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Structure-Preserving Correction Learning for Sparse Bayesian Inference in Brain Source Imaging

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arXiv CS 2d ago

Dual-channel whole-brain imaging reveals distinct dopamine and calcium dynamics in walking Drosophila

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bioRxiv 6d ago

Containerizing BIDSme : A Reproducible Tool for BIDS Conversion

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A prognostic human brain network for diffuse midline glioma

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Functional MRI Time Series Generation via Wavelet-Based Image Transform and Spectral Flow Matching for Brain Disorder Identification

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How climate shapes the meanings of words across languages

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Phys.org 1d ago

Rectified flow-based prediction of post-treatment brain MRI from pre-radiotherapy priors for patients with glioma

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FlowLet: Conditional 3D Brain MRI Synthesis using Wavelet Flow Matching

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A thalamus–brainstem attractor network drives history-biased decisions

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Nature 22h ago

A 1000-hour EEG-EMG-audio dataset of Japanese speech production

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