Key research themes
1. How do artificial neuron-glia networks (ANGNs) improve learning and performance compared to classical artificial neural networks?
This research area investigates the benefits of incorporating artificial astrocytes—modeled after biological glial cells—into traditional artificial neural networks (ANNs). The goal is to extend classical neuron-only models to neuron-glia networks (NGNs) that better reflect the complex information processing observed in the brain. Studies focus on how astrocytes modulate synaptic transmission, affect learning algorithms, and impact network performance in classification and control tasks. Understanding the role of astrocytes in artificial networks could lead to advances in biologically inspired AI and improve computational models for neuroscience.
2. What computational and digital models best capture neuron-glia interactions for neuromorphic engineering and biologically plausible simulations?
This theme focuses on more detailed computational models that simulate the electrophysiological and signaling dynamics of neuron-astrocyte systems. It includes the development of digital implementations mimicking calcium signaling, gliotransmitter release, and synaptic modulation by astrocytes, aiming for realistic yet computationally efficient models suitable for neuromorphic hardware. These approaches bridge detailed biophysical neuroscience and engineering tools, offering new substrates for brain-inspired computation and potential hardware implementations of artificial neuron-glia networks.
3. How can modern machine learning and domain adaptation techniques enhance the inference and modeling of complex biological neural and neuron-glia systems?
Recent advances in machine learning enable the inference of neural parameters and connectivity from experimental data by bridging synthetic model-generated datasets and real biological data. Domain adaptation techniques address distribution mismatches between synthetic training data and biological recordings, improving model generalizability and parameter estimation quality. This research direction leverages deep learning, recurrent neural networks, and hybrid methods to build lower-complexity yet accurate representations of neural circuit dynamics, including neuron-glia interactions, thus advancing computational neuroscience modeling and experimental data analysis.