Combined Relaxation Spectra for the Prediction of Meat Quality: A Case Study on Broiler Breast Fillets with the Wooden Breast Condition

Foods Pub Date : 2024-06-09 DOI:10.3390/foods13121816
Bin Pang, Brian Bowker, Seung-Chul Yoon, Yi Yang, Jian Zhang, Changhu Xue, Yaoguang Chang, Jingxin Sun, Zhuang Hong
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Abstract

This study evaluated the potential of using combined relaxation (CRelax) spectra within time-domain nuclear magnetic resonance (TD-NMR) measurements to predict meat quality. Broiler fillets affected by different severities of the wooden breast (WB) conditions were used as case-study samples because of the broader ranges of meat-quality variations. Partial least squares regression (PLSR) models were established to predict water-holding capacity (WHC) and meat texture, demonstrating superior CRelax capabilities for predicting meat quality. Additionally, a partial least squares discriminant analysis (PLS-DA) model was developed to predict WB severity based on CRelax spectra. The models exhibited high accuracy in distinguishing normal fillets from those affected by the WB condition and demonstrated competitive performance in classifying WB severity. This research contributes innovative insights into advanced spectroscopic techniques for comprehensive meat-quality evaluation, with implications for enhancing precision in meat applications.
用于预测肉质的组合松弛光谱:木质胸脯肉肉片案例研究
本研究评估了在时域核磁共振(TD-NMR)测量中使用组合弛豫(CRelax)光谱来预测肉质的潜力。由于肉质变化的范围较广,因此将受不同严重程度的木胸脯(WB)条件影响的肉鸡排作为案例研究样本。建立了偏最小二乘回归(PLSR)模型来预测持水量(WHC)和肉质,证明了 CRelax 在预测肉质方面的卓越能力。此外,还建立了偏最小二乘判别分析(PLS-DA)模型,根据 CRelax 光谱预测 WB 严重程度。这些模型在区分正常鱼片和受 WB 影响的鱼片方面表现出很高的准确性,并在 WB 严重程度分类方面表现出很强的竞争力。这项研究为全面评估肉类质量的先进光谱技术提供了创新见解,对提高肉类应用的精确度具有重要意义。
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