Yuan Pengyu, Rezvan Ali, Li Xiaoyang, Varadarajan Navin, Van Nguyen Hien
Department of Electrical and Computer Engineering, Cullen College of Engineering, University of Houston, Houston, TX 77004, USA.
Department of Chemical and Biomolecular Engineering, Cullen College of Engineering, University of Houston, Houston, TX 77004, USA.
J Clin Med. 2019 Aug 2;8(8):1159. doi: 10.3390/jcm8081159.
Time lapse microscopy is essential for quantifying the dynamics of cells, subcellular organelles and biomolecules. Biologists use different fluorescent tags to label and track the subcellular structures and biomolecules within cells. However, not all of them are compatible with time lapse imaging, and the labeling itself can perturb the cells in undesirable ways. We hypothesized that phase image has the requisite information to identify and track nuclei within cells. By utilizing both traditional blob detection to generate binary mask labels from the stained channel images and the deep learning Mask RCNN model to train a detection and segmentation model, we managed to segment nuclei based only on phase images. The detection average precision is 0.82 when the IoU threshold is to be set 0.5. And the mean IoU for masks generated from phase images and ground truth masks from experts is 0.735. Without any ground truth mask labels during the training time, this is good enough to prove our hypothesis. This result enables the ability to detect nuclei without the need for exogenous labeling.
延时显微镜对于量化细胞、亚细胞器和生物分子的动态至关重要。生物学家使用不同的荧光标签来标记和追踪细胞内的亚细胞结构和生物分子。然而,并非所有这些标签都与延时成像兼容,而且标记本身可能会以不良方式干扰细胞。我们假设相位图像具有识别和追踪细胞内核的必要信息。通过利用传统的斑点检测从染色通道图像生成二值掩码标签,并使用深度学习Mask RCNN模型训练检测和分割模型,我们成功仅基于相位图像分割细胞核。当交并比(IoU)阈值设置为0.5时,检测平均精度为0.82。从相位图像生成的掩码与专家提供的真实掩码之间的平均交并比为0.735。在训练期间没有任何真实掩码标签的情况下,这足以证明我们的假设。这一结果使得无需外源标记就能检测细胞核。