Cell Representation
Cell representation research focuses on developing effective computational methods to capture the complex characteristics of individual cells from diverse data sources, such as microscopy images and single-cell genomics. Current efforts concentrate on leveraging graph neural networks, variational autoencoders, and other deep learning architectures to learn robust and interpretable cell representations, often incorporating spatial and temporal information or integrating multiple data modalities. These advancements are crucial for improving the accuracy and efficiency of downstream tasks in various fields, including cancer diagnosis, drug discovery, and developmental biology, by enabling more precise analysis of cellular heterogeneity and dynamics.
Papers
Separable-HoverNet and Instance-YOLO for Colon Nuclei Identification and Counting
Chunhui Lin, Liukun Zhang, Lijian Mao, Min Wu, Dong Hu
A Standardized Pipeline for Colon Nuclei Identification and Counting Challenge
Jijun Cheng, Xipeng Pan, Feihu Hou, Bingchao Zhao, Jiatai Lin, Zhenbing Liu, Zaiyi Liu, Chu Han