A Matlab-Based Approach for Estimating the Area Taken Up by Cells Attached to Micropatterned Optically Opaque Surfaces

Y. Dekhtyar, Hermanis Sorokins, Sabīne Teifurova
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Abstract

Abstract Cell attachment is of paramount importance in implant design, bioreactor design, tissue engineering and the design of non-fouling surfaces. Surface roughness is a significant factor that affects cell attachment. To explore the impact of roughness characteristics, micromachining approaches can be used to fabricate surfaces with controlled microscale topography. When optical microscopy is employed to study cell attachment to optically opaque micropatterned surfaces, one needs to separate the area of an image coated with cells from the background. Manual cell counting can be used to assess the amount of attached cells. However, this process is very time consuming, when the studied surface is larger than several square millimeters. This paper describes an approach for the automatic estimation of the area of cells attached to the surfaces of micro-patterned optically opaque platforms. Saccharomyces cerevisiae yeast cells were used to test the developed approach. The approach uses image registration and segmentation tools available in MathWorks MATLAB R2020b Image Processing Toolbox. The factors that affect the accuracy of the developed approach (magnification, contrast and focus) as well as the ways of improving the results are discussed.
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一种基于matlab的估算微图纹光学不透明表面附着细胞面积的方法
细胞附着在植入体设计、生物反应器设计、组织工程和无污垢表面设计中具有至关重要的意义。表面粗糙度是影响细胞附着的重要因素。为了探索粗糙度特性的影响,可以使用微加工方法来制造具有可控微尺度形貌的表面。当使用光学显微镜来研究细胞附着在光学不透明的微图案表面时,需要将被细胞覆盖的图像区域与背景分开。手动细胞计数可用于评估附着细胞的数量。然而,当所研究的表面大于几平方毫米时,这个过程非常耗时。本文描述了一种自动估计微图纹光学不透明平台表面附着细胞面积的方法。用酿酒酵母细胞对所开发的方法进行了测试。该方法使用MathWorks MATLAB R2020b图像处理工具箱中提供的图像配准和分割工具。讨论了影响该方法精度的因素(放大倍数、对比度和焦距)以及改进方法。
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
61
审稿时长
20 weeks
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