Scientific Reports (Apr 2021)

Prediction of PCR amplification from primer and template sequences using recurrent neural network

  • Kotetsu Kayama,
  • Miyuki Kanno,
  • Naoto Chisaki,
  • Misaki Tanaka,
  • Reika Yao,
  • Kiwamu Hanazono,
  • Gerry Amor Camer,
  • Daiji Endoh

DOI
https://doi.org/10.1038/s41598-021-86357-1
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 24

Abstract

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Abstract We have developed a novel method to predict the success of PCR amplification for a specific primer set and DNA template based on the relationship between the primer sequence and the template. To perform the prediction using a recurrent neural network, the usual double-stranded formation between the primer and template nucleotide sequences was herein expressed as a five-lettered word. The set of words (pseudo-sentences) was placed to indicate the success or failure of PCR targeted to learn recurrent neural network (RNN). After learning pseudo-sentences, RNN predicted PCR results from pseudo-sentences which were created by primer and template sequences with 70% accuracy. These results suggest that PCR results could be predicted using learned RNN and the trained RNN could be used as a replacement for preliminary PCR experimentation. This is the first report which utilized the application of neural network for primer design and prediction of PCR results.