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Automatically diagnosing HER2 amplification status for breast cancer patients using large FISH images

机译:使用大FISH图像自动诊断乳腺癌患者的HER2扩增状态

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Fluorescence in situ hybridization (FISH) is a technique that prepares acceptable results for molecular imaging biomarkers to precisely and dependably detect and diagnose disorders which are sign of cancers. Since contemporary manual FISH signal analysis is low-effective and inconsistent, it is an attractive research area to develop automated FISH image scanning systems and computer-aided diagnosis (CAD) schemes. The gene expression of epidermal growth factor receptors 2 (HER2) is highly related to results of patients with probable breast cancer. Although FISH technology outperforms other methods, yet it has so many drawbacks. Traditional approaches on FISH analysis are performed manually by clinician. This lets the results are highly dependent to human eye. Also FISH test colors constitutes of dark blue and black regions, it is reasonable that human eye will fail to distinguish between colors. Therefore, the success of computer vision algorithms compared to human eye in analyzing gene expression rate in FISH images will be discussed in this study. Another objective of this study is to expand a CAD program to evaluate HER2 status using acquired images that have MIRAX format. Different large FISH images were chosen for this study from pathology laboratory from Acibadem Maslak hospital. The proposed CAD scheme first applies pre-processing median and gaussian filters. An adaptive thresholding method followed by a watershed segmentation algorithm is employed to segment cells of interest areas. Furthermore, analyzable cells are found and non-detectable cells because of cell overlapping or image staining are discarded. The scheme then splits the detected analyzable region of interest into two red and green color spaces which is also followed by application of a scanning algorithm to detect the CEP17 green and HER2eu red FISH signals separately. Finally, the proposed method calculates the ratio between independent green and red FISH signals of all analyzable cells identified on the image. The results express that the tool has the ability to automatically express HER2 status using very large FISH images. The results of the computer aided tool would lead to a more effective method in specifying HER2 state of probable patients.
机译:荧光原位杂交(FISH)是一种为分子成像生物标记物准备可接受的结果,以精确可靠地检测和诊断癌症征兆的技术。由于现代的手动FISH信号分析效率低下且不一致,因此开发自动FISH图像扫描系统和计算机辅助诊断(CAD)方案是一个有吸引力的研究领域。表皮生长因子受体2(HER2)的基因表达与可能患乳腺癌的患者的结果高度相关。尽管FISH技术的性能优于其他方法,但是它具有许多缺点。 FISH分析的传统方法由临床医生手动执行。这使得结果高度依赖于人眼。另外,FISH测试颜色由深蓝色和黑色区域组成,因此人眼无法区分颜色是合理的。因此,本研究将讨论与人眼相比计算机视觉算法在分析FISH图像中的基因表达率方面的成功。这项研究的另一个目标是扩展一个CAD程序,以使用获取的具有MIRAX格式的图像来评估HER2的状态。从Acibadem Maslak医院的病理实验室选择了不同的大FISH图像进行此项研究。提出的CAD方案首先应用预处理中值和高斯滤波器。自适应阈值方法后接分水岭分割算法用于分割感兴趣区域的单元格。此外,发现了可分析的细胞,并丢弃了由于细胞重叠或图像染色而无法检测到的细胞。然后,该方案将检测到的可分析感兴趣区域划分为两个红色和绿色空间,然后还应用扫描算法分别检测CEP17绿色和HER2 / neu红色FISH信号。最后,提出的方法计算图像上识别的所有可分析细胞的独立绿色和红色FISH信号之间的比率。结果表明该工具具有使用非常大的FISH图像自动表达HER2状态的能力。计算机辅助工具的结果将导致在确定可能患者的HER2状态方面更有效的方法。

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