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Validation of a new classifier for the automated analysis of the human epidermal growth factor receptor 2 (HER2) gene amplification in breast cancer specimens

机译:新型分类器的验证用于自动分析乳腺癌标本中的人类表皮生长因子受体2(HER2)基因扩增

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摘要

Amplification of the human epidermal growth factor receptor 2 (HER2) is a prognostic marker for poor clinical outcome and a predictive marker for therapeutic response to targeted therapies in breast cancer patients. With the introduction of anti-HER2 therapies, accurate assessment of HER2 status has become essential. Fluorescence in situ hybridization (FISH) is a widely used technique for the determination of HER2 status in breast cancer. However, the manual signal enumeration is time-consuming. Therefore, several companies like MetaSystem have developed automated image analysis software. Some of these signal enumeration software employ the so called “tile-sampling classifier”, a programming algorithm through which the software quantifies fluorescent signals in images on the basis of square tiles of fixed dimensions. Considering that the size of tile does not always correspond to the size of a single tumor cell nucleus, some users argue that this analysis method might not completely reflect the biology of cells. For that reason, MetaSystems has developed a new classifier which is able to recognize nuclei within tissue sections in order to determine the HER2 amplification status on nuclei basis. We call this new programming algorithm “nuclei-sampling classifier”. In this study, we evaluated the accuracy of the “nuclei-sampling classifier” in determining HER2 gene amplification by FISH in nuclei of breast cancer cells. To this aim, we randomly selected from our cohort 64 breast cancer specimens (32 nonamplified and 32 amplified) and we compared results obtained through manual scoring and through this new classifier. The new classifier automatically recognized individual nuclei. The automated analysis was followed by an optional human correction, during which the user interacted with the software in order to improve the selection of cell nuclei automatically selected. Overall concordance between manual scoring and automated nuclei-sampling analysis was 98.4% (100% for nonamplified cases and 96.9% for amplified cases). However, after human correction, concordance between the two methods was 100%. We conclude that the nuclei-based classifier is a new available tool for automated quantitative HER2 FISH signals analysis in nuclei in breast cancer specimen and it can be used for clinical purposes.
机译:人表皮生长因子受体2(HER2)的扩增是临床预后不良的预后标志物,也是乳腺癌患者对靶向疗法的治疗反应的预测标志物。随着抗HER2疗法的引入,准确评估HER2的状况已变得至关重要。荧光原位杂交(FISH)是一种广泛用于确定乳腺癌中HER2状态的技术。但是,手动信号枚举非常耗时。因此,像MetaSystem这样的几家公司已经开发了自动图像分析软件。其中一些信号枚举软件采用了所谓的“瓦片采样分类器”,该算法是一种编程算法,通过该算法,软件可以基于固定尺寸的正方形图块对图像中的荧光信号进行量化。考虑到瓦片的大小并不总是与单个肿瘤细胞核的大小相对应,一些用户认为这种分析方法可能无法完全反映细胞的生物学特性。因此,MetaSystems开发了一种新的分类器,该分类器能够识别组织切片中的细胞核,以便基于细胞核确定HER2扩增状态。我们称这种新的编程算法为“核采样分类器”。在这项研究中,我们评估了“核酸采样分类器”在通过FISH确定乳腺癌细胞核中HER2基因扩增中的准确性。为此,我们从队列中随机抽取了64个乳腺癌样本(32个未扩增和32个扩增),然后比较了通过人工评分和通过该新分类器获得的结果。新的分类器会自动识别单个核。自动分析之后是可选的人工校正,在此期间用户与软件进行了交互,以改善对自动选择的细胞核的选择。手动评分与自动核采样分析之间的总体一致性为98.4%(非扩增病例为100%,扩增病例为96.9%)。但是,经过人工校正,两种方法之间的一致性为100%。我们得出的结论是,基于核的分类器是用于乳腺癌标本中核的自动定量HER2 FISH信号自动分析的新工具,可用于临床。

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