2020
DOI: 10.1038/s41598-020-73644-6
|View full text |Cite
|
Sign up to set email alerts
|

Machine learning-guided discovery and design of non-hemolytic peptides

Abstract: Reducing hurdles to clinical trials without compromising the therapeutic promises of peptide candidates becomes an essential step in peptide-based drug design. Machine-learning models are cost-effective and time-saving strategies used to predict biological activities from primary sequences. Their limitations lie in the diversity of peptide sequences and biological information within these models. Additional outlier detection methods are needed to set the boundaries for reliable predictions; the applicability d… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
3
1
1

Citation Types

2
104
0

Year Published

2020
2020
2023
2023

Publication Types

Select...
4
2
1
1

Relationship

0
8

Authors

Journals

citations
Cited by 96 publications
(121 citation statements)
references
References 67 publications
2
104
0
Order By: Relevance
“…This measure was employed to retrieve putative CIF and IDA peptides in Anthoceros species by the EMBOSS 6.5.7 tool fuzzpro (http://emboss.open-bio.org/rel/rel6/apps/fuzzpro.html). Queries with wildcards were generated based on consensus sequences from MUSCHLE alignments (Edgar, 2004) (Plisson et al, 2020;Serrano, 2020;Zhang et al, 2020b).…”
Section: Methods For Identification Of Peptide Orthologuesmentioning
confidence: 99%
See 1 more Smart Citation
“…This measure was employed to retrieve putative CIF and IDA peptides in Anthoceros species by the EMBOSS 6.5.7 tool fuzzpro (http://emboss.open-bio.org/rel/rel6/apps/fuzzpro.html). Queries with wildcards were generated based on consensus sequences from MUSCHLE alignments (Edgar, 2004) (Plisson et al, 2020;Serrano, 2020;Zhang et al, 2020b).…”
Section: Methods For Identification Of Peptide Orthologuesmentioning
confidence: 99%
“…Queries with wildcards were generated based on consensus sequences from MUSCHLE alignments (Edgar, 2004) of mature peptides of Arabidopsis, A. trichopoda, P. glauba, M. polymorpha and S. moellendorffii, (DYxxxxPxPPLxxPxPF and PIPxSxPSKRHN, respectively) and used against protein libraries generated from gene-annotated Anthoceros genomes. Further options may be to test Machine Learning or Deep Learning methods that recently have been developed for peptide discovery (Plisson et al, 2020; Serrano, 2020; Zhang et al, 2020b).…”
Section: Introductionmentioning
confidence: 99%
“…The best R 2 (holdout test set) and Δ R 2 (referring to | R 2 (holdout test set) − R 2 (cross‐validation)|) of 0.664 ± 0.031 and 0.026 ± 0.018, respectively. Plisson et al 102 developed ML models capable of predicting the hemolytic activity of antimicrobial peptides with 95% to 97% accuracy, useful for the design of novel peptides with reduced hemolytic activity. For the first time, authors defined the AD in peptide modeling, as recommended by the guidelines of the OECD—Principle 3.…”
Section: Ai‐based Toxicity Predictionmentioning
confidence: 99%
“…All of the above predictors performed well in distinguishing between ACPs and non-ACPs. Additionally, in order to screen safe candidate peptide drugs, some prediction models of toxic peptide and hemolytic peptide have been developed successively [ 27 , 28 , 29 , 30 , 31 , 32 , 33 ].…”
Section: Introductionmentioning
confidence: 99%