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Predictive Models for Differentiation Between Normal and Abnormal EEG Through Cross-Correlation and Machine Learning Techniques

机译:通过互相关和机器学习技术区分正常脑电图和异常脑电图的预测模型

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摘要

Currently, in hospitals and medical clinics, large amounts of data are becoming increasingly registered, which usually are derived from clinical examinations and procedures. An example of stored data is the electroencephalogram (EEG), which is of high importance to the various diseases that affect the brain. These data are stored to keep the patient's clinical history and to help medical experts in performing future procedures, such as pattern discovery from specific diseases. However, the increase in medical data storage makes unfeasible their manual analysis. Also, the EEG can contain patterns difficult to be observed by naked eye. In this work, a cross-correlation technique was applied for feature extraction of a set of 200 EEG segments. Afterwards, predictive models were built using machine learning algorithms such as J48, INN, and BP-MLP (backpropagation based on multilayer perceptron), that implement decision tree, nearest neighbor, and artificial neural network, respectively. The models were evaluated using 10-fold cross-validation and contingency table methods. The evaluation results showed that the model built with the J48 performed better and was more likely to correctly classify EEG segments in this study than INN and BP-MLP, corresponding to 98.50% accuracy.
机译:当前,在医院和诊所中,越来越多的数据被注册,这些数据通常来自临床检查和程序。脑电图(EEG)是存储数据的一个示例,它对影响大脑的各种疾病具有高度重要性。这些数据被存储以保留患者的临床病史并帮助医学专家执行未来的程序,例如从特定疾病中发现模式。但是,医疗数据存储的增加使得对其进行手动分析变得不可行。而且,EEG可能包含肉眼难以观察到的模式。在这项工作中,将互相关技术应用于一组200个EEG段的特征提取。之后,使用机器学习算法(例如J48,INN和BP-MLP(基于多层感知器的反向传播))构建预测模型,分别实现决策树,最近邻居和人工神经网络。使用10倍交叉验证和列联表方法评估了模型。评估结果表明,与INN和BP-MLP相比,在本研究中使用J48构建的模型表现更好,并且更可能正确分类脑电图节段,对应的准确性为98.50%。

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