Mother-bud detection and classification in yeast cells
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Abstrakt
In different organisms, asymmetric cell division is a conserved process in which asymmetric
inheritance of cellular components gives rise to two cells with different characteristics. In
budding yeast, Saccharomyces cerevisiae, after the asymmetric cell division two cells are
generated: mother and daughter. Fluorescence microscopy has been widely used to study
such microorganisms and hence study the process of cell division. Advances in microscopy
have increased output data volumes, making the manual processing of such images
expensive. Therefore, developing a pipeline to analyze microscopy images coming from
screening experiments would have a high practical impact. In this work, we built a
deep-learning-based pipeline for detecting budding (dividing) yeast cells and distinguishing
bud from mother cells during yeast division. The final goal is to study if older proteins are
being retained on the mother side and whether newly synthesized proteins are inherited
towards the bud. The results show that the pipeline was able to detect the cells that are about
to divide with an accuracy of 70.42%. Furthermore, 87.72% of the mothers and buds were
accurately classified.
Kirjeldus
Märksõnad
deep learning, neural networks, fluorescence microscopy, yeast cells segmentation, mother-bud detection