To improve the performance of most neuroimage analysis pipelines, brain extraction is used as a fundamental first step in the image processing. However, in the case of fetal brain development for routing clinical assessment, there is a need for a reliable Ultrasound (US)-specific tool. In this work we propose a fully automated CNN approach to fetal brain extraction from 3D US clinical volumes with minimal preprocessing. Our method accurately and reliably extracts the brain regardless of the large data variations in acquisition (eg. shadows, occlusions) inherent in this imaging modality. It also performs consistently throughout a gestational age range between 14 and 31 weeks, regardless of the pose variation of the subject, the scale, a...
The first trimester fetal ultrasound scan is important to confirm fetal viability, to estimate the g...
Obstetric ultrasound is a fundamental ingredient of modern prenatal care with many applications incl...
We propose a fully three-dimensional Convolutional Regression Network (CRN) for the task of predicti...
Brain extraction (masking of extra-cranial tissue) and alignment are fundamental first steps of most...
The fetal brain undergoes extensive morphological changes throughout pregnancy, which can be visuall...
During routine ultrasound assessment of the fetal brain for biometry estimation and detection of fet...
Fetal head segmentation is a crucial step in measuring the fetal head circumference (HC) during gest...
Ultrasound screening has been used for decades as the main modality to examine fetal brain developme...
The all-embracing morphological changes in fetal brain development in the whole time pregnancy are v...
The quantification of subcortical volume development from 3D fetal ultrasound can provide important ...
Fetal resting-state functional magnetic resonance imaging (rs-fMRI) has emerged as a critical new ap...
Objective. This work investigates the use of deep convolutional neural networks (CNN) to automatical...
Three-dimensional (3D) fetal neurosonography is used clinically to detect cerebral abnormalities and...
Abstract The goal of this study was to evaluate the maturity of current Deep Learning classification...
High-resolution volume reconstruction from multiple motion-corrupted stacks of 2D slices plays an in...
The first trimester fetal ultrasound scan is important to confirm fetal viability, to estimate the g...
Obstetric ultrasound is a fundamental ingredient of modern prenatal care with many applications incl...
We propose a fully three-dimensional Convolutional Regression Network (CRN) for the task of predicti...
Brain extraction (masking of extra-cranial tissue) and alignment are fundamental first steps of most...
The fetal brain undergoes extensive morphological changes throughout pregnancy, which can be visuall...
During routine ultrasound assessment of the fetal brain for biometry estimation and detection of fet...
Fetal head segmentation is a crucial step in measuring the fetal head circumference (HC) during gest...
Ultrasound screening has been used for decades as the main modality to examine fetal brain developme...
The all-embracing morphological changes in fetal brain development in the whole time pregnancy are v...
The quantification of subcortical volume development from 3D fetal ultrasound can provide important ...
Fetal resting-state functional magnetic resonance imaging (rs-fMRI) has emerged as a critical new ap...
Objective. This work investigates the use of deep convolutional neural networks (CNN) to automatical...
Three-dimensional (3D) fetal neurosonography is used clinically to detect cerebral abnormalities and...
Abstract The goal of this study was to evaluate the maturity of current Deep Learning classification...
High-resolution volume reconstruction from multiple motion-corrupted stacks of 2D slices plays an in...
The first trimester fetal ultrasound scan is important to confirm fetal viability, to estimate the g...
Obstetric ultrasound is a fundamental ingredient of modern prenatal care with many applications incl...
We propose a fully three-dimensional Convolutional Regression Network (CRN) for the task of predicti...