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      Application of machine learning techniques in predicting MHC binders.

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          Abstract

          The machine learning techniques are playing a vital role in the field of immunoinformatics. In the past, a number of methods have been developed for predicting major histocompatibility complex (MHC)-binding peptides using machine learning techniques. These methods allow predicting MHC-binding peptides with high accuracy. In this chapter, we describe two machine learning technique-based methods, nHLAPred and MHC2Pred, developed for predicting MHC binders for class I and class II alleles, respectively. nHLAPred is a web server developed for predicting binders for 67 MHC class I alleles. This sever has two methods: ANNPred and ComPred. ComPred allows predicting binders for 67 MHC class I alleles, using the combined method [artificial neural network (ANN) and quantitative matrix] for 30 alleles and quantitative matrix-based method for 37 alleles. ANNPred allows prediction of binders for only 30 alleles purely based on the ANN. MHC2Pred is a support vector machine (SVM)-based method for prediction of promiscuous binders for 42 MHC class II alleles.

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          Author and article information

          Journal
          Methods Mol Biol
          Methods in molecular biology (Clifton, N.J.)
          Springer Science and Business Media LLC
          1064-3745
          1064-3745
          2007
          : 409
          Affiliations
          [1 ] Institute of Microbial Technology, Chandigarh, India.
          Article
          10.1007/978-1-60327-118-9_14
          18450002
          678b7498-7a9e-4fb7-9b4a-56f8cef275f6
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