2024
DOI: 10.3390/diagnostics14030337
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CoSev: Data-Driven Optimizations for COVID-19 Severity Assessment in Low-Sample Regimes

Aksh Garg,
Shray Alag,
Dominique Duncan

Abstract: Given the pronounced impact COVID-19 continues to have on society—infecting 700 million reported individuals and causing 6.96 million deaths—many deep learning works have recently focused on the virus’s diagnosis. However, assessing severity has remained an open and challenging problem due to a lack of large datasets, the large dimensionality of images for which to find weights, and the compute limitations of modern graphics processing units (GPUs). In this paper, a new, iterative application of transfer learn… Show more

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