Designing Anticancer Peptides by Constructive Machine Learning

ChemMedChem. 2018 Jul 6;13(13):1300-1302. doi: 10.1002/cmdc.201800204. Epub 2018 May 29.

Abstract

Constructive (generative) machine learning enables the automated generation of novel chemical structures without the need for explicit molecular design rules. This study presents the experimental application of such a deep machine learning model to design membranolytic anticancer peptides (ACPs) de novo. A recurrent neural network with long short-term memory cells was trained on α-helical cationic amphipathic peptide sequences and then fine-tuned with 26 known ACPs by transfer learning. This optimized model was used to generate unique and novel amino acid sequences. Twelve of the peptides were synthesized and tested for their activity on MCF7 human breast adenocarcinoma cells and selectivity against human erythrocytes. Ten of these peptides were active against cancer cells. Six of the active peptides killed MCF7 cancer cells without affecting human erythrocytes with at least threefold selectivity. These results advocate constructive machine learning for the automated design of peptides with desired biological activities.

Keywords: artificial intelligence; de novo design; deep learning; drug discovery; peptide design.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Amino Acid Sequence
  • Antineoplastic Agents / chemical synthesis
  • Antineoplastic Agents / pharmacology*
  • Antineoplastic Agents / toxicity
  • Deep Learning*
  • Drug Design*
  • Humans
  • MCF-7 Cells
  • Peptides / chemical synthesis
  • Peptides / pharmacology*
  • Peptides / toxicity

Substances

  • Antineoplastic Agents
  • Peptides