Deep learning-enabled analysis reveals distinct neuronal phenotypes induced by aging and cold-shock.
Sahand Saberi-BosariKevin B FloresAdriana San MiguelPublished in: BMC biology (2020)
The results of this work indicate that implementing deep learning for challenging image segmentation of PVD neurodegeneration enables quantitatively tracking subtle morphological changes in an unbiased manner. This analysis revealed that distinct patterns of morphological alteration are induced by aging and cold-shock, suggesting different mechanisms at play. This approach can be used to identify the molecular components involved in orchestrating neurodegeneration and to characterize the effect of other stressors on PVD degeneration.