Transforming global health through multimodal deep learning: Integrating NLP and predictive modelling for disease surveillance and prevention

Oluwatosin Agbaakin 1, * and Verseo’ter Iyorkar 2

1 Luddy School of Informatics, Computing and Engineering, Indiana University Indianapolis, USA.
2 Department of Economics, University of West Georgia, USA.
 
Research Article
World Journal of Advanced Research and Reviews, 2024, 24(03), 095–114
Article DOI10.30574/wjarr.2024.24.3.3673
 
Publication history: 
Received on 22 October 2024; revised on 30 November 2024; accepted on 02 December 2024
 
Abstract: 
The integration of multimodal deep learning (DL) approaches in global health represents a transformative advancement in disease surveillance and prevention. The complexity of modern public health challenges, including emerging infectious diseases, healthcare disparities, and resource constraints, necessitates innovative tools that can analyse and interpret diverse data sources in real time. Multimodal DL combines natural language processing (NLP) and predictive Modelling to bridge the gap between structured data, such as case numbers and hospital resources, and unstructured data, including epidemiological reports, social media, and clinical notes. By doing so, it provides comprehensive insights for early outbreak detection, resource allocation, and risk management. NLP enables the extraction of actionable information from diverse unstructured datasets, facilitating the identification of disease patterns and potential outbreaks from news articles, public health bulletins, and social media trends. Predictive models, on the other hand, excel in forecasting disease spread, estimating healthcare demand, and optimizing resource distribution. Together, these technologies empower decision-makers with real-time, actionable insights, enhancing public health preparedness and response capabilities. This paper explores the applications of multimodal DL in disease surveillance, focusing on its role in integrating diverse data modalities for actionable insights. It highlights case studies demonstrating the success of AI-driven tools in mitigating outbreaks and improving healthcare resource management. Additionally, the study discusses ethical, social, and technical challenges, offering recommendations for scaling these systems globally. The adoption of multimodal DL can significantly advance public health strategies, ensuring a more resilient and equitable healthcare system.
 
Keywords: 
Multimodal Deep Learning; Natural Language Processing (NLP); Predictive Modelling; Disease Surveillance; Public Health Strategies; Global Health Preparedness
 
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