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A Wearable Automated System to Quantify Parkinsonian Symptoms Enabling Closed Loop Deep Brain Stimulation

机译:可穿戴自动系统量化帕金森氏症的症状,从而实现闭环深部脑刺激

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This study presents (1) the design and validation of a wearable sensor suite for the unobtrusive capture of heterogeneous signals indicative of the primary symptoms of Parkinson's disease; tremor, bradykinesia and muscle rigidity in upper extremity movement and (2) a model to characterise these signals as they relate to the symptom severity as addressed by the Movement Disorder Society Unified Parkinson's Disease Rating Scale (MDS-UPDRS). The sensor suite and detection algorithms managed to distinguish between the non-mimicked and mimicked MDS-UPDRS tests on healthy subjects (p ≤ 0.15), for all the primary symptoms of Parkinson's disease. Future trials will be conducted on Parkinsonian subjects receiving deep brain stimulation (DBS) therapy. Quantifying symptom severity and correlating severity ratings with DBS treatment will be an important step to fully automate DBS therapy.
机译:这项研究提出(1)可穿戴传感器套件的设计和验证,该传感器套件可以无干扰地捕获表示帕金森氏病主要症状的异类信号;上肢运动中的震颤,运动迟缓和肌肉僵硬,以及(2)模型来表征这些信号,因为它们与症状严重程度相关,如运动障碍协会统一帕金森氏疾病评分量表(MDS-UPDRS)所述。对于帕金森氏病的所有主要症状,传感器套件和检测算法可以区分健康受试者的非模拟MDS-UPDRS测试和模拟MDS-UPDRS测试(p≤0.15)。未来的试验将在接受深部脑刺激(DBS)治疗的帕金森氏病患者中进行。量化症状严重程度并与DBS治疗关联严重程度等级将是使DBS治疗完全自动化的重要一步。

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