Lee Hongmi, Kuhl Brice A
Department of Psychology, New York University, New York, New York 10003, and.
Department of Psychology, University of Oregon, Eugene, Oregon 97403
J Neurosci. 2016 Jun 1;36(22):6069-82. doi: 10.1523/JNEUROSCI.4286-15.2016.
Recent findings suggest that the contents of memory encoding and retrieval can be decoded from the angular gyrus (ANG), a subregion of posterior lateral parietal cortex. However, typical decoding approaches provide little insight into the nature of ANG content representations. Here, we tested whether complex, multidimensional stimuli (faces) could be reconstructed from ANG by predicting underlying face components from fMRI activity patterns in humans. Using an approach inspired by computer vision methods for face recognition, we applied principal component analysis to a large set of face images to generate eigenfaces. We then modeled relationships between eigenface values and patterns of fMRI activity. Activity patterns evoked by individual faces were then used to generate predicted eigenface values, which could be transformed into reconstructions of individual faces. We show that visually perceived faces were reliably reconstructed from activity patterns in occipitotemporal cortex and several lateral parietal subregions, including ANG. Subjective assessment of reconstructed faces revealed specific sources of information (e.g., affect and skin color) that were successfully reconstructed in ANG. Strikingly, we also found that a model trained on ANG activity patterns during face perception was able to successfully reconstruct an independent set of face images that were held in memory. Together, these findings provide compelling evidence that ANG forms complex, stimulus-specific representations that are reflected in activity patterns evoked during perception and remembering.
Neuroimaging studies have consistently implicated lateral parietal cortex in episodic remembering, but the functional contributions of lateral parietal cortex to memory remain a topic of debate. Here, we used an innovative form of fMRI pattern analysis to test whether lateral parietal cortex actively represents the contents of memory. Using a large set of human face images, we first extracted latent face components (eigenfaces). We then used machine learning algorithms to predict face components from fMRI activity patterns and, ultimately, to reconstruct images of individual faces. We show that activity patterns in a subregion of lateral parietal cortex, the angular gyrus, supported successful reconstruction of perceived and remembered faces, confirming a role for this region in actively representing remembered content.
最近的研究结果表明,记忆编码和提取的内容可以从角回(ANG)解码,角回是后侧顶叶皮层的一个亚区域。然而,典型的解码方法对ANG内容表征的本质了解甚少。在这里,我们通过从人类功能磁共振成像(fMRI)活动模式预测潜在的面部成分,测试了是否可以从ANG重建复杂的多维刺激(面孔)。我们采用一种受计算机视觉人脸识别方法启发的方法,将主成分分析应用于大量面部图像以生成特征脸。然后,我们对特征脸值与fMRI活动模式之间的关系进行建模。然后,由个体面孔诱发的活动模式被用于生成预测的特征脸值,这些值可以转换为个体面孔的重建。我们表明,从枕颞叶皮层和包括ANG在内的几个外侧顶叶亚区域的活动模式中,可以可靠地重建视觉感知的面孔。对面部重建的主观评估揭示了在ANG中成功重建的特定信息来源(例如情感和肤色)。引人注目的是,我们还发现,在面孔感知过程中基于ANG活动模式训练的模型能够成功重建一组独立的记忆面孔图像。总之,这些发现提供了令人信服的证据,表明ANG形成了复杂的、特定于刺激的表征,这些表征反映在感知和记忆过程中诱发的活动模式中。
神经影像学研究一直表明外侧顶叶皮层参与情景记忆,但外侧顶叶皮层对记忆的功能贡献仍然是一个有争议的话题。在这里,我们使用一种创新形式的fMRI模式分析来测试外侧顶叶皮层是否积极表征记忆内容。我们使用大量人脸图像,首先提取潜在的面部成分(特征脸)。然后,我们使用机器学习算法从fMRI活动模式预测面部成分,并最终重建个体面孔的图像。我们表明,外侧顶叶皮层的一个亚区域——角回中的活动模式支持对感知和记忆面孔的成功重建,证实了该区域在积极表征记忆内容中的作用。