| Literature DB >> 35356158 |
Rohan Gala1, Agata Budzillo1, Fahimeh Baftizadeh1, Jeremy Miller1, Nathan Gouwens1, Anton Arkhipov1, Gabe Murphy1, Bosiljka Tasic1, Hongkui Zeng1, Michael Hawrylycz1, Uygar Sümbül1.
Abstract
Consistent identification of neurons in different experimental modalities is a key problem in neuroscience. Although methods to perform multimodal measurements in the same set of single neurons have become available, parsing complex relationships across different modalities to uncover neuronal identity is a growing challenge. Here we present an optimization framework to learn coordinated representations of multimodal data and apply it to a large multimodal dataset profiling mouse cortical interneurons. Our approach reveals strong alignment between transcriptomic and electrophysiological characterizations, enables accurate cross-modal data prediction, and identifies cell types that are consistent across modalities.Entities:
Year: 2021 PMID: 35356158 PMCID: PMC8963134 DOI: 10.1038/s43588-021-00030-1
Source DB: PubMed Journal: Nat Comput Sci ISSN: 2662-8457