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Novel Image Processing Method study for a Label-free Optical Biosensor

机译:无标签光学生物传感器的新型图像处理方法研究

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Optical biosensor is generally divided into labeled type and label-free type, the former mainly contains fluorescence-labeled method and radioactive-labeled method, while fluorescence-labeled method is more mature in the application. The mainly image processing methods of fluorescent-labeled biosensor includes smooth filtering, artificial gridding and constant threshold. Since some fluorescent molecules may influence the biological reaction, label-free methods have been the main developing direction of optical biosensors nowadays. The using of wider field of view and larger angle of incidence light path which could effectively improve the sensitivity of the label-free biosensor also brought more difficulties in image processing, comparing with the fluorescent-labeled biosensor. Otsu's method is widely applied in machine vision, etc, which choose the threshold to minimize the intraclass variance of the thresholded black and white pixels. It's capacity-constrained with the asymmetrical distribution of images as a global threshold segmentation. In order to solve the irregularity of light intensity on the transducer, we improved the algorithm. In this paper, we present a new image processing algorithm based on a reflectance modulation biosensor platform, which mainly comprises the design of sliding normalization algorithm for image rectification and utilizing the improved otsu's method for image segmentation, in order to implement automatic recognition of target areas. Finally we used adaptive gridding method extracting the target parameters for analysis. Those methods could improve the efficiency of image processing, reduce human intervention, enhance the reliability of experiments and laid the foundation for the realization of high throughput of label-free optical biosensors.
机译:光学生物传感器一般分为标记型和无标记型,前者主要包括荧光标记法和放射性标记法,而荧光标记法在应用中较为成熟。荧光标记生物传感器的主要图像处理方法包括平滑滤波,人工网格化和恒定阈值。由于某些荧光分子可能会影响生物反应,因此无标记方法已成为当今光学生物传感器的主要发展方向。与荧光标记的生物传感器相比,使用更宽的视野和更大的入射光路径可以有效地提高无标记生物传感器的灵敏度,也给图像处理带来了更多困难。 Otsu的方法广泛应用于机器视觉等领域,其选择阈值以最小化阈值黑白像素的类内差异。作为全局阈值分割,它的容量受到图像的不对称分布的限制。为了解决换能器上光强度的不均匀性,我们对算法进行了改进。本文提出了一种基于反射调制生物传感器平台的图像处理新算法,主要包括滑动归一化算法对图像校正的设计,并利用改进的大津法进行图像分割,以实现目标区域的自动识别。 。最后,我们采用自适应网格化方法提取目标参数进行分析。这些方法可以提高图像处理效率,减少人为干预,提高实验的可靠性,为实现无标签光学生物传感器的高通量奠定了基础。

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