Exploring Unsupervised Machine Learning Classification Methods for Physiological Stress Detection

IF 2.7 Q3 ENGINEERING, BIOMEDICAL Frontiers in medical technology Pub Date : 2022-03-11 DOI:10.3389/fmedt.2022.782756
Talha Iqbal, A. Elahi, W. Wijns, A. Shahzad
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引用次数: 8

Abstract

Over the past decade, there has been a significant development in wearable health technologies for diagnosis and monitoring, including application to stress monitoring. Most of the wearable stress monitoring systems are built on a supervised learning classification algorithm. These systems rely on the collection of sensor and reference data during the development phase. One of the most challenging tasks in physiological or pathological stress monitoring is the labeling of the physiological signals collected during an experiment. Commonly, different types of self-reporting questionnaires are used to label the perceived stress instances. These questionnaires only capture stress levels at a specific point in time. Moreover, self-reporting is subjective and prone to inaccuracies. This paper explores the potential feasibility of unsupervised learning clustering classifiers such as Affinity Propagation, Balanced Iterative Reducing and Clustering using Hierarchies (BIRCH), K-mean, Mini-Batch K-mean, Mean Shift, Density-Based Spatial Clustering of Applications with Noise (DBSCAN) and Ordering Points To Identify the Clustering Structure (OPTICS) for implementation in stress monitoring wearable devices. Traditional supervised machine learning (linear, ensembles, trees, and neighboring models) classifiers require hand-crafted features and labels while on the other hand, the unsupervised classifier does not require any labels of perceived stress levels and performs classification based on clustering algorithms. The classification results of unsupervised machine learning classifiers are found comparable to supervised machine learning classifiers on two publicly available datasets. The analysis and results of this comparative study demonstrate the potential of unsupervised learning for the development of non-invasive, continuous, and robust detection and monitoring of physiological and pathological stress.
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探索生理应激检测的无监督机器学习分类方法
在过去十年中,用于诊断和监测的可穿戴健康技术有了重大发展,包括应用于压力监测。大多数可穿戴应力监测系统都是建立在监督学习分类算法上的。这些系统在开发阶段依赖于传感器和参考数据的收集。生理或病理应激监测中最具挑战性的任务之一是对实验中收集的生理信号进行标记。通常,不同类型的自我报告问卷被用来标记感知到的压力实例。这些问卷只记录了特定时间点的压力水平。此外,自我报告是主观的,容易出现不准确的情况。本文探讨了无监督学习聚类分类器的潜在可行性,如亲和力传播、平衡迭代约简和分层聚类(BIRCH)、K-mean、Mini-Batch K-mean、Mean Shift、基于密度的带噪声应用空间聚类(DBSCAN)和排序点识别聚类结构(OPTICS),用于应力监测可穿戴设备的实现。传统的监督机器学习(线性、集成、树和邻近模型)分类器需要手工制作特征和标签,而另一方面,无监督分类器不需要感知压力水平的任何标签,并基于聚类算法执行分类。在两个公开可用的数据集上,发现无监督机器学习分类器的分类结果与监督机器学习分类器相当。这项比较研究的分析和结果表明,无监督学习在无创、连续和稳健的生理和病理应激检测和监测方面的发展潜力。
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来源期刊
CiteScore
3.70
自引率
0.00%
发文量
0
审稿时长
13 weeks
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