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Performance Analysis of Evolutionary Computation (EC)/Adaptive Boosting (AB) Hybrids for Breast Cancer Classification

机译:进化计算(EC)/自适应增强(AB)杂种在乳腺癌分类中的性能分析

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摘要

A new neural network technology was developed to improve the diagnosis of breast cancer using mammogram findings. The paradigm, Adaptive Boosting (AB), focuses on finding weak learning algorithm(s) that initially need to provide slightly better than "random" performance (i.e., approximately 55%) when processing a mammogram training set. By successive development of additional architectures (using the mammogram training set), the adaptive boosting process improves performance of the basic Evolutionary Programming derived neural network architectures. The results of these several EP-derived hybrid architectures are then intelligently combined and tested using a similar validation mammogram data set. Because we were particularly interested in maximizing positive predictive value (PPV) and specificity at high sensitivity levels, the error-minimization selection method used by the EP component was replaced with a selection method favoring those solutions with the best predictive value. Preliminary results using the new fitness function were then compared with optimized results using the original fitness function. Preliminary results using the Duke University mammogram database of 500 biopsy proven samples show that this PPV-based hybrid was able to achieve (under statistical 5-fold cross-validation), on average, PPV and specificity results comparable to the best results obtained using the error-minimization hybrid.
机译:开发了一种新的神经网络技术,以利用乳房X线照片的发现改善乳腺癌的诊断。范例Adaptive Boosting(AB)专注于寻找弱学习算法,这些算法最初需要在处理乳房X线照片训练集时提供比“随机”性能稍好(即大约55%)的性能。通过相继开发其他体系结构(使用乳房X线照片训练集),自适应增强过程可提高基本的进化编程派生神经网络体系结构的性能。然后,使用相似的验证乳房X射线照片数据集,智能地组合和测试这几种源自EP的混合体系结构的结果。因为我们对在高灵敏度水平上最大化阳性预测值(PPV)和特异性特别感兴趣,所以EP组件使用的误差最小化选择方法被选择了具有最佳预测值的解决方案所取代。然后将使用新适应度函数的初步结果与使用原始适应度函数的优化结果进行比较。使用杜克大学乳腺X射线照片数据库对500个活检证实的样本进行的初步结果表明,这种基于PPV的杂交体能够(在统计5倍交叉验证下)平均获得PPV和特异性结果,与使用PPV获得的最佳结果相当。误差最小混合。

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