Many bioactive peptides demonstrated therapeutic effects
over complicated
diseases, such as antiviral, antibacterial, anticancer, etc. It is possible to generate a large number of potentially bioactive
peptides using deep learning in a manner analogous to the generation
of de novo chemical compounds using the acquired
bioactive peptides as a training set. Such generative techniques would
be significant for drug development since peptides are much easier
and cheaper to synthesize than compounds. Despite the limited availability
of deep learning-based peptide-generating models, we have built an
LSTM model (called LSTM_Pep) to generate de novo peptides
and fine-tuned the model to generate de novo peptides
with specific prospective therapeutic benefits. Remarkably, the Antimicrobial
Peptide Database has been effectively utilized to generate various
kinds of potential active de novo peptides. We proposed
a pipeline for screening those generated peptides for a given target
and used the main protease of SARS-COV-2 as a proof-of-concept. Moreover,
we have developed a deep learning-based protein–peptide prediction
model (DeepPep) for rapid screening of the generated peptides for
the given targets. Together with the generating model, we have demonstrated
that iteratively fine-tuning training, generating, and screening peptides
for higher-predicted binding affinity peptides can be achieved. Our
work sheds light on developing deep learning-based methods and pipelines
to effectively generate and obtain bioactive peptides with a specific
therapeutic effect and showcases how artificial intelligence can help
discover de novo bioactive peptides that can bind
to a particular target