首页> 外文会议>Helenic Conference on Artificial Intelligence(AI),(SETN 2006); 20060518-20; Heraklion(GR) >Discrimination of Benign from Malignant Breast Lesions Using Statistical Classifiers
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Discrimination of Benign from Malignant Breast Lesions Using Statistical Classifiers

机译:使用统计分类器区分良性和恶性乳腺病变

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The objective of this study is to investigate the discrimination of benign from malignant breast lesions using: the linear, the feedforward neural network, the k-nearest neighbor and the boosting classifiers. Nuclear morphometric parameters from cytological smears taken by Fine Needle Aspiration (FNA) of the breast, have been measured from 193 patients. These parameters undergo an appropriate transformation and then, the classifiers are performed on the raw and on the transformed data. The results show that in terms of the raw data set all classifiers exhibit almost the same performance (overall accuracy ≡ 87%), Thus the linear classifier suffices for the discrimination of the present problem. Also, based on the previous results, one can conjecture that the use of these classifiers combined with image morphometry and statistical techniques for feature transformation, may offer useful information towards the improvement of the diagnostic accuracy of breast FNA.
机译:这项研究的目的是使用线性,前馈神经网络,k近邻和增强分类器来研究对乳腺恶性病变的良性鉴别。已对193例患者的乳腺细针穿刺术(FNA)进行的细胞学涂片检查得出了核形态学参数。这些参数经过适当的转换,然后对原始数据和转换后的数据执行分类器。结果表明,就原始数据集而言,所有分类器均表现出几乎相同的性能(总体准确度≥87%),因此线性分类器足以满足当前问题的需求。同样,根据先前的结果,可以推测,将这些分类器与图像形态计量学和统计技术结合使用以进行特征转换,可能会为提高乳房FNA的诊断准确性提供有用的信息。

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