END-TO-END CLASSIFICATION OF CELL-CYCLE STAGES WITH CENTER-CELL FOCUS TRACKER USING RECURRENT NEURAL NETWORKS
Abin Jose (RWTH); Rijo Roy (RWTH Aachen); Dennis Eschweiler (RWTH Aachen University); Ina Laube (Lehrstuhl für Bildverarbeitung, RWTH Aachen); reza azad (rwth); Daniel Moreno-Andreas (RWTH Aachen University); Johannes Stegmaier (RWTH Aachen University)
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Cell division, or mitosis, guarantees the accurate inheritance of the
genomic information kept in the cell nucleus. Malfunctions in this
process cause a threat to the health and life of the organism, in-
cluding cancer and other manifold diseases. It is therefore crucial
to study in detail the cell-cycle in general and mitosis in particu-
lar. Consequently, a large number of manual and semi-automated
time-lapse microscopy image analyses of mitosis have been carried
out in recent years. In this paper, we propose a method for auto-
matic detection of cell-cycle stages using a recurrent neural network
(RNN). An end-to-end model with center-cell focus tracker loss, and
classification loss is trained. The evaluation was conducted on two
time-series datasets, with 6-stages and 3-stages of cell splitting la-
beled. The frame-to-frame accuracy was calculated and precision,
recall, and F1-Score were measured for each cell-cycle stage. We
also visualized the learned feature space. Image reconstruction from
the center-cell focus module was performed which shows that the
network was able to focus on the center-cell and classify it simulta-
neously. Our experiments validate the superior performance of the
proposed network compared to a classifier baseline.