结合相空间重建和深度学习方法的神经异常早期检测

Amjed Al Fahoum, Ala’a Zyout
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引用次数: 0

摘要

关于使用脑电图(EEG)信号检测抑郁症的科学文献非常广泛,并提供了许多创新方法。然而,这些现有的先进技术(SOTA)有局限性,阻碍了它们的整体功效。它们在很大程度上依赖于范围和可访问性有限的数据集,这引入了潜在的偏差并降低了可泛化性。此外,他们专注于分析单个数据集,可能忽略了与抑郁症相关的脑电图模式的内在变异性和复杂性。此外,某些SOTA方法采用具有指数时间复杂度的深度学习架构,导致计算密集型和耗时的训练过程。因此,它们在实际场景中的实用性和适用性受到了损害。为了解决这些局限性,提出了一种结合相空间重构和深度神经网络优点的集成方法。它采用公开可用的脑电图数据集,减轻了专有数据源的固有偏见。此外,该方法结合了重构相空间分析,这是一种特征工程技术,可以更准确地捕获与抑郁症相关的复杂脑电图模式。同时,深度神经网络组件的结合保证了最佳效率和准确,无缝分类。利用公开可用的数据集,跨数据集验证,以及重构相空间分析和深度神经网络的新组合,该方法克服了当前最先进(SOTA)方法的缺点。这一创新在提高抑郁症检测的准确性方面取得了重大进展,并为适用于现实环境的基于脑电图的抑郁症评估工具提供了基础。研究结果提供了一个更稳健和高效的模型,提高了分类精度,减少了计算负担。研究结果为可扩展的、可获得的心理健康解决方案奠定了基础,确定了受影响脑组织的病理缺陷,并展示了技术驱动方法在支持和指导抑郁症患者和提高心理健康结果方面的潜力。
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Early detection of neurological abnormalities using a combined phase space reconstruction and deep learning approach

The scientific literature on depression detection using electroencephalogram (EEG) signals is extensive and offers numerous innovative approaches. However, these existing state-of-the-art (SOTA) have limitations that hinder their overall efficacy. They rely significantly on datasets with limited scope and accessibility, which introduces potential biases and diminishes generalizability. In addition, they concentrate on analyzing a single dataset, potentially overlooking the inherent variability and complexity of EEG patterns associated with depression. Moreover, certain SOTA methods employ deep learning architectures with exponential time complexity, resulting in computationally intensive and time-consuming training procedures. Therefore, their practicability and applicability in real-world scenarios are compromised. To address these limitations, a novel integrated methodology that combines the advantages of phase space reconstruction and deep neural networks is proposed. It employs publicly available EEG datasets, mitigating the inherent biases of exclusive data sources. Moreover, the method incorporates reconstructed phase space analysis, a feature engineering technique that captures more accurately the complex EEG patterns associated with depression. Simultaneously, the incorporation of a deep neural network component guarantees optimal efficiency and accurate, seamless classification. Using publicly available datasets, cross-dataset validation, and a novel combination of reconstructed phase space analysis and deep neural networks, the proposed method circumvents the shortcomings of current state-of-the-art (SOTA) approaches. This innovation represents a significant advance in enhancing the accuracy of depression detection and provides the base for EEG-based depression assessment tools applicable to real-world settings. The findings of the study provide a more robust and efficient model, which increases classification precision and decreases computing burden. The study findings layout the foundation for scalable, accessible mental health solutions, identification of the pathological deficits in affected brain tissues, and demonstrate the potential of technology-driven approaches to support and guide depressed individuals and enhance mental health outcomes.

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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
CiteScore
5.00
自引率
0.00%
发文量
0
审稿时长
187 days
期刊最新文献
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