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A Kinematic Sensor and Algorithm to Detect Motor Fluctuations in Parkinson Disease: Validation Study Under Real Conditions of Use

机译:运动传感器和算法,以检测帕金森病中的电机波动:实际使用条件下的验证研究

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Background: A new algorithm has been developed, which combines information on gait bradykinesia and dyskinesia provided by a single kinematic sensor located on the waist of Parkinson disease (PD) patients to detect motor fluctuations (On- and Off-periods). Objective: The goal of this study was to analyze the accuracy of this algorithm under real conditions of use. Methods: This validation study of a motor-fluctuation detection algorithm was conducted on a sample of 23 patients with advanced PD. Patients were asked to wear the kinematic sensor for 1 to 3 days at home, while simultaneously keeping a diary of their On- and Off-periods. During this testing, researchers were not present, and patients continued to carry on their usual daily activities in their natural environment. The algorithm’s outputs were compared with the patients’ records, which were used as the gold standard. Results: The algorithm produced 37% more results than the patients’ records (671 vs 489). The positive predictive value of the algorithm to detect Off-periods, as compared with the patients’ records, was 92% (95% CI 87.33%-97.3%) and the negative predictive value was 94% (95% CI 90.71%-97.1%); the overall classification accuracy was 92.20%. Conclusions: The kinematic sensor and the algorithm for detection of motor-fluctuations validated in this study are an accurate and useful tool for monitoring PD patients with difficult-to-control motor fluctuations in the outpatient setting.
机译:背景:已经开发出一种新算法,该算法结合了位于帕金森病(PD)患者腰部的单个运动传感器提供的有关步态运动迟缓和运动障碍的信息,以检测运动波动(开和关)。目的:本研究的目的是分析在实际使用条件下该算法的准确性。方法:对23名晚期PD患者的样本进行了这项关于电机波动检测算法的验证研究。要求患者在家中佩戴运动传感器1到3天,同时记录其开启和关闭期间的日志。在测试期间,没有研究人员在场,患者继续在自然环境中进行日常活动。该算法的输出与患者的记录进行了比较,后者被用作黄金标准。结果:该算法产生的结果比患者记录多37%(671和489)。与患者的记录相比,用于检测非期间的算法的阳性预测值为92%(95%CI 87.33%-97.3%),阴性预测值为94%(95%CI 90.71%-97.1) %);总体分类准确率为92.20%。结论:本研究中验证的运动传感器和运动波动检测算法是一种用于在门诊环境中监测难以控制的运动波动的PD患者的准确而有用的工具。

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