王晓莉, 李晓明, 卢若谷, 刘超, 毛智, 胡婕, 周飞虎. 基于机器学习的ICU老年患者急性肾损伤早期预测模型[J]. 解放军医学院学报, 2023, 44(2): 121-127. DOI: 10.3969/j.issn.2095-5227.2023.02.004
引用本文: 王晓莉, 李晓明, 卢若谷, 刘超, 毛智, 胡婕, 周飞虎. 基于机器学习的ICU老年患者急性肾损伤早期预测模型[J]. 解放军医学院学报, 2023, 44(2): 121-127. DOI: 10.3969/j.issn.2095-5227.2023.02.004
WANG Xiaoli, Li Xiaoming, LU Ruogu, LIU Chao, MAO Zhi, HU Jie, ZHOU Feihu. Establishing an early prediction model of acute kidney injury in ICU elderly patients based on machine learning[J]. ACADEMIC JOURNAL OF CHINESE PLA MEDICAL SCHOOL, 2023, 44(2): 121-127. DOI: 10.3969/j.issn.2095-5227.2023.02.004
Citation: WANG Xiaoli, Li Xiaoming, LU Ruogu, LIU Chao, MAO Zhi, HU Jie, ZHOU Feihu. Establishing an early prediction model of acute kidney injury in ICU elderly patients based on machine learning[J]. ACADEMIC JOURNAL OF CHINESE PLA MEDICAL SCHOOL, 2023, 44(2): 121-127. DOI: 10.3969/j.issn.2095-5227.2023.02.004

基于机器学习的ICU老年患者急性肾损伤早期预测模型

Establishing an early prediction model of acute kidney injury in ICU elderly patients based on machine learning

  • 摘要:
      背景  急性肾损伤(acute kidney injury,AKI)在重症监护室(intensive care unit,ICU)发病率高,尤其对于老年人群更是如此。寻找ICU老年AKI的危险因素,建立早期预测模型,有助于临床决策。
      目的  采用机器学习的方法建立ICU老年患者AKI的早期预测模型。
      方法  收集2018年1月 - 2021年12月入住解放军总医院第一医学中心重症医学科年龄≥65岁的老年患者的临床资料(80%用于训练集,20%用于测试集)。以是否发生AKI为结局变量,纳入人口统计学、生命体征、实验室检查、合并症等55个预测变量,通过多个机器学习模型(包含决策树、随机森林、逻辑回归、XGBoost、LightGBM)开发多变量预测模型。利用受试者工作特征曲线(ROC曲线)下面积(area under curve,AUC)、准确性、敏感度、特异度、F1值评估模型性能,选出最优模型。
      结果  最终纳入968例老年患者,其中共304例患AKI(占31.4%)。LightGBM模型的AUC最高,为0.887,决策树、随机森林、逻辑回归、XGBoost模型的AUC分别为0.795、0.850、0.853、0.875。其中LightGBM模型排前5位的特征变量为查尔森合并症指数、液体入量、血清肌酐、N末端脑利钠肽前体和乳酸。
      结论  我们利用LightGBM机器学习方法开发并建立了一个ICU老年患者的AKI早期预测模型,具有较好的预测效能,有助于临床早期预测及预防ICU老年AKI的发生。

     

    Abstract:
      Background  Acute kidney injury (AKI) has a high incidence rate in intensive care unit (ICU) and becomes more prevalent in the elderly population. Therefore, finding the risk factors of AKI for the aged in ICU and establishing an early prediction model is helpful for clinical decision making.
      Objective  To establish an early prediction model of AKI for elderly patients in ICU by machine learning.
      Methods  Clinical data about elderly patients aged ≥65 years who were admitted to the ICU of the First Medical Center, Chinese PLA General Hospital from January 2018 to December 2021 (split into a training set 80% and internal testing set 20%) were collected. The outcome variable was whether AKI occurred. A total of 55 predictive variables including demography, vital signs, laboratory tests, and comorbidities were included in this paper. Multivariable predictive model was developed using machine learning models like Decision tree, Random forest, Logistic regression, XGBoost, and LightGBM. Area under Receiver Operating Characteristic Curve (AUC), accuracy, sensitivity, specificity and F1 value were used to evaluate the model predictive performance and choose the optimal model.
      Results  A total of 968 elderly patients were enrolled, of whom 304 were AKI patients (31.4%). The AUC of LightGBM model was 0.887, which was higher than that of Decision tree model, Random forest model, Logistic regression model and XGBoost model (0.795, 0.850, 0.853 and 0.875, respectively). The top 5 features selected by LightGBM model were Chalson's comorbidity index (CCI), fluid intake, serum creatinine (Scr), N-terminal pro-brain natriuretic peptide (NT-proBNP), Lactic acid (Lac).
      Conclusion  An early prediction model for AKI in the advanced from ICU is established by using LightGBM with good predictive efficiency, which is helpful for early clinical prediction and prevention of AKI in ICU.

     

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