Ye Guochang, Kaya Mehmet
Department of Biomedical and Chemical Engineering and Sciences, Florida Institute of Technology, 150 W University Blvd, Melbourne, FL 32901, USA.
Bioengineering (Basel). 2022 Feb 18;9(2):81. doi: 10.3390/bioengineering9020081.
Cell segmentation is a critical step for image-based experimental analysis. Existing cell segmentation methods are neither entirely automated nor perform well under basic laboratory microscopy. This study proposes an efficient and automated cell segmentation method involving morphological operations to automatically achieve cell segmentation for phase-contrast microscopes. Manual/visual counting of cell segmentation serves as the control group (156 images as ground truth) to evaluate the proposed method's performance. The proposed technology's adaptive performance is assessed at varying conditions, including artificial blurriness, illumination, and image size. Compared to the Trainable Weka Segmentation method, the Empirical Gradient Threshold method, and the ilastik segmentation software, the proposed method achieved better segmentation accuracy (dice coefficient: 90.07, IoU: 82.16%, and 6.51% as the average relative error on measuring cell area). The proposed method also has good reliability, even under unfavored imaging conditions at which manual labeling or human intervention is inefficient. Additionally, similar degrees of segmentation accuracy were confirmed when the ground truth data and the generated data from the proposed method were applied individually to train modified U-Net models (16848 images). These results demonstrated good accuracy and high practicality of the proposed cell segmentation method with phase-contrast microscopy image data.
细胞分割是基于图像的实验分析的关键步骤。现有的细胞分割方法既不是完全自动化的,在基础实验室显微镜下的表现也不佳。本研究提出了一种高效的自动化细胞分割方法,该方法涉及形态学操作,可自动实现相衬显微镜下的细胞分割。细胞分割的手动/视觉计数作为对照组(156张图像作为真值)来评估所提出方法的性能。在所提出技术的自适应性能在不同条件下进行评估,包括人工模糊、光照和图像大小。与可训练的Weka分割方法、经验梯度阈值方法和ilastik分割软件相比,所提出的方法实现了更好的分割精度(骰子系数:90.07,交并比:82.16%,测量细胞面积时的平均相对误差为6.51%)。所提出的方法即使在手动标记或人工干预效率低下的不利成像条件下也具有良好的可靠性。此外,当真值数据和所提出方法生成的数据分别应用于训练改进的U-Net模型(16848张图像)时,确认了相似程度的分割精度。这些结果证明了所提出的相衬显微镜图像数据细胞分割方法具有良好的准确性和高度的实用性。