Martin Elizabeth, Chowdury Asadur, Kopchick John, Thomas Patricia, Khatib Dalal, Rajan Usha, Zajac-Benitez Caroline, Haddad Luay, Amirsadri Alireza, Robison Alfred J, Thakkar Katherine N, Stanley Jeffrey A, Diwadkar Vaibhav A
Department of Psychiatry & Behavioral Neurosciences, Wayne State University School of Medicine, Detroit, MI, United States.
Department of Psychiatry, University of Texas Austin, Austin, TX, United States.
Front Psychiatry. 2024 Sep 3;15:1337882. doi: 10.3389/fpsyt.2024.1337882. eCollection 2024.
Schizophrenia is characterized by a loss of network features between cognition and reward sub-circuits (notably involving the mesolimbic system), and this loss may explain deficits in learning and cognition. Learning in schizophrenia has typically been studied with tasks that include reward related contingencies, but recent theoretical models have argued that a loss of network features should be seen even when learning without reward. We tested this model using a learning paradigm that required participants to learn without reward or feedback. We used a novel method for capturing higher order network features, to demonstrate that the mesolimbic system is heavily implicated in the loss of network features in schizophrenia, even when learning without reward.
fMRI data (Siemens Verio 3T) were acquired in a group of schizophrenia patients and controls (n=78; 46 SCZ, 18 ≤ Age ≤ 50) while participants engaged in associative learning without reward-related contingencies. The task was divided into task-active conditions for encoding (of associations) and cued-retrieval (where the cue was to be used to retrieve the associated memoranda). No feedback was provided during retrieval. From the fMRI time series data, network features were defined as follows: First, for each condition of the task, we estimated 2 order undirected functional connectivity for each participant (uFC, based on zero lag correlations between all pairs of regions). These conventional 2 order features represent the task/condition evoked synchronization of activity between pairs of brain regions. Next, in each of the patient and control groups, the statistical relationship between all possible pairs of 2 order features were computed. These higher order features represent the consistency between all possible pairs of 2 order features in that group and embed within them the contributions of individual regions to such group structure.
From the identified inter-group differences (SCZ ≠ HC) in higher order features, we quantified the respective contributions of individual brain regions. Two principal effects emerged: 1) SCZ were characterized by a massive loss of higher order features during multiple task conditions (encoding and retrieval of associations). 2) Nodes in the mesolimbic system were over-represented in the loss of higher order features in SCZ, and notably so during retrieval.
Our analytical goals were linked to a recent circuit-based integrative model which argued that synergy between learning and reward circuits is lost in schizophrenia. The model's notable prediction was that such a loss would be observed even when patients learned without reward. Our results provide substantial support for these predictions where we observed a loss of network features between the brain's sub-circuits for a) learning (including the hippocampus and prefrontal cortex) and b) reward processing (specifically constituents of the mesolimbic system that included the ventral tegmental area and the nucleus accumbens. Our findings motivate a renewed appraisal of the relationship between reward and cognition in schizophrenia and we discuss their relevance for putative behavioral interventions.
精神分裂症的特征是认知与奖赏子回路(尤其涉及中脑边缘系统)之间的网络特征丧失,这种丧失可能解释学习和认知方面的缺陷。精神分裂症患者的学习通常通过包含奖赏相关意外情况的任务进行研究,但最近的理论模型认为,即使在无奖赏学习时也应能观察到网络特征的丧失。我们使用一种学习范式对该模型进行了测试,该范式要求参与者在无奖赏或反馈的情况下进行学习。我们采用了一种新颖的方法来捕捉高阶网络特征,以证明即使在无奖赏学习时,中脑边缘系统在精神分裂症网络特征丧失中也起着重要作用。
在一组精神分裂症患者和对照组(n = 78;46例精神分裂症患者,年龄在18至50岁之间)参与无奖赏相关意外情况的联想学习时,采集功能磁共振成像(fMRI)数据(西门子Verio 3T)。该任务分为用于编码(联想)的任务激活条件和线索检索(其中线索用于检索相关记忆)。检索过程中不提供反馈。从fMRI时间序列数据中,网络特征定义如下:首先,对于任务的每个条件,我们为每个参与者估计二阶无向功能连接性(uFC,基于所有区域对之间的零滞后相关性)。这些传统的二阶特征代表了任务/条件诱发的脑区对之间活动的同步性。接下来,在患者组和对照组中,计算所有可能的二阶特征对之间的统计关系。这些高阶特征代表了该组中所有可能的二阶特征对之间的一致性,并在其中嵌入了各个区域对这种组结构的贡献。
从高阶特征中识别出的组间差异(精神分裂症患者组≠健康对照组),我们量化了各个脑区的相应贡献。出现了两个主要效应:1)精神分裂症患者在多种任务条件下(联想的编码和检索)表现出高阶特征的大量丧失。2)中脑边缘系统中的节点在精神分裂症患者高阶特征丧失中占比过高,尤其是在检索过程中。
我们的分析目标与最近基于回路的综合模型相关,该模型认为精神分裂症患者学习和奖赏回路之间的协同作用丧失。该模型的显著预测是,即使患者在无奖赏情况下学习,也会观察到这种丧失。我们的结果为这些预测提供了大量支持,我们观察到大脑子回路之间网络特征的丧失,这些子回路涉及:a)学习(包括海马体和前额叶皮质)和b)奖赏处理(特别是中脑边缘系统的组成部分,包括腹侧被盖区和伏隔核)。我们的发现促使对精神分裂症中奖赏与认知之间的关系进行重新评估,我们讨论了它们与假定行为干预的相关性。