Ono Kentaro, Hashimoto Junya, Hiramoto Ryosuke, Sasaoka Takafumi, Yamawaki Shigeto
Center for Brain, Mind, and KANSEI Sciences Research, Hiroshima University, Hiroshima, Japan.
Graduate School of Education, Hiroshima University, Hiroshima, Japan.
Front Hum Neurosci. 2021 Feb 25;15:630288. doi: 10.3389/fnhum.2021.630288. eCollection 2021.
Prediction is essential for the efficiency of many cognitive processes; however, this process is not always perfect. Predictive coding theory suggests that the brain generates and updates a prediction to respond to an upcoming event. Although an electrophysiological index of prediction, the stimulus preceding negativity (SPN), has been reported, it remains unknown whether the SPN reflects the prediction accuracy, or whether it is associated with the prediction error, which corresponds to a mismatch between a prediction and an actual input. Thus, the present study aimed to investigate this question using electroencephalography (EEG). Participants were asked to predict the original pictures from pictures that had undergone different levels of pixelation. The SPN amplitude was affected by the level of pixelation and correlated with the subjective evaluation of the prediction accuracy. Furthermore, late positive components (LPC) were negatively correlated with SPN. These results suggest that the amplitude of SPN reflects the prediction accuracy; more accurate prediction increases the SPN and reduces the prediction error, resulting in reduced LPC amplitudes.
预测对于许多认知过程的效率至关重要;然而,这一过程并非总是完美的。预测编码理论表明,大脑会生成并更新预测以应对即将发生的事件。尽管已经报道了一种预测的电生理指标,即刺激前负波(SPN),但SPN是否反映预测准确性,或者它是否与预测误差相关(预测误差对应于预测与实际输入之间的不匹配)仍不清楚。因此,本研究旨在使用脑电图(EEG)来探究这个问题。参与者被要求从经过不同程度像素化处理的图片中预测原始图片。SPN振幅受像素化程度的影响,并且与预测准确性的主观评价相关。此外,晚期正成分(LPC)与SPN呈负相关。这些结果表明,SPN的振幅反映了预测准确性;更准确的预测会增加SPN并减少预测误差,从而导致LPC振幅降低。