Chen Zhimeng, Chen Ming, Sun Xuri, Guo Xieli, Li Qiuna, Huang Yinqiong, Zhang Yuren, Wu Lianwei, Liu Yu, Xu Jinting, Fang Yuming, Lin Xiahong
Information Department, Fujian Province Lianpu Network Technology Co., Ltd., Quanzhou, China.
Department of Nephrology, Jinjiang Municipal Hospital, Quanzhou, China.
Front Med (Lausanne). 2021 Jun 4;8:658665. doi: 10.3389/fmed.2021.658665. eCollection 2021.
Acute kidney injury (AKI) is one of the most severe consequences of kidney injury, and it will also cause or aggravate the complications by the fast decline of kidney excretory function. Accurate AKI prediction, including the AKI case, AKI stage, and AKI onset time interval, can provide adequate support for effective interventions. Besides, discovering how the medical features affect the AKI result may also provide supporting information for disease treatment. An attention-based temporal neural network approach was employed in this study for AKI prediction and for the analysis of the impact of medical features from temporal electronic health record (EHR) data of patients before AKI diagnosis. We used the publicly available dataset provided by the Medical Information Mart for Intensive Care (MIMIC) for model training, validation, and testing, and then the model was applied in clinical practice. The improvement of AKI case prediction is around 5% AUC (area under the receiver operating characteristic curve), and the AUC value of AKI stage prediction on AKI stage 3 is over 82%. We also analyzed the data by two steps: the associations between the medical features and the AKI case (positive or inverse) and the extent of the impact of medical features on AKI prediction result. It shows that features, such as lactate, glucose, creatinine, blood urea nitrogen (BUN), prothrombin time (PT), and partial thromboplastin time (PTT), are positively associated with the AKI case, while there are inverse associations between the AKI case and features such as platelet, hemoglobin, hematocrit, urine, and international normalized ratio (INR). The laboratory test features such as urine, glucose, creatinine, sodium, and blood urea nitrogen and the medication features such as nonsteroidal anti-inflammatory drugs, agents acting on the renin-angiotensin system, and lipid-lowering medication were detected to have higher weights than other features in the proposed model, which may imply that these features have a great impact on the AKI case.
急性肾损伤(AKI)是肾损伤最严重的后果之一,它还会因肾脏排泄功能的快速下降而导致或加重并发症。准确的AKI预测,包括AKI病例、AKI分期和AKI发病时间间隔,可为有效干预提供充分支持。此外,发现医学特征如何影响AKI结果也可为疾病治疗提供支持信息。本研究采用基于注意力的时间神经网络方法进行AKI预测,并分析AKI诊断前患者时间电子健康记录(EHR)数据中医学特征的影响。我们使用重症监护医学信息集市(MIMIC)提供的公开可用数据集进行模型训练、验证和测试,然后将该模型应用于临床实践。AKI病例预测的改善约为5%的曲线下面积(AUC),AKI 3期的AKI分期预测AUC值超过82%。我们还分两步分析了数据:医学特征与AKI病例之间的关联(正相关或负相关)以及医学特征对AKI预测结果的影响程度。结果表明,乳酸、葡萄糖、肌酐、血尿素氮(BUN)、凝血酶原时间(PT)和部分凝血活酶时间(PTT)等特征与AKI病例呈正相关,而AKI病例与血小板、血红蛋白、血细胞比容、尿液和国际标准化比值(INR)等特征呈负相关。在所提出的模型中,检测到尿液、葡萄糖、肌酐、钠和血尿素氮等实验室检查特征以及非甾体抗炎药、作用于肾素-血管紧张素系统的药物和降脂药物等用药特征比其他特征具有更高的权重,这可能意味着这些特征对AKI病例有很大影响。