4.5 Article

Biventricular Interaction During Acute Left Ventricular Ischemia in Mice: A Combined In-Vivo and In-Silico Approach

Journal

ANNALS OF BIOMEDICAL ENGINEERING
Volume -, Issue -, Pages -

Publisher

SPRINGER
DOI: 10.1007/s10439-023-03293-z

Keywords

Computational model; Parameter estimation; Myocardial infarction; Biventricular interaction; Sensitivity analysis; Multiscale modeling

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Computational models are a useful tool for integrating different scales, but parameterization and matching with experimental data can be challenging. Recent advancements in data collection and model analyses have helped to overcome these challenges.
Computational models provide an efficient paradigm for integrating and linking multiple spatial and temporal scales. However, these models are difficult to parameterize and match to experimental data. Recent advances in both data collection and model analyses have helped overcome this limitation. Here, we combine a multiscale, biventricular interaction model with mouse data before and after left ventricular (LV) ischemia. Sensitivity analyses are used to identify the most influential parameters on pressure and volume predictions. The subset of influential model parameters are calibrated to biventricular pressure-volume loop data (n = 3) at baseline. Each mouse underwent left anterior descending coronary artery ligation, during which changes in fractional shortening and RV pressure-volume dynamics were recorded. Using the calibrated model, we simulate acute LV ischemia and contrast outputs at baseline and in simulated ischemia. Our baseline simulations align with the LV and RV data, and our predictions during ischemia complement recorded RV data and prior studies on LV function during myocardial infarction. We show that a model with both biventricular mechanical interaction and systems-level cardiovascular dynamics can quantitatively reproduce in-vivo data and qualitatively match prior findings from animal studies on LV ischemia.

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