Integral-based Identification of Patient Specific Parameters for a Minimal Cardiac Model
Overview
Affiliations
A minimal cardiac model has been developed which accurately captures the essential dynamics of the cardiovascular system (CVS). However, identifying patient specific parameters with the limited measurements often available, hinders the clinical application of the model for diagnosis and therapy selection. This paper presents an integral-based parameter identification method for fast, accurate identification of patient specific parameters using limited measured data. The integral method turns a previously non-linear and non-convex optimization problem into a linear and convex identification problem. The model includes ventricular interaction and physiological valve dynamics. A healthy human state and four disease states, valvular stenosis, pulmonary embolism, cardiogenic shock and septic shock are used to test the method. Parameters for the healthy and disease states are accurately identified using only discretized flows into and out of the two cardiac chambers, the minimum and maximum volumes of the left and right ventricles, and the pressure waveforms through the aorta and pulmonary artery. These input values can be readily obtained non-invasively using echo-cardiography and ultra-sound, or invasively via catheters that are often used in Intensive Care. The method enables rapid identification of model parameters to match a particular patient condition in clinical real time (3-5 min) to within a mean value of 4-10% in the presence of 5-15% uniformly distributed measurement noise. The specific changes made to simulate each disease state are correctly identified in each case to within 10% without false identification of any other patient specific parameters. Clinically, the resulting patient specific model can then be used to assist medical staff in understanding, diagnosis and treatment selection.
Blood pressure waveform contour analysis for assessing peripheral resistance changes in sepsis.
Davidson S, Pretty C, Balmer J, Desaive T, Chase J Biomed Eng Online. 2018; 17(1):171.
PMID: 30458800 PMC: 6245924. DOI: 10.1186/s12938-018-0603-4.
Pant S, Corsini C, Baker C, Hsia T, Pennati G, Vignon-Clementel I J R Soc Interface. 2017; 14(126).
PMID: 28077762 PMC: 5310725. DOI: 10.1098/rsif.2016.0513.
Dickson J, Hewett J, Gunn C, Lynn A, Shaw G, Chase J J Diabetes Sci Technol. 2013; 7(4):913-27.
PMID: 23911173 PMC: 3879756. DOI: 10.1177/193229681300700414.
Pironet A, Desaive T, Kosta S, Lucas A, Paeme S, Collet A Biomed Eng Online. 2013; 12:8.
PMID: 23363818 PMC: 3610305. DOI: 10.1186/1475-925X-12-8.
Revie J, Stevenson D, Chase J, Hann C, Lambermont B, Ghuysen A Ann Intensive Care. 2011; 1(1):33.
PMID: 21906388 PMC: 3224493. DOI: 10.1186/2110-5820-1-33.