Hybrid TABU search with SDS based feature selection for lung cancer prediction

S. Shanthi , V.S. Akshaya , J.A. Smitha , M. Bommy
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引用次数: 4

Abstract

Cancer falls under a group of diseases where abnormal growths of the cells are observed. Generally, lung cancer does not result in any type of obvious symptoms in its early stages. Among the people diagnosed with lung cancer, about 40% are found to be in an advanced stage. Thus, the motivation of the work is to present an automatic screening of lung images for early diagnosis. For this, Machine Learning (ML) methods are popularly employed as a tool among medical researchers for classifying their medical images. To improve the performance of Lung cancer detection with ML techniques, feature selection is employed. As the feature selection is a Nondeterministic Polynomial (NP) hard problem, metaheuristic algorithms are widely used for finding the optimal feature set. The Tabu Search (TS) is semi-deterministic and also tends to act as a method of local, as well as global search. The techniques are capable of discovering and further identifying the relationships and patterns among them obtained from complex datasets and are also capable of effective prediction. In this work, a new hybrid TS with Stochastic Diffusion Search (SDS) based feature selection that was employed using the Naïve Bayes, Decision tree and Neural Network (NN) classifiers to improve classification. The results demonstrate the effectiveness of the proposed TABU-SDS- NN which achieves an accuracy of 94.07%.

混合禁忌搜索与基于SDS的特征选择用于肺癌预测
癌症是一组细胞异常生长的疾病。一般来说,肺癌在其早期阶段不会出现任何类型的明显症状。在被诊断为肺癌的人中,约有40%被发现处于晚期。因此,这项工作的动机是提出一个自动筛选肺图像的早期诊断。为此,机器学习(ML)方法被医学研究人员广泛用作对医学图像进行分类的工具。为了提高机器学习技术检测肺癌的性能,采用了特征选择。由于特征选择是一个非确定性多项式(non - deterministic Polynomial, NP)难题,元启发式算法被广泛用于寻找最优特征集。禁忌搜索(TS)是半确定性的,也倾向于作为局部和全局搜索的方法。该技术能够从复杂的数据集中发现并进一步识别它们之间的关系和模式,也能够进行有效的预测。在这项工作中,一种新的混合TS与随机扩散搜索(SDS)为基础的特征选择,采用Naïve贝叶斯,决策树和神经网络(NN)分类器来改进分类。结果表明,TABU-SDS- NN的准确率为94.07%。
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