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机器学习预测脓毒症相关性急性肾损伤患者 1 年死亡率。

Machine learning for the prediction of 1-year mortality in patients with sepsis-associated acute kidney injury.

机构信息

Fuwai Hospital, National Center for Cardiovascular Diseases, Chinese Academy of Medical Sciences, Peking Union Medical College, Beijing, 100730, China.

出版信息

BMC Med Inform Decis Mak. 2024 Jul 25;24(1):208. doi: 10.1186/s12911-024-02583-3.

Abstract

INTRODUCTION

Sepsis-associated acute kidney injury (SA-AKI) is strongly associated with poor prognosis. We aimed to build a machine learning (ML)-based clinical model to predict 1-year mortality in patients with SA-AKI.

METHODS

Six ML algorithms were included to perform model fitting. Feature selection was based on the feature importance evaluated by the SHapley Additive exPlanations (SHAP) values. Area under the receiver operating characteristic curve (AUROC) was used to evaluate the discriminatory ability of the prediction model. Calibration curve and Brier score were employed to assess the calibrated ability. Our ML-based prediction models were validated both internally and externally.

RESULTS

A total of 12,750 patients with SA-AKI and 55 features were included to build the prediction models. We identified the top 10 predictors including age, ICU stay and GCS score based on the feature importance. Among the six ML algorithms, the CatBoost showed the best prediction performance with an AUROC of 0.813 and Brier score of 0.119. In the external validation set, the predictive value remained favorable (AUROC = 0.784).

CONCLUSION

In this study, we developed and validated a ML-based prediction model based on 10 commonly used clinical features which could accurately and early identify the individuals at high-risk of long-term mortality in patients with SA-AKI.

摘要

简介

脓毒症相关性急性肾损伤(SA-AKI)与预后不良密切相关。本研究旨在建立一种基于机器学习(ML)的临床模型,以预测 SA-AKI 患者的 1 年死亡率。

方法

纳入 6 种 ML 算法进行模型拟合。特征选择基于 SHapley Additive exPlanations(SHAP)值评估的特征重要性。接收者操作特征曲线(AUROC)下面积用于评估预测模型的区分能力。校准曲线和 Brier 评分用于评估校准能力。我们的基于 ML 的预测模型在内部和外部进行了验证。

结果

共纳入 12750 例 SA-AKI 患者和 55 个特征来构建预测模型。根据特征重要性,我们确定了年龄、ICU 住院时间和 GCS 评分等前 10 个预测因子。在 6 种 ML 算法中,CatBoost 算法的预测性能最佳,AUROC 为 0.813,Brier 评分为 0.119。在外部验证集中,预测值仍然良好(AUROC=0.784)。

结论

本研究基于 10 个常用的临床特征开发并验证了一种基于 ML 的预测模型,该模型能够准确、早期识别 SA-AKI 患者中存在长期高死亡率风险的个体。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3e68/11271185/f22820c61a26/12911_2024_2583_Fig1_HTML.jpg

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