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首页> 外文期刊>Journal of Pathology: Journal of the Pathological Society of Great Britain and Ireland >Computerized scene segmentation for the discrimination of architectural features in ductal proliferative lesions of the breast.
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Computerized scene segmentation for the discrimination of architectural features in ductal proliferative lesions of the breast.

机译:用于区分乳腺导管增生性病变的建筑特征的计算机化场景分割。

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摘要

The distinction between ductal hyperplasia (DH) and ductal carcinoma in situ (DCIS) still remains a problem in the histological diagnosis of non-invasive breast lesions. In this study, a method was developed for the automatic segmentation and quantitative analysis of breast ducts using knowledge-guided machine vision. This permitted duct profiles and intraduct lumina to be identified and their shape, size, and number computed. These were used to derive measures of duct cribriformity and architectural complexity which were examined as an objective tool in the characterization of duct pattern in proliferative lesions. A total of 215 images of ducts were digitally captured from 22 cases of DCIS and 21 cases of DH diagnosed independently by two pathologists. The cribriformity index proved to be a useful measure of duct architecture, showing a nosotonic increase with increasing duct complexity. The number of lumins also increased with increasing overgrowth of ductal epithelium until the duct was filled. Discriminant analysis of the duct characteristics for benign and malignant groups selected the lumen area/duct area ratio and the duct area as significant discriminatory variables and they were combined into a discriminant function. Of the lumens features, the mean area of the lumen and the polar average (mean of the distribution of the number of events with an increasing spiral from the centre of the duct) were combined into a second discriminant function. Plotting cases against these two functions provided good separation of DH and DCIS groups, with correct classification estimated on the training sample as being over 80 per cent. With an increasing incidence of complex proliferative lesions arising from mammography, the ability to diagnose these lesions correctly is more important than ever. The use of expert system-guided machine vision facilitates the quantitative evaluation of breast duct architecture; along with established histological and cytological criteria, it is hoped that this will lead to a more objective means of diagnosis and disease classification.
机译:导管增生(DH)和导管原位癌(DCIS)之间的区别在无创乳腺病变的组织学诊断中仍然是一个问题。在这项研究中,开发了一种使用知识引导的机器视觉对乳腺导管进行自动分割和定量分析的方法。这样可以识别出风管轮廓和管内腔,并计算其形状,尺寸和数量。这些被用来导出导管弯曲度和建筑复杂性的量度,将其作为表征增生性病变中导管样式的客观工具进行了检查。从22位DCIS患者和21位DH患者(由两名病理学家独立诊断)中以数字方式捕获了总共215张导管图像。筛状指数被证明是管道结构的一种有用的度量,表明随着管道复杂性的增加,等张性增加。内腔的数量也随着导管上皮过度生长的增加而增加,直到导管被充满为止。对良性和恶性组的导管特征进行判别分析,选择管腔面积/导管面积比和导管面积作为显着的判别变量,并将它们组合为判别函数。在管腔特征中,管腔的平均面积和极坐标平均值(事件数量的分布的平均值,随着从导管中心起螺旋的增加)被组合为第二判别函数。根据这两个功能绘制案例可以很好地区分DH和DCIS组,并且对培训样本的正确分类估计超过80%。随着乳房X线照相术引起的复杂增生性病变发生率的增加,正确诊断这些病变的能力比以往任何时候都更为重要。专家系统引导的机器视觉的使用有助于乳腺导管结构的定量评估。连同已建立的组织学和细胞学标准,希望这将导致更客观的诊断和疾病分类方法。

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