fMRI数据计算认知建模的贝叶斯反卷积

IF 4.7 2区 医学 Q1 NEUROIMAGING
Jonathon R. Howlett , Katia M. Harlé , Alan N. Simmons , Charles T. Taylor
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引用次数: 0

摘要

认知神经科学的一个中心目标是从可观察到的数据中推断出潜在的认知过程。然而,目前的功能磁共振成像分析工具不能直接从血氧水平依赖(BOLD)信号中估计计算认知模型中的潜在参数。在这里,我们提出了一种新的贝叶斯反卷积技术,用于fMRI时间序列数据的全分层生成认知建模。我们通过将贝叶斯反卷积应用于货币激励延迟(MID)任务来验证这一方法,以识别54个样本中潜在的激励预期过程,这些样本接受了2次扫描,作为焦虑和抑郁临床试验的一部分。基于一系列的贝叶斯模型,我们发现纹状体奖励区活动反映的是在预期金钱损失或收益时的激励预测误差,而不是原始的激励价值。测试-重测分析发现,使用生成贝叶斯学习模型估计的单个参数(包括持久先验参数和表示预测误差与BOLD信号之间的标度项的β参数)比传统fMRI分析得出的指标(预测期间增益和无增益之间的对比的β值)估计更可靠。我们的方法具有广泛应用于多种神经过程和健康和疾病的个体差异的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian deconvolution for computational cognitive modeling of fMRI data
A central goal of cognitive neuroscience is to make inferences about underlying cognitive processes from observable data. However, current fMRI analysis tools cannot directly estimate latent parameters in computational cognitive models from blood-oxygen-level-dependent (BOLD) signal. Here, we present a novel Bayesian deconvolution technique for full hierarchical generative cognitive modeling of fMRI timeseries data. We validated this approach by applying Bayesian deconvolution to the monetary incentive delay (MID) task to identify processes underlying incentive anticipation in a sample of 54 individuals who underwent 2 scan sessions as part of a clinical trial for anxiety and depression. Based on a series of Bayesian models, we found evidence that striatal reward region activity reflects incentive prediction error rather than raw incentive value during anticipation of monetary loss or gain. Test-retest analyses found that individual parameters estimated using a generative Bayesian learning model (including a persistent prior parameter and a β parameter representing a scaling term between prediction error and BOLD signal) were estimated more reliably than an index derived from traditional fMRI analysis (beta value for contrast between gain and no gain during anticipation). Our method holds potential for broad application to diverse neural processes and individual differences in health and disease.
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来源期刊
NeuroImage
NeuroImage 医学-核医学
CiteScore
11.30
自引率
10.50%
发文量
809
审稿时长
63 days
期刊介绍: NeuroImage, a Journal of Brain Function provides a vehicle for communicating important advances in acquiring, analyzing, and modelling neuroimaging data and in applying these techniques to the study of structure-function and brain-behavior relationships. Though the emphasis is on the macroscopic level of human brain organization, meso-and microscopic neuroimaging across all species will be considered if informative for understanding the aforementioned relationships.
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