Comparison of Manual Versus QuPath Software-based Immunohistochemical Scoring Using Oral Squamous Cell Carcinoma as a Model.

IF 1.9 4区 生物学 Q4 CELL BIOLOGY
Hannah Horbas, Marcus Bauer, Alexander Eckert, Daniel Bethmann, Andreas Wilfer, Barbara Seliger, Claudia Wickenhauser
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引用次数: 0

Abstract

Gold standard for immunohistochemical analyses is the manual assessment by two specialist pathologists. This process is time-consuming, highly dependent on the respective evaluator and often difficult to reproduce. The use of image analysis software, such as ImageJ, QuPath, or CellProfiler, which employ machine learning and/or deep learning mechanisms to perform biomarker analyses, offers a potential solution to these problems. The objective of our study is to evaluate whether digital assessment using the open-source software QuPath is comparable to manual evaluation and to examine the inter-evaluator variability between the two manual evaluators and two software-based evaluations. Six tissue microarrays (TMAs) were constructed for a cohort of 309 patients with primary oral squamous cell carcinoma (OSCC). The tumor tissue and corresponding non-lesional squamous epithelial mucosa specimen were immunohistochemically stained for the biomarkers Ki67, as a nuclear marker; the epidermal growth factor receptor (EGF-R), as a membranous marker; and the major histocompatibility complex class I (MHC-I) heavy chain (HC) expressed on the membrane and in the cytoplasm. The staining pattern was analyzed by two experienced, independent manual evaluators and by QuPath. The percentage of positive cells, for Ki67, and the histoscore (H-score) based on the percentage of positive cells and their staining intensity, for EGF-R and MHC-I, were determined as final values. The results yielded high to excellent spearman correlation coefficients for all three biomarkers (p<0.001) in lesional and non-lesional tissues. The Bland-Altman plots demonstrated a high degree of agreement between manual and software-based analysis, as well as inter-evaluator variability demonstrating a high comparability of the evaluation methods. However, a prerequisite for a proper software-based analysis is an accurate, time-consuming annotation of the single specimen, which requires users with a comprehensive understanding of histology and extensive training in QuPath. Once these requirements are met, the software-based analysis offers advantages for large-scale biomarker studies due to objective and reproducible comparability of the stainings leading to a greater accuracy as well as the reuse of established conditions across similar analyses without requiring further operator input.

以口腔鳞状细胞癌为模型的人工与QuPath软件免疫组化评分的比较。
免疫组织化学分析的金标准是由两名专业病理学家手工评估。这个过程非常耗时,高度依赖于各自的评估者,并且通常难以复制。使用图像分析软件,如ImageJ、QuPath或CellProfiler,它们采用机器学习和/或深度学习机制来执行生物标志物分析,为这些问题提供了一个潜在的解决方案。我们研究的目的是评估使用开源软件QuPath的数字评估是否与人工评估相媲美,并检查两种人工评估器和两种基于软件的评估器之间的内部评估器可变性。为309例原发性口腔鳞状细胞癌(OSCC)患者构建了6个组织微阵列(tma)。对肿瘤组织和相应的非病变鳞状上皮粘膜标本进行免疫组织化学染色,检测Ki67作为核标志物;表皮生长因子受体(EGF-R),作为膜标记物;主要组织相容性复合体I类(MHC-I)重链(HC)在细胞膜和细胞质上表达。染色模式由两名经验丰富的独立人工评估人员和QuPath进行分析。Ki67的阳性细胞百分比,以及EGF-R和MHC-I的组织评分(H-score)(基于阳性细胞百分比及其染色强度)作为最终值。结果显示,所有三种生物标志物的spearman相关系数都很高
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来源期刊
CiteScore
6.00
自引率
0.00%
发文量
32
审稿时长
1 months
期刊介绍: Journal of Histochemistry & Cytochemistry (JHC) has been a pre-eminent cell biology journal for over 50 years. Published monthly, JHC offers primary research articles, timely reviews, editorials, and perspectives on the structure and function of cells, tissues, and organs, as well as mechanisms of development, differentiation, and disease. JHC also publishes new developments in microscopy and imaging, especially where imaging techniques complement current genetic, molecular and biochemical investigations of cell and tissue function. JHC offers generous space for articles and recognizing the value of images that reveal molecular, cellular and tissue organization, offers free color to all authors.
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