Motivation, Brain and Behavior (MBB) lab, Paris brain Institute (ICM), Sorbonne University, Inserm, CNRS, Pitie-Salpetriere Hospital.
Behav Neurosci. 2021 Apr;135(2):277-290. doi: 10.1037/bne0000464.
Many functions have been attributed to the orbitofrontal cortex (OFC)-some classical roles, such as signaling the value of action outcomes, being challenged by more recent ones, such as signaling the position of a trial within a task space. In this paper, we propose a unifying neural network architecture, whose function is to generate a value from a set of attributes attached to a particular object. Our model reverses the logic of perceptual choice models, by considering values as outputs of (and not inputs to) the neural network. In doing so, the model explains why univariate value signals have been observed in both likeability rating and economic choice tasks, while the features associated with a particular task trial can be decoded using multivariate analysis. Moreover, simulations show that a globally positive correlation with subjective value at the population level can coexist with a variety of correlation coefficients at the single-unit level, bridging typical observations made in human neuroimaging and monkey electrophysiology studies of OFC activity. To better explain binary choice, we equipped the neural network with recurrent feedback connections that enable simultaneous coding of values associated with currently attended and previously considered objects. Simulations of this augmented model show that virtual lesions produce systematically intransitive preferences, as observed in patients with damage to the OFC. Thus, our neural network model is sufficiently general and flexible to account for a core set of observations and make specific predictions about both OFC activity during value judgment and behavioral consequence of OFC damage. (PsycInfo Database Record (c) 2021 APA, all rights reserved).
许多功能都归因于眶额皮层 (OFC)-一些经典的作用,例如信号动作结果的价值,被最近的作用所挑战,例如信号任务空间内试验的位置。在本文中,我们提出了一种统一的神经网络架构,其功能是从一组附加到特定对象的属性生成一个值。我们的模型通过将值视为神经网络的输出(而不是输入)来反转感知选择模型的逻辑。这样,该模型解释了为什么在喜好评分和经济选择任务中都观察到了单变量价值信号,而与特定任务试验相关的特征可以使用多元分析进行解码。此外,模拟表明,在群体水平上与主观价值的总体正相关可以与单个单元水平上的各种相关系数共存,从而弥合了人类神经影像学和猴子脑电生理学研究中 OFC 活动的典型观察结果。为了更好地解释二项选择,我们为神经网络配备了递归反馈连接,使当前关注和之前考虑的对象相关联的价值能够同时编码。该增强模型的模拟表明,虚拟损伤会产生系统的不可传递偏好,正如 OFC 损伤患者所观察到的那样。因此,我们的神经网络模型足够通用和灵活,可以解释一组核心观察结果,并对价值判断期间 OFC 活动和 OFC 损伤的行为后果做出具体预测。(PsycInfo 数据库记录(c)2021 APA,保留所有权利)。