A Machine Learning Enhanced EMS Mutagenesis Probability Map for Efficient Identification of Causal Mutations inCaenorhabditis elegans
Zhengyang Guo,
Shimin Wang,
Yang Wang
et al.
Abstract:Chemical mutagenesis-driven forward genetic screens are pivotal in unveiling gene functions, yet identifying causal mutations behind phenotypes remains laborious, hindering their high-throughput application. Here, we reveal a non-uniform mutation rate caused by Ethyl Methane Sulfonate (EMS) mutagenesis in theC. elegansgenome, indicating that mutation frequency is influenced by proximate sequence context and chromatin status. Leveraging these factors, we developed a Machine Learning enhanced pipeline to create … Show more
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