Brain and Vision Research Laboratory, Department of Biomedical Engineering, Boston University, Boston, MA, USA.
Exp Brain Res. 2012 Aug;221(2):177-89. doi: 10.1007/s00221-012-3159-8. Epub 2012 Jul 19.
The task of parceling perceived visual motion into self- and object motion components is critical to safe and accurate visually guided navigation. In this paper, we used functional magnetic resonance imaging to determine the cortical areas functionally active in this task and the pattern connectivity among them to investigate the cortical regions of interest and networks that allow subjects to detect object motion separately from induced self-motion. Subjects were presented with nine textured objects during simulated forward self-motion and were asked to identify the target object, which had an additional, independent motion component toward or away from the observer. Cortical activation was distributed among occipital, intra-parietal and fronto-parietal areas. We performed a network analysis of connectivity data derived from partial correlation and multivariate Granger causality analyses among functionally active areas. This revealed four coarsely separated network clusters: bilateral V1 and V2; visually responsive occipito-temporal areas, including bilateral LO, V3A, KO (V3B) and hMT; bilateral VIP, DIPSM and right precuneus; and a cluster of higher, primarily left hemispheric regions, including the central sulcus, post-, pre- and sub-central sulci, pre-central gyrus, and FEF. We suggest that the visually responsive networks are involved in forming the representation of the visual stimulus, while the higher, left hemisphere cluster is involved in mediating the interpretation of the stimulus for action. Our main focus was on the relationships of activations during our task among the visually responsive areas. To determine the properties of the mechanism corresponding to the visual processing networks, we compared subjects' psychophysical performance to a model of object motion detection based solely on relative motion among objects and found that it was inconsistent with observer performance. Our results support the use of scene context (e.g., eccentricity, depth) in the detection of object motion. We suggest that the cortical activation and visually responsive networks provide a potential substrate for this computation.
将感知到的视觉运动分割为自身运动和物体运动成分的任务对于安全准确的视觉引导导航至关重要。在本文中,我们使用功能磁共振成像来确定在这项任务中活跃的皮质区域以及它们之间的模式连接,以研究允许受试者分别检测物体运动和诱导自身运动的感兴趣的皮质区域和网络。在模拟的向前自身运动期间,向受试者呈现九个纹理物体,并要求他们识别目标物体,该物体具有朝向或远离观察者的额外独立运动成分。皮质激活分布在枕叶、顶内和额顶区域之间。我们对来自功能活跃区域的部分相关和多元 Granger 因果分析的连接数据进行了网络分析。这揭示了四个大致分离的网络集群:双侧 V1 和 V2;视觉反应性枕颞区域,包括双侧 LO、V3A、KO(V3B)和 hMT;双侧 VIP、DIPSM 和右侧楔前叶;以及一个主要位于左侧半球的较高区域集群,包括中央沟、后、前和中央下沟、中央前回和 FEF。我们认为,视觉反应网络参与形成视觉刺激的表示,而较高的左侧半球集群则参与刺激的解释以进行动作。我们的主要重点是任务期间视觉反应区域之间的激活关系。为了确定与视觉处理网络相对应的机制的特性,我们将受试者的心理物理性能与仅基于物体之间相对运动的物体运动检测模型进行了比较,发现它与观察者的性能不一致。我们的结果支持在物体运动检测中使用场景上下文(例如,离轴、深度)。我们认为皮质激活和视觉反应网络为这种计算提供了潜在的基础。