领域适应增强型探照灯:实现从视觉感知到心理想象的大脑解码

Alexander Olza, David Soto, Roberto Santana
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摘要

在认知神经科学和脑机接口研究中,准确预测想象中的刺激至关重要。本研究利用 18 名受试者的 fMRI 扫描数据(主要是视觉数据)研究了领域适应(DA)在增强想象预测方面的效果。首先,我们利用来自 14 个大脑区域的数据,训练视觉刺激的基准模型,以预测想象中的刺激。然后,我们开发了几种模型来改进想象预测,并对不同的 DA 方法进行了比较。我们的结果表明,DA 能显著增强意象预测,尤其是使用常规转移方法时。然后,我们使用正则转移法进行了 DA 增强探照灯分析,随后进行了基于置换的统计检验,以确定在不同受试者中意象解码始终高于偶然性的脑区。我们的 DA 增强探照灯预测了高度分布的脑区(包括视觉皮层和顶叶前部皮层)中的意象内容,从而超越了标准的跨域分类方法。本文的完整代码和数据已经公开,供科学界使用。
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Domain Adaptation-Enhanced Searchlight: Enabling brain decoding from visual perception to mental imagery
In cognitive neuroscience and brain-computer interface research, accurately predicting imagined stimuli is crucial. This study investigates the effectiveness of Domain Adaptation (DA) in enhancing imagery prediction using primarily visual data from fMRI scans of 18 subjects. Initially, we train a baseline model on visual stimuli to predict imagined stimuli, utilizing data from 14 brain regions. We then develop several models to improve imagery prediction, comparing different DA methods. Our results demonstrate that DA significantly enhances imagery prediction, especially with the Regular Transfer approach. We then conduct a DA-enhanced searchlight analysis using Regular Transfer, followed by permutation-based statistical tests to identify brain regions where imagery decoding is consistently above chance across subjects. Our DA-enhanced searchlight predicts imagery contents in a highly distributed set of brain regions, including the visual cortex and the frontoparietal cortex, thereby outperforming standard cross-domain classification methods. The complete code and data for this paper have been made openly available for the use of the scientific community.
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