研究目的
To review the application of deep learning in microscopy image data of cells and tissue samples, highlighting key concepts, challenges, and limitations.
研究成果
Deep learning has shown great potential in image cytometry, offering advantages over classical methods in feature extraction and classification. However, challenges remain in terms of data requirements, computational resources, and model interpretability. Future research should focus on addressing these challenges to fully leverage deep learning in image cytometry.
研究不足
The review highlights challenges such as the need for large annotated datasets, computational resources, and the interpretability of deep learning models. It also discusses the limitations of current methods in terms of generalizability and the difficulty in understanding the basis of decisions made by deep neural networks.