Zheyan Tu, Sean D Jeffries, Joshua Morse, Thomas M Hemmerling
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The study investigates a range of models: The traditional mathematical models include the pharmacokinetic-pharmacodynamic model and statistical models such as autoregressive integrated moving average (ARIMA) and vector autoregression (VAR). The deep learning models encompass recurrent neural networks (RNNs), specifically Long Short-Term Memory (LSTM) and Gated Recurrent Units (GRU), as well as Temporal Convolutional Networks (TCNs) and Transformer models. The analysis focuses on evaluating model performance in predicting the BIS using two distinct datasets of physiological metrics collected from actual surgical procedures. It explores both univariate and multivariate prediction schemes and investigates how different combinations of features and input sequence lengths impact model accuracy. The experimental findings reveal significant performance differences among the models: In univariate prediction scenarios for predicting BIS, the LSTM model demonstrates a 2.88% improvement over the second-best performing model. For multivariate predictions, the LSTM model outperforms others by 6.67% compared to the next best model. Furthermore, the addition of Electromyography (EMG) and Mean Arterial Pressure (MAP) brings significant accuracy improvement when predicting BIS. The study emphasizes the importance of selecting and building appropriate time-series models to achieve accurate predictions in biomedical applications. This research provides insights to guide future efforts in improving vital sign prediction methodologies for clinical and research purposes. 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引用次数: 0
摘要
本研究全面比较了应用于生理指标预测的多种时间序列模型。它旨在探索统计预测模型、药动学-药效学预测模型和现代深度学习方法的有效性。具体来说,研究重点是利用从真实手术中收集的数据集预测双光谱指数(BIS),这是麻醉中的一个重要指标,用于评估手术过程中的镇静深度。目的是评估和比较单变量和多变量方案的模型性能。准确的 BIS 预测对于避免镇静不足或镇静过度至关重要,这可能会导致不良后果。本研究调查了一系列模型:传统数学模型包括药动学-药效学模型和统计模型,如自回归综合移动平均(ARIMA)和向量自回归(VAR)。深度学习模型包括递归神经网络(RNN),特别是长短期记忆(LSTM)和门控递归单元(GRU),以及时序卷积网络(TCN)和变压器模型。分析的重点是利用从实际手术过程中收集的两个不同的生理指标数据集评估模型在预测 BIS 方面的性能。它探讨了单变量和多变量预测方案,并研究了不同的特征组合和输入序列长度对模型准确性的影响。实验结果表明,不同模型之间存在明显的性能差异:在预测 BIS 的单变量预测方案中,LSTM 模型比表现第二好的模型提高了 2.88%。在多变量预测中,LSTM 模型的性能比次佳模型高出 6.67%。此外,加入肌电图(EMG)和平均动脉压(MAP)后,预测 BIS 的准确性也有显著提高。这项研究强调了在生物医学应用中选择和建立适当的时间序列模型以实现准确预测的重要性。这项研究为今后改进用于临床和研究目的的生命体征预测方法提供了启示。在临床上,随着生理参数预测能力的提高,一旦发现或预测到异常情况,临床医生就能及时了解干预措施。
Comparison of time-series models for predicting physiological metrics under sedation.
This study presents a comprehensive comparison of multiple time-series models applied to physiological metric predictions. It aims to explore the effectiveness of both statistical prediction models and pharmacokinetic-pharmacodynamic prediction model and modern deep learning approaches. Specifically, the study focuses on predicting the bispectral index (BIS), a vital metric in anesthesia used to assess the depth of sedation during surgery, using datasets collected from real-life surgeries. The goal is to evaluate and compare model performance considering both univariate and multivariate schemes. Accurate BIS prediction is essential for avoiding under- or over-sedation, which can lead to adverse outcomes. The study investigates a range of models: The traditional mathematical models include the pharmacokinetic-pharmacodynamic model and statistical models such as autoregressive integrated moving average (ARIMA) and vector autoregression (VAR). The deep learning models encompass recurrent neural networks (RNNs), specifically Long Short-Term Memory (LSTM) and Gated Recurrent Units (GRU), as well as Temporal Convolutional Networks (TCNs) and Transformer models. The analysis focuses on evaluating model performance in predicting the BIS using two distinct datasets of physiological metrics collected from actual surgical procedures. It explores both univariate and multivariate prediction schemes and investigates how different combinations of features and input sequence lengths impact model accuracy. The experimental findings reveal significant performance differences among the models: In univariate prediction scenarios for predicting BIS, the LSTM model demonstrates a 2.88% improvement over the second-best performing model. For multivariate predictions, the LSTM model outperforms others by 6.67% compared to the next best model. Furthermore, the addition of Electromyography (EMG) and Mean Arterial Pressure (MAP) brings significant accuracy improvement when predicting BIS. The study emphasizes the importance of selecting and building appropriate time-series models to achieve accurate predictions in biomedical applications. This research provides insights to guide future efforts in improving vital sign prediction methodologies for clinical and research purposes. Clinically, with improvements in the prediction of physiological parameters, clinicians can be informed of interventions if an anomaly is detected or predicted.
期刊介绍:
The Journal of Clinical Monitoring and Computing is a clinical journal publishing papers related to technology in the fields of anaesthesia, intensive care medicine, emergency medicine, and peri-operative medicine.
The journal has links with numerous specialist societies, including editorial board representatives from the European Society for Computing and Technology in Anaesthesia and Intensive Care (ESCTAIC), the Society for Technology in Anesthesia (STA), the Society for Complex Acute Illness (SCAI) and the NAVAt (NAVigating towards your Anaestheisa Targets) group.
The journal publishes original papers, narrative and systematic reviews, technological notes, letters to the editor, editorial or commentary papers, and policy statements or guidelines from national or international societies. The journal encourages debate on published papers and technology, including letters commenting on previous publications or technological concerns. The journal occasionally publishes special issues with technological or clinical themes, or reports and abstracts from scientificmeetings. Special issues proposals should be sent to the Editor-in-Chief. Specific details of types of papers, and the clinical and technological content of papers considered within scope can be found in instructions for authors.