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首页> 外文期刊>Orthopaedic Journal of Sports Medicine >Three-Dimensional Magnetic Resonance Imaging Bone Models of the Hip Joint Using Deep Learning: Dynamic Simulation of Hip Impingement for Diagnosis of Intra- and Extra-articular Hip Impingement
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Three-Dimensional Magnetic Resonance Imaging Bone Models of the Hip Joint Using Deep Learning: Dynamic Simulation of Hip Impingement for Diagnosis of Intra- and Extra-articular Hip Impingement

机译:使用深度学习的髋关节三维磁共振成像骨模型:动态模拟髋关节和外关节髋关节撞击诊断的髋关节冲击

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Background: Dynamic 3-dimensional (3D) simulation of hip impingement enables better understanding of complex hip deformities in young adult patients with femoroacetabular impingement (FAI).?Deep learning algorithms may improve magnetic resonance imaging (MRI) segmentation. Purpose: (1) To evaluate the accuracy of 3D models created using convolutional neural networks (CNNs) for fully automatic MRI bone segmentation of the hip joint, (2) to correlate hip range of motion (ROM) between manual and automatic segmentation, and (3) to compare location of hip impingement in 3D models created using automatic bone segmentation in patients with FAI. Study Design: Cohort study (diagnosis); Level of evidence, 3. Methods: The authors retrospectively reviewed 31 hip MRI scans from 26 symptomatic patients (mean age, 27 years) with hip pain due to FAI. All patients had matched computed tomography (CT) and MRI scans of the pelvis and the knee. CT- and MRI-based osseous 3D models of the hip joint of the same patients were compared (MRI: T1 volumetric interpolated breath-hold examination high-resolution sequence; 0.8 mm ~(3) isovoxel). CNNs were used to develop fully automatic bone segmentation of the hip joint, and the 3D models created using this method were compared with manual segmentation of CT- and MRI-based 3D models. Impingement-free ROM and location of hip impingement were calculated using previously validated collision detection software. Results: The difference between the CT- and MRI-based 3D models was &1 mm, and the difference between fully automatic and manual segmentation of MRI-based 3D models was &1 mm. The correlation of automatic and manual MRI-based 3D models was excellent and significant for impingement-free ROM ( r = 0.995; P & .001), flexion ( r = 0.953; P & .001), and internal rotation at 90° of flexion ( r = 0.982; P & .001). The correlation for impingement-free flexion between automatic MRI-based 3D models and CT-based 3D models was 0.953 ( P & .001). The location of impingement was not significantly different between manual and automatic segmentation of MRI-based 3D models, and the location of extra-articular hip impingement was not different between CT- and MRI-based 3D models. Conclusion: CNN can potentially be used in clinical practice to provide rapid and accurate 3D MRI hip joint models for young patients. The created models can be used for simulation of impingement during diagnosis of intra- and extra-articular hip impingement to enable radiation-free and patient-specific surgical planning for hip arthroscopy and open hip preservation surgery.
机译:背景:髋关节冲击的动态3维(3D)模拟能够更好地了解年轻成年患者的股骨旁撞击患者复杂的髋关节畸形(FAI)。?深度学习算法可以改善磁共振成像(MRI)分割。目的:(1)评估使用卷积神经网络(CNNS)创建的3D模型的准确性,用于髋关节的全自动MRI骨分割,(2)以在手动和自动分割之间将臀部范围与动作(ROM)相关联, (3)比较使用FAI患者自动骨细分创建的3D模型中HIP冲击的位置。研究设计:队列研究(诊断);证据级别,3.方法:作者回顾性地从26名症状患者(平均年龄,27岁)引起的31例髋关节MRI扫描,由于FAI,髋关节疼痛。所有患者都匹配了骨盆和膝盖的计算机断层扫描(CT)和MRI扫描。比较了同一患者的髋关节的CT-和MRI的骨质3D模型(MRI:T1体积内插呼吸检查高分辨率序列; 0.8mm〜(3)异洛克索素)。 CNNS用于开发髋关节的全自动骨分割,并将使用该方法创建的3D模型与CT和MRI的3D模型进行了手动分割。使用先前验证的碰撞检测软件计算无冲击ROM和HIP冲击的位置。结果:基于CT和MRI的3D模型之间的差异是& 1 mm,以及基于MRI的3D模型的全自动和手动分割之间的差异为& 1 mm。自动和手动MRI的3D模型的相关性对于无抗撞ROM(R = 0.995; P& LT; .001),屈曲(r = 0.953; p& .001),以及内部旋转在90°屈曲(r = 0.982; p& .001)。基于MRI的3D模型和基于CT的3D模型之间的抗抗冲击屈曲的相关性为0.953(P& LT; .001)。基于MRI的3D模型的手动和自动分割之间的冲击位置没有显着差异,并且基于CT和MRI的3D模型之间的特性髋关节冲击的位置并不不同。结论:CNN可能用于临床实践中,为年轻患者提供快速准确的3D MRI HIP联合模型。所产生的模型可用于在诊断和关节式髋关节抗冲击期间进行撞击模拟,以实现对髋关节镜检查的无辐射和患者特异性手术规划和开放的髋关节保存手术。

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