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Gene selection for cancer classification with the help of bees

机译:蜜蜂帮助进行癌症分类的基因选择

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Background Development of biologically relevant models from gene expression data notably, microarray data has become a topic of great interest in the field of bioinformatics and clinical genetics and oncology. Only a small number of gene expression data compared to the total number of genes explored possess a significant correlation with a certain phenotype. Gene selection enables researchers to obtain substantial insight into the genetic nature of the disease and the mechanisms responsible for it. Besides improvement of the performance of cancer classification, it can also cut down the time and cost of medical diagnoses. Methods This study presents a modified Artificial Bee Colony Algorithm (ABC) to select minimum number of genes that are deemed to be significant for cancer along with improvement of predictive accuracy. The search equation of ABC is believed to be good at exploration but poor at exploitation. To overcome this limitation we have modified the ABC algorithm by incorporating the concept of pheromones which is one of the major components of Ant Colony Optimization (ACO) algorithm and a new operation in which successive bees communicate to share their findings. Results The proposed algorithm is evaluated using a suite of ten publicly available datasets after the parameters are tuned scientifically with one of the datasets. Obtained results are compared to other works that used the same datasets. The performance of the proposed method is proved to be superior. Conclusion The method presented in this paper can provide subset of genes leading to more accurate classification results while the number of selected genes is smaller. Additionally, the proposed modified Artificial Bee Colony Algorithm could conceivably be applied to problems in other areas as well.
机译:背景技术从基因表达数据开发生物学相关模型特别是,微阵列数据已成为生物信息学以及临床遗传学和肿瘤学领域中非常感兴趣的主题。与探索的基因总数相比,只有少量的基因表达数据与某种表型具有显着的相关性。基因选择使研究人员能够深入了解疾病的遗传本质及其原因。除了改善癌症分类的性能,它还可以减少医疗诊断的时间和成本。方法:本研究提出了一种改进的人工蜂群算法(ABC),以选择对癌症具有重要意义的最小数目的基因,并提高预测准确性。人们认为ABC的搜索方程式擅长勘探,但不擅长开采。为克服此限制,我们通过结合信息素的概念(它是蚁群优化(ACO)算法的主要组成部分)和一项新的操作来使蜜蜂连续交流以分享其发现的方法来修改ABC算法。结果在使用其中一个数据集对参数进行了科学调整之后,使用十个可公开获得的数据集对所提出的算法进行了评估。将获得的结果与使用相同数据集的其他作品进行比较。所提方法的性能证明是优越的。结论本文提出的方法可以提供基因子集,从而获得更准确的分类结果,同时选择的基因数目更少。另外,所提出的改进的人工蜂群算法也可以想象地应用于其他领域的问题。

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