冠状动脉疾病预测的新型集合人工智能方法

IF 2.2 Q3 COMPUTER SCIENCE, CYBERNETICS International Journal of Intelligent Computing and Cybernetics Pub Date : 2024-06-06 DOI:10.1108/ijicc-11-2023-0336
Ö. H. Namli, Seda Yanık, A. Erdoğan, Anke Schmeink
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引用次数: 0

摘要

目的冠状动脉疾病是世界上最常见的心血管疾病之一,可致命。传统的诊断方法以血管造影术为基础,而血管造影术是一种介入性手术,具有造影剂肾病或放射线照射等副作用,而且费用高昂。本文旨在提出一种新型人工智能(AI)方法,用于诊断冠状动脉疾病,作为传统诊断方法的有效替代方案。所提出的集合结构包括三个阶段:特征选择、分类和组合。在第一阶段,使用二元粒子群优化算法(BPSO)确定每种分类方法的重要特征。在第二阶段,使用单个分类方法。在最后阶段,使用粒子群优化算法(PSO)以优化的方式合并从单个方法中获得的预测结果,以获得更好的预测结果。 研究结果使用在 Basaksehir Çam 和樱花市医院收集的最新真实数据集测试了所提出的方法。疾病预测数据是不平衡的。因此,所提出的集合方法主要提高了 F 值和 ROC 面积,而这两项指标在不平衡分类的情况下更为突出。比较结果表明,所提出的方法平均提高了单个分类方法的 F-measure 和 ROC 面积结果约 14.5%,诊断准确率高达 96%。现有的研究大多集中在基础分类方法上。在本研究中,我们主要研究了一种有效的集合方法,该方法在医疗诊断领域的特征选择和组合阶段使用了优化方法。此外,文献中的方法通常在心脏病诊断的开放数据集上进行测试,而我们的方法则应用于真实的最新数据集。
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A novel ensemble artificial intelligence approach for coronary artery disease prediction
PurposeCoronary artery disease is one of the most common cardiovascular disorders in the world, and it can be deadly. Traditional diagnostic approaches are based on angiography, which is an interventional procedure having side effects such as contrast nephropathy or radio exposure as well as significant expenses. The purpose of this paper is to propose a novel artificial intelligence (AI) approach for the diagnosis of coronary artery disease as an effective alternative to traditional diagnostic methods.Design/methodology/approachIn this study, a novel ensemble AI approach based on optimization and classification is proposed. The proposed ensemble structure consists of three stages: feature selection, classification and combining. In the first stage, important features for each classification method are identified using the binary particle swarm optimization algorithm (BPSO). In the second stage, individual classification methods are used. In the final stage, the prediction results obtained from the individual methods are combined in an optimized way using the particle swarm optimization (PSO) algorithm to achieve better predictions.FindingsThe proposed method has been tested using an up-to-date real dataset collected at Basaksehir Çam and Sakura City Hospital. The data of disease prediction are unbalanced. Hence, the proposed ensemble approach improves majorly the F-measure and ROC area which are more prominent measures in case of unbalanced classification. The comparison shows that the proposed approach improves the F-measure and ROC area results of the individual classification methods around 14.5% in average and diagnoses with an accuracy rate of 96%.Originality/valueThis study presents a low-cost and low-risk AI-based approach for diagnosing heart disease compared to traditional diagnostic methods. Most of the existing research studies focus on base classification methods. In this study, we mainly investigate an effective ensemble method that uses optimization approaches for feature selection and combining stages for the medical diagnostic domain. Furthermore, the approaches in the literature are commonly tested on open-access dataset in heart disease diagnoses, whereas we apply our approach on a real and up-to-date dataset.
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CiteScore
6.80
自引率
4.70%
发文量
26
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