The novel coronavirus (COVID-19) pandemic has had a devastating global impact, profoundly affecting daily life, healthcare systems, and public health infrastructure. Despite the availability of treatments and vaccines, hospitalizations and deaths continue. Real-time surveillance of infection trends supports resource allocation and mitigation strategies, but reliable forecasting remains a challenge. While deep learning has advanced time-series forecasting, its effectiveness relies on large datasets, a significant obstacle given the pandemic's evolving nature. Most models use national or state-level data, limiting both dataset size and the granularity of insights. To address this, we propose the Fine-Grained Infection Forecast Network (FIGI-Net), a stacked bidirectional LSTM structure designed to leverage county-level data to produce daily forecasts up to two weeks in advance. FIGI-Net outperforms existing models, accurately predicting sudden changes such as new outbreaks or peaks, a capability many state-of-the-art models lack. This approach could enhance public health responses and outbreak preparedness.
Fine-grained forecasting of COVID-19 trends at the county level in the United States.
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作者:Song Tzu-Hsi, Clemente Leonardo, Pan Xiang, Jang Junbong, Santillana Mauricio, Lee Kwonmoo
| 期刊: | npj Digital Medicine | 影响因子: | 15.100 |
| 时间: | 2025 | 起止号: | 2025 Apr 11; 8(1):204 |
| doi: | 10.1038/s41746-025-01606-1 | ||
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