Centre for Big Data Research in Health, Level 2, AGSM Building, UNSW Sydney, NSW 2052, Australia.
Centre for Big Data Research in Health, Level 2, AGSM Building, UNSW Sydney, NSW 2052, Australia.
J Biomed Inform. 2023 Oct;146:104498. doi: 10.1016/j.jbi.2023.104498. Epub 2023 Sep 10.
Blood glucose measurements in the intensive care unit (ICU) are typically made at irregular intervals. This presents a challenge in choice of forecasting model. This article gives an overview of continuous time autoregressive recurrent neural networks (CTRNNs) and evaluates how they compare to autoregressive gradient boosted trees (GBT) in forecasting blood glucose in the ICU.
Continuous time autoregressive recurrent neural networks (CTRNNs) are a deep learning model that account for irregular observations through incorporating continuous evolution of the hidden states between observations. This is achieved using a neural ordinary differential equation (ODE) or neural flow layer. In this manuscript, we give an overview of these models, including the varying architectures that have been proposed to account for issues such as ongoing medical interventions. Further, we demonstrate the application of these models to probabilistic forecasting of blood glucose in a critical care setting using electronic medical record and simulated data and compare with GBT and linear models.
The experiments confirm that addition of a neural ODE or neural flow layer generally improves the performance of autoregressive recurrent neural networks in the irregular measurement setting. However, several CTRNN architecture are outperformed by a GBT model (Catboost), with only a long short-term memory (LSTM) and neural ODE based architecture (ODE-LSTM) achieving comparable performance on probabilistic forecasting metrics such as the continuous ranked probability score (ODE-LSTM: 0.118 ± 0.001; Catboost: 0.118 ± 0.001), ignorance score (0.152 ± 0.008; 0.149 ± 0.002) and interval score (175 ± 1; 176 ± 1).
The application of deep learning methods for forecasting in situations with irregularly measured time series such as blood glucose shows promise. However, appropriate benchmarking by methods such as GBT approaches (plus feature transformation) are key in highlighting whether novel methodologies are truly state of the art in tabular data settings.
重症监护病房(ICU)中的血糖测量通常是不定时进行的。这给预测模型的选择带来了挑战。本文概述了连续时间自回归递归神经网络(CTRNN),并评估了它们在 ICU 中预测血糖方面与自回归梯度增强树(GBT)的比较。
连续时间自回归递归神经网络(CTRNN)是一种深度学习模型,通过在观测之间引入隐藏状态的连续演变,来解释不规则观测。这是通过使用神经常微分方程(ODE)或神经流层来实现的。在本手稿中,我们概述了这些模型,包括为解决诸如持续医疗干预等问题而提出的各种架构。此外,我们展示了这些模型在使用电子病历和模拟数据进行关键护理环境中的血糖概率预测中的应用,并与 GBT 和线性模型进行了比较。
实验证实,在不规则测量环境中,添加神经 ODE 或神经流层通常会提高自回归递归神经网络的性能。然而,一些 CTRNN 架构的性能优于 GBT 模型(Catboost),只有长短期记忆(LSTM)和基于神经 ODE 的架构(ODE-LSTM)在概率预测指标(如连续等级概率评分(ODE-LSTM:0.118 ± 0.001;Catboost:0.118 ± 0.001)、忽略评分(0.152 ± 0.008;0.149 ± 0.002)和区间评分(175 ± 1;176 ± 1)上达到可比性能。
在血糖等不规则测量时间序列的情况下,深度学习方法在预测中的应用具有很大的潜力。然而,通过 GBT 方法(加上特征转换)等适当的基准测试是关键,这可以突出显示新方法是否真正处于表格数据设置的最新状态。