估计重症监护患者静息能量消耗的方法:机器学习和深度学习方法预测方程的比较研究

IF 4.8 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computer methods and programs in biomedicine Pub Date : 2025-04-01 Epub Date: 2025-02-09 DOI:10.1016/j.cmpb.2025.108657
Christopher Yew Shuen Ang , Mohd Basri Mat Nor , Nur Sazwi Nordin , Thant Zin Kyi , Ailin Razali , Yeong Shiong Chiew
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引用次数: 0

摘要

背景准确估计静息能量消耗(REE)对于指导危重患者的营养治疗至关重要。虽然间接量热法(IC)是稀土元素测量的金标准,但由于其复杂性和成本,它在临床环境中通常不可行。预测方程(pe)提供了一个更简单的替代方案,但在危重患者群体中往往不准确。虽然机器学习(ML)和深度学习(DL)的最新进展为通过捕获生理变量之间的复杂关系来改善REE估计提供了潜力,但这些方法尚未在危重患者群体中得到广泛应用或验证。本前瞻性研究比较了九种常用的pe(包括Harris-Benedict (H-B1919)、Penn State和TAH方程)与ML模型(XGBoost、随机森林回归[RFR]、支持向量回归)和DL模型(卷积神经网络[CNN])在估计危重患者REE方面的表现。使用来自重症监护病房(ICU)的300个IC测量数据集,通过IC和pe测量REE。ML/DL模型使用静态(即年龄、身高、体重)和动态(即分钟通气量、体温)变量的组合进行训练。使用均方根误差(RMSE)指标进行五重交叉验证以评估模型预测性能。在分析的pe中,H-B1919的RMSE最低,为362卡路里。然而,XGBoost和RFR模型的表现明显优于所有pe,分别达到199和200卡路里的RMSE值。CNN模型在ML模型中表现最差,RMSE为250卡路里。包括额外的分类变量,如身体质量指数(BMI)和体温类别,略微降低了ML和DL模型的RMSE。尽管采用了数据增强和代入技术,但没有观察到模型性能的显著改善。ml模型,尤其是XGBoost和RFR模型,提供了比传统pe更准确的REE估计,突出了它们更好地捕捉生理变量与REE之间复杂的非线性关系的潜力。这些模型为临床指导营养治疗提供了一个有希望的替代方案,尽管需要在独立数据集和不同患者群体中进一步验证。
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Methods for estimating resting energy expenditure in intensive care patients: A comparative study of predictive equations with machine learning and deep learning approaches

Background

Accurate estimation of resting energy expenditure (REE) is critical for guiding nutritional therapy in critically ill patients. While indirect calorimetry (IC) is the gold standard for REE measurement, it is not routinely feasible in clinical settings due to its complexity and cost. Predictive equations (PEs) offer a simpler alternative but are often inaccurate in critically ill populations. While recent advancements in machine learning (ML) and deep learning (DL) offer potential for improving REE estimation by capturing complex relationships between physiological variables, these approaches have not yet been widely applied or validated in critically ill populations.

Methodology

This prospective study compared the performance of nine commonly used PEs, including the Harris-Benedict (H-B1919), Penn State, and TAH equations, with ML models (XGBoost, Random Forest Regressor [RFR], Support Vector Regression), and DL models (Convolutional Neural Networks [CNN]) in estimating REE in critically ill patients. A dataset of 300 IC measurements from an intensive care unit (ICU) was used, with REE measured by both IC and PEs. The ML/DL models were trained using a combination of static (i.e., age, height, body weight) and dynamic (i.e., minute ventilation, body temperature) variables. A five-fold cross validation was performed to assess the model prediction performance using the root mean square error (RMSE) metric.

Results

Of the PEs analysed, H-B1919 yielded the lowest RMSE at 362 calories. However, the XGBoost and RFR models significantly outperformed all PEs, achieving RMSE values of 199 and 200 calories, respectively. The CNN model demonstrated the poorest performance among ML models, with an RMSE of 250 calories. The inclusion of additional categorical variables such as body mass index (BMI) and body temperature classes slightly reduced RMSE across ML and DL models. Despite data augmentation and imputation techniques, no significant improvements in model performance were observed.

Conclusion

ML models, particularly XGBoost and RFR, provide more accurate REE estimations than traditional PEs, highlighting their potential to better capture the complex, non-linear relationships between physiological variables and REE. These models offer a promising alternative for guiding nutritional therapy in clinical settings, though further validation on independent datasets and across diverse patient populations is warranted.
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来源期刊
Computer methods and programs in biomedicine
Computer methods and programs in biomedicine 工程技术-工程:生物医学
CiteScore
12.30
自引率
6.60%
发文量
601
审稿时长
135 days
期刊介绍: To encourage the development of formal computing methods, and their application in biomedical research and medical practice, by illustration of fundamental principles in biomedical informatics research; to stimulate basic research into application software design; to report the state of research of biomedical information processing projects; to report new computer methodologies applied in biomedical areas; the eventual distribution of demonstrable software to avoid duplication of effort; to provide a forum for discussion and improvement of existing software; to optimize contact between national organizations and regional user groups by promoting an international exchange of information on formal methods, standards and software in biomedicine. Computer Methods and Programs in Biomedicine covers computing methodology and software systems derived from computing science for implementation in all aspects of biomedical research and medical practice. It is designed to serve: biochemists; biologists; geneticists; immunologists; neuroscientists; pharmacologists; toxicologists; clinicians; epidemiologists; psychiatrists; psychologists; cardiologists; chemists; (radio)physicists; computer scientists; programmers and systems analysts; biomedical, clinical, electrical and other engineers; teachers of medical informatics and users of educational software.
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