Nieto-Ortega Sonia, Olabarrieta Idoia, Saitua Eduardo, Arana Gorka, Foti Giuseppe, Melado-Herreros Ángela
AZTI, Food Research, Basque Research and Technology Alliance (BRTA), Parque Tecnológico de Bizkaia, Astondo Bidea, Edificio 609, 48160 Derio, Spain.
Department of Analytical Chemistry, University of the Basque Country UPV/EHU, 48080 Bilbao, Spain.
Foods. 2022 Apr 10;11(8):1092. doi: 10.3390/foods11081092.
A handheld near infrared (NIR) spectrometer was used for on-site determination of the fatty acids (FAs) composition of industrial fish oils from fish by-products. Partial least square regression (PLSR) models were developed to correlate NIR spectra with the percentage of saturated fatty acids (SFAs), monounsaturated fatty acids (MUFAs), polyunsaturated fatty acids (PUFAs) and, among them, omega-3 (ω-3) and omega-6 (ω-6) FAs. In a first step, the data were divided into calibration validation datasets, obtaining good results regarding R values, root mean square error of prediction (RMSEP) and bias. In a second step, all these data were used to create a new calibration, which was uploaded to the handheld device and tested with an external validation set in real time. Evaluation of the external test set for SFAs, MUFAs, PUFAs and ω-3 models showed promising results, with R values of 0.98, 0.97, 0.97 and 0.99; RMSEP (%) of 0.94, 1.71, 1.11 and 0.98; and bias (%) values of -0.78, -0.12, -0.80 and -0.67, respectively. However, although ω-6 models achieved a good R value (0.95), the obtained RMSEP was considered high (2.08%), and the bias was not acceptable (-1.76%). This was corrected by applying bias and slope correction (BSC), obtaining acceptable values of R (0.95), RMSEP (1.09%) and bias (-0.05%). This work goes a step further in the technology readiness level (TRL) of handheld NIR sensor solutions for the fish by-product recovery industry.
使用手持式近红外(NIR)光谱仪对鱼副产品中的工业鱼油脂肪酸(FAs)组成进行现场测定。建立了偏最小二乘回归(PLSR)模型,将近红外光谱与饱和脂肪酸(SFAs)、单不饱和脂肪酸(MUFAs)、多不饱和脂肪酸(PUFAs)以及其中的ω-3和ω-6脂肪酸的百分比相关联。第一步,将数据分为校准验证数据集,在R值、预测均方根误差(RMSEP)和偏差方面取得了良好结果。第二步,所有这些数据用于创建新的校准,将其上传到手持设备并使用外部验证集进行实时测试。对SFAs、MUFAs、PUFAs和ω-3模型的外部测试集评估显示出有前景的结果,R值分别为0.98、0.97、0.97和0.99;RMSEP(%)分别为0.94、1.71、1.11和0.98;偏差(%)值分别为-0.78、-0.12、-0.80和-0.67。然而,尽管ω-6模型获得了良好的R值(0.95),但获得的RMSEP被认为较高(2.08%),且偏差不可接受(-1.76%)。通过应用偏差和斜率校正(BSC)对其进行了校正,得到了可接受的R值(0.95)、RMSEP(1.09%)和偏差(-0.05%)。这项工作在手持近红外传感器解决方案用于鱼副产品回收行业的技术就绪水平(TRL)方面又迈出了一步。