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用于急性肾损伤预测和管理的机器学习模型:外部验证研究的范围综述

Machine learning models for acute kidney injury prediction and management: a scoping review of externally validated studies.

作者信息

Rehman Aqeeb Ur, Neyra Javier A, Chen Jin, Ghazi Lama

机构信息

Division of Nephrology, Department of Internal Medicine, University of Alabama at Birmingham, Birmingham, AL, USA.

Department of Epidemiology, School of Public Health, University of Alabama at Birmingham, Birmingham, AL, USA.

出版信息

Crit Rev Clin Lab Sci. 2025 Sep;62(6):454-476. doi: 10.1080/10408363.2025.2497843. Epub 2025 May 5.

Abstract

Despite advancements in medical care, acute kidney injury (AKI) remains a major contributor to adverse patient outcomes and presents a significant challenge due to its associated morbidity, mortality, and financial cost. Machine learning (ML) is increasingly being recognized for its potential to transform AKI care by enabling early prediction, detection, and facilitating an individualized approach to patient management. This scoping review aims to provide a comprehensive analysis of externally validated ML models for the prediction, detection, and management of AKI. We systematically searched for relevant literature from inception to 15 February 2024, using four databases-MEDLINE, EMBASE, Web of Science, and Scopus. We focused solely on models that had undergone external validation, employed Kidney Disease Improving Global Outcomes (KDIGO) definitions for AKI, and utilized ML models (excluding logistic regression models). A total of 44 studies encompassing 161 ML models for AKI prediction, severity assessment, and outcomes in both adult and pediatric populations were included in the review. These studies encompassed 4,153,424 patient admissions, with 1,209,659 in the development and internal validation cohorts and 2,943,765 in the external validation cohorts. The ML models demonstrated significant variability in performance owing to differing clinical settings, populations, and predictors used. Most of the included models were developed in specialized patient populations, such as those in intensive care units, post-surgical settings, and specific disease states (e.g. congestive heart failure, traumatic brain injury, etc.). Moreover, only a few models incorporated dynamic predictors of AKI which are crucial for improving clinical utility in rapidly evolving clinical conditions like AKI. The variable performance of these models when applied to external validation cohorts highlights the challenges of reproducibility and generalizability in implementing ML models in AKI care. Despite acceptable performance metrics, none of the models assessed in this review underwent validation or implementation in real-world clinical workflows. These findings underscore the need for standardized performance metrics and validation protocols to enhance the generalizability and clinical applicability of these models. Future efforts should focus on enhancing model adaptability by incorporating dynamic predictors and unstructured data and by ensuring that models are developed in diverse patient populations. Moreover, collaboration between clinicians and data scientists is critical to ensure the development of models that are clinically relevant, fair, and tailored to real-world healthcare environments.

摘要

尽管医疗护理取得了进步,但急性肾损伤(AKI)仍然是导致患者不良预后的主要因素,因其相关的发病率、死亡率和经济成本而构成重大挑战。机器学习(ML)因其能够通过实现早期预测、检测并促进个性化的患者管理方法来改变AKI护理的潜力而日益受到认可。本综述旨在对用于AKI预测、检测和管理的外部验证ML模型进行全面分析。我们使用四个数据库——MEDLINE、EMBASE、Web of Science和Scopus,系统地检索了从数据库建立到2024年2月15日的相关文献。我们仅关注经过外部验证、采用改善全球肾脏病预后组织(KDIGO)对AKI的定义并使用ML模型(不包括逻辑回归模型)的研究。该综述共纳入了44项研究,涵盖161个用于成人和儿童人群AKI预测、严重程度评估及预后的ML模型。这些研究涉及4,153,424例患者入院病例,其中1,209,659例在开发和内部验证队列中,2,943,765例在外部验证队列中。由于临床环境、人群和所使用的预测因素不同,ML模型在性能上表现出显著差异。大多数纳入的模型是在特殊患者群体中开发的,如重症监护病房、术后环境以及特定疾病状态(如充血性心力衰竭、创伤性脑损伤等)的患者。此外,只有少数模型纳入了AKI的动态预测因素,而这些因素对于在如AKI这样快速变化的临床情况下提高临床实用性至关重要。这些模型应用于外部验证队列时性能的差异凸显了在AKI护理中实施ML模型时可重复性和普遍性方面的挑战。尽管性能指标尚可,但本综述中评估的模型均未在实际临床工作流程中进行验证或实施。这些发现强调了需要标准化的性能指标和验证方案,以提高这些模型的普遍性和临床适用性。未来的努力应集中在通过纳入动态预测因素和非结构化数据来增强模型的适应性,并确保在不同患者群体中开发模型。此外,临床医生和数据科学家之间的合作对于确保开发出与临床相关、公平且适合现实医疗环境的模型至关重要。

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