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Deep learning classification of lipid droplets in quantitative phase images
2021
PLoS ONE
We report the application of supervised machine learning to the automated classification of lipid droplets in label-free, quantitative-phase images. By comparing various machine learning methods commonly used in biomedical imaging and remote sensing, we found convolutional neural networks to outperform others, both quantitatively and qualitatively. We describe our imaging approach, all implemented machine learning methods, and their performance with respect to computational efficiency, required
doi:10.1371/journal.pone.0249196
pmid:33819277
pmcid:PMC8021159
fatcat:6y2z2ufffrdn3gwsvvehoyacti