@ARTICLE{10.3389/fphys.2012.00298, AUTHOR={Fazeli, Nima and Hahn, Jin-Oh}, TITLE={Estimation of cardiac output and peripheral resistance using square-wave-approximated aortic flow signal}, JOURNAL={Frontiers in Physiology}, VOLUME={3}, YEAR={2012}, URL={https://www.frontiersin.org/articles/10.3389/fphys.2012.00298}, DOI={10.3389/fphys.2012.00298}, ISSN={1664-042X}, ABSTRACT={This paper presents a model-based approach to estimation of cardiac output (CO) and total peripheral resistance (TPR). In the proposed approach, the response of cardiovascular system (CVS), described by the windkessel model, is tuned to the measurements of systolic, diastolic and mean arterial blood pressures (BP) so as to yield optimal individual- and time-specific system time constant that is used to estimate CO and TPR. Unique aspects of the proposed approach are that it approximates the aortic flow as a train of square waves and that it also assumes pressure-dependent arterial compliance, as opposed to the traditional windkessel model in which aortic flow is approximated as a train of impulses and constant arterial compliance is assumed. It was shown that the proposed model encompasses the standard windkessel model as a limiting case, and that it also yields more realistic BP waveform response than the standard windkessel model. The proposed approach has potential to outperform its standard counterpart by treating systolic, diastolic, and mean BP as independent features in estimating CO and TPR, rather than solely resorting to pulse pressure as in the case of the standard windkessel model. Experimental results from in-vivo data collected from a number of animal subjects supports the viability of the proposed approach in that it could achieve approximately 29% and 24% reduction in CO and TPR errors when compared with its standard counterpart.} }