Three-dimensional Multiscale Modelling and Simulation of Atria and Torso Electrophysiology

  1. FERRER ALBERO, ANA
Zuzendaria:
  1. Felipe Atienza Fernández Zuzendaria
  2. Rafael Sebastián Aguilar Zuzendaria
  3. Francisco Javier Saiz Rodríguez Zuzendaria

Defentsa unibertsitatea: Universitat Politècnica de València

Fecha de defensa: 2017(e)ko uztaila-(a)k 31

Epaimahaia:
  1. Pablo Laguna Lasaosa Presidentea
  2. Beatriz Ana Trenor Gomis Idazkaria
  3. Francisco Javier Chorro Gascó Kidea

Mota: Tesia

Laburpena

A better understanding of the electrical activity of the heart under physiological and pathological conditions has always been key for clinicians and researchers. Over the last years, the information in the P-wave signals has been extensively analysed to un-cover the mechanisms underlying atrial arrhythmias by localizing ectopic foci or high-frequency rotors. However, the relationship between the activation of the different areas of the atria and the characteristics of the P-wave signals or body surface poten-tial maps are still far from being completely understood. Multiscale anatomical and functional models of the heart are a new technological framework that can enable the investigation of the heart as a complex system. This thesis is centred in the construction of a multiscale framework that allows the realistic simulation of atrial and torso electrophysiology and integrates all the anatom-ical and functional descriptions described in the literature. The construction of such model involves the development of heterogeneous cellular and tissue electrophysiolo-gy models fitted to empirical data. It also requires an accurate 3D representation of the atrial anatomy, including tissue fibre arrangement, and preferential conduction axes. This multiscale model aims to reproduce faithfully the activation of the atria under physiological and pathological conditions. We use the model for two main applica-tions. First, to study the relationship between atrial activation and surface signals in sinus rhythm. This study should reveal the best places for recording P-waves signals in the torso, and which are the regions of the atria that make the most significant contri-bution to the body surface potential maps and determine the main P-wave characteris-tics. Second, to spatially cluster and classify ectopic atrial foci into clearly differenti-ated atrial regions by using the body surface P-wave integral map (BSPiM) as a bi-omarker. We develop a machine-learning pipeline trained from simulations obtained from the atria-torso model aiming to validate whether ectopic foci with similar BSPiM naturally cluster into differentiated non-intersected atrial regions, and whether new BSPiM could be correctly classified with high accuracy.