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首页> 外文期刊>Cytometry, Part A: the journal of the International Society for Analytical Cytology >Automatic segmentation and supervised learning-based selection of nuclei in cancer tissue images
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Automatic segmentation and supervised learning-based selection of nuclei in cancer tissue images

机译:在癌症组织图像中自动分割和基于监督学习的核选择

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摘要

Analysis of preferential localization of certain genes within the cell nuclei is emerging as a new technique for the diagnosis of breast cancer. Quantitation requires accurate segmentation of 100-200 cell nuclei in each tissue section to draw a statistically significant result. Thus, for large-scale analysis, manual processing is too time consuming and subjective. Fortuitously, acquired images generally contain many more nuclei than are needed for analysis. Therefore, we developed an integrated workflow that selects, following automatic segmentation, a subpopulation of accurately delineated nuclei for positioning of fluorescence in situ hybridization-labeled genes of interest. Segmentation was performed by a multistage watershed-based algorithm and screening by an artificial neural network-based pattern recognition engine. The performance of the workflow was quantified in terms of the fraction of automatically selected nuclei that were visually confirmed as well segmented and by the boundary accuracy of the well-segmented nuclei relative to a 2D dynamic programming-based reference segmentation method. Application of the method was demonstrated for discriminating normal and cancerous breast tissue sections based on the differential positioning of the HES5 gene. Automatic results agreed with manual analysis in 11 out of 14 cancers, all four normal cases, and all five noncancerous breast disease cases, thus showing the accuracy and robustness of the proposed approach.
机译:细胞核内某些基因的优先定位分析正在成为诊断乳腺癌的一种新技术。定量需要在每个组织切片中准确分割100-200个细胞核,以得出统计学上显着的结果。因此,对于大规模分析,手动处理既费时又主观。幸运的是,获取的图像通常包含的核比分析所需的核多得多。因此,我们开发了一种集成的工作流程,该流程可在自动分割后选择准确描绘的核的亚群,以定位感兴趣的荧光原位杂交标记基因。通过基于多级分水岭的算法进行分割,并通过基于人工神经网络的模式识别引擎进行筛选。工作流程的性能通过可视化确认的自动选择核的分数以及相对于基于2D动态编程的参考分割方法的,分割良好的核的边界精度进行量化。证明了该方法的应用,可以根据HES5基因的差异定位来区分正常和癌性的乳腺组织切片。在14种癌症中的11种,所有四个正常病例和所有五个非癌性乳腺癌病例中,自动结果与手动分析相符,从而表明了所提出方法的准确性和可靠性。

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