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首页> 外文期刊>Biological Cybernetics >Predicting human perceptual decisions by decoding neuronal information profiles
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Predicting human perceptual decisions by decoding neuronal information profiles

机译:通过解码神经元信息配置文件预测人类的感知决策

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Perception relies on the response of populations of neurons in sensory cortex. How the response profile of a neuronal population gives rise to perception and perceptual discrimination has been conceptualized in various ways. Here we suggest that neuronal population responses represent information about our environment explicitly as Fisher information (FI), which is a local measure of the variance estimate of the sensory input. We show how this sensory information can be read out and combined to infer from the available information profile which stimulus value is perceived during a fine discrimination task. In particular, we propose that the perceived stimulus corresponds to the stimulus value that leads to the same information for each of the alternative directions, and compare the model prediction to standard models considered in the literature (population vector, maximum likelihood, maximum-a-posteriori Bayesian inference). The models are applied to human performance in a motion discrimination task that induces perceptual misjudgements of a target direction of motion by task irrelevant motion in the spatial surround of the target stimulus (motion repulsion). By using the neurophysiological insight that surround motion suppresses neuronal responses to the target motion in the center, all models predicted the pattern of perceptual misjudgements. The variation of discrimination thresholds (error on the perceived value) was also explained through the changes of the total FI content with varying surround motion directions. The proposed FI decoding scheme incorporates recent neurophysiological evidence from macaque visual cortex showing that perceptual decisions do not rely on the most active neurons, but rather on the most informative neuronal responses. We statistically compare the prediction capability of the FI decoding approach and the standard decoding models. Notably, all models reproduced the variation of the perceived stimulus values for different surrounds, but with different neuronal tuning characteristics underlying perception. Compared to the FI approach the prediction power of the standard models was based on neurons with far wider tuning width and stronger surround suppression. Our study demonstrates that perceptual misjudgements can be based on neuronal populations encoding explicitly the available sensory information, and provides testable neurophysiological predictions on neuronal tuning characteristics underlying human perceptual decisions.
机译:知觉依赖于感觉皮层中神经元种群的反应。已经以各种方式概念化了神经元群体的反应概况如何引起知觉和知觉歧视。在这里,我们建议神经元群体反应将有关我们环境的信息明确表示为Fisher信息(FI),这是对感觉输入的方差估计的局部度量。我们展示了如何将这种感官信息读出并组合起来,以从可用的信息配置文件中推断出在精细区分任务中感知到的刺激值。特别是,我们建议感知的刺激对应于导致每个替代方向具有相同信息的刺激值,并将模型预测与文献中考虑的标准模型(人口矢量,最大似然,最大后验贝叶斯推断)。该模型适用于运动识别任务中的人类绩效,该任务通过目标刺激的空间范围内与任务无关的运动(运动排斥)引起目标运动方向的感知错误判断。通过利用围绕运动的神经生理学洞察力来抑制神经元对中心目标运动的反应,所有模型都预测了感知错误的模式。还通过总FI含量随变化的环绕运动方向的变化来解释区分阈值(感知值的误差)的变化。拟议的FI解码方案结合了猕猴视觉皮层的最新神经生理学证据,表明知觉决策并不依赖于最活跃的神经元,而是依赖于最有信息的神经元反应。我们在统计上比较了FI解码方法和标准解码模型的预测能力。值得注意的是,所有模型都针对不同的周围环境复制了感知刺激值的变化,但是具有潜在的不同神经元调节特性。与FI方法相比,标准模型的预测能力基于具有更宽的调谐宽度和更强的环绕声抑制的神经元。我们的研究表明,感知错误的判断可以基于显式编码可用感知信息的神经元群体,并为人类感知决策所依据的神经元调节特征提供了可测试的神经生理学预测。

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