Jones G G, Kotti M, Wiik A V, Collins R, Brevadt M J, Strachan R K, Cobb J P
MSk Lab, Imperial College London, Charing Cross Hospital, Fulham Palace Road, London, W6 8RF, UK.
Imperial College NHS Trust, Charing Cross Hospital, Fulham Palace Road, London, W6 8RF, UK.
Bone Joint J. 2016 Oct;98-B(10 Supple B):16-21. doi: 10.1302/0301-620X.98B10.BJJ.2016.0473.R1.
To compare the gait of unicompartmental knee arthroplasty (UKA) and total knee arthroplasty (TKA) patients with healthy controls, using a machine-learning approach.
145 participants (121 healthy controls, 12 patients with cruciate-retaining TKA, and 12 with mobile-bearing medial UKA) were recruited. The TKA and UKA patients were a minimum of 12 months post-operative, and matched for pattern and severity of arthrosis, age, and body mass index. Participants walked on an instrumented treadmill until their maximum walking speed was reached. Temporospatial gait parameters, and vertical ground reaction force data, were captured at each speed. Oxford knee scores (OKS) were also collected. An ensemble of trees algorithm was used to analyse the data: 27 gait variables were used to train classification trees for each speed, with a binary output prediction of whether these variables were derived from a UKA or TKA patient. Healthy control gait data was then tested by the decision trees at each speed and a final classification (UKA or TKA) reached for each subject in a majority voting manner over all gait cycles and speeds. Top walking speed was also recorded.
92% of the healthy controls were classified by the decision tree as a UKA, 5% as a TKA, and 3% were unclassified. There was no significant difference in OKS between the UKA and TKA patients (p = 0.077). Top walking speed in TKA patients (1.6 m/s; 1.3 to 2.1) was significantly lower than that of both the UKA group (2.2 m/s; 1.8 to 2.7) and healthy controls (2.2 m/s; 1.5 to 2.7; p < 0.001).
UKA results in a more physiological gait compared with TKA, and a higher top walking speed. This difference in function was not detected by the OKS. Cite this article: Bone Joint J 2016;98-B(10 Suppl B):16-21.
采用机器学习方法比较单髁膝关节置换术(UKA)和全膝关节置换术(TKA)患者与健康对照者的步态。
招募了145名参与者(121名健康对照者、12名保留交叉韧带的TKA患者和12名活动平台内侧UKA患者)。TKA和UKA患者术后至少12个月,在关节炎模式和严重程度、年龄及体重指数方面进行了匹配。参与者在装有仪器的跑步机上行走,直至达到其最大步行速度。在每个速度下采集时空步态参数和垂直地面反作用力数据。还收集了牛津膝关节评分(OKS)。使用一种树集成算法来分析数据:27个步态变量用于为每个速度训练分类树,输出二元预测结果,即这些变量是源自UKA患者还是TKA患者。然后,在每个速度下用决策树对健康对照者的步态数据进行测试,并通过对所有步态周期和速度进行多数投票的方式为每个受试者得出最终分类(UKA或TKA)。还记录了最高步行速度。
决策树将92%的健康对照者分类为UKA,5%分类为TKA,3%未分类。UKA和TKA患者的OKS无显著差异(p = 0.077)。TKA患者的最高步行速度(1.6米/秒;1.3至2.1)显著低于UKA组(2.2米/秒;1.8至2.7)和健康对照者(2.2米/秒;1.5至2.7;p < 0.001)。
与TKA相比,UKA产生的步态更接近生理状态,且最高步行速度更高。OKS未检测到这种功能上的差异。引用本文:《骨与关节杂志》2016年;98 - B(10增刊B):16 - 21。