Predicting the imagined contents using brain activation

Krishna P. Miyapuram, W. Schultz, P. Tobler
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引用次数: 2

Abstract

Mental imagery refers to percept-like experiences in the absence of sensory input. Brain imaging studies suggest common, modality-specific, neural correlates imagery and perception. We associated abstract visual stimuli with either visually presented or imagined monetary rewards and scrambled pictures. Brain images for a group of 12 participants were collected using functional magnetic resonance imaging. Statistical analysis showed that human midbrain regions were activated irrespective of the monetary rewards being imagined or visually present. A support vector machine trained on the midbrain activation patterns to the visually presented rewards predicted with 75% accuracy whether the participants imagined the monetary reward or the scrambled picture during imagination trials. Training samples were drawn from visually presented trials and classification accuracy was assessed for imagination trials. These results suggest the use of machine learning technique for classification of underlying cognitive states from brain imaging data.
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通过大脑激活来预测想象的内容
心理意象指的是在没有感官输入的情况下的类似感知的体验。脑成像研究表明,常见的、模式特异性的、神经相关的图像和感知。我们将抽象的视觉刺激与视觉呈现或想象的金钱奖励和混乱的图片联系起来。研究人员利用功能性磁共振成像技术收集了12名参与者的大脑图像。统计分析表明,无论金钱奖励是想象的还是视觉上的,人类的中脑区域都会被激活。在想象实验中,中脑激活模式训练的支持向量机预测参与者想象的是金钱奖励还是混乱的图片,准确率为75%。训练样本取自视觉呈现的试验,并评估想象试验的分类准确性。这些结果建议使用机器学习技术从脑成像数据中对潜在的认知状态进行分类。
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