ISSN 1004-4140
    CN 11-3017/P

    深度学习重建在COPD低剂量胸部CT中的应用价值

    Application Value of Deep Learning Reconstruction in Low-dose Chest CT for COPD

    • 摘要: 目的:比较深度学习图像重建(DLIR)低剂量胸部CT与迭代重建(ASIR-V)标准剂量胸部CT在慢性阻塞性肺疾病(COPD)患者中的图像质量。方法:前瞻性纳入106例患者,分别进行标准剂量(SD)和低剂量(LD)胸部CT扫描。LD组采用ASIR-V(LD-AR)及3种强度DLIR(LD-DL/DM/DH)重建,SD组采用ASIR-V重建(SD-AR)。测量或计算解剖结构的噪声(SD值)、信噪比(SNR)和对比噪声比(CNR),并由医师进行主观图像质量评分。结果:SD组和LD组有效辐射剂量分别为(4.0±1.37) mSv和(1.14±0.47) mSv。LD-DLIR图像的噪声均低于SD-AR,SNR及CNR更高,其中LD-DH组最优。主观评分显示LD-DLIR图像在噪声水平、解剖结构及肺气肿显示方面均优于SD-AR图像,以LD-DH评分最高。结论:DLIR算法可在降低71.5%剂量的同时显著提升COPD患者胸部CT的图像质量,以DLIR-H效果最佳。

       

      Abstract: Objective: To compare image quality between deep learning image reconstruction (DLIR) low-dose chest CT and iterative reconstruction (ASIR-V) standard-dose chest CT in patients with chronic obstructive pulmonary disease (COPD). Methods: A total of 106 patients were prospectively enrolled and underwent standard-dose (SD) and low-dose (LD) chest CT scans. The LD scans were reconstructed using ASIR-V (LD-AR) and three DLIR strength levels (LD-DL/DM/DH), whereas the SD scans were reconstructed using ASIR-V (SD-AR). Noise (standard deviation), signal-to-noise ratio (SNR), and contrast-to-noise ratio (CNR) of the anatomical structures were measured or calculated. The subjective image quality was scored by radiologists. Results: Effective radiation dose was (4.0±1.37) mSv for the SD group and (1.14±0.47) mSv for the LD group. The LD-DLIR images exhibited lower noise, higher SNR, and higher CNR than the SD-AR images, with the LD-DH performing the best. Subjective scores indicated superior noise levels, anatomical clarity, and emphysema visualization in LD-DLIR images compared to SD-AR, with LD-DH receiving the highest score. Conclusion: DLIR significantly improved chest CT image quality in patients with COPD while reducing the radiation dose by 71.5%, with DLIR-H providing optimal performance.

       

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