Enhancing Glucose Level Prediction of ICU Patients through Irregular Time-Series Analysis and Integrated Representation
- URL: http://arxiv.org/abs/2411.01418v1
- Date: Sun, 03 Nov 2024 03:03:11 GMT
- Title: Enhancing Glucose Level Prediction of ICU Patients through Irregular Time-Series Analysis and Integrated Representation
- Authors: Hadi Mehdizavareh, Arijit Khan, Simon Lebech Cichosz,
- Abstract summary: We develop a novel learning-based model to forecast the next level, classifying it into hypoglycemia, hyperglycemia, or euglycemia.
This study focuses on predicting blood glucose levels in ICU patients, but MITST can easily be extended to other critical event prediction tasks.
- Score: 4.101915841246237
- License:
- Abstract: Accurately predicting blood glucose (BG) levels of ICU patients is critical, as both hypoglycemia (BG < 70 mg/dL) and hyperglycemia (BG > 180 mg/dL) are associated with increased morbidity and mortality. We develop the Multi-source Irregular Time-Series Transformer (MITST), a novel machine learning-based model to forecast the next BG level, classifying it into hypoglycemia, hyperglycemia, or euglycemia (70-180 mg/dL). The irregularity and complexity of Electronic Health Record (EHR) data, spanning multiple heterogeneous clinical sources like lab results, medications, and vital signs, pose significant challenges for prediction tasks. MITST addresses these using hierarchical Transformer architectures, which include a feature-level, a timestamp-level, and a source-level Transformer. This design captures fine-grained temporal dynamics and allows learning-based data integration instead of traditional predefined aggregation. In a large-scale evaluation using the eICU database (200,859 ICU stays across 208 hospitals), MITST achieves an average improvement of 1.7% (p < 0.001) in AUROC and 1.8% (p < 0.001) in AUPRC over a state-of-the-art baseline. For hypoglycemia, MITST achieves an AUROC of 0.915 and an AUPRC of 0.247, both significantly higher than the baseline's AUROC of 0.862 and AUPRC of 0.208 (p < 0.001). The flexible architecture of MITST allows seamless integration of new data sources without retraining the entire model, enhancing its adaptability in clinical decision support. Although this study focuses on predicting BG levels, MITST can easily be extended to other critical event prediction tasks in ICU settings, offering a robust solution for analyzing complex, multi-source, irregular time-series data.
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