Javascript must be enabled to continue!
DCAU-Net: dense convolutional attention U-Net for segmentation of intracranial aneurysm images
View through CrossRef
AbstractSegmentation of intracranial aneurysm images acquired using magnetic resonance angiography (MRA) is essential for medical auxiliary treatments, which can effectively prevent subarachnoid hemorrhages. This paper proposes an image segmentation model based on a dense convolutional attention U-Net, which fuses deep and rich semantic information with shallow-detail information for adaptive and accurate segmentation of MRA-acquired aneurysm images with large size differences. The U-Net model serves as a backbone, combining dense block and convolution block attention module (CBAM). The dense block is composed of a batch normalization layer, an randomly rectified linear unit activation function, and a convolutional layer, for mitigation of vanishing gradients, for multiplexing of aneurysm features, and for improving the network training efficiency. The CBAM is composed of a channel attention module and a spatial attention module, improving the segmentation performance of feature discrimination and enhancing the acquisition of key feature information. Owing to the large variation of aneurysm sizes, multi-scale fusion is performed during up-sampling, for adaptive segmentation of MRA-acquired aneurysm images. The model was tested on the MICCAI 2020 ADAM dataset, and its generalizability was validated on the clinical aneurysm dataset (aneurysm sizes: < 3 mm, 3–7 mm, and > 7 mm) supplied by the Affiliated Hospital of Qingdao University. A good clinical application segmentation performance was demonstrated.
Springer Science and Business Media LLC
Title: DCAU-Net: dense convolutional attention U-Net for segmentation of intracranial aneurysm images
Description:
AbstractSegmentation of intracranial aneurysm images acquired using magnetic resonance angiography (MRA) is essential for medical auxiliary treatments, which can effectively prevent subarachnoid hemorrhages.
This paper proposes an image segmentation model based on a dense convolutional attention U-Net, which fuses deep and rich semantic information with shallow-detail information for adaptive and accurate segmentation of MRA-acquired aneurysm images with large size differences.
The U-Net model serves as a backbone, combining dense block and convolution block attention module (CBAM).
The dense block is composed of a batch normalization layer, an randomly rectified linear unit activation function, and a convolutional layer, for mitigation of vanishing gradients, for multiplexing of aneurysm features, and for improving the network training efficiency.
The CBAM is composed of a channel attention module and a spatial attention module, improving the segmentation performance of feature discrimination and enhancing the acquisition of key feature information.
Owing to the large variation of aneurysm sizes, multi-scale fusion is performed during up-sampling, for adaptive segmentation of MRA-acquired aneurysm images.
The model was tested on the MICCAI 2020 ADAM dataset, and its generalizability was validated on the clinical aneurysm dataset (aneurysm sizes: < 3 mm, 3–7 mm, and > 7 mm) supplied by the Affiliated Hospital of Qingdao University.
A good clinical application segmentation performance was demonstrated.
Related Results
Two fully automated data-driven 3D whole-breast segmentation strategies in MRI for MR-based breast density using image registration and U-Net with a focus on reproducibility
Two fully automated data-driven 3D whole-breast segmentation strategies in MRI for MR-based breast density using image registration and U-Net with a focus on reproducibility
AbstractPresence of higher breast density (BD) and persistence over time are risk factors for breast cancer. A quantitatively accurate and highly reproducible BD measure that relie...
Mo.Se.: Mosaic image segmentation based on deep cascading learning
Mo.Se.: Mosaic image segmentation based on deep cascading learning
<div class="page" title="Page 1"><div class="layoutArea"><div class="column"><p class="VARAbstract">Mosaic is an ancient type of art used to create decorati...
Multi-scale Modelling of Segmentation
Multi-scale Modelling of Segmentation
While listening to music, people often unwittingly break down musical pieces into constituent chunks such as verses and choruses. Music segmentation studies have suggested that som...
Design and application of a rate-limiting and precise external cerebrospinal fluid drainage device in patients with carcinomatous meningitis
Design and application of a rate-limiting and precise external cerebrospinal fluid drainage device in patients with carcinomatous meningitis
Abstract
Objective
To develop a rate-limiting and precise external cerebrospinal fluid drainage device for intracranial decompression in carcinomatous Meningitis (CM).
Met...
How Useful Is Image-Based Active Learning for Plant Organ Segmentation?
How Useful Is Image-Based Active Learning for Plant Organ Segmentation?
Training deep learning models typically requires a huge amount of labeled data which is expensive to acquire, especially in dense prediction tasks such as semantic segmentation. Mo...
Estimates of Maize Plant Density from UAV RGB Images Using Faster-RCNN Detection Model: Impact of the Spatial Resolution
Estimates of Maize Plant Density from UAV RGB Images Using Faster-RCNN Detection Model: Impact of the Spatial Resolution
Early-stage plant density is an essential trait that determines the fate of a genotype under given environmental conditions and management practices. The use of RGB images taken fr...
KAT4IA: K-Means Assisted Training for Image Analysis of Field-Grown Plant Phenotypes
KAT4IA: K-Means Assisted Training for Image Analysis of Field-Grown Plant Phenotypes
High-throughput phenotyping enables the efficient collection of plant trait data at scale. One example involves using imaging systems over key phases of a crop growing season. Alth...
Generative Edge Intelligence for Securing IoT-assisted Smart Grid against Cyber-Threats
Generative Edge Intelligence for Securing IoT-assisted Smart Grid against Cyber-Threats
The critical dependence of industrial smart grid systems on cutting-edge Internet of Things (IoT) technologies has made these systems more susceptible to a diverse array of assault...