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A robust swarm intelligence-based feature selection model for neuro-fuzzy recognition of mild cognitive impairment from resting-state fMRI

机译:基于强大的基于群体的智能识别休息状态FMRI的神经模糊认知障碍识别特征选择模型

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Individuals diagnosed with mild cognitive impairment (MCI) are at a high risk of transition to Alzheimer's disease (AD), but a diagnosis of MCI is challenging. Resting-state functional magnetic resonance imaging (rs-fMRI) is a promising tool for identifying patients with MCI, but an accurate and robust analysis method is needed to extract discriminative rs-fMRI features for classification between MCI patients and healthy people. In this paper, a new rs-fMRI data analysis approach based on Chaotic Binary Grey Wolf Optimization (CBGWO) and Adaptive Neuro-Fuzzy Inference System (ANFIS), namely (CBGWO-ANFIS), is presented to distinguish MCI patients based on rs-fMRI. CBGWO is a new feature selection model that attempts to reduce the number of features without loss of significant information for classification, and it uses the naive Bayes criterion as a part of the objective function. Based on the chaos theory, the important parameters of GWO are estimated and tuned by using ten different chaos sequence maps. Subsequently, ANFIS is used to classify MCI patients and healthy people based on the subset of features retained by CBGWO. Experiments were carried out on 62 MCI patients and 65 normal controls (NC). Fractional amplitude of low frequency fluctuation (f-ALFF) was extracted from rs-fMRI as features. The results indicate that the proposed CBGWO-ANFIS approach with the Chebyshev chaos map shows a higher accuracy (around 86%), higher convergence speed, and shorter execution time than other chaos maps. Further, the proposed approach outperforms the conventional machine learning techniques and the recent meta-heuristic optimization algorithms. This study indicates that the proposed CBGWO-ANFIS approach on rs-fMRI could be a potential tool for early diagnosis of MCI. (C) 2019 Elsevier Inc. All rights reserved.
机译:被诊断患有轻度认知障碍(MCI)的个体是向阿尔茨海默病(AD)过渡的高风险,但诊断MCI是挑战性的。休息状态功能磁共振成像(RS-FMRI)是识别MCI患者的有希望的工具,但需要准确和稳健的分析方法来提取MCI患者和健康人之间的分类。本文介绍了一种基于混沌二进制灰狼优化(CBGWO)和自适应神经模糊推理系统(ANFIS)的新的RS-FMRI数据分析方法,即(CBGWO-ANFIS),以区分MCI患者基于RS- FMRI。 CBGWO是一个新的特征选择模型,试图减少功能的特征数而不损失分类的重要信息,并且它使用Naive Bayes标准作为目标函数的一部分。基于混沌理论,通过使用十种不同的混沌序列映射来估计和调整GWO的重要参数。随后,ANFIS用于根据CBGWO保留的特征子集对MCI患者和健康人。在62例MCI患者和65例正常对照(NC)上进行实验。从RS-FMRI作为特征提取低频波动(F-ALFF)的分数幅度。结果表明,与Chebyshev混沌图的提议的CBGWO-ANFIS方法显示了比其他混沌地图更高的精度(约86%),收敛速度较高,执行时间较短。此外,所提出的方法优于传统的机器学习技术和最近的元启发式优化算法。本研究表明,在RS-FMRI上提出的CBGWO-ANFIS方法可能是早期诊断MCI的潜在工具。 (c)2019 Elsevier Inc.保留所有权利。

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