Mera Thomas O, Burack Michelle A, Giuffrida Joseph P
Great Lakes NeuroTechnologies Inc., Cleveland, OH 44125, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:154-7. doi: 10.1109/EMBC.2012.6345894.
The objective was to capture levodopa-induced dyskinesia (LID) in patients with Parkinson's disease (PD) using body-worn motion sensors. Dopaminergic treatment in PD can induce abnormal involuntary movements, including choreatic dyskinesia (brief, rapid, irregular movements). Adjustments in medication to reduce LID often sacrifice control of motor symptoms, and balancing this tradeoff poses a significant challenge for management of advanced PD. Fifteen PD subjects with known LID were recruited and instructed to perform two stationary motor tasks while wearing a compact wireless motion sensor unit positioned on each hand over the course of a levodopa dose cycle. Videos of subjects performing the motor tasks were later scored by expert clinicians to assess global dyskinesia using the modified Abnormal Involuntary Rating Scale (m-AIMS). Kinematic features were extracted from motion data in different frequency bands (1-3Hz and 3-8Hz) to quantify LID severity and to distinguish between LID and PD tremor. Receiver operator characteristic analysis was used to determine thresholds for individual features to detect the presence of LID. A sensitivity of 0.73 and specificity of 1.00 were achieved. A neural network was also trained to output dyskinesia severity on a 0 to 4 scale, similar to the m-AIMS. The model generalized well to new data (coefficient of determination= 0.85 and mean squared error= 0.3). This study demonstrated that hand-worn motion sensors can be used to assess global dyskinesia severity independent of PD tremor over the levodopa dose cycle.
目的是使用可穿戴式运动传感器捕捉帕金森病(PD)患者的左旋多巴诱导的异动症(LID)。PD患者的多巴胺能治疗可诱发异常不自主运动,包括舞蹈样异动症(短暂、快速、不规则运动)。调整药物以减少LID往往会牺牲对运动症状的控制,而平衡这种权衡对晚期PD的管理构成了重大挑战。招募了15名已知患有LID的PD受试者,并指示他们在左旋多巴剂量周期内,佩戴位于每只手上的紧凑型无线运动传感器单元时执行两项静态运动任务。随后,由专业临床医生对受试者执行运动任务的视频进行评分,使用改良的异常不自主运动评定量表(m-AIMS)评估整体异动症。从不同频段(1-3Hz和3-8Hz)的运动数据中提取运动学特征,以量化LID严重程度,并区分LID和PD震颤。使用受试者工作特征分析来确定各个特征的阈值,以检测LID的存在。灵敏度达到0.73,特异性达到1.00。还训练了一个神经网络,以0到4的量表输出异动症严重程度,类似于m-AIMS。该模型对新数据具有良好的泛化能力(决定系数=0.85,均方误差=0.3)。这项研究表明,在左旋多巴剂量周期内,可穿戴在手上的运动传感器可用于独立于PD震颤评估整体异动症严重程度。