| Literature DB >> 25449901 |
Ahmed Mahfouz1, Martijn van de Giessen1, Laurens van der Maaten1, Sjoerd Huisman1, Marcel Reinders2, Michael J Hawrylycz3, Boudewijn P F Lelieveldt4.
Abstract
The Allen Brain Atlases enable the study of spatially resolved, genome-wide gene expression patterns across the mammalian brain. Several explorative studies have applied linear dimensionality reduction methods such as Principal Component Analysis (PCA) and classical Multi-Dimensional Scaling (cMDS) to gain insight into the spatial organization of these expression patterns. In this paper, we describe a non-linear embedding technique called Barnes-Hut Stochastic Neighbor Embedding (BH-SNE) that emphasizes the local similarity structure of high-dimensional data points. By applying BH-SNE to the gene expression data from the Allen Brain Atlases, we demonstrate the consistency of the 2D, non-linear embedding of the sagittal and coronal mouse brain atlases, and across 6 human brains. In addition, we quantitatively show that BH-SNE maps are superior in their separation of neuroanatomical regions in comparison to PCA and cMDS. Finally, we assess the effect of higher-order principal components on the global structure of the BH-SNE similarity maps. Based on our observations, we conclude that BH-SNE maps with or without prior dimensionality reduction (based on PCA) provide comprehensive and intuitive insights in both the local and global spatial transcriptome structure of the human and mouse Allen Brain Atlases.Entities:
Keywords: Allen Brain Atlas; Brain transcriptome structure; Dimensionality reduction; Spatial-mapped gene expression; Stochastic Neighbor Embedding
Mesh:
Year: 2014 PMID: 25449901 DOI: 10.1016/j.ymeth.2014.10.004
Source DB: PubMed Journal: Methods ISSN: 1046-2023 Impact factor: 3.608