递归时间限制波尔兹曼机捕捉全脑活动中的神经装配动态。

IF 6.4 1区 生物学 Q1 BIOLOGY eLife Pub Date : 2024-11-05 DOI:10.7554/eLife.98489
Sebastian Quiroz Monnens, Casper Peters, Luuk Willem Hesselink, Kasper Smeets, Bernhard Englitz
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引用次数: 0

摘要

动物行为在随机探索和目标行动之间交替进行,而目标行动是由潜在的神经动力学产生的。在此之前,我们已经证明,构图受限玻尔兹曼机(cRBM)可以在神经水平上将幼体斑马鱼数据的全脑活动分解为少量(100-200)可解释神经活动随机性的集合体(van der Plas 等人,eLife,2023)。在这里,我们将这一表征扩展为随机-动态组合表征,利用递归时序 RBM(RTRBM)和基于 cRBM 估计的迁移学习来考虑这两个方面。我们通过模拟和实验数据证明,RTRBM 的功能优势体现在代表神经集合的隐藏单元的时间权重上。我们的结果表明,就泛化误差而言,时间扩展优于纯随机 cRBM,并能更准确地表示时间时刻。最后,我们证明了可以通过在不同时间分辨率下估计多个 RTRBM 来识别装配动态的原始时间尺度。综上所述,我们认为 RTRBM 是捕捉大规模数据集的随机和时间预测动态的重要工具。
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The recurrent temporal restricted Boltzmann machine captures neural assembly dynamics in whole-brain activity.

Animal behaviour alternates between stochastic exploration and goal-directed actions, which are generated by the underlying neural dynamics. Previously, we demonstrated that the compositional Restricted Boltzmann Machine (cRBM) can decompose whole-brain activity of larval zebrafish data at the neural level into a small number (∼100-200) of assemblies that can account for the stochasticity of the neural activity (van der Plas et al., eLife, 2023). Here, we advance this representation by extending to a combined stochastic-dynamical representation to account for both aspects using the recurrent temporal RBM (RTRBM) and transfer-learning based on the cRBM estimate. We demonstrate that the functional advantage of the RTRBM is captured in the temporal weights on the hidden units, representing neural assemblies, for both simulated and experimental data. Our results show that the temporal expansion outperforms the stochastic-only cRBM in terms of generalization error and achieves a more accurate representation of the moments in time. Lastly, we demonstrate that we can identify the original time-scale of assembly dynamics by estimating multiple RTRBMs at different temporal resolutions. Together, we propose that RTRBMs are a valuable tool for capturing the combined stochastic and time-predictive dynamics of large-scale data sets.

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来源期刊
eLife
eLife BIOLOGY-
CiteScore
12.90
自引率
3.90%
发文量
3122
审稿时长
17 weeks
期刊介绍: eLife is a distinguished, not-for-profit, peer-reviewed open access scientific journal that specializes in the fields of biomedical and life sciences. eLife is known for its selective publication process, which includes a variety of article types such as: Research Articles: Detailed reports of original research findings. Short Reports: Concise presentations of significant findings that do not warrant a full-length research article. Tools and Resources: Descriptions of new tools, technologies, or resources that facilitate scientific research. Research Advances: Brief reports on significant scientific advancements that have immediate implications for the field. Scientific Correspondence: Short communications that comment on or provide additional information related to published articles. Review Articles: Comprehensive overviews of a specific topic or field within the life sciences.
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