Three-Dimensional, Right Ventricular Surface Strain Computation from Three-Dimensional Echocardiographic Images from Patients with Pediatric Pulmonary Hypertension
JOURNAL OF BIOMECHANICAL ENGINEERING-TRANSACTIONS OF THE ASME(2023)
Univ Colorado Anschutz Med Campus
Abstract
Right Ventricular (RV) dysfunction is routinely assessed with echocardiographic-derived global longitudinal strain (GLS). GLS is measured from a two-dimensional echo image and is increasingly accepted as a means for assessing RV function. However, any two-dimensional (2D) analysis cannot visualize the asymmetrical deformation of the RV nor visualize strain over the entire RV surface. We believe three-dimensional surface (3DS) strain, obtained from 3D echo will better evaluate myocardial mechanics. Components of 3DS strain (longitudinal, LS; circumferential, CS; longitudinal-circumferential shear, Gamma(CL); principal strains PSMax and PSMin; max shear, Gamma(Max); and principal angle theta(Max)) were computed from RV surface meshes obtained with 3D echo from 50 children with associated pulmonary arterial hypertension (PAH), 43 children with idiopathic PAH, and 50 healthy children by computing strains from a discretized displacement field. All 3DS freewall (FW) normal strain (LS, CS, PSMax, and PSMin) showed significant decline at end-systole in PH groups (p < 0.0001 for all), as did FW-Gamma(Max) (p = 0.0012). FW-theta(Max) also changed in disease (p < 0.0001). Limits of agreement analysis suggest that 3DS LS, PSMax, and PSMin are related to GLS. 3DS strains showed significant heterogeneity over the 3D surface of the RV. Components of 3DS strain agree with existing clinical strain measures, well classify normal -versus- PAH subjects, and suggest that strains change direction on the myocardial surface due to disease. This last finding is similar to that of myocardial fiber realignment in disease, but further work is needed to establish true associations.
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Key words
Left Ventricular Function,Right Heart Assessment,Strain Imaging,Prosthetic Valves Evaluation
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