Enhancer-driven cell type comparison reveals similarities between the mammalian and bird pallium

成果类型:
Article
署名作者:
Hecker, Nikolai; Kempynck, Niklas; Mauduit, David; Abaffyova, Darina; Vandepoel, Roel; Dieltiens, Sam; Borm, Lars; Sarropoulos, Ioannis; Gonzalez-Blas, Carmen Bravo; De Man, Julie; Davie, Kristofer; Leysen, Elke; Vandensteen, Jeroen; Moors, Rani; Hulselmans, Gert; Lim, Lynette; De Wit, Joris; Christiaens, Valerie; Poovathingal, Suresh; Aerts, Stein
署名单位:
Flanders Institute for Biotechnology (VIB); KU Leuven; Ruprecht Karls University Heidelberg; KU Leuven
刊物名称:
SCIENCE
ISSN/ISSBN:
0036-13980
DOI:
10.1126/science.adp3957
发表日期:
2025-02-14
页码:
734-+
关键词:
transcription factors EVOLUTION foxp2 telencephalon expression neocortex platform genome
摘要:
Combinations of transcription factors govern the identity of cell types, which is reflected by genomic enhancer codes. We used deep learning to characterize these enhancer codes and devised three metrics to compare cell types in the telencephalon across amniotes. To this end, we generated single-cell multiome and spatially resolved transcriptomics data of the chicken telencephalon. Enhancer codes of orthologous nonneuronal and gamma-aminobutyric acid-mediated (GABAergic) cell types show a high degree of similarity across amniotes, whereas excitatory neurons of the mammalian neocortex and avian pallium exhibit varying degrees of similarity. Enhancer codes of avian mesopallial neurons are most similar to those of mammalian deep-layer neurons. With this study, we present generally applicable deep learning approaches to characterize and compare cell types on the basis of genomic regulatory sequences.