arXivDaily arXiv每日学术速递 周一至周五更新

科学与医疗

脑机接口 / BCI

脑机接口、EEG、神经信号解码、神经假体和脑控交互。

今日/当前日期收录 1 信号源:q-bio.NC, eess.SP, cs.LG, cs.HC, cs.RO
2511.14555 2026-06-18 q-bio.NC cs.AI 版本更新 专题 90

DecNefSimulator: A Modular, Interpretable Framework for Decoded Neurofeedback Simulation Using Generative Models

DecNefSimulator:一个用于解码神经反馈模拟的模块化、可解释框架

Alexander Olza, Roberto Santana, David Soto

发表机构 * Intelligent Systems Group, University of the Basque Country (UPV/EHU)(巴斯克国家大学智能系统组) Consciousness Group, Basque Center on Cognition, Brain and Language (BCBL)(巴斯克认知、大脑与语言中心意识组) Ikerbasque, Basque Foundation for Science(巴斯克科学基金会)

专题命中 神经信号处理 :解码神经反馈模拟框架,直接相关脑机接口

AI总结 提出DecNefSimulator,一个模块化可解释的模拟框架,将解码神经反馈形式化为机器学习问题,通过潜变量生成模型模拟参与者,直接观察内部状态并评估协议设计对学习的影响,可复现经验现象、识别失败条件并指导协议设计。

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AI中文摘要

解码神经反馈(DecNef)是一种有前景的非侵入性脑调控方法,在神经医学和认知神经科学中具有广泛应用。然而,DecNef研究的进展仍受限于受试者依赖的学习变异性、依赖间接测量来量化进展,以及实验的高成本和时间消耗。我们提出DecNefSimulator,一个模块化且可解释的模拟框架,将DecNef形式化为一个机器学习问题。除了提供虚拟实验室,DecNefSimulator使研究人员能够建模、分析和理解神经反馈动态。通过使用潜变量生成模型作为模拟参与者,DecNefSimulator允许直接观察内部认知状态,并系统评估不同协议设计和受试者特征如何影响学习。我们展示了这种方法如何(i)复现DecNef学习的经验现象,(ii)识别DecNef反馈未能诱导学习的条件,以及(iii)在人体实施之前,在计算机中指导设计更稳健可靠的DecNef协议。总之,DecNefSimulator连接了计算建模和认知神经科学,为方法创新、稳健协议设计以及最终更深入地理解基于DecNef的脑调控提供了原则性基础。

英文摘要

Decoded Neurofeedback (DecNef) is a promising non-invasive approach to brain modulation with wide-ranging applications in neuromedicine and cognitive neuroscience. However, progress in DecNef research remains constrained by subject-dependent learning variability, reliance on indirect measures to quantify progress, and the high cost and time demands of experimentation. We present DecNefSimulator, a modular and interpretable simulation framework that formalizes DecNef as a machine learning problem. Beyond providing a virtual laboratory, DecNefSimulator enables researchers to model, analyze and understand neurofeedback dynamics. Using latent variable generative models as simulated participants, DecNefSimulator allows direct observation of internal cognitive states and systematic evaluation of how different protocol designs and subject characteristics influence learning. We demonstrate how this approach can (i) reproduce empirical phenomena of DecNef learning, (ii) identify conditions under which DecNef feedback fails to induce learning, and (iii) guide the design of more robust and reliable DecNef protocols in silico before human implementation. In summary, DecNefSimulator bridges computational modeling and cognitive neuroscience, offering a principled foundation for methodological innovation, robust protocol design, and ultimately, a deeper understanding of DecNef-based brain modulation.