Fu Bing, Kaneko Gen, Xie Jun, Li Zhifei, Tian Jingjing, Gong Wangbao, Zhang Kai, Xia Yun, Yu Ermeng, Wang Guangjun
Pearl River Fisheries Research Institute, CAFS, Guangzhou 510380, China.
School of Arts & Sciences, University of Houston-Victoria, Victoria, TX 77901, USA.
Foods. 2020 Nov 6;9(11):1615. doi: 10.3390/foods9111615.
Crisp grass carp products from China are becoming more prevalent in the worldwide fish market because muscle hardness is the primary desirable characteristic for consumer satisfaction of fish fillet products. Unfortunately, current instrumental methods to evaluate muscle hardness are expensive, time-consuming, and wasteful. This study sought to develop classification models for differentiating the muscle hardness of crisp grass carp on the basis of blood analysis. Out of the total 264 grass carp samples, 12 outliers from crisp grass carp group were removed based on muscle hardness (<9 N), and the remaining 252 samples were used for the analysis of seven blood indexes including hydrogen peroxide (HO), glucose 6-phosphate dehydrogenase (G6PD), malondialdehyde (MDA), glutathione (GSH/GSSH), red blood cells (RBC), platelet count (PLT), and lymphocytes (LY). Furthermore, six machine learning models were applied to predict the muscle hardness of grass carp based on the training (152) and testing (100) datasets obtained from the blood analysis: random forest (RF), naïve Bayes (NB), gradient boosting decision tree (GBDT), support vector machine (SVM), partial least squares regression (PLSR), and artificial neural network (ANN). The RF model exhibited the best prediction performance with a classification accuracy of 100%, specificity of 93.08%, and sensitivity of 100% for discriminating crisp grass carp muscle hardness, followed by the NB model (93.75% accuracy, 91.83% specificity, and 94% sensitivity), whereas the ANN model had the lowest prediction performance (85.42% accuracy, 81.05% specificity, and 85% sensitivity). These machine learning methods provided objective, cheap, fast, and reliable classification for in vivo crisp grass carp and also prove useful for muscle quality evaluation of other freshwater fish.
来自中国的脆肉鲩产品在全球鱼类市场上越来越普遍,因为肌肉硬度是鱼片产品消费者满意度的主要期望特征。不幸的是,目前评估肌肉硬度的仪器方法昂贵、耗时且浪费。本研究旨在基于血液分析开发区分脆肉鲩肌肉硬度的分类模型。在总共264个草鱼样本中,根据肌肉硬度(<9 N)从脆肉鲩组中剔除了12个异常值,其余252个样本用于分析七种血液指标,包括过氧化氢(HO)、葡萄糖6-磷酸脱氢酶(G6PD)、丙二醛(MDA)、谷胱甘肽(GSH/GSSH)、红细胞(RBC)、血小板计数(PLT)和淋巴细胞(LY)。此外,应用六种机器学习模型基于从血液分析获得的训练集(152个)和测试集(100个)来预测草鱼的肌肉硬度:随机森林(RF)、朴素贝叶斯(NB)、梯度提升决策树(GBDT)、支持向量机(SVM)、偏最小二乘回归(PLSR)和人工神经网络(ANN)。RF模型在区分脆肉鲩肌肉硬度方面表现出最佳的预测性能,分类准确率为100%,特异性为93.08%,敏感性为100%,其次是NB模型(准确率93.75%,特异性91.83%,敏感性94%),而ANN模型的预测性能最低(准确率85.42%,特异性81.05%,敏感性85%)。这些机器学习方法为活体脆肉鲩提供了客观、廉价、快速且可靠的分类,也证明对其他淡水鱼的肌肉质量评估有用。