A major challenge in genetics is to identify genetic variants driving natural phenotypic variation. However, current methods of genetic mapping have limited resolution. To address this challenge, we developed a CRISPR-Cas9-based high-throughput genome editing approach that can introduce thousands of specific genetic variants in a single experiment. This enabled us to study the fitness consequences of 16,006 natural genetic variants in yeast. We identified 572 variants with significant fitness differences in glucose media; these are highly enriched in promoters, particularly in transcription factor binding sites, while only 19.2% affect amino acid sequences. Strikingly, nearby variants nearly always favor the same parent's alleles, suggesting that lineage-specific selection is often driven by multiple clustered variants. In sum, our genome editing approach reveals the genetic architecture of fitness variation at single-base resolution and could be adapted to measure the effects of genome-wide genetic variation in any screen for cell survival or cell-sortable markers.
Functional Genetic Variants Revealed by Massively Parallel Precise Genome Editing.
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作者:Sharon Eilon, Chen Shi-An A, Khosla Neil M, Smith Justin D, Pritchard Jonathan K, Fraser Hunter B
| 期刊: | Cell | 影响因子: | 42.500 |
| 时间: | 2018 | 起止号: | 2018 Oct 4; 175(2):544-557 |
| doi: | 10.1016/j.cell.2018.08.057 | ||
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