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利用心率变异性预测创伤性脑损伤 ICU 患者的结局。

Utilizing heart rate variability to predict ICU patient outcome in traumatic brain injury.

机构信息

Menzies Health Institute QLD, Griffith University, Gold Coast, Australia.

School of Medical Science, Griffith University, Gold Coast, Australia.

出版信息

BMC Bioinformatics. 2020 Dec 14;21(Suppl 17):481. doi: 10.1186/s12859-020-03814-w.

Abstract

BACKGROUND

Prediction of patient outcome in medical intensive care units (ICU) may help for development and investigation of early interventional strategies. Several ICU scoring systems have been developed and are used to predict clinical outcome of ICU patients. These scores are calculated from clinical physiological and biochemical characteristics of patients. Heart rate variability (HRV) is a correlate of cardiac autonomic regulation and has been evident as a marker of poor clinical prognosis. HRV can be measured from the electrocardiogram non-invasively and monitored in real time. HRV has been identified as a promising 'electronic biomarker' of disease severity. Traumatic brain injury (TBI) is a subset of critically ill patients admitted to ICU, with significant morbidity and mortality, and often difficult to predict outcomes. Changes of HRV for brain injured patients have been reported in several studies. This study aimed to utilize the continuous HRV collection from admission across the first 24 h in the ICU in severe TBI patients to develop a patient outcome prediction system.

RESULTS

A feature extraction strategy was applied to measure the HRV fluctuation during time. A prediction model was developed based on HRV measures with a genetic algorithm for feature selection. The result (AUC: 0.77) was compared with earlier reported scoring systems (highest AUC: 0.76), encouraging further development and practical application.

CONCLUSIONS

The prediction models built with different feature sets indicated that HRV based parameters may help predict brain injury patient outcome better than the previously adopted illness severity scores.

摘要

背景

在医疗重症监护病房(ICU)中预测患者的预后可以帮助制定和研究早期干预策略。已经开发了几种 ICU 评分系统,用于预测 ICU 患者的临床预后。这些评分是根据患者的临床生理和生化特征计算得出的。心率变异性(HRV)是心脏自主调节的相关指标,已被证明是临床预后不良的标志物。HRV 可以从心电图无创测量,并实时监测。HRV 已被确定为一种有前途的疾病严重程度“电子生物标志物”。创伤性脑损伤(TBI)是 ICU 收治的危重症患者亚组,发病率和死亡率均较高,且预后常常难以预测。已有几项研究报道了脑损伤患者 HRV 的变化。本研究旨在利用 ICU 内严重 TBI 患者入院后 24 小时内的连续 HRV 采集来开发一种患者预后预测系统。

结果

应用特征提取策略来测量 HRV 在时间上的波动。基于 HRV 测量值,使用遗传算法进行特征选择来开发预测模型。结果(AUC:0.77)与早期报道的评分系统进行了比较(最高 AUC:0.76),这鼓励了进一步的开发和实际应用。

结论

使用不同特征集构建的预测模型表明,基于 HRV 的参数可能有助于更好地预测脑损伤患者的预后,优于先前采用的疾病严重程度评分。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8d69/7734857/b01e2917c291/12859_2020_3814_Fig1_HTML.jpg

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