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首页> 外文期刊>Computers in Biology and Medicine >Characterization of mammographic masses using a gradient-based segmentation algorithm and a neural classifier.
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Characterization of mammographic masses using a gradient-based segmentation algorithm and a neural classifier.

机译:使用基于梯度的分割算法和神经分类器对乳腺摄影肿块进行表征。

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摘要

Computerized methods have recently shown a great potential in providing radiologists with a second opinion about the visual diagnosis of the malignancy of mammographic masses. The computer-aided diagnosis (CAD) system we developed for the mass characterization is mainly based on a segmentation algorithm and on the neural classification of several features computed on the segmented mass. Mass-segmentation plays a key role in most computerized systems. Our technique is a gradient-based one, showing the main characteristic that no free parameters have been evaluated on the data set used in this analysis, thus it can directly be applied to data sets acquired in different conditions without any ad hoc modification. A data set of 226 masses (109 malignant and 117 benign) has been used in this study. The segmentation algorithm works with a comparable efficiency both on malignant and benign masses. Sixteen features based on shape, size and intensity of the segmented masses are extracted and analyzed by a multi-layered perceptron neural network trained with the error back-propagation algorithm. The capability of the system in discriminating malignant from benign masses has been evaluated in terms of the receiver-operating characteristic (ROC) analysis. A feature selection procedure has been carried out on the basis of the feature discriminating power and of the linear correlations interplaying among them. The comparison of the areas under the ROC curves obtained by varying the number of features to be classified has shown that 12 selected features out of the 16 computed ones are powerful enough to achieve the best classifier performances. The radiologist assigned the segmented masses to three different categories: correctly-, acceptably- and non-acceptably-segmented masses. We initially estimated the area under ROC curve only on the first category of segmented masses (the 88.5% of the data set), then extending the classification to the second subclass (reaching the 97.8% of the data set) and finally to the whole data set, obtaining A(z)=0.805+/-0.030, 0.787+/-0.024 and 0.780+/-0.023, respectively.
机译:最近,计算机化方法显示出了巨大的潜力,可以为放射科医生提供有关乳房X线摄影肿块恶性肿瘤的视觉诊断的第二种见解。我们为质量表征开发的计算机辅助诊断(CAD)系统主要基于分割算法和基于对分割质量计算的多个特征的神经分类。大规模细分在大多数计算机系统中都起着关键作用。我们的技术是基于梯度的技术,它的主要特征是在此分析中使用的数据集上没有对自由参数进行评估,因此可以将其直接应用于在不同条件下获取的数据集,而无需进行任何特殊修改。在这项研究中使用了226个肿块(109个恶性和117个良性)的数据集。分割算法对恶性和良性肿块均具有可比的效率。通过使用错误反向传播算法训练的多层感知器神经网络,提取并分析了基于分割质量的形状,大小和强度的十六个特征。已根据接收器操作特性(ROC)分析评估了该系统区分恶性肿瘤与良性肿块的能力。已经基于特征识别能力以及它们之间相互作用的线性相关性来执行特征选择过程。通过更改要分类的特征数量而获得的ROC曲线下面积的比较表明,在16个计算出的特征中有12个选定的特征足够强大,可以实现最佳的分类器性能。放射科医生将分割的质量分为三个不同的类别:正确,可接受和不可接受的质量。我们最初仅在第一类分段质量(数据集的88.5%)上估计ROC曲线下的面积,然后将分类扩展到第二个子类(达到数据集的97.8%),最后扩展到整个数据设定,分别获得A(z)= 0.805 +/- 0.030、0.787 +/- 0.024和0.780 +/- 0.023。

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