Jinyu Peng , Yun Li , Chao Liu , Zhi Mao , Hongjun Kang , Feihu Zhou
{"title":"预测创伤性败血症中的多器官功能障碍综合征:Nomogram和machine learning方法","authors":"Jinyu Peng , Yun Li , Chao Liu , Zhi Mao , Hongjun Kang , Feihu Zhou","doi":"10.1016/j.jointm.2024.12.008","DOIUrl":null,"url":null,"abstract":"<div><h3>Background</h3><div>Multiple organ dysfunction syndrome (MODS) is a critical complication in trauma-induced sepsis patients and is associated with a high mortality rate. This study aimed to develop and validate predictive models for MODS in this patient population using a nomogram and machine learning approaches.</div></div><div><h3>Methods</h3><div>This retrospective cohort study utilized data from the Medical Information Mart for Intensive Care-IV 2.2 database, focusing on trauma patients diagnosed with sepsis within the first day of intensive care unit (ICU) admission. Predictive variables were extracted from the initial 24 h of ICU data. The dataset (2008–2019) was divided into a training set (2008–2016) and a temporal validation set (2017–2019). Feature selection was conducted using the Boruta algorithm. Predictive models were developed and validated using a nomogram and various machine learning techniques. Model performance was evaluated based on discrimination, calibration, and decision curve analysis.</div></div><div><h3>Results</h3><div>Among 1295 trauma patients with sepsis, 349 (26.95%) developed MODS. The 28-day mortality rates were 11.21% for non-MODS patients and 23.82% for MODS patients. Key predictors of MODS included the simplified acute physiology score II score, use of mechanical ventilation, and vasopressor administration. In temporal validation, all models significantly outperformed traditional scoring systems (all <em>P</em> <0.05). The nomogram achieved an area under the curve (AUC) of 0.757 (95% confidence interval [CI]: 0.700 to 0.814), while the random forest model demonstrated the highest performance with an AUC of 0.769 (95% CI: 0.712 to 0.826). Calibration plots showed excellent agreement between predicted and observed probabilities, and decision curve analysis indicated a consistently higher net benefit for the newly developed models.</div></div><div><h3>Conclusion</h3><div>The nomogram and machine learning models provide enhanced predictive accuracy for MODS in trauma-induced sepsis patients compared to traditional scoring systems. These tools, accessible via web-based applications, have the potential to improve early risk stratification and guide clinical decision-making, ultimately enhancing outcomes for trauma patients. Further external validation is recommended to confirm their generalizability.</div></div>","PeriodicalId":73799,"journal":{"name":"Journal of intensive medicine","volume":"5 2","pages":"Pages 193-201"},"PeriodicalIF":0.0000,"publicationDate":"2025-02-08","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Predicting multiple organ dysfunction syndrome in trauma-induced sepsis: Nomogram and machine learning approaches\",\"authors\":\"Jinyu Peng , Yun Li , Chao Liu , Zhi Mao , Hongjun Kang , Feihu Zhou\",\"doi\":\"10.1016/j.jointm.2024.12.008\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><h3>Background</h3><div>Multiple organ dysfunction syndrome (MODS) is a critical complication in trauma-induced sepsis patients and is associated with a high mortality rate. This study aimed to develop and validate predictive models for MODS in this patient population using a nomogram and machine learning approaches.</div></div><div><h3>Methods</h3><div>This retrospective cohort study utilized data from the Medical Information Mart for Intensive Care-IV 2.2 database, focusing on trauma patients diagnosed with sepsis within the first day of intensive care unit (ICU) admission. Predictive variables were extracted from the initial 24 h of ICU data. The dataset (2008–2019) was divided into a training set (2008–2016) and a temporal validation set (2017–2019). Feature selection was conducted using the Boruta algorithm. Predictive models were developed and validated using a nomogram and various machine learning techniques. Model performance was evaluated based on discrimination, calibration, and decision curve analysis.</div></div><div><h3>Results</h3><div>Among 1295 trauma patients with sepsis, 349 (26.95%) developed MODS. The 28-day mortality rates were 11.21% for non-MODS patients and 23.82% for MODS patients. Key predictors of MODS included the simplified acute physiology score II score, use of mechanical ventilation, and vasopressor administration. In temporal validation, all models significantly outperformed traditional scoring systems (all <em>P</em> <0.05). The nomogram achieved an area under the curve (AUC) of 0.757 (95% confidence interval [CI]: 0.700 to 0.814), while the random forest model demonstrated the highest performance with an AUC of 0.769 (95% CI: 0.712 to 0.826). Calibration plots showed excellent agreement between predicted and observed probabilities, and decision curve analysis indicated a consistently higher net benefit for the newly developed models.</div></div><div><h3>Conclusion</h3><div>The nomogram and machine learning models provide enhanced predictive accuracy for MODS in trauma-induced sepsis patients compared to traditional scoring systems. These tools, accessible via web-based applications, have the potential to improve early risk stratification and guide clinical decision-making, ultimately enhancing outcomes for trauma patients. 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引用次数: 0
摘要
背景:多器官功能障碍综合征(MODS)是创伤性脓毒症患者的重要并发症,死亡率高。本研究旨在利用nomogram和机器学习方法开发并验证该患者群体MODS的预测模型。方法本回顾性队列研究利用重症监护医学信息市场- iv - 2.2数据库的数据,重点研究重症监护病房(ICU)入院第一天诊断为败血症的创伤患者。从ICU的最初24小时数据中提取预测变量。数据集(2008-2019)分为训练集(2008-2016)和时间验证集(2017-2019)。采用Boruta算法进行特征选择。使用nomogram和各种机器学习技术开发并验证了预测模型。基于判别、校准和决策曲线分析对模型性能进行评估。结果1295例创伤脓毒症患者中,349例(26.95%)发生MODS。非MODS患者28天死亡率为11.21%,MODS患者为23.82%。MODS的主要预测因素包括简化急性生理评分、机械通气的使用和血管加压药的使用。在时间验证中,所有模型都显著优于传统评分系统(均P <;0.05)。模态图的曲线下面积(AUC)为0.757(95%可信区间[CI]: 0.700至0.814),而随机森林模型的AUC为0.769 (95% CI: 0.712至0.826),表现出最高的性能。校正图显示预测概率和观测概率非常吻合,决策曲线分析表明新开发模型的净效益始终较高。结论与传统评分系统相比,nomogram和machine learning模型可提高创伤性败血症患者MODS的预测准确性。这些工具可通过基于网络的应用程序访问,具有改善早期风险分层和指导临床决策的潜力,最终提高创伤患者的预后。建议进一步进行外部验证以确认其通用性。
Predicting multiple organ dysfunction syndrome in trauma-induced sepsis: Nomogram and machine learning approaches
Background
Multiple organ dysfunction syndrome (MODS) is a critical complication in trauma-induced sepsis patients and is associated with a high mortality rate. This study aimed to develop and validate predictive models for MODS in this patient population using a nomogram and machine learning approaches.
Methods
This retrospective cohort study utilized data from the Medical Information Mart for Intensive Care-IV 2.2 database, focusing on trauma patients diagnosed with sepsis within the first day of intensive care unit (ICU) admission. Predictive variables were extracted from the initial 24 h of ICU data. The dataset (2008–2019) was divided into a training set (2008–2016) and a temporal validation set (2017–2019). Feature selection was conducted using the Boruta algorithm. Predictive models were developed and validated using a nomogram and various machine learning techniques. Model performance was evaluated based on discrimination, calibration, and decision curve analysis.
Results
Among 1295 trauma patients with sepsis, 349 (26.95%) developed MODS. The 28-day mortality rates were 11.21% for non-MODS patients and 23.82% for MODS patients. Key predictors of MODS included the simplified acute physiology score II score, use of mechanical ventilation, and vasopressor administration. In temporal validation, all models significantly outperformed traditional scoring systems (all P <0.05). The nomogram achieved an area under the curve (AUC) of 0.757 (95% confidence interval [CI]: 0.700 to 0.814), while the random forest model demonstrated the highest performance with an AUC of 0.769 (95% CI: 0.712 to 0.826). Calibration plots showed excellent agreement between predicted and observed probabilities, and decision curve analysis indicated a consistently higher net benefit for the newly developed models.
Conclusion
The nomogram and machine learning models provide enhanced predictive accuracy for MODS in trauma-induced sepsis patients compared to traditional scoring systems. These tools, accessible via web-based applications, have the potential to improve early risk stratification and guide clinical decision-making, ultimately enhancing outcomes for trauma patients. Further external validation is recommended to confirm their generalizability.