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AIが神経コードを解読:人間の言葉でサル視覚ニューロンの特性を自動記述
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ポイント
- サル視覚ニューロンの応答を自然言語で記述する手法を開発し、ニューロンの機能解明を試みた。
- この研究は、従来の数学モデルでは困難だった高次視覚野のニューロン特性を、言語を用いて解明する新しいアプローチである。
- 生成モデルとニューラルデジタルツインを組み合わせることで、ニューロンの応答を意味的に忠実な言語で記述し、その機能の解釈性を高めることに成功した。
Abstract
Understanding what individual neurons encode is a core question in neuroscience. In primary visual cortex (V1), mathematical models (e.g., Gabor functions) capture neural selectivity, but no comparable framework exists for higher areas. We show that natural language can fill this role: across macaque V1 and V4, the selectivity of most neurons is captured by concise, verifiable semantic descriptions. Using digital twins of V1 and V4, we develop a closed-loop framework that translates each neuron's high- and low-activating images into dense captions, generates a semantic hypothesis and synthesized images, and verifies the hypothesis in silico. Descriptions range from oriented edges and spatial frequency in V1 to conjunctions of form, color, and texture in V4. In V4, images generated from activating and suppressing hypotheses drove 96.1% of neurons above the 95th and 97.6% below the 5th percentile of natural-image responses, respectively (vs. ~10% for random images); V1 activation results matched V4, while V1 suppression was less describable in language. Representational similarity analysis reveals partial alignment between neural activity, vision embeddings, and language embeddings, with vision most aligned to neural activity; alignment lost in the text bottleneck is recovered when hypotheses are rendered back into images, showing that linguistic compression is lossy yet semantically faithful. Together, these results show that combining generative models with neural digital twins enables interpretable, testable descriptions of neural function at scale, toward agentic scientific discovery.
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