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首页> 外文期刊>Frontiers in Immunology >IL17eScan: A Tool for the Identification of Peptides Inducing IL-17 Response
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IL17eScan: A Tool for the Identification of Peptides Inducing IL-17 Response

机译:IL17eScan:鉴定诱导IL-17反应的肽的工具

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IL-17 cytokines are pro-inflammatory cytokines and are crucial in host defense against various microbes. Induction of these cytokines by microbial antigens has been investigated in the case of ischemic brain injury, gingivitis, candidiasis, autoimmune myocarditis, etc. In this study, we have investigated the ability of amino acid sequence of antigens to induce IL-17 response using machine-learning approaches. A total of 338 IL-17-inducing and 984 IL-17 non-inducing peptides were retrieved from Immune Epitope Database. 80% of the data were randomly selected as training dataset and rest 20% as validation dataset. To predict the IL-17-inducing ability of peptides/protein antigens, different sequence-based machine-learning models were developed. The performance of support vector machine (SVM) and random forest (RF) was compared with different parameters to predict IL-17-inducing epitopes (IIEs). The dipeptide composition-based SVM-model displayed an accuracy of 82.4% with Matthews correlation coefficient?=?0.62 at polynomial ( t ?=?1) kernel on 10-fold cross-validation and outperformed RF. Amino acid residues Leu, Ser, Arg, Asn, and Phe and dipeptides LL, SL, LK, IL, LI, NL, LR, FK, SF, and LE are abundant in IIEs. The present tool helps in the identification of IIEs using machine-learning approaches. The induction of IL-17 plays an important role in several inflammatory diseases, and identification of such epitopes would be of great help to the immunologists. It is freely available at http://metagenomics.iiserb.ac.in/IL17eScan/ and http://metabiosys.iiserb.ac.in/IL17eScan/ .
机译:IL-17细胞因子是促炎性细胞因子,对于宿主防御各种微生物至关重要。在缺血性脑损伤,牙龈炎,念珠菌病,自身免疫性心肌炎等情况下,已经研究了微生物抗原对这些细胞因子的诱导作用。在这项研究中,我们研究了使用机器的抗原氨基酸序列诱导IL-17反应的能力。学习方法。从免疫表位数据库中检索到总共338个IL-17诱导肽和984个IL-17非诱导肽。随机选择80%的数据作为训练数据集,其余20%的数据作为验证数据集。为了预测肽/蛋白质抗原的IL-17诱导能力,开发了不同的基于序列的机器学习模型。将支持向量机(SVM)和随机森林(RF)的性能与不同参数进行比较,以预测诱导IL-17的表位(IIE)。基于二肽成分的SVM模型在多项式(t = 1)的多项式中,在10倍交叉验证和优于RF的条件下,其Matthews相关系数= 0.62的情况下显示82.4%的准确性。 IIE中氨基酸残基Leu,Ser,Arg,Asn和Phe以及二肽LL,SL,LK,IL,LI,NL,LR,FK,SF和LE丰富。本工具有助于使用机器学习方法识别IIE。 IL-17的诱导在几种炎性疾病中起重要作用,而这种表位的鉴定对免疫学家将有很大帮助。可从http://metagenomics.iiserb.ac.in/IL17eScan/和http://metabiosys.iiserb.ac.in/IL17eScan/免费获得。

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