Department of Neurology, University Medical Center A.ö.R. Magdeburg, Germany ; Department of Knowledge and Language Processing, Otto-von-Guericke University Magdeburg, Germany ; Forschungscampus STIMULATE Magdeburg, Germany.
Department of Neurology, University Medical Center A.ö.R. Magdeburg, Germany ; Department of Psychological and Brain Sciences, Dartmouth College Hanover, NH, USA.
Front Neurosci. 2014 May 23;8:116. doi: 10.3389/fnins.2014.00116. eCollection 2014.
Perception is an active process that interprets and structures the stimulus input based on assumptions about its possible causes. We use real-time functional magnetic resonance imaging (rtfMRI) to investigate a particularly powerful demonstration of dynamic object integration in which the same physical stimulus intermittently elicits categorically different conscious object percepts. In this study, we simulated an outline object that is moving behind a narrow slit. With such displays, the physically identical stimulus can elicit categorically different percepts that either correspond closely to the physical stimulus (vertically moving line segments) or represent a hypothesis about the underlying cause of the physical stimulus (a horizontally moving object that is partly occluded). In the latter case, the brain must construct an object from the input sequence. Combining rtfMRI with machine learning techniques we show that it is possible to determine online the momentary state of a subject's conscious percept from time resolved BOLD-activity. In addition, we found that feedback about the currently decoded percept increased the decoding rates compared to prior fMRI recordings of the same stimulus without feedback presentation. The analysis of the trained classifier revealed a brain network that discriminates contents of conscious perception with antagonistic interactions between early sensory areas that represent physical stimulus properties and higher-tier brain areas. During integrated object percepts, brain activity decreases in early sensory areas and increases in higher-tier areas. We conclude that it is possible to use BOLD responses to reliably track the contents of conscious visual perception with a relatively high temporal resolution. We suggest that our approach can also be used to investigate the neural basis of auditory object formation and discuss the results in the context of predictive coding theory.
感知是一种主动的过程,它根据对刺激输入可能原因的假设来解释和构建。我们使用实时功能磁共振成像(rtfMRI)来研究一种特别强大的动态对象整合演示,其中相同的物理刺激间歇性地引发完全不同的有意识的对象感知。在这项研究中,我们模拟了一个在狭窄狭缝后面移动的轮廓物体。通过这样的显示,物理上相同的刺激可以引发完全不同的感知,这些感知要么与物理刺激非常吻合(垂直移动的线段),要么代表对物理刺激的潜在原因的假设(一个部分被遮挡的水平移动的物体)。在后一种情况下,大脑必须从输入序列中构建一个物体。我们结合 rtfMRI 和机器学习技术表明,从时间分辨的 BOLD 活动中,可以实时确定受试者有意识感知的瞬间状态。此外,我们发现与没有反馈呈现的相同刺激的先前 fMRI 记录相比,关于当前解码感知的反馈增加了解码率。经过训练的分类器的分析揭示了一个大脑网络,该网络可以区分有意识感知的内容,具有早期感觉区域和更高层次的大脑区域之间的拮抗相互作用。在整合的对象感知中,早期感觉区域的大脑活动减少,而更高层次的区域的大脑活动增加。我们得出的结论是,使用 BOLD 反应可以可靠地跟踪有意识视觉感知的内容,具有相对较高的时间分辨率。我们建议,我们的方法也可用于研究听觉对象形成的神经基础,并在预测编码理论的背景下讨论结果。