There exist very few ways to isolate cognitive processes, historically defined via highly controlled laboratory studies, in more ecologically valid contexts. Specifically, it remains unclear as to what extent patterns of neural activity observed under such constraints actually manifest outside the laboratory in a manner that can be used to make an accurate inference about the latent state, associated cognitive process, or proximal behavior of the individual. Improving our understanding of when and how specific patterns of neural activity manifest in ecologically valid scenarios would provide validation for laboratory-based approaches that study similar neural phenomena in isolation and meaningful insight into the latent states that occur during complex tasks. We argue that domain generalization methods from the brain-computer interface community have the potential to address this challenge. We previously used such an approach to decode phasic neural responses associated with visual target discrimination. Here, we extend that work to more tonic phenomena such as internal latent states. We use data from two highly controlled laboratory paradigms to train two separate domain-generalized models. We apply the trained models to an ecologically valid paradigm in which participants performed multiple, concurrent driving-related tasks. Using the pretrained models, we derive estimates of the underlying latent state and associated patterns of neural activity. Importantly, as the patterns of neural activity change along the axis defined by the original training data, we find changes in behavior and task performance consistent with the observations from the original, laboratory paradigms. We argue that these results lend ecological validity to those experimental designs and provide a methodology for understanding the relationship between observed neural activity and behavior during complex tasks.
翻译:传统的实验室研究大多在高度控制的环境下研究认知过程,却在更具生态效度的环境下难以孤立这些过程,因此很难确定实验室中观察到的神经活动模式在现实环境中是否真实存在以及是否能用于精确推断个体的潜在状态、相关认知过程或邻近行为。改善我们对特定神经活动模式如何在生态环境中表现的理解将为孤立研究类似神经现象的实验室方法提供验证,并提供有关复杂任务期间发生的潜在状态有意义的见解。我们认为,脑机接口社区的域泛化方法有可能应对这一挑战。我们之前使用这种方法解码与视觉目标识别相关的瞬态神经反应。在这篇论文中,我们将这项工作扩展到更稳定的现象,如内在潜在状态。我们使用两个高度控制的实验室范例的数据来训练两个独立的域泛化模型。我们将训练好的模型应用于一个生态有效的范例,其中的参与者在多个、并行的与驾驶相关的任务中操作。使用预训练的模型,我们推导出潜在状态和相关神经活动模式的估计值。重要的是,随着神经活动模式沿着原始训练数据定义的轴发生改变,我们发现与原始实验室范例观察结果一致的行为和任务表现变化。我们认为这些结果为上述实验设计提供了生态有效性,并为理解在复杂任务期间观察到的神经活动与行为之间的关系提供了一种方法。