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基于脉搏容积图信号以及混合特征选择与约简方案的专家高血压检测系统

Expert Hypertension Detection System Featuring Pulse Plethysmograph Signals and Hybrid Feature Selection and Reduction Scheme.

作者信息

Khan Muhammad Umar, Aziz Sumair, Akram Tallha, Amjad Fatima, Iqtidar Khushbakht, Nam Yunyoung, Khan Muhammad Attique

机构信息

Department of Electronics Engineering, University of Engineering and Technology Taxila, Taxila 47050, Pakistan.

Department of Electrical and Computer Engineering, COMSATS University Islamabad, Wah Campus, Wah Cantonment, Islamabad 45550, Pakistan.

出版信息

Sensors (Basel). 2021 Jan 2;21(1):247. doi: 10.3390/s21010247.

Abstract

Hypertension is an antecedent to cardiac disorders. According to the World Health Organization (WHO), the number of people affected with hypertension will reach around 1.56 billion by 2025. Early detection of hypertension is imperative to prevent the complications caused by cardiac abnormalities. Hypertension usually possesses no apparent detectable symptoms; hence, the control rate is significantly low. Computer-aided diagnosis based on machine learning and signal analysis has recently been applied to identify biomarkers for the accurate prediction of hypertension. This research proposes a new expert hypertension detection system (EHDS) from pulse plethysmograph (PuPG) signals for the categorization of normal and hypertension. The PuPG signal data set, including rich information of cardiac activity, was acquired from healthy and hypertensive subjects. The raw PuPG signals were preprocessed through empirical mode decomposition (EMD) by decomposing a signal into its constituent components. A combination of multi-domain features was extracted from the preprocessed PuPG signal. The features exhibiting high discriminative characteristics were selected and reduced through a proposed hybrid feature selection and reduction (HFSR) scheme. Selected features were subjected to various classification methods in a comparative fashion in which the best performance of 99.4% accuracy, 99.6% sensitivity, and 99.2% specificity was achieved through weighted -nearest neighbor (KNN-W). The performance of the proposed EHDS was thoroughly assessed by tenfold cross-validation. The proposed EHDS achieved better detection performance in comparison to other electrocardiogram (ECG) and photoplethysmograph (PPG)-based methods.

摘要

高血压是心脏疾病的一个先兆。根据世界卫生组织(WHO)的数据,到2025年,受高血压影响的人数将达到约15.6亿。早期检测高血压对于预防心脏异常引起的并发症至关重要。高血压通常没有明显的可检测症状;因此,控制率非常低。基于机器学习和信号分析的计算机辅助诊断最近已被应用于识别生物标志物,以准确预测高血压。本研究提出了一种新的专家高血压检测系统(EHDS),该系统基于脉搏容积图(PuPG)信号对正常和高血压进行分类。从健康和高血压受试者那里获取了包含丰富心脏活动信息的PuPG信号数据集。通过经验模态分解(EMD)对原始PuPG信号进行预处理,将信号分解为其组成成分。从预处理后的PuPG信号中提取多域特征的组合。通过提出的混合特征选择与约简(HFSR)方案,选择并约简了具有高判别特征的特征。以比较的方式将所选特征应用于各种分类方法,其中通过加权最近邻(KNN-W)实现了99.4%的准确率、99.6%的灵敏度和99.2%的特异性的最佳性能。通过十折交叉验证对所提出的EHDS的性能进行了全面评估。与其他基于心电图(ECG)和光电容积脉搏波描记法(PPG)的方法相比,所提出的EHDS实现了更好的检测性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0b41/7794944/3c83f9574383/sensors-21-00247-g001.jpg

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