A Complete Analysis Pipeline for the Processing, Alignment and Quantification of HPLC–UV Wine Chromatograms

IF 1.2 4区 化学 Q4 BIOCHEMICAL RESEARCH METHODS
Alan Ianeselli, Edoardo Longo, Simone Poggesi, Marco Montali, Emanuele Boselli
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引用次数: 0

Abstract

Elucidating the chemistry of wine would help defining its quality, chemical and sensory characteristics and optimise the wine-making processes. High-performance liquid chromatography coupled with UV–Vis spectroscopy (HPLC–UV–Vis) is a common analysis method used to obtain the molecular profile of wine samples. We propose a complete procedure for the analysis of wine chromatograms. Data are pre-processed using standard methods of down-sampling, smoothing and baseline subtraction. Multiple samples are then merged in a three-dimensional tensor, decomposed using parallel factor analysis (PARAFAC2) into three factors: (i) one reduced (rank-one) chromatogram per sample, (ii) an estimate of the samples’ spectral UV–Vis profile and (iii) an estimate of the samples’ concentrations. If the decomposition is performed on a single peak of the tensor, the second and third factors correspond to the representative wavelength spectrum and to the relative concentrations of the samples, respectively. Otherwise, when multiple peaks are analysed, further processing is required. In the latter case, the decomposed rank-one chromatograms are peak-detected and aligned, clustered and integrated. A table containing the concentration of the peaks at different retention times is obtained. The pipeline proposed in this study is a guideline for a quantitative and reproducible chemical analysis of wine, or other samples, via the HPLC–UV–Vis method.

用于处理、排列和量化 HPLC-UV 葡萄酒色谱图的完整分析管道
摘要 阐明葡萄酒的化学成分有助于确定其质量、化学和感官特征,并优化酿酒工艺。高效液相色谱-紫外-可见光谱法(HPLC-UV-Vis)是一种常用的分析方法,用于获得葡萄酒样品的分子特征。我们提出了一套完整的葡萄酒色谱分析程序。使用标准方法对数据进行预处理,包括下采样、平滑和基线减去。然后将多个样品合并为一个三维张量,并使用并行因子分析(PARAFAC2)将其分解为三个因子:(i) 每个样品的一个缩小色谱图(秩一),(ii) 样品紫外可见光谱曲线的估计值,(iii) 样品浓度的估计值。如果对张量的单个峰进行分解,第二和第三个因子分别对应于代表性波长光谱和样品的相对浓度。否则,在分析多个峰值时,需要进一步处理。在后一种情况下,对分解后的秩一色谱图进行峰值检测和对齐、聚类和积分。这样就得到了一个包含不同保留时间色谱峰浓度的表格。本研究提出的方法是通过 HPLC-UV-Vis 方法对葡萄酒或其他样品进行定量和可重复化学分析的指南。
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来源期刊
Chromatographia
Chromatographia 化学-分析化学
CiteScore
3.40
自引率
5.90%
发文量
103
审稿时长
2.2 months
期刊介绍: Separation sciences, in all their various forms such as chromatography, field-flow fractionation, and electrophoresis, provide some of the most powerful techniques in analytical chemistry and are applied within a number of important application areas, including archaeology, biotechnology, clinical, environmental, food, medical, petroleum, pharmaceutical, polymer and biopolymer research. Beyond serving analytical purposes, separation techniques are also used for preparative and process-scale applications. The scope and power of separation sciences is significantly extended by combination with spectroscopic detection methods (e.g., laser-based approaches, nuclear-magnetic resonance, Raman, chemiluminescence) and particularly, mass spectrometry, to create hyphenated techniques. In addition to exciting new developments in chromatography, such as ultra high-pressure systems, multidimensional separations, and high-temperature approaches, there have also been great advances in hybrid methods combining chromatography and electro-based separations, especially on the micro- and nanoscale. Integrated biological procedures (e.g., enzymatic, immunological, receptor-based assays) can also be part of the overall analytical process.
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