From Data to Decisions: The Integration of AI in Epidemiological Research
DOI:
https://doi.org/10.54097/7jktck77Keywords:
Artificial Intelligence, Epidemiology, Data Analysis, Disease Surveillance, Risk Assessment, Ethical ConsiderationsAbstract
Epidemiological research is the cornerstone of public health and ultimately contributes to protecting human health by understanding disease dynamics, identifying risk factors for infection and disease development, and informing containment measures. Epidemiological approaches in the traditional sense are influenced by significant difficulties especially when dealing with big and heterogeneous data sets. They must confront a slow decision-making process. This paper investigates incorporating Artificial Intelligence AI technologies in epidemiological research settings to improve processing efficiency, strengthen analytical abilities, and promote evidence-based decision-making. The interdisciplinary approach of this study encompasses working hypotheses about the power and potential of AIs within epidemiology, the broad opportunities for their use across disciplines, and concurrent ethical questions raised. These case studies exemplify many of how advanced AI can now be used to monitor and detect potential outbreaks, as well as assess associated risks -- offering new hope for the transformation of public health practice. The paper concludes by highlighting the need to use AI responsibly and calling for epidemiologists, data scientists, policymakers, ethicists, and other stakeholders to work together towards realizing the potential of AI while "addressing ethical, social and technical issues".
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