A fully automated deep learning pipeline for high-throughput colony segmentation and classification
Author(s) -
Sarah H. Carl,
Lea Duempelmann,
Yukiko Shimada,
Marc Bühler
Publication year - 2020
Publication title -
biology open
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.936
H-Index - 41
ISSN - 2046-6390
DOI - 10.1242/bio.052936
Subject(s) - biology , pipeline (software) , segmentation , throughput , artificial intelligence , computational biology , machine learning , computer science , operating system , wireless
Adenine auxotrophy is a commonly used non-selective genetic marker in yeast research. It allows investigators to easily visualize and quantify various genetic and epigenetic events by simply reading out colony color. However, manual counting of large numbers of colonies is extremely time-consuming, difficult to reproduce and possibly inaccurate. Using cutting-edge neural networks, we have developed a fully automated pipeline for colony segmentation and classification, which speeds up white/red colony quantification 100-fold over manual counting by an experienced researcher. Our approach uses readily available training data and can be smoothly integrated into existing protocols, vastly speeding up screening assays and increasing the statistical power of experiments that employ adenine auxotrophy.
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