MR 颅骨成像:运动校正和自动深度学习伪 CT 估计 MR 图像的评估。

Andrew D Linkugel, Tongyao Wang, Parna Eshraghi Boroojeni, Cihat Eldeniz, Yasheng Chen, Gary B Skolnick, Paul K Commean, Corinne M Merrill, Jennifer M Strahle, Manu S Goyal, Hongyu An, Kamlesh B Patel
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引用次数: 0

摘要

背景和目的:CT 成像会对患者造成电离辐射。磁共振成像无辐射,但以前无法在适合临床使用的时间轴上生成诊断质量的骨骼图像。我们开发了自动运动校正,并利用深度学习从 MR 图像生成伪 CT 图像。我们的目的是评估运动校正后的伪 CT 所生成的头颅图像是否有可能被临床接受:招募年龄小于 18 岁、因外伤或评估颅骨缝合通畅性而接受头部 CT 成像检查的患者。受试者接受了 5 分钟黄金角星状堆叠径向容积插值屏气磁共振成像。对磁共振成像进行运动校正,然后使用基于深度学习的方法生成伪 CT 图像。对 CT 和伪 CT 图像进行评估,并根据成像指征,首先在查看基于 MR 成像的伪 CT 时记录是否存在颅骨骨折或颅缝是否通畅,然后在查看临床 CT 时记录:共有 12 名患者接受了 CT 和 MR 成像检查以评估缝合通畅性,60 名患者接受了 CT 和 MR 成像检查以评估头部创伤。对于颅骨缝合是否通畅,伪 CT 在确定缝合是否闭合方面具有 100% 的特异性和 100% 的敏感性。在识别颅骨骨折方面,伪 CT 的特异性为 100%,灵敏度为 90%:我们的早期研究结果表明,自动运动校正和深度学习生成的小儿颅骨伪 CT 图像具有临床应用潜力,与标准 CT 扫描相比,诊断准确性更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MR Cranial Bone Imaging: Evaluation of Both Motion-Corrected and Automated Deep Learning Pseudo-CT Estimated MR Images.

Background and purpose: CT imaging exposes patients to ionizing radiation. MR imaging is radiation free but previously has not been able to produce diagnostic-quality images of bone on a timeline suitable for clinical use. We developed automated motion correction and use deep learning to generate pseudo-CT images from MR images. We aim to evaluate whether motion-corrected pseudo-CT produces cranial images that have potential to be acceptable for clinical use.

Materials and methods: Patients younger than age 18 who underwent CT imaging of the head for either trauma or evaluation of cranial suture patency were recruited. Subjects underwent a 5-minute golden-angle stack-of-stars radial volumetric interpolated breath-hold MR image. Motion correction was applied to the MR imaging followed by a deep learning-based method to generate pseudo-CT images. CT and pseudo-CT images were evaluated and, based on indication for imaging, either presence of skull fracture or cranial suture patency was first recorded while viewing the MR imaging-based pseudo-CT and then recorded while viewing the clinical CT.

Results: A total of 12 patients underwent CT and MR imaging to evaluate suture patency, and 60 patients underwent CT and MR imaging for evaluation of head trauma. For cranial suture patency, pseudo-CT had 100% specificity and 100% sensitivity for the identification of suture closure. For identification of skull fractures, pseudo-CT had 100% specificity and 90% sensitivity.

Conclusions: Our early results show that automated motion-corrected and deep learning-generated pseudo-CT images of the pediatric skull have potential for clinical use and offer a high level of diagnostic accuracy when compared with standard CT scans.

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