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首页> 外文期刊>Frontiers in Neuroscience >Computational Testing for Automated Preprocessing 2: Practical Demonstration of a System for Scientific Data-Processing Workflow Management for High-Volume EEG
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Computational Testing for Automated Preprocessing 2: Practical Demonstration of a System for Scientific Data-Processing Workflow Management for High-Volume EEG

机译:自动化预处理的计算测试2:高批量脑电图的科学数据处理工作流程管理系统的实际演示

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Existing tools for the preprocessing of EEG data provide a large choice of methods to suitably prepare and analyse a given dataset. Yet it remains a challenge for the average user to integrate methods for batch processing of the increasingly large datasets of modern research, and compare methods to choose an optimal approach across the many possible parameter configurations. Additionally, many tools still require a high degree of manual decision making for, e.g., the classification of artifacts in channels, epochs or segments. This introduces extra subjectivity, is slow, and is not reproducible. Batching and well-designed automation can help to regularize EEG preprocessing, and thus reduce human effort, subjectivity, and consequent error. The Computational Testing for Automated Preprocessing (CTAP) toolbox facilitates: (i) batch processing that is easy for experts and novices alike; (ii) testing and comparison of preprocessing methods. Here we demonstrate the application of CTAP to high-resolution EEG data in three modes of use. First, a linear processing pipeline with mostly default parameters illustrates ease-of-use for naive users. Second, a branching pipeline illustrates CTAP's support for comparison of competing methods. Third, a pipeline with built-in parameter-sweeping illustrates CTAP's capability to support data-driven method parameterization. CTAP extends the existing functions and data structure from the well-known EEGLAB toolbox, based on Matlab, and produces extensive quality control outputs. CTAP is available under MIT open-source licence from https://github.com/bwrc/ctap .
机译:用于预处理EEG数据的现有工具提供了适当准备和分析给定数据集的大量方法。然而,普通用户仍然是集成现代研究越来越大的数据集的批量处理方法的挑战,并比较了在许多可能的参数配置中选择最佳方法的方法。另外,许多工具仍然需要高度的手动决策,例如,频道,时期或段中的伪影的分类。这引入了额外的主观性,慢,并且不是可重复的。批处理和精心设计的自动化可以帮助正规化EEG预处理,从而减少人力努力,主观性和随之而来的错误。自动预处理(CTAP)工具箱的计算测试有助于:(i)批量处理,适合专家和新手相似; (ii)预处理方法的测试和比较。在这里,我们展示了CTAP在三种使用模式中应用了高分辨率EEG数据。首先,具有大多数默认参数的线性处理管道示出了Naive用户的易用性。其次,分支管道表示CTAP对竞争方法的比较的支持。第三,带内置参数扫描的管道显示了CTAP的支持数据驱动方法参数化的能力。 CTAP根据MATLAB扩展了来自众所周知的EEGLAB工具箱的现有功能和数据结构,并产生了广泛的质量控制输出。 CTAP可以从https://github.com/bwrc/ctap的MIT开源许可证下提供。

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