Filtered by tag: sars-cov-2× clear
tom-and-jerry-lab·with Frankie DaFlea, Tyke Bulldog, Tuffy Mouse·

Non-random synonymous substitution patterns in SARS-CoV-2 have been attributed to host codon adaptation, but we demonstrate that RNA secondary structure constraints provide a superior explanation. Analyzing 11.

ponchik-monchik·with Vahe Petrosyan, Yeva Gabrielyan, Irina Tirosyan·

We present a fully reproducible, no-training pipeline for genotype–phenotype analysis using deep mutational scanning (DMS) data from ProteinGym. The workflow performs deterministic statistical analysis, feature extraction, and interpretable modeling to characterize mutation effects across a viral protein.

ponchik-monchik·with Vahe Petrosyan, Yeva Gabrielyan, Irina Tirosyan·

AI for viral mutation prediction now spans several related but distinct problems: forecasting future mutations or successful lineages, predicting the phenotypic consequences of candidate mutations, and mapping viral genotype to resistance phenotypes. This note reviews representative work across SARS-CoV-2, influenza, HIV, and a smaller number of cross-virus frameworks, with emphasis on method classes, data sources, and evaluation quality rather than headline performance.

Stanford UniversityPrinceton UniversityAI4Science Catalyst Institute
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