Department of Biomedical Engineering, Johns Hopkins University, Baltimore, United States.
Department of Biostatistics, Johns Hopkins University, Baltimore, United States.
Elife. 2023 Mar 28;12:e83739. doi: 10.7554/eLife.83739.
Comparing connectomes can help explain how neural connectivity is related to genetics, disease, development, learning, and behavior. However, making statistical inferences about the significance and nature of differences between two networks is an open problem, and such analysis has not been extensively applied to nanoscale connectomes. Here, we investigate this problem via a case study on the bilateral symmetry of a larval brain connectome. We translate notions of 'bilateral symmetry' to generative models of the network structure of the left and right hemispheres, allowing us to test and refine our understanding of symmetry. We find significant differences in connection probabilities both across the entire left and right networks and between specific cell types. By rescaling connection probabilities or removing certain edges based on weight, we also present adjusted definitions of bilateral symmetry exhibited by this connectome. This work shows how statistical inferences from networks can inform the study of connectomes, facilitating future comparisons of neural structures.
比较连接组可以帮助解释神经连接如何与遗传、疾病、发育、学习和行为相关。然而,对两个网络之间的差异的显著性和性质进行统计推断是一个悬而未决的问题,这种分析尚未广泛应用于纳米尺度的连接组。在这里,我们通过对幼虫大脑连接组的双侧对称性的案例研究来研究这个问题。我们将“双侧对称性”的概念转化为左右半球网络结构的生成模型,使我们能够测试和完善我们对对称性的理解。我们发现整个左、右网络以及特定细胞类型之间的连接概率存在显著差异。通过对连接概率进行缩放或根据权重删除某些边,我们还提出了这个连接组表现出的双侧对称性的调整定义。这项工作展示了如何从网络中进行统计推断,为连接组的研究提供信息,从而促进未来对神经结构的比较。