Bhurwani Mohammad Mahdi Shiraz, Sommer Kelsey N, Ionita Ciprian N
Department of Biomedical Engineering, University at Buffalo, Buffalo NY 14228.
Canon Stroke and Vascular Research Center, Buffalo, NY 14203.
Proc SPIE Int Soc Opt Eng. 2022 Feb-Mar;12036. doi: 10.1117/12.2611225. Epub 2022 Apr 4.
Quantitative angiography is a 2D/3D x-ray imaging modality that summarizes hemodynamic information using time density curve (TDC) based parameters. Estimation of the TDC parameters are susceptible to errors due to various factors including, patient motion, incomplete temporal data, imaging trigger errors etc. In this study, we tested the feasibility of using recurrent neural networks (RNN) to recover complete TDC temporal information from incomplete sequences and evaluate quantitative parameters generated from the corrected TDCs. Digital subtraction angiograms (DSAs) were collected from patients undergoing endovascular treatments and angiographic parametric imaging (API) parameters were calculated from each DSA. Each set of API parameters was used to simulate a TDC resulting in a dataset of 760 TDCs. One-third of each TDC was continuously masked from pseudo-random points past the peak height (PH) point to simulate missing/artifact information. An RNN was developed, trained and tested to generate completed/corrected TDCs. The RNN recovered complete TDC temporal information with an average mean squared error of 0.0086±0.002. Average mean absolute errors were calculated between each API parameter generated from the ground truth TDCs and RNN corrected TDCs, these were 11.02%±0.91 for time to peak, 10.97%±0.69 for mean transit time, 5.65%±0.76 for PH, and 15.08%±0.98 for area under the TDC. The change in API parameters was not clinically significant and the predictive power of the API parameters was retained. This study proved the feasibility of using RNNs to mitigate motion artifacts and incomplete angiographic acquisitions to extract accurate quantitative parameters.
定量血管造影是一种二维/三维X射线成像方式,它使用基于时间密度曲线(TDC)的参数来总结血流动力学信息。由于包括患者运动、时间数据不完整、成像触发错误等各种因素,TDC参数的估计容易出错。在本研究中,我们测试了使用递归神经网络(RNN)从不完整序列中恢复完整TDC时间信息并评估从校正后的TDC生成的定量参数的可行性。从接受血管内治疗的患者收集数字减影血管造影(DSA),并从每个DSA计算血管造影参数成像(API)参数。每组API参数用于模拟一个TDC,从而得到一个包含760个TDC的数据集。从每个TDC超过峰值高度(PH)点的伪随机点开始,连续掩盖其三分之一,以模拟缺失/伪影信息。开发、训练并测试了一个RNN,以生成完整/校正后的TDC。RNN恢复了完整的TDC时间信息,平均均方误差为0.0086±0.002。计算了从真实TDC和RNN校正后的TDC生成的每个API参数之间的平均绝对误差,峰值时间为11.02%±0.91,平均通过时间为10.97%±0.69,PH为5.65%±0.76,TDC下面积为15.08%±0.98。API参数的变化在临床上不显著,并且保留了API参数的预测能力。本研究证明了使用RNN减轻运动伪影和不完整血管造影采集以提取准确定量参数的可行性。