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Dependent Component Analysis and Its Applications for Estimation of Source Ultraviolet Spectral Profiles and Characterization of Processing Batch for Preparation of RADIX SCUTELLARIAE

机译:依赖性分量分析及其估算源紫外光谱谱的估计及加工批量表征,用于制备径向肌菌

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Dependent component analysis (DCA), which is an extension of independent component analysis (ICA) for blind source separation (BSS) and requires no assumption on the distributions of the sources, was used to directly estimate source spectral profiles from ultraviolet spectra (UV) of mixtures. By simply assuming that the sources are dependent only through their variances and have temporal correlations, variance DCA was established. The efficiency of DCA for estimation of source UV spectral profiles was qualified by synthetic mixed UV data. It was shown that the estimation efficiency of DCA is better than that of FastICA when the sources are seriously overlapped. Then the DCA was used to directly estimate source spectral profiles from UV data that were measured at different steaming periods during the processing procedure batch for preparation of radix scutellariae. The estimated dependent components (DCs) and their variations of relative concentrations were used to characterize the processing batch. The results show that the estimated DCs are corresponding to sterol and flavonoid compounds, respectively. By inspection of the change trends of the estimated DCs, the endpoint of the processing batch was determined as 55 min, which is more accurate than that it should be located in 30~60 min by traditional sensory analysis. DCA provides an alternative approach for estimation of source spectral profiles from the overlapped spectral signals, and UV-DCA can be used as a novel way for characterization of the traditional Chinese medicines processing procedure.
机译:依赖性分量分析(DCA),其是盲源分离(BSS)的独立分量分析(ICA)的延伸,并且不需要对源的分布进行假设,用于直接估计来自紫外光谱(UV)的源谱谱混合物。只需假设源只能通过它们的差异依赖并且具有时间相关性,方差DCA已经建立。 DCA用于估计源UV光谱分布的效率是合成混合UV数据的鉴定。结果表明,当源重叠时,DCA的估计效率优于Castica的效率。然后,DCA用于直接从在处理过程批处理期间在不同蒸汽时段测量的UV数据估计源谱分布,用于制备基肌细胞。使用估计的依赖性组分(DC)及其相对浓度的变化来表征处理批次。结果表明,估计的DC分别对应于甾醇和黄酮化合物。通过检查估计DCS的变化趋势,加工批料的终点被确定为55分钟,比传统的感官分析在30〜60分钟内更准确。 DCA提供了一种替代方法,用于估计来自重叠的光谱信号的源谱简谱,UV-DCA可用作用于表征中药处理程序的表征的新方法。

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