Li Chenxi, Ma Xiaoyu, Deng Jing, Li Jiajia, Liu Yanjie, Zhu Xudong, Liu Jin, Zhang Ping
Beijing Key Laboratory of Genetic Engineering Drug and Biotechnology College of Life Sciences Beijing Normal University Beijing P. R. China.
Beijing Key Laboratory of Gene Resources and Molecular Development College of Life Sciences Beijing Normal University Beijing P. R. China.
Eng Life Sci. 2021 Aug 22;21(11):769-777. doi: 10.1002/elsc.202100055. eCollection 2021 Nov.
Measuring the concentration and viability of fungal cells is an important and fundamental procedure in scientific research and industrial fermentation. In consideration of the drawbacks of manual cell counting, large quantities of fungal cells require methods that provide easy, objective and reproducible high-throughput calculations, especially for samples in complicated backgrounds. To answer this challenge, we explored and developed an easy-to-use fungal cell counting pipeline that combined the machine learning-based ilastik tool with the freeware ImageJ, as well as a conventional photomicroscope. Briefly, learning from labels provided by the user, ilastik performs segmentation and classification automatically in batch processing mode and thus discriminates fungal cells from complex backgrounds. The files processed through ilastik can be recognized by ImageJ, which can compute the numeric results with the macro 'Fungal Cell Counter'. Taking the yeast and the filamentous fungus as examples, we observed that the customizable software algorithm reduced inter-operator errors significantly and achieved accurate and objective results, while manual counting with a haemocytometer exhibited some errors between repeats and required more time. In summary, a convenient, rapid, reproducible and extremely low-cost method to count yeast cells and fungal spores is described here, which can be applied to multiple kinds of eucaryotic microorganisms in genetics, cell biology and industrial fermentation.
测量真菌细胞的浓度和活力是科学研究和工业发酵中一项重要的基础程序。考虑到手动细胞计数的缺点,对于大量真菌细胞而言,需要能够提供简便、客观且可重复的高通量计算方法,尤其是针对背景复杂的样本。为应对这一挑战,我们探索并开发了一种易于使用的真菌细胞计数流程,该流程将基于机器学习的ilastik工具与免费软件ImageJ以及传统光学显微镜相结合。简而言之,ilastik通过学习用户提供的标签,在批处理模式下自动执行分割和分类,从而将真菌细胞与复杂背景区分开来。经过ilastik处理的文件可被ImageJ识别,ImageJ可以使用宏“真菌细胞计数器”计算数值结果。以酵母和丝状真菌为例,我们观察到可定制的软件算法显著减少了操作人员之间的误差,并获得了准确客观的结果,而使用血细胞计数器进行手动计数在重复操作时会出现一些误差,且需要更多时间。总之,本文描述了一种便捷、快速、可重复且成本极低的酵母细胞和真菌孢子计数方法,该方法可应用于遗传学、细胞生物学和工业发酵中的多种真核微生物。