Latent circuit inference from heterogeneous neural responses during cognitive tasks

IF 20 1区 医学 Q1 NEUROSCIENCES Nature neuroscience Pub Date : 2025-02-10 DOI:10.1038/s41593-025-01869-7
Christopher Langdon, Tatiana A. Engel
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Abstract

Higher cortical areas carry a wide range of sensory, cognitive and motor signals mixed in heterogeneous responses of single neurons tuned to multiple task variables. Dimensionality reduction methods that rely on correlations between neural activity and task variables leave unknown how heterogeneous responses arise from connectivity to drive behavior. We develop the latent circuit model, a dimensionality reduction approach in which task variables interact via low-dimensional recurrent connectivity to produce behavioral output. We apply the latent circuit inference to recurrent neural networks trained to perform a context-dependent decision-making task and find a suppression mechanism in which contextual representations inhibit irrelevant sensory responses. We validate this mechanism by confirming the behavioral effects of patterned connectivity perturbations predicted by the latent circuit model. We find similar suppression of irrelevant sensory responses in the prefrontal cortex of monkeys performing the same task. We show that incorporating causal interactions among task variables is critical for identifying behaviorally relevant computations from neural response data. The latent circuit model identifies low-dimensional mechanisms of task execution from heterogenous neural responses. This approach reveals a latent inhibitory mechanism for context-dependent decisions in neural network models and the prefrontal cortex.

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认知任务中异质神经反应的潜在电路推断
较高的皮质区域携带广泛的感觉、认知和运动信号,这些信号混合在单个神经元对多个任务变量的异质反应中。依赖于神经活动和任务变量之间的相关性的降维方法不知道如何从连接中产生异质反应来驱动行为。我们开发了潜在回路模型,这是一种降维方法,其中任务变量通过低维循环连接相互作用以产生行为输出。我们将潜在电路推理应用于训练用于执行上下文依赖决策任务的递归神经网络,并发现上下文表征抑制无关感觉反应的抑制机制。我们通过确认由潜在电路模型预测的模式连接扰动的行为效应来验证这一机制。我们发现,在执行相同任务的猴子的前额叶皮层中,也存在类似的对无关感觉反应的抑制。我们表明,结合任务变量之间的因果相互作用对于从神经反应数据中识别行为相关计算至关重要。
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来源期刊
Nature neuroscience
Nature neuroscience 医学-神经科学
CiteScore
38.60
自引率
1.20%
发文量
212
审稿时长
1 months
期刊介绍: Nature Neuroscience, a multidisciplinary journal, publishes papers of the utmost quality and significance across all realms of neuroscience. The editors welcome contributions spanning molecular, cellular, systems, and cognitive neuroscience, along with psychophysics, computational modeling, and nervous system disorders. While no area is off-limits, studies offering fundamental insights into nervous system function receive priority. The journal offers high visibility to both readers and authors, fostering interdisciplinary communication and accessibility to a broad audience. It maintains high standards of copy editing and production, rigorous peer review, rapid publication, and operates independently from academic societies and other vested interests. In addition to primary research, Nature Neuroscience features news and views, reviews, editorials, commentaries, perspectives, book reviews, and correspondence, aiming to serve as the voice of the global neuroscience community.
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