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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >Decoding neural events from fMRI BOLD signal: A comparison of existing approaches and development of a new algorithm
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Decoding neural events from fMRI BOLD signal: A comparison of existing approaches and development of a new algorithm

机译:从fMRI BOLD信号解码神经事件:现有方法的比较和新算法的开发

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Neuroimaging methodology predominantly relies on the blood oxygenation level dependent (BOLD) signal. While the BOLD signal is a valid measure of neuronal activity, variances in fluctuations of the BOLD signal are not only due to fluctuations in neural activity. Thus, a remaining problem in neuroimaging analyses is developing methods that ensure specific inferences about neural activity that are not confounded by unrelated sources of noise in the BOLD signal. Here, we develop and test a new algorithm for performing semiblind (i.e., no knowledge of stimulus timings) deconvolution of the BOLD signal that treats the neural event as an observable, but intermediate, probabilistic representation of the system's state. We test and compare this new algorithm against three other recent deconvolution algorithms under varied levels of autocorrelated and Gaussian noise, hemodynamic response function (HRF) misspecification and observation sampling rate. Further, we compare the algorithms' performance using two models to simulate BOLD data: a convolution of neural events with a known (or misspecified) HRF versus a biophysically accurate balloon model of hemodynamics. We also examine the algorithms' performance on real task data. The results demonstrated good performance of all algorithms, though the new algorithm generally outperformed the others (3.0% improvement) under simulated resting-state experimental conditions exhibiting multiple, realistic confounding factors (as well as 10.3% improvement on a real Stroop task). The simulations also demonstrate that the greatest negative influence on deconvolution accuracy is observation sampling rate. Practical and theoretical implications of these results for improving inferences about neural activity from fMRI BOLD signal are discussed. (C) 2013 Elsevier Inc. All rights reserved.
机译:神经影像学方法主要依赖于血液氧合水平依赖性(BOLD)信号。尽管BOLD信号是神经活动的有效量度,但BOLD信号波动的变化不仅是由于神经活动的波动引起的。因此,神经成像分析中的另一个问题是开发一种方法,以确保有关神经活动的特定推论不会被BOLD信号中无关的噪声源所混淆。在这里,我们开发并测试了一种用于执行BOLD信号的半盲(即不知道刺激时间)反卷积的新算法,该算法将神经事件视为系统状态的可观察但中间的概率表示。我们在不同水平的自相关和高斯噪声,血液动力学响应函数(HRF)错误指定和观察采样率的情况下,将该新算法与其他三个最近的反卷积算法进行了测试和比较。此外,我们使用两种模型来模拟BOLD数据来比较算法的性能:具有已知(或指定错误)HRF的神经事件卷积与血液动力学的生物物理准确球囊模型的卷积。我们还将检查算法在实际任务数据上的性能。结果显示了所有算法的良好性能,尽管在表现出多个现实混淆因素的模拟静止状态实验条件下,新算法通常优于其他算法(改进了3.0%)(在实际的Stroop任务中改进了10.3%)。仿真还表明,对反卷积精度的最大负面影响是观测采样率。讨论了这些结果对改善功能磁共振成像BOLD信号对神经活动的推断的实践和理论意义。 (C)2013 Elsevier Inc.保留所有权利。

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