Zakharova, Elena; Orsi, Markus; Capecchi, Alice; Reymond, Jean-Louis (2022). Machine Learning Guided Discovery of Non-Hemolytic Membrane Disruptive Anti-Cancer Peptides. ChemMedChem, 17(17), e202200291. Wiley-VCH 10.1002/cmdc.202200291
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ChemMedChem_-_2022_-_Zakharova_-_Machine_Learning_Guided_Discovery_of_Non_Hemolytic_Membrane_Disruptive_Anti_Cancer.pdf - Accepted Version Available under License Publisher holds Copyright. Download (1MB) | Preview |
Most antimicrobial peptides (AMPs) and anticancer peptides (ACPs) fold into membrane disruptive cationic amphiphilic α-helices, many of which are however also unpredictably hemolytic and toxic. Here we exploited the ability of recurrent neural networks (RNN) to distinguish active from inactive and non-hemolytic from hemolytic AMPs and ACPs to discover new non-hemolytic ACPs. Our discovery pipeline involved: 1) sequence generation using either a generative RNN or a genetic algorithm, 2) RNN classification for activity and hemolysis, 3) selection for sequence novelty, helicity and amphiphilicity, and 4) synthesis and testing. Experimental evaluation of thirty-three peptides resulted in eleven active ACPs, four of which were non-hemolytic, with properties resembling those of the natural ACP lasioglossin III. These experiments show the first example of direct machine learning guided discovery of non-hemolytic ACPs.
Item Type: |
Journal Article (Original Article) |
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Division/Institute: |
08 Faculty of Science > Department of Chemistry, Biochemistry and Pharmaceutical Sciences (DCBP) |
UniBE Contributor: |
Zakharova, Elena, Orsi, Markus, Capecchi, Alice, Reymond, Jean-Louis |
Subjects: |
500 Science > 570 Life sciences; biology 500 Science > 540 Chemistry |
ISSN: |
1860-7179 |
Publisher: |
Wiley-VCH |
Language: |
English |
Submitter: |
Pubmed Import |
Date Deposited: |
27 Jul 2022 10:02 |
Last Modified: |
27 Jul 2023 00:25 |
Publisher DOI: |
10.1002/cmdc.202200291 |
PubMed ID: |
35880810 |
Uncontrolled Keywords: |
anticancer peptides chemical space genetic algorithm machine learning peptide design |
BORIS DOI: |
10.48350/171569 |
URI: |
https://boris.unibe.ch/id/eprint/171569 |