IDOBE: Infectious Disease Outbreak forecasting Benchmark Ecosystem
Aniruddha Adiga, Jingyuan Chou, Anshul Chiranth, Bryan Lewis, Ana I. Bento + 5 more
TLDR
IDOBE is a new benchmark ecosystem with over 10,000 curated outbreaks for evaluating and standardizing infectious disease forecasting models.
Key contributions
- Curated IDOBE dataset with over 10,000 outbreaks from a century of surveillance data.
- Covers 13 diseases, including cases and hospitalizations across US states and global locations.
- Benchmarked 11 models for 1-4 week-ahead forecasting, using both point and probabilistic metrics.
- MLP-based methods show robust performance, with statistical models excelling pre-peak.
Why it matters
IDOBE addresses the critical need for standardized benchmarks in infectious disease forecasting. It enables rigorous, reproducible evaluation of models, improving understanding for novel outbreaks and strengthening public health responses.
Original Abstract
Epidemic forecasting has become an integral part of real-time infectious disease outbreak response. While collaborative ensembles composed of statistical and machine learning models have become the norm for real-time forecasting, standardized benchmark datasets for evaluating such methods are lacking. Further, there is limited understanding on performance of these methods for novel outbreaks with limited historical data. In this paper, we propose IDOBE, a curated collection of epidemiological time series focused on outbreak forecasting. IDOBE compiles from multiple data repositories spanning over a century of surveillance and across U.S. states and global locations. We perform derivative-based segmentation to generate over 10,000 outbreaks covering multiple outcomes such as cases and hospitalizations for 13 diseases. We consider a variety of information-theoretic and distributional measures to quantify the epidemiological diversity of the dataset. Finally, we perform multi-horizon short-term forecasting (1- to 4-week-ahead) through the progression of the outbreak using 11 baseline models and report on their performance. In addition to standard metrics such as NMSE and MAPE for point forecasts, we include probabilistic scoring rules such as Normalized Weighted Interval Score (NWIS) to quantify the performance. We find that MLP-based methods have the most robust performance, with statistical methods having a slight edge during the pre-peak phase. IDOBE dataset along with baselines are released publicly on https://github.com/NSSAC/IDOBE to enable standardized, reproducible benchmarking of outbreak forecasting methods.
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