Over the past decade, improvements in technology and methods have enabled rapid and relatively inexpensive generation of high-quality RNA-seq datasets. These datasets have been used to characterize gene expression for several yeast species and have provided systems-level insights for basic biology, biotechnology and medicine. Herein, we discuss new techniques that have emerged and existing techniques that enable analysts to extract information from multifactorial yeast RNA-seq datasets. Ultimately, this minireview seeks to inspire readers to query datasets, whether previously published or freshly obtained, with creative and diverse methods to discover and support novel hypotheses.
CITATION STYLE
Doughty, T., & Kerkhoven, E. (2020, February 3). Extracting novel hypotheses and findings from RNA-seq data. FEMS Yeast Research. Oxford University Press. https://doi.org/10.1093/femsyr/foaa007
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