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Computer-based grading of haematoxylin-eosin stained tissue sections of urinary bladder carcinomas.

机译:苏木精-伊红染色的膀胱癌组织切片的计算机分级。

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摘要

PURPOSE: A computer-based image analysis system was developed for assessing the malignancy of urinary bladder carcinomas in a more objective manner. Tumours characterized in accordance with the WHO grading system were classified into low-risk (grades I and II) and high-risk (grades III and IV). MATERIALS AND METHODS: Images from 92 haematoxylin-eosin stained sections of urinary bladder carcinomas were digitized and analysed. An adequate number of nuclei were segmented from each image for morphologic and textural analysis. Image segmentation was performed by an efficient algorithm, which used pattern recognition methods to automatically characterize image pixels as nucleus or background. Image classification into low-risk or high-risk tumours was performed by means of the quadratic non-linear Bayesian classifier, which was designed employing 36 textural and morphological features of the nucleus. RESULTS: Automatic segmentation of nuclei on all images was about 90% on average. Overall system accuracy in correctly classifying tumours into low-risk or high-risk was 88%, employing the leave-one-out method and the best combination of three textural and one morphological feature. Classification accuracy for low-risk tumours was 88.8% and for high-risk tumours 86.2%. CONCLUSION: The proposed image analysis system may be of value to the objective assessment of the malignancy of urine bladder carcinomas, since it relies on nuclear parameters that are employed in visual grading and their prognostic value has been proved.
机译:目的:开发了一种基于计算机的图像分析系统,以更客观的方式评估膀胱癌的恶性程度。根据WHO分级系统对肿瘤进行分类,将其分为低风险(I级和II级)和高风险(III级和IV级)。材料与方法:将92例苏木精-伊红染色的膀胱癌切片的图像进行数字化和分析。从每个图像中分割出足够数量的核,以进行形态和质地分析。通过有效的算法执行图像分割,该算法使用模式识别方法自动将图像像素表征为核或背景。利用二次非线性贝叶斯分类器将图像分类为低风险或高风险肿瘤,该分类器利用核的36个组织和形态特征进行设计。结果:所有图像上的核自动分割平均约为90%。使用留一法和三种纹理和一种形态特征的最佳组合,将肿瘤正确分类为低风险或高风险的整体系统准确性为88%。低危肿瘤的分类准确度为88.8%,高危肿瘤的分类准确度为86.2%。结论:所提出的图像分析系统依赖于视觉分级中所使用的核参数,并已证明其预后价值,因此对膀胱癌恶性程度的客观评估可能具有参考价值。

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