Estimation of systolic blood pressure by Random Forest using heart sounds and a ballistocardiogram
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2022-10-13Autor
Gonzalez Landaeta, Rafael Eliecer
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Cufess blood pressure measurement enables unobtrusive and continuous monitoring that can
be integrated with wearable devices to extend healthcare to non-hospital settings. Most of the
current research has focused on the estimation of blood pressure based on pulse transit time or
pulse arrival time using ECG or peripheral cardiac pulse signals as proximal time references. This
study proposed the use of a phonocardiogram (PCG) and ballistocardiogram (BCG), two signals
detected noninvasively, to estimate systolic blood pressure (SBP). For this, the PCG and the BCG were
simultaneously measured in 21 volunteers in the rest, activity, and post-activity conditions. Diferent
features were considered based on the relationships between these signals. The intervals between S1
and S2 of the PCG and the I, J, and K waves of the BCG were statistically analyzed. The IJ and JK slopes
were also estimated as additional features to train the machine-learning algorithm. The intervals S1-J,
S1-K, S1-I, J-S2, and I-S2 were negatively correlated with changes in SBP (p-val< 0.01). The features
were used as explanatory variables for a regressor based on the Random Forest. It was possible to
estimate the systolic blood pressure with a mean error of 3.3 mmHg with a standard deviation of
± 5 mmHg. Therefore, we foresee that this proposal has potential applications for wearable devices
that use low-cost embedded systems.
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