M Pyingkodi, R Thangarajan
Department of Computer Applications, Kongu Engineering College Erode, TamilNadu, India. Email:
Asian Pac J Cancer Prev. 2018 Feb 26;19(2):561-564. doi: 10.22034/APJCP.2018.19.2.561.
Objective: Cancer diagnosis is one of the most vital emerging clinical applications of microarray data. Due to the high dimensionality, gene selection is an important step for improving expression data classification performance. There is therefore a need for effective methods to select informative genes for prediction and diagnosis of cancer. The main objective of this research was to derive a heuristic approach to select highly informative genes. Methods: A metaheuristic approach with a Genetic Algorithm with Levy Flight (GA-LV) was applied for classification of cancer genes in microarrays. The experimental results were analyzed with five major cancer gene expression benchmark datasets. Result: GA-LV proved superior to GA and statistical approaches, with 100% accuracy for the dataset for Leukemia, Lung and Lymphoma. For Prostate and Colon datasets the GA-LV was 99.5% and 99.2% accurate, respectively. Conclusion: The experimental results show that the proposed approach is suitable for effective gene selection with all benchmark datasets, removing irrelevant and redundant genes to improve classification accuracy.
癌症诊断是微阵列数据最重要的新兴临床应用之一。由于数据的高维度性,基因选择是提高表达数据分类性能的重要步骤。因此,需要有效的方法来选择用于癌症预测和诊断的信息基因。本研究的主要目的是推导一种启发式方法来选择高信息基因。方法:将一种带有莱维飞行的遗传算法(GA-LV)的元启发式方法应用于微阵列中癌症基因的分类。使用五个主要的癌症基因表达基准数据集对实验结果进行分析。结果:GA-LV被证明优于遗传算法(GA)和统计方法,在白血病、肺癌和淋巴瘤数据集上准确率达到100%。对于前列腺癌和结肠癌数据集,GA-LV的准确率分别为99.5%和99.2%。结论:实验结果表明,所提出的方法适用于所有基准数据集的有效基因选择,去除不相关和冗余基因以提高分类准确率。