ISSN 1004-4140
CN 11-3017/P

低管电压联合深度学习图像重建算法在降低胸腹部联合增强CT辐射剂量的价值

Value of Low Tube Voltage Combined with Deep Learning Image Reconstruction Algorithm to Reduce Radiation Dose in Combined Thoracoabdominal Enhanced CT

  • 摘要: 目的:探讨在胸腹部联合增强CT扫描中,应用低管电压联合深度学习图像重建算法(DLIR)对降低辐射剂量及图像质量的影响。方法:①模体实验。确定低管电压结合深度学习算法对低对比度分辨力鉴别的可行性。按照不同图像质量参数噪声指数(NI)扫描Catphan 500模体,使用两种扫描条件,优化组扫描参数选择低管电压80 kV结合DLIR重建进行扫描和图像重建;常规组扫描参数和图像重建算法选择管电压120 kV结合自适应统计迭代重建(ASiR-V),确定优化组条件使用低剂量(NI > 9)时低对比度分辨力相对于常规组使用常规剂量(NI=9)的NI值和有效性。②前瞻性实验。前瞻性收集常规进行胸腹部联合增强CT扫描的患者160例,随机分为低剂量优化组和常规剂量常规组,最终入组149例,低剂量优化组61例,常规剂量常规组88例。根据模体实验的结果确定的低剂量优化组NI,扫描参数选择优化组条件;常规剂量常规组NI为9,扫描参数和图像重建算法选择常规组条件。记录并计算两组间的辐射剂量并对两组的图像质量进行主、客观评价。结果:低剂量优化组使用NI=12可以获得常规剂量组NI=9等效的低对比分辨能力。低剂量优化组的有效剂量9.56±2.34 mSv低于常规剂量常规组17.82±5.22 mSv。低剂量优化组的肝脏衰减值、主动脉衰减值显著高于常规剂量常规组,肝脏及主动脉CNR和SNR值显著高于常规剂量常规组,主动脉空间分辨力、肝总动脉空间分辨力、门静脉空间分辨力及小血管/支气管显示情况也均优于常规剂量常规组。 结论:低管电压联合深度学习图像重建算法能够在降低辐射剂量的条件下,仍保证同等甚至更高的图像质量,为大范围CT扫描辐射剂量的优化提供一个可行方案。

     

    Abstract: Objective: To investigate the effect of low tube voltage combined with Deep Learning Image Reconstruction (DLIR) on radiation dose reduction and maintaining image quality in combined chest and abdominal enhanced CT scans. Methods: (1) Phantom study. To determine the feasibility of combining low tube voltage with deep learning algorithms for low-contrast resolution, Catphan 500 phantoms were scanned under two different conditions. The optimization group used a low tube voltage (80 kV) combined with DLIR for scanning and image reconstruction, while the routine group used a 120 kV tube voltage combined with Adaptive Statistical Iterative Reconstruction V (ASiR-V). This study aimed to determine the effectiveness of the optimization group using a low dose (noise index, NI > 9) compared with the routine group using a routine dose (NI=9). (2) Prospective study. A total of 160 patients who underwent routine chest and abdominal enhanced CT scans were prospectively collected and randomly divided into a low-dose optimization group and routine-dose group, with 149 patients ultimately enrolled (61 in the low-dose optimization group and 88 in the routine-dose group). Based on the results of the phantom study, the low-dose optimization group used the optimized condition with NI set to the optimal value, whereas the routine-dose group used the routine condition with NI=9. Radiation doses were recorded and calculated for both groups, and image quality was subjectively and objectively evaluated. Results: The low-dose optimization group using NI=12 achieved an equivalent low-contrast resolution capability to the routine-dose group with NI=9. The effective dose in the low-dose optimization group (9.56±2.34 mSv) was significantly lower than that in the routine-dose group (17.82±5.22 mSv). The liver and aorta attenuation values in the low-dose optimization group were significantly higher than those in the routine-dose group, and the CNR and SNR values in the liver and aorta were also significantly higher. The spatial resolution of the aorta, common hepatic artery, and portal vein and the display of small vessels/bronchi were all superior in the low-dose optimization group compared with the routine-dose group. Conclusion: The combination of a low tube voltage and deep learning image reconstruction algorithm can ensure equivalent or even higher image quality while reducing radiation dose, providing a feasible solution for optimizing radiation dose in large-scale CT scans.

     

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