...
首页> 外文期刊>Journal of Neuroscience Methods >Methods for automatic detection of artifacts in microelectrode recordings
【24h】

Methods for automatic detection of artifacts in microelectrode recordings

机译:微电极记录中自动检测伪影的方法

获取原文
获取原文并翻译 | 示例
           

摘要

Graphical abstract Display Omitted Highlights ? Artifacts are common in intra-operative micro electrode recordings (MER) – up to 25%. ? We propose a set of classifiers for automatic artifact detection. ? The methods are evaluated on a database of 5735 manually labeled MER signals. ? The best-performing classifiers achieved up to 89% test-set accuracy. ? Matlab source codes and sample data are available in the supplement. Abstract Background Extracellular microelectrode recording (MER) is a prominent technique for studies of extracellular single-unit neuronal activity. In order to achieve robust results in more complex analysis pipelines, it is necessary to have high quality input data with a low amount of artifacts. We show that noise (mainly electromagnetic interference and motion artifacts) may affect more than 25% of the recording length in a clinical MER database. New method We present several methods for automatic detection of noise in MER signals, based on (i) unsupervised detection of stationary segments, (ii) large peaks in the power spectral density, and (iii) a classifier based on multiple time- and frequency-domain features. We evaluate the proposed methods on a manually annotated database of 5735 ten-second MER signals from 58 Parkinson's disease patients. Comparison with existing methods The existing methods for artifact detection in single-channel MER that have been rigorously tested, are based on unsupervised change-point detection. We show on an extensive real MER database that the presented techniques are better suited for the task of artifact identification and achieve much better results. Results The best-performing classifiers (bagging and decision tree) achieved artifact classification accuracy of up to 89% on an unseen test set and outperformed the unsupervised techniques by 5–10%. This was close to the level of agreement among raters using manual annotation (93.5%). Conclusion We conclude that the proposed methods are suitable for automatic MER denoising and may help in the efficient elimination of undesirable signal artifacts. ]]>
机译:图形抽象显示省略了亮点?术中的术中常见的术语常见于25%。还我们提出了一系列用于自动伪影检测的分类器。还这些方法在手动标记的MER信号的5735的数据库上进行评估。还最佳性分类机可实现高达89%的测试设定精度。还MATLAB源代码和样品数据可在补充中使用。摘要背景外细胞微电极记录(MER)是用于研究细胞外单位神经元活动的突出技术。为了在更复杂的分析管道中实现稳健的结果,有必要具有少量伪像的高质量输入数据。我们表明噪声(主要是电磁干扰和运动伪影)可能会影响临床MEL数据库中的录制长度的25%以上。新方法我们提出了几种用于在MER信号中自动检测噪声的几种方法,基于(i)无监督检测静止段,(ii)功率谱密度的大峰值,(iii)基于多个时间和频率的分类器 - 域特色。我们评估了来自5735个10秒MER信号的手动注释数据库中提出的方法,来自58例帕金森病患者。与现有方法的比较,在已经严格地测试的单通道MER中的现有方法的现有方法基于无监督的变化点检测。我们在广泛的实际MER数据库中展示了所呈现的技术更适合神器识别的任务,实现更好的结果。结果最佳性分类器(袋装和决策树)在看不见的试验集上实现了高达89%的工件分类精度,并优于未经监督的技术5-10%。这与使用手动注释(93.5%)的评级人之间的协议水平接近。结论我们得出结论,所提出的方法适用于自动变化,可有助于消除不希望的信号伪影。 ]]>

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号