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膝关节超声骨模型

Knee Bone Models From Ultrasound.

出版信息

IEEE Trans Ultrason Ferroelectr Freq Control. 2023 Sep;70(9):1054-1063. doi: 10.1109/TUFFC.2023.3286287. Epub 2023 Aug 29.

DOI:10.1109/TUFFC.2023.3286287
PMID:37347629
Abstract

The number of total knee arthroplasties performed worldwide is on the rise. Patient-specific planning and implants may improve surgical outcomes but require 3-D models of the bones involved. Ultrasound (US) may become a cheap and nonharmful imaging modality if the shortcomings of segmentation techniques in terms of automation, accuracy, and robustness are overcome; furthermore, any kind of US-based bone reconstruction must involve some kind of model completion to handle occluded areas, for example, the frontal femur. A fully automatic and robust processing pipeline is proposed, generating full bone models from 3-D freehand US scanning. A convolutional neural network (CNN) is combined with a statistical shape model (SSM) to segment and extrapolate the bone surface. We evaluate the method in vivo on ten subjects, comparing the US-based model to a magnetic resonance imaging (MRI) reference. The partial freehand 3-D record of the femur and tibia bones deviate by 0.7-0.8 mm from the MRI reference. After completion, the full bone model shows an average submillimetric error in the case of the femur and 1.24 mm in the case of the tibia. Processing of the images is performed in real time, and the final model fitting step is computed in less than a minute. It took an average of 22 min for a full record per subject.

摘要

全球全膝关节置换术的数量正在增加。患者特异性规划和植入物可以改善手术结果,但需要涉及骨骼的 3-D 模型。如果能够克服分段技术在自动化、准确性和鲁棒性方面的缺点,那么超声 (US) 可能成为一种廉价且无害的成像方式;此外,任何基于 US 的骨骼重建都必须涉及某种模型完成来处理闭塞区域,例如,股骨正面。提出了一种全自动和鲁棒的处理管道,从 3-D 自由手 US 扫描中生成完整的骨骼模型。卷积神经网络 (CNN) 与统计形状模型 (SSM) 相结合,用于分割和外推骨骼表面。我们在十个对象上进行了体内评估,将基于 US 的模型与磁共振成像 (MRI) 参考进行比较。股骨和胫骨的部分自由手 3-D 记录与 MRI 参考相差 0.7-0.8 毫米。完成后,股骨的全骨骼模型的平均亚毫米误差为 1.24 毫米。图像的处理是实时进行的,最终的模型拟合步骤不到一分钟即可完成。每个对象的完整记录平均需要 22 分钟。

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