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S70 Estimating motor unit number from CMAP scans – MScanFIT MUNE

机译:S70估算来自CMAP扫描的电机单位数 - MSCanfit Mune

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Objectives There is no method that can measure the exact number of motor units, therefore motor unit number estimation (MUNE) methods have been developed. Most MUNE methods are based on estimating the size of an average surface-recorded motor unit potential and dividing that value into maximal compound action potential (CMAP). This makes the estimates strongly influenced by any bias in unit selection. Other limitations of the existing MUNE methods are the presence of subjectivity in the estimation process, the failure to sample enough units or the long time to perform the test or analyse. To overcome these limitations, a new MUNE method was recently developed, so-called ‘MScanFit MUNE‘, (MScan). Methods MScan meets the above-mentioned criticisms by fitting a model to a detailed stimulus-response curve (~500 stimuli) or ‘CMAP scan’, taking into account the threshold variability of all the units, and avoiding subjectivity. Results The method has been found to be accurate (mean absolute error 7%) for simulated data.The reproducibility and the diagnostic utility of MScan were found to be good in healthy controls and in patients with amyotrophic lateral sclerosis (ALS) and different types of polyneuropathy. Discussion MScan revealed in neurofibromatosis-type-2 patients denervation and reinnervation in peripheral nerves suggesting that it may be used to quantify and monitor disease progression. Conclusions MScan is a novel method with good reproducibility, and may be performed in less than five minutes. Significance Preliminary results suggest MScan as a promising MUNE method with potential to be used in diagnoses and monitoring disease progression, particularly in ALS. ]]>
机译:目的没有任何方法可以测量电机单元的确切数量,因此开发了电机单元号估计(Mune)方法。大多数原因是估计平均表面记录的电机单元电位的大小,并将该值分成最大化合物作用电位(CMAP)。这使得估计受到单位选择中任何偏差的强烈影响。现有的语言方法的其他局限性是估计过程中存在主观性,失败样本足够的单位或长时间执行测试或分析。为了克服这些限制,最近开发了一种新的语言方法,所谓的“MSCANFIT Mune”(MSCan)。方法MSCAN通过将模型拟合到详细的刺激响应曲线(〜500次刺激)或'CMAP扫描',考虑到所有单元的阈值可变性,并避免主观性,符合上述批判。结果已被发现该方法是模拟数据的准确(平均绝对误差7%)。发现MSCan的再现性和诊断效用是良好的健康对照和肌萎缩侧面硬化剂(ALS)和不同类型的患者多变病变。讨论Mscan在神经纤维瘤病 - 2型患者中揭示的外周神经中的病症和重新治疗,表明它可用于量化和监测疾病进展。结论MSCAN是一种新的再现性的新方法,可以在不到五分钟内进行。意义初步结果表明,MSCan作为具有用于诊断和监测疾病进展的潜力,特别是在ALS中的潜力。 ]]>

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