Suppr超能文献

使用基准数据集开发和验证两个高风险创伤患者72小时死亡率预测模型:逻辑回归和神经网络模型的比较研究

Development and Validation of Two Prediction Models for 72-Hour Mortality in High-Risk Trauma Patients Using a Benchmark Dataset: A Comparative Study of Logistic Regression and Neural Networks Models.

作者信息

Islam Mehmet Muzaffer

机构信息

Department of Emergency Medicine, Umraniye Training and Research Hospital, Istanbul, TUR.

出版信息

Cureus. 2023 Jun 22;15(6):e40773. doi: 10.7759/cureus.40773. eCollection 2023 Jun.

Abstract

Background Many studies have been conducted to develop scoring systems for trauma patients, with the majority using logistic regression (LR) models. Neural networks (NN), which is a machine learning algorithm, has a potential to increase the performance of these models. Objectives The aim of this study was to develop and validate two separate prediction models for 72-hour mortality of high-risk trauma patients using LR and NN and to compare the performances of these models in detail. We also aimed to share the SPSS calculators for our models. Materials and methods This is a retrospective, single-center study conducted using a benchmark dataset where the patients were retrospectively gathered from a level 1 trauma center. Patients older than 18 years of age, who had multiple injuries, and were treated at the University Hospital Zurich between January 1, 1996, and January 1, 2013, were included. Patients with a condition that may have an impact on the musculoskeletal system, with Injury Severity Score<16, and with missing outcome data were excluded. Results A total of 3,075 patients were included in the analysis. The area under the curve values of the LR and NN models for predicting 72-hour mortality in patients with high-risk trauma in the hold-out cohort were 0.859 (95% CI=0.836 to 0.883) and 0.856 (95% CI=0.831 to 0.880), respectively. There was no statistically significant difference in the performance of the models (p = 0.554, DeLong's test). Conclusion Both of the models showed good discrimination. Our study suggests that the NN and LR models we developed hold promise as screening tools for predicting 72-hour mortality in high-risk trauma patients. These models were made available to clinicians as clinical prediction tools via SPSS calculators. However, further external validation studies in diverse populations are necessary to substantiate their clinical utility. Moreover, in subsequent studies, it would be beneficial to derive NN models with substantial events per predictor variable to attain more robust and greater predictive accuracy. If the dataset is relatively limited, using LR seems to be a viable alternative.

摘要

背景

已经开展了许多研究来开发创伤患者的评分系统,其中大多数使用逻辑回归(LR)模型。神经网络(NN)作为一种机器学习算法,有潜力提高这些模型的性能。目的:本研究的目的是使用LR和NN开发并验证两个针对高危创伤患者72小时死亡率的独立预测模型,并详细比较这些模型的性能。我们还旨在分享我们模型的SPSS计算器。材料与方法:这是一项回顾性单中心研究,使用一个基准数据集进行,该数据集是从一级创伤中心回顾性收集患者数据得到的。纳入1996年1月1日至2013年1月1日期间在苏黎世大学医院接受治疗、年龄大于18岁、有多处损伤的患者。排除可能对肌肉骨骼系统有影响、损伤严重程度评分<16以及结局数据缺失的患者。结果:共有3075例患者纳入分析。在保留队列中,用于预测高危创伤患者72小时死亡率的LR模型和NN模型的曲线下面积值分别为0.859(95%CI = 0.836至0.883)和0.856(95%CI = 0.831至0.880)。模型性能无统计学显著差异(p = 0.554,德龙检验)。结论:两个模型均显示出良好的区分度。我们的研究表明,我们开发的NN模型和LR模型有望作为预测高危创伤患者72小时死亡率的筛查工具。这些模型通过SPSS计算器作为临床预测工具提供给临床医生。然而,需要在不同人群中进行进一步的外部验证研究以证实其临床效用。此外,在后续研究中,推导每个预测变量有大量事件的NN模型以获得更稳健和更高的预测准确性将是有益的。如果数据集相对有限,使用LR似乎是一个可行的选择。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验