articleBioinformaticsAug 27, 2013HYBRID OA

lDDT: a local superposition-free score for comparing protein structures and models using distance difference tests

SIB Swiss Institute of Bioinformatics · University of Basel

PubMed
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Abstract

MOTIVATION: The assessment of protein structure prediction techniques requires objective criteria to measure the similarity between a computational model and the experimentally determined reference structure. Conventional similarity measures based on a global superposition of carbon α atoms are strongly influenced by domain motions and do not assess the accuracy of local atomic details in the model. RESULTS: The Local Distance Difference Test (lDDT) is a superposition-free score that evaluates local distance differences of all atoms in a model, including validation of stereochemical plausibility. The reference can be a single structure, or an ensemble of equivalent structures. We demonstrate that lDDT is well…

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