Ardila Carlos Martin, González-Arroyave Daniel, Zuluaga-Gómez Mateo
Department of Basic Sciences, University of Antioquia, Medellín 52-59, Colombia.
Department of Surgery, Pontificia Universidad Bolivariana, Medellín 0057, Colombia.
World J Clin Cases. 2024 Apr 26;12(12):2023-2030. doi: 10.12998/wjcc.v12.i12.2023.
In this editorial, we comment on the article by Wang and Long, published in a recent issue of the . The article addresses the challenge of predicting intensive care unit-acquired weakness (ICUAW), a neuromuscular disorder affecting critically ill patients, by employing a novel processing strategy based on repeated machine learning. The editorial presents a dataset comprising clinical, demographic, and laboratory variables from intensive care unit (ICU) patients and employs a multilayer perceptron neural network model to predict ICUAW. The authors also performed a feature importance analysis to identify the most relevant risk factors for ICUAW. This editorial contributes to the growing body of literature on predictive modeling in critical care, offering insights into the potential of machine learning approaches to improve patient outcomes and guide clinical decision-making in the ICU setting.
在这篇社论中,我们对王和龙发表在最近一期《 》上的文章进行评论。该文章探讨了预测重症监护病房获得性肌无力(ICUAW)的挑战,这是一种影响重症患者的神经肌肉疾病,通过采用基于重复机器学习的新型处理策略来应对这一挑战。社论展示了一个包含重症监护病房(ICU)患者的临床、人口统计学和实验室变量的数据集,并采用多层感知器神经网络模型来预测ICUAW。作者还进行了特征重要性分析,以确定与ICUAW最相关的风险因素。这篇社论为重症监护领域中不断增长的预测建模文献做出了贡献,为机器学习方法在改善患者预后和指导ICU环境中的临床决策方面的潜力提供了见解。