神经行为数据的输入驱动非线性动态建模。

ArXiv Pub Date : 2025-09-23
Parsa Vahidi, Omid G Sani, Maryam M Shanechi
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引用次数: 0

摘要

神经群表现出复杂的循环结构,驱动行为,同时不断地接收和整合来自感官刺激、上游区域和神经刺激的外部输入。然而,神经群体通常被建模为自主动力系统,很少考虑塑造群体活动和行为结果的外部输入的影响。在这里,我们介绍了BRAID,这是一个深度学习框架,它可以对非线性神经动力学的潜在行为进行建模,同时明确地结合任何测量的外部输入。我们的方法通过在输入驱动的递归神经网络中包含预测目标,将内在的递归神经群体动态从输入的影响中解脱出来。BRAID通过使用多阶段优化方案,进一步优先考虑与感兴趣的行为相关的内在动力学学习。我们用非线性仿真验证了BRAID,表明它可以准确地学习神经和行为模式之间共享的内在动力学。然后,我们将BRAID应用于运动任务期间记录的运动皮层活动,并证明我们的方法通过将测量的感觉刺激纳入模型,更准确地拟合神经行为数据,并且与各种基线方法相比,无论是否输入驱动,我们的方法都能改善神经行为数据的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BRAID: Input-Driven Nonlinear Dynamical Modeling of Neural-Behavioral Data.

Neural populations exhibit complex recurrent structures that drive behavior, while continuously receiving and integrating external inputs from sensory stimuli, upstream regions, and neurostimulation. However, neural populations are often modeled as autonomous dynamical systems, with little consideration given to the influence of external inputs that shape the population activity and behavioral outcomes. Here, we introduce BRAID, a deep learning framework that models nonlinear neural dynamics underlying behavior while explicitly incorporating any measured external inputs. Our method disentangles intrinsic recurrent neural population dynamics from the effects of inputs by including a forecasting objective within input-driven recurrent neural networks. BRAID further prioritizes the learning of intrinsic dynamics that are related to a behavior of interest by using a multi-stage optimization scheme. We validate BRAID with nonlinear simulations, showing that it can accurately learn the intrinsic dynamics shared between neural and behavioral modalities. We then apply BRAID to motor cortical activity recorded during a motor task and demonstrate that our method more accurately fits the neural-behavioral data by incorporating measured sensory stimuli into the model and improves the forecasting of neural-behavioral data compared with various baseline methods, whether input-driven or not.

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