An interpretable predictive deep learning platform for pediatric metabolic diseases.
Hamed JavidiArshiya MariamLina AlkhaledKevin M PantaloneDaniel M RotroffPublished in: Journal of the American Medical Informatics Association : JAMIA (2024)
Despite most risk calculators using only the most recent data, incorporating longitudinal data improved the model accuracies because utilizing trajectories provides a more comprehensive characterization of the patient's health history. Our interpretable model indicated that BMI trajectories were consistently identified as one of the most influential features for prediction, highlighting the advantages of incorporating longitudinal data when available.