机器学习增强败血症分类:使用shap解释的元集成模型实时预测ICU死亡率。

IF 3.9 3区 工程技术 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Hülya Yilmaz Başer, Turan Evran, Mehmet Akif Cifci
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引用次数: 0

摘要

背景/目标:优化算法在各个领域和动态系统中都被认为是至关重要的,因为除了提高效率、降低成本和提高性能之外,优化算法还为识别和检索复杂问题的最可能解决方案提供了便利。另一方面,元启发式优化算法受到自然现象的启发,为复杂优化问题的适用解决方案提供了显著的好处。考虑到复杂的优化问题出现在各个学科中,它们的成功应用可能在分类和特征选择任务中被观察到,包括基于生物灵感的某些健康问题的诊断过程。脓毒症继续对患者的生存构成重大威胁,特别是在从急诊科进入重症监护病房的个体中。传统的评分系统,包括qSOFA、SIRS和NEWS,往往不能提供及时有效的临床决策所必需的准确性。方法:在本研究中,我们引入了一种新颖的、可解释的机器学习框架,旨在预测重症监护病房入院时败血症患者的住院死亡率。利用一家三级大学医院的回顾性数据集,包括2019年1月至2024年6月的患者记录,我们提取了综合的临床和实验室特征。为了解决类不平衡和缺失数据的问题,我们分别采用了合成少数过采样技术和系统插值方法。我们的混合建模方法集成了基于集成的机器学习算法和深度学习架构,并通过Red Piranha优化算法进行了特征选择和超参数调优。通过内部交叉验证和外部测试对MIMIC-III数据集进行了验证。结果:该模型的预测性能优于传统评分系统,在受试者工作特征曲线下的面积为0.96,Brier评分为0.118,召回率为81。结论:这些结果强调了人工智能驱动的工具在脓毒症管理中增强临床决策过程的潜力,使早期干预成为可能,并可能降低死亡率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Augmented Triage for Sepsis: Real-Time ICU Mortality Prediction Using SHAP-Explained Meta-Ensemble Models.

Background/Objectives: Optimization algorithms are acknowledged to be critical in various fields and dynamical systems since they provide facilitation in identifying and retrieving the most possible solutions concerning complex problems besides improving efficiency, cutting down on costs, and boosting performance. Metaheuristic optimization algorithms, on the other hand, are inspired by natural phenomena, providing significant benefits related to the applicable solutions for complex optimization problems. Considering that complex optimization problems emerge across various disciplines, their successful applications are possible to be observed in tasks of classification and feature selection tasks, including diagnostic processes of certain health problems based on bio-inspiration. Sepsis continues to pose a significant threat to patient survival, particularly among individuals admitted to intensive care units from emergency departments. Traditional scoring systems, including qSOFA, SIRS, and NEWS, often fall short of delivering the precision necessary for timely and effective clinical decision-making. Methods: In this study, we introduce a novel, interpretable machine learning framework designed to predict in-hospital mortality in sepsis patients upon intensive care unit admission. Utilizing a retrospective dataset from a tertiary university hospital encompassing patient records from January 2019 to June 2024, we extracted comprehensive clinical and laboratory features. To address class imbalance and missing data, we employed the Synthetic Minority Oversampling Technique and systematic imputation methods, respectively. Our hybrid modeling approach integrates ensemble-based ML algorithms with deep learning architectures, optimized through the Red Piranha Optimization algorithm for feature selection and hyperparameter tuning. The proposed model was validated through internal cross-validation and external testing on the MIMIC-III dataset as well. Results: The proposed model demonstrates superior predictive performance over conventional scoring systems, achieving an area under the receiver operating characteristic curve of 0.96, a Brier score of 0.118, and a recall of 81. Conclusions: These results underscore the potential of AI-driven tools to enhance clinical decision-making processes in sepsis management, enabling early interventions and potentially reducing mortality rates.

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来源期刊
Biomedicines
Biomedicines Biochemistry, Genetics and Molecular Biology-General Biochemistry,Genetics and Molecular Biology
CiteScore
5.20
自引率
8.50%
发文量
2823
审稿时长
8 weeks
期刊介绍: Biomedicines (ISSN 2227-9059; CODEN: BIOMID) is an international, scientific, open access journal on biomedicines published quarterly online by MDPI.
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