LGQMMLFeb 15, 2025

Epidemic-guided deep learning for spatiotemporal forecasting of Tuberculosis outbreak

arXiv:2502.10786v26 citationsh-index: 16Mach learn
Originality Incremental advance
AI Analysis

This work addresses the challenge of early warning for tuberculosis outbreaks, which is a global health problem, though it appears incremental as it builds on existing epidemiological and deep learning methods.

The authors tackled the problem of forecasting tuberculosis outbreaks by developing an epidemic-guided deep learning approach that combines mechanistic epidemiological models with deep neural networks, achieving robust and accurate predictions across multiple time horizons on data from Japan and China.

Tuberculosis (TB) remains a formidable global health challenge, driven by complex spatiotemporal transmission dynamics and influenced by factors such as population mobility and behavioral changes. We propose an Epidemic-Guided Deep Learning (EGDL) approach that fuses mechanistic epidemiological principles with advanced deep learning techniques to enhance early warning systems and intervention strategies for TB outbreaks. Our framework is built upon a modified networked Susceptible-Infectious-Recovered (MN-SIR) model augmented with a saturated incidence rate and graph Laplacian diffusion, capturing both long-term transmission dynamics and region-specific population mobility patterns. Compartmental model parameters are rigorously estimated using Bayesian inference via the Markov Chain Monte Carlo approach. Theoretical analysis leveraging the comparison principle and Green's formula establishes global stability properties of the disease-free and endemic equilibria. Building on these epidemiological insights, we design two forecasting architectures, EGDL-Parallel and EGDL-Series, that integrate the mechanistic outputs of the MN-SIR model within deep neural networks. This integration mitigates the overfitting risks commonly encountered in data-driven methods and filters out noise inherent in surveillance data, resulting in reliable forecasts of real-world epidemic trends. Experiments conducted on TB incidence data from 47 prefectures in Japan and 31 provinces in mainland China demonstrate that our approach delivers robust and accurate predictions across multiple time horizons (short to medium-term forecasts), supporting its generalizability across regions with different population dynamics.

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