Comparative modeling of giant annelid hemoglobins

Conference paper
Part of the Progress in Colloid and Polymer Science book series (PROGCOLLOID, volume 127)

Abstract

The information provided by small-angle X-ray scattering, electron microscopy and hydrodynamics for the giant hemoglobins from different annelid species (Lumbricus terrestris, Macrobdella decora,Eudistylia vancouverii) has been compared. The results reveal that these hemoglobins exhibit slight differences in their fine structure, particularly with respect to the presence of a cavity in the central part of the proteins. Results have been obtained by application of several advanced modeling strategies. The low-resolution shape and internal structure of the hemoglobins under analysis were restored ab initio from experimental small-angle scattering data by means of the program DAMMIN using simulated annealing. To improve the results, however, the strict ab initio modeling approach had to be replaced with a procedure which exploited additionally the knowledge of symmetry and anisometry of the proteins. Moreover, 3D reconstructions from electron microscopy were advantageously used as templates for the analysis of scattering data by DAMMIN. For all the models obtained, hydrodynamic data (s, D) were predicted by use of the program HYDRO and compared to literature data. In all cases satisfactory agreement between observed and predicted values could be achieved. The results led to consensus models for the various hemoglobins.

Keywords

Extracellular hemoglobins Advanced modeling techniques Small-angle X-ray scattering Electron microscopy Hydrodynamics 

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Authors and Affiliations

  1. 1.Physical ChemistryInstitute of Chemistry, University of GrazGrazAustria
  2. 2.Structural and Computational Biology ProgrammeEuropean Molecular Biology LaboratoryHeidelbergGermany
  3. 3.Institute of Biophysics and Physical BiochemistryUniversity of RegensburgRegensburgGermany

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