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DeStress: Deep Learning for Unsupervised Identification of Mental Stress in Firefighters from Heart-Rate Variability (HRV) Data

机译:Destress:深度学习,无监督识别心率变异(HRV)数据的消防员心理压力

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In this work we perform a study of various unsupervised methods to identify mental stress in firefighter trainees based on unlabeled heart rate variability data. We collect RR interval time series data from nearly 100 firefighter trainees that participated in a drill. We explore and compare three methods in order to perform unsupervised stress detection: (1) traditional K-Means clustering with engineered time and frequency domain features (2) convolutional autoencoders and (3) long short-term memory (LSTM) autoencoders, both trained on the raw RR data combined with DBSCAN clustering and K-Nearest-Neighbors classification. We demonstrate that K-Means combined with engineered features is unable to capture meaningful structure within the data. On the other hand, convolutional and LSTM autoencoders tend to extract varying structure from the data pointing to different clusters with different sizes of clusters. We attempt at identifying the true stressed and normal clusters using the HRV markers of mental stress reported in the literature. We demonstrate that the clusters produced by the convolutional autoencoders consistently and successfully stratify stressed versus normal samples, as validated by several established physiological stress markers such as RMSSD, Max-HR, Mean-HR and LF-HF ratio.
机译:在这项工作中,我们对基于未标记的心率可变性数据的消防员学员来识别各种无人监督的方法。我们收集来自参与钻头的近100名消防员的RR间隔时间序列数据。我们探索并比较三种方法,以便进行无监督的压力检测:(1)传统的K-Meanse聚类与工程时间和频率域特征(2)卷积AutomEncoders和(3)长期内存(LSTM)AutoEncoders,无论是训练在原始RR数据与DBSCAN群集和K-Collect-邻居分类组合。我们证明K-Means与工程特征相结合无法在数据中捕获有意义的结构。另一方面,卷积和LSTM AutoEncoders倾向于从指向具有不同大小的簇的不同簇的数据中提取变化的结构。我们试图使用文献中报告的精神压力的HRV标记识别真正的压力和正常簇。我们证明,卷积的自身额相统一和成功地分层与正常样品产生的簇,如诸如RMSSD,MAX-HR,平均值和LF-HF比的几种成熟的生理应激标记物验证。

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