Department of Disaster Medicine, Fukushima Medical University Hospital, Fukushima, Japan.
Department of Radiology, Fukushima Medical University Hospital, Fukushima, Japan.
Radiol Phys Technol. 2024 Dec;17(4):862-868. doi: 10.1007/s12194-024-00841-7. Epub 2024 Sep 9.
The aim of this study was to optimise the vessel angle as well as the stack number from the profiles of carbon dioxide digital subtraction angiography (CO-DSA) images of a water phantom containing an artificial vessel tilted at different angles which imitate arteries in the body. The artificial vessel was tilted at 0°, 15°, and 30° relative to the horizontal axis with its centre as the pivot point, and CO-DSA images were acquired at each vessel tilt angle. The maximum opacity method was used to stack up to four images of the next frame one by one. The signal-to-noise ratio (SNR) was determined from the profile curves. The Wilcoxon rank sum test was used to evaluate whether the profile curve and SNR differed depending on the vessel tilt angle or stack number, and a p-value of less than 0.05 was considered statistically significant. Images acquired at 0° had a significantly lower SNR than images acquired at 15° (p = 0.10). When the vessel angle was 30°, the profile curves were significantly improved (p < 0.05) when two or more images were stacked over the original image. Images with a good SNR were acquired at the vessel tilt angle of 15°, and the shape of the profile curve was improved when two or more images were stacked on the original image. This study demonstrates that the quality of images acquired using CO-DSA can be significantly improved through parameter optimisation for image acquisition and post-processing.
本研究旨在优化血管角度以及堆叠数量,从包含以人工血管为中心、以不同角度倾斜的水模体的二氧化碳数字减影血管造影(CO-DSA)图像的轮廓中进行优化。人工血管相对于水平轴以 0°、15°和 30°的角度倾斜,并且在每个血管倾斜角度获取 CO-DSA 图像。使用最大不透明度方法将下一帧的四张图像依次堆叠。从轮廓曲线确定信噪比(SNR)。使用 Wilcoxon 秩和检验评估轮廓曲线和 SNR 是否因血管倾斜角度或堆叠数量而不同,并且 p 值小于 0.05 被认为具有统计学意义。以 0°获取的图像的 SNR 明显低于以 15°获取的图像(p=0.10)。当血管角度为 30°时,与原始图像相比,堆叠两个或更多图像可显著改善轮廓曲线(p<0.05)。在血管倾斜角度为 15°时可获得 SNR 良好的图像,并且当在原始图像上堆叠两个或更多图像时,轮廓曲线的形状得到改善。本研究表明,通过对图像获取和后处理的参数优化,可以显著提高 CO-DSA 获取的图像质量。