Sridharan Devarajan, Steinmetz Nicholas A, Moore Tirin, Knudsen Eric I
Department of Neurobiology, Stanford University School of Medicine, Stanford, CA, USA.
Department of Neurobiology and Program in Neurosciences, Stanford University School of Medicine, Stanford, CA, USA.
J Vis. 2014 Aug 21;14(9):16. doi: 10.1167/14.9.16.
Studies investigating the neural bases of cognitive phenomena increasingly employ multialternative detection tasks that seek to measure the ability to detect a target stimulus or changes in some target feature (e.g., orientation or direction of motion) that could occur at one of many locations. In such tasks, it is essential to distinguish the behavioral and neural correlates of enhanced perceptual sensitivity from those of increased bias for a particular location or choice (choice bias). However, making such a distinction is not possible with established approaches. We present a new signal detection model that decouples the behavioral effects of choice bias from those of perceptual sensitivity in multialternative (change) detection tasks. By formulating the perceptual decision in a multidimensional decision space, our model quantifies the respective contributions of bias and sensitivity to multialternative behavioral choices. With a combination of analytical and numerical approaches, we demonstrate an optimal, one-to-one mapping between model parameters and choice probabilities even for tasks involving arbitrarily large numbers of alternatives. We validated the model with published data from two ternary choice experiments: a target-detection experiment and a length-discrimination experiment. The results of this validation provided novel insights into perceptual processes (sensory noise and competitive interactions) that can accurately and parsimoniously account for observers' behavior in each task. The model will find important application in identifying and interpreting the effects of behavioral manipulations (e.g., cueing attention) or neural perturbations (e.g., stimulation or inactivation) in a variety of multialternative tasks of perception, attention, and decision-making.
研究认知现象神经基础的研究越来越多地采用多选项检测任务,这些任务旨在测量检测目标刺激或某些目标特征(如方向或运动方向)变化的能力,这些变化可能发生在多个位置中的某一个。在这类任务中,区分增强的感知敏感性与对特定位置或选择的偏差增加(选择偏差)的行为和神经关联至关重要。然而,用既定方法无法做出这种区分。我们提出了一种新的信号检测模型,该模型在多选项(变化)检测任务中,将选择偏差的行为效应与感知敏感性的行为效应解耦。通过在多维决策空间中制定感知决策,我们的模型量化了偏差和敏感性对多选项行为选择的各自贡献。通过结合分析和数值方法,我们证明了即使对于涉及任意大量选项的任务,模型参数与选择概率之间也存在最优的一一映射。我们用来自两个三选项选择实验(一个目标检测实验和一个长度辨别实验)的已发表数据验证了该模型。验证结果为感知过程(感觉噪声和竞争相互作用)提供了新的见解,这些见解可以准确且简洁地解释观察者在每个任务中的行为。该模型将在识别和解释行为操纵(如提示注意力)或神经扰动(如刺激或失活)在各种感知、注意力和决策多选项任务中的效果方面找到重要应用。