Lambert Théo, Niknejad Hamid Reza, Kil Dries, Montaldo Gabriel, Nuttin Bart, Brunner Clément, Urban Alan
Neuro-Electronics Research Flanders, Leuven 3000, Belgium.
VIB, Leuven 3000, Belgium.
eNeuro. 2025 Feb 26;12(2). doi: 10.1523/ENEURO.0438-24.2025. Print 2025 Feb.
Functional ultrasound (fUS) imaging is a well-established neuroimaging technology that offers high spatiotemporal resolution and a large field of view. Typical strategies for analyzing fUS data comprise either region-based averaging, typically based on reference atlases, or correlation with experimental events. Nevertheless, these methodologies possess several inherent limitations, including a restricted utilization of the spatial dimension and a pronounced bias influenced by preconceived notions about the recorded activity. In this study, we put forth single-voxel clustering as a third method to address these issues. A comparison was conducted between the three strategies on a typical dataset comprising visually evoked activity in the superior colliculus in awake mice. The application of single-voxel clustering yielded the generation of detailed activity maps, which revealed a consistent layout of activity and a clear separation between hemodynamic responses. This method is best considered as a complement to region-based averaging and correlation. It has direct applicability to challenging contexts, such as paradigm-free analysis on behaving subjects and brain decoding.
功能超声(fUS)成像是一种成熟的神经成像技术,具有高时空分辨率和大视野。分析fUS数据的典型策略包括基于区域的平均法(通常基于参考图谱)或与实验事件的相关性分析。然而,这些方法存在一些固有局限性,包括对空间维度的利用受限以及受对记录活动的先入为主观念影响而产生的明显偏差。在本研究中,我们提出单个体素聚类作为解决这些问题的第三种方法。在一个包含清醒小鼠上丘视觉诱发活动的典型数据集上,对这三种策略进行了比较。单个体素聚类的应用产生了详细的活动图,揭示了活动的一致布局以及血流动力学反应之间的清晰分离。该方法最好被视为基于区域的平均法和相关性分析的补充。它直接适用于具有挑战性的情况,例如对行为主体的无范式分析和脑解码。