Early detection of cardiorespiratory complications and training monitoring using wearable ECG sensors and CNN.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
HongYuan Lu, XinMiao Feng, Jing Zhang
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引用次数: 0

Abstract

This research study demonstrates an efficient scheme for early detection of cardiorespiratory complications in pandemics by Utilizing Wearable Electrocardiogram (ECG) sensors for pattern generation and Convolution Neural Networks (CNN) for decision analytics. In health-related outbreaks, timely and early diagnosis of such complications is conclusive in reducing mortality rates and alleviating the burden on healthcare facilities. Existing methods rely on clinical assessments, medical history reviews, and hospital-based monitoring, which are valuable but have limitations in terms of accessibility, scalability, and timeliness, particularly during pandemics. The proposed scheme commences by deploying wearable ECG sensors on the patient's body. These sensors collect data by continuously monitoring the cardiac activity and respiratory patterns of the patient. The collected raw data is then transmitted securely in a wireless manner to a centralized server and stored in a database. Subsequently, the stored data is assessed using a preprocessing process which extracts relevant and important features like heart rate variability and respiratory rate. The preprocessed data is then used as input into the CNN model for the classification of normal and abnormal cardiorespiratory patterns. To achieve high accuracy in abnormality detection the CNN model is trained on labeled data with optimized parameters. The performance of the proposed scheme is evaluated and gauged using different scenarios, which shows a robust performance in detecting abnormal cardiorespiratory patterns with a sensitivity of 95% and specificity of 92%. Prominent observations, which highlight the potential for early interventions include subtle changes in heart rate variability and preceding respiratory distress. These findings show the significance of wearable ECG technology in improving pandemic management strategies and informing public health policies, which enhances preparedness and resilience in the face of emerging health threats.

利用可穿戴心电图传感器和 CNN 对心肺并发症进行早期检测和训练监控。
这项研究通过利用可穿戴式心电图(ECG)传感器生成模式和卷积神经网络(CNN)进行决策分析,展示了在大流行病中早期检测心肺并发症的有效方案。在与健康相关的疾病爆发中,及时和早期诊断此类并发症对于降低死亡率和减轻医疗机构的负担具有决定性意义。现有方法依赖于临床评估、病史回顾和基于医院的监测,这些方法很有价值,但在可及性、可扩展性和及时性方面存在局限性,尤其是在流行病期间。拟议方案首先在患者身上安装可穿戴心电图传感器。这些传感器通过持续监测患者的心脏活动和呼吸模式来收集数据。收集到的原始数据以无线方式安全地传输到中央服务器,并存储到数据库中。随后,使用预处理流程对存储的数据进行评估,提取相关的重要特征,如心率变异性和呼吸频率。预处理后的数据将作为 CNN 模型的输入,用于对正常和异常心肺模式进行分类。为了实现高精度的异常检测,CNN 模型使用优化参数在标注数据上进行训练。我们使用不同的场景对所提出方案的性能进行了评估和衡量,结果表明,该方案在检测异常心肺模式方面表现出色,灵敏度达 95%,特异度达 92%。突出的观察结果凸显了早期干预的潜力,包括心率变异性的微妙变化和之前的呼吸窘迫。这些研究结果表明,可穿戴心电图技术在改善大流行病管理策略和为公共卫生政策提供信息方面具有重要意义,可增强面对新出现的健康威胁时的准备工作和应变能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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