4.7 Article

Computational Lipidomics with insane: A Versatile Tool for Generating Custom Membranes for Molecular Simulations

Journal

JOURNAL OF CHEMICAL THEORY AND COMPUTATION
Volume 11, Issue 5, Pages 2144-2155

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jctc.5b00209

Keywords

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Funding

  1. emerging field initiative Synthetic Biology of the Friedrich-Alexander University of Erlangen-Nurnberg
  2. Research Training Group Dynamic Interactions at Biological Membranes From Single Molecules to Tissue [RTG 1962]
  3. German Science Foundation (DFG)
  4. Canadian Institutes for Health Research
  5. Rubicon grant from The Netherlands Organization for Scientific Research (NWO)
  6. NWO

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For simulations of membranes and membrane proteins, the generation of the lipid bilayer is a critical step in the setup of the system. Membranes comprising multiple components pose a particular challenge, because the relative abundances need to be controlled and the equilibration of the system may take several microseconds. Here we present a comprehensive method for building membrane containing systems, characterized by simplicity and versatility. The program uses preset, coarse-grain lipid templates to build the membrane, and also allows on-the-fly generation of simple lipid types by specifying the headgroup, linker, and lipid tails on the command line. The resulting models can be equilibrated, after which a relaxed atomistic model can be obtained by reverse transformation. For multicomponent membranes, this provides an efficient means for generating equilibrated atomistic models. The method is called insane, an acronym for INSert membrANE. The program has been made available, together with the complementary method for reverse transformation, at http://cgmartini.nl/. This work highlights the key features of insane and presents a survey of properties for a large range of lipids as a start of a computational lipidomics project.

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