NeuroMambaLLM: Dynamic Graph Learning of fMRI Functional Connectivity in Autistic Brains Using Mamba and Language Model Reasoning
Yasaman Torabi, Parsa Razmara, Hamed Ajorlou, Bardia Baraeinejad

TL;DR
NeuroMambaLLM is an innovative framework that combines dynamic graph learning of fMRI data with language models to improve autism diagnosis and generate textual reports.
Contribution
It introduces a novel end-to-end system integrating adaptive brain connectivity modeling with LLM reasoning for neurodevelopmental disorder analysis.
Findings
Dynamic connectivity graphs improve autism classification accuracy.
LLMs can generate meaningful textual reports from brain connectivity data.
Adaptive graph learning suppresses motion artifacts in fMRI analysis.
Abstract
Large Language Models (LLMs) have demonstrated strong semantic reasoning across multimodal domains. However, their integration with graph-based models of brain connectivity remains limited. In addition, most existing fMRI analysis methods rely on static Functional Connectivity (FC) representations, which obscure transient neural dynamics critical for neurodevelopmental disorders such as autism. Recent state-space approaches, including Mamba, model temporal structure efficiently, but are typically used as standalone feature extractors without explicit high-level reasoning. We propose NeuroMambaLLM, an end-to-end framework that integrates dynamic latent graph learning and selective state-space temporal modelling with LLMs. The proposed method learns the functional connectivity dynamically from raw Blood-Oxygen-Level-Dependent (BOLD) time series, replacing fixed correlation graphs with…
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