Impact Factor (2025): 6.9
DOI Prefix: 10.47001/IRJIET
The ongoing
COVID-19 pandemic has underscored the need for effective predictive tools to
manage patient outcomes and healthcare resources. Electronic health records
(EHRs), containing a wealth of patient information, have become a vital
resource for predicting COVID-19 outcomes. Deep learning, a subset of machine
learning, has shown significant promise in extracting patterns from complex
healthcare data to predict patient severity, mortality, and recovery. This
paper provides a comprehensive review of recent research exploring the
integration of deep learning models with EHR data to predict COVID-19 outcomes.
It evaluates various deep learning architectures such as convolutional neural
networks (CNNs), recurrent neural networks (RNNs), and transformers, applied to
diverse datasets from patient demographics, clinical histories, laboratory
results, and even imaging data. The paper also discusses the challenges faced
in this area, such as data quality issues, model transparency, and the
integration of predictions into clinical workflows. Finally, the paper offers a
perspective on the future directions for improving the use of deep learning
models in predicting outcomes, emphasizing the importance of interdisciplinary
approaches and addressing ethical concerns such as data privacy and informed
consent.
Country : India
IRJIET, Volume 8, Issue 11, November 2024 pp. 299-303