Understanding the brain with AI-driven explanations and experiments
Researchers have developed Generative Causal Testing (GCT), a framework that translates uninterpretable LLM-based brain-prediction models into concise, testable verbal hypotheses about cortical function. This method distills model parameters into short phrases describing what specific brain regions respond to, such as "food preparation," and then verifies these explanations through targeted fMRI experiments.