TY - JOUR
T1 - Navigating 3D electron microscopy maps with EM-SURFER
AU - Esquivel-Rodríguez, Juan
AU - Xiong, Yi
AU - Han, Xusi
AU - Guang, Shuomeng
AU - Christoffer, Charles
AU - Kihara, Daisuke
N1 - Publisher Copyright:
© Esquivel-Rodriguez et al.; licensee BioMed Central.
PY - 2015/5/30
Y1 - 2015/5/30
N2 - Background: The Electron Microscopy DataBank (EMDB) is growing rapidly, accumulating biological structural data obtained mainly by electron microscopy and tomography, which are emerging techniques for determining large biomolecular complex and subcellular structures. Together with the Protein Data Bank (PDB), EMDB is becoming a fundamental resource of the tertiary structures of biological macromolecules. To take full advantage of this indispensable resource, the ability to search the database by structural similarity is essential. However, unlike high-resolution structures stored in PDB, methods for comparing low-resolution electron microscopy (EM) density maps in EMDB are not well established. Results: We developed a computational method for efficiently searching low-resolution EM maps. The method uses a compact fingerprint representation of EM maps based on the 3D Zernike descriptor, which is derived from a mathematical series expansion for EM maps that are considered as 3D functions. The method is implemented in a web server named EM-SURFER, which allows users to search against the entire EMDB in real-time. EM-SURFER compares the global shapes of EM maps. Examples of search results from different types of query structures are discussed. Conclusions: We developed EM-SURFER, which retrieves structurally relevant matches for query EM maps from EMDB within seconds. The unique capability of EM-SURFER to detect 3D shape similarity of low-resolution EM maps should prove invaluable in structural biology.
AB - Background: The Electron Microscopy DataBank (EMDB) is growing rapidly, accumulating biological structural data obtained mainly by electron microscopy and tomography, which are emerging techniques for determining large biomolecular complex and subcellular structures. Together with the Protein Data Bank (PDB), EMDB is becoming a fundamental resource of the tertiary structures of biological macromolecules. To take full advantage of this indispensable resource, the ability to search the database by structural similarity is essential. However, unlike high-resolution structures stored in PDB, methods for comparing low-resolution electron microscopy (EM) density maps in EMDB are not well established. Results: We developed a computational method for efficiently searching low-resolution EM maps. The method uses a compact fingerprint representation of EM maps based on the 3D Zernike descriptor, which is derived from a mathematical series expansion for EM maps that are considered as 3D functions. The method is implemented in a web server named EM-SURFER, which allows users to search against the entire EMDB in real-time. EM-SURFER compares the global shapes of EM maps. Examples of search results from different types of query structures are discussed. Conclusions: We developed EM-SURFER, which retrieves structurally relevant matches for query EM maps from EMDB within seconds. The unique capability of EM-SURFER to detect 3D shape similarity of low-resolution EM maps should prove invaluable in structural biology.
KW - 3D Zernike Descriptors
KW - Database search
KW - Electron density maps
KW - Electron microscopy
KW - EM Data Bank
KW - EMDB
KW - Low-resolution structure data
KW - Macromolecular structure
KW - Proteins
UR - http://www.scopus.com/inward/record.url?scp=84930660890&partnerID=8YFLogxK
U2 - 10.1186/s12859-015-0580-6
DO - 10.1186/s12859-015-0580-6
M3 - Artículo
C2 - 26025554
AN - SCOPUS:84930660890
SN - 1471-2105
VL - 16
JO - BMC bioinformatics
JF - BMC bioinformatics
IS - 1
M1 - 181
ER -