Galarraga C Omar A, Vigneron Vincent, Dorizzi Bernadette, Khouri Néjib, Desailly Eric
UNAM, Pôle Recherche & Innovation, Fondation Ellen Poidatz, 1 Rue Ellen Poidatz, Saint-Fargeau-Ponthierry, France; IBISC-EA 4526, Université d'Evry Val d'Essonne, 40 Rue du Pelvoux, Courcouronnes, France.
IBISC-EA 4526, Université d'Evry Val d'Essonne, 40 Rue du Pelvoux, Courcouronnes, France.
Gait Posture. 2017 Feb;52:45-51. doi: 10.1016/j.gaitpost.2016.11.012. Epub 2016 Nov 9.
In this work, postoperative lower limb kinematics are predicted with respect to preoperative kinematics, physical examination and surgery data. Data of 115 children with cerebral palsy that have undergone single-event multilevel surgery were considered. Preoperative data dimension was reduced utilizing principal component analysis. Then, multiple linear regressions with 80% confidence intervals were performed between postoperative kinematics and bilateral preoperative kinematics, 36 physical examination variables and combinations of 9 different surgical procedures. The mean prediction errors on test vary from 4° (pelvic obliquity and hip adduction) to 10° (hip rotation and foot progression), depending on the kinematic angle. The unilateral mean sizes of the confidence intervals vary from 5° to 15°. Frontal plane angles are predicted with the lowest errors, however the same performance is achieved when considering the postoperative average signals. Sagittal plane angles are better predicted than transverse plane angles, with statistical differences with respect to the average postoperative kinematics for both plane's angles except for ankle dorsiflexion. The mean prediction errors are smaller than the variability of gait parameters in cerebral palsy. The performance of the system is independent of the preoperative state severity of the patient. Even if the system is not yet accurate enough to define a surgery plan, it shows an unbiased estimation of the most likely outcome, which can be useful for both the clinician and the patient. More patients' data are necessary for improving the precision of the model in order to predict the kinematic outcome of a large number of possible surgeries and gait patterns.
在这项研究中,根据术前运动学、体格检查和手术数据对术后下肢运动学进行预测。研究考虑了115例接受单期多节段手术的脑瘫患儿的数据。利用主成分分析降低术前数据维度。然后,在术后运动学与双侧术前运动学、36项体格检查变量以及9种不同手术程序的组合之间进行了置信区间为80%的多元线性回归。测试中的平均预测误差根据运动学角度不同,从4°(骨盆倾斜和髋关节内收)到10°(髋关节旋转和足前进角)不等。置信区间的单侧平均大小从5°到15°不等。额状面角度的预测误差最小,不过考虑术后平均信号时也能达到同样的预测效果。矢状面角度的预测比横断面角度更好,除了踝关节背屈外,两个平面角度的术后平均运动学数据均存在统计学差异。平均预测误差小于脑瘫患者步态参数的变异性。该系统的性能与患者术前状态的严重程度无关。即使该系统尚不足以精确到制定手术方案,但它对最可能的结果给出了无偏估计,这对临床医生和患者都可能有用。为了预测大量可能手术和步态模式的运动学结果,需要更多患者的数据来提高模型的精度。