MMA:元数据支持的多变量关注,用于发病检测和预测

IF 2.8 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Data Mining and Knowledge Discovery Pub Date : 2024-02-19 DOI:10.1007/s10618-024-01008-z
Manjusha Ravindranath, K. Selçuk Candan, Maria Luisa Sapino, Brian Appavu
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引用次数: 0

摘要

深度学习已成功应用于序列理解和翻译问题,尤其是在有大量监督数据的单变量、单模态环境中。然而,在监督数据稀少的更复杂(多模态、多变量)环境中,深度学习的效果通常并不令人满意。在本文中,我们关注的正是在此类情况下提高检测和预测准确性的问题--尤其是,我们关注的是依靠多模态(EEG、ICP、ECG 和 ABP)感官数据流预测癫痫发作的问题,其中一些数据流(如 EEG)由于放置了多个传感器以捕捉相关信号的空间分布,本身就是多变量的。我们特别注意到,多变量时间序列通常具有稳健的时空定位特征,有助于预测发病事件。我们进一步认为,这些特征可用于支持元数据支持的多变量关注(或 MMA)机制的实施,从而有助于显著提高神经网络架构的有效性。在本文中,我们使用所提出的 MMA 方法开发了一种基于 LSTM 的多模态神经网络架构,以处理依赖于 EEG、ICP、ECG 和 ABP 数据流的癫痫发作检测和预测任务。我们在不同的场景下对所提出的架构进行了实验评估--结果表明了所提出的注意力机制的有效性,尤其是与其他元数据驱动的竞争者相比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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MMA: metadata supported multi-variate attention for onset detection and prediction

Deep learning has been applied successfully in sequence understanding and translation problems, especially in univariate, unimodal contexts, where large number of supervision data are available. The effectiveness of deep learning in more complex (multi-modal, multi-variate) contexts, where supervision data is rare, however, is generally not satisfactory. In this paper, we focus on improving detection and prediction accuracy in precisely such contexts – in particular, we focus on the problem of predicting seizure onsets relying on multi-modal (EEG, ICP, ECG, and ABP) sensory data streams, some of which (such as EEG) are inherently multi-variate due to the placement of multiple sensors to capture spatial distribution of the relevant signals. In particular, we note that multi-variate time series often carry robust, spatio-temporally localized features that could help predict onset events. We further argue that such features can be used to support implementation of metadata supported multivariate attention (or MMA) mechanisms that help significantly improve the effectiveness of neural networks architectures. In this paper, we use the proposed MMA approach to develop a multi-modal LSTM-based neural network architecture to tackle seizure onset detection and prediction tasks relying on EEG, ICP, ECG, and ABP data streams. We experimentally evaluate the proposed architecture under different scenarios – the results illustrate the effectiveness of the proposed attention mechanism, especially compared against other metadata driven competitors.

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来源期刊
Data Mining and Knowledge Discovery
Data Mining and Knowledge Discovery 工程技术-计算机:人工智能
CiteScore
10.40
自引率
4.20%
发文量
68
审稿时长
10 months
期刊介绍: Advances in data gathering, storage, and distribution have created a need for computational tools and techniques to aid in data analysis. Data Mining and Knowledge Discovery in Databases (KDD) is a rapidly growing area of research and application that builds on techniques and theories from many fields, including statistics, databases, pattern recognition and learning, data visualization, uncertainty modelling, data warehousing and OLAP, optimization, and high performance computing.
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