Spatial transcriptomics (ST) combines stained tissue images with spatially resolved high-throughput RNA sequencing. The spatial transcriptomic analysis includes challenging tasks like clustering, where a partition among data points (spots) is defined by means of a similarity measure. Improving clustering results is a key factor as clustering affects subsequent downstream analysis. State-of-the-art approaches group data by taking into account transcriptional similarity and some by exploiting spatial information as well. However, it is not yet clear how much the spatial information combined with transcriptomics improves the clustering result.
Stardust: improving spatial transcriptomics data analysis through space-aware modularity optimization-based clustering / Avesani, S.; Viesi, E.; Alessandri, L.; Motterle, G.; Bonnici, V.; Beccuti, M.; Calogero, R.; Giugno, R.. - In: GIGASCIENCE. - ISSN 2047-217X. - 11:(2022). [10.1093/gigascience/giac075]
Stardust: improving spatial transcriptomics data analysis through space-aware modularity optimization-based clustering
Viesi E.Methodology
;Alessandri L.Methodology
;Bonnici V.Methodology
;
2022-01-01
Abstract
Spatial transcriptomics (ST) combines stained tissue images with spatially resolved high-throughput RNA sequencing. The spatial transcriptomic analysis includes challenging tasks like clustering, where a partition among data points (spots) is defined by means of a similarity measure. Improving clustering results is a key factor as clustering affects subsequent downstream analysis. State-of-the-art approaches group data by taking into account transcriptional similarity and some by exploiting spatial information as well. However, it is not yet clear how much the spatial information combined with transcriptomics improves the clustering result.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.