Abstract

Atherosclerotic plaque rupture and erosion are the most important mechanisms underlying the sudden plaque growth, responsible for acute coronary syndromes and even fatal cardiac events. Advances in the understanding of the culprit plaque structure and composition are already reported in the literature, however, there is still much work to be done toward in-vivo plaque visualization and mechanical characterization to assess plaque stability, patient risk, diagnosis and treatment prognosis. In this work, a methodology for the mechanical characterization of the vessel wall plaque and tissues is proposed based on the combination of intravascular ultrasound (IVUS) imaging processing, data assimilation and continuum mechanics models within a high performance computing (HPC) environment. Initially, the IVUS study is gated to obtain volumes of image sequences corresponding to the vessel of interest at different cardiac phases. These sequences are registered against the sequence of the end-diastolic phase to remove transversal and longitudinal rigid motions prescribed by the moving environment due to the heartbeat. Then, optical flow between the image sequences is computed to obtain the displacement fields of the vessel (each associated to a certain pressure level). The obtained displacement fields are regarded as observations within a data assimilation paradigm, which aims to estimate the material parameters of the tissues within the vessel wall. Specifically, a reduced order unscented Kalman filter is employed, endowed with a forward operator which amounts to address the solution of a hyperelastic solid mechanics model in the finite strain regime taking into account the axially stretched state of the vessel, as well as the effect of internal and external forces acting on the arterial wall. Due to the computational burden, a HPC approach is mandatory. Hence, the data assimilation and computational solid mechanics computations are parallelized at three levels: (i) a Kalman filter level; (ii) a cardiac phase level; and (iii) a mesh partitioning level. To illustrate the capabilities of this novel methodology toward the in-vivo analysis of patient-specific vessel constituents, mechanical material parameters are estimated using in-silico and in-vivo data retrieved from IVUS studies. Limitations and potentials of this approach are exposed and discussed.

Highlights

  • Cardiovascular diseases are the principal cause of death and morbidity worldwide (Mathers et al, 2016)

  • Moireau and Chapelle (2011) presented a reduced order Kalman filter based on the unscented transform that offers an interesting alternative to the extended Kalman filter (EKF) method

  • We present a novel approach to construct patientspecific mechanical models of the arterial wall using in-vivo data from intravascular ultrasound (IVUS) studies

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Summary

INTRODUCTION

Cardiovascular diseases are the principal cause of death and morbidity worldwide (Mathers et al, 2016). In more recent works, Moireau and Chapelle (2011) presented a reduced order Kalman filter based on the unscented transform (abbreviated as ROUKF) that offers an interesting alternative to the EKF method Such an approach does not require neither linearization nor calculation of the tangent operator of the non-linear model, which substantially eases its implementation. We present a novel approach to construct patientspecific mechanical models of the arterial wall using in-vivo data from IVUS studies In a nutshell, this approach integrates the realms of image processing, optical flow, continuum mechanics, and filtering data assimilation to effectively merge patientspecific data with mechanical models, toward the in-vivo estimation of material properties.

METHODS
Image Processing
Mechanical Setup for the Arterial Wall
Forward Problem
Numerical Methods
Data Assimilation
The correction step
Parallelization Scheme
RESULTS
Uncertainty Parameters Sensitivity
Boundary Conditions Sensitivity
Test 1
Test 2
Effects of Preload and Axial Stretch
In-Vivo Cases
DISCUSSIONS
FINAL REMARKS

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