Researchers have developed NeuroAgent, an LLM-driven framework designed to automate complex preprocessing and analysis for multimodal neuroimaging data. This system utilizes a hierarchical multi-agent architecture to generate, execute, and validate code for various imaging types like sMRI, fMRI, dMRI, and PET. Evaluations on a large dataset demonstrated NeuroAgent's capability to significantly reduce manual effort and enable end-to-end automated pipelines, achieving high accuracy in intent parsing and preprocessing correctness, with the strongest backend reaching 84.8% correctness. AI
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IMPACT Automates complex neuroimaging analysis, potentially accelerating research and disease classification.
RANK_REASON This is a research paper detailing a new framework for neuroimaging analysis.