Estimation of the respiratory rate from ballistocardiograms using the Hilbert transform

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Abstract

Background: Measuring the respiratory rate is usually associated with discomfort for the patient due to contact sensors or a high time demand for healthcare personnel manually counting it. Methods: In this paper, two methods for the continuous extraction of the respiratory rate from unobtrusive ballistocardiography signals are introduced. The Hilbert transform is used to generate an amplitude-invariant phase signal in-line with the respiratory rate. The respiratory rate can then be estimated, first, by using a simple peak detection, and second, by differentiation. Results: By analysis of a sleep laboratory data set consisting of nine records of healthy individuals lasting more than 63 h and including more than 59,000 breaths, a mean absolute error of as low as 0.7 BPM for both methods was achieved. Conclusion: The results encourage further assessment for hospitalised patients and for home-care applications especially with patients suffering from diseases of the respiratory system like COPD or sleep apnoea.

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Linschmann, O., Leonhardt, S., Vehkaoja, A., & Hoog Antink, C. (2022). Estimation of the respiratory rate from ballistocardiograms using the Hilbert transform. BioMedical Engineering Online, 21(1). https://doi.org/10.1186/s12938-022-01024-4

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