Computer approach to recognition of Fuhrman grade of cells in clear-cell renal cell carcinoma.

IF 0.1 4区 医学 Q4 Medicine Analytical and Quantitative Cytopathology and Histopathology Pub Date : 2014-06-01
Michal Kruk, Stanislaw Osowski, Tomasz Markiewicz, Janina Slodkowska, Robert Koktysz, Wojciech Kozlowski, Bartosz Swiderski
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Abstract

Objective: To present a computerized system for recognition of Fuhrman grade of cells in clear-cell renal cell carcinoma on the basis of microscopic images of the neoplasm cells in application of hematoxylin and eosin staining.

Study design: The applied methods use combined gradient and mathematical morphology to obtain nuclei and classifiers in the form of support vector machine to estimate their Fuhrman grade. The starting point is a microscopic kidney image, which is subject to the advanced methods of preprocessing, leading finally to estimation of Fuhrman grade of cells and the whole analyzed image.

Results: The results of the numerical experiments have shown that the proposed nuclei descriptors based on different principles of generation are well connected with the Fuhrman grade. These descriptors have been used as the diagnostic features forming the inputs to the classifier, which performs the final recognition of the cells. The average discrepancy rate between the score of our system and the human expert results, estimated on the basis of over 3,000 nuclei, is below 10%.

Conclusion: The obtained results have shown that the system is able to recognize 4 Fuhrman grades of the cells with high statistical accuracy and agreement with different expert scores. This result gives a good perspective to apply the system for supporting and accelerating the research of kidney cancer.

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透明细胞肾细胞癌Fuhrman分级的计算机识别方法。
目的:建立基于苏木精和伊红染色的透明细胞肾细胞癌显微图像的Fuhrman分级计算机识别系统。研究设计:应用的方法采用梯度和数学形态学相结合的方法,以支持向量机的形式获得核和分类器,以估计其Fuhrman等级。从微观肾脏图像开始,经过先进的预处理方法,最终估计细胞的Fuhrman等级和整个分析图像。结果:数值实验结果表明,所提出的基于不同生成原理的核描述子与Fuhrman级有很好的联系。这些描述符被用作形成分类器输入的诊断特征,分类器执行细胞的最终识别。我们的系统得分与人类专家结果之间的平均差异率,在超过3000个核的基础上估计,低于10%。结论:所获得的结果表明,该系统能够识别细胞的4个Fuhrman等级,具有较高的统计准确性,与不同的专家评分一致。该结果为应用该系统支持和加快肾癌的研究提供了良好的前景。
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1 months
期刊介绍: AQCH is an Official Periodical of The International Academy of Cytology and the Italian Society of Urologic Pathology.
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