Machine learning reveals conserved chromatin patterns determining meiotic recombination sites in plants

bioRxiv (Cold Spring Harbor Laboratory)(2022)

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摘要
ABSTRACT Distribution of meiotic recombination events in plants has been associated with local chromatin and DNA characteristics, chromosome landmark proximity, and other features 1-7 . However, relative importance of these characteristics is unclear and it is unknown if they are sufficient to unambiguously determine recombination landscape 8 . Here, we analyzed over 40 DNA sequence, chromatin, and chromosome location features of maize and Arabidopsis recombination sites using machine learning 9,10 . We discovered that a combination of just three features, CG methylation, CHG methylation, and nucleosome occupancy, enabled identification of exact crossover site with 90% accuracy. These results imply redundancy of most recombination site characteristics. Recombination takes place in a small fraction of the genome with chromatin features distinct from those of genome at large. Surprisingly, crossover sites show elevated heterochromatin histone marks despite low DNA methylation. Crossover site features show broad evolutionary conservation, which will enable creating genetic maps in species where conventional mapping is unfeasible.
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meiotic recombination sites,chromatin patterns,machine learning,plants
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