PT - JOURNAL ARTICLE AU - Simone Scrima AU - Matteo Tiberti AU - Alessia Campo AU - Elisabeth Corcelle-Termeau AU - Delphine Judith AU - Mads Møller Foged AU - Knut Kristoffer Bundgaard Clemmensen AU - Sharon Tooze AU - Marja Jäättelä AU - Kenji Maeda AU - Matteo Lambrughi AU - Elena Papaleo TI - Unraveling membrane properties at the organelle-level with LipidDyn AID - 10.1101/2022.01.04.474788 DP - 2022 Jan 01 TA - bioRxiv PG - 2022.01.04.474788 4099 - http://biorxiv.org/content/early/2022/01/14/2022.01.04.474788.short 4100 - http://biorxiv.org/content/early/2022/01/14/2022.01.04.474788.full AB - Cellular membranes are formed from many different lipids in various amounts and proportions depending on the subcellular localization. The lipid composition of membranes is sensitive to changes in the cellular environment, and their alterations are linked to several diseases, including cancer. Lipids not only form lipid-lipid interactions but also interact with other biomolecules, including proteins, profoundly impacting each other.Molecular dynamics (MD) simulations are a powerful tool to study the properties of cellular membranes and membrane-protein interactions on different timescales and at varying levels of resolution. Over the last few years, software and hardware for biomolecular simulations have been optimized to routinely run long simulations of large and complex biological systems. On the other hand, high-throughput techniques based on lipidomics provide accurate estimates of the composition of cellular membranes at the level of subcellular compartments. The community needs computational tools for lipidomics and simulation data effectively interacting to better understand how changes in lipid compositions impact membrane function and structure. Lipidomic data can be analyzed to design biologically relevant models of membranes for MD simulations. Similar applications easily result in a massive amount of simulation data where the bottleneck becomes the analysis of the data to understand how membrane properties and membrane-protein interactions are changing in the different conditions. In this context, we developed LipidDyn, an in silico pipeline to streamline the analyses of MD simulations of membranes of different compositions. Once the simulations are collected, LipidDyn provides average properties and time series for several membrane properties such as area per lipid, thickness, diffusion motions, the density of lipid bilayers, and lipid enrichment/depletion. The calculations exploit parallelization and the pipelines include graphical outputs in a publication-ready form. We applied LipidDyn to different case studies to illustrate its potential, including membranes from cellular compartments and transmembrane protein domains. LipidDyn is implemented in Python and relies on open-source libraries. LipidDyn is available free of charge under the GNU General Public License from https://github.com/ELELAB/LipidDyn.Competing Interest StatementThe authors have declared no competing interest.