Reliability and Variability of Ki-67 Digital Image Analysis Methods for Clinical Diagnostics in Breast Cancer

IF 5.1 2区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL Laboratory Investigation Pub Date : 2024-01-25 DOI:10.1016/j.labinv.2024.100341
Melanie Dawe , Wei Shi , Tian Y. Liu , Katherine Lajkosz , Yukiko Shibahara , Nakita E.K. Gopal , Rokshana Geread , Seyed Mirjahanmardi , Carrie X. Wei , Sehrish Butt , Moustafa Abdalla , Sabrina Manolescu , Sheng-Ben Liang , Dianne Chadwick , Michael H.A. Roehrl , Trevor D. McKee , Adewunmi Adeoye , David McCready , April Khademi , Fei-Fei Liu , Susan J. Done
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Abstract

Ki-67 is a nuclear protein associated with proliferation, and a strong potential biomarker in breast cancer, but is not routinely measured in current clinical management owing to a lack of standardization. Digital image analysis (DIA) is a promising technology that could allow high-throughput analysis and standardization. There is a dearth of data on the clinical reliability as well as intra- and interalgorithmic variability of different DIA methods. In this study, we scored and compared a set of breast cancer cases in which manually counted Ki-67 has already been demonstrated to have prognostic value (n = 278) to 5 DIA methods, namely Aperio ePathology (Lieca Biosystems), Definiens Tissue Studio (Definiens AG), Qupath, an unsupervised immunohistochemical color histogram algorithm, and a deep-learning pipeline piNET. The piNET system achieved high agreement (interclass correlation coefficient: 0.850) and correlation (R = 0.85) with the reference score. The Qupath algorithm exhibited a high degree of reproducibility among all rater instances (interclass correlation coefficient: 0.889). Although piNET performed well against absolute manual counts, none of the tested DIA methods classified common Ki-67 cutoffs with high agreement or reached the clinically relevant Cohen’s κ of at least 0.8. The highest agreement achieved was a Cohen’s κ statistic of 0.73 for cutoffs 20% and 25% by the piNET system. The main contributors to interalgorithmic variation and poor cutoff characterization included heterogeneous tumor biology, varying algorithm implementation, and setting assignments. It appears that image segmentation is the primary explanation for semiautomated intra-algorithmic variation, which involves significant manual intervention to correct. Automated pipelines, such as piNET, may be crucial in developing robust and reproducible unbiased DIA approaches to accurately quantify Ki-67 for clinical diagnosis in the future.

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用于乳腺癌临床诊断的 Ki-67 数字图像分析方法的可靠性和可变性。
Ki-67 是一种与增殖相关的核蛋白,也是乳腺癌的一种潜在生物标志物,但由于缺乏标准化,在目前的临床管理中并未对其进行常规测量。数字图像分析(DIA)是一项前景广阔的技术,可实现高通量分析和标准化。关于不同 DIA 方法的临床可靠性以及算法内和算法间变异性的数据十分匮乏。在本研究中,我们对一组人工计数的 Ki-67 已被证明具有预后价值的乳腺癌病例(n=278)进行了评分,并将其与五种 DIA 方法进行了比较,这五种方法是:Aperio ePathology、Definiens Tissue Studio、Qupath、无监督 IHC 颜色直方图(IHCCH)算法和深度学习管道 piNET。piNET 系统与参考评分的一致性(ICC:0.850)和相关性(R= 0.85)都很高。Qupath 算法在所有评分者实例之间表现出高度的可重复性(ICC:0.889)。尽管 piNET 在与绝对人工计数的比较中表现良好,但所测试的 DIA 方法中没有一种能以高度一致的方式对常见的 Ki-67 临界值进行分类,也没有一种能达到至少 0.8 的临床相关 Cohen's kappa。一致性最高的是 piNET 系统对 20% 和 25% 临界值的 Cohen's kappa 统计量为 0.73。造成算法间差异和截断特征不佳的主要原因包括肿瘤生物学的异质性、不同的算法实施和设置分配。图像分割似乎是半自动化算法内部差异的主要原因,这需要大量的人工干预来纠正。像 piNET 这样的自动流水线可能是开发稳健、可重复、无偏见的 DIA 方法的关键,以便在未来的临床诊断中准确量化 Ki-67。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Laboratory Investigation
Laboratory Investigation 医学-病理学
CiteScore
8.30
自引率
0.00%
发文量
125
审稿时长
2 months
期刊介绍: Laboratory Investigation is an international journal owned by the United States and Canadian Academy of Pathology. Laboratory Investigation offers prompt publication of high-quality original research in all biomedical disciplines relating to the understanding of human disease and the application of new methods to the diagnosis of disease. Both human and experimental studies are welcome.
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