首页> 外文会议>International Conference on Computer Analysis of Images and Patterns(CAIP 2007); 20070827-29; Vienna(AT) >A Statistical-Genetic Algorithm to Select the Most Significant Features in Mammograms
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A Statistical-Genetic Algorithm to Select the Most Significant Features in Mammograms

机译:选择乳房X线照片中最重要特征的统计遗传算法

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An automatic classification system into either malignant or benign microcalcification from mammograms is a helpful tool in breast cancer diagnosis. Prom a set of extracted features, a classifying method using neural networks can provide a probability estimation that can help the radiologist in his diagnosis. With this objective in mind, this paper proposes a feature selection algorithm from a massive number of features based on a statistical distance method in conjunction with a genetic algorithm (GA). The use of a statistical distance as optimality criterion was improved with genetic algorithms for selecting an appropriate subset of features, thus making this algorithm capable of performing feature selection from a massive set of initial features. Additionally, it provides a criterion to select an appropriate number of features to be employed. Experimental work was performed using Generalized Softmax Perceptrons (GSP), trained with a Strict Sense Bayesian cost function for direct probability estimation, as microcalcification classifiers. A Posterior Probability Model Selection (PPMS) algorithm was employed to determine the network complexity. Results showed that this algorithm converges into a subset of features which has a good classification rate and Area Under Curve (AUC) of the Receiver Operating Curve (ROC).
机译:从乳腺X射线照片分为恶性或良性微钙化的自动分类系统是诊断乳腺癌的有用工具。提示一组提取的特征,使用神经网络的分类方法可以提供概率估计,这可以帮助放射科医生进行诊断。考虑到这一目标,本文提出了一种基于统计距离方法结合遗传算法(GA)的大量特征选择算法。通过遗传算法选择合适的特征子集,改进了统计距离作为最佳标准的使用,从而使该算法能够从大量初始特征中进行特征选择。另外,它提供了选择合适数量的特征的准则。实验工作是使用广义Softmax感知器(GSP)作为微钙化分类器进行的,该感知器经过严格感知贝叶斯成本函数训练,可以直接进行概率估计。后验概率模型选择(PPMS)算法用于确定网络复杂度。结果表明,该算法收敛为具有良好分类率和接收器工作曲线(ROC)的曲线下面积(AUC)的特征子集。

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