Neuroinformatics department, Donders Centre for Neuroscience, Radboud University Nijmegen, Heyendaalseweg 135, 6525AJ, Nijmegen, The Netherlands.
Department of Cognitive Neuroscience, Radboud University Medical Centre, Kapittelweg 29, 6525EN, Nijmegen, The Netherlands.
Neuroinformatics. 2021 Oct;19(4):649-667. doi: 10.1007/s12021-021-09511-0. Epub 2021 Mar 11.
Finding links between genes and structural connectivity is of the utmost importance for unravelling the underlying mechanism of the brain connectome. In this study we identify links between the gene expression and the axonal projection density in the mouse brain, by applying a modified version of the Linked ICA method to volumetric data from the Allen Institute for Brain Science for identifying independent sources of information that link both modalities at the voxel level. We performed separate analyses on sets of projections from the visual cortex, the caudoputamen and the midbrain reticular nucleus, and we determined those brain areas, injections and genes that were most involved in independent components that link both gene expression and projection density data, while we validated their biological context through enrichment analysis. We identified representative and literature-validated cortico-midbrain and cortico-striatal projections, whose gene subsets were enriched with annotations for neuronal and synaptic function and related developmental and metabolic processes. The results were highly reproducible when including all available projections, as well as consistent with factorisations obtained using the Dictionary Learning and Sparse Coding technique. Hence, Linked ICA yielded reproducible independent components that were preserved under increasing data variance. Taken together, we have developed and validated a novel paradigm for linking gene expression and structural projection patterns in the mouse mesoconnectome, which can power future studies aiming to relate genes to brain function.
发现基因和结构连接之间的联系对于揭示大脑连接组的潜在机制至关重要。在这项研究中,我们通过应用一种经过修改的 Linked ICA 方法,将艾伦脑科学研究所的容积数据应用于基因表达和轴突投射密度之间的联系,以确定在体素水平上链接两种模态的独立信息源。我们分别对来自视觉皮层、尾壳核和中脑网状核的投射集进行了分析,并确定了那些最参与连接基因表达和投射密度数据的独立成分的大脑区域、注射部位和基因,同时通过富集分析验证了它们的生物学背景。我们确定了代表性的和文献验证的皮质-中脑和皮质-纹状体投射,其基因子集富集了神经元和突触功能以及相关发育和代谢过程的注释。当包括所有可用的投射时,结果具有高度的可重复性,并且与使用字典学习和稀疏编码技术获得的因子分解结果一致。因此,Linked ICA 产生了可重复的独立成分,在数据方差增加的情况下仍然存在。总之,我们开发并验证了一种在小鼠中脑连接组中连接基因表达和结构投射模式的新范例,这可以为未来旨在将基因与大脑功能联系起来的研究提供动力。