利用EEG数据进行自动睡眠阶段评分的欠采样模型:利用DWT、袋装树和随机欠采样在睡眠阶段问题上获得更一致的准确性

Zachary I. Li, James Yang, Jianguo Liu
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引用次数: 0

摘要

睡眠是人体最重要的功能之一,然而许多疾病破坏了这一生理过程。这些情况可以通过观察患者进入的睡眠阶段的模式和长度来诊断;然而,这个过程需要由专家对患者的脑电图模式进行手动评分。这个过程耗时且难以实现,但人工智能对睡眠阶段的准确和自动评分将帮助医疗专业人员快速提供诊断和治疗。本文提出了一种利用小波分解进行特征提取的袋状树模型,同时利用随机欠采样来处理固有的数据不平衡。我们在5倍交叉验证和测试集上分别达到85.1%和87.1%的准确率。所有阶段的精度是一致的,这表明该模型可能比其他名义上精度更高的模型更适合实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Undersampled Model for Automated Sleep Stage Scoring Using EEG Data: Utilization of DWT, bagged trees, and random undersampling to achieve more consistent accuracy on the sleepstage problem
Sleep is one of the most critical functions of the human body, yet many disorders disrupt this physiological process. These conditions can be diagnosed by observing the pattern and length of sleep stages that a patient enters; however, this process requires the manual scoring of a patient's EEG patterns by a specialist. This process is time-consuming and inaccessible, but the accurate and automated scoring of sleep stages by artificial intelligence would help medical professionals quickly offer diagnoses and treatments. In this paper, we propose a bagged trees model using wavelet decomposition for feature extraction, while also utilizing random undersampling to handle the inherent data imbalance. We achieve 85.1% and 87.1 % accuracy on 5-fold cross validation and the test set, respectively. The accuracy across all stages is consistent, indicating that the model may be more suitable for real-world applications than other models with nominally higher accuracies.
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