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Comparative Analysis of Machine Learning Classifiers on Bioinformatics and Clinical Datasets

机译:机器学习分类器对生物信息学和临床数据集的比较分析

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Looking at the advancements in high-throughput techniques, it is easy to generate huge volume of data and with that comes a problem of processing, analyzing and verifying a data. This paper has analyzed and compared different machine learning based classification techniques for analysis of gene expressions generated through microarrays and clinical decision support using different types of health care datasets. Various classification algorithms, like Decision Tree (DT), Naïve Bayes (NB), and Neural Network (NN) were matched to find the optimum accuracy for diagnosis. The efficiencies of these classification algorithms were examined and equated using glaucoma and cancer datasets. The outcomes were compared based on various parameters, viz. accuracy, sensitivity, dimensionality, and specificity for determining classification algorithm performance. The classifiers indicated enhancements in terms of accuracy after the datasets underwent normalization. This relative analysis depicted that, essentially not a single technique of classification that performs the better than the other. Thus the potential of classification algorithms is highly dependent on several factors of the dataset to be analyzed. In the context of health care datasets, it's the features of the dataset that are the primary factors affecting the performance.
机译:观察高通量技术的进步,很容易生成大量数据,随之而来的是处理,分析和验证数据的问题。本文分析并比较了不同的基于机器学习的分类技术,这些技术用于分析通过使用不同类型的医疗保健数据集的微阵列和临床决策支持生成的基因表达。匹配各种分类算法,例如决策树(DT),朴素贝叶斯(NB)和神经网络(NN),以找到诊断的最佳准确性。使用青光眼和癌症数据集检查并等效了这些分类算法的效率。根据各种参数比较结局,即。确定分类算法性能的准确性,灵敏性,维度和特异性。在对数据集进行归一化之后,分类器指示出准确性方面的增强。这项相对分析表明,基本上没有一种分类技术比另一种分类技术表现更好。因此,分类算法的潜力高度取决于要分析的数据集的几个因素。在医疗保健数据集的上下文中,数据集的特征是影响性能的主要因素。

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