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首页> 外文期刊>Computer methods in biomechanics and bio >SEV - a software toolbox for large scale analysis and visualization of polysomnography data
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SEV - a software toolbox for large scale analysis and visualization of polysomnography data

机译:SEV-用于多导睡眠图数据的大规模分析和可视化的软件工具箱

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摘要

SEV is a graphical toolbox designed in MATLAB for displaying polysomnography (PSG) signals recorded during sleep studies, prototyping signal-processing algorithms and automating sleep feature extraction methods across large collections or cohorts of such studies. Format imported are European Data Formats and event/hypnogram files. Time-series analysis can be performed using a suite of classifiers, filters and signal decomposition tools (e.g. wavelets) developed internally or implemented from validated methods published by others. Power spectral analysis can be performed using either periodogram averaging or multiple spectrum independent component analysis. The tool is highly configurable and provides a simple framework for classifier optimization and extensibility. MATLAB's parallel processing toolbox is utilized during batch processing. Output formats include MySQL database entry, tab-delimited text and MATLAB archive (.MAT). The tool is well suited for genetic or epidemiological sleep research questions requiring rigorous, robust and reproducible evaluation of a PSG-based sleep study cohort. Current built-in applications include modules to detect and quantify rapid eye movements and spindle activity (using existing algorithms), inter-channel electroencephalography coherence and a detector developed in house to quantify periodic leg movements during sleep. SEV is open source and freely available under a common creative license.
机译:SEV是MATLAB中设计的图形工具箱,用于显示睡眠研究期间记录的多导睡眠图(PSG)信号,原型信号处理算法并在此类研究的大量集合或群组中自动执行睡眠特征提取方法。导入的格式是欧洲数据格式和事件/催眠图文件。可以使用内部开发的或从他人发布的经过验证的方法实施的一系列分类器,滤波器和信号分解工具(例如小波)来执行时间序列分析。可以使用周期图平均或多光谱独立分量分析来执行功率谱分析。该工具是高度可配置的,并提供了用于分类器优化和可扩展性的简单框架。在批处理过程中使用MATLAB的并行处理工具箱。输出格式包括MySQL数据库条目,制表符分隔的文本和MATLAB存档(.MAT)。该工具非常适合需要对基于PSG的睡眠研究队列进行严格,可靠和可重现评估的遗传或流行病学睡眠研究问题。当前的内置应用程序包括用于检测和量化快速眼动和纺锤活动(使用现有算法)的模块,通道间脑电图一致性和内部开发的检测器,用于量化睡眠期间周期性的腿部运动。 SEV是开源的,可在通用创作许可下免费获得。

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