Uhlirova Hana, Kılıç Kıvılcım, Tian Peifang, Sakadžić Sava, Gagnon Louis, Thunemann Martin, Desjardins Michèle, Saisan Payam A, Nizar Krystal, Yaseen Mohammad A, Hagler Donald J, Vandenberghe Matthieu, Djurovic Srdjan, Andreassen Ole A, Silva Gabriel A, Masliah Eliezer, Kleinfeld David, Vinogradov Sergei, Buxton Richard B, Einevoll Gaute T, Boas David A, Dale Anders M, Devor Anna
Department of Radiology, UCSD, La Jolla, CA 92093, USA CEITEC-Central European Institute of Technology and Institute of Physical Engineering, Faculty of Mechanical Engineering, Brno University of Technology, Brno, Czech Republic.
Department of Neurosciences, UCSD, La Jolla, CA 92093, USA.
Philos Trans R Soc Lond B Biol Sci. 2016 Oct 5;371(1705). doi: 10.1098/rstb.2015.0356.
The computational properties of the human brain arise from an intricate interplay between billions of neurons connected in complex networks. However, our ability to study these networks in healthy human brain is limited by the necessity to use non-invasive technologies. This is in contrast to animal models where a rich, detailed view of cellular-level brain function with cell-type-specific molecular identity has become available due to recent advances in microscopic optical imaging and genetics. Thus, a central challenge facing neuroscience today is leveraging these mechanistic insights from animal studies to accurately draw physiological inferences from non-invasive signals in humans. On the essential path towards this goal is the development of a detailed 'bottom-up' forward model bridging neuronal activity at the level of cell-type-specific populations to non-invasive imaging signals. The general idea is that specific neuronal cell types have identifiable signatures in the way they drive changes in cerebral blood flow, cerebral metabolic rate of O2 (measurable with quantitative functional Magnetic Resonance Imaging), and electrical currents/potentials (measurable with magneto/electroencephalography). This forward model would then provide the 'ground truth' for the development of new tools for tackling the inverse problem-estimation of neuronal activity from multimodal non-invasive imaging data.This article is part of the themed issue 'Interpreting BOLD: a dialogue between cognitive and cellular neuroscience'.
人类大脑的计算特性源于数十亿个神经元在复杂网络中相互连接所产生的复杂相互作用。然而,我们在健康人类大脑中研究这些网络的能力受到使用非侵入性技术的限制。这与动物模型形成对比,在动物模型中,由于微观光学成像和遗传学的最新进展,已经能够获得具有细胞类型特异性分子身份的细胞水平大脑功能的丰富、详细视图。因此,当今神经科学面临的一个核心挑战是利用动物研究中的这些机制性见解,从人类的非侵入性信号中准确得出生理学推论。实现这一目标的关键途径是开发一个详细的“自下而上”正向模型,该模型将细胞类型特异性群体水平的神经元活动与非侵入性成像信号联系起来。一般的想法是,特定的神经元细胞类型在驱动脑血流量变化、脑氧代谢率(可通过定量功能磁共振成像测量)以及电流/电位(可通过磁/脑电图测量)的方式上具有可识别的特征。然后,这个正向模型将为开发用于解决逆问题(即从多模态非侵入性成像数据估计神经元活动)的新工具提供“基本事实”。本文是主题为“解读BOLD:认知神经科学与细胞神经科学之间的对话”的特刊的一部分。