4.6 Article

Cheyne-Stokes Respiration Perception via Machine Learning Algorithms

期刊

ELECTRONICS
卷 11, 期 6, 页码 -

出版社

MDPI
DOI: 10.3390/electronics11060958

关键词

CSI; non-invasive detection; Cheyne-Stokes respiration; USRP

资金

  1. Fundamental Research Funds for the Central Universities [JB180205]

向作者/读者索取更多资源

With the development of science and technology, transparent and non-invasive general computing is being applied to disease diagnosis and medical detection. This study proposes a microwave sensing method based on channel state information to qualitatively detect the breathing patterns of heart failure patients in a non-contact manner. The results show that the system accuracy of the support vector machine is 97%, which can assist medical workers in identifying Cheyne-Stokes respiration symptoms in heart failure patients.
With the development of science and technology, transparent, non-invasive general computing is gradually applied to disease diagnosis and medical detection. Universal software radio peripherals (USRP) enable non-contact awareness based on radio frequency signals. Cheyne-Stokes respiration has been reported as a common symptom in patients with heart failure. Compared with the disadvantages of traditional detection equipment, a microwave sensing method based on channel state information (CSI) is proposed to qualitatively detect the normal breathing and Cheyne-Stokes breathing of patients with heart failure in a non-contact manner. Firstly, USRP is used to collect subjects' respiratory signals in real time. Then the CSI waveform is filtered, smoothed and normalized, and the relevant features are defined and extracted from the signal. Finally, the machine learning classification algorithm is used to establish a recognition model to detect the Cheyne-Stokes respiration of patients with heart failure. The results show that the system accuracy of support vector machine (SVM) is 97%, which can assist medical workers to identify Cheyne-Stokes respiration symptoms of patients with heart failure.

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