Department of Biomedical Science and Engineering (BMSE), Institute of Integrated Technology (IIT), Gwangju Institute of Science and Technology (GIST), Gwangju, Republic of Korea. These authors contributed equally to this work.
Physiol Meas. 2018 Mar 27;39(3):035004. doi: 10.1088/1361-6579/aaab07.
Delirium is an important syndrome found in patients in the intensive care unit (ICU), however, it is usually under-recognized during treatment. This study was performed to investigate whether delirious patients can be successfully distinguished from non-delirious patients by using heart rate variability (HRV) and machine learning.
Electrocardiography data of 140 patients was acquired during daily ICU care, and HRV data were analyzed. Delirium, including its type, severity, and etiologies, was evaluated daily by trained psychiatrists. HRV data and various machine learning algorithms including linear support vector machine (SVM), SVM with radial basis function (RBF) kernels, linear extreme learning machine (ELM), ELM with RBF kernels, linear discriminant analysis, and quadratic discriminant analysis were utilized to distinguish delirium patients from non-delirium patients.
HRV data of 4797 ECGs were included, and 39 patients had delirium at least once during their ICU stay. The maximum classification accuracy was acquired using SVM with RBF kernels. Our prediction method based on HRV with machine learning was comparable to previous delirium prediction models using massive amounts of clinical information.
Our results show that autonomic alterations could be a significant feature of patients with delirium in the ICU, suggesting the potential for the automatic prediction and early detection of delirium based on HRV with machine learning.
谵妄是重症监护病房(ICU)患者中常见的一种综合征,但在治疗过程中往往容易被忽视。本研究旨在探讨通过心率变异性(HRV)和机器学习是否可以成功区分谵妄患者和非谵妄患者。
在日常 ICU 护理过程中采集 140 名患者的心电数据,并分析 HRV 数据。由经过培训的精神科医生对谵妄及其类型、严重程度和病因进行每日评估。使用 HRV 数据和各种机器学习算法,包括线性支持向量机(SVM)、带径向基函数(RBF)核的 SVM、线性极限学习机(ELM)、带 RBF 核的 ELM、线性判别分析和二次判别分析,来区分谵妄患者和非谵妄患者。
共纳入了 4797 份 ECG 的 HRV 数据,39 名患者在 ICU 期间至少发生过一次谵妄。使用 RBF 核的 SVM 获得了最高的分类准确率。我们基于 HRV 和机器学习的预测方法与使用大量临床信息的先前的谵妄预测模型相当。
我们的研究结果表明,自主神经改变可能是 ICU 中谵妄患者的一个重要特征,这表明基于 HRV 和机器学习自动预测和早期检测谵妄具有潜力。