Movere Group, Cyclotron Research Centre, University of Liege, Sart Tilman B30, Liège, Belgium.
Comput Intell Neurosci. 2013;2013:717853. doi: 10.1155/2013/717853. Epub 2013 Apr 16.
The motor clinical hallmarks of Parkinson's disease (PD) are usually quantified by physicians using validated clinimetric scales such as the Unified Parkinson's Disease Rating Scale (MDS-UPDRS). However, clinical ratings are prone to subjectivity and inter-rater variability. The PD medical community is therefore looking for a simple, inexpensive, and objective rating method. As a first step towards this goal, a triaxial accelerometer-based system was used in a sample of 36 PD patients and 10 age-matched controls as they performed the MDS-UPDRS finger tapping (FT) task. First, raw signals were epoched to isolate the successive single FT movements. Next, eighteen FT task movement features were extracted, depicting MDS-UPDRS features and accelerometer specific features. An ordinal logistic regression model and a greedy backward algorithm were used to identify the most relevant features in the prediction of MDS-UPDRS FT scores, given by 3 specialists in movement disorders (SMDs). The Goodman-Kruskal Gamma index obtained (0.961), depicting the predictive performance of the model, is similar to those obtained between the individual scores given by the SMD (0.870 to 0.970). The automatic prediction of MDS-UPDRS scores using the proposed system may be valuable in clinical trials designed to evaluate and modify motor disability in PD patients.
帕金森病(PD)的运动临床特征通常由医生使用经过验证的临床计量学量表(如统一帕金森病评定量表(MDS-UPDRS))进行量化。然而,临床评分容易受到主观性和评分者间变异性的影响。因此,PD 医学界正在寻找一种简单、廉价、客观的评分方法。作为实现这一目标的第一步,我们在 36 名 PD 患者和 10 名年龄匹配的对照组中使用三轴加速度计系统,让他们完成 MDS-UPDRS 手指敲击(FT)任务。首先,原始信号被分段,以分离连续的单次 FT 运动。接下来,提取了 18 个 FT 任务运动特征,描绘了 MDS-UPDRS 特征和加速度计特定特征。我们使用有序逻辑回归模型和贪婪后向算法,根据运动障碍 3 位专家(SMD)的评分,识别出预测 MDS-UPDRS FT 评分的最相关特征。获得的 Goodman-Kruskal Gamma 指数(0.961),表示模型的预测性能,与 SMD 给出的个别评分之间的指数(0.870 至 0.970)相似。使用提出的系统自动预测 MDS-UPDRS 评分,可能在评估和修改 PD 患者运动障碍的临床试验中具有价值。