University of Waterloo, Department of Mechanical and Mechatronics Engineering, Waterloo, Ontario, N2L 3G1, Canada.
J Biomed Opt. 2011 Jun;16(6):066008. doi: 10.1117/1.3589100.
The study of yeast cell morphology requires consistent identification of cell cycle phases based on cell bud size. A computer-based image processing algorithm is designed to automatically classify microscopic images of yeast cells in a microfluidic channel environment. The images were enhanced to reduce background noise, and a robust segmentation algorithm is developed to extract geometrical features including compactness, axis ratio, and bud size. The features are then used for classification, and the accuracy of various machine-learning classifiers is compared. The linear support vector machine, distance-based classification, and k-nearest-neighbor algorithm were the classifiers used in this experiment. The performance of the system under various illumination and focusing conditions were also tested. The results suggest it is possible to automatically classify yeast cells based on their morphological characteristics with noisy and low-contrast images.
酵母细胞形态的研究需要根据细胞芽大小一致地识别细胞周期阶段。设计了一种基于计算机的图像处理算法,以自动对微流控通道环境中的酵母细胞的微观图像进行分类。对图像进行增强以减少背景噪声,并开发了强大的分割算法来提取包括紧凑度、轴比和芽大小在内的几何特征。然后使用这些特征进行分类,并比较了各种机器学习分类器的准确性。在本实验中使用的分类器是线性支持向量机、基于距离的分类和 k-最近邻算法。还测试了系统在各种光照和聚焦条件下的性能。结果表明,有可能根据带有噪声和低对比度的图像自动对酵母细胞进行分类。