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Expert Hypertension Detection System Featuring Pulse Plethysmograph Signals and Hybrid Feature Selection and Reduction Schemeopen access

Authors
Khan, Muhammad UmarAziz, SumairAkram, TallhaAmjad, FatimaIqtidar, KhushbakhtNam, YunyoungKhan, Muhammad Attique
Issue Date
Jan-2021
Publisher
Multidisciplinary Digital Publishing Institute (MDPI)
Keywords
pulse plethysmograph; biomedical signal processing; feature extraction; machine learning; feature selection and reduction; empirical mode decomposition; discrete wavelet transform; hypertension
Citation
Sensors, v.21, no.1
Journal Title
Sensors
Volume
21
Number
1
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/2123
DOI
10.3390/s21010247
ISSN
1424-8220
1424-3210
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 k-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.
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