Neuroscientist Dr. Yangfan Peng leads new Emmy Noether research group
How do neighboring neurons in the cerebral cortex communicate with one another during movement? This is the question that Dr. Yangfan Peng is now investigating in his Emmy Noether junior research group at Charité – Universitätsmedizin Berlin. His goal is to establish fundamental structure–function principles of neuronal networks in order to deepen our understanding of motor control. The German Research Foundation (DFG) is initially funding the project for three years with € 1.25 million and, following a successful interim evaluation, has indicated the possibility of an additional three-year funding period of approximately 945,000 €.

Dr. Yangfan Peng © Charité
Like a city’s road network
“The layout of streets directs traffic. Similarly, connections between neighboring neurons determine how signals flow through the brain,” explains Yangfan Peng. Crucially, it is not only which cells are involved, but how they communicate with one another. “We aim to understand how local neuronal networks are organized and how the collective activity of many neurons emerges to control motor behavior,” says the neuroscientist, who is now conducting research with his team at the Institute of Cell and Neurobiology at Charité.
Advanced methods to decode neural networks
To address these questions, Yangfan Peng combines different state-of-the-art methodologies. Synaptic connectivity between neurons will be examined directly in brain tissue using the so-called multipatch technique. In this approach, multiple glass pipettes simultaneously record activity and synaptic connectivity from up to ten neurons. The team will analyze brain tissue from mice, as well as valuable human brain tissue obtained during neurosurgical procedures that would otherwise be discarded.
In addition, the researchers will use high-resolution electrodes in animal models to record the activity of hundreds of neurons simultaneously. This makes it possible to link specific patterns of brain activity to distinct motor behaviors. Using artificial intelligence, the team aims to predict behavior based on neuronal activity patterns.
From network principles to clinical applications
In the long term, this research could extend far beyond basic science. Many neurological disorders arise from disrupted communication within neuronal networks. A better understanding of these mechanisms is therefore essential for developing new diagnostic and therapeutic approaches. Moreover, improved measurement of brain activity could contribute to the advancement of brain–computer interfaces, designed to restore lost functions such as movement or communication.
Translated into English by Elena Reiriz Martínez/BCOS





