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Novel framework allows for automated tuning of large-scale neuronal models

Simon Osuji by Simon Osuji
September 17, 2024
in Artificial Intelligence
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Novel framework allows for automated tuning of large-scale neuronal models
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Automated tuning of large-scale neuronal models
Framework for automated customization of a spiking network model to neuronal recordings. a, A SNN has a complicated dependency between its parameters and spiking output. For example, different parameter sets correspond to each of four previously identified activity regimes of a CBN: asynchronous irregular, synchronous regular, synchronous irregular and asynchronous regular. In this work, the SNN has eight parameters, including those that govern the connection strength between neurons as well as the timescale of synaptic decay (Supplementary Table 1). b, Our customization framework matches activity statistics of spike trains produced by the network model to those of neuronal recordings. It uses a guided searching algorithm to iteratively update the model parameters. The activity statistics are defined by the user and can include single-neuron, pairwise and population activity statistics. Credit: Nature Computational Science (2024). DOI: 10.1038/s43588-024-00688-3

Developing large-scale neural network models that mimic the brain’s activity is a major goal in the field of computational neuroscience. Existing models that accurately reproduce aspects of brain activity are notoriously complex, and fine-tuning model parameters often requires significant time, intuition, and expertise.

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New published research from an interdisciplinary group of researchers primarily based at Carnegie Mellon University and the University of Pittsburgh presents a novel solution to mitigate some of these challenges. The machine learning-driven framework, Spiking Network Optimization using Population Statistics (SNOPS), can quickly and accurately customize models that reproduce activity to mimic what’s observed in the brain.

The work is published in the journal Nature Computational Science.

“One way for neuroscientists to understand how the brain works is by constructing mathematical models of the brain to reproduce its activity,” explained Shenghao Wu, a former graduate student in neural computation and machine learning at Carnegie Mellon.

“To date, building such models has been a manual process and usually requires a lot of energy and domain expertise. Our SNOPS method is not only faster and more powerful, but also, it finds a wider range of model configurations that are consistent with the brain’s activity, all automatically.”






Carnegie Mellon Biomedical Engineering’s Matt Smith discusses his group’s research of human brains and behavior. Breakthroughs in this area could lead to treating brain malfunctions and enhancing cognitive abilities for better attention and performance. Credit: Carnegie Mellon College of Engineering

Chengcheng Huang, an assistant professor of neuroscience and mathematics at the University of Pittsburgh whose background is in circuit modeling, elaborated, “Before SNOPS, when a model got complicated and we wanted to explain a more complex phenomenon, it was difficult to find the right parameters to analyze the model’s full behavior. SNOPS is a useful tool to accelerate our progress, and ultimately, develop more realistic models of the brain.”

The group’s work to develop SNOPS uniquely combined the efforts of experimentalists, data-driven computational scientists, and modelers.

“We have very different backgrounds and ways of approaching things, and that’s in the spirit of the neuroscience we do at Carnegie Mellon,” said Matt Smith, professor of biomedical engineering and Neuroscience Institute and co-director of the Center for the Neural Basis of Cognition. “I’m excited about the way Shenghao combined all of our skills to build SNOPS, and also, how we can apply it to better understand how different parts of the brain work together.”






Credit: Carnegie Mellon College of Engineering

In the days ahead, SNOPS, which is now available via open-source sharing, can guide the development of network models with the aim of enabling deeper insight into how networks of neurons give rise to brain function.

“We started with network models that have been widely used over decades. There were certain aspects of the brain’s activity that we could not get the models to reproduce, no matter how we tuned it,” added Byron Yu, professor of biomedical engineering and electrical and computer engineering at Carnegie Mellon University. “With SNOPS, we can quickly find a configuration that captures all the needed aspects of the brain’s activity. It gives us a lot of hope for putting together the big picture.”

More information:
Shenghao Wu et al, Automated customization of large-scale spiking network models to neuronal population activity, Nature Computational Science (2024). DOI: 10.1038/s43588-024-00688-3

Provided by
Carnegie Mellon University, Department of Biomedical Engineering

Citation:
Novel framework allows for automated tuning of large-scale neuronal models (2024, September 16)
retrieved 16 September 2024
from https://techxplore.com/news/2024-09-framework-automated-tuning-large-scale.html

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.





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