The Predicted Model of the Sensory Quality of Refrigerated Tilapia Skin Established Based on Characteristic Near-Infrared Spectrum

IF 1.3 4区 农林科学 Q4 FOOD SCIENCE & TECHNOLOGY Journal of Aquatic Food Product Technology Pub Date : 2022-12-15 DOI:10.1080/10498850.2022.2157229
Huawei Ma, Min Lv, Zhide Ruan, Fariha Latif, Chuanyan Pan, Xu Luo, Qiong Yang, Xiaobao Qi, Yuan Zhong, Ailing Guo
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Abstract

ABSTRACT The predicted model of the sensory quality of refrigerated tilapia skin at 8°C was constructed using near-infrared spectroscopy (NIRS) based on the principle of sample packaging integrity. The characteristic spectral intervals were chosen from preprocessed spectral data using synergy interval partial least squares (siPLS), principal component analysis, and Jordan–Elman back propagation-artificial neural network (JENN) was used to build a prediction model for tilapia skin quality parameter. The results showed that the multiple scatter correction (MSC) + 2nd derivative was the best-preprocessed method, and the four characteristic spectral intervals were 680–740, 742–800, 980–1040, and 1150–1210 nm. Further, the cumulative contribution rate of the first three principal components was 99.15%. Additionally, the root mean square error of cross-validation set (RMSECV) of transfer function (tanh) of the model was 0.386, the determinant coefficient for prediction ( ) was 0.973, and the RMSECV and were 0.393 and 0.971 for unknown samples, respectively. The results showed that NIRS combined with JENN could allow rapid and accurate evaluation of tilapia skin quality in the range of 73.00–97.00 scores.
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基于特征近红外光谱的冷冻罗非鱼皮感官品质预测模型的建立
摘要基于样品包装完整性原则,利用近红外光谱技术(NIRS)建立了8℃冷藏罗非鱼皮感官质量的预测模型。利用协同区间偏最小二乘(siPLS)和主成分分析,从预处理后的光谱数据中选择特征谱区间,并利用Jordan-Elman反向传播-人工神经网络(JENN)建立罗非鱼皮品质参数预测模型。结果表明,多重散射校正(MSC) +二阶导数是最佳的预处理方法,4个特征光谱区间分别为680 ~ 740 nm、742 ~ 800 nm、980 ~ 1040 nm和1150 ~ 1210 nm。前三个主成分的累计贡献率为99.15%。模型传递函数tanh的交叉验证集均方根误差(RMSECV)为0.386,预测的决定系数()为0.973,未知样本的RMSECV和RMSECV分别为0.393和0.971。结果表明,近红外光谱结合JENN可以快速准确地评价罗非鱼皮肤质量,评分范围为73.00-97.00。
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来源期刊
Journal of Aquatic Food Product Technology
Journal of Aquatic Food Product Technology 农林科学-食品科技
CiteScore
3.50
自引率
6.20%
发文量
77
审稿时长
7 months
期刊介绍: The Journal of Aquatic Food Product Technology publishes research papers, short communications, and review articles concerning the application of science and technology and biotechnology to all aspects of research, innovation, production, and distribution of food products originating from the marine and freshwater bodies of the world. The journal features articles on various aspects of basic and applied science in topics related to: -harvesting and handling practices- processing with traditional and new technologies- refrigeration and freezing- packaging and storage- safety and traceability- byproduct utilization- consumer attitudes toward aquatic food. The Journal also covers basic studies of aquatic products as related to food chemistry, microbiology, and engineering, such as all flora and fauna from aquatic environs, including seaweeds and underutilized species used directly for human consumption or alternative uses. Special features in the journal include guest editorials by specialists in their fields and book reviews covering a wide range of topics.
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