Revisiting the structure of a synthetic somatostatin analogue for peptide drug design.
Stavroula FiliAlexandros ValmasMaria SpiliopoulouParaskevi KontouAndrew FitchDetlef BeckersThomas DegenKleomenis BarlosKostas K BarlosFotini KaravassiliIrene MargiolakiPublished in: Acta crystallographica Section B, Structural science, crystal engineering and materials (2019)
Natural or artificially manufactured peptides attract scientific interest worldwide owing to their wide array of pharmaceutical and biological activities. X-ray structural studies are used to provide a precise extraction of information, which can be used to enable a better understanding of the function and physicochemical characteristics of peptides. Although it is vulnerable to disassociation, one of the most vital human peptide hormones, somatostatin, plays a regulatory role in the endocrine system as well as in the release of numerous secondary hormones. This study reports the successful crystallization and complete structural model of octreotide, a stable octapeptide analogue of somatostatin. Common obstacles in crystallographic studies arising from the intrinsic difficulties of obtaining a suitable single-crystal specimen were efficiently overcome as polycrystalline material was employed for synchrotron and laboratory X-ray powder diffraction (XPD) measurements. Data collection and preliminary analysis led to the identification of unit-cell symmetry [orthorhombic, P212121, a = 18.5453 (15), b = 30.1766 (25), c = 39.798 (4) Å], a process which was later followed by complete structure characterization and refinement, underlying the efficacy of the suggested (XPD) approach.
Keyphrases
- neuroendocrine tumors
- high resolution
- endothelial cells
- electron microscopy
- dual energy
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