iSeq: A New Double-Barcode Method for Detecting Dynamic Genetic Interactions in Yeast

Systematic screens for genetic interactions are a cornerstone of both network and systems biology. However, most screens have been limited to characterizing interaction networks in a single environment. Moving beyond this static view of the cell requires a major technological advance to increase the...

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Main Authors: Mia Jaffe, Gavin Sherlock, Sasha F. Levy
Format: Article
Language:English
Published: Oxford University Press 2017-01-01
Series:G3: Genes, Genomes, Genetics
Subjects:
Online Access:http://g3journal.org/lookup/doi/10.1534/g3.116.034207
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spelling doaj-4ff92dad4c8c4aa98976c6b2e43113132021-07-02T02:51:34ZengOxford University PressG3: Genes, Genomes, Genetics2160-18362017-01-017114315310.1534/g3.116.03420713iSeq: A New Double-Barcode Method for Detecting Dynamic Genetic Interactions in YeastMia JaffeGavin SherlockSasha F. LevySystematic screens for genetic interactions are a cornerstone of both network and systems biology. However, most screens have been limited to characterizing interaction networks in a single environment. Moving beyond this static view of the cell requires a major technological advance to increase the throughput and ease of replication in these assays. Here, we introduce iSeq—a platform to build large double barcode libraries and rapidly assay genetic interactions across environments. We use iSeq in yeast to measure fitness in three conditions of nearly 400 clonal strains, representing 45 possible single or double gene deletions, including multiple replicate strains per genotype. We show that iSeq fitness and interaction scores are highly reproducible for the same clonal strain across replicate cultures. However, consistent with previous work, we find that replicates with the same putative genotype have highly variable genetic interaction scores. By whole-genome sequencing 102 of our strains, we find that segregating variation and de novo mutations, including aneuploidy, occur frequently during strain construction, and can have large effects on genetic interaction scores. Additionally, we uncover several new environment-dependent genetic interactions, suggesting that barcode-based genetic interaction assays have the potential to significantly expand our knowledge of genetic interaction networks.http://g3journal.org/lookup/doi/10.1534/g3.116.034207Saccharomyces cerevisiaeDNA barcodinggenetic interactionssystems biologywhole genome sequencing
collection DOAJ
language English
format Article
sources DOAJ
author Mia Jaffe
Gavin Sherlock
Sasha F. Levy
spellingShingle Mia Jaffe
Gavin Sherlock
Sasha F. Levy
iSeq: A New Double-Barcode Method for Detecting Dynamic Genetic Interactions in Yeast
G3: Genes, Genomes, Genetics
Saccharomyces cerevisiae
DNA barcoding
genetic interactions
systems biology
whole genome sequencing
author_facet Mia Jaffe
Gavin Sherlock
Sasha F. Levy
author_sort Mia Jaffe
title iSeq: A New Double-Barcode Method for Detecting Dynamic Genetic Interactions in Yeast
title_short iSeq: A New Double-Barcode Method for Detecting Dynamic Genetic Interactions in Yeast
title_full iSeq: A New Double-Barcode Method for Detecting Dynamic Genetic Interactions in Yeast
title_fullStr iSeq: A New Double-Barcode Method for Detecting Dynamic Genetic Interactions in Yeast
title_full_unstemmed iSeq: A New Double-Barcode Method for Detecting Dynamic Genetic Interactions in Yeast
title_sort iseq: a new double-barcode method for detecting dynamic genetic interactions in yeast
publisher Oxford University Press
series G3: Genes, Genomes, Genetics
issn 2160-1836
publishDate 2017-01-01
description Systematic screens for genetic interactions are a cornerstone of both network and systems biology. However, most screens have been limited to characterizing interaction networks in a single environment. Moving beyond this static view of the cell requires a major technological advance to increase the throughput and ease of replication in these assays. Here, we introduce iSeq—a platform to build large double barcode libraries and rapidly assay genetic interactions across environments. We use iSeq in yeast to measure fitness in three conditions of nearly 400 clonal strains, representing 45 possible single or double gene deletions, including multiple replicate strains per genotype. We show that iSeq fitness and interaction scores are highly reproducible for the same clonal strain across replicate cultures. However, consistent with previous work, we find that replicates with the same putative genotype have highly variable genetic interaction scores. By whole-genome sequencing 102 of our strains, we find that segregating variation and de novo mutations, including aneuploidy, occur frequently during strain construction, and can have large effects on genetic interaction scores. Additionally, we uncover several new environment-dependent genetic interactions, suggesting that barcode-based genetic interaction assays have the potential to significantly expand our knowledge of genetic interaction networks.
topic Saccharomyces cerevisiae
DNA barcoding
genetic interactions
systems biology
whole genome sequencing
url http://g3journal.org/lookup/doi/10.1534/g3.116.034207
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