@article {Abdellah2024.03.11.584388, author = {Marwan Abdellah and Alessandro Foni and Juan Jos{\'e} Garc{\'\i}a Cantero and Nadir Rom{\'a}n Guerrero and Elvis Boci and Adrien Fleury and Jay S. Coggan and Daniel Keller and Judit Planas and Jean-Denis Courcol and Georges Khazen}, title = {Synthesis of geometrically realistic and watertight neuronal ultrastructure manifolds for in silico modeling}, elocation-id = {2024.03.11.584388}, year = {2024}, doi = {10.1101/2024.03.11.584388}, publisher = {Cold Spring Harbor Laboratory}, abstract = {Understanding the intracellular dynamics of brain cells entails performing three-dimensional molecular simulations incorporating ultrastructural models that can capture cellular membrane geometries at nanometer scales. While there is an abundance of neuronal morphologies available online, e.g. from NeuroMorpho.Org, converting those fairly abstract point-and-diameter representations into geometrically realistic and simulation-ready, i.e. watertight, manifolds is challenging. Many neuronal mesh reconstruction methods have been proposed, however, the resulting models are either biologically unplausible or non-watertight. We present an effective and unconditionally robust method capable of generating geometrically realistic and watertight surface manifolds of spiny cortical neurons from their morphological descriptions. The robustness of our technique is assessed with a mixed dataset of cortical neurons with a wide variety of morphological classes. The implementation is seamlessly extended and applied to synthetic astrocytic morphologies that are also plausibly biological in detail. Resulting meshes are ultimately used to create tetrahedral models that are plugged into in silico reaction-diffusion simulations for revealing cellular structure-function relationships. Availability and implementation: Our method is implemented in NeuroMorphoVis, a neuroscience-specific open source Blender add-on, making it freely accessible for neuroscience researchers.Competing Interest StatementThe authors have declared no competing interest.}, URL = {https://www.biorxiv.org/content/early/2024/03/13/2024.03.11.584388}, eprint = {https://www.biorxiv.org/content/early/2024/03/13/2024.03.11.584388.full.pdf}, journal = {bioRxiv} }