Department of Computer Science, Missouri University of Science and Technology, United States.
Med Image Anal. 2012 Jul;16(5):1047-62. doi: 10.1016/j.media.2011.12.006. Epub 2012 Feb 3.
Phase contrast, a noninvasive microscopy imaging technique, is widely used to capture time-lapse images to monitor the behavior of transparent cells without staining or altering them. Due to the optical principle, phase contrast microscopy images contain artifacts such as the halo and shade-off that hinder image segmentation, a critical step in automated microscopy image analysis. Rather than treating phase contrast microscopy images as general natural images and applying generic image processing techniques on them, we propose to study the optical properties of the phase contrast microscope to model its image formation process. The phase contrast imaging system can be approximated by a linear imaging model. Based on this model and input image properties, we formulate a regularized quadratic cost function to restore artifact-free phase contrast images that directly correspond to the specimen's optical path length. With artifacts removed, high quality segmentation can be achieved by simply thresholding the restored images. The imaging model and restoration method are quantitatively evaluated on microscopy image sequences with thousands of cells captured over several days. We also demonstrate that accurate restoration lays the foundation for high performance in cell detection and tracking.
相衬,一种非侵入性的显微镜成像技术,被广泛用于捕获延时图像,以监测透明细胞的行为,而无需对其进行染色或改变。由于光学原理,相衬显微镜图像包含晕影和阴影等伪影,这些伪影会妨碍图像分割,而图像分割是自动化显微镜图像分析的关键步骤。我们不是将相衬显微镜图像视为一般的自然图像,并对其应用通用的图像处理技术,而是提出研究相衬显微镜的光学特性,以对其成像过程进行建模。相衬成像系统可以用线性成像模型来近似。基于这个模型和输入图像的特性,我们提出了一个正则化二次代价函数,以恢复无伪影的相衬图像,这些图像直接对应于标本的光程。去除伪影后,通过简单地对恢复后的图像进行阈值处理,就可以实现高质量的分割。我们在经过数天拍摄的数千个细胞的显微镜图像序列上对成像模型和恢复方法进行了定量评估。我们还证明了准确的恢复为细胞检测和跟踪的高性能奠定了基础。