Department of Simulation and Graphics, Otto-von-Guericke University Magdeburg, Germany.
Department of Computer Science, University Politehnica of Bucharest, Romania.
Comput Biol Med. 2021 Jun;133:104344. doi: 10.1016/j.compbiomed.2021.104344. Epub 2021 Mar 18.
Manual or semi-automated segmentation of the lower extremity arterial tree in patients with Peripheral arterial disease (PAD) remains a notoriously difficult and time-consuming task. The complex manifestations of the disease, including discontinuities of the vascular flow channels, the presence of calcified atherosclerotic plaque in close vicinity to adjacent bone, and the presence of metal or other imaging artifacts currently preclude fully automated vessel identification. New machine learning techniques may alleviate this challenge, but require large and reasonably well segmented training data.
We propose a novel semi-automatic vessel tracking approach for peripheral arteries to facilitate and accelerate the creation of annotated training data by expert cardiovascular radiologists or technologists, while limiting the number of necessary manual interactions, and reducing processing time. After automatically classifying blood vessels, bones, and other tissue, the relevant vessels are tracked and organized in a tree-like structure for further visualization.
We conducted a pilot (N = 9) and a clinical study (N = 24) in which we assess the accuracy and required time for our approach to achieve sufficient quality for clinical application, with our current clinically established workflow as the standard of reference. Our approach enabled expert physicians to readily identify all clinically relevant lower extremity arteries, even in problematic cases, with an average sensitivity of 92.9%, and an average specificity and overall accuracy of 99.9%.
Compared to the clinical workflow in our collaborating hospitals (28:40 ± 7:45 [mm:ss]), our approach (17:24 ± 6:44 [mm:ss]) is on average 11:16 [mm:ss] (39%) faster.
下肢动脉树在周围血管疾病(PAD)患者中的手动或半自动分割仍然是一项非常困难和耗时的任务。该疾病的复杂表现,包括血管流道的不连续性、紧邻相邻骨骼的钙化粥样斑块的存在以及金属或其他成像伪影的存在,目前无法完全实现自动血管识别。新的机器学习技术可能会缓解这一挑战,但需要大量且合理分割良好的训练数据。
我们提出了一种新的用于外周动脉的半自动血管跟踪方法,以促进和加速专家心血管放射科医生或技师创建带注释的训练数据,同时限制所需的手动交互次数,并减少处理时间。在自动分类血管、骨骼和其他组织后,相关血管将被跟踪并组织成树状结构,以便进一步可视化。
我们进行了一项试点研究(N=9)和一项临床研究(N=24),评估了我们的方法达到足够临床应用质量所需的准确性和时间,以我们当前临床既定的工作流程作为参考标准。我们的方法使专家医生能够轻松识别所有临床相关的下肢动脉,即使在有问题的情况下,平均敏感性为 92.9%,平均特异性和总体准确性为 99.9%。
与我们合作医院的临床工作流程(28:40±7:45[mm:ss])相比,我们的方法(17:24±6:44[mm:ss])的平均速度快 11:16[mm:ss](39%)。