Abstract

Human endogenous retroviruses (HERVs) encode active retroviral proteins, which may be involved in the progression of cancer and other diseases. Matrix protein (MA), in group-specific antigen genes (gag) of retroviruses, is associated with the virus envelope glycoproteins in most mammalian retroviruses and may be involved in virus particle assembly, transport and budding. However, the amount of annotated MAs in ERVs is still at a low level so far. No computational method to predict the exact start and end coordinates of MAs in gags has been proposed yet. In this paper, a computational method to identify MAs in ERVs is proposed. A divide and conquer technique was designed and applied to the conventional prediction model to acquire better results when dealing with gene sequences with various lengths. Initiation sites and termination sites were predicted separately and then combined according to their intervals. Three different algorithms were applied and compared: weighted support vector machine (WSVM), weighted extreme learning machine (WELM) and random forest (RF). G − mean (geometric mean of sensitivity and specificity) values of initiation sites and termination sites under 5-fold cross validation generated by random forest models are 0.9869 and 0.9755 respectively, highest among the algorithms applied. Our prediction models combine RF & WSVM algorithms to achieve the best prediction results. 98.4% of all the collected ERV sequences with complete MAs (125 in total) could be predicted exactly correct by the models. 94,671 HERV sequences from 118 families were scanned by the model, 104 new putative MAs were predicted in human chromosomes. Distributions of the putative MAs and optimizations of model parameters were also analyzed. The usage of our predicting method was also expanded to other retroviruses and satisfying results were acquired.

Highlights

  • Human endogenous retroviruses (HERVs) are remnants of ancient retroviral infections

  • Typical full-length HERVs are about 7-11kb in size and consist mainly of the coding regions for gag, pro, pol, and env genes, flanked on both 5’- and 3’- ends by long terminal repeats (LTR)

  • All of the 125 ERV sequences collected with complete Matrix protein (MA) were used to test the prediction performance of our prediction model

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Summary

Introduction

Human endogenous retroviruses (HERVs) are remnants of ancient retroviral infections. HERVs and their related genetic elements make up 504 distinct families and compose ~8% of human genome [1]. Typical full-length HERVs are about 7-11kb in size and consist mainly of the coding regions for gag, pro, pol, and env genes, flanked on both 5’- and 3’- ends by long terminal repeats (LTR). Most HERVs in human genome have incomplete structures [2], which. A computational method for prediction of MAs in ERVs

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