Author:
Dezem Felipe Segato,Marção Maycon,Ben-Cheikh Bassem,Nikulina Nadya,Omotoso Ayodele,Burnett Destiny,Coelho Priscila,Hurley Judith,Gomez Carmen,Phan-Everson Tien,Ong Giang,Martelotto Luciano,Lewis Zachary R.,George Sophia,Braubach Oliver,Malta Tathiane M.,Plummer Jasmine
Abstract
AbstractCell annotation is a crucial methodological component to interpreting single cell and spatial omics data. These approaches were developed for single cell analysis but are often biased, manually curated and yet unproven in spatial omics. Here we apply a stemness model for assessing oncogenic states to single cell and spatial omic cancer datasets. This one-class logistic regression machine learning algorithm is used to extract transcriptomic features from non-transformed stem cells to identify dedifferentiated cell states in tumors. We found this method identifies single cell states in metastatic tumor cell populations without the requirement of cell annotation. This machine learning model identified stem-like cell populations not identified in single cell or spatial transcriptomic analysis using existing methods. For the first time, we demonstrate the application of a ML tool across five emerging spatial transcriptomic and proteomic technologies to identify oncogenic stem-like cell types in the tumor microenvironment.
Funder
Ovarian Cancer Research Alliance
São Paulo Research Foundation
Publisher
Springer Science and Business Media LLC
Cited by
3 articles.
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