期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
Prediction of Peptides Binding to Major Histocompatibility Class II Molecules Using Machine Learning Methods
1
作者 Fateme Kazemi Faramarzi Majid Mohammad Beigi +1 位作者 yasamin botorabi Najme Mousavi 《Engineering(科研)》 2013年第10期513-517,共5页
In daily life,we are frequently attacked by infection organisms such as bacteria and viruses. Major Histocompatibility (MHC) molecules have an essential role in T-cell activation and initiating an adaptive immune resp... In daily life,we are frequently attacked by infection organisms such as bacteria and viruses. Major Histocompatibility (MHC) molecules have an essential role in T-cell activation and initiating an adaptive immune response. Development of methods for prediction of MHC-Peptide binding is important in vaccine design and immunotherapy. In this study, we try to predict the binding between peptides and MHC class II. Support vector machine (SVM) and Multi-Layer Percep-tron (MLP) are used for classification. These classifiers based on pseudo amino acid compositions of data that we ex-tracted from PseAAC server, classify the data. Since, the dataset, used in this work, is imbalanced, we apply a pre-processing step to over-sample the minority class and come over this problem. The results show that using the concept of pseudo amino acid composition and applying over-sampling method, increases the performance of predictor. Fur-thermore, the results demonstrate that using the concept of PseAAC and SVM is a successful method for the prediction of MHC class II molecules. 展开更多
关键词 MHC Class II Imbalanced Data SMOTE SVM
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部