2024
DOI: 10.1101/2024.04.25.591033
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Hidden Challenges in Evaluating Spillover Risk of Zoonotic Viruses using Machine Learning Models

Junna Kawasaki,
Tadaki Suzuki,
Michiaki Hamada

Abstract: Machine learning models have been deployed to assess the zoonotic spillover risk of viruses by identifying their human infectivity potential. However, the scarcity of comprehensive datasets poses a major challenge, limiting the predictable range of viruses. Our study addressed this limitation through two key strategies: constructing expansive datasets across 26 viral families and developing new models leveraging large language models pre-trained on extensive nucleotide sequences. Our approaches substantially b… Show more

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