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Automatic estimation of knee joint space narrowing by deep learning segmentation algorithms

机译:深度学习分割算法自动估计膝关节间隙变窄

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Evaluating the severity of knee osteoarthritis (OA) accounts for significant plain film workload and is a crucial component of knee radiograph interpretation, which informs surgical decision-making for costly and invasive procedures such as knee replacement. The Kellgren-Lawrence (KL) grading scale systematically and quantitatively assesses the severity of knee OA but is associated with notable inter-reader variability. In this study, we propose a deep learning method for the assessment of joint space narrowing (JSN) in the knee, which is an essential part of determining the KL grade. To determine the extent of JSN, we analyzed 99 knee radiographs to calculate the distance between the femur and tibia. Our algorithm's measurements of JSN and KL grade correlated well other radiologists' assessments. The average distance (in pixels) between the femur and tibia bones as measured by our algorithm was 9.60 for KL=0, 7.60 for KL=1, 6.89 for KL=2, 3.75 for KL=3,1.25 for KL=4. Additionally, we used 100 manually annotated knee radiographs to train the algorithm to segment the femur and tibia bones. When evaluated on an independent set of 20 knee radiographs, the algorithm demonstrated a Dice coefficient of 96.59%. An algorithm for measurement of JSN and KL grades may play a significant role in automatically, reliably, and passively evaluating knee OA severity and influence and surgical decision-making and treatment pathways.
机译:评估膝关节骨关节炎(OA)的严重程度会导致大量的平片工作量,并且是膝关节X线片解释的重要组成部分,这为昂贵的侵入性手术(如膝关节置换术)提供了手术决策依据。 Kellgren-Lawrence(KL)评分量表系统地和定量地评估了膝盖OA的严重性,但与阅读器间的显着差异相关。在这项研究中,我们提出了一种用于评估膝盖关节间隙变窄(JSN)的深度学习方法,这是确定KL等级的重要组成部分。为了确定JSN的程度,我们分析了99幅膝部X光片,以计算股骨和胫骨之间的距离。我们的算法对JSN和KL等级的测量结果与其他放射线医师的评估非常相关。通过我们的算法测得的股骨和胫骨之间的平均距离(以像素为单位)对于KL = 0为9.60,对于KL = 1为7.60,对于KL = 2为6.89,对于KL = 3为3.75,对于KL = 4为1.25。此外,我们使用了100个手动注释的膝部X射线照片来训练将股骨和胫骨分开的算法。当对一组独立的20幅膝部X光片进行评估时,该算法的Dice系数为96.59%。用于测量JSN和KL等级的算法可能在自动,可靠和被动地评估膝盖OA严重性和影响以及手术决策和治疗途径中发挥重要作用。

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