Toward insights on antimicrobial selectivity of host defense peptides via machine learning model interpretation
Host defense peptides are promising candidates for the development of novel antibiotics. To realize their therapeutic potential, high levels of target selectivity is essential. This study aims to identify factors governing selectivity via the use of the random forest algorithm for correlating peptid...
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th-mahidol.759862022-08-04T15:04:45Z Toward insights on antimicrobial selectivity of host defense peptides via machine learning model interpretation Hao Li Thinam Tamang Chanin Nantasenamat Tribhuvan University Mahidol University Biochemistry, Genetics and Molecular Biology Host defense peptides are promising candidates for the development of novel antibiotics. To realize their therapeutic potential, high levels of target selectivity is essential. This study aims to identify factors governing selectivity via the use of the random forest algorithm for correlating peptide sequence information with their bioactivity data. Satisfactory predictive models were achieved from out-of-bag prediction that yielded accuracies and Matthew's correlation coefficients in excess of 0.80 and 0.57, respectively. Model interpretation through the use of variable importance metrics and partial dependence plots indicated that the selectivity was heavily influenced by the composition and distribution patterns of molecular charge and solubility related parameters. Furthermore, the three investigated bacterial target species (Escherichia coli, Pseudomonas aeruginosa and Staphylococcus aureus) likely had a significant influence on how selectivity was realized as there appears to be a similar underlying selectivity mechanism on the basis of charge-solubility properties (i.e. but which is tailored according to the target in question). 2022-08-04T08:04:45Z 2022-08-04T08:04:45Z 2021-11-01 Article Genomics. Vol.113, No.6 (2021), 3851-3863 10.1016/j.ygeno.2021.08.023 10898646 08887543 2-s2.0-85115763502 https://repository.li.mahidol.ac.th/handle/123456789/75986 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85115763502&origin=inward |
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Biochemistry, Genetics and Molecular Biology Hao Li Thinam Tamang Chanin Nantasenamat Toward insights on antimicrobial selectivity of host defense peptides via machine learning model interpretation |
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Host defense peptides are promising candidates for the development of novel antibiotics. To realize their therapeutic potential, high levels of target selectivity is essential. This study aims to identify factors governing selectivity via the use of the random forest algorithm for correlating peptide sequence information with their bioactivity data. Satisfactory predictive models were achieved from out-of-bag prediction that yielded accuracies and Matthew's correlation coefficients in excess of 0.80 and 0.57, respectively. Model interpretation through the use of variable importance metrics and partial dependence plots indicated that the selectivity was heavily influenced by the composition and distribution patterns of molecular charge and solubility related parameters. Furthermore, the three investigated bacterial target species (Escherichia coli, Pseudomonas aeruginosa and Staphylococcus aureus) likely had a significant influence on how selectivity was realized as there appears to be a similar underlying selectivity mechanism on the basis of charge-solubility properties (i.e. but which is tailored according to the target in question). |
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Tribhuvan University |
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Tribhuvan University Hao Li Thinam Tamang Chanin Nantasenamat |
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Hao Li Thinam Tamang Chanin Nantasenamat |
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Hao Li |
title |
Toward insights on antimicrobial selectivity of host defense peptides via machine learning model interpretation |
title_short |
Toward insights on antimicrobial selectivity of host defense peptides via machine learning model interpretation |
title_full |
Toward insights on antimicrobial selectivity of host defense peptides via machine learning model interpretation |
title_fullStr |
Toward insights on antimicrobial selectivity of host defense peptides via machine learning model interpretation |
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Toward insights on antimicrobial selectivity of host defense peptides via machine learning model interpretation |
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toward insights on antimicrobial selectivity of host defense peptides via machine learning model interpretation |
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2022 |
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https://repository.li.mahidol.ac.th/handle/123456789/75986 |
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1763496839830568960 |