首页> 外文期刊>Computers in Biology and Medicine >Design of a multi-classifier system for discriminating benign from malignant thyroid nodules using routinely H&E-stained cytological images.
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Design of a multi-classifier system for discriminating benign from malignant thyroid nodules using routinely H&E-stained cytological images.

机译:使用常规H&E染色的细胞学图像,从恶性甲状腺结节中区分良性的多分类器系统的设计。

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A multi-classifier diagnostic system was designed for distinguishing between benign and malignant thyroid nodules from routinely taken (FNA, H&E-stained) cytological images. To construct the multi-classifier system, several combination rules and different mixtures of ensemble classifier members, employing morphological and textural nuclear features, were comparatively evaluated. Experimental results illustrated that the classifier combination k-NN/PNN/Bayesian and the majority vote rule enhanced significantly classification accuracy (95.7%) as compared to best single classifier (PNN: 89.6%). The proposed system was designed with purpose to be utilized in daily clinical practice as a second opinion tool to support cytopathologists' decisions, when a definite diagnosis is difficult to be obtained.
机译:设计了一种多分类器诊断系统,用于从常规(FNA,H&E染色)细胞学图像中区分甲状腺结节是良性还是恶性。为了构建多分类器系统,比较了利用形态和纹理核特征的几个组合规则和集合分类器成员的不同混合。实验结果表明,与最佳单一分类器(PNN:89.6%)相比,分类器组合k-NN / PNN /贝叶斯和多数投票规则显着提高了分类准确性(95.7%)。设计该系统的目的是在难以获得明确诊断的情况下,在日常临床实践中用作支持细胞病理学家决策的第二意见工具。

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