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Semi-Automated Annotation of Phasic Electromyographic Activity

机译:阶段性肌电活动的半自动注释

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Recent research on manual/visual identification of phasic muscle activity utilizing the phasic electromyographic metric (PEM) in human polysom-nograms (PSGs) cites evidence that PEM is a potentially reliable quantitative metric to assist in distinguishing between neurodegenerative disorder populations and age-matched controls. However, visual scoring of PEM activity is time consuming-preventing feasible implementation within a clinical setting. Therefore, here we propose an assistive/semi-supervised software platform designed and tested to automatically identify and characterize PEM events in a clinical setting that will be extremely useful for sleep physicians and technicians. The proposed semi-automated approach consists of four levels: A) Signal Parsing, B) Calculation of quantitative features on candidate PEM events, C) Classification of PEM and non-PEM events using a linear classifier, and D) Post-processing/Expert feedback to correct/remove automated misclassifica-tions of PEM and Non-PEM events. Performance evaluation of the designed software compared to manual labeling is provided for electromyographic (EMG) activity from the PSG of a control subject. Results indicate that the semi-automated approach provides an excellent benchmark that could be embedded into a clinical decision support system to detect PEM events that would be used in neurological disorder identification and treatment.
机译:利用人多导睡眠图(PSG)中的相位肌电图量度(PEM)进行手动/视觉识别相位肌活动的最新研究表明,PEM是一种潜在的可靠定量量度,可帮助区分神经退行性疾病人群和年龄匹配的对照组。但是,PEM活动的视觉评分很耗时,无法在临床环境中实施。因此,在这里,我们提出一种辅助/半监督软件平台,该平台经过设计和测试,可在临床环境中自动识别和表征PEM事件,这对于睡眠医师和技术人员将非常有用。拟议的半自动化方法包括四个级别:A)信号解析,B)计算候选PEM事件的定量特征,C)使用线性分类器对PEM和非PEM事件进行分类,以及D)后处理/专家反馈以更正/删除PEM和Non-PEM事件的自动错误分类。提供了与手动标记相比设计的软件的性能评估,可用于对照对象PSG的肌电图(EMG)活动。结果表明,半自动化方法提供了出色的基准,可以将其嵌入到临床决策支持系统中,以检测将用于神经系统疾病识别和治疗的PEM事件。

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