(ii)从相同的解剖区域登记他和IHC的登记,(iii)计数阳性Ki-67染色。结果:识别乳房IDC的准确性,敏感性和特异性水平地区分别为89.44,85.05和95.23%,常用的HE和KI-67染色幻灯片完全注册。我们计算并标记为10ki-67的每个单元格作为WTS测试标准,通过达到IDC的ki-67阳性率的自动计算的精度为90.2%。在KI-67评分的人机竞争中,通过使用本软件,1个幻灯片的平均时间为2.3?分钟,准确度为99.4%,占参与医生提供的90%以上的结果。结论:我们的研究表明了KI-67染色的自动定量分析的巨大潜力,以及基于WTS的图像识别和登记,因此KI67的自动评分可以成功地解决一致性,再现性和准确性问题。我们将提供标记图像作为研究人员的不可自由平台,以评估IHC染色幻灯片上的自动KI-67评分的计算机算法的性能。

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