Cell Image
Cell image analysis focuses on extracting meaningful information from microscopic images of cells, primarily for biomedical research and diagnostics. Current research emphasizes developing robust and efficient algorithms, often leveraging deep learning architectures like transformers, U-Nets, and GANs, to address challenges such as cell segmentation, tracking, and classification across diverse imaging modalities and conditions. These advancements are crucial for high-throughput screening, automated analysis of large datasets, and improved accuracy in diagnosing diseases based on cellular morphology and behavior. Furthermore, active learning and data augmentation techniques are being explored to reduce the reliance on extensive manual annotation, making these powerful tools more accessible.
Papers
Self-supervised Representation Learning for Cell Event Recognition through Time Arrow Prediction
Cangxiong Chen, Vinay P. Namboodiri, Julia E. Sero
EAP4EMSIG -- Experiment Automation Pipeline for Event-Driven Microscopy to Smart Microfluidic Single-Cells Analysis
Nils Friederich, Angelo Jovin Yamachui Sitcheu, Annika Nassal, Matthias Pesch, Erenus Yildiz, Maximilian Beichter, Lukas Scholtes, Bahar Akbaba, Thomas Lautenschlager, Oliver Neumann, Dietrich Kohlheyer, Hanno Scharr, Johannes Seiffarth, Katharina Nöh, Ralf Mikut