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Quasi-automated reconstruction of the femur from bi-planar X-rays

机译:从Bi-Planar X射线股骨的准自动重建

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摘要

3D reconstruction from low-dose Bi-Planar X-Rays (BPXR) is a rising practice in clinical routine. However, this process is time consuming and highly depends on the user. This study aims to partially automate the process for the femur, thus decreasing reconstruction time and increasing robustness. As a training set, 50 femurs are segmented from CT scans together with 120 BPXR reconstructions. From this dataset, an initial solution for the bony contours is defined through Gaussian Process Regression (GPR), using eight digitized landmarks. This initial solution is projected on both x-rays and automatically adjusted using an adapted Minimal Path Algorithm (MPA). To evaluate this method, CT-scans were acquired from 20 cadaveric femurs. For each sample, the CT-based reconstruction is compared to the one automatically generated from the digitally reconstructed radiographs. Euclidean distances between femur reconstructions and the segmented CT data are on average 1.0 mm with a Root Mean Square Error (RMSE) of 0.8 mm. Femoral torsion errors are assessed: the bias is lower than 0.1° with a 95% confidence interval of 4.8°. The proposed method substantially improves 3D reconstructions from BPXR, as it enables a fast and reliable reconstruction, without the need for manual adjustments, which is essential in clinical routine.
机译:低剂量双平面X射线(BPXR)的三维重建是临床常规的上升实践。但是,这个过程是耗时,高度取决于用户。本研究旨在部分自动化股骨的过程,从而降低重建时间并增加鲁棒性。作为训练集,50款股骨从CT扫描与120 bpxr重建进行了分割。从此数据集中,使用八个数字化地标,通过高斯进程回归(GPR)来定义骨骼轮廓的初始解决方案。该初始解决方案投影在X射线上,并使用适应的最小路径算法(MPA)自动调整。为了评估这种方法,CT扫描是从20个尸体股骨中获得的。对于每个样本,将基于CT的重建与从数字重建的射线照片自动生成的重建进行比较。股骨重建和分段的CT数据之间的欧几里德距离平均1.0 mm,具有0.8mm的根均方误差(RMSE)。评估股骨扭转误差:偏置低于0.1°,95%置信区间为4.8°。所提出的方法大大改善了来自BPXR的3D重建,因为它能够快速可靠地重建,而无需手动调节,这在临床常规中至关重要。

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