Department of Radiology, Wake Forest University School of Medicine, Winston-Salem, NC 27157, USA.
Department of Orthopaedics, Wake Forest University School of Medicine, Winston-Salem, NC 27157, USA.
Osteoarthritis Cartilage. 2016 Jun;24(6):991-9. doi: 10.1016/j.joca.2016.01.004. Epub 2016 Jan 14.
Unicompartmental knee arthroplasty (UKA) revision is usually due to the degenerative degree of knee articular osteochondral tissue in the untreated compartment. However, it is difficult to simulate the biomechanical behavior on this tissue accurately. This study presents and validates a reliable system to predict which osteoarthritis (OA) patients may suffer revision as a result of biomechanical reasons after having UKA.
We collected all revision cases available (n = 11) and randomly selected 67 UKA cases to keep the revision prevalence of almost 14%. All these 78 cases have been followed at least 2 years. An elastic model is designed to characterize the biomechanical behavior of the articular osteochondral tissue for each patient. After calculated the force on the tissue, finite element method (FEM) is applied to calculating the strain of each tissue node. Kernel Ridge Regression (KRR) method is used to model the relationship between the strain information and the risk of revision. Therefore, the risk of UKA revision can be predicted by this integrated model.
Leave-one-out (LOO) cross-validation (CV) is implemented to assess the prediction accuracy. As a result, the mean prediction accuracy is 93.58% for all these cases, demonstrating the high value of this model as a decision-making assistant for surgical plaining of knee OA.
The results of this study demonstrated that this integrated model can predict the risk of UKA revision with theoretically high accuracy. It combines bio-mechanical and statistical learning approach to create a surgical planning tool which may support clinical decision in the future.
单髁膝关节置换(UKA)翻修通常是由于未治疗间室的膝关节关节骨软骨组织的退行性程度。然而,很难准确模拟该组织的生物力学行为。本研究提出并验证了一种可靠的系统,可以预测哪些骨关节炎(OA)患者在接受 UKA 后可能由于生物力学原因需要进行翻修。
我们收集了所有可用的翻修病例(n=11),并随机选择了 67 例 UKA 病例,使翻修率接近 14%。所有这些 78 例患者都至少随访了 2 年。设计了一个弹性模型来描述每个患者关节骨软骨组织的生物力学行为。在计算了组织上的力后,应用有限元方法(FEM)计算每个组织节点的应变。核脊回归(KRR)方法用于建立应变信息与翻修风险之间的关系模型。因此,通过该综合模型可以预测 UKA 翻修的风险。
实施了留一法(LOO)交叉验证(CV)以评估预测准确性。结果,对于所有这些病例,平均预测准确率为 93.58%,表明该模型作为膝关节 OA 手术规划的决策辅助工具具有很高的价值。
这项研究的结果表明,该综合模型可以以理论上的高精度预测 UKA 翻修的风险。它结合了生物力学和统计学习方法来创建一种手术规划工具,未来可能支持临床决策。