School of Information and Electronics, Beijing Institute of Technology, Beijing 100081, China.
Cytometry A. 2018 Jun;93(6):628-638. doi: 10.1002/cyto.a.23490. Epub 2018 May 15.
Cell morphology is often used as a proxy measurement of cell status to understand cell physiology. Hence, interpretation of cell dynamic morphology is a meaningful task in biomedical research. Inspired by the recent success of deep learning, we here explore the application of convolutional neural networks (CNNs) to cell dynamic morphology classification. An innovative strategy for the implementation of CNNs is introduced in this study. Mouse lymphocytes were collected to observe the dynamic morphology, and two datasets were thus set up to investigate the performances of CNNs. Considering the installation of deep learning, the classification problem was simplified from video data to image data, and was then solved by CNNs in a self-taught manner with the generated image data. CNNs were separately performed in three installation scenarios and compared with existing methods. Experimental results demonstrated the potential of CNNs in cell dynamic morphology classification, and validated the effectiveness of the proposed strategy. CNNs were successfully applied to the classification problem, and outperformed the existing methods in the classification accuracy. For the installation of CNNs, transfer learning was proved to be a promising scheme. © 2018 International Society for Advancement of Cytometry.
细胞形态通常被用作细胞状态的代理测量指标,以了解细胞生理学。因此,细胞动态形态的解释是生物医学研究中的一项有意义的任务。受深度学习最近成功的启发,我们在这里探索卷积神经网络(CNN)在细胞动态形态分类中的应用。本研究提出了一种实现 CNN 的创新策略。收集了小鼠淋巴细胞以观察动态形态,因此建立了两个数据集来研究 CNN 的性能。考虑到深度学习的安装,分类问题从视频数据简化为图像数据,然后通过生成的图像数据,由 CNN 以自学的方式解决。分别在三个安装场景中执行 CNN,并与现有方法进行比较。实验结果表明 CNN 在细胞动态形态分类中的潜力,并验证了所提出策略的有效性。CNN 成功应用于分类问题,在分类准确性方面优于现有方法。对于 CNN 的安装,迁移学习被证明是一种很有前途的方案。© 2018 国际细胞分析学会。