首页> 美国卫生研究院文献>Journal of Clinical Medicine >Attenuated Total Reflectance Fourier Transform Infrared Spectroscopy (FTIR) and Artificial Neural Networks Applied to Investigate Quantitative Changes of Selected Soluble Biomarkers Correlated with
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Attenuated Total Reflectance Fourier Transform Infrared Spectroscopy (FTIR) and Artificial Neural Networks Applied to Investigate Quantitative Changes of Selected Soluble Biomarkers Correlated with

机译:衰减的总反射率傅里叶变换红外光谱(FTIR)和人工神经网络应用于研究所选可溶性生物标志物的定量变化与...相关

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摘要

Helicobacter pylori infections causing gastroduodenal disorders are a common medical problem. The aim of this study was to determine the specific motives of infrared spectroscopy (IR) spectra of sera from H. pylori-infected and uninfected children applied to investigate quantitatively-selected soluble biomarkers correlated with H. pylori infection in children and presumable consequent delayed growth. Sera from 41 children infected with H. pylori (Hp(+)) and 43 uninfected (Hp(−)) under the care of the Polish Mother’s Hospital in Lodz, Poland, were analyzed. The H. pylori status was confirmed by gastroscopy, 13C urea breath testing, and anti-H. pylori IgG antibodies. Infrared spectra were measured using an FTIR/FT-NIR Spectrum 400 spectrometer (PerkinElmer). The IR spectrum was measured in the wavenumber range 3000–750 cm−1 and subjected to mathematical calculation of the first derivative. Based on the chi-square test, 10 wavenumbers of spectra correlating with H. pylori infection were selected for use in designing an artificial neural network. Ten parts of the IR spectra correlating with H. pylori infection were identified in the W2 and W3 windows associated mainly with proteins and the W4 window related to nucleic acids and hydrocarbons. Artificial neural networks for H. pylori infection were developed based on chemometric data. By mathematical modeling, children were classified towards H. pylori infection in conjunction with elevated levels of selected biomarkers in serum potentially related to growth retardation. The study concludes that IR spectroscopy and artificial neural networks may help to confirm H. pylori-driven growth disorders in children.
机译:幽门螺杆菌感染导致胃生物紊乱是一种常见的医学问题。本研究的目的是确定来自H.幽门螺杆菌感染和未感染的儿童的红外光谱(IR)血清的红外光谱(IR)光谱的具体动力,所述儿童与儿童中的H.幽门螺杆菌感染相关的定量选择的可溶性生物标志物和可推测的随之而来的增长。分析了41名儿童感染H. Pylori(HP(+))和43岁的儿童(HP()在Poland的Polish母亲医院护理下进行的血清进行了分析。通过胃镜检查,13C尿素呼吸试验和抗H确认H. Pylori状态。幽门螺杆菌IgG抗体。使用FTIR / FT-NIR光谱400光谱仪(PerkinElmer)测量红外光谱。在波数范围3000-750cm-1中测量IR光谱,并进行第一衍生物的数学计算。基于Chi-Square试验,选择了与H.幽门螺杆菌感染相关的10个波纹,用于设计人工神经网络。在主要与蛋白质和与核酸和碳氢化合物相关的蛋白质和W4窗口相关联的W2和W3窗口中鉴定了与H.幽门螺杆菌相关的十个部分。基于化学计数数据开发了H. H.Pylori感染的人工神经网络。通过数学建模,将儿童与H.幽门螺杆菌感染分类,与血清中的血清潜在的生长迟缓相关的升高水平。该研究的结论是,红外光谱和人工神经网络可能有助于确认儿童幽门螺杆菌驱动的生长障碍。

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