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首页> 外文期刊>Applied Soft Computing >A hybrid Grey Wolf Optimization and Particle Swarm Optimization with C4.5 approach for prediction of Rheumatoid Arthritis
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A hybrid Grey Wolf Optimization and Particle Swarm Optimization with C4.5 approach for prediction of Rheumatoid Arthritis

机译:杂交灰狼优化和粒子群优化与C4.5方法以预测类风湿性关节炎

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摘要

Rheumatoid Arthritis (RA) is a type of dreadful autoimmune disease that affects the entire human body, especially joints. Early diagnosis of RA is a challenging task for General Physicians, since the actual triggering mechanism is unpredictable. The capability of C4.5 was explored using the hybridization of Grey Wolf Optimization (GWO) Particle Swarm Optimization (PSO) to develop an effective RA prediction system. In this work, firstly, PSO was applied for selecting the diversified initial positions. Secondly GWO was used to update the current positions of the population from the search space to get the optimal features for better classification. Subsequently, the selected features were given as an input to the C4.5 approach and developed a final RA predictor model. The proposed HGWO-C4.5 was meticulously examined based on real time patient's data, which included factors that influence RA prediction by utilizing both RA and Non-RA information. To validate the proposed HGWO-C4.5, with other meta-heuristics based methods including GWO based C4.5, PSO based C4.5 and individual C4.5 method. The Cross-validation results show that HGWO-C4.5 has achieved an overall average accuracy of 86.36% from three other approaches, which was similar to 6%-14% higher than those attainable using the individual predictors. Furthermore, HGWO-C4.5 has achieved an overall average accuracy of 84% on independent datasets evaluation, which was 8.61% higher than those yielded by the state-of-the-art predictors. This is the first predictor model that includes feature selection and classification for RA prediction to the best of our knowledge. (c) 2020 Elsevier B.V. All rights reserved.
机译:类风湿性关节炎(RA)是一种可怕的自身免疫疾病,影响整个人体,尤其是关节。由于实际触发机制是不可预测的,因此,RA的早期诊断是一项有挑战性的任务,因为实际触发机制是不可预测的。使用灰狼优化(GWO)粒子群优化(PSO)的杂交来探讨C4.5的能力来开发有效的RA预测系统。在这项工作中,首先,申请PSO来选择多元化的初始位置。其次,GWO用于更新搜索空间的当前人口的位置,以获得最佳功能以获得更好的分类。随后,将所选特征作为C4.5的输入给出,并开发了最终的RA预测器模型。基于实时患者的数据,所提出的HGWO-C4.5被核心检查,其中包括利用RA和非RA信息影响RA预测的因素。为了验证提出的HGWO-C4.5,与其他基于元启发式的方法,包括基于GWO的C4.5,基于PSO的C4.5和单独的C4.5方法。交叉验证结果表明,HGWO-C4.5从其他三种方法实现了86.36%的总体平均精度,比使用个人预测因子可实现的6%-14%。此外,Hgwo-C4.5在独立数据集评估中实现了84%的总体平均精度,比最先进的预测因子产生的高出8.61%。这是第一个预测模型,包括以我们的知识为RA预测的特征选择和分类。 (c)2020 Elsevier B.V.保留所有权利。

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