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使用台式和手持式近红外光谱仪快速预测宠物食品的化学成分。

Rapid prediction of the chemical composition of pet food using a benchtop and handheld near-infrared spectrometer.

机构信息

College of Life Science, Sichuan Agricultural University, Yaan 625014, China.

Animal Nutrition Institute, Sichuan Agricultural University, Chengdu 611130, China.

出版信息

Spectrochim Acta A Mol Biomol Spectrosc. 2024 Dec 15;323:124916. doi: 10.1016/j.saa.2024.124916. Epub 2024 Jul 31.

Abstract

Quality of pet foods can be affected by many factors such as raw materials, formulations, and processing techniques. The pet food manufacturers require fast analyses to control the nutritional quality of their products. Herein, near-infrared spectroscopy (NIR) was evaluated to quantify the chemical composition of pet food, and the performances of two NIR spectrometers were investigated and compared: a benchtop instrument (1000-2500 nm) and a low-cost handheld instrument (900-1700 nm). Seventy cat food and thirty-six dog samples were characterized using reference methods for crude protein, crude fat, crude fibre, crude ash, moisture, calcium (Ca), and phosphorus (P). Principal component regression (PCR) and partial least squares regression (PLSR) were used to establish the models that involved the cat food and mixed model. The characteristic wavelengths were selected using a competitive adaptive reweighted-sampling (CARS) algorithm. The Optimal models obtained from the benchtop instrument for crude protein, crude fat, and moisture were classified as "Good" or "Very good" (Residual prediction variation (RPD) > 3), for crude fibre were classified as "Poor" (RPD>2), and for crude ash, Ca and P (RPD<2) were classified as "Very poor". The Optimal calibrations obtained from the handheld instrument for crude protein, crude fat, and moisture were classified as "Good" or "Very good" (RPD>3), for crude fibre, crude ash, Ca, and P were classified as "Very poor" (RPD<2). Generally, the the performance of benchtop and handheld instrument was close, and the cat food model outperformed the mixed model. Results from the current study revealed the potential to monitor the chemical compositions in pet food on a large scale.

摘要

宠物食品的质量可能受到许多因素的影响,如原料、配方和加工技术。宠物食品制造商需要快速分析来控制产品的营养质量。在此,近红外光谱 (NIR) 用于定量分析宠物食品的化学成分,并研究和比较了两种 NIR 光谱仪的性能:台式仪器(1000-2500nm)和低成本手持式仪器(900-1700nm)。使用参考方法对 70 个猫粮和 36 个狗粮样本进行了粗蛋白、粗脂肪、粗纤维、粗灰分、水分、钙 (Ca) 和磷 (P) 的特性描述。主成分回归 (PCR) 和偏最小二乘回归 (PLSR) 用于建立涉及猫粮和混合模型的模型。使用竞争自适应重加权采样 (CARS) 算法选择特征波长。台式仪器获得的粗蛋白、粗脂肪和水分的最佳模型被归类为“良好”或“非常好”(残留预测变异 (RPD)>3),粗纤维归类为“差”(RPD>2),粗灰分、Ca 和 P(RPD<2)归类为“非常差”。手持式仪器获得的最佳粗蛋白、粗脂肪和水分校准被归类为“良好”或“非常好”(RPD>3),粗纤维、粗灰分、Ca 和 P 归类为“非常差”(RPD<2)。一般来说,台式仪器和手持式仪器的性能接近,且猫粮模型的性能优于混合模型。本研究的结果表明,有潜力在大规模上监测宠物食品的化学成分。

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