Automated Quantification of Ki-67 on Gastric Epithelial Tissue based on Cell Nuclei Area Ratio

IF 0.6 Q3 MULTIDISCIPLINARY SCIENCES
Uniciencia Pub Date : 2022-03-30 DOI:10.15359/ru.36-1.29
Austin Blanco-Solano, Francisco Siles Canales, W. Alpízar-Alpízar
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引用次数: 0

Abstract

The objective was to develop an automated algorithm for the estimation of a protein (Ki-67) index based on cell nuclei area ratio of gastric epithelial tissue cells; for this purpose, digital histopathology images were used. An expert manually annotated each region of interest of the images. A proportion of Ki-67 positive and negative cells within that region was used to obtain the color distribution of the corresponding pixels. The histogram of each color distribution was modeled as a Gaussian and, later, thresholded for segmentation and classification. Finally, the Ki-67 index was estimated as the ratio between the segmented positive area of the nuclei divided by the total area of the positive and negative nuclei. The automated method has a strong correlation of 0.725 and a root mean square error of 0.293 when compared to the manual method, which gives certainty that the automated method can be used to analyze the proliferation rate. Furthermore, compared to manual classification, the presented method automatically classifies every image in the same Ki-67 category: low, intermediate, and high. Despite the small sample size, the utility of the presented method was demonstrated. However, the low number of scored images did not allow for thoroughly sampling the ranges of pixel values and intensities observed by pathologists, which will be addressed in future work.
基于细胞核面积比的Ki-67在胃上皮组织中的自动定量
目的是开发一种基于胃上皮组织细胞的细胞核面积比来估计蛋白质(Ki-67)指数的自动算法;为此,使用了数字组织病理学图像。专家手动注释图像的每个感兴趣区域。使用该区域内Ki-67阳性和阴性细胞的比例来获得相应像素的颜色分布。每个颜色分布的直方图都被建模为高斯,然后进行阈值分割和分类。最后,Ki-67指数被估计为细胞核的分段阳性面积除以阳性和阴性细胞核的总面积之间的比率。与手动方法相比,自动化方法具有0.725的强相关性和0.293的均方根误差,这使得自动化方法可以用于分析增殖率。此外,与手动分类相比,所提出的方法自动将每个图像分类在同一Ki-67类别中:低、中、高。尽管样本量很小,但所提出的方法的实用性得到了证明。然而,评分图像数量少,无法对病理学家观察到的像素值和强度范围进行彻底采样,这将在未来的工作中解决。
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来源期刊
Uniciencia
Uniciencia MULTIDISCIPLINARY SCIENCES-
CiteScore
1.60
自引率
12.50%
发文量
49
审稿时长
40 weeks
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