Ontology highlight
ABSTRACT:
SUBMITTER: Bailly R
PROVIDER: S-EPMC11350042 | biostudies-literature | 2024 Mar
REPOSITORIES: biostudies-literature

Bailly Romain R Malfante Marielle M Allier Cédric C Paviolo Chiara C Ghenim Lamya L Padmanabhan Kiran K Bardin Sabine S Mars Jérôme J
Scientific reports 20240325 1
The prediction of pathological changes on single cell behaviour is a challenging task for deep learning models. Indeed, in self-supervised learning methods, no prior labels are used for the training and all of the information for event predictions are extracted from the data themselves. We present here a novel self-supervised learning model for the detection of anomalies in a given cell population, StArDusTS. Cells are monitored over time, and analysed to extract time-series of dry mass values. ...[more]