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Understanding the Results of Electrostatics Calculations: Visualizing Molecular Isopotential Surfaces

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 Added by Cameron Mura
 Publication date 2016
  fields Biology
and research's language is English
 Authors Cameron Mura




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This document attempts to clarify potential confusion regarding electrostatics calculations, specifically in the context of biomolecular structure and specifically as regards the units typically used to contour/visualize isopotential surfaces, potentials mapped onto molecular solvent-accessible surfaces, etc.



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