Vascular Adaptation: Pattern Formation and Cross Validation between an Agent Based Model and a Dynamical System
Authored by Marc Garbey, Stefano Casarin, Scott A Berceli
Date Published: 2017
DOI: 10.1016/j.jtbi.2017.06.013
Sponsors:
United States National Institutes of Health (NIH)
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Flow charts
Mathematical description
Model Code URLs:
Model code not found
Abstract
Myocardial infarction is the global leading cause of mortality (Go et
al., 2014). Coronary artery occlusion is its main etiology and it is
commonly treated by Coronary Artery Bypass Graft (CABG) surgery (Wilson
et al, 2007). The long-term outcome remains unsatisfactory (Benedetto,
2016) as the graft faces the phenomenon of restenosis during the
post-surgery, which consists of re-occlusion of the lumen and usually
requires secondary intervention even within one year after the initial
surgery (Harskamp, 2013). In this work, we propose an extensive study of
the restenosis phenomenon by implementing two mathematical models
previously developed by our group: a heuristic Dynamical System (DS)
(Garbey and Berceli, 2013), and a stochastic Agent Based Model (ABM)
(Garbey et al., 2015).
With an extensive use of the ABM, we retrieved the pattern formations of
the cellular events that mainly lead the restenosis, especially focusing
on mitosis in intima, caused by alteration in shear stress, and mitosis
in media, fostered by alteration in wall tension. A deep understanding
of the elements at the base of the restenosis is indeed crucial in order
to improve the final outcome of vein graft bypass.
We also turned the ABM closer to the physiological reality by abating
its original assumption of circumferential symmetry. This allowed us to
finely replicate the trigger event of the restenosis, i.e. the loss of
the endothelium in the early stage of the post-surgical follow up
(Roubos et al., 1995) and to simulate the encroachment of the lumen in a
fashion aligned with histological evidences (Owens et al., 2015).
Finally, we cross-validated the two models by creating an accurate
matching procedure. In this way we added the degree of accuracy given by
the ABM to a simplified model (DS) that can serve as powerful predictive
tool for the clinic. (C) 2017 The Authors. Published by Elsevier Ltd.
Tags
Adaptation
Model
restenosis
disease
Preservation
Stress
American-heart-association
Surgery
Update
Vein graft
Cross validation
Pattern
formation
Vein graft failure
Intimal hyperplasia
Arterialization
Artery