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Distinct contributions of lateral orbito-frontal cortex, striatum, and fronto-parietal network regions for rule encoding and control of memory-based implementation during instructed reversal learning

机译:横向玻璃状额度皮层,纹状体和前景网络区域的不同贡献,用于指示逆转学习期间基于内存的实现的规则编码和控制

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摘要

A key element of behavioral flexibility is to quickly learn to modify or reverse previously acquired stimulus-response associations. Such reversal learning (RL) can either be driven by feedback or by explicit instruction, informing either retrospectively or prospectively about the changed response requirements. Neuroimaging studies have thus far exclusively focused either on feedback-driven RL or on instructed initial learning of novel rules. The present study examined the neural basis of instructed RL as compared to instructed initial learning, separately assessing reversal-related instruction-based encoding processes and reversal-related control processes required for implementing reversed rules under competition from the initially learned rules. We found that instructed RL is partly supported by similar regions as feedback-driven RL, including lateral orbitofrontal cortex (lOFC) and anterior dorsal caudate. Encoding-related activation in both regions determined resilience against response competition during subsequent memory-based reversal implementation. Different from feedback-driven RL, instruction-based RL relied heavily on the generic fronto-parietal cognitive control network - not for encoding but for reversal-related control processes during memory-based implementation. These findings are consistent with a model of partly decoupled, yet interacting, systems of (i) symbolic rule representations that are instantaneously updated upon instruction and (ii) pragmatic representations of reward-associated S-R links mediating the enduring competition from initially learned rules. (C) 2015 Elsevier Inc. All rights reserved.
机译:行为灵活性的关键元素是快速学习修改或反转先前获取的刺激响应关联。这种逆转学习(RL)可以通过反馈或通过显式指令来驱动,追溯或预期通知改变的响应要求。迄今为止,神经影像学研究迄今为止,无论是在反馈驱动的RL还是关于新颖规则的指示初步学习。与指示初始学习相比,本研究检测了指示RL的神经基础,分别评估了从最初学习规则的竞争下实施了逆转规则所需的逆转相关的指示编码过程和逆转相关的控制流程。我们发现,指示R1由类似地区作为反馈驱动的RL部分地支持,包括横向摩尔卵体皮质(LOFC)和前背部尾部。在两个区域中的编码相关激活确定了在随后基于内存的逆转实施过程中反应响应竞争的恢复力。与反馈驱动的RL不同,基于指令的RL在很大程度上依赖于通用的前景认知控制网络 - 不用于编码,而是在基于内存的实现中进行反转相关的控制过程。这些发现与部分解耦但交互的模型一致,(i)符号规则表示的模型,其在指令和(ii)从最初学习的规则中调解持久竞争的奖励相关的S-R链路的语用表示。 (c)2015 Elsevier Inc.保留所有权利。

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