fRMSDPred: predicting local RMSD between structural fragments using sequence information.

Huzefa Rangwala, George Karypis

Research output: Contribution to journalArticlepeer-review

6 Scopus citations

Abstract

The effectiveness of comparative modeling approaches for protein structure prediction can be substantially improved by incorporating predicted structural information in the initial sequence-structure alignment. Motivated by the approaches used to align protein structures, this paper focuses on developing machine learning approaches for estimating the RMSD value of a pair of protein fragments. These estimated fragment-level RMSD values can be used to construct the alignment, assess the quality of an alignment, and identify high-quality alignment segments. We present algorithms to solve this fragment-level RMSD prediction problem using a supervised learning framework based on support vector regression and classification that incorporates protein profiles, predicted secondary structure, effective information encoding schemes, and novel second-order pairwise exponential kernel functions. Our comprehensive empirical study shows superior results compared to the profile-to-profile scoring schemes.

Original languageEnglish (US)
Pages (from-to)311-322
Number of pages12
JournalComputational systems bioinformatics / Life Sciences Society. Computational Systems Bioinformatics Conference
Volume6
StatePublished - 2007

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