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Related Experiment Video

Updated: Jan 7, 2026

Author Spotlight: AI-Driven Trypanosome Species Detection from Microscopic Images
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Author Spotlight: AI-Driven Trypanosome Species Detection from Microscopic Images

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Deep recurrent models for forecasting infectious diseases.

Mai Alzamel1

  • 1Department of Computer Science, College of Computer and Information Sciences, King Saud University, Riyadh, Saudi Arabia.

Frontiers in Public Health
|January 5, 2026
PubMed
Summary

This study developed deep learning models to predict COVID-19 surges in Saudi Arabia using Google Trends data. Bidirectional LSTM showed the highest accuracy in detecting early warning signs of infectious disease outbreaks.

Keywords:
Google Trendsdeep learningforecastinginfectious diseasesrecurrent neural networks

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Area of Science:

  • Epidemiology
  • Artificial Intelligence
  • Public Health

Background:

  • Infectious diseases pose significant global health challenges, necessitating early detection of outbreaks for effective response.
  • Timely identification of unusual increases in case numbers is critical for resource allocation and intervention planning.

Purpose of the Study:

  • To develop and evaluate a predictive framework using deep learning models for forecasting COVID-19 cases in Saudi Arabia.
  • To detect early signs of unusual increases in COVID-19 cases by analyzing temporal patterns in search engine data.

Main Methods:

  • Utilized time series data and Google Trends for search terms like "fever," "COVID," and "cough" as model inputs.
  • Developed predictive models using Long Short-Term Memory (LSTM), Bidirectional LSTM (BiLSTM), and Gated Recurrent Unit (GRU) neural networks.
  • Trained models on preprocessed data, adjusting for time lags, and evaluated performance using Mean Square Error (MSE) and F1-score.

Main Results:

  • Bidirectional LSTM achieved the highest F1-score (0.83) for predicting "COVID" surges, outperforming LSTM (0.73) and GRU (0.77).
  • BiLSTM demonstrated superior performance over LSTM and GRU for early detection of "fever" and "cough" trends.
  • While BiLSTM has higher computational costs, LSTM and GRU provide efficient alternatives for rapid anomaly detection.

Conclusions:

  • Deep learning models, particularly BiLSTM, are effective for early anomaly detection in infectious disease trends.
  • The proposed framework supports timely healthcare interventions and the development of real-time disease monitoring systems.
  • Leveraging search trends alongside epidemiological data enhances the ability to predict and respond to public health emergencies.