University of Tunis, ENSIT, LR13ES03 SIME, Montfleury 1008, Tunisia.
University of Tunis El-Manar, ISTMT, Laboratory of Biophysics and Medical Technologies, Tunisia.
Comput Methods Programs Biomed. 2018 Oct;165:37-51. doi: 10.1016/j.cmpb.2018.08.005. Epub 2018 Aug 10.
This paper presents an improved scheme able to perform accurate segmentation and classification of cancer nuclei in immunohistochemical (IHC) breast tissue images in order to provide quantitative evaluation of estrogen or progesterone (ER/PR) receptor status that will assist pathologists in cancer diagnostic process.
The proposed segmentation method is based on adaptive local thresholding and an enhanced morphological procedure, which are applied to extract all stained nuclei regions and to split overlapping nuclei. In fact, a new segmentation approach is presented here for cell nuclei detection from the IHC image using a modified Laplacian filter and an improved watershed algorithm. Stromal cells are then removed from the segmented image using an adaptive criterion in order to get fast tumor nuclei recognition. Finally, unsupervised classification of cancer nuclei is obtained by the combination of four common color separation techniques for a subsequent Allred cancer scoring.
Experimental results on various IHC tissue images of different cancer affected patients, demonstrate the effectiveness of the proposed scheme when compared to the manual scoring of pathological experts. A statistical analysis is performed on the whole image database between immuno-score of manual and automatic method, and compared with the scores that have reached using other state-of-art segmentation and classification strategies. According to the performance evaluation, we recorded more than 98% for both accuracy of detected nuclei and image cancer scoring over the truths provided by experienced pathologists which shows the best correlation with the expert's score (Pearson's correlation coefficient = 0.993, p-value < 0.005) and the lowest computational total time of 72.3 s/image (±1.9) compared to recent studied methods.
The proposed scheme can be easily applied for any histopathological diagnostic process that needs stained nuclear quantification and cancer grading. Moreover, the reduced processing time and manual interactions of our procedure can facilitate its implementation in a real-time device to construct a fully online evaluation system of IHC tissue images.
本文提出了一种改进的方案,能够对免疫组织化学(IHC)乳腺组织图像中的癌细胞核进行准确的分割和分类,从而提供雌激素或孕激素(ER/PR)受体状态的定量评估,以协助病理学家进行癌症诊断过程。
所提出的分割方法基于自适应局部阈值和增强的形态学过程,应用于提取所有染色核区域并分割重叠核。实际上,这里提出了一种新的分割方法,用于使用改进的拉普拉斯滤波器和改进的分水岭算法从 IHC 图像中检测细胞核。然后使用自适应准则从分割图像中去除基质细胞,以快速识别肿瘤核。最后,通过四种常见的颜色分离技术的组合进行无监督分类,以进行后续的 Allred 癌症评分,从而获得癌症核的分类。
在不同患有癌症的患者的各种 IHC 组织图像上的实验结果表明,与病理专家的手动评分相比,所提出的方案是有效的。在整个图像数据库中,对手动和自动方法的免疫评分进行了统计分析,并与使用其他最先进的分割和分类策略获得的评分进行了比较。根据性能评估,我们记录了超过 98%的核检测准确性和图像癌症评分,与经验丰富的病理学家提供的真实值高度相关(皮尔逊相关系数=0.993,p 值<0.005),与最近研究的方法相比,计算总时间最短,为 72.3 秒/图像(±1.9)。
所提出的方案可以轻松应用于任何需要染色核定量和癌症分级的组织病理学诊断过程。此外,我们的方法的处理时间减少和人工交互可以促进其在实时设备中的实施,以构建 IHC 组织图像的全在线评估系统。