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首页> 外文期刊>Cytometry, Part A: the journal of the International Society for Analytical Cytology >Automation-Assisted Cervical Cancer Screening in Manual Liquid-Based Cytology With Hematoxylin and Eosin Staining
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Automation-Assisted Cervical Cancer Screening in Manual Liquid-Based Cytology With Hematoxylin and Eosin Staining

机译:苏木精和曙红染色的人工液基细胞学中的自动化宫颈癌筛查

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摘要

Current automation-assisted technologies for screening cervical cancer mainly rely on automated liquid-based cytology slides with proprietary stain. This is not a costefficient approach to be utilized in developing countries. In this article, we propose the first automation-assisted system to screen cervical cancer in manual liquid-based cytology (MLBC) slides with hematoxylin and eosin (H&E) stain, which is inexpensive and more applicable in developing countries. This system consists of three main modules: image acquisition, cell segmentation, and cell classification. First, an autofocusing scheme is proposed to find the global maximum of the focus curve by iteratively comparing image qualities of specific locations. On the autofocused images, the multiway graph cut (GC) is performed globally on the a* channel enhanced image to obtain cytoplasm segmentation. The nuclei, especially abnormal nuclei, are robustly segmented by using GC adaptively and locally. Two concave-based approaches are integrated to split the touching nuclei. To classify the segmented cells, features are selected and preprocessed to improve the sensitivity, and contextual and cytoplasm information are introduced to improve the specificity. Experiments on 26 consecutive image stacks demonstrated that the dynamic autofocusing accuracy was 2.06 μm. On 21 cervical cell images with nonideal imaging condition and pathology, our segmentation method achieved a 93% accuracy for cytoplasm, and a 87.3% F-measure for nuclei, both outperformed state of the art works in terms of accuracy. Additional clinical trials showed that both the sensitivity (88.1%) and the specificity (100%) of our system are satisfyingly high. These results proved the feasibility of automation-assisted cervical cancer screening in MLBC slides with H&E stain, which is highly desirable in community health centers and small hospitals.
机译:当前用于筛查宫颈癌的自动化辅助技术主要依靠带有专有染色剂的基于液体的自动化细胞学载玻片。这不是在发展中国家使用的具有成本效益的方法。在本文中,我们提出了第一个自动化辅助系统,该系统可在具有苏木精和曙红(H&E)染色的人工液基细胞学(MLBC)载玻片中筛选宫颈癌,这种系统便宜且在发展中国家更适用。该系统由三个主要模块组成:图像采集,细胞分割和细胞分类。首先,提出了一种自动聚焦方案,通过迭代比较特定位置的图像质量来找到聚焦曲线的全局最大值。在自动聚焦的图像上,对a *通道增强图像全局执行多路图切割(GC),以获得细胞质分割。通过自适应地和局部地使用GC,可以对核(尤其是异常核)进行稳健的分段。集成了两种基于凹面的方法以分裂接触核。为了对分割的细胞进行分类,选择特征并进行预处理以提高敏感性,并引入背景信息和细胞质信息以提高特异性。在26个连续的图像堆栈上进行的实验表明,动态自动对焦精度为2.06μm。在具有非理想成像条件和病理的21个宫颈细胞图像上,我们的分割方法对细胞质的准确度达到93%,对细胞核的F-测度达到87.3%,在准确性方面均优于最新技术。其他临床试验表明,我们系统的灵敏度(88.1%)和特异性(100%)都令人满意。这些结果证明了在带有H&E染色的MLBC玻片上进行自动化辅助宫颈癌筛查的可行性,这在社区卫生中心和小型医院中是非常需要的。

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