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基于注意力 3D U-Net 的时飞磁共振血管造影图像中脑动脉瘤的自动检测方法。

An automatic detection method of cerebral aneurysms in time-of-flight magnetic resonance angiography images based on attention 3D U-Net.

机构信息

Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, 88 Keling Road, Suzhou, 215163, China; Academy for Engineering and Technology, Fudan University, 20 Handan Road, Shanghai, 200433, China.

Biomedical Engineering, Xuzhou Medical University, 209 Tongshan Road, Xuzhou, 221004, China.

出版信息

Comput Methods Programs Biomed. 2022 Oct;225:106998. doi: 10.1016/j.cmpb.2022.106998. Epub 2022 Jul 1.

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 number of FPs per case.

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 interest, and then the 3D U-Net was improved by the 3D SENet module to establish an aneurysm detection model. Eventually a set of fully automated, end-to-end aneurysm detection methods have been formed.

RESULTS

A total of 231 magnetic resonance angiography image data were used in this study, among which 132 were training sets, 34 were internal test sets and 65 were external test sets. The presented method obtained 97.89±0.88% sensitivity in the five-fold cross-validation and obtained 90.8% sensitivity with 2.47 FPs/case in the detection of the external test sets.

CONCLUSIONS

Compared with the results of our previous studies and other studies, the method in this paper achieves the best sensitivity while maintaining low number of FPs per case. This result proves the feasibility, superiority, and further improvement potential of the improved method combining 3D U-Net and channel attention in the task of aneurysm detection.

摘要

背景

破裂脑动脉瘤引起的蛛网膜下腔出血常导致致命后果。然而,如果能在无症状期发现并治疗动脉瘤,则破裂的概率可大大降低。目前,磁共振血管造影时间飞越法是脑动脉瘤最常用的无创筛查技术之一,深度学习技术在动脉瘤检测中的应用可以有效提高动脉瘤的筛查效果。现有研究发现,三维特征在动脉瘤检测中起着重要作用,但它们需要大量的训练数据,并且存在每例假阳性率(FP)较高等问题。

方法

本文提出了一种新的动脉瘤检测方法。首先,使用无需训练数据的全自动脑动脉分割算法提取感兴趣区,然后通过 3D SENet 模块改进 3D U-Net 以建立动脉瘤检测模型。最终形成了一套全自动、端到端的动脉瘤检测方法。

结果

本研究共使用了 231 份磁共振血管造影图像数据,其中 132 份用于训练集,34 份用于内部测试集,65 份用于外部测试集。该方法在五重交叉验证中获得了 97.89±0.88%的灵敏度,在外部测试集的检测中获得了 90.8%的灵敏度和 2.47 个 FP/例。

结论

与我们之前的研究结果和其他研究相比,该方法在保持低 FP/例的同时达到了最佳的灵敏度。该结果证明了在动脉瘤检测任务中结合 3D U-Net 和通道注意力的改进方法的可行性、优越性和进一步改进的潜力。

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