Murphy Matthew C, Poplawsky Alexander J, Vazquez Alberto L, Chan Kevin C, Kim Seong-Gi, Fukuda Mitsuhiro
Department of Ophthalmology, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA; Department of Radiology, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA.
Department of Radiology, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA.
Neuroimage. 2016 Aug 15;137:1-8. doi: 10.1016/j.neuroimage.2016.05.055. Epub 2016 May 25.
Functional MRI (fMRI) is a popular and important tool for noninvasive mapping of neural activity. As fMRI measures the hemodynamic response, the resulting activation maps do not perfectly reflect the underlying neural activity. The purpose of this work was to design a data-driven model to improve the spatial accuracy of fMRI maps in the rat olfactory bulb. This system is an ideal choice for this investigation since the bulb circuit is well characterized, allowing for an accurate definition of activity patterns in order to train the model. We generated models for both cerebral blood volume weighted (CBVw) and blood oxygen level dependent (BOLD) fMRI data. The results indicate that the spatial accuracy of the activation maps is either significantly improved or at worst not significantly different when using the learned models compared to a conventional general linear model approach, particularly for BOLD images and activity patterns involving deep layers of the bulb. Furthermore, the activation maps computed by CBVw and BOLD data show increased agreement when using the learned models, lending more confidence to their accuracy. The models presented here could have an immediate impact on studies of the olfactory bulb, but perhaps more importantly, demonstrate the potential for similar flexible, data-driven models to improve the quality of activation maps calculated using fMRI data.
功能磁共振成像(fMRI)是一种用于无创绘制神经活动图谱的流行且重要的工具。由于fMRI测量的是血液动力学反应,因此所得的激活图谱并不能完美反映潜在的神经活动。这项工作的目的是设计一种数据驱动模型,以提高大鼠嗅球中fMRI图谱的空间准确性。该系统是此项研究的理想选择,因为嗅球回路具有良好的特征,能够准确界定活动模式以训练模型。我们针对脑血容量加权(CBVw)和血氧水平依赖(BOLD)fMRI数据生成了模型。结果表明,与传统的一般线性模型方法相比,使用学习到的模型时,激活图谱的空间准确性要么显著提高,要么在最坏的情况下没有显著差异,特别是对于涉及嗅球深层的BOLD图像和活动模式。此外,使用学习到的模型时,由CBVw和BOLD数据计算出的激活图谱显示出更高的一致性,这使其准确性更具可信度。这里提出的模型可能会对嗅球研究立即产生影响,但也许更重要的是,展示了类似的灵活、数据驱动模型改善使用fMRI数据计算出的激活图谱质量的潜力。