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首页> 外文期刊>BioMed research international >Tennis Elbow Diagnosis Using Equivalent Uniform Voltage to Fit the Logistic and the Probit Diseased Probability Models
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Tennis Elbow Diagnosis Using Equivalent Uniform Voltage to Fit the Logistic and the Probit Diseased Probability Models

机译:网球肘诊断使用等效均匀电压适合逻辑和探测患病概率模型

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摘要

To develop the logistic and the probit models to analyse electromyographic (EMG) equivalent uniform voltage- (EUV-) response for the tenderness of tennis elbow. In total, 78 hands from 39 subjects were enrolled. In this study, surface EMG (sEMG) signal is obtained by an innovative device with electrodes over forearm region. The analytical endpoint was defined as Visual Analog Score (VAS) 3+ tenderness of tennis elbow. The logistic and the probit diseased probability (DP) models were established for the VAS score and EMG absolute voltage-time histograms (AVTH). TV_(50) is the threshold equivalent uniform voltage predicting a 50% risk of disease. Twenty-one out of 78 samples (27%) developed VAS 3+ tenderness of tennis elbow reported by the subject and confirmed by the physician. The fitted DP parameters were TV_(50) = 153.0 mV (CI: 136.3-169.7 mV), γ_(50)= 0.84 (CI: 0.78-0.90) and TV_(50) = 155.6 mV (CI: 138.9-172.4 mV), m = 0.54 (CI: 0.49-0.59) for logistic and probit models, respectively. When the EUV >153 mV, the DP of the patient is greater than 50% and vice versa. The logistic and the probit models are valuable tools to predict the DP of VAS 3+ tenderness of tennis elbow.
机译:开发逻辑和概率模型,以分析网球弯头温柔的电焦度(EMG)等效均匀电压 - (EUV-)响应。总共有78人从39名受试者开始注册。在该研究中,表面EMG(SEMG)信号由前臂区域的电极的创新装置获得。分析终点被定义为目视模拟分数(VAS)3+网球弯头的温柔。为VAS分数和EMG绝对电压 - 时直方图(AVTH)建立了逻辑和探测缺陷概率(DP)模型。 TV_(50)是阈值等效均匀电压,预测疾病风险50%。 78个样品中的21个(27%)开发了该主题报告的网球肘的VAS 3+温柔,并由医生证实。拟合DP参数为TV_(50)= 153.0 mV(CI:136.3-169.7 mV),γ_(50)= 0.84(CI:0.78-0.90)和TV_(50)= 155.6 mV(CI:138.9-172.4 mV) ,M = 0.54(CI:0.49-0.59)分别用于逻辑和探测模型。当EUV> 153mV时,患者的DP大于50%,反之亦然。逻辑和概率模型是有价值的工具,以预测网球弯头的VAS 3+温柔的DP。

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