Short-term vital parameter forecasting in the intensive care unit: A benchmark study leveraging data from patients after cardiothoracic surgery.

PLOS digital health Pub Date : 2024-09-12 eCollection Date: 2024-09-01 DOI:10.1371/journal.pdig.0000598
Nils Hinrichs, Tobias Roeschl, Pia Lanmueller, Felix Balzer, Carsten Eickhoff, Benjamin O'Brien, Volkmar Falk, Alexander Meyer
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Abstract

Patients in an Intensive Care Unit (ICU) are closely and continuously monitored, and many machine learning (ML) solutions have been proposed to predict specific outcomes like death, bleeding, or organ failure. Forecasting of vital parameters is a more general approach to ML-based patient monitoring, but the literature on its feasibility and robust benchmarks of achievable accuracy are scarce. We implemented five univariate statistical models (the naïve model, the Theta method, exponential smoothing, the autoregressive integrated moving average model, and an autoregressive single-layer neural network), two univariate neural networks (N-BEATS and N-HiTS), and two multivariate neural networks designed for sequential data (a recurrent neural network with gated recurrent unit, GRU, and a Transformer network) to produce forecasts for six vital parameters recorded at five-minute intervals during intensive care monitoring. Vital parameters were the diastolic, systolic, and mean arterial blood pressure, central venous pressure, peripheral oxygen saturation (measured by non-invasive pulse oximetry) and heart rate, and forecasts were made for 5 through 120 minutes into the future. Patients used in this study recovered from cardiothoracic surgery in an ICU. The patient cohort used for model development (n = 22,348) and internal testing (n = 2,483) originated from a heart center in Germany, while a patient sub-set from the eICU collaborative research database, an American multicenter ICU cohort, was used for external testing (n = 7,477). The GRU was the predominant method in this study. Uni- and multivariate neural network models proved to be superior to univariate statistical models across vital parameters and forecast horizons, and their advantage steadily became more pronounced for increasing forecast horizons. With this study, we established an extensive set of benchmarks for forecast performance in the ICU. Our findings suggest that supplying physicians with short-term forecasts of vital parameters in the ICU is feasible, and that multivariate neural networks are most suited for the task due to their ability to learn patterns across thousands of patients.

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重症监护室的短期生命参数预测:利用心胸手术后患者数据的基准研究。
重症监护室(ICU)中的患者需要接受密切、持续的监测,许多机器学习(ML)解决方案已被提出,用于预测死亡、出血或器官衰竭等特定结果。生命参数预测是基于 ML 的患者监测的一种更普遍的方法,但有关其可行性和可实现准确性的可靠基准的文献却很少。我们采用了五种单变量统计模型(天真模型、Theta 法、指数平滑法、自回归综合移动平均模型和自回归单层神经网络)、两种单变量神经网络(N-BEATS 和 N-HiTS)以及两种专为序列数据设计的多变量神经网络(带门控递归单元的递归神经网络 GRU 和变压器网络),对重症监护过程中每五分钟记录一次的六个生命参数进行预测。生命参数包括舒张压、收缩压和平均动脉血压、中心静脉压、外周血氧饱和度(通过无创脉搏血氧仪测量)和心率,预测时间为未来 5 分钟至 120 分钟。本研究中使用的患者都是在重症监护室进行心胸手术后康复的。用于模型开发(n = 22,348 人)和内部测试(n = 2,483 人)的患者队列来自德国的一家心脏中心,而用于外部测试(n = 7,477 人)的患者子集来自美国多中心重症监护室队列 eICU 合作研究数据库。在这项研究中,GRU 是最主要的方法。事实证明,单变量和多变量神经网络模型在所有生命参数和预测范围内均优于单变量统计模型,而且随着预测范围的增加,其优势也越来越明显。通过这项研究,我们为重症监护室的预测性能建立了一套广泛的基准。我们的研究结果表明,向医生提供重症监护室生命参数的短期预测是可行的,而多元神经网络由于能够学习数千名患者的模式,因此最适合这项任务。
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