Single Neuron Level

Research at the single neuron level aims to understand the function and behavior of individual neurons within complex neural systems, seeking to bridge the gap between microscopic neural activity and macroscopic cognitive functions. Current efforts focus on developing advanced imaging and analysis techniques for neuron segmentation and characterization, employing deep learning models and novel spiking neural network architectures to analyze neuronal activity and improve model interpretability. These advancements are crucial for accelerating neuroscience research, improving the design of artificial neural networks, and potentially leading to new diagnostic and therapeutic tools for neurological disorders.

Papers