前脑岛参与识别判断的特征和上下文水平的预测编码过程。

IF 4.4 2区 医学 Q1 NEUROSCIENCES
Cristiano Costa, Cristina Scarpazza, Nicola Filippini
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引用次数: 0

摘要

预测编码机制促进检测和感知识别,从而影响识别判断,并广泛影响感知决策。前脑岛(AI)已被证明参与做出关于歧视和识别的决定,以及协调与基于奖励的学习相关的大脑回路。然而,在识别和决策的背景下,针对这一领域并基于正式的逐个试验预测编码计算量的实验研究很少。本研究超越了以往的研究,通过利用Zaragoza-Jimenez等人(2023)开放的fMRI数据集(17名女性,10名男性参与者)和计算建模,提供了人工智能在识别相关决策中作用的预测编码计算账户,其特征是独立于视图的熟悉性学习和上下文学习的结合。利用基于模型的fMRI,我们发现,在两选项强制选择身份识别任务的背景下,人工智能参与特征级(即与视图无关的熟悉度)更新和错误信号处理,以及上下文级熟悉度更新以达到识别判断。我们的研究结果强调了人工智能的一个重要功能属性是更新给定刺激的熟悉程度,同时也适应与任务相关的上下文信息。最终,这些期望与通过相互关联的反馈和前馈过程输入的视觉信号相结合,促进识别判断,从而指导感知决策。尽管前岛(AI)在显著性网络和错误监测网络中发挥着著名的作用,但关注这一领域并基于正式的逐个试验预测编码计算量的研究很少。本研究提供了人工智能参与识别相关决策的正式预测编码计算帐户。目前的结果表明,人工智能活动反映了它参与编码和更新代理对环境中统计依赖关系的信念强度,从而指导感知决策。这强调了人工智能在整合感官信息和调解识别相关决策过程中的关键作用。总的来说,研究结果强调了人工智能在更新刺激熟悉程度和处理上下文信息方面的功能,最终促进了识别判断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Anterior Insula Engages in Feature- and Context-Level Predictive Coding Processes for Recognition Judgments.

Predictive coding mechanisms facilitate detection and perceptual recognition, thereby influencing recognition judgements, and, broadly, perceptual decision-making. The anterior insula (AI) has been shown to be involved in reaching a decision about discrimination and recognition, as well as to coordinate brain circuits related to reward-based learning. Yet, experimental studies in the context of recognition and decision-making, targeting this area and based on formal trial-by-trial predictive coding computational quantities, are sparse. The present study goes beyond previous investigations and provides a predictive coding computational account of the role of the AI in recognition-related decision-making, by leveraging Zaragoza-Jimenez et al. (2023) open fMRI dataset (17 female, 10 male participants) and computational modeling, characterized by a combination of view-independent familiarity learning and contextual learning. Using model-based fMRI, we show that, in the context a two-option forced-choice identity recognition task, the AI engages in feature-level (i.e., view-independent familiarity) updating and error signaling processes and context-level familiarity updating to reach a recognition judgment. Our findings highlight that an important functional property of the AI is to update the level of familiarity of a given stimulus while also adapting to task-relevant, contextual information. Ultimately, these expectations, combined with input visual signals through reciprocally interconnected feedback and feedforward processes, facilitate recognition judgments, thereby guiding perceptual decision-making.

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来源期刊
Journal of Neuroscience
Journal of Neuroscience 医学-神经科学
CiteScore
9.30
自引率
3.80%
发文量
1164
审稿时长
12 months
期刊介绍: JNeurosci (ISSN 0270-6474) is an official journal of the Society for Neuroscience. It is published weekly by the Society, fifty weeks a year, one volume a year. JNeurosci publishes papers on a broad range of topics of general interest to those working on the nervous system. Authors now have an Open Choice option for their published articles
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