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慢性呼吸道疾病患者的生理信号熵:一项系统综述

Physiological signal entropy in patients with chronic respiratory disease: a systematic review.

作者信息

Alotaibi Nawal, Cheung Maggie, Shah Amar, Hurst John R, Mani Ali R, Mandal Swapna

机构信息

UCL Respiratory, University College London, London, UK

Prince Sultan Military College of Health Sciences, Dhahran, Saudi Arabi.

出版信息

Eur Respir Rev. 2025 Apr 30;34(176). doi: 10.1183/16000617.0252-2024. Print 2025 Apr.

Abstract

BACKGROUND

Chronic respiratory diseases (CRDs) such as COPD and asthma have a substantial impact on patients and healthcare systems. Recent research on diagnosing and monitoring CRDs highlights the potential of continuous measurement of physiological parameters using nonlinear measures such as entropy analysis. Entropy measures the irregularity and complexity of physiological signals, reflecting the engagement of physiological control mechanisms. This systematic review examines the current evidence on changes in the entropy of physiological signals in CRDs.

METHODS

The review follows Preferred Reporting in Systematic Reviews and Meta-Analyses (PRISMA) guidelines and includes studies from databases such as Scopus, Medline, CINAHL and Embase. Quality assessment was conducted using the Newcastle-Ottawa Scale. Evidence was qualitatively synthesised, taking into account entropy signals, entropy type and results.

RESULTS

11 studies met the inclusion criteria. Entropy in signals including heart rate variability (HRV), airflow, peripheral oxygen saturation ( ), inter-breath interval and tidal volume were evaluated. The findings indicated that patients with COPD and asthma exhibit lower entropy in HRV and airflow compared to healthy controls, with entropy decreasing as disease severity increases. Conversely, entropy values were increased during an exacerbation compared to stable COPD.

CONCLUSION

The review highlights the potential of entropy analysis of physiological signals for early detection of COPD exacerbations and for differentiating between various levels of disease severity in both COPD and asthma. Additionally, it identifies research gaps, particularly in relation to other CRDs such as bronchiectasis and interstitial lung diseases. Further research is needed to facilitate the development of this approach into a fully effective tool for clinical practice.

摘要

背景

慢性呼吸道疾病(CRDs),如慢性阻塞性肺疾病(COPD)和哮喘,对患者和医疗系统有重大影响。近期关于CRDs诊断和监测的研究强调了使用非线性测量方法(如熵分析)连续测量生理参数的潜力。熵衡量生理信号的不规则性和复杂性,反映生理控制机制的参与情况。本系统评价考察了CRDs中生理信号熵变化的现有证据。

方法

本评价遵循系统评价和Meta分析的首选报告项目(PRISMA)指南,纳入来自Scopus、Medline、CINAHL和Embase等数据库的研究。使用纽卡斯尔-渥太华量表进行质量评估。综合考虑熵信号、熵类型和结果,对证据进行定性综合。

结果

11项研究符合纳入标准。对包括心率变异性(HRV)、气流、外周血氧饱和度、呼吸间隔和潮气量在内的信号中的熵进行了评估。结果表明,与健康对照相比,COPD和哮喘患者的HRV和气流熵较低,且随着疾病严重程度增加熵降低。相反,与稳定期COPD相比,急性加重期外周血氧饱和度熵值增加。

结论

本评价强调了生理信号熵分析在早期检测COPD急性加重以及区分COPD和哮喘不同疾病严重程度方面的潜力。此外,它还确定了研究空白,特别是与支气管扩张和间质性肺疾病等其他CRDs相关的空白。需要进一步研究以促进将该方法发展成为临床实践中完全有效的工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5683/12041931/86c373bd6ff6/ERR-0252-2024.01.jpg

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