Automated Cerebrovascular Segmentation and Visualization of Intracranial Time-of-Flight Magnetic Resonance Angiography Based on Deep Learning.

Yuqin Min, Jing Li, Shouqiang Jia, Yuehua Li, Shengdong Nie
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Abstract

Time-of-flight magnetic resonance angiography (TOF-MRA) is a non-contrast technique used to visualize neurovascular. However, manual reconstruction of the volume render (VR) by radiologists is time-consuming and labor-intensive. Deep learning-based (DL-based) vessel segmentation technology may provide intelligent automation workflow. To evaluate the image quality of DL vessel segmentation for automatically acquiring intracranial arteries in TOF-MRA. A total of 394 TOF-MRA scans were selected, which included cerebral vascular health, aneurysms, or stenoses. Both our proposed method and two state-of-the-art DL methods are evaluated on external datasets for generalization ability. For qualitative assessment, two experienced clinical radiologists evaluated the image quality of cerebrovascular diagnostic and visualization (scoring 0-5 as unacceptable to excellent) obtained by manual VR reconstruction or automatic convolutional neural network (CNN) segmentation. The proposed CNN outperforms the other two DL-based methods in clinical scoring on external datasets, and its visualization was evaluated by readers as having the appearance of the radiologists' manual reconstructions. Scoring of proposed CNN and VR of intracranial arteries demonstrated good to excellent agreement with no significant differences (median, 5.0 and 5.0, P ≥ 12) at healthy-type scans. All proposed CNN image quality were considered to have adequate diagnostic quality (median scores > 2). Quantitative analysis demonstrated a superior dice similarity coefficient of cerebrovascular overlap (training sets and validation sets; 0.947 and 0.927). Automatic cerebrovascular segmentation using DL is feasible and the image quality in terms of vessel integrity, collateral circulation and lesion morphology is comparable to expert manual VR without significant differences.

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基于深度学习的颅内飞行时间磁共振血管造影的脑血管自动分割和可视化。
飞行时间磁共振血管成像(TOF-MRA)是一种用于观察神经血管的非对比技术。然而,放射科医生手动重建容积渲染(VR)既耗时又耗力。基于深度学习(DL)的血管分割技术可提供智能自动化工作流程。评估在 TOF-MRA 中自动获取颅内动脉的 DL 血管分割的图像质量。共选取了 394 张 TOF-MRA 扫描图像,其中包括脑血管健康、动脉瘤或狭窄。我们提出的方法和两种最先进的 DL 方法都在外部数据集上进行了泛化能力评估。在定性评估方面,两位经验丰富的临床放射科医生对通过手动 VR 重建或自动卷积神经网络(CNN)分割获得的脑血管诊断和可视化图像质量(0-5 分,从不可接受到优秀)进行了评估。在外部数据集的临床评分中,拟议的 CNN 优于其他两种基于 DL 的方法,其可视化效果被读者评价为与放射科医生的手动重建效果一致。在健康型扫描中,建议的 CNN 和 VR 对颅内动脉的评分显示出良好到极佳的一致性,没有显著差异(中位数,5.0 和 5.0,P≥12)。所有建议的 CNN 图像质量都被认为具有足够的诊断质量(中位数分数大于 2)。定量分析显示,脑血管重叠的骰子相似系数(训练集和验证集;0.947 和 0.927)更优。使用 DL 进行脑血管自动分割是可行的,而且在血管完整性、侧支循环和病变形态方面的图像质量与专家手动 VR 相当,没有显著差异。
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