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首页> 外文期刊>Analytical chemistry >Powerful Artificial Neural Network for Planar Chromatographic Image Evaluation, Shown for Denoising and Feature Extraction
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Powerful Artificial Neural Network for Planar Chromatographic Image Evaluation, Shown for Denoising and Feature Extraction

机译:用于平面色谱图像评估的强大人工神经网络,显示用于去噪和特征提取

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An artificial neural network (ANN) is presented as a new and superior technique for processing planar chromatography images. Though several algorithms are available for image processing in planar chromatography, the use of ANN has not been explored so far. It simulates how the human brain interprets images, and the intrinsic features of the image were captured on patches of pixels and successfully reconstructed afterward. The obtained high number of observations was a perfect basis for using ANN. As examples, three quite different data sets were processed with this new algorithm to demonstrate its versatility and benefits. Powerful features, which the ANN learned from the image data set, improved the quality of the analytical data. Thus, noise or inhomogeneous background of bioautograms was removed as demonstrated for salvia extracts, improving their bioquantifications. On colorful fluorescence chromatograms of further botanical extracts, the power and benefit of the feature extraction were demonstrated. Using ANN, videodensitometric results were improved. If compared to conventional digital processing, the resolution between two adjacent blue fluorescent bands increased from 0.95 to 1.18 or between two orange fluorescent bands from 0.77 to 1.57. The trueness of the new ANN was successfully verified by comparison with conventional densitometric results of the absorbance of separated tea extracts. The correlation coefficients of epigallocatechin gallate therein improved from 0.9889 with median filter to 0.9959 using this new ANN algorithm. The code was released open-source to the scientific community as a ready-to-use tool to exploit this potential, spread its usage, and boost improvements in planar chromatographic image evaluation.
机译:一种人工神经网络(ANN)被呈现为用于处理平面色谱图像的新技术和优异的技术。虽然在平面色谱中可用于图像处理的几种算法,但到目前为止还没有探索ANN。它模拟了人脑解释图像的方式,以及图像的内在特征在像素斑块上捕获并以后成功地重建。获得的大量观察是使用ANN的完美基础。作为示例,使用这种新算法处理了三种完全不同的数据集,以展示其多功能性和优点。强大的功能,从图像数据集中学习的ANN,提高了分析数据的质量。因此,除了对丹参提取物的证明,可以除去生物破坏图的噪音或不均匀背景,提高其生物凝固。在进一步植物提取物的彩色荧光色谱图上,证明了特征提取的功率和益处。使用ANN,Videodensitometric结果得到改善。如果与传统的数字处理相比,两个相邻的蓝色荧光带之间的分辨率从0.95增加到1.18或两个橙色荧光带,从0.77到1.57之间增加。通过与分离的茶提取物的吸光度的常规密度测量结果进行比较,成功验证了新ANN的真实性。 EpigallocateChin粘附在其中的EpigallocateChin的相关系数从0.9889改进,使用该新的ANN算法将滤波器中值滤波器加到0.9959。该代码被释放到科学界的开源作为一种即用的工具,以利用这种潜力,分布它的使用,并在平面色谱图像评估中提高改进。

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