Zhou Chaochao, Abdalla Ramez N, An Dayeong, Faruqui Syed H A, Sadrieh Teymour, Alzein Mohayad, Nehme Rayan, Shaibani Ali, Ansari Sameer A, Cantrell Donald R
Department of Radiology, Northwestern University and Northwestern Medicine, Chicago, IL, 60611, United States.
Department of Radiology, Lurie Children's Hospital, Chicago, IL, 60611, United States.
Radiol Adv. 2024 Sep;1(3). doi: 10.1093/radadv/umae020. Epub 2024 Aug 5.
In clinical practice, digital subtraction angiography (DSA) often suffers from misregistration artifact resulting from voluntary, respiratory, and cardiac motion during acquisition. Most prior efforts to register the background DSA mask to subsequent postcontrast images rely on key point registration using iterative optimization, which has limited real-time application.
Leveraging state-of-the-art, unsupervised deep learning, we aim to develop a fast, deformable registration model to substantially reduce DSA misregistration in craniocervical angiography without compromising spatial resolution or introducing new artifacts.
We extend HyperMorph, an open source deep learning deformable registration framework, to reduce motion artifacts in DSA. Novel image similarity loss functions with vessel layer estimation were introduced to optimize background registration, making it robust to the variable presence of intravascular iodinated contrast.
A total of 516 studies with 5,240 angiographic series were collected and divided into training (5,046 series) and hold-out test (194 series) sets. Blinded algorithm rankings and Likert scores on 5-point scales (1 = worst, 5 = best) were generated by 3 practicing interventional neuroradiologists using 50 series randomly selected from the hold-out test set. Compared to traditional DSA, our learning-based background subtraction angiography (BSA) significant improved vascular fidelity (2.4 ± 0.6 for DSA vs. 3.6 ± 0.5 for BSA), subtraction artifacts (2.0 ± 0.4 for DSA vs. 3.9 ± 0.3 for BSA), and overall quality (2.1 ± 0.5 for DSA vs. 3.9 ± 0.4 for BSA) ( < .0001). Learning-based BSA also significantly outperformed affine registration-based BSA ( < .0001). The average inference time for learning-based BSA was 30 milliseconds per frame on our hardware.
The results demonstrate that deep learning deformable registration, combined with an appropriate loss function, can significantly reduce the motion artifacts that degrade DSA.
在临床实践中,数字减影血管造影(DSA)在采集过程中常因患者自主运动、呼吸运动和心脏运动而出现配准伪影。此前,大多数将背景DSA蒙片与后续造影后图像进行配准的努力都依赖于使用迭代优化的关键点配准,其在实时应用方面存在局限性。
利用最先进的无监督深度学习技术,我们旨在开发一种快速、可变形的配准模型,以在不影响空间分辨率或不引入新伪影的情况下,大幅减少颅颈血管造影中的DSA配准错误。
我们扩展了开源深度学习可变形配准框架HyperMorph,以减少DSA中的运动伪影。引入了带有血管层估计的新型图像相似性损失函数来优化背景配准,使其对血管内碘化造影剂的可变存在具有鲁棒性。
共收集了516项研究中的5240个血管造影系列,并将其分为训练集(5046个系列)和保留测试集(194个系列)。3名执业介入神经放射科医生使用从保留测试集中随机选择的50个系列,生成了盲法算法排名和5分制的李克特评分(1 = 最差,5 = 最佳)。与传统DSA相比,我们基于学习的背景减法血管造影(BSA)在血管保真度(DSA为2.4±0.6,BSA为3.6±0.5)、减法伪影(DSA为2.0±0.4,BSA为3.9±0.3)和整体质量(DSA为2.1±0.5,BSA为3.9±0.4)方面有显著改善(P <.0001)。基于学习的BSA也显著优于基于仿射配准的BSA(P <.0001)。在我们的硬件上,基于学习的BSA的平均推理时间为每帧30毫秒。
结果表明,深度学习可变形配准与适当的损失函数相结合,可以显著减少降低DSA质量的运动伪影。