Hameed K A Shahul, Banumathi A, Ulaganathan G
Research Scholar, Department of ECE, Thiagarajar College of Engineering, Madurai, Tamil Nadu, India..
Department of ECE, Thiagarajar College of Engineering, Madurai, Tamil Nadu, India.
Micron. 2015 Dec;79:29-35. doi: 10.1016/j.micron.2015.07.013. Epub 2015 Aug 5.
This paper presents an automatic scoring method for p53 immunostained tissue images of oral cancer that consist of tissue image segmentation, splitting of clustered nuclei, feature extraction and classification. The tissue images are segmented using entropy thresholding technique in which the optimum threshold value to each color component is obtained by maximizing the global entropy of its gray-level co-occurrence matrix and clustered cells are separated by selectively applying marker-controlled watershed transform. Cell nuclei feature is extracted by maximal separation technique (MS) based on blue component of tissue image and subsequently, each cell is classified into one of four categories using multi-level thresholding. Finally, IHC score of tissue images have been determined using Allred method. A statistical analysis is performed between immuno-score of manual and automatic method, and compared with the scores that have obtained using other MS techniques. According to the performance evaluation, IHC score based on blue component that has high correlation coefficients (CC) of 0.95, low mean difference (MD) of 0.15, and a very close range of 95% confidence interval with manual scores. Therefore, automatic scoring method presented in this paper has high potential to help the pathologist in IHC scoring of tissue images.
本文提出了一种针对口腔癌p53免疫染色组织图像的自动评分方法,该方法包括组织图像分割、聚集细胞核的分割、特征提取和分类。使用熵阈值技术对组织图像进行分割,通过最大化其灰度共生矩阵的全局熵来获得每个颜色分量的最佳阈值,并通过选择性应用标记控制的分水岭变换来分离聚集的细胞。基于组织图像的蓝色分量,采用最大分离技术(MS)提取细胞核特征,随后使用多级阈值将每个细胞分类为四类之一。最后,使用Allred方法确定组织图像的免疫组化(IHC)评分。对手动和自动方法的免疫评分进行了统计分析,并与使用其他MS技术获得的评分进行了比较。根据性能评估,基于蓝色分量的IHC评分具有0.95的高相关系数(CC)、0.15的低平均差异(MD)以及与手动评分非常接近的95%置信区间范围。因此,本文提出的自动评分方法在帮助病理学家进行组织图像的IHC评分方面具有很大潜力。