Alomari Yazan M, Sheikh Abdullah Siti Norul Huda, MdZin Reena Rahayu, Omar Khairuddin
Pattern Recognition Research Group, Center for Artificial Intelligence Technology, Faculty of Information Science and Technology, Universiti Kebangsaan Malaysia, 43600 Bangi, Malaysia.
Department of Pathology, UKM Medical Center, Universiti Kebangsaan Malaysia, 56000 Cheras, Kuala Lumpur, Malaysia.
Comput Math Methods Med. 2015;2015:673658. doi: 10.1155/2015/673658. Epub 2015 Feb 22.
Analysis of whole-slide tissue for digital pathology images has been clinically approved to provide a second opinion to pathologists. Localization of focus points from Ki-67-stained histopathology whole-slide tissue microscopic images is considered the first step in the process of proliferation rate estimation. Pathologists use eye pooling or eagle-view techniques to localize the highly stained cell-concentrated regions from the whole slide under microscope, which is called focus-point regions. This procedure leads to a high variety of interpersonal observations and time consuming, tedious work and causes inaccurate findings. The localization of focus-point regions can be addressed as a clustering problem. This paper aims to automate the localization of focus-point regions from whole-slide images using the random patch probabilistic density method. Unlike other clustering methods, random patch probabilistic density method can adaptively localize focus-point regions without predetermining the number of clusters. The proposed method was compared with the k-means and fuzzy c-means clustering methods. Our proposed method achieves a good performance, when the results were evaluated by three expert pathologists. The proposed method achieves an average false-positive rate of 0.84% for the focus-point region localization error. Moreover, regarding RPPD used to localize tissue from whole-slide images, 228 whole-slide images have been tested; 97.3% localization accuracy was achieved.
对数字病理图像的全切片组织分析已获临床批准,可为病理学家提供第二意见。从Ki-67染色的组织病理学全切片组织显微图像中定位焦点被认为是增殖率估计过程的第一步。病理学家使用眼池法或鹰眼技术在显微镜下从整张切片中定位高染色细胞集中区域,即焦点区域。此过程导致大量人际观察差异,工作耗时且繁琐,还会产生不准确的结果。焦点区域的定位可作为一个聚类问题来解决。本文旨在使用随机补丁概率密度方法自动从全切片图像中定位焦点区域。与其他聚类方法不同,随机补丁概率密度方法无需预先确定聚类数量就能自适应地定位焦点区域。将所提方法与k均值和模糊c均值聚类方法进行了比较。当由三位专家病理学家评估结果时,所提方法表现良好。所提方法在焦点区域定位误差方面实现了平均0.84%的假阳性率。此外,对于用于从全切片图像中定位组织的随机补丁概率密度方法,已测试了228张全切片图像;实现了97.3% 的定位准确率。