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Visual Attribute-Specific Contextual Trajectory Paradigm

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OpenNeuro2023-06-13 更新2026-03-14 收录
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These data were recorded from 37 subjects using the following exclusion criteria: Normal, or correct to normal, vision; no history of neurological disorder; and less than 35 years of age. Subjects completed a novel, visual contextual trajectory paradigm (CTP) wherein the onset of a bound stimulus violated an established trajectory in terms of its brightness, size, or orientation. No attribute was violated during control trials. Full method details can be read within the following published paper: https://doi.org/10.1016/j.cortex.2023.08.004 Analysis code is available at: https://github.com/benjaminglowe/attribute-specific-prediction-error-analysis-code Please email ben.lowe@mq.edu.au if you have any further questions.

本数据集的采集对象为37名被试,采集时遵循以下排除标准:视力正常或矫正视力正常;无神经系统疾病史;年龄小于35岁。 所有被试均完成一项新颖的视觉情境轨迹范式(visual contextual trajectory paradigm, CTP)实验。该范式中,绑定刺激的出现会在亮度、尺寸或朝向维度上违背既定轨迹;而在对照试次中,无任何属性出现违背情况。 完整的实验方法细节可参阅以下已发表论文:https://doi.org/10.1016/j.cortex.2023.08.004 本研究的分析代码可通过以下链接获取:https://github.com/benjaminglowe/attribute-specific-prediction-error-analysis-code 若有任何进一步疑问,请致邮至ben.lowe@mq.edu.au。
创建时间:
2023-06-13
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