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Joint pre-processing framework for two-dimensional gel electrophoresis images based on nonlinear filtering, background correction and normalization techniques

机译:基于非线性滤波,背景校正和归一化技术的二维凝胶电泳图像的联合预处理框架

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Two-dimensional gel electrophoresis (2-DGE) is a commonly used tool for proteomic analysis. This gel-based technique separates proteins in a sample according to their isoelectric point and molecular weight. 2-DGE images often present anomalies due to the acquisition process, such as: diffuse and overlapping spots, and background noise. This study proposes a joint pre-processing framework that combines the capabilities of nonlinear filtering, background correction and image normalization techniques for pre-processing 2-DGE images. Among the most important, joint nonlinear diffusion filtering, adaptive piecewise histogram equalization and multilevel thresholding were evaluated using both synthetic data and real 2-DGE images. An improvement of up to 46% in spot detection efficiency was achieved for synthetic data using the proposed framework compared to implementing a single technique of either normalization, background correction or filtering. Additionally, the proposed framework increased the detection of low abundance spots by 20% for synthetic data compared to a normalization technique, and increased the background estimation by 67% compared to a background correction technique. In terms of real data, the joint pre-processing framework reduced the false positives up to 93%. The proposed joint pre-processing framework outperforms results achieved with a single approach. The best structure was obtained with the ordered combination of adaptive piecewise histogram equalization for image normalization, geometric nonlinear diffusion (GNDF) for filtering, and multilevel thresholding for background correction.
机译:二维凝胶电泳(2-DGE)是常用工具的蛋白质组学分析。这种基于凝胶的技术根据其等电点和分子量分离样品中的蛋白质。由于采集过程,2-DGE图像通常存在异常,例如:漫反射和重叠的斑点,以及背景噪声。本研究提出了一种联合预处理框架,其结合了用于预处理2-DGE图像的非线性滤波,背景校正和图像标准化技术的能力。在最重要的联合非线性扩散滤波中,使用合成数据和真实的2-DGE图像评估自适应分段直方图均衡和多级阈值。与实现归一化,背景校正或滤波的单一技术相比,使用所提出的框架实现了多达46%的综合性检测效率。另外,与归一化技术相比,所提出的框架增加了合成数据的低丰度点的检测,对于合成数据,与背景校正技术相比,将背景估计增加了67%。就实际数据而言,联合预处理框架减少了误报高达93%。所提出的联合预处理框架优于单一方法实现的结果。利用用于图像归一化的自适应分段直方图均衡的有序组合获得最佳结构,用于过滤的几何非线性扩散(GNDF)和用于背景校正的多级阈值阈值。

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