...
首页> 外文期刊>Journal of Cognitive Neuroscience >Connectome-based Models Predict Separable Components of Attention in Novel Individuals
【24h】

Connectome-based Models Predict Separable Components of Attention in Novel Individuals

机译:基于连接组的模型可预测新颖个体中注意力的独立组成部分

获取原文
获取原文并翻译 | 示例

摘要

Although we typically talk about attention as a single process, it comprises multiple independent components. But what are these components, and how are they represented in the functional organization of the brain? To investigate whether long-studied components of attention are reflected in the brain's intrinsic functional organization, here we apply connectome-based predictive modeling (CPM) to predict the components of Posner and Petersen's influential model of attention: alerting (preparing and maintaining alertness and vigilance), orienting (directing attention to a stimulus), and executive control (detecting and resolving cognitive conflict) [Posner, M. I., & Petersen, S. E. The attention system of the human brain. Annual Review of Neuroscience, 13, 25-42, 1990]. Participants performed the Attention Network Task (ANT), which measures these three factors, and rested during fMRI scanning. CPMs tested with leave-one-subject-out cross-validation successfully predicted novel individual's overall ANT accuracy, RT variability, and executive control scores from functional connectivity observed during ANT performance. CPMs also generalized to predict participants' alerting scores from their resting-state functional connectivity alone, demonstrating that connectivity patterns observed in the absence of an explicit task contain a signature of the ability to prepare for an upcoming stimulus. Suggesting that significant variance in ANT performance is also explained by an overall sustained attention factor, the sustained attention CPM, a model defined in prior work to predict sustained attentional abilities, predicted accuracy, RT variability, and executive control from task-based data and predicted RT variability from resting-state data. Our results suggest that, whereas executive control may be closely related to sustained attention, the infrastructure that supports alerting is distinct and can be measured at rest. In the future, CPM may be applied to elucidate additional independent components of attention and relationships between the functional brain networks that predict them.
机译:尽管我们通常将注意力作为单个过程进行讨论,但它包含多个独立的组件。但是这些成分是什么?它们在大脑的功能组织中如何表示?为了研究长期研究的注意力成分是否在大脑的内在功能组织中得到反映,在这里我们应用基于连接组的预测模型(CPM)来预测Posner和Petersen的影响力注意力模型的成分:警惕(准备并保持警觉性和警惕性) ),定向(将注意力转移到刺激上)和执行控制(检测和解决认知冲突)[Posner,MI,&Petersen,SE]人脑的注意力系统。神经科学年度评论,1990年13月25日至42日]。参与者执行了注意力网络任务(ANT),该任务测量了这三个因素,并在功能磁共振成像扫描期间休息。通过留一撇子交叉验证测试的CPM成功地预测了新人的整体ANT准确性,RT变异性以及在ANT表现期间观察到的功能连通性的执行控制得分。 CPM还可以通过单独的休息状态功能连接来预测参与者的警报评分,这表明在没有明确任务的情况下观察到的连接模式包含了为即将到来的刺激做准备的能力的标志。提示ANT表现的显着差异还可以通过整体持续关注因素,持续关注CPM,先前工作中定义的模型来解释,该模型用于根据任务数据和预测来预测持续关注能力,预测准确性,RT变异性和执行控制静止状态数据的RT变异性。我们的结果表明,尽管执行控制与持续关注密切相关,但支持警报的基础结构却截然不同,可以在静止时进行测量。将来,CPM可能会用于阐明注意力的其他独立组成部分以及预测它们的功能性大脑网络之间的关系。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号