早期脓毒症预测的机器学习和深度学习模型:范围综述。

IF 1.5 Q3 CRITICAL CARE MEDICINE
Hemalatha Shanmugam, Lavanya Airen, Saumya Rawat
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引用次数: 0

摘要

背景和目的:败血症是一种危险的疾病,感染会引发宿主的异常反应,需要快速检测以挽救生命。虽然传统的检测方法往往达不到要求,但人工智能(AI)及其子集,机器学习(ML)和深度学习(DL)提供了新的希望。本范围审查检查了2022年至2025年期间发表的ML和DL模型,用于使用电子健康记录(EHRs)进行败血症预测。它旨在为临床医生提供关于提出的脓毒症预测模型、使用的特征、数据处理方法、模型性能和临床整合的全面更新。方法:我们在2025年3月11日的PubMed检索中发现了13项相关研究,这些研究开发了ML或DL模型来预测成人脓毒症。结果:大多数研究人员使用监督式机器学习,一些研究人员探索深度学习和混合方法。这些模型依赖于生命体征和实验室结果等标准临床数据,类似于传统的评分方法。一些模型利用人口统计信息和心电图(ECG)读数作为预测败血症的特征。诸如受试者操作特征曲线下面积(AUROC)、特异性和敏感性等性能指标表明,这些ML和DL模型在预测败血症方面往往超过了人类临床医生和传统评分系统的能力。值得注意的创新包括联邦学习和与电子病历系统和生理传感器的模型集成。结论:虽然人工智能显示出早期败血症检测的希望,但成功的临床应用将需要现实世界的测试和清晰的模型可解释性。未来的工作应侧重于将这些工具标准化,以供实际医疗使用。本文引用本文:Shanmugam H, Airen L, Rawat S.机器学习和深度学习模型在脓毒症早期预测中的应用。中华检验医学杂志;2015;29(6):516-524。
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 and Deep Learning Models for Early Sepsis Prediction: A Scoping Review.

Machine Learning and Deep Learning Models for Early Sepsis Prediction: A Scoping Review.

Machine Learning and Deep Learning Models for Early Sepsis Prediction: A Scoping Review.

Background and aims: Sepsis, a dangerous condition where infection triggers an abnormal host response, requires quick detection to save lives. While traditional detection methods often fall short, artificial intelligence (AI) and its subsets, machine learning (ML) and deep learning (DL), offer new hope. This scoping review inspects the ML and DL models that are published in the period from 2022 to 2025 for sepsis prediction using electronic health records (EHRs). It aims to provide a comprehensive update for clinicians on the proposed sepsis prediction models, features used, data processing methods, model performance and clinical integration.

Methods: Our March 11, 2025, PubMed search identified thirteen relevant studies that developed ML or DL models for predicting adult sepsis.

Results: Most researchers used supervised ML, with some exploring DL and hybrid approaches. The models relied on standard clinical data like vital signs and laboratory results, similar to traditional scoring methods. Some models utilized demographic information and electrocardiographic (ECG) readings as features to predict sepsis. Performance metrics such as area under the receiver operating characteristic (AUROC) curve, specificity, and sensitivity showed that these ML and DL models often surpassed the ability of both human clinicians and traditional scoring systems in predicting sepsis. Notable innovations included federated learning and model integration with EHR systems and physiological sensors.

Conclusion: While AI shows promise for early sepsis detection, successful clinical adoption will require real-world testing and clear model interpretability. Future work should focus on standardizing these tools for practical medical use.

How to cite this article: Shanmugam H, Airen L, Rawat S. Machine Learning and Deep Learning Models for Early Sepsis Prediction: A Scoping Review. Indian J Crit Care Med 2025;29(6):516-524.

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来源期刊
CiteScore
3.50
自引率
10.00%
发文量
299
期刊介绍: Indian Journal of Critical Care Medicine (ISSN 0972-5229) is specialty periodical published under the auspices of Indian Society of Critical Care Medicine. Journal encourages research, education and dissemination of knowledge in the fields of critical and emergency medicine.
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