Li Lin, Cao Rong, Zhao Ling, Liu Nan, Sun Huihui, Zhang Zhaohui, Sun Yong
Yellow Sea Fisheries Research Institute, Chinese Academy of Fishery Sciences, Qingdao 266071, China.
College of Food Science and Engineering, Ocean University of China, Qingdao 266100, China.
Foods. 2025 Apr 8;14(8):1293. doi: 10.3390/foods14081293.
Antarctic krill () represents a promising sustainable protein source for human consumption. While a portion of the catch undergoes immediate onboard processing, the majority is preserved as frozen raw material, with storage duration significantly impacting product quality and safety. This study established a novel approach for rapid quality assessment through storage time prediction. Traditional chemical quality indicators of krill during a 12-month storage were first monitored and the correlation between the quality and storage time was verified. Coupled with four different regression machine learning algorithms, near-infrared spectroscopy (NIRS) was applied to develop models. Following optimal spectral preprocessing selection and hyperparameters optimization, the light gradient boosting machine (LightGBM) model yielded the best storage time prediction performance, with the R of the test set being 0.9882 and the errors RMSE, MAE, and MAPE being 0.3724, 0.2018, and 0.0431, respectively. Subsequent model interpretation results revealed a strong correspondence between model-related NIR features and chemical indicators associated with quality changes during krill frozen storage, which further justified the model's predictive capability. The results proved that NIR spectroscopy combined with LightGBM could be used as a rapid and effective technique for the quality evaluation of frozen Antarctic krill, offering substantial potential for industrial implementation.
南极磷虾是一种很有前景的可供人类食用的可持续蛋白质来源。虽然一部分捕获的磷虾会在船上立即进行加工,但大多数会作为冷冻原料保存,储存时间会显著影响产品质量和安全。本研究建立了一种通过储存时间预测进行快速质量评估的新方法。首先监测了磷虾在12个月储存期间的传统化学质量指标,并验证了质量与储存时间之间的相关性。结合四种不同的回归机器学习算法,应用近红外光谱(NIRS)建立模型。经过最佳光谱预处理选择和超参数优化后,轻梯度提升机(LightGBM)模型的储存时间预测性能最佳,测试集的R为0.9882,误差RMSE、MAE和MAPE分别为0.3724、0.2018和0.0431。随后的模型解释结果表明,与模型相关的近红外特征与磷虾冷冻储存期间质量变化相关的化学指标之间存在很强的对应关系,这进一步证明了该模型的预测能力。结果证明,近红外光谱结合LightGBM可作为一种快速有效的南极磷虾冷冻质量评估技术,具有很大的工业应用潜力。