面向医疗分类的脑电信号采集、分析与建模

Bhaskar Kapoor, Bharti Nagpal
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引用次数: 0

摘要

使用非侵入性方法从大脑中获取脑电图(EEG)来分析这些信号,包括对信号时代的视觉检查,从这些连续记录中提取特征,以及产生一些早期预测或分类。本文对脑电信号的采集、分析进行了研究,并将其用于正常和异常分类,建立了用于医疗保健的鲁棒模型。本文的主要目的是研究各种性能分析与评价的最新技术和方法。下一个目标是尝试建模和改进我们研究中使用的各种方法的结果。生物信号采集自Biosense BCI蓝牙设备(单通道)和天普医院大学预先录制的数据集进行预处理和分析。论文的第一部分使用EEGLab对特征选择进行了一些改进,这有助于机器学习技术的分类,另一部分通过对各种伪像校正和抑制算法的比较分析,说明了脑电数据的预处理。本文的总体结果表明,利用较长的延迟和少量输出的交替可以获得较高的精度,这限制了设备中使用的脑电信号传感器的脑电信号记录信息提取,并取决于其可用性。
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EEG Signals Acquisition, Analysis and Modeling for Classification in Healthcare
Acquisition of electroencephalographic (EEG) from the brain using Non-invasive methods for the analyzing these signals includes visual inspection of the epoch of signals, feature extraction from these continuous recordings, and generation of some early prediction or classification. This paper studied Acquisition, Analysis of EEG Signals which can used for classification in normal and abnormal category for making a robust model used in Healthcare. The primary goal of this paper is to study various analysis and evaluation of the performance of the state of the art techniques and methods. Next goal is to try for modelling and some improvement in result of various methods which were used in our study. Biosignals were collected from Biosense BCI Bluetooth Device (single channel) and prerecorded dataset from Temple Hospital University for preprocessing and analysis. Initial part of paper carried out some improvement in the feature selection using EEGLab which is useful for the classification by machine learning technique and other part explained the preprocessing of EEG data with comparative analysis of various artifact correction and rejection algorithms. Overall results achieved by this paper shows that high accuracies can be gained with the help of long delays and using alternation in few output which limits EEG recorded information extraction from the EEG sensor used in the device and depends on its usability.
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