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Automated Measurement of Patient-Specific Tibial Slopes from MRI

机译:通过MRI自动测量患者特定的胫骨坡度

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摘要

Background: Multi-planar proximal tibial slopes may be associated with increased likelihood of osteoarthritis and anterior cruciate ligament injury, due in part to their role in checking the anterior-posterior stability of the knee. Established methods suffer repeatability limitations and lack computational efficiency for intuitive clinical adoption. The aims of this study were to develop a novel automated approach and to compare the repeatability and computational efficiency of the approach against previously established methods. Methods: Tibial slope geometries were obtained via MRI and measured using an automated Matlab-based approach. Data were compared for repeatability and evaluated for computational efficiency. Results: Mean lateral tibial slope (LTS) for females (7.2°) was greater than for males (1.66°). Mean LTS in the lateral concavity zone was greater for females (7.8° for females, 4.2° for males). Mean medial tibial slope (MTS) for females was greater (9.3° vs. 4.6°). Along the medial concavity zone, female subjects demonstrated greater MTS. Conclusion: The automated method was more repeatable and computationally efficient than previously identified methods and may aid in the clinical assessment of knee injury risk, inform surgical planning, and implant design efforts.
机译:背景:多平面胫骨近端斜坡可能与骨关节炎和前交叉韧带损伤的可能性增加有关,部分原因是它们在检查膝关节前后稳定性中的作用。既定方法受到可重复性的限制,并且缺乏用于直观临床采用的计算效率。这项研究的目的是开发一种新颖的自动化方法,并比较该方法与以前建立的方法的可重复性和计算效率。方法:通过MRI获得胫骨坡度的几何形状,并使用基于Matlab的自动方法进行测量。比较数据的可重复性并评估计算效率。结果:女性(7.2°)的平均胫骨外侧斜率(LTS)大于男性(1.66°)。女性在侧凹区的平均LTS更大(女性为7.8°,男性为4.2°)。女性的平均胫骨内侧倾斜度(MTS)更大(9.3°vs. 4.6°)。沿着内凹区,女性受试者表现出更高的MTS。结论:自动化方法比以前确定的方法具有更高的可重复性和计算效率,并且可能有助于临床评估膝关节损伤的风险,为手术计划提供信息以及进行植入物设计工作。

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