Sankar Shreya, McDonnell Jake Michael, Darwish Stacey, Butler Joseph Simon
National Spinal Injuries Unit, Mater Misericordiae University Hospital, Dublin, Ireland.
School of Medicine, Royal College of Surgeons, Dublin, Ireland.
Asian Spine J. 2024 Dec;18(6):913-922. doi: 10.31616/asj.2024.0197. Epub 2024 Dec 24.
Computed tomography (CT) is widely used for the diagnosis and surgical treatment of spinal pathologies, particularly for pedicle screw placement. However, CT's limitations, notably radiation exposure, necessitate the development of alternative imaging techniques. Synthetic CT (sCT), which generates CT-like images from existing magnetic resonance imaging (MRI) scans, offers a promising alternative to reduce radiation exposure. This study examines the emerging role of sCT in spinal surgery, focusing on usability, efficiency, and potential impact on surgical outcomes. This qualitative literature review evaluated various sCT generation methods, encompassing traditional atlas-based and bulk-density models, as well as advanced convolutional neural network (CNN) architectures, including U-net, V-net, and generative adversarial network models. The review assessed sCT accuracy and clinical feasibility across different medical disciplines, particularly oncology and surgery, with potential applications in orthopedic, neurosurgical, and spinal surgery. sCT has shown significant promise across various medical disciplines. CNN-based techniques enable rapid and accurate generation of sCT from MRI scans, rendering clinical use feasible. sCT has been used to identify pathologies and monitor disease progression, suggesting that MRI alone may suffice for diagnosis and planning in the future. In spinal surgery, sCTs are particularly useful in visualizing key anatomical features like vertebral dimensions and spinal canal diameter. However, challenges persist, especially in visualizing complex structures and larger spinal regions, like the lumbar spine. Additional limitations include inaccuracies stemming from surgical implants and image variability. The application of sCT technology in spinal surgery holds great promise, improving diagnostics, planning, and treatment outcomes. Although further research is required to improve its precision, it offers a viable alternative to traditional CT in many clinical contexts, with the potential for broader application as the technology matures.
计算机断层扫描(CT)广泛应用于脊柱疾病的诊断和外科治疗,特别是在椎弓根螺钉置入方面。然而,CT存在局限性,尤其是辐射暴露问题,因此需要开发替代成像技术。合成CT(sCT)可从现有的磁共振成像(MRI)扫描生成类似CT的图像,为减少辐射暴露提供了一种有前景的替代方法。本研究探讨了sCT在脊柱外科中的新兴作用,重点关注其可用性、效率以及对手术结果的潜在影响。这项定性文献综述评估了各种sCT生成方法,包括传统的基于图谱和体密度模型,以及先进的卷积神经网络(CNN)架构,如U-net、V-net和生成对抗网络模型。该综述评估了sCT在不同医学学科(特别是肿瘤学和外科学)中的准确性和临床可行性,以及在骨科、神经外科和脊柱外科中的潜在应用。sCT在各个医学学科中都显示出了巨大的前景。基于CNN的技术能够从MRI扫描快速准确地生成sCT,使其临床应用成为可能。sCT已被用于识别病变和监测疾病进展,这表明未来仅靠MRI可能就足以进行诊断和规划。在脊柱外科中,sCT在可视化关键解剖特征(如椎体尺寸和椎管直径)方面特别有用。然而,挑战依然存在,尤其是在可视化复杂结构和较大的脊柱区域(如腰椎)时。其他局限性包括手术植入物导致的不准确以及图像变异性。sCT技术在脊柱外科中的应用前景广阔,可改善诊断、规划和治疗结果。尽管需要进一步研究来提高其精度,但在许多临床情况下,它为传统CT提供了一种可行的替代方案,随着技术的成熟,其应用可能会更广泛。