医学
狭窄
数字减影血管造影
放射科
椎动脉
减法
光学相干层析成像
断层摄影术
血管造影
数学
算术
作者
Yao Feng,WU Ting-xia,Tao Wang,Yingying Li,Mengyue Li,Long Li,Bin Yang,Xuesong Bai,Zhang Xiao,Yabing Wang,Peng Gao,Hao Chen,Yan Ma,Liqun Jiao
标识
DOI:10.1136/neurintsurg-2020-016835
摘要
Intracranial vertebral artery (V4 segment) stenosis quantification traditionally uses the narrowest stenosis diameter. However, the stenotic V4 lumen is commonly irregularly shaped. Optical coherence tomography (OCT) allows a more precise calculation of V4 geometry. We compared the narrowest diameter stenosis (DS), measured by digital subtraction angiography (DSA), with the area stenosis (AS), measured by OCT. We hypothesized that DS is the gold standard for measuring the degree of stenosis.Five neuroradiologists evaluated 49 stenosed V4 segments in a blinded protocol. V4 stenosis was measured in millimeters on DSA at its narrowest diameter. OCT was used to estimate the cross-sectional luminal area. We also used automated software to measure DS. Three different angles (anterior, lateral, and oblique views) were used for calculations, and the North American Symptomatic Carotid Endarterectomy Trial (NASCET) and Warfarin-Aspirin Symptomatic Intracranial Disease (WASID) methods were used in all measurements. Spearman's R values were calculated. Non-linear regression analysis was performed between the DS and AS, with statistically different correlations.A high correlation was observed between the WASID and NASCET methods to measure DS with observer measurement and automated software. A good correlation was found between DS measured by observers and AS measured by OCT. Non-linear regression analysis showed that only observer measurement using the oblique view and the WASID method could attain statistically significant differences, but it was weak (r=0.389).Measurement of the narrowest diameter was not a reliable predictor of the cross-sectional area of V4 stenosis. Larger studies are therefore needed to develop a new evaluation system based on V4 stenosis.
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