Inertial Sensors-Based Assessment of Human Breathing Pattern: A Systematic Literature Review

Algorithms Pub Date : 2024-05-23 DOI:10.3390/a17060223
R. Martins, Fátima Rodrigues, Susana Costa, Nélson Costa
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Abstract

Breathing pattern assessment holds critical importance in clinical practice for detecting respiratory dysfunctions and their impact on health and wellbeing. This systematic literature review investigates the efficacy of inertial sensors in assessing adult human breathing patterns, exploring various methodologies, challenges, and limitations. Utilizing the PSALSAR framework, incorporating the PICOC method and PRISMA statement for comprehensive research, 22 publications were scrutinized from the Scopus, Web of Science, and PubMed databases. A diverse range of sensor fusion methods, data signal analysis techniques, and classifier performances were investigated. Notably, Madgwick’s algorithm and the Principal Component Analysis showed superior performance in tracking respiratory movements. Classifiers like Long Short-Term Memory Recurrent Neural Networks exhibited high accuracy in detecting breathing events. Motion artifacts, limited sample sizes, and physiological variability posed challenges, highlighting the need for further research. Optimal sensor configurations were explored, suggesting improvements with multiple sensors, especially in different body postures. In conclusion, this systematic literature review elucidates methods, challenges, and potential future developments in using inertial sensors for assessing adult human breathing patterns. Overcoming the challenges related to sensor placement, motion artifacts, and algorithm development is essential for progress. Future research should focus on extending sensor applications to clinical settings and diverse populations, enhancing respiratory health management.
基于惯性传感器的人类呼吸模式评估:系统性文献综述
在临床实践中,呼吸模式评估对于检测呼吸功能障碍及其对健康和幸福的影响至关重要。本系统性文献综述研究了惯性传感器在评估成人呼吸模式方面的功效,探讨了各种方法、挑战和局限性。利用 PSALSAR 框架,结合 PICOC 方法和 PRISMA 声明进行综合研究,对 Scopus、Web of Science 和 PubMed 数据库中的 22 篇出版物进行了仔细研究。对各种传感器融合方法、数据信号分析技术和分类器性能进行了研究。值得注意的是,Madgwick 算法和主成分分析法在追踪呼吸运动方面表现出色。长短期记忆递归神经网络等分类器在检测呼吸事件方面表现出较高的准确性。运动伪影、有限的样本量和生理变异性带来了挑战,凸显了进一步研究的必要性。对最佳传感器配置进行了探讨,结果表明,使用多个传感器,尤其是在不同身体姿势下,效果会有所改善。总之,本系统性文献综述阐明了使用惯性传感器评估成人呼吸模式的方法、挑战和未来发展潜力。要取得进展,必须克服与传感器放置、运动伪影和算法开发相关的挑战。未来的研究应侧重于将传感器应用扩展到临床环境和不同人群,从而加强呼吸健康管理。
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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