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利用高光谱成像和机器学习对鲤鱼(L.)质地剖面进行快速无创评估

Rapid and Non-Invasive Assessment of Texture Profile Analysis of Common Carp ( L.) Using Hyperspectral Imaging and Machine Learning.

作者信息

Cao Yi-Ming, Zhang Yan, Yu Shuang-Ting, Wang Kai-Kuo, Chen Ying-Jie, Xu Zi-Ming, Ma Zi-Yao, Chen Hong-Lu, Wang Qi, Zhao Ran, Sun Xiao-Qing, Li Jiong-Tang

机构信息

Key Laboratory of Aquatic Genomics, Ministry of Agriculture and Rural Affairs, Beijing Key Laboratory of Fishery Biotechnology, Chinese Academy of Fishery Sciences, Beijing 100041, China.

Chinese Academy of Agricultural Sciences, Beijing 100181, China.

出版信息

Foods. 2023 Aug 22;12(17):3154. doi: 10.3390/foods12173154.

Abstract

Hyperspectral imaging (HSI) has been applied to assess the texture profile analysis (TPA) of processed meat. However, whether the texture profiles of live fish muscle could be assessed using HSI has not been determined. In this study, we evaluated the texture profile of four muscle regions of live common carp by scanning the corresponding skin regions using HSI. We collected skin hyperspectral information from four regions of 387 scaled and live common carp. Eight texture indicators of the muscle corresponding to each skin region were measured. With the skin HSI of live common carp, six machine learning (ML) models were used to predict the muscle texture indicators. Backpropagation artificial neural network (BP-ANN), partial least-square regression (PLSR), and least-square support vector machine (LS-SVM) were identified as the optimal models for predicting the texture parameters of the dorsal (coefficients of determination for prediction () ranged from 0.9191 to 0.9847, and the root-mean-square error for prediction ranged from 0.1070 to 0.3165), pectoral ( ranged from 0.9033 to 0.9574, and RMSEP ranged from 0.2285 to 0.3930), abdominal ( ranged from 0.9070 to 0.9776, and RMSEP ranged from 0.1649 to 0.3601), and gluteal ( ranged from 0.8726 to 0.9768, and RMSEP ranged from 0.1804 to 0.3938) regions. The optimal ML models and skin HSI data were employed to generate visual prediction maps of TPA values in common carp muscles. These results demonstrated that skin HSI and the optimal models can be used to rapidly and accurately determine the texture qualities of different muscle regions in common carp.

摘要

高光谱成像(HSI)已被应用于评估加工肉类的质地剖面分析(TPA)。然而,HSI能否用于评估活鱼肌肉的质地剖面尚未确定。在本研究中,我们通过使用HSI扫描活鲤鱼相应的皮肤区域,评估了活鲤鱼四个肌肉区域的质地剖面。我们从387条去鳞活鲤鱼的四个区域收集了皮肤高光谱信息。测量了每个皮肤区域对应的肌肉的八个质地指标。利用活鲤鱼的皮肤HSI,使用六种机器学习(ML)模型预测肌肉质地指标。反向传播人工神经网络(BP-ANN)、偏最小二乘回归(PLSR)和最小二乘支持向量机(LS-SVM)被确定为预测背部(预测决定系数()范围为0.9191至0.9847,预测均方根误差范围为0.1070至0.3165)、胸鳍(范围为0.9033至0.9574,RMSEP范围为0.2285至0.3930)、腹部(范围为0.9070至0.9776,RMSEP范围为0.1649至0.3601)和臀鳍(范围为0.8726至0.9768,RMSEP范围为0.1804至0.3938)区域质地参数的最优模型。利用最优ML模型和皮肤HSI数据生成了鲤鱼肌肉TPA值的视觉预测图。这些结果表明,皮肤HSI和最优模型可用于快速准确地确定鲤鱼不同肌肉区域的质地品质。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bede/10486347/6d7e6b34eb1b/foods-12-03154-g001.jpg

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