Optimizing cognitive neuroscience experiments for separating event- related fMRI BOLD responses in non-randomized alternating designs.

Soukhin Das, Weigang Yi, Mingzhou Ding, George R Mangun
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引用次数: 1

Abstract

Functional magnetic resonance imaging (fMRI) has revolutionized human brain research. But there exists a fundamental mismatch between the rapid time course of neural events and the sluggish nature of the fMRI blood oxygen level-dependent (BOLD) signal, which presents special challenges for cognitive neuroscience research. This limitation in the temporal resolution of fMRI puts constraints on the information about brain function that can be obtained with fMRI and also presents methodological challenges. Most notably, when using fMRI to measure neural events occurring closely in time, the BOLD signals may temporally overlap one another. This overlap problem may be exacerbated in complex experimental paradigms (stimuli and tasks) that are designed to manipulate and isolate specific cognitive-neural processes involved in perception, cognition, and action. Optimization strategies to deconvolve overlapping BOLD signals have proven effective in providing separate estimates of BOLD signals from temporally overlapping brain activity, but there remains reduced efficacy of such approaches in many cases. For example, when stimulus events necessarily follow a non-random order, like in trial-by-trial cued attention or working memory paradigms. Our goal is to provide guidance to improve the efficiency with which the underlying responses evoked by one event type can be detected, estimated, and distinguished from other events in designs common in cognitive neuroscience research. We pursue this goal using simulations that model the nonlinear and transient properties of fMRI signals, and which use more realistic models of noise. Our simulations manipulated: (i) Inter-Stimulus-Interval (ISI), (ii) proportion of so-called null events, and (iii) nonlinearities in the BOLD signal due to both cognitive and design parameters. We offer a theoretical framework along with a python toolbox called deconvolve to provide guidance on the optimal design parameters that will be of particular utility when using non-random, alternating event sequences in experimental designs. In addition, though, we also highlight the challenges and limitations in simultaneously optimizing both detection and estimation efficiency of BOLD signals in these common, but complex, cognitive neuroscience designs.

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在非随机交替设计中,优化分离事件相关fMRI BOLD反应的认知神经科学实验。
功能磁共振成像(fMRI)已经彻底改变了人类大脑的研究。但是,神经事件的快速时间过程与fMRI血氧水平依赖(BOLD)信号的缓慢性质之间存在根本的不匹配,这给认知神经科学研究带来了特殊的挑战。功能磁共振成像在时间分辨率上的限制限制了可以通过功能磁共振成像获得的关于大脑功能的信息,也提出了方法上的挑战。最值得注意的是,当使用功能磁共振成像测量在时间上紧密发生的神经事件时,BOLD信号可能在时间上彼此重叠。在复杂的实验范式(刺激和任务)中,这种重叠问题可能会加剧,这些实验范式旨在操纵和隔离涉及感知、认知和行动的特定认知神经过程。对重叠的BOLD信号进行反卷积的优化策略已被证明在从时间重叠的大脑活动中提供单独的BOLD信号估计方面是有效的,但在许多情况下,这种方法的有效性仍然降低。例如,当刺激事件必须遵循非随机顺序时,比如在一次又一次的提示注意或工作记忆范式中。我们的目标是提供指导,以提高由一种事件类型引起的潜在反应的效率,这种反应可以在认知神经科学研究中常见的设计中被检测、估计并与其他事件区分开来。我们通过模拟fMRI信号的非线性和瞬态特性来实现这一目标,并使用更现实的噪声模型。我们的模拟操纵了:(i)刺激间间隔(ISI), (ii)所谓的无效事件的比例,以及(iii)由于认知和设计参数导致的BOLD信号中的非线性。我们提供了一个理论框架以及一个名为deconvolve的python工具箱,以提供最佳设计参数的指导,这些参数在实验设计中使用非随机、交替事件序列时将特别有用。此外,我们还强调了在这些常见但复杂的认知神经科学设计中同时优化BOLD信号的检测和估计效率的挑战和局限性。
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