核特征自动分析揭示了膀胱癌肿瘤分级的非肿瘤预测指标。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Ibrahim Fahoum, Shlomo Tsuriel, Daniel Rattner, Ariel Greenberg, Asia Zubkov, Rabab Naamneh, Orli Greenberg, Valentina Zemser-Werner, Gilad Gitstein, Rami Hagege, Dov Hershkovitz
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引用次数: 0

摘要

背景和目的:肿瘤分级决定着尿路上皮癌的预后。低分级和高等级的划分是基于核形态学特征,包括核大小、高色素和多形性。这些特征由病理学家主观评估,并不以数字衡量,因此观察者之间的差异率很高。本研究旨在评估基于计算机的图像分析工具在确定膀胱癌肿瘤分级预测指标方面的价值:方法:由五位病理学家和两位泌尿生殖系统病理专家对 400 张尿路肿瘤图像进行分级,分级标准为 1(最低分级)至 5(最高分级)。计算机算法可自动分割细胞核并提供每个细胞核的形态参数,这些参数用于建立分级算法。将分级算法与病理学家的一致意见进行比较:结果:将五位病理学家的分级评分与泌尿生殖系统病理专家的评分进行比较后发现,两者的一致率在 88.5% 到 97.5% 之间。基于量化算法的常规参数(核大小、多形性和高色素沉着)与泌尿生殖系统病理专家的分级吻合率大于 85%。令人惊讶的是,与肿瘤分级最相关的参数是核面积的第10百分位数,分级高的肿瘤核的第10百分位数较低,这是因为分级高的肿瘤中存在更多的炎性细胞:结论:定量核特征可用于确定尿路上皮癌的分级,并探索出新的生物可解释参数,其与分级的相关性优于目前使用的参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic analysis of nuclear features reveals a non-tumoral predictor of tumor grade in bladder cancer.

Background & objectives: Tumor grade determines prognosis in urothelial carcinoma. The classification of low and high grade is based on nuclear morphological features that include nuclear size, hyperchromasia and pleomorphism. These features are subjectively assessed by the pathologists and are not numerically measured, which leads to high rates of interobserver variability. The purpose of this study is to assess the value of a computer-based image analysis tool for identifying predictors of tumor grade in bladder cancer.

Methods: Four hundred images of urothelial tumors were graded by five pathologists and two expert genitourinary pathologists using a scale of 1 (lowest grade) to 5 (highest grade). A computer algorithm was used to automatically segment the nuclei and to provide morphometric parameters for each nucleus, which were used to establish the grading algorithm. Grading algorithm was compared to pathologists' agreement.

Results: Comparison of the grading scores of the five pathologists with the expert genitourinary pathologists score showed agreement rates between 88.5% and 97.5%.The agreement rate between the two expert genitourinary pathologists was 99.5%. The quantified algorithm based conventional parameters that determine the grade (nuclear size, pleomorphism and hyperchromasia) showed > 85% agreement with the expert genitourinary pathologists. Surprisingly, the parameter that was most associated with tumor grade was the 10th percentile of the nuclear area, and high grade was associated with lower 10th percentile nuclei, caused by the presence of more inflammatory cells in the high-grade tumors.

Conclusion: Quantitative nuclear features could be applied to determine urothelial carcinoma grade and explore new biologically explainable parameters with better correlation to grade than those currently used.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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