Predictive learning rules generate a cortical-like replay of probabilistic sensory experiences.

IF 6.4 1区 生物学 Q1 BIOLOGY
eLife Pub Date : 2025-06-16 DOI:10.7554/eLife.92712
Toshitake Asabuki, Tomoki Fukai
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引用次数: 0

Abstract

The brain is thought to construct an optimal internal model representing the probabilistic structure of the environment accurately. Evidence suggests that spontaneous brain activity gives such a model by cycling through activity patterns evoked by previous sensory experiences with the experienced probabilities. The brain's spontaneous activity emerges from internally driven neural population dynamics. However, how cortical neural networks encode internal models into spontaneous activity is poorly understood. Recent computational and experimental studies suggest that a cortical neuron can implement complex computations, including predictive responses, through soma-dendrite interactions. Here, we show that a recurrent network of spiking neurons subject to the same predictive learning principle provides a novel mechanism to learn the spontaneous replay of probabilistic sensory experiences. In this network, the learning rules minimize probability mismatches between stimulus-evoked and internally driven activities in all excitatory and inhibitory neurons. This learning paradigm generates stimulus-specific cell assemblies that internally remember their activation probabilities using within-assembly recurrent connections. Our model contrasts previous models that encode the statistical structure of sensory experiences into Markovian transition patterns among cell assemblies. We demonstrate that the spontaneous activity of our model well replicates the behavioral biases of monkeys performing perceptual decision making. Our results suggest that interactions between intracellular processes and recurrent network dynamics are more crucial for learning cognitive behaviors than previously thought.

预测性学习规则产生了一种类似于大脑皮层的概率感官体验回放。
大脑被认为构建了一个最优的内部模型,准确地代表了环境的概率结构。有证据表明,自发的大脑活动提供了这样一个模型,即在先前的感官体验与经验概率之间循环唤起的活动模式。大脑的自发活动源于内部驱动的神经种群动态。然而,皮层神经网络如何将内部模型编码为自发活动尚不清楚。最近的计算和实验研究表明,皮质神经元可以通过体细胞-树突相互作用实现复杂的计算,包括预测反应。在这里,我们展示了遵循相同预测学习原理的脉冲神经元循环网络提供了一种新的机制来学习概率感觉经验的自发重播。在这个网络中,学习规则最小化了所有兴奋性和抑制性神经元中刺激诱发和内部驱动活动之间的概率不匹配。这种学习模式产生刺激特异性细胞集合,这些细胞集合使用集合内循环连接在内部记住它们的激活概率。我们的模型对比了以前的模型,这些模型将感官体验的统计结构编码为细胞集合之间的马尔可夫过渡模式。我们证明,我们模型的自发活动很好地复制了猴子进行感性决策的行为偏见。我们的研究结果表明,细胞内过程和循环网络动态之间的相互作用对于学习认知行为比以前认为的更为重要。
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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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