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Fabrizio Musacchio boosted
AlexCrimi
AlexCrimi
@AlexCrimi@mstdn.social  ·  activity timestamp 11 hours ago

🧠Our New preprint:
We propose a “neuro-bridge” framework linking #spiking neural networks with biophysical brain simulations for Alzheimer’s detection from #EEG.
📉 1/f slope as key biomarker (E/I balance)
🔁 ML predictions ↔ circuit mechanisms #NeuroAI
https://arxiv.org/abs/2602.07010

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Sorry, no caption provided by author
Sorry, no caption provided by author
arXiv.org

Learning Alzheimer's Disease Signatures by bridging EEG with Spiking Neural Networks and Biophysical Simulations

As the prevalence of Alzheimer's disease (AD) rises, improving mechanistic insight from non-invasive biomarkers is increasingly critical. Recent work suggests that circuit-level brain alterations manifest as changes in electroencephalography (EEG) spectral features detectable by machine learning. However, conventional deep learning approaches for EEG-based AD detection are computationally intensive and mechanistically opaque. Spiking neural networks (SNNs) offer a biologically plausible and energy-efficient alternative, yet their application to AD diagnosis remains largely unexplored. We propose a neuro-bridge framework that links data-driven learning with minimal, biophysically grounded simulations, enabling bidirectional interpretation between machine learning signatures and circuit-level mechanisms in AD. Using resting-state clinical EEG, we train an SNN classifier that achieves competitive performance (AUC = 0.839) and identifies the aperiodic 1/f slope as a key discriminative marker. The 1/f slope reflects excitation-inhibition balance. To interpret this mechanistically, we construct spiking network simulations in which inhibitory-to-excitatory synaptic ratios are systematically varied to emulate healthy, mild cognitive impairment, and AD-like states. Using both membrane potential-based and synaptic current-based EEG proxies, we reproduce empirical spectral slowing and altered alpha organization. Incorporating empirical functional connectivity priors into multi-subnetwork simulations further enhances spectral differentiation, demonstrating that large-scale network topology constrains EEG signatures more strongly than excitation-inhibition balance alone. Overall, this neuro-bridge approach connects SNN-based classification with interpretable circuit simulations, advancing mechanistic understanding of EEG biomarkers while enabling scalable, explainable AD detection.
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AlexCrimi
AlexCrimi
@AlexCrimi@mstdn.social  ·  activity timestamp 11 hours ago

🧠Our New preprint:
We propose a “neuro-bridge” framework linking #spiking neural networks with biophysical brain simulations for Alzheimer’s detection from #EEG.
📉 1/f slope as key biomarker (E/I balance)
🔁 ML predictions ↔ circuit mechanisms #NeuroAI
https://arxiv.org/abs/2602.07010

Sorry, no caption provided by author
Sorry, no caption provided by author
Sorry, no caption provided by author
arXiv.org

Learning Alzheimer's Disease Signatures by bridging EEG with Spiking Neural Networks and Biophysical Simulations

As the prevalence of Alzheimer's disease (AD) rises, improving mechanistic insight from non-invasive biomarkers is increasingly critical. Recent work suggests that circuit-level brain alterations manifest as changes in electroencephalography (EEG) spectral features detectable by machine learning. However, conventional deep learning approaches for EEG-based AD detection are computationally intensive and mechanistically opaque. Spiking neural networks (SNNs) offer a biologically plausible and energy-efficient alternative, yet their application to AD diagnosis remains largely unexplored. We propose a neuro-bridge framework that links data-driven learning with minimal, biophysically grounded simulations, enabling bidirectional interpretation between machine learning signatures and circuit-level mechanisms in AD. Using resting-state clinical EEG, we train an SNN classifier that achieves competitive performance (AUC = 0.839) and identifies the aperiodic 1/f slope as a key discriminative marker. The 1/f slope reflects excitation-inhibition balance. To interpret this mechanistically, we construct spiking network simulations in which inhibitory-to-excitatory synaptic ratios are systematically varied to emulate healthy, mild cognitive impairment, and AD-like states. Using both membrane potential-based and synaptic current-based EEG proxies, we reproduce empirical spectral slowing and altered alpha organization. Incorporating empirical functional connectivity priors into multi-subnetwork simulations further enhances spectral differentiation, demonstrating that large-scale network topology constrains EEG signatures more strongly than excitation-inhibition balance alone. Overall, this neuro-bridge approach connects SNN-based classification with interpretable circuit simulations, advancing mechanistic understanding of EEG biomarkers while enabling scalable, explainable AD detection.
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Fabrizio Musacchio
Fabrizio Musacchio
@FabMusacchio@mastodon.social  ·  activity timestamp last month

🧠 New paper by Ishida et al who show how #neurons in the #Drosophila central complex implement vector inversion via #calcium spikes.

A single #NeuronalPopulation can flip the sign of its encoded vector by switching biophysical #spiking modes, enabling coordinate transformations through #PopulationDynamics rather than circuit switching.

Cool as it shows that computation is not imposed by the circuit, but emerges from the neuron’s own dynamics.

🌍https://doi.org/10.1016/j.cell.2025.11.040

#Neuroscience #CompNeuro

Diagram showing how single neuron activity influences population activity, with vectors, signals, and neural pathways. Graphical abstract of the paper.
Diagram showing how single neuron activity influences population activity, with vectors, signals, and neural pathways. Graphical abstract of the paper.
Diagram showing how single neuron activity influences population activity, with vectors, signals, and neural pathways. Graphical abstract of the paper.

Neuronal calcium spikes enable vector inversion in the Drosophila brain

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Hacker News
Hacker News
@h4ckernews@mastodon.social  ·  activity timestamp 2 months ago

DRAM prices are spiking, but I don't trust the industry's why

https://www.xda-developers.com/dram-prices-spiking-dont-trust-industry-reasons/

#HackerNews #DRAMprices #Spiking #IndustryTrust #TechNews #Semiconductors

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