Sim Joy, Dixit Yash, Mcgoverin Cushla, Oey Indrawati, Frew Russell, Reis Marlon M, Kebede Biniam
Department of Food Science, University of Otago, PO BOX 56, Dunedin 9054, New Zealand.
AgResearch, Grasslands Research Centre, Palmerston North, New Zealand.
Food Res Int. 2023 Dec;174(Pt 1):113518. doi: 10.1016/j.foodres.2023.113518. Epub 2023 Sep 28.
The potential of using rapid and non-destructive near-infrared - hyperspectral imaging (HSI-NIR) for the prediction of an integrated stable isotope and multi-element dataset was explored for the first time with the help of support vector regression. Speciality green coffee beans sourced from three continents, eight countries, and 22 regions were analysed using a push-broom HSI-NIR (700-1700 nm), together with five isotope ratios (δC, δN, δO, δH, and δS) and 41 trace elements. Support vector regression with the radial basis function kernel was conducted using X as the HSI-NIR data and Y as the geochemistry markers. Model performance was evaluated using root mean squared error, coefficient of determination, and mean absolute error. Three isotope ratios (δO, δH, and δS) and eight elements (Zn, Mn, Ni, Mo, Cs, Co, Cd, and La) had an R 0.70 - 0.99 across all origin scales (continent, country, region). All five isotope ratios were well predicted at the country and regional levels. The wavelength regions contributing the most towards each prediction model were highlighted, including a discussion of the correlations across all geochemical parameters. This study demonstrates the feasibility of using HSI-NIR as a rapid and non-destructive method to estimate traditional geochemistry parameters, some of which are origin-discriminating variables related to altitude, temperature, and rainfall differences across origins.
首次借助支持向量回归探索了使用快速无损近红外高光谱成像(HSI-NIR)预测综合稳定同位素和多元素数据集的潜力。使用推扫式HSI-NIR(700 - 1700纳米)对来自三大洲、八个国家和22个地区的特色生咖啡豆进行了分析,并测定了五种同位素比率(δC、δN、δO、δH和δS)以及41种微量元素。以X作为HSI-NIR数据,Y作为地球化学标记物,进行了具有径向基函数核的支持向量回归。使用均方根误差、决定系数和平均绝对误差评估模型性能。在所有产地尺度(大洲、国家、地区)上,三种同位素比率(δO、δH和δS)以及八种元素(锌、锰、镍、钼、铯、钴、镉和镧)的R值在0.70至0.99之间。在国家和地区层面,所有五种同位素比率均得到了良好预测。突出显示了对每个预测模型贡献最大的波长区域,包括对所有地球化学参数之间相关性的讨论。这项研究证明了使用HSI-NIR作为一种快速无损方法来估算传统地球化学参数的可行性,其中一些参数是与不同产地的海拔、温度和降雨差异相关的产地判别变量。