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Multi-objective techniques for feature selection and classification in digital mammography

机译:数字乳房X线摄影特征选择和分类的多目标技术

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Feature selection is a crucial stage in the design of a computer-aided classification system for breast cancer diagnosis. The main objective of the proposed research design is to discover the use of multi-objective particle swarm optimization (MOPSO) and Nondominated sorting genetic algorithm-III (NSGA-III) for feature selection in digital mammography. The Pareto-optimal fronts generated by MOPSO and NSGA-III for two conflicting objective functions are used to select optimal features. An artificial neural network (ANN) is used to compute the fitness of objective functions. The importance of features selected by MOPSO and NSGA-III are assessed using artificial neural networks. The experimental results show that MOPSO based optimization is superior to NSGA-III. MOPSO achieves high accuracy with a 55% feature reduction. MOPSO based feature selection and classification deliver an efficiency of 97.54% with 98.22% sensitivity, 96.82% specificity, 0.9508 Cohen's kappa coefficient, and area under curve A(Z) = 0.983 +/- 0.003.
机译:特征选择是乳腺癌诊断的计算机辅助分类系统设计中的关键阶段。该研究设计的主要目的是发现数字乳房X线摄影中的特征选择使用多目标粒子群优化(MOPSO)和NondoMinated分类遗传算法-III(NSGA-III)。 MOPSO和NSGA-III生成的帕累托最佳前端用于两个冲突的目标函数用于选择最佳功能。人工神经网络(ANN)用于计算目标功能的适应性。使用人工神经网络评估MOPSO和NSGA-III选择的特征的重要性。实验结果表明,MOPSOSO的优化优于NSGA-III。 MOPSO可实现高精度,减少55%。基于MOPSO的特征选择和分类,效率为97.54%,灵敏度为98.22%,特异性为96.82%,0.9508 Cohen的Kappa系数,曲线A(Z)= 0.983 +/- 0.003。

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