Estimating central blood pressure from aortic flow: development and assessment of algorithms.
Jorge Mariscal-HaranaPeter H CharltonSamuel VenninJorge AramburuMateusz Cezary FlorkowArna van EngelenTorben SchneiderHubrecht de BliekBram RuijsinkIsrael ValverdePhilipp BeerbaumHeynric GrotenhuisMarietta CharakidaPhil ChowienczykSpencer J SherwinJordi AlastrueyPublished in: American journal of physiology. Heart and circulatory physiology (2020)
Central blood pressure (cBP) is a highly prognostic cardiovascular (CV) risk factor whose accurate, invasive assessment is costly and carries risks to patients. We developed and assessed novel algorithms for estimating cBP from noninvasive aortic hemodynamic data and a peripheral blood pressure measurement. These algorithms were created using three blood flow models: the two- and three-element Windkessel (0-D) models and a one-dimensional (1-D) model of the thoracic aorta. We tested new and existing methods for estimating CV parameters (left ventricular ejection time, outflow BP, arterial resistance and compliance, pulse wave velocity, and characteristic impedance) required for the cBP algorithms, using virtual (simulated) subjects (n = 19,646) for which reference CV parameters were known exactly. We then tested the cBP algorithms using virtual subjects (n = 4,064), for which reference cBP were available free of measurement error, and clinical datasets containing invasive (n = 10) and noninvasive (n = 171) reference cBP waves across a wide range of CV conditions. The 1-D algorithm outperformed the 0-D algorithms when the aortic vascular geometry was available, achieving central systolic blood pressure (cSBP) errors ≤ 2.1 ± 9.7 mmHg and root-mean-square errors (RMSEs) ≤ 6.4 ± 2.8 mmHg against invasive reference cBP waves (n = 10). When the aortic geometry was unavailable, the three-element 0-D algorithm achieved cSBP errors ≤ 6.0 ± 4.7 mmHg and RMSEs ≤ 5.9 ± 2.4 mmHg against noninvasive reference cBP waves (n = 171), outperforming the two-element 0-D algorithm. All CV parameters were estimated with mean percentage errors ≤ 8.2%, except for the aortic characteristic impedance (≤13.4%), which affected the three-element 0-D algorithm's performance. The freely available algorithms developed in this work enable fast and accurate calculation of the cBP wave and CV parameters in datasets containing noninvasive ultrasound or magnetic resonance imaging data.NEW & NOTEWORTHY First, our proposed methods for CV parameter estimation and a comprehensive set of methods from the literature were tested using in silico and clinical datasets. Second, optimized algorithms for estimating cBP from aortic flow were developed and tested for a wide range of cBP morphologies, including catheter cBP data. Third, a dataset of simulated cBP waves was created using a three-element Windkessel model. Fourth, the Windkessel model dataset and optimized algorithms are freely available.
Keyphrases
- machine learning
- blood pressure
- deep learning
- left ventricular
- aortic valve
- big data
- magnetic resonance imaging
- pulmonary artery
- artificial intelligence
- blood flow
- hypertensive patients
- heart failure
- patient safety
- electronic health record
- aortic stenosis
- ejection fraction
- systematic review
- heart rate
- risk factors
- magnetic resonance
- aortic dissection
- high resolution
- spinal cord
- acute myocardial infarction
- emergency department
- hypertrophic cardiomyopathy
- metabolic syndrome
- computed tomography
- transcatheter aortic valve replacement
- mitral valve
- molecular docking
- quality improvement
- spinal cord injury
- end stage renal disease
- left atrial
- peritoneal dialysis
- coronary artery
- prognostic factors
- risk assessment
- weight loss
- patient reported outcomes