测量浮游植物图像中的细胞

M. Mirto, Laura Conte, G. Aloisio, C. Distante, Pietro Vecchio, Alessandra De Giovanni
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引用次数: 0

摘要

浮游植物是决定过渡性水体生态系统生态状况的质量要素。在常规分析中,浮游植物的生物体积和表面积是研究最多的形态计量描述因子。生物体积可以通过比较具有相似三维几何形状的藻类并确定它们的体积来估计,通过测量其计算所需的线性尺寸,并使用反向显微镜获得图像。LUCIA-G(实验室成像)等软件仅自动确定给定藻类近似的简单形状(如圆形或椭圆形)的线性尺寸,而复杂形状则需要操作员通过选择线性尺寸的起点和终点进行干预,这显然会引入人为误差。在本文中,我们提出了一种检测浮游植物藻类的新方法,通过测量42种几何形式的线性尺寸来自动计算它们的面积和生物体积,该方法已在一种名为LUISA的新型软件中实现,用于图像分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measuring cells in phytoplankton images
Phytoplankton is a quality element for determining the ecological status of transitional water ecosystems. In routine analysis, bio-volume and surface area of phytoplankton are the most studied morphometric descriptors. Bio-volume can be estimated by comparing the algae with similar three-dimensional geometric forms and determining their volume, by measuring the linear dimensions required for its calculation with images acquired by an inverse microscope. Software such as LUCIA-G (Laboratory Imaging) determines, in an automatic way, only the linear dimensions of simple forms such as circle or ellipse, approximated at a given algae, whereas complex forms require the intervention of an operator by selecting the start and end points of linear dimensions with obvious introduction of human error. In this paper, we propose a novel methodology for detecting phytoplankton algae and by measuring linear dimensions of 42 geometrical forms to automatically compute their area and bio-volume, that has been implemented in a novel software, named LUISA, for image analysis.
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