基于去噪自编码器的二维凝胶电泳图像自动增强

A. Ahmed, Wessam H. El-Behaidy, A. Youssif
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引用次数: 1

摘要

图像去噪是二维凝胶电泳(2-DGE)中一个重要的预处理步骤,它对斑点检测或基于像素的方法有很大的影响。自动编码去噪(DAE)是深度学习中用于图像去噪的一种新方法,其性能具有挑战性。在本研究中,DAE技术被应用于2-DGE图像,其动机是它能够学习部分损坏输入的鲁棒表示。DAE应用于从LEeB 2-D PAGE数据库中获得的300多种真实凝胶。为了验证该技术的效率,使用了三个指标;信噪比(SNR),错误发现率(FDR)和点效率。去噪前信噪比均值为0.6332,点效率均值为71.05。而DAE后的平均结果信噪比为61.3317,FDR为99.9944,spot efficiency为88.4。此外,DAE的降噪效果比小波降噪效果好1.75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Enhancement of Two-Dimensional Gel electrophoresis images using Denoising Autoencoder
Image denoising is an important preprocessing step in two-dimensional gel electrophoresis (2-DGE) that strongly affect spot detection or pixel-based methods. Denoising autoen-coders (DAE) is a new approach in deep learning used in image denoising that has a challenging performance. In this study, DAE technique is applied on 2-DGE images motivated by its ability to learn a robust representation to partially corrupted input. DAE is applied on over than 300 real gels got from LEeB 2-D PAGE database. To validate the efficiency of this technique three indicators are used; Signal-to-noise ratio (SNR), False discovery rate (FDR) and spot efficiency. The average results before denoising are 0.6332 for SNR and 71.05 for spot efficiency. Whereas, the average results after DAE are 61.3317 for SNR, 99.9944 for FDR and 88.4 for spot efficiency. Moreover, DAE outperforms the denoising wavelet by 1.75 %.
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