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Different Approaches for Automatic Nucleus Image Segmentation in Fluorescent in situ Hybridization (FISH) Analysis for HER2 Status Assesment

机译:用于HER2状态评估的荧光原位杂交(FISH)分析中自动核图像自动分割的不同方法

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According to American Cancer Society breast cancer is the most common cancer type in women. For most effective treatment choice and patients’ state of health prediction it is necessary to make a differential diagnosis to determine breast cancer subtype. The tumor subtype is determined by immunohistochemical or immunocytochemical studies, which evaluate the expression levels of steroid hormone receptors, proliferative protein Ki -67, and oncoprotein CerbB-2 (HER2eu). HER2-positive subtypes are most adverse (about 25-30% of all cases). In case of indefinite CerbB-2 expression fluorescence in situ hybridization (FISH) investigation is utilized. In most cases, this study is held by visual estimation of fluorescent image parameters by pathologist and thus is subjective. We need to employ automatization techniques to decrease human factor impact and increase reproducibility of the analysis result. FISH analysis automatization for HER2 amplification can be divided into three tasks: nucleus segmentation, signal detection and presentation of the results according to ASCO/CAP recommendations. In this article results for nucleus segmentation task using different machine learning algorithms are presented. The image database for investigations consisted of RGB fluorescent images, as well as gray scale images for each individual fluorophore. The best result was achieved using the random forest algorithm on gray-scale images of individual fluorophores.
机译:根据美国癌症协会的资料,乳腺癌是女性中最常见的癌症类型。为了最有效的治疗选择和患者的健康状况预测,有必要进行鉴别诊断以确定乳腺癌亚型。通过免疫组织化学或免疫细胞化学研究确定肿瘤亚型,该研究评估了类固醇激素受体,增殖蛋白Ki -67和癌蛋白CerbB-2(HER2 / neu)的表达水平。 HER2阳性亚型最不利(约占所有病例的25-30%)。在不确定的CerbB-2表达的情况下,使用荧光原位杂交(FISH)研究。在大多数情况下,这项研究是由病理学家通过视觉估计荧光图像参数进行的,因此是主观的。我们需要采用自动化技术来减少人为因素的影响并提高分析结果的可重复性。根据ASCO / CAP建议,用于HER2扩增的FISH分析自动化可分为三个任务:核分割,信号检测和结果显示。本文介绍了使用不同机器学习算法进行核分割任务的结果。用于调查的图像数据库由RGB荧光图像以及每个单独的荧光团的灰度图像组成。使用随机森林算法对单个荧光团的灰度图像可获得最佳结果。

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