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Ensemble Merit Merge Feature Selection for Enhanced Multinomial Classification in Alzheimers Dementia

机译:集合优点合并特征选择用于阿尔茨海默氏痴呆症的增强多项式分类

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摘要

The objective of this study is to develop an ensemble classifier with Merit Merge feature selection that will enhance efficiency of classification in a multivariate multiclass medical data for effective disease diagnostics. The large volumes of features extracted from brain Magnetic Resonance Images and neuropsychological tests for diagnosis lead to more complexity in classification procedures. A higher level of objectivity than what readers have is needed to produce reliable dementia diagnostic techniques. Ensemble approach which is trained with features selected from multiple biomarkers facilitated accurate classification when compared with conventional classification techniques. Ensemble approach for feature selection is experimented with classifiers like Naïve Bayes, Random forest, Support Vector Machine, and C4.5. Feature search is done with Particle Swarm Optimisation to retrieve the subset of features for further selection with the ensemble classifier. Features selected by the proposed C4.5 ensemble classifier with Particle Swarm Optimisation search, coupled with Merit Merge technique (CPEMM), outperformed bagging feature selection of SVM, NB, and Random forest classifiers. The proposed CPEMM feature selection found the best subset of features that efficiently discriminated normal individuals and patients affected with Mild Cognitive Impairment and Alzheimer's Dementia with 98.7% accuracy.
机译:这项研究的目的是开发一种具有Merit Merge功能选择的集成分类器,该分类器将提高用于有效疾病诊断的多变量多类医学数据中的分类效率。从大脑磁共振图像和神经心理学测试中提取的大量特征用于诊断,导致分类程序更加复杂。产生可靠的痴呆诊断技术需要比读者更高的客观性。与常规分类技术相比,采用从多个生物标记物中选择的特征进行训练的集成方法有助于准确分类。使用分类器(如朴素贝叶斯,随机森林,支持向量机和C4.5)对集成的特征选择方法进行了实验。使用粒子群优化技术完成特征搜索,以检索特征子集,以使用集成分类器进行进一步选择。拟议的C4.5集成分类器通过粒子群优化搜索选择的特征,再加上优点合并技术(CPEMM),在SVM,NB和随机森林分类器上的性能优于袋装特征选择。拟议的CPEMM特征选择发现了特征的最佳子集,可以以98.7%的准确度有效地区分正常个体和患有轻度认知障碍和阿尔茨海默氏痴呆的患者。

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