An Automatic Detection Method Of Cerebral Aneurysms In Time-Of-Flight Magnetic Resonance Angiography Images Based On Attention 3D U-Net
Chen Geng, Meng Chen, Ruoyu Di, Dongdong Wang, Liqin Yang, Wei Xia,, Yuxin Li, Daoying Geng

TL;DR
This paper presents an automated 3D U-Net based method with attention mechanisms for detecting cerebral aneurysms in TOF-MRA images, achieving high sensitivity and low false positives with limited training data.
Contribution
It introduces a novel end-to-end aneurysm detection approach combining artery segmentation and an improved 3D U-Net with SENet, demonstrating superior performance.
Findings
97.89% sensitivity in cross-validation
91.0% sensitivity with 2.48 false positives per case on external data
Effective detection with limited training data
Abstract
Background:Subarachnoid hemorrhage caused by ruptured cerebral aneurysm often leads to fatal consequences.However,if the aneurysm can be found and treated during asymptomatic periods,the probability of rupture can be greatly reduced.At present,time-of-flight magnetic resonance angiography is one of the most commonly used non-invasive screening techniques for cerebral aneurysm,and the application of deep learning technology in aneurysm detection can effectively improve the screening effect of aneurysm.Existing studies have found that three-dimensional features play an important role in aneurysm detection,but they require a large amount of training data and have problems such as a high false positive rate. Methods:This paper proposed a novel method for aneurysm detection.First,a fully automatic cerebral artery segmentation algorithm without training data was used to extract the volume of…
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Taxonomy
TopicsIntracranial Aneurysms: Treatment and Complications · Brain Tumor Detection and Classification · Retinal Imaging and Analysis
MethodsTest · Sigmoid Activation · Average Pooling · Softmax · Kaiming Initialization · Global Average Pooling · Dense Connections · Squeeze-and-Excitation Block · Convolution · SENet
