Constructing bilayer and volumetric atrial models at scale Articles uri icon

authors

  • Roney, Caroline H.
  • Solis Lemus, Jose Alonso
  • López Barrera, Carlos
  • Zolotarev, Alexander
  • Ulgen, Onur
  • Kerfoot, Eric
  • Bevis, Laura
  • Misghina, Semhar
  • Vidal Horrach, Caterina
  • Jaffery, Ovais A.
  • Ehnesh, Mahmoud
  • Rodero, Cristobal
  • Dharmaprani, Dhani
  • RIOS MUÑOZ, GONZALO RICARDO
  • Ganesan, Anand
  • Good, Wilson W
  • Neic, Aurel
  • Planck, Gernot
  • Hopman, Luuk H G A
  • Götte, Marco J. W.
  • Honarbakhsh, Shohreh
  • Narayan, Sanjiv M
  • Vigmond, Edward
  • Niederer, Steven

publication date

  • December 2023

start page

  • 20230038

issue

  • 6

volume

  • 13

International Standard Serial Number (ISSN)

  • 2042-8898

Electronic International Standard Serial Number (EISSN)

  • 2042-8901

abstract

  • To enable large in silico trials and personalized model predictions on clinical timescales, it is imperative that models can be constructed quickly and reproducibly. First, we aimed to overcome the challenges of constructing cardiac models at scale through developing a robust, open-source pipeline for bilayer and volumetric atrial models. Second, we aimed to investigate the effects of fibres, fibrosis and model representation on fibrillatory dynamics. To construct bilayer and volumetric models, we extended our previously developed coordinate system to incorporate transmurality, atrial regions and fibres (rule-based or data driven diffusion tensor magnetic resonance imaging (MRI)). We created a cohort of 1000 biatrial bilayer and volumetric models derived from computed tomography (CT) data, as well as models from MRI, and electroanatomical mapping. Fibrillatory dynamics diverged between bilayer and volumetric simulations across the CT cohort (correlation coefficient for phase singularity maps: left atrial (LA) 0.27 ± 0.19, right atrial (RA) 0.41 ± 0.14). Adding fibrotic remodelling stabilized re-entries and reduced the impact of model type (LA: 0.52 ± 0.20, RA: 0.36 ± 0.18). The choice of fibre field has a small effect on paced activation data (less than 12 ms), but a larger effect on fibrillatory dynamics. Overall, we developed an open-source user-friendly pipeline for generating atrial models from imaging or electroanatomical mapping data enabling in silico clinical trials at scale (https://github.com/pcmlab/atrialmtk).

keywords

  • cardiac arrhythmia; computational model; in silico trial; patient-specific cardiac model; digital twin