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Cited 96 time in webofscience Cited 105 time in scopus
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PIP-EL: A New Ensemble Learning Method for Improved Proinflammatory Peptide Predictionsopen access

Authors
Manavalan, BalachandranShin, Tae HwanKim, Myeong OkLee, Gwang
Issue Date
31-Jul-2018
Publisher
FRONTIERS MEDIA SA
Keywords
proinflammatory peptide; ensemble learning; random forest; machine learning; immunotherapy
Citation
FRONTIERS IN IMMUNOLOGY, v.9
Indexed
SCIE
SCOPUS
Journal Title
FRONTIERS IN IMMUNOLOGY
Volume
9
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/11460
DOI
10.3389/fimmu.2018.01783
ISSN
1664-3224
Abstract
Proinflammatory cytokines have the capacity to increase inflammatory reaction and play a central role in first line of defence against invading pathogens. Proinflammatory inducing peptides (PIPs) have been used as an antineoplastic agent, an antibacterial agent and a vaccine in immunization therapies. Due to the advancement in sequence technologies that resulted an avalanche of protein sequence data. Therefore, it is necessary to develop an automated computational method to enable fast and accurate identification of novel PIPs within the vast number of candidate proteins and peptides. To address this, we proposed a new predictor, PIP-EL, for predicting PIPs using the strategy of ensemble learning (EL). Our benchmarking dataset is imbalanced. Thus, we applied a random under-sampling technique to generate 10 balanced models for each composition. Technically, PIP-EL is the fusion of 50 independent random forest (RF) models, where each of the five different compositions, including amino acid, dipeptide, composition-transition-distribution, physicochemical properties, and amino acid index contains 10 RF models. PIP-EL achieves the Matthews' correlation coefficient (MCC) of 0.435 in a 5-fold cross-validation test, which is similar to 2-5% higher than that of the individual classifiers and hybrid feature-based classifier. Furthermore, we evaluate the performance of PIP-EL on the independent dataset, showing that our method outperforms the existing method and two different machine learning methods developed in this study, with an MCC of 0.454. These results indicate that PIP-EL will be a useful tool for predicting PIPs and for researchers working in the field of peptide therapeutics and immunotherapy. The user-friendly web server, PIP-EL, is freely accessible.(1)
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