Deep learning enabled label-free microfluidic droplet classification for single cell functional assays - Sorbonne Université
Article Dans Une Revue Frontiers in Bioengineering and Biotechnology Année : 2024

Deep learning enabled label-free microfluidic droplet classification for single cell functional assays

Résumé

Droplet-based microfluidics techniques coupled to microscopy allow for the characterization of cells at the single-cell scale. However, such techniques generate substantial amounts of data and microscopy images that must be analyzed. Droplets on these images usually need to be classified depending on the number of cells they contain. This verification, when visually carried out by the experimenter image-per-image, is time-consuming and impractical for analysis of many assays or when an assay yields many putative droplets of interest. Machine learning models have already been developed to classify cell-containing droplets within microscopy images, but not in the context of assays in which non-cellular structures are present inside the droplet in addition to cells. Here we develop a deep learning model using the neural network ResNet-50 that can be applied to functional droplet-based microfluidic assays to classify droplets according to the number of cells they contain with >90% accuracy in a very short time. This model performs high accuracy classification of droplets containing both cells with non-cellular structures and cells alone and can accommodate several different cell types, for generalization to a broader array of droplet-based microfluidics applications.
Fichier principal
Vignette du fichier
fbioe-12-1468738.pdf (1.78 Mo) Télécharger le fichier
Origine Publication financée par une institution
Licence

Dates et versions

pasteur-04703977 , version 1 (20-09-2024)

Licence

Identifiants

Citer

Thibault Vanhoucke, Angga Perima, Lorenzo Zolfanelli, Pierre Bruhns, Matteo Broketa. Deep learning enabled label-free microfluidic droplet classification for single cell functional assays. Frontiers in Bioengineering and Biotechnology, 2024, 12, pp.1468738. ⟨10.3389/fbioe.2024.1468738⟩. ⟨pasteur-04703977⟩
39 Consultations
43 Téléchargements

Altmetric

Partager

More