Computer-aided classification of centroblast cells in follicular lymphoma.

Kamel Belkacem-Boussaid, Michael Pennell, Gerard Lozanski, Arwa Shana'ah, Metin Gurcan
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引用次数: 0

Abstract

Objective: To distinguish centroblast cells from non-centroblast cells using a novel automated method in follicular lymphoma cases and measure its performance on cases obtained by a consensus of six pathologists.

Study design: Geometric and color texture features were used in the training and testing of the supervised quadratic discriminant analysis classifier. The technique was trained and tested on a data set composed of 218 centroblast images and 218 non-centroblast images. Computer performance was tested by measuring sensitivity and specificity among cells classified as centroblast and non-centroblast by consensus of six board-certified hematopathologists.

Results: Automated classification distinguished centroblast from non-centroblast cells with a classification accuracy of 82.56% and sensitivity and specificity of 86.67% and 86.96%, respectively, when the approach was tested.

Conclusion: The novelty of our approach is the identification of the centroblast cells with prior information and the introduction of the principal component analysis in the spectral domain to extract texture color features.

Abstract Image

Abstract Image

Abstract Image

滤泡性淋巴瘤中成中心细胞的计算机辅助分类。
目的:用一种新的自动化方法在滤泡性淋巴瘤病例中区分成中心细胞和非成中心细胞,并测量其在6名病理医师一致同意的病例中的表现。研究设计:几何和颜色纹理特征用于监督二次判别分析分类器的训练和测试。该技术在由218张成心细胞图像和218张非成心细胞图像组成的数据集上进行了训练和测试。计算机性能测试通过测量的敏感性和特异性细胞分为成中心细胞和非成中心细胞的共识,由六个委员会认证的血液病理学家。结果:自动分类对成心细胞和非成心细胞的分类准确率为82.56%,灵敏度和特异性分别为86.67%和86.96%。结论:本方法的新颖之处在于利用先验信息识别成中心细胞,并在光谱域引入主成分分析提取纹理颜色特征。
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