vLUME: 3D virtual reality for single-molecule localization microscopy

v LUME is a virtual reality software package designed to render large three-dimensional single-molecule localization microscopy datasets. v LUME features include visualization, segmentation, bespoke analysis of complex local geometries and exporting features. v LUME can perform complex analysis on real three-dimensional biological samples that would otherwise be impossible by using regular flat-screen visualization programs. v LUME is a complete virtual reality environment for visualizing, analyzing and interacting with three-dimensional single-molecule localization microscopy data.

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