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首页> 外文期刊>Frontiers in Human Neuroscience >Automatic Removal of Physiological Artifacts in EEG: The Optimized Fingerprint Method for Sports Science Applications
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Automatic Removal of Physiological Artifacts in EEG: The Optimized Fingerprint Method for Sports Science Applications

机译:自动清除EEG中的生理伪像:体育科学应用中的最佳指纹方法

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Data contamination due to physiological artifacts such as those generated by eyeblinks, eye movements, and muscle activity continues to be a central concern in the acquisition and analysis of electroencephalographic (EEG) data. This issue is further compounded in EEG sports science applications where the presence of artifacts is notoriously difficult to control because behaviors that generate these interferences are often the behaviors under investigation. Therefore, there is a need to develop effective and efficient methods to identify physiological artifacts in EEG recordings during sports applications so that they can be isolated from cerebral activity related to the activities of interest. We have developed an EEG artifact detection model, the Fingerprint Method, which identifies different spatial, temporal, spectral, and statistical features indicative of physiological artifacts and uses these features to automatically classify artifactual independent components in EEG based on a machine leaning approach. Here, we optimized our method using artifact-rich training data and a procedure to determine which features were best suited to identify eyeblinks, eye movements, and muscle artifacts. We then applied our model to an experimental dataset collected during endurance cycling. Results reveal that unique sets of features are suitable for the detection of distinct types of artifacts and that the Optimized Fingerprint Method was able to correctly identify over 90% of the artifactual components with physiological origin present in the experimental data. These results represent a significant advancement in the search for effective means to address artifact contamination in EEG sports science applications.
机译:由于生理伪影(例如由眨眼,眼动和肌肉活动所产生的伪影)引起的数据污染仍然是脑电图(EEG)数据的获取和分析中的主要问题。这个问题在EEG体育科学应用程序中更加复杂,因为众所周知,伪影的存在很难控制,因为产生这些干扰的行为通常是受调查的行为。因此,需要开发有效和高效的方法以在体育应用过程中识别EEG记录中的生理伪影,以便可以将它们与与感兴趣的活动有关的脑活动中分离出来。我们已经开发了一种EEG伪影检测模型,即“指纹法”,该模型可识别出指示生理伪影的不同空间,时间,频谱和统计特征,并使用这些特征基于机器学习方法自动对EEG中的伪影独立成分进行分类。在这里,我们使用富含伪影的训练数据和确定最适合识别眨眼,眼动和肌肉伪影的功能的过程来优化我们的方法。然后,我们将模型应用于耐力骑行期间收集的实验数据集。结果表明,独特的特征集适用于检测不同类型的伪像,并且“优化指纹方法”能够正确识别实验数据中超过90%的具有生理起源的伪像成分。这些结果代表着在寻找有效方法解决脑电图运动科学应用中的伪影污染方面的重大进步。

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