Faisal Shaman, Aziz Alshehri, Mohammed Mehdi Badr, K. Selvam, Mohammed Mohsin Ahmed, Nazneen Mushtaque, Amit Gangopadhyay, Asharul Islam, Reyazur Rashid Irshad
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引用次数: 0
摘要
远程健康监测在传统临床环境之外跟踪病人健康状况方面发挥着举足轻重的作用。它依靠电子传感器收集重要数据,有助于早期疾病检测、预防性干预和具有成本效益的医疗保健。医疗数据分析的准确性对于早期疾病识别、患者治疗和优化社会服务至关重要,特别是随着生物医学和医疗保健领域数据利用的扩大。然而,不完整或不一致数据的存在妨碍了分析的准确性。本文介绍了一种采用基于灰狼优化的卷积神经网络(GW-CNN)的新方法,以恢复缺失数据并增强心脏疾病识别能力。所提出的方法结合了数据估算技术,用于识别和预测电子传感器数据中的缺失值,然后进行特征提取以捕捉相关信息。CNN 模型利用灰狼优化技术提高了对心脏疾病的预测能力。与现有模型的比较评估从特异性、准确性、精确性、召回率和 F1 分数等方面评估了新模型的性能。
Enhancing Cardiac Disease Prediction Through Data Recovery and Deep Learning Analysis of Electronic Sensor Data
Remote health monitoring plays a pivotal role in tracking the health of patients outside traditional clinical settings. It facilitates early disease detection, preventive interventions, and cost-effective healthcare, relying on electronic sensors to collect essential data. The accuracy of medical data analysis is paramount for early disease identification, patient treatment, and optimizing social services, particularly as data utilization expands within the biomedical and healthcare sectors. However, the presence of incomplete or inconsistent data hampers the accuracy of analysis. This paper introduces a novel approach, employing Grey Wolf Optimization-based Convolutional Neural Networks (GW-CNN), to recover missing data and enhance cardiac disease identification. The proposed method combines data imputation techniques for identifying and predicting missing values in electronic sensor data, followed by feature extraction to capture relevant information. The CNN model leverages Grey Wolf Optimization to improve its predictive capabilities for cardiac disease. Comparative evaluation against existing models assesses the new model’s performance in terms of specificity, accuracy, precision, recall, and F1 score.