Sanchez Gaëtan, Lecaignard Françoise, Otman Anatole, Maby Emmanuel, Mattout Jérémie
Center for Cognitive Neuroscience, University of Salzburg Salzburg, Austria.
Lyon Neuroscience Research Center, Brain Dynamics and Cognition Team, Institut National de la Santé et de la Recherche Médicale, U1028, Centre National de Recherche Scientifique, UMR5292, Université Claude Bernard Lyon 1Lyon, France; CERMEP Imaging CenterLyon, France.
Front Hum Neurosci. 2016 Jul 7;10:347. doi: 10.3389/fnhum.2016.00347. eCollection 2016.
The relatively young field of Brain-Computer Interfaces has promoted the use of electrophysiology and neuroimaging in real-time. In the meantime, cognitive neuroscience studies, which make extensive use of functional exploration techniques, have evolved toward model-based experiments and fine hypothesis testing protocols. Although these two developments are mostly unrelated, we argue that, brought together, they may trigger an important shift in the way experimental paradigms are being designed, which should prove fruitful to both endeavors. This change simply consists in using real-time neuroimaging in order to optimize advanced neurocognitive hypothesis testing. We refer to this new approach as the instantiation of an Active SAmpling Protocol (ASAP). As opposed to classical (static) experimental protocols, ASAP implements online model comparison, enabling the optimization of design parameters (e.g., stimuli) during the course of data acquisition. This follows the well-known principle of sequential hypothesis testing. What is radically new, however, is our ability to perform online processing of the huge amount of complex data that brain imaging techniques provide. This is all the more relevant at a time when physiological and psychological processes are beginning to be approached using more realistic, generative models which may be difficult to tease apart empirically. Based upon Bayesian inference, ASAP proposes a generic and principled way to optimize experimental design adaptively. In this perspective paper, we summarize the main steps in ASAP. Using synthetic data we illustrate its superiority in selecting the right perceptual model compared to a classical design. Finally, we briefly discuss its future potential for basic and clinical neuroscience as well as some remaining challenges.
相对年轻的脑机接口领域推动了电生理学和神经成像技术在实时应用中的发展。与此同时,大量运用功能探索技术的认知神经科学研究已朝着基于模型的实验和精细假设检验方案发展。尽管这两个发展方向大多没有关联,但我们认为,将它们结合起来可能会引发实验范式设计方式的重大转变,这对这两个领域都将富有成效。这种转变仅仅在于使用实时神经成像来优化先进的神经认知假设检验。我们将这种新方法称为主动采样协议(ASAP)的实例化。与传统(静态)实验协议不同,ASAP实施在线模型比较,能够在数据采集过程中优化设计参数(例如刺激)。这遵循了众所周知的序贯假设检验原则。然而,全新的是我们对脑成像技术提供的大量复杂数据进行在线处理的能力。在生理和心理过程开始使用更现实的生成模型来研究,而这些模型可能难以通过实证区分开来的当下,这一点尤为重要。基于贝叶斯推理,ASAP提出了一种通用且有原则的方法来自适应地优化实验设计。在这篇观点论文中,我们总结了ASAP的主要步骤。使用合成数据,我们展示了它在与传统设计相比时,在选择正确感知模型方面的优越性。最后,我们简要讨论了它在基础和临床神经科学方面的未来潜力以及一些尚存的挑战。