从心电图得出的呼吸信号和呼吸波形估算潮气量的可行性

IF 3.2 3区 医学 Q2 CRITICAL CARE MEDICINE
Hyun-Lim Yang , Seong-A Park , Hong Yeul Lee , Hyeonhoon Lee , Ho-Geol Ryu
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引用次数: 0

摘要

目的在深度镇静或脊髓麻醉期间,通过心电图(ECG)估计潮气量(VT)非常有用,因为这样就无需额外监测通气情况。本研究旨在利用真实世界的临床数据验证和比较基于心电图衍生呼吸(EDR)的 VT 估算方法。EDR信号由心电图数据生成,VT由基于阻抗的呼吸波形估算。使用平均绝对误差和皮尔逊相关性评估了独立于受试者和特定于受试者的线性回归和深度学习模型。结果VT与呼吸波形之间存在较强的短期相关性(r = 0.78 和 0.96),但随着时间的延长,这种相关性逐渐减弱(r = 0.23 和 - 0.16)。结论虽然基于 EDR 的 VT 估测很有前景,但目前的方法受限于嘈杂的 ICU 心电图信号,但受控环境数据显示 VT 与测量的呼吸波形有显著的短期相关性。未来的研究应开发可靠的 EDR 提取程序并改进预测模型,以扩大临床应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feasibility of estimating tidal volume from electrocardiograph-derived respiration signal and respiration waveform

Purpose

Estimating tidal volume (VT) from electrocardiography (ECG) can be quite useful during deep sedation or spinal anesthesia since it eliminates the need for additional monitoring of ventilation. This study aims to validate and compare VT estimation methodologies based on ECG-derived respiration (EDR) using real-world clinical data.

Materials and methods

We analyzed data from 90 critically ill patients for general analysis and two critically ill patients for constrained analysis. EDR signals were generated from ECG data, and VT was estimated using impedance-based respiration waveforms. Linear regression and deep learning models, both subject-independent and subject-specific, were evaluated using mean absolute error and Pearson correlation.

Results

There was a strong short-term correlation between VT and the respiration waveform (r = 0.78 and 0.96), which weakened over longer periods (r = 0.23 and − 0.16). VT prediction models performed poorly in the general population (R2 = 0.17) but showed satisfactory performance in two constrained patient records using measured respiration waveforms (R2 = 0.84 to 0.94).

Conclusion

Although EDR-based VT estimation is promising, current methodologies are limited by noisy ICU ECG signals, but controlled environment data showed significant short-term correlations with measured respiration waveforms. Future studies should develop reliable EDR extraction procedures and improve predictive models to broaden clinical applications.
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来源期刊
Journal of critical care
Journal of critical care 医学-危重病医学
CiteScore
8.60
自引率
2.70%
发文量
237
审稿时长
23 days
期刊介绍: The Journal of Critical Care, the official publication of the World Federation of Societies of Intensive and Critical Care Medicine (WFSICCM), is a leading international, peer-reviewed journal providing original research, review articles, tutorials, and invited articles for physicians and allied health professionals involved in treating the critically ill. The Journal aims to improve patient care by furthering understanding of health systems research and its integration into clinical practice. The Journal will include articles which discuss: All aspects of health services research in critical care System based practice in anesthesiology, perioperative and critical care medicine The interface between anesthesiology, critical care medicine and pain Integrating intraoperative management in preparation for postoperative critical care management and recovery Optimizing patient management, i.e., exploring the interface between evidence-based principles or clinical insight into management and care of complex patients The team approach in the OR and ICU System-based research Medical ethics Technology in medicine Seminars discussing current, state of the art, and sometimes controversial topics in anesthesiology, critical care medicine, and professional education Residency Education.
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