NeuRegenerate: A Framework for Visualizing Neurodegeneration
Saeed Boorboor, Shawn Mathew, Mala Ananth, David Talmage, Lorna W., Role, Arie E. Kaufman

TL;DR
NeuRegenerate is an innovative framework that predicts and visualizes neural fiber changes over time in brain microscopy data using deep learning, enhancing understanding of neurodegeneration.
Contribution
It introduces neuReGANerator, a cycleGAN-based network with novel loss and modules, for accurate prediction of neural projections across age-timepoints.
Findings
Reconstruction accuracy of 94% in predicting neuronal structures.
Effective visualization modes for structural differences and morphing.
Framework demonstrated on mouse brain cholinergic system data.
Abstract
Recent advances in high-resolution microscopy have allowed scientists to better understand the underlying brain connectivity. However, due to the limitation that biological specimens can only be imaged at a single timepoint, studying changes to neural projections is limited to general observations using population analysis. In this paper, we introduce NeuRegenerate, a novel end-to-end framework for the prediction and visualization of changes in neural fiber morphology within a subject, for specified age-timepoints.To predict projections, we present neuReGANerator, a deep-learning network based on cycle-consistent generative adversarial network (cycleGAN) that translates features of neuronal structures in a region, across age-timepoints, for large brain microscopy volumes. We improve the reconstruction quality of neuronal structures by implementing a density multiplier and a new loss…
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