A Deep Learning Network for Right Ventricle Segmentation in Short:Axis MRI

Gongning Luo, Ran An, Kuanquan Wang, Suyu Dong, Henggui Zhang
2016 2016 Computing in Cardiology Conference (CinC)   unpublished
The segmentation of the right ventricle (RV) myocardium on MRI is a prerequisite step for the evaluation of RV structure and function, which is of great importance in the diagnose of most cardiac diseases, such as pulmonary hypertension, congenital heart disease, coronary heart disease, and dysplasia. However, RV segmentation is considered challenging, mainly because of the complex crescent shape of the RV across slices and phases. Hence this study aims to propose a new approach to segment RV
more » ... docardium and epicardium based on deep learning. The proposed method contains two subtasks: (1) localizing the region of interest (ROI), the biventricular region which contains more meaningful features and can facilitate the RV segmentation, and (2) segmenting the RV myocardium based on the localization. The two subtasks are integrated into a joint task learning framework, in which each task is solved via two multilayer convolutional neural networks. The experiments results show that the proposed method has big potential to be further researched and applied in clinical diagnosis.
doi:10.22489/cinc.2016.139-406 fatcat:dvxnng5j7jajzfb4hjly3ofcai