COMPARISON OF MACHINE LEARNING TECHNIQUES FOR PREDICTING NLR PROTEINS

Author:

Nadia 1,Gandotra Ekta2,Kumar Narendra1

Affiliation:

1. Department of Biotechnology and Bioinformatics, Jaypee University of Information Technology, Waknaghat 173234, Solan (HP), India

2. Department of Computer Science and Engineering & Information Technology, Jaypee University of Information Technology, Waknaghat 173234, Solan (HP), India

Abstract

The nucleotide-binding domain leucine-rich repeat-containing (NLR) proteins plays significant role in the intestinal tissue repair and innate immunity. It recently added to the members of innate immunity effectors molecules. It also plays an essential role in intestinal microbiota and recently emerged as a crucial hit for developing ulcerative colitis (UC) and colitis-associated cancer (CAC). A machine learning-based approach for predicting NLR proteins has been developed. In this study, we present a comparison of three supervised machine learning algorithms. Using ProtR and POSSUM Packages, the features are extracted for the dataset used in this work. The models are trained with the input compositional features generated using dipeptide composition, amino acid composition, etc., as well as Position Specific Scoring Matrix (PSSM) based compositions. The dataset consists of 390 proteins for the negative and positive datasets. The five-fold cross-validation (CV) is used to optimize Sequential Minimal Optimization (SMO) library of Support Vector Machine (LIBSVM) and Random Forest (RF) parameters, and the best model was selected. The proposed work performs rationally well with an accuracy of 90.91% and 93.94% for RF as the best classifier for the Amino Acid Composition (AAC) and PSE_PSSM-based model. We believe that this method is a reliable, rapid and useful prediction method for NLR Protein.

Publisher

National Taiwan University

Subject

Biomedical Engineering,Bioengineering,Biophysics

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