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Cost effective and efficient screening of tuberculosis disease with Raman spectroscopy and machine learning algorithms

机译:用拉曼光谱和机器学习算法具有成本效益高效的结核病疾病筛查

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摘要

The current study presents Raman Spectroscopy (RS) accompanied by machine learning algorithms based on Principle Component Analysis (PCA) and Hierarchical Cluster Analysis (HCA) for analysis of tuberculosis (TB). TB positive (diseased), TB negative (cured) and control (healthy) serum samples are considered for inter and intra comparative analysis. Raman spectral differences observed between both TB group and control samples spectra attributed probably to the changes in biomolecules like higher lactate concentration, lowering level of beta-carotene and amide-I band of protein in TB patient's blood samples. Inter comparison between control and TB positive sera samples shows prominent decrease in three extremely intense Raman peaks associated to beta-carotene concentration. Noteworthy spectral differences are also observed among TB positive and TB negative sera samples. The comparison of these Raman results clearly indicate that the blood composition of TB negative patients still showing irregularities in some important elements. Moreover, the Raman spectral differences observed in the data of the control and diseased samples are further highlighted with the help of the machine learning algorithms. In general, a fine correlation has been observed between PCA score plot as well as HCA dendogram with the original Raman findings. Further investigation of such noticeable differences could help in understandings regarding the existing threshold levels. Moreover in future, it can contribute a lot towards the development of new, modified and more effective screening options.
机译:目前的研究介绍了基于原理分析(PCA)和分层聚类分析(HCA)的机器学习算法的拉曼光谱(RS),用于分析结核病(TB)。 Tb阳性(患病),Tb阴性(固化)和对照(健康)血清样品被认为是间际和中的比较分析。 TB组和控制样品之间观察到的拉曼光谱差异,可能归因于在TB患者血液样品中的较高乳酸浓度,降低β-胡萝卜素和蛋白质蛋白质的水平的变化。对照和Tb阳性血清样品之间的帧间比较显示出与β-胡萝卜素浓度相关的三个极度激烈的拉曼峰值突出的降低。在Tb阳性和Tb阴性血清样品中也观察到值得注意的光谱差异。这些拉曼结果的比较清楚地表明TB阴性患者的血液组成仍然显示在一些重要元素中的违规性。此外,在机器学习算法的帮助下进一步突出了在控制和患病样本的数据中观察到的拉曼光谱差异。通常,在PCA分数图之间观察到细微相关性以及原始拉曼调查结果的HCA Dendogar。进一步调查这种明显的差异可以有助于谅解对现有阈值水平。此外,未来,它可以为开发新的,修改和更有效的筛选方案做出贡献。

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