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Simplifying deep learning to enhance accessibility of large-scale 3D brain imaging analysis

We created DELiVR, a deep-learning pipeline for 3D brain-cell mapping that is trained with virtual reality-generated reference annotations. It can be deployed via the user-friendly interface of the open-source software Fiji, which makes the analysis of large-scale 3D brain images widely accessible to scientists without computational expertise.

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Fig. 1: Deep-learning-based mapping of brain cells with DELiVR.


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This is a summary of: Kaltenecker, D. et al. Virtual reality-empowered deep-learning analysis of brain cells. Nat. Methods (2024).

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Simplifying deep learning to enhance accessibility of large-scale 3D brain imaging analysis. Nat Methods (2024).

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