Cardiac ventricle segmentation from cine MR images of pigs using 3D convolutional neural networks
Egileak: Maialen Stephens Txurio Arnoldo Santos Ángel Gaitán Jesús Ruiz
Data: 08.06.2020
Abstract
Cardiac Magnetic Resonance (MR) Imaging is widely applied for the diagnosis and follow up of cardiaovascular diseases. Particularly, in patients with Pulmonary Hypertension (PH) MR images aid detecting right ventricle (RV) hypertrophy, which is a specific sign that characterizes the disease. PH related to left heart disease is the form that accounts for most of the cases. Hence, a previous segmentation of the cardiac ventricles is essential to extract imaging biomarkers that help better characterizing PH. Lately, Convolutional Neural Networks (CNNs) based on the U-Net architecture have shown to improve the results of previous approaches for accurate cardiac ventricle segmentation, yet, the performance of automatic RV segmentation techniques is still poor. Thus, in this study we aim at comparing different approaches to segment both cardiac ventricles using 3D CNNs together with the active contour-based loss function. We propose two strategies: (1) train one model for the segmentation of each ventricle separately, and (2) train a model to segment both ventricles at once. Results suggest that specific models for each ventricle have a higher accuracy than the joint one. Moreover, the proposed architecture together with the active contour-based loss function seems to outperform previous RV segmentation approaches with a dice score of 0.89.
BIB_text
title = {Cardiac ventricle segmentation from cine MR images of pigs using 3D convolutional neural networks},
pages = {150-152},
keywds = {
Convolutional Neural Networks, Segmentation, Cardiac ventricles, Pulmonary hypertension
}
abstract = {
Cardiac Magnetic Resonance (MR) Imaging is widely applied for the diagnosis and follow up of cardiaovascular diseases. Particularly, in patients with Pulmonary Hypertension (PH) MR images aid detecting right ventricle (RV) hypertrophy, which is a specific sign that characterizes the disease. PH related to left heart disease is the form that accounts for most of the cases. Hence, a previous segmentation of the cardiac ventricles is essential to extract imaging biomarkers that help better characterizing PH. Lately, Convolutional Neural Networks (CNNs) based on the U-Net architecture have shown to improve the results of previous approaches for accurate cardiac ventricle segmentation, yet, the performance of automatic RV segmentation techniques is still poor. Thus, in this study we aim at comparing different approaches to segment both cardiac ventricles using 3D CNNs together with the active contour-based loss function. We propose two strategies: (1) train one model for the segmentation of each ventricle separately, and (2) train a model to segment both ventricles at once. Results suggest that specific models for each ventricle have a higher accuracy than the joint one. Moreover, the proposed architecture together with the active contour-based loss function seems to outperform previous RV segmentation approaches with a dice score of 0.89.
}
date = {2020-06-08},
}