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Automated image based prominent nucleoli detection

机译:基于自动图像的突出核仁检测

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Introduction:Nucleolar changes in cancer cells are one of the cytologic features important to the tumor pathologist in cancer assessments of tissue biopsies. However, inter-observer variability and the manual approach to this work hamper the accuracy of the assessment by pathologists. In this paper, we propose a computational method for prominent nucleoli pattern detection.Materials and Methods:Thirty-five hematoxylin and eosin stained images were acquired from prostate cancer, breast cancer, renal clear cell cancer and renal papillary cell cancer tissues. Prostate cancer images were used for the development of a computer-based automated prominent nucleoli pattern detector built on a cascade farm. An ensemble of approximately 1000 cascades was constructed by permuting different combinations of classifiers such as support vector machines, eXclusive component analysis, boosting, and logistic regression. The output of cascades was then combined using the RankBoost algorithm. The output of our prominent nucleoli pattern detector is a ranked set of detected image patches of patterns of prominent nucleoli.Results:The mean number of detected prominent nucleoli patterns in the top 100 ranked detected objects was 58 in the prostate cancer dataset, 68 in the breast cancer dataset, 86 in the renal clear cell cancer dataset, and 76 in the renal papillary cell cancer dataset. The proposed cascade farm performs twice as good as the use of a single cascade proposed in the seminal paper by Viola and Jones. For comparison, a naive algorithm that randomly chooses a pixel as a nucleoli pattern would detect five correct patterns in the first 100 ranked objects.Conclusions:Detection of sparse nucleoli patterns in a large background of highly variable tissue patterns is a difficult challenge our method has overcome. This study developed an accurate prominent nucleoli pattern detector with the potential to be used in the clinical settings.
机译:简介:癌细胞中的核仁变化是组织病理学评估癌症中肿瘤病理学家重要的细胞学特征之一。但是,观察者之间的差异性和此项工作的手动方法妨碍了病理学家进行评估的准确性。本文提出了一种用于突出核仁模式检测的计算方法。材料与方法:从前列腺癌,乳腺癌,肾透明细胞癌和肾乳头状细胞癌组织中获取35份苏木精和曙红染色图像。前列腺癌的图像被用于开发基于计算机的,以级联农场为基础的自动突出核仁模式检测器。通过排列分类器的不同组合(例如支持向量机,排他性成分分析,boosting和logistic回归),构建了大约1000个级联的集合。然后使用RankBoost算法合并级联的输出。结果:在前列腺癌数据集中排名前100位的检测对象中,检测到的突出核仁模式的平均数量为58,在前列腺癌数据集中为68。乳腺癌数据集,肾透明细胞癌数据集86个和肾乳头细胞癌数据集76个。拟议的级联场的性能是Viola和Jones的开创性论文中提出的单个级联的两倍。为了进行比较,一个天真的算法会随机选择一个像素作为核仁图案,这将在排名前100个的对象中检测到五个正确的图案。结论:在高度可变的组织图案的大背景下检测稀疏核仁图案是我们方法面临的难题克服。这项研究开发了一种精确的突出核仁模式检测器,具有在临床环境中使用的潜力。

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