Discovering Mechanistic Models of Neural Activity: System Identification in an in Silico Zebrafish
AI 摘要
论文利用虚拟斑马鱼环境,结合LLM进行神经活动机制模型的自动发现与验证。
主要贡献
- 建立了透明的神经活动ground truth仿真环境
- 证明了LLM驱动的树搜索能发现优于传统基线的预测模型
- 结构先验对于模型泛化和机制模型恢复至关重要
方法论
使用虚拟斑马鱼神经肌肉仿真作为测试平台,利用LLM驱动的树搜索自动发现预测模型,并分析结构先验的影响。
原文摘要
Constructing mechanistic models of neural circuits is a fundamental goal of neuroscience, yet verifying such models is limited by the lack of ground truth. To rigorously test model discovery, we establish an in silico testbed using neuromechanical simulations of a larval zebrafish as a transparent ground truth. We find that LLM-based tree search autonomously discovers predictive models that significantly outperform established forecasting baselines. Conditioning on sensory drive is necessary but not sufficient for faithful system identification, as models exploit statistical shortcuts. Structural priors prove essential for enabling robust out-of-distribution generalization and recovery of interpretable mechanistic models. Our insights provide guidance for modeling real-world neural recordings and offer a broader template for AI-driven scientific discovery.