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首页> 外文期刊>Methods: A Companion to Methods in Enzymology >A machine learning approach for automated wide-range frequency tagging analysis in embedded neuromonitoring systems
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A machine learning approach for automated wide-range frequency tagging analysis in embedded neuromonitoring systems

机译:嵌入式神经监测系统中自动化宽范围频率标记分析的机器学习方法

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摘要

Highlights ? The algorithm is implemented and tested on a ultra-low power embedded platform. ? The artefact removal is completely automated gaining high accuracy from SVM classifier. ? Frequency detection is completely automated gaining high accuracy from Linear Regression. ? The complexity of the algorithm is 6 time lesser than the traditional approach. Abstract EEG is a standard non-invasive technique used in neural disease diagnostics and neurosciences. Frequency-tagging is an increasingly popular experimental paradigm that efficiently tests brain function by measuring EEG responses to periodic stimulation. Recently, frequency-tagging paradigms have proven successful with low stimulation frequencies (0.5–6Hz), but the EEG signal is intrinsically noisy in this frequency range, requiring heavy signal processing and significant human intervention for response estimation. This limits the possibility to process the EEG on resource-constrained systems and to design smart EEG based devices for automated diagnostic. We propose an algorithm for artifact removal and automated detection of frequency tagging responses in a wide range of stimulation frequencies, which we test on a visual stimulation protocol. The algorithm is rooted on machine learning based pattern recognition techniques and it is tailored for a new generation parallel ultra low power processing platform (PULP), reaching performance of more that 90% accuracy in the frequency detection even for very low stimulation frequencies ( 1Hz) with a power budget of 56mW.
机译:强调 ?该算法在超低功耗嵌入式平台上实现和测试。还从SVM分类器中可以完全自动化的自动化自动化。还频率检测完全自动化从线性回归中获得高精度。还算法的复杂性比传统方法更小。摘要EEG是神经疾病诊断和神经科学中使用的标准非侵入性技术。频率标记是一种越来越受欢迎的实验范式,可以通过测量周期性刺激来有效地测试大脑功能。最近,频率标记范式已经成功地使用低刺激频率(0.5-6Hz),但EEG信号在该频率范围内本质上嘈杂,需要重型信号处理和显着的人为干预以进行响应估计。这限制了处理资源受限系统上的eEG的可能性,并设计用于自动诊断的智能eEG的设备。我们提出了一种用于在各种刺激频率中进行伪影拆除和自动检测的仿真算法,我们在视觉刺激协议上测试。该算法源于基于机器学习的模式识别技术,它为新一代并行超低功率处理平台(纸浆)量身定制,即使对于非常低的刺激频率(1Hz),达到频率检测的精度的性能也达到了90%的性能电源预算为56mW。

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