Extracting regions of lipid droplets from confocal microscopy images utilizing optical properties of oleaginous yeast

IF 4.3 3区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Ryosuke Harakawa, Yuki Imai, Yuka Takahashi, Seiya Ueda, Hiromi Shoji, Ayaka Itani, Akihiro Nakamura, Yosuke Shida, Wataru Ogasawara, Masahiro Iwahashi
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引用次数: 0

Abstract

Non-invasive methods for observing the morphology of living oleaginous yeast are ideal for optimizing the production of various oils, such as food oils, oleochemicals, and biodiesel, from oleaginous yeast. However, existing methods have been developed to target budding yeast without high oil production ability and extract regions of entire cells. This study is the first to target oleaginous yeast, namely, Lipomyces starkeyi, demonstrating a method for extracting regions of L. starkeyi directly influencing oil production through the unique optical properties of L. starkeyi. Specifically, we exploited changes in the brightness along the z-stack depth of multiple z-stack images obtained using confocal microscopy. Because this brightness change was unique to lipid droplets, pixels corresponding to lipid droplets were easily identified, allowing calculations of the parameters of visual features. The obtained parameters of visual features were then used as input for a semantic segmentation algorithm to accurately distinguish lipid droplets from other organelles, including organelles similar to lipid droplets in shape. Experimental results showed that our method successfully estimated the growth status of L. starkeyi, which, to date, is obtainable through invasive biochemical methods only. Moreover, our method non-invasively determined the shape of each yeast cell over the cultivation period to enable single-cell analysis, which has not been achieved with conventional biochemical methods.

\(\bullet \) We propose a method to extract regions of L. starkeyi influencing oil production.

\(\bullet \) Our method requires only confocal microscopy images and is completely non-invasive.

\(\bullet \) Our method estimated the growth status of L. starkeyi to enable single-cell analysis.

利用产油酵母的光学特性从共聚焦显微镜图像中提取脂滴区域
观察活产油酵母形态的非侵入性方法是优化产油酵母生产各种油(如食用油、油脂化学品和生物柴油)的理想方法。然而,现有的方法已经发展到针对芽殖酵母没有高产油能力和提取整个细胞的区域。本研究首次以产油酵母为目标,即脂肪菌starkeyi,展示了一种通过L. starkeyi独特的光学特性提取L. starkeyi直接影响产油的区域的方法。具体来说,我们利用共聚焦显微镜获得的多个z堆叠图像沿z堆叠深度的亮度变化。由于这种亮度变化是脂滴所特有的,因此很容易识别与脂滴对应的像素,从而可以计算视觉特征的参数。然后将获得的视觉特征参数作为语义分割算法的输入,以准确区分脂滴与其他细胞器,包括形状与脂滴相似的细胞器。实验结果表明,我们的方法成功地估计了L. starkeyi的生长状态,迄今为止,只有通过侵入性生化方法才能获得。此外,我们的方法在培养期间无创地确定每个酵母细胞的形状,以实现单细胞分析,这是传统生化方法无法实现的。\(\bullet \)我们提出了一种方法来提取L. starkeyi影响石油产量的区域。\(\bullet \)我们的方法只需要共聚焦显微镜图像,是完全无创的。\(\bullet \)我们的方法估计了L. starkeyi的生长状态,以便进行单细胞分析。
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来源期刊
Applied Microbiology and Biotechnology
Applied Microbiology and Biotechnology 工程技术-生物工程与应用微生物
CiteScore
10.00
自引率
4.00%
发文量
535
审稿时长
2 months
期刊介绍: Applied Microbiology and Biotechnology focusses on prokaryotic or eukaryotic cells, relevant enzymes and proteins; applied genetics and molecular biotechnology; genomics and proteomics; applied microbial and cell physiology; environmental biotechnology; process and products and more. The journal welcomes full-length papers and mini-reviews of new and emerging products, processes and technologies.
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