Literature DB >> 31922268

Machine intelligence in peptide therapeutics: A next-generation tool for rapid disease screening.

Shaherin Basith1, Balachandran Manavalan1, Tae Hwan Shin1, Gwang Lee1.   

Abstract

Discovery and development of biopeptides are time-consuming, laborious, and dependent on various factors. Data-driven computational methods, especially machine learning (ML) approach, can rapidly and efficiently predict the utility of therapeutic peptides. ML methods offer an array of tools that can accelerate and enhance decision making and discovery for well-defined queries with ample and sophisticated data quality. Various ML approaches, such as support vector machines, random forest, extremely randomized tree, and more recently deep learning methods, are useful in peptide-based drug discovery. These approaches leverage the peptide data sets, created via high-throughput sequencing and computational methods, and enable the prediction of functional peptides with increased levels of accuracy. The use of ML approaches in the development of peptide-based therapeutics is relatively recent; however, these techniques are already revolutionizing protein research by unraveling their novel therapeutic peptide functions. In this review, we discuss several ML-based state-of-the-art peptide-prediction tools and compare these methods in terms of their algorithms, feature encodings, prediction scores, evaluation methodologies, and software utilities. We also assessed the prediction performance of these methods using well-constructed independent data sets. In addition, we discuss the common pitfalls and challenges of using ML approaches for peptide therapeutics. Overall, we show that using ML models in peptide research can streamline the development of targeted peptide therapies.
© 2020 Wiley Periodicals, Inc.

Keywords:  artificial intelligence; disease; machine learning; peptide therapeutics; random forest; support vector machine

Year:  2020        PMID: 31922268     DOI: 10.1002/med.21658

Source DB:  PubMed          Journal:  Med Res Rev        ISSN: 0198-6325            Impact factor:   12.944


  53 in total

1.  Computational prediction of species-specific yeast DNA replication origin via iterative feature representation.

Authors:  Balachandran Manavalan; Shaherin Basith; Tae Hwan Shin; Gwang Lee
Journal:  Brief Bioinform       Date:  2021-07-20       Impact factor: 11.622

2.  ATGPred-FL: sequence-based prediction of autophagy proteins with feature representation learning.

Authors:  Shihu Jiao; Zheng Chen; Lichao Zhang; Xun Zhou; Lei Shi
Journal:  Amino Acids       Date:  2022-03-14       Impact factor: 3.520

3.  STALLION: a stacking-based ensemble learning framework for prokaryotic lysine acetylation site prediction.

Authors:  Shaherin Basith; Gwang Lee; Balachandran Manavalan
Journal:  Brief Bioinform       Date:  2022-01-17       Impact factor: 11.622

4.  TACOS: a novel approach for accurate prediction of cell-specific long noncoding RNAs subcellular localization.

Authors:  Young-Jun Jeon; Md Mehedi Hasan; Hyun Woo Park; Ki Wook Lee; Balachandran Manavalan
Journal:  Brief Bioinform       Date:  2022-07-18       Impact factor: 13.994

5.  Predicting Proteolysis in Complex Proteomes Using Deep Learning.

Authors:  Matiss Ozols; Alexander Eckersley; Christopher I Platt; Callum Stewart-McGuinness; Sarah A Hibbert; Jerico Revote; Fuyi Li; Christopher E M Griffiths; Rachel E B Watson; Jiangning Song; Mike Bell; Michael J Sherratt
Journal:  Int J Mol Sci       Date:  2021-03-17       Impact factor: 5.923

6.  i6mA-Fuse: improved and robust prediction of DNA 6 mA sites in the Rosaceae genome by fusing multiple feature representation.

Authors:  Md Mehedi Hasan; Balachandran Manavalan; Watshara Shoombuatong; Mst Shamima Khatun; Hiroyuki Kurata
Journal:  Plant Mol Biol       Date:  2020-03-05       Impact factor: 4.076

Review 7.  Large-scale comparative review and assessment of computational methods for anti-cancer peptide identification.

Authors:  Xiao Liang; Fuyi Li; Jinxiang Chen; Junlong Li; Hao Wu; Shuqin Li; Jiangning Song; Quanzhong Liu
Journal:  Brief Bioinform       Date:  2021-07-20       Impact factor: 11.622

8.  PredAPP: Predicting Anti-Parasitic Peptides with Undersampling and Ensemble Approaches.

Authors:  Wei Zhang; Enhua Xia; Ruyu Dai; Wending Tang; Yannan Bin; Junfeng Xia
Journal:  Interdiscip Sci       Date:  2021-10-04       Impact factor: 2.233

9.  IRC-Fuse: improved and robust prediction of redox-sensitive cysteine by fusing of multiple feature representations.

Authors:  Md Mehedi Hasan; Md Ashad Alam; Watshara Shoombuatong; Hiroyuki Kurata
Journal:  J Comput Aided Mol Des       Date:  2021-01-04       Impact factor: 3.686

10.  Predicting antifreeze proteins with weighted generalized dipeptide composition and multi-regression feature selection ensemble.

Authors:  Shunfang Wang; Lin Deng; Xinnan Xia; Zicheng Cao; Yu Fei
Journal:  BMC Bioinformatics       Date:  2021-06-23       Impact factor: 3.169

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.