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A time-aware attention model for prediction of acute kidney injury after pediatric cardiac surgery

Xian Zeng, Shanshan Shi, Sun Yuhan, Yuqing Feng, Linhua Tan, Ru Lin, Jianhua Li, Huilong Duan, Qiang Shu, Haomin Li

2022Journal of the American Medical Informatics Association24 citationsDOIOpen Access PDF

Abstract

OBJECTIVE: Acute kidney injury (AKI) is a common complication after pediatric cardiac surgery, and the early detection of AKI may allow for timely preventive or therapeutic measures. However, current AKI prediction researches pay less attention to time information among time-series clinical data and model building strategies that meet complex clinical application scenario. This study aims to develop and validate a model for predicting postoperative AKI that operates sequentially over individual time-series clinical data. MATERIALS AND METHODS: A retrospective cohort of 3386 pediatric patients extracted from PIC database was used for training, calibrating, and testing purposes. A time-aware deep learning model was developed and evaluated from 3 clinical perspectives that use different data collection windows and prediction windows to answer different AKI prediction questions encountered in clinical practice. We compared our model with existing state-of-the-art models from 3 clinical perspectives using the area under the receiver operating characteristic curve (ROC AUC) and the area under the precision-recall curve (PR AUC). RESULTS: Our proposed model significantly outperformed the existing state-of-the-art models with an improved average performance for any AKI prediction from the 3 evaluation perspectives. This model predicted 91% of all AKI episodes using data collected at 24 h after surgery, resulting in a ROC AUC of 0.908 and a PR AUC of 0.898. On average, our model predicted 83% of all AKI episodes that occurred within the different time windows in the 3 evaluation perspectives. The calibration performance of the proposed model was substantially higher than the existing state-of-the-art models. CONCLUSIONS: This study showed that a deep learning model can accurately predict postoperative AKI using perioperative time-series data. It has the potential to be integrated into real-time clinical decision support systems to support postoperative care planning.

Topics & Concepts

Receiver operating characteristicMedicineAcute kidney injuryClinical PracticeCohortArea under the curveArtificial intelligenceIntensive care medicineEmergency medicineMachine learningComputer scienceInternal medicinePhysical therapySepsis Diagnosis and TreatmentAcute Kidney Injury ResearchMachine Learning in Healthcare
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