Northwestern University, Evanston, IL, 60208, USA.
BMC Med Inform Decis Mak. 2019 Jan 31;19(Suppl 1):16. doi: 10.1186/s12911-019-0733-z.
The development of acute kidney injury (AKI) during an intensive care unit (ICU) admission is associated with increased morbidity and mortality.
Our objective was to develop and validate a data driven multivariable clinical predictive model for early detection of AKI among a large cohort of adult critical care patients. We utilized data form the Medical Information Mart for Intensive Care III (MIMIC-III) for all patients who had a creatinine measured for 3 days following ICU admission and excluded patients with pre-existing condition of Chronic Kidney Disease and Acute Kidney Injury on admission. Data extracted included patient age, gender, ethnicity, creatinine, other vital signs and lab values during the first day of ICU admission, whether the patient was mechanically ventilated during the first day of ICU admission, and the hourly rate of urine output during the first day of ICU admission.
Utilizing the demographics, the clinical data and the laboratory test measurements from Day 1 of ICU admission, we accurately predicted max serum creatinine level during Day 2 and Day 3 with a root mean square error of 0.224 mg/dL. We demonstrated that using machine learning models (multivariate logistic regression, random forest and artificial neural networks) with demographics and physiologic features can predict AKI onset as defined by the current clinical guideline with a competitive AUC (mean AUC 0.783 by our all-feature, logistic-regression model), while previous models aimed at more specific patient cohorts.
Experimental results suggest that our model has the potential to assist clinicians in identifying patients at greater risk of new onset of AKI in critical care setting. Prospective trials with independent model training and external validation cohorts are needed to further evaluate the clinical utility of this approach and potentially instituting interventions to decrease the likelihood of developing AKI.
重症监护病房(ICU)入院期间急性肾损伤(AKI)的发展与发病率和死亡率的增加有关。
我们的目的是在大型成人重症监护患者队列中开发和验证一种数据驱动的多变量临床预测模型,以早期检测 AKI。我们利用 ICU 入院后 3 天内测量肌酐的所有患者的医疗信息市场 III(MIMIC-III)数据,并排除入院时患有慢性肾脏病和急性肾损伤的患者。提取的数据包括患者年龄、性别、种族、肌酐、ICU 入院第一天的其他生命体征和实验室值、患者在 ICU 入院第一天是否接受机械通气以及 ICU 入院第一天的每小时尿量。
利用人口统计学、临床数据和 ICU 入院第一天的实验室检查测量值,我们准确预测了第 2 天和第 3 天的最大血清肌酐水平,均方根误差为 0.224mg/dL。我们证明,使用机器学习模型(多变量逻辑回归、随机森林和人工神经网络)结合人口统计学和生理特征,可以根据当前临床指南预测 AKI 的发生,具有竞争力的 AUC(我们的全特征逻辑回归模型的平均 AUC 为 0.783),而以前的模型针对的是更特定的患者群体。
实验结果表明,我们的模型有可能帮助临床医生识别重症监护环境中发生新发 AKI 的风险较高的患者。需要进行前瞻性试验,对独立的模型训练和外部验证队列进行验证,以进一步评估该方法的临床实用性,并可能采取干预措施降低 AKI 的发生可能性。