High-throughput classification of S. cerevisiae tetrads using deep learning.
Balint SzücsRaghavendra SelvanMichael LisbyPublished in: Yeast (Chichester, England) (2024)
Meiotic crossovers play a vital role in proper chromosome segregation and evolution of most sexually reproducing organisms. Meiotic recombination can be visually observed in Saccharomyces cerevisiae tetrads using linked spore-autonomous fluorescent markers placed at defined intervals within the genome, which allows for analysis of meiotic segregation without the need for tetrad dissection. To automate the analysis, we developed a deep learning-based image recognition and classification pipeline for high-throughput tetrad detection and meiotic crossover classification. As a proof of concept, we analyzed a large image data set from wild-type and selected gene knock-out mutants to quantify crossover frequency, interference, chromosome missegregation, and gene conversion events. The deep learning-based method has the potential to accelerate the discovery of new genes involved in meiotic recombination in S. cerevisiae such as the underlying factors controlling crossover frequency and interference.
Keyphrases
- deep learning
- high throughput
- copy number
- wild type
- artificial intelligence
- saccharomyces cerevisiae
- convolutional neural network
- machine learning
- genome wide
- open label
- dna damage
- double blind
- single cell
- dna repair
- placebo controlled
- small molecule
- clinical trial
- dna methylation
- electronic health record
- oxidative stress
- climate change
- loop mediated isothermal amplification