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Automated cell segmentation and spot detection in fluorescence in situ hybridization staining to assess HER2 status in breast cancer

机译:荧光原位杂交染色中的自动细胞分割和斑点检测,以评估乳腺癌中HER2的状态

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Fluorescence in situ hybridization (FISH) approach is constituted of a pair of complementary techniques for precisely detecting gene amplification and over-expression which are regarded as signs of cancer in patients. Signal detection of FISH whole slides is extremely significant as enables to detect amplification situation. However, nuclei detection and segmentation of FISH slides through microscopic images is tedious and time-consuming for pathologists to evaluate. Furthermore, FISH specimen slides provided at pathological laboratories are frequently noisy and not analyzable entirely. Therefore, traditional visual methods require more time due to fact that they are exceedingly reliant on human view. They require more time and attention in the evaluation process by pathologists. Nowadays, computer-aided FISH solutions bring radical remedies in this particular problematic area of pathology. Although computer-aided FISH solutions have many advantages, they have some drawbacks due to the variability of staining images. In this study, we present an accurate cell nuclei segmentation and signal detection methodology to detect red and green spots localized in segmented cells. The problems in the visual experiments as well as the assessment of amplification state of the evaluated cases are presented, which corresponds to the visual scoring of pathologists.
机译:荧光原位杂交(FISH)方法由一对互补技术组成,用于精确检测被认为是癌症患者的基因扩增和过度表达。 FISH整个玻片的信号检测非常重要,因为它可以检测扩增情况。然而,通过显微镜图像对FISH载玻片进行核检测和分割对于病理学家而言是繁琐且耗时的评估工作。此外,病理实验室提供的FISH标本载玻片经常嘈杂且无法完全分析。因此,由于传统的视觉方法过于依赖于人类的视线,因此需要更多的时间。他们需要病理学家在评估过程中花费更多的时间和精力。如今,计算机辅助FISH解决方案在这一特殊的病理学领域带来了根本性的补救措施。尽管计算机辅助FISH解决方案具有许多优点,但由于染色图像的可变性,它们仍具有一些缺点。在这项研究中,我们提出了一种精确的细胞核分割和信号检测方法,以检测位于分割细胞中的红色和绿色斑点。提出了视觉实验中的问题以及所评估病例的扩增状态评估,这与病理学家的视觉评分相对应。

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