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一项利用烧伤重症监护数据通过机器学习算法进行死亡率预测的概念验证研究。

A proof-of-concept study on mortality prediction with machine learning algorithms using burn intensive care data.

作者信息

Fransén Jian, Lundin Johan, Fredén Filip, Huss Fredrik

机构信息

Department of Surgical Sciences, Plastic Surgery, Uppsala University, Uppsala, Sweden.

Karolinska Institute Department of Global Public Health, Stockholm, Sweden.

出版信息

Scars Burn Heal. 2022 Feb 18;8:20595131211066585. doi: 10.1177/20595131211066585. eCollection 2022 Jan-Dec.

Abstract

INTRODUCTION

Burn injuries are a common traumatic injury. Large burns have high mortality requiring intensive care and accurate mortality predictions. To assess if machine learning (ML) could improve predictions, ML algorithms were tested and compared with the original and revised Baux score.

METHODS

Admission data and mortality outcomes were collected from patients at Uppsala University Hospital Burn Centre from 2002 to 2019. Prognostic variables were selected, ML algorithms trained and predictions assessed by analysis of the area under the receiver operating characteristic curve (AUC). Comparison was made with Baux scores using DeLong test.

RESULTS

A total of 17 prognostic variables were selected from 92 patients. AUCs in leave-one-out cross-validation for a decision tree model, an extreme boosting model, a random forest model, a support-vector machine (SVM) model and a generalised linear regression model (GLM) were 0.83 (95% confidence interval [CI] = 0.72-0.94), 0.92 (95% CI = 0.84-1), 0.92 (95% CI = 0.84-1), 0.92 (95% CI = 0.84-1) and 0.84 (95% CI = 0.74-0.94), respectively. AUCs for the Baux score and revised Baux score were 0.85 (95% CI = 0.75-0.95) and 0.84 (95% CI = 0.74-0.94). No significant differences were observed when comparing ML algorithms with Baux score and revised Baux score. Secondary variable selection was made to analyse model performance.

CONCLUSION

This proof-of-concept study showed initial credibility in using ML algorithms to predict mortality in burn patients. The sample size was small and future studies are needed with larger sample sizes, further variable selections and prospective testing of the algorithms.

LAY SUMMARY

Burn injuries are one of the most common traumatic injuries especially in countries with limited prevention and healthcare resources. To treat a patient with large burns who has been admitted to an intensive care unit, it is often necessary to assess the risk of a fatal outcome. Physicians traditionally use simplified scores to calculate risks. One commonly used score, the Baux score, uses age of the patient and the size of the burn to predict the risk of death. Adding the factor of inhalation injury, the score is then called the revised Baux score. However, there are a number of additional causes that can influence the risk of fatal outcomes that Baux scores do not take into account. Machine learning is a method of data modelling where the system learns to predict outcomes based on previous cases and is a branch of artificial intelligence. In this study we evaluated several machine learning methods for outcome prediction in patients admitted for burn injury. We gathered data on 93 patients at admission to the intensive care unit and our experiments show that machine learning methods can reach an accuracy comparable with Baux scores in calculating the risk of fatal outcomes. This study represents a proof of principle and future studies on larger patient series are required to verify our results as well as to evaluate the methods on patients in real-life situations.

摘要

引言

烧伤是一种常见的创伤性损伤。大面积烧伤死亡率高,需要重症监护和准确的死亡率预测。为评估机器学习(ML)是否能改善预测,对ML算法进行了测试,并与原始和修订后的博克斯评分进行比较。

方法

收集了2002年至2019年乌普萨拉大学医院烧伤中心患者的入院数据和死亡率结果。选择了预后变量,训练了ML算法,并通过分析受试者工作特征曲线(AUC)下的面积来评估预测。使用德龙检验与博克斯评分进行比较。

结果

从92例患者中总共选择了17个预后变量。决策树模型、极端梯度提升模型、随机森林模型、支持向量机(SVM)模型和广义线性回归模型(GLM)在留一法交叉验证中的AUC分别为0.83(95%置信区间[CI]=0.72-0.94)、0.92(95%CI=0.84-1)、0.92(95%CI=0.84-1)、0.92(95%CI=0.84-1)和0.84(95%CI=0.74-0.94)。博克斯评分和修订后的博克斯评分的AUC分别为0.85(95%CI=0.75-0.95)和0.84(95%CI=0.74-0.94)。将ML算法与博克斯评分和修订后的博克斯评分进行比较时,未观察到显著差异。进行了二次变量选择以分析模型性能。

结论

这项概念验证研究表明,使用ML算法预测烧伤患者死亡率具有初步可信度。样本量较小,未来需要进行更大样本量、进一步变量选择和算法前瞻性测试的研究。

简要概述

烧伤是最常见的创伤性损伤之一,尤其是在预防和医疗资源有限的国家。对于入住重症监护病房的大面积烧伤患者,通常需要评估致命结局的风险。医生传统上使用简化评分来计算风险。一种常用的评分,即博克斯评分,使用患者年龄和烧伤面积来预测死亡风险。加上吸入性损伤因素后,该评分称为修订后的博克斯评分。然而,还有许多其他因素会影响致命结局的风险,而博克斯评分并未考虑这些因素。机器学习是一种数据建模方法,系统通过基于以前的案例学习来预测结果,是人工智能的一个分支。在本研究中,我们评估了几种机器学习方法用于预测烧伤入院患者的结局。我们收集了93例患者入住重症监护病房时的数据,我们的实验表明,机器学习方法在计算致命结局风险方面可以达到与博克斯评分相当的准确性。本研究代表了一项原理验证,需要对更大的患者系列进行未来研究,以验证我们的结果,并在实际情况中对患者评估这些方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6991/8859689/ff6f9fa502da/10.1177_20595131211066585-fig1.jpg

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