Back [PhD thesis] Computational anatomy as a driver of understanding structural and functional cardiac remodeling

[PhD thesis] Computational anatomy as a driver of understanding structural and functional cardiac remodeling

Author: Gabriel Bernardino

Supervisors: Bart Bijnens, Miguel Ángel González Ballester; Mathieu de Craene 

We present a statistical shape analysis framework to identify cardiac shape remodelling while accounting for individual´s natural variability and apply it in two clinical applications: comparing triathletes with controls, and comparing individuals who were born small-for-their-gestational-age (SGA) and controls. We were able to identify the shape remodelling due to the practice of endurance sport: it consisted a dilation of the left ventricle and an increase of the left ventricular myocardial mass. In the right ventricle (RV), the increase of volume was concentrated in the outflow. This changes in shape correlated with a better performance during exercise. In SGA, we found subtle differences in the RV that correlated with worse performance during exercise. These differences were bigger when SGA condition was combined with cardiovascular risk factors: smoking and overweight. Finally, we present a geometry processing technique for parcellating the RV cavity in 3 subvolumes for regional analysis without point-to-point correspondence

 

Link to manuscript: http://hdl.handle.net/10803/668213

Thesis carried out in the context of the CardioFunXion Marie Curie Industrial Network coordinated by DTIC-UPF, with the participation of Philips France, and additionally supported by the MdM program