ISSN 1004-4140
    CN 11-3017/P

    能谱DLIR结合MAR对腰椎金属植入物伪影的影响

    Impacts of Deep Learning Image Reconstruction with Gemstone Spectral Imaging Combined with Metal Artifact Reduction on Metal Artifacts in CT Scans with Lumbar Spine Implants

    • 摘要:
      目的 探究深度学习图像重建算法(DLIR)能谱(GSI)CT扫描结合去金属伪影(MAR)算法对腰椎金属植入物伪影的影响。
      方法 回顾性分析于我院行腹部GSI扫描的内置腰椎金属植入物患者40例。在GSI腹部扫描后分别以自适应统计迭代重建算法(ASiR-V)进行ASiR-V 50%迭代重建(AR50组)和深度学习算法DLIR-HIGH重建(DH组),叠加去金属伪影MAR技术得到两组去金属伪影重建(AR50-MAR组)和(DH-MAR组)。在4组图像上分别进行金属伪影及周边组织的ROI勾画及测量,记录CT值与SD值,进行图像信噪比(SNR)、对比噪声比(CNR)及伪影指数(AI)计算与比较。由2名诊断医生采用4分法就图像质量、金属伪影严重程度和伪影面积进行主观评分。
      结果 在相同的68keV能级条件下,四组图像SD值、CNR值和AI值差异均有统计学意义(P < 0.05);MAR组的SD值均小于非MAR组,DH MAR重建的图像CNR、SNR最高而AI值最低。
      结论 腰椎金属植入物患者应用深度学习算法GSICT联合MAR技术,能使金属伪影得以最大化减少的同时,大大提高图像组织信噪比,更有助于临床诊断。

       

      Abstract:
      Objective This study investigated the impact of deep learning image reconstruction (DLIR) combined with metal artifact reduction (MAR) on metal artifacts in CT scans with lumbar spine implants.
      Methods A retrospective analysis was conducted on 40 patients with lumbar metal implants who underwent abdominal spectral CT scans at our hospital. After spectral abdominal scanning, images were reconstructed using Adaptive Statistical Iterative Reconstruction-V (ASiR-V) at 50 % (AR50 group) and DLIR at a high level (DH group). MAR was applied to both groups to obtain reconstructions (AR50-MAR group and DH-MAR group). Regions of interest (ROIs) were delineated and measured for metal artifacts and surrounding tissues on the four sets of images. CT values and standard deviations (SD) were recorded, and the signal-to-noise ratio (SNR), contrast-to-noise ratio (CNR), and artifact index (AI) of the images were calculated and compared. Two radiologists subjectively evaluated the quality of the images, the severity of metal artifacts, and the area of the artifacts on a 4-point scale.
      Results Under the same energy level of 68 keV, statistically significant differences were observed in SD, CNR, and AI values among the four groups (P < 0.05). The SD values in the MAR groups were lower than those in the non-MAR groups. The images reconstructed with DH-MAR had the highest CNR and SNR and the lowest AI values.
      Conclusion For patients with lumbar metal implants, the combination of DLIR and MAR in spectral CT can significantly reduce metal artifacts while greatly improving the signal-to-noise ratio of images of the tissue, which is more conducive to clinical diagnosis.

       

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