Development and Comparative Analysis of an Early Prediction Model for Acute Kidney Injury within 72-Hours Post-ICU Admission Using Evidence from the MIMIC-III Database.

IF 2 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL Discovery medicine Pub Date : 2023-08-01 DOI:10.24976/Discov.Med.202335177.61
Yan Luo, Wenling Ye, Yawei Sun, Heling Bao, Hui Liu
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Abstract

Background: Prompt recognition of patients predisposed to acute kidney injury (AKI) within 72 hours of intensive care unit (ICU) admission holds significant clinical importance as it can considerably lower mortality rates. However, existing AKI prediction models often require complex data collection yet yield only moderate performance. This study aims to develop a straightforward and efficient AKI prediction model, providing ICU physicians with a powerful tool to expedite the detection of AKI patients.

Methods: This study proposed a novel generative adversarial imputation networks-least absolute shrinkage and selection operator-extreme gradient boosting (Gain-Lasso-XGBoost) framework and developed an AKI prediction model on the basis of the medical information mart for intensive care (MIMIC-III) database. All the steps, including data preprocessing, feature selection, development, and optimization of prediction models, are organically integrated into the framework which has strong scalability. To compare the performance of our model with current models, we conducted a systematic review to collect all studies on the basis of the MIMIC-III database with similar objectives.

Results: From 15 demographic and clinical variables, 8 features and 5 features were identified as the optimal group of features and processed into the model development. The model optimization further improved the performance of our proposed framework, and the area under curve (AUC) results with 8 and 5 feature vectors achieved 0.849 and 0.830, respectively. Compared with other studies, our method extracted only 8 or 5 feature vectors and obtained superior performance, with an average AUC 1.9% higher than the state-of-the-art approaches in the same type.

Conclusions: Our study suggested that the onset of AKI be effectively and quickly predicted using simplified features, and not just for more specific patient groups. It may help clinicians accurately identify patients at risk of AKI after ICU admission and provide timely monitoring and treatment.

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基于MIMIC-III数据库的重症监护病房入院后72小时内急性肾损伤早期预测模型的建立与对比分析
背景:在重症监护病房(ICU)入院72小时内及时识别易患急性肾损伤(AKI)的患者具有重要的临床意义,因为它可以显著降低死亡率。然而,现有的AKI预测模型通常需要复杂的数据收集,但只能产生中等的性能。本研究旨在建立一种简单有效的AKI预测模型,为ICU医师提供一种快速发现AKI患者的有力工具。方法:本研究提出了一种新的生成式对抗输入网络-最小绝对收缩和选择算子-极端梯度增强(gain - laso - xgboost)框架,并基于重症监护医疗信息市场(MIMIC-III)数据库建立了AKI预测模型。将数据预处理、特征选择、开发、预测模型优化等步骤有机集成到框架中,具有较强的可扩展性。为了将我们的模型与现有模型的性能进行比较,我们进行了系统回顾,收集了基于MIMIC-III数据库的所有具有相似目标的研究。结果:从15个人口学和临床变量中,筛选出8个特征和5个特征为最优特征组,并进行模型开发。模型优化进一步提高了框架的性能,8个和5个特征向量的曲线下面积(AUC)结果分别达到0.849和0.830。与其他研究相比,我们的方法只提取了8个或5个特征向量,并且取得了优异的性能,平均AUC比同类型的最新方法高1.9%。结论:我们的研究表明,使用简化的特征可以有效、快速地预测AKI的发生,而不仅仅是针对更特定的患者群体。它可以帮助临床医生准确识别ICU入院后存在AKI风险的患者,并提供及时的监测和治疗。
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来源期刊
Discovery medicine
Discovery medicine MEDICINE, RESEARCH & EXPERIMENTAL-
CiteScore
5.40
自引率
0.00%
发文量
80
审稿时长
6-12 weeks
期刊介绍: Discovery Medicine publishes novel, provocative ideas and research findings that challenge conventional notions about disease mechanisms, diagnosis, treatment, or any of the life sciences subjects. It publishes cutting-edge, reliable, and authoritative information in all branches of life sciences but primarily in the following areas: Novel therapies and diagnostics (approved or experimental); innovative ideas, research technologies, and translational research that will give rise to the next generation of new drugs and therapies; breakthrough understanding of mechanism of disease, biology, and physiology; and commercialization of biomedical discoveries pertaining to the development of new drugs, therapies, medical devices, and research technology.
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