Ragab Mahmoud, Binyamin Sami Saeed, Alghamdi Wajdi, Althaqafi Turki, Assiri Fatmah Yousef, Al-Hanawi Mohammed Khaled, Al-Ghamdi Abdullah Al-Malaise
Information Technology Department, Faculty of Computing and Information Technology, King Abdulaziz University, Jeddah, Saudi Arabia.
Computer and Information Technology Department, The Applied College, King Abdulaziz University, Jeddah, Saudi Arabia.
Sci Rep. 2024 Dec 28;14(1):31087. doi: 10.1038/s41598-024-82019-0.
Coronary artery disease (CAD) is the main cause of death. It is a complex heart disease that is linked with many risk factors and a variety of symptoms. In the past few years, CAD has experienced a remarkable growth. Prompt risk prediction of CAD would be capable of decreasing the death rate by permitting timely and targeted treatments. Angiography is the most precise CAD diagnosis technique; however, it has several side effects and is expensive. Multi-criteria decision-making approaches can well perceive CAD by analysing main clinical indicators like ChestPain type, ST_Slope, and HeartDisease presence. By assessing and evaluating these factors, the model improves diagnostic accuracy and aids informed clinical decisions for quick CAD detection. Mainly machine learning (ML) and deep learning (DL) use plentiful models and algorithms, which are commonly employed and very useful in exactly detecting the CAD within a short time. Current studies have employed numerous features in gathering data from patients while using dissimilar ML and DL models to attain results with high accuracy and lesser side effects and costs. This study presents a Leveraging Fuzzy Wavelet Neural Network with Decision Making Approach for Coronary Artery Disease Prediction (LFWNNDMA-CADP) technique. The presented LFWNNDMA-CADP technique focuses on the multi-criteria decision-making model for predicting CAD using biomedical data. In the LFWNNDMA-CADP method, the data pre-processing stage utilizes Z-score normalization to convert an input data into a uniform format. Furthermore, the improved ant colony optimization (IACO) method is used for electing an optimum sub-set of features. Furthermore, the classification of CAD is accomplished by utilizing the fuzzy wavelet neural network (FWNN) technique. Finally, the hyperparameter tuning of the FWNN model is accomplished by employing the hybrid crayfish optimization algorithm with the self-adaptive differential evolution (COASaDE) technique. The simulation outcomes of the LFWNNDMA-CADP approach are investigated under a benchmark database. The experimental validation of the LFWNNDMA-CADP approach portrayed a superior accuracy value of 99.49% over existing techniques.
冠状动脉疾病(CAD)是主要的死亡原因。它是一种复杂的心脏病,与许多风险因素和多种症状相关。在过去几年中,CAD的发病率显著上升。对CAD进行及时的风险预测能够通过实现及时且有针对性的治疗来降低死亡率。血管造影术是最精确的CAD诊断技术;然而,它有一些副作用且费用高昂。多标准决策方法可以通过分析诸如胸痛类型、ST段斜率和是否存在心脏病等主要临床指标来很好地识别CAD。通过评估这些因素,该模型提高了诊断准确性,并有助于做出明智的临床决策以快速检测CAD。主要是机器学习(ML)和深度学习(DL)使用大量的模型和算法,这些模型和算法通常被用于在短时间内准确检测CAD,并且非常有用。当前的研究在从患者收集数据时采用了众多特征,同时使用不同的ML和DL模型以获得高精度、低副作用和低成本的结果。本研究提出了一种用于冠状动脉疾病预测的基于决策方法的模糊小波神经网络(LFWNNDMA-CADP)技术。所提出的LFWNNDMA-CADP技术专注于使用生物医学数据预测CAD的多标准决策模型。在LFWNNDMA-CADP方法中,数据预处理阶段利用Z分数归一化将输入数据转换为统一格式。此外,改进的蚁群优化(IACO)方法用于选择最优特征子集。此外,利用模糊小波神经网络(FWNN)技术完成CAD的分类。最后,通过采用具有自适应差分进化的混合小龙虾优化算法(COASaDE)技术完成FWNN模型的超参数调整。在一个基准数据库下研究了LFWNNDMA-CADP方法的仿真结果。LFWNNDMA-CADP方法的实验验证表明,其准确率高达99.49%,优于现有技术。