Incorporating clinical parameters to improve the accuracy of angiography-derived computed fractional flow reserve

Author:

Gosling Rebecca C123ORCID,Gunn Eleanor1,Wei Hua Liang13,Gu Yuanlin13,Rammohan Vignesh13,Hughes Timothy2,Hose David Rodney123,Lawford Patricia V123ORCID,Gunn Julian P123,Morris Paul D123

Affiliation:

1. Department of Infection, Immunity and Cardiovascular Disease, Medical School , Beech Hill Road, Sheffield, S102TN , UK

2. Department of Cardiology, Sheffield Teaching Hospitals NHS Foundation Trust , Herries Road, Sheffield, S57AU , UK

3. Insigneo institute for in silico medicine , Pam Liversidge building, Sheffield, S1 3JD , UK

Abstract

Abstract Aims Angiography-derived fractional flow reserve (angio-FFR) permits physiological lesion assessment without the need for an invasive pressure wire or induction of hyperaemia. However, accuracy is limited by assumptions made when defining the distal boundary, namely coronary microvascular resistance (CMVR). We sought to determine whether machine learning (ML) techniques could provide a patient-specific estimate of CMVR and therefore improve the accuracy of angio-FFR. Methods and results Patients with chronic coronary syndromes underwent coronary angiography with FFR assessment. Vessel-specific CMVR was computed using a three-dimensional computational fluid dynamics simulation with invasively measured proximal and distal pressures applied as boundary conditions. Predictive models were created using non-linear autoregressive moving average with exogenous input (NARMAX) modelling with computed CMVR as the dependent variable. Angio-FFR (VIRTUheart™) was computed using previously described methods. Three simulations were run: using a generic CMVR value (Model A); using ML-predicted CMVR based upon simple clinical data (Model B); and using ML-predicted CMVR also incorporating echocardiographic data (Model C). The diagnostic (FFR ≤ or >0.80) and absolute accuracies of these models were compared. Eighty-four patients underwent coronary angiography with FFR assessment in 157 vessels. The mean measured FFR was 0.79 (±0.15). The diagnostic and absolute accuracies of each personalized model were: (A) 73% and ±0.10; (B) 81% and ±0.07; and (C) 89% and ±0.05, P < 0.001. Conclusion The accuracy of angio-FFR was dependent in part upon CMVR estimation. Personalization of CMVR from standard clinical data resulted in a significant reduction in angio-FFR error.

Funder

British Heart Foundation Clinical Research Training Fellowship

Wellcome Trust Clinical Research Career Development Fellowship

Wellcome Trust-Department of Health HICF

Publisher

Oxford University Press (OUP)

Subject

Energy Engineering and Power Technology,Fuel Technology

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