Ligand identification using electron-density map correlations
TL;DR: An automated ligand-fitting procedure is applied to (F o − F c)exp(iϕc) difference density for 200 commonly found ligand from macromolecular structures in the Protein Data Bank to identify ligands from density maps.
read more
Abstract: A procedure for the identification of ligands bound in crystal structures of macromolecules is described. Two characteristics of the density corresponding to a ligand are used in the identification procedure. One is the correlation of the ligand density with each of a set of test ligands after optimization of the fit of that ligand to the density. The other is the correlation of a fingerprint of the density with the fingerprint of model density for each possible ligand. The fingerprints consist of an ordered list of correlations of each the test ligands with the density. The two characteristics are scored using a Z-score approach in which the correlations are normalized to the mean and standard deviation of correlations found for a variety of mismatched ligand-density pairs, so that the Z scores are related to the probability of observing a particular value of the correlation by chance. The procedure was tested with a set of 200 of the most commonly found ligands in the Protein Data Bank, collectively representing 57% of all ligands in the Protein Data Bank. Using a combination of these two characteristics of ligand density, ranked lists of ligand identifications were made for representative (Fo − Fc)exp(iφc) difference density from entries in the Protein Data Bank. In 48% of the 200 cases, the correct ligand was at the top of the ranked list of ligands. This approach may be useful in identification of unknown ligands in new macromolecular structures as well as in the identification of which ligands in a mixture have bound to a macromolecule.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
PHENIX: a comprehensive Python-based system for macromolecular structure solution
Paul D. Adams,Paul D. Adams,Pavel V. Afonine,Gábor Bunkóczi,Vincent B. Chen,Ian W. Davis,Nathaniel Echols,Jeffrey J. Headd,Li-Wei Hung,Gary J. Kapral,Ralf W. Grosse-Kunstleve,Airlie J. McCoy,Nigel W. Moriarty,Robert D. Oeffner,Randy J. Read,David S. Richardson,Jane S. Richardson,Thomas C. Terwilliger,Peter H. Zwart +18 more
TL;DR: The PHENIX software for macromolecular structure determination is described and its uses and benefits are described.
Macromolecular structure determination using X-rays, neutrons and electrons: recent developments in Phenix
Dorothee Liebschner,Pavel V. Afonine,Matthew L. Baker,Gábor Bunkóczi,Vincent B. Chen,Tristan I. Croll,Bradley J. Hintze,Li-Wei Hung,Swati Jain,Airlie J. McCoy,Nigel W. Moriarty,Robert D. Oeffner,Billy K. Poon,Michael G. Prisant,Randy J. Read,Jane S. Richardson,David S. Richardson,Sammito,Oleg V. Sobolev,Duncan H. Stockwell,Thomas C. Terwilliger,Alexandre Urzhumtsev,Alexandre Urzhumtsev,Lizbeth L. Videau,Carmen J. Williams,Paul D. Adams,Paul D. Adams +26 more
- 01 Oct 2019
TL;DR: Recent developments in the Phenix software package are described in the context of macromolecular structure determination using X-rays, neutrons and electrons.
“Bioinformatics” 특집을 내면서
TL;DR: Assessment of medical technology in the context of commercialization with Bioentrepreneur course, which addresses many issues unique to biomedical products.
4.8K
The Phenix software for automated determination of macromolecular structures.
Paul D. Adams,Pavel V. Afonine,Gábor Bunkóczi,Vincent B. Chen,Nathaniel Echols,Jeffrey J. Headd,Li-Wei Hung,Swati Jain,Gary J. Kapral,Ralf W. Grosse Kunstleve,Airlie J. McCoy,Nigel W. Moriarty,Robert D. Oeffner,Randy J. Read,David S. Richardson,Jane S. Richardson,Thomas C. Terwilliger,Peter H. Zwart +17 more
TL;DR: Phenix software package has been developed to provide a comprehensive system for macromolecular crystallographic structure solution with an emphasis on automation, and features in Phenix for the automation of experimental phasing with subsequent model building, molecular replacement, structure refinement and validation are described.
933
A G-quadruplex-containing RNA activates fluorescence in a GFP-like fluorophore.
Hao Huang,Nikolai B Suslov,Nan-Sheng Li,Sandip A. Shelke,Molly E. Evans,Yelena Koldobskaya,Phoebe A. Rice,Joseph A. Piccirilli +7 more
TL;DR: The structures of Spinach both with and without bound fluorophore at 2.2 and 2.4 Å resolution are determined, providing a foundation for structure-based engineering of new fluorideophore-binding RNA aptamers.
324
References
The Protein Data Bank
Helen M. Berman,John D. Westbrook,Zukang Feng,Gary L. Gilliland,Talapady N. Bhat,Helge Weissig,Ilya N. Shindyalov,Philip E. Bourne +7 more
TL;DR: The goals of the PDB are described, the systems in place for data deposition and access, how to obtain further information and plans for the future development of the resource are described.
“Bioinformatics” 특집을 내면서
TL;DR: Assessment of medical technology in the context of commercialization with Bioentrepreneur course, which addresses many issues unique to biomedical products.
4.8K
Lipidic cubic phase crystal structure of the photosynthetic reaction centre from Rhodobacter sphaeroides at 2.35A resolution.
TL;DR: The type I crystal packing that results from this crystallisation medium, for which 3D crystals grow as stacked 2D crystals, and the reaction centre X-ray structure is refined to 2.35A resolution is reported, indicating that a slight compression occurs in this lipid-rich environment.
127
Structure−Activity Relationship of 6-Methylidene Penems Bearing Tricyclic Heterocycles as Broad-Spectrum β-Lactamase Inhibitors: Crystallographic Structures Show Unexpected Binding of 1,4-Thiazepine Intermediates
Aranapakam M. Venkatesan,Yansong Gu,Osvaldo Dos Santos,T. Abe,Atul Agarwal,Youjun Yang,Petersen Peter J,William J. Weiss,Tarek S. Mansour,Michiyoshi Nukaga,Andrea M. Hujer,Robert A. Bonomo,James R. Knox +12 more
TL;DR: The design and synthesis of a series of seven tricyclic 6-methylidene penems as novel class A and C serine beta-lactamase inhibitors is described and the formation of the 1,4- thiazepine ring structures is proposed based on a 7-endo-trig cyclization.
83
Mg(2+)-Mn2+ clusters in enzyme-catalyzed phosphoryl-transfer reactions.
TL;DR: This work shows how Mg2+ and Mn2+ function in Escherichia coli phosphoenolpyruvate carboxykinase (PCK) and proposes a general model for the role of binuclear metal clusters in enzyme-catalyzed phosphoryl-transfer reactions.
83