AI Article Synopsis

  • The text discusses a method for identifying causative mutations for specific phenotypes, emphasizing the need to minimize bias in the evaluation process.
  • Researchers have isolated mutants with disrupted cell cycle progression and developed a Bayesian approach that uses four independent indicators to assess the likelihood of each mutation being the causative one.
  • The results of this method have been validated by confirming that recent mutations with high probabilities of causality were indeed causative according to additional genetic data, highlighting the method’s effectiveness in finding key functions across various eukaryotes.

Article Abstract

In many contexts, the problem arises of determining which of many candidate mutations is the most likely to be causative for some phenotype. It is desirable to have a way to evaluate this probability that relies as little as possible on previous knowledge, to avoid bias against discovering new genes or functions. We have isolated mutants with blocked cell cycle progression in and determined mutant genome sequences. Due to the intensity of UV mutagenesis required for efficient mutant collection, the mutants contain multiple mutations altering coding sequence. To provide a quantitative estimate of probability that each individual mutation in a given mutant is the causative one, we developed a Bayesian approach. The approach employs four independent indicators: sequence conservation of the mutated coding sequence with ; severity of the mutation relative to wild-type based on Blosum62 scores; meiotic mapping information for location of the causative mutation relative to known molecular markers; and, for a subset of mutants, the transcriptional profile of the candidate wild-type genes through the mitotic cell cycle. These indicators are statistically independent, and so can be combined quantitatively into a single probability calculation. We validate this calculation: recently isolated mutations that were not in the training set for developing the indicators, with high calculated probability of causality, are confirmed in every case by additional genetic data to indeed be causative. Analysis of "best reciprocal BLAST" (BRB) relationships among and other eukaryotes indicate that the temperature sensitive-lethal (Ts-lethal) mutants that our procedure recovers are highly enriched for fundamental cell-essential functions conserved broadly across plants and other eukaryotes, accounting for the high information content of sequence alignment to .

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5499118PMC
http://dx.doi.org/10.1534/g3.117.039016DOI Listing

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