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基于电子健康记录的机器学习算法用于预测急性肾损伤及向急性肾病转变的可用性:一项概念验证研究。

Usability of machine learning algorithms based on electronic health records for the prediction of acute kidney injury and transition to acute kidney disease: A proof of concept study.

作者信息

Ruinelli Lorenzo, Cippà Pietro, Sieber Chantal, Di Serio Clelia, Ferrari Paolo, Bellasi Antonio

机构信息

Area ICT, Ente Ospedaliero Cantonale, Bellinzona, Switzerland.

Clinical Trial Unit, Ente Ospedaliero Cantonale, Bellinzona, Switzerland.

出版信息

PLoS One. 2025 Jul 1;20(7):e0326124. doi: 10.1371/journal.pone.0326124. eCollection 2025.

Abstract

BACKGROUND

Acute kidney injury (AKI) and acute kidney disease (AKD) are frequent complications of hospitalization, resulting in reduced outcomes and increased cost burden. However, these conditions are only sometimes recognized and promptly treated. Leveraging electronic health records (EHR), we explored the potential of artificial intelligence (AI) in diagnosing AKI and AKD during hospitalization.

METHODS

We retrospectively analyzed EHRs collected from all patients admitted in 2022 to our public hospital network. AKI and AKD were defined according to international guidelines. The database was divided into training and validation sets. Machine Learning (ML) algorithms were developed with 10-fold cross-validation, and diagnostic accuracy was evaluated.

FINDINGS

We analyzed 34,579 hospitalizations (mean age of 60 years, 50% females). Baseline renal function was available in ~50% of cases. AKI and AKD complicated 10% and 1.5% of hospitalizations, respectively. The majority of AKI episodes (77%) occurred within the first three days of hospitalization, and >50% of subjects with AKI were discharged before complete renal function recovery. ML accurately predicted AKI (AUC-ROC 79%) during hospitalization, based on data available before and at hospital admission. Among subjects with AKI on the first day and longer in-hospital observation, the ML accuracy in predicting AKD transition increased (AUC-ROC from 76% to 88%) by integrating EHR accumulated during the hospitalization. The negative predictive value (NPV) progressively increased from 94% to 98% consistently. Shapely additive explanations documented that age, urgent hospital admission, AKI severity, and baseline renal function were associated with AKI. Renal function trajectory during the first days of hospitalization was the most relevant predictor of AKD.

INTERPRETATION

ML, relying on EHR before and during hospitalization, may accurately predict AKI and AKD. The high NPV also suggests its implementation as a tool to rule out the risk of renal failure, aid in individualizing patient care, and allocate healthcare resources.

摘要

背景

急性肾损伤(AKI)和急性肾脏病(AKD)是住院常见的并发症,会导致预后不良和成本负担增加。然而,这些情况有时未被识别和及时治疗。利用电子健康记录(EHR),我们探讨了人工智能(AI)在住院期间诊断AKI和AKD的潜力。

方法

我们回顾性分析了2022年入住我们公立医院网络的所有患者的电子健康记录。AKI和AKD根据国际指南进行定义。数据库分为训练集和验证集。采用10倍交叉验证开发机器学习(ML)算法,并评估诊断准确性。

结果

我们分析了34579例住院病例(平均年龄60岁,50%为女性)。约50%的病例有基线肾功能数据。AKI和AKD分别使10%和1.5%的住院病例复杂化。大多数AKI发作(77%)发生在住院的前三天内,超过50%的AKI患者在肾功能完全恢复前出院。基于入院前和入院时可用的数据,ML在住院期间准确预测AKI(曲线下面积-ROC为79%)。在入院第一天及住院观察时间较长的AKI患者中,通过整合住院期间积累的电子健康记录,ML预测AKD转变的准确性提高(曲线下面积-ROC从76%提高到88%)。阴性预测值(NPV)持续从94%逐步提高到98%。Shapely加法解释表明,年龄、紧急入院、AKI严重程度和基线肾功能与AKI相关。住院头几天的肾功能轨迹是AKD最相关的预测因素。

解读

依赖住院前和住院期间电子健康记录的ML可以准确预测AKI和AKD。高NPV还表明可将其作为排除肾衰竭风险、辅助个性化患者护理和分配医疗资源的工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e519/12212546/c7ce81193ef1/pone.0326124.g001.jpg

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