3DCoffee: Combining Protein Sequences and Structures Within Multiple Sequence Alignments
Overview
Molecular Biology
Affiliations
Most bioinformatics analyses require the assembly of a multiple sequence alignment. It has long been suspected that structural information can help to improve the quality of these alignments, yet the effect of combining sequences and structures has not been evaluated systematically. We developed 3DCoffee, a novel method for combining protein sequences and structures in order to generate high-quality multiple sequence alignments. 3DCoffee is based on TCoffee version 2.00, and uses a mixture of pairwise sequence alignments and pairwise structure comparison methods to generate multiple sequence alignments. We benchmarked 3DCoffee using a subset of HOMSTRAD, the collection of reference structural alignments. We found that combining TCoffee with the threading program Fugue makes it possible to improve the accuracy of our HOMSTRAD dataset by four percentage points when using one structure only per dataset. Using two structures yields an improvement of ten percentage points. The measures carried out on HOM39, a HOMSTRAD subset composed of distantly related sequences, show a linear correlation between multiple sequence alignment accuracy and the ratio of number of provided structure to total number of sequences. Our results suggest that in the case of distantly related sequences, a single structure may not be enough for computing an accurate multiple sequence alignment.
multistrap: boosting phylogenetic analyses with structural information.
Baltzis A, Santus L, Langer B, Magis C, de Vienne D, Gascuel O Nat Commun. 2025; 16(1):293.
PMID: 39814729 PMC: 11735642. DOI: 10.1038/s41467-024-55264-0.
Distribution and diversity of classical deacylases in bacteria.
Graf L, Moreno-Yruela C, Qin C, Schulze S, Palm G, Schmoker O Nat Commun. 2024; 15(1):9496.
PMID: 39489725 PMC: 11532494. DOI: 10.1038/s41467-024-53903-0.
Large-scale structure-informed multiple sequence alignment of proteins with SIMSApiper.
Crauwels C, Heidig S, Diaz A, Vranken W Bioinformatics. 2024; 40(5).
PMID: 38648741 PMC: 11099654. DOI: 10.1093/bioinformatics/btae276.
Ageorges V, Wawrzyniak I, Ruiz P, Bicep C, Zorgani M, Paxman J Int J Mol Sci. 2023; 24(6).
PMID: 36982580 PMC: 10058404. DOI: 10.3390/ijms24065500.
Vierock J, Shiewer E, Grimm C, Rozenberg A, Chen I, Tillert L Sci Adv. 2022; 8(49):eadd7729.
PMID: 36383037 PMC: 9733931. DOI: 10.1126/sciadv.add7729.