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首页> 外文期刊>Analytica chimica acta >Influence of denoising on classification results in the context of hyperspectral data: High Definition FT-IR imaging
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Influence of denoising on classification results in the context of hyperspectral data: High Definition FT-IR imaging

机译:在高光谱数据背景下,去噪对分类的影响:高清FT-IR成像

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摘要

Owing to the high information content about the biochemical composition of the sample, the implementation of Fourier-Transform Infrared Spectroscopy (FT-IR) in the clinic is currently under investigation by many researchers. Cancer biology with the use of histopathological models is one of the most explored application areas. Most of the publications show sensitivity of the method to be above 90%, however, it is still often not enough for clinical standards. Robust denoising techniques with an optimized classification model allow to shorten the experimental acquisition times which still are a bottleneck for FT-IR translation into the clinic. The main premise of this work is to evaluate denoising impact on classification results using spectral techniques: Savitzky Golay (SG), Wavelets (WV), Principal Component Analysis (PCA) and Minimum Noise Fraction (MNF); and spatial techniques: Deep Neural Network (DNN), Median Filter. Using denoising methods, especially MNF and PCA, gave significant improvement of the classification and prediction results. Moreover, the increase in pixel level accuracy for High Definition data (1.1 mu m projected pixel size) was found to be dependent on the complexity of the histopathological class and reached even 43-44% level, while core level increase reached around 28%. Moreover, we investigated the impact of denoising methods on the spectral input to better understand the mechanism of such large improvement. The results presented here highlight the benefits and the importance of proper denoising for classification purposes of FT-IR imaging data. (C) 2019 Elsevier B.V. All rights reserved.
机译:由于关于样品的生化组成的高信息含量,诊所中傅立叶变换红外光谱(FT-IR)的实施目前正在通过许多研究人员进行调查。癌症生物学使用组织病理学模型是最探索的应用领域之一。大多数出版物表明,该方法的敏感性高于90%,然而,临床标准仍然不足。具有优化分类模型的鲁棒去噪技术允许缩短实验性采集时间,仍然是FT-IR翻译成诊所的瓶颈。这项工作的主要前提是利用光谱技术评估对分类结果的去噪:Savitzky Golay(SG),小波(WV),主成分分析(PCA)和最小噪声分数(MNF);和空间技术:深神经网络(DNN),中值过滤器。使用去噪方法,特别是MNF和PCA,对分类和预测结果进行了显着改善。此外,发现高清数据的像素水平精度的增加(1.1 mu m突出的像素尺寸)依赖于组织病理学阶层的复杂性,达到43-44%水平,而核心水平增加达到约28%。此外,我们调查了去噪方法对频谱输入的影响,以更好地理解这种大改善的机制。此处提出的结果突出了适当的去噪对FT-IR成像数据的分类目的的好处和重要性。 (c)2019年Elsevier B.V.保留所有权利。

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