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Use of near-infrared reflectance spectroscopy for the rapid determination of the digestible energy and metabolizable energy content of corn fed to growing pigs

机译:使用近红外反射光谱法快速测定饲养猪的玉米的可消化能量和代谢能含量

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Background:The ability of near-infrared reflectance spectroscopy (NIRS) to determine the digestible energy (DE) and metabolizable energy (ME) content of corn fed to growing pigs was tested.One hundred and seventeen corn samples,comprising different planting regions and varieties were collected from all over China in a three-year period.The samples were randomly split into a calibration set (n =88) and a validation set (n =29).The actual and calculated DE and ME content of the corn samples was determined by digestion-metabolism experiments and the prediction equations of Noblet and Perez (J Anim Sci.71:3389-98,1993).The samples were then subjected to NIRS scanning and calibrations were performed by the modified partial least square (MPLS) regression method based on 77 different spectral pre-treatments.The NIRS equations based on the actually determined and calculated DE and ME were built separately and then validated using validation samples.Results:The NIRS equations obtained from actually determined DE,the coefficient of determination for calibration (RSQcal),cross-validation (R2Cv),and validation (RSQv) were 0.89,0.87 and 0.86,and these values for determined ME were 0.87,0.86 and 0.86.For the NIRS equations built from calculated DE,the RSQcal,R2cv,and RSQv values were 0.88,0.85 and 0.84,and these values for calculated ME were 0.86,0.84 and 0.82.Except for the equation based on calculated ME (RPDv =2.38,< 2.50),the other three equations built from actually determined energy and calculated DE produced good prediction performance (RPDv ranging from 2.53 to 2.69,> 2.50) when applied to validation samples.Conclusion:These results indicate that NIRS can be used as a quantitative method for the rapid determination of the available energy in corn fed to growing pigs,and the NIRS equations based on the actually determined energy produced better predictive performance than those built from calculated energy values.
机译:背景:测试了近红外反射光谱法(NIRS)测定饲喂生长猪的玉米的消化能(DE)和代谢能(ME)含量的能力.117个玉米样品,包括不同的种植区域和品种在三年内从全国各地收集玉米样品,将样品随机分为校准集(n = 88)和验证集(n = 29),玉米样品的实际和计算的DE和ME含量为通过消化代谢实验和Noblet和Perez的预测方程确定(J Anim Sci.71:3389-98,1993),然后对样品进行NIRS扫描并通过改进的偏最小二乘(MPLS)回归进行校准该方法基于77种不同的光谱预处理方法,分别基于实际确定和计算的DE和ME建立NIRS方程,然后使用验证样本进行验证。结果:从actu获得的NIRS方程最终确定的DE,校正的确定系数(RSQcal),交叉验证(R2Cv)和验证(RSQv)为0.89、0.87和0.86,确定的ME的这些值为0.87、0.86和0.86。根据计算得到的DE进行构建,RSQcal,R2cv和RSQv值分别为0.88、0.85和0.84,计算出的ME的这些值为0.86、0.84和0.82。其他三个由实际确定的能量和计算出的DE构成的方程式在应用于验证样本时产生了良好的预测性能(RPDv在2.53至2.69,> 2.50范围内)。结论:这些结果表明NIRS可以用作快速定量分析的定量方法确定饲喂生长中猪的玉米中的可用能量,以及基于实际确定的能量的NIRS方程比根据计算的能量值建立的NIRS方程具有更好的预测性能。

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  • 来源
    《畜牧与生物技术杂志(英文版)》 |2017年第1期|161-169|共9页
  • 作者单位

    State Key Lab of Animal Nutrition, College of Animal Science & Technology, China Agricultural University, Beijing 100193, China;

    State Key Lab of Animal Nutrition, College of Animal Science & Technology, China Agricultural University, Beijing 100193, China;

    State Key Lab of Animal Nutrition, College of Animal Science & Technology, China Agricultural University, Beijing 100193, China;

    State Key Lab of Animal Nutrition, College of Animal Science & Technology, China Agricultural University, Beijing 100193, China;

    State Key Lab of Animal Nutrition, College of Animal Science & Technology, China Agricultural University, Beijing 100193, China;

    State Key Lab of Animal Nutrition, College of Animal Science & Technology, China Agricultural University, Beijing 100193, China;

    State Key Lab of Animal Nutrition, College of Animal Science & Technology, China Agricultural University, Beijing 100193, China;

  • 收录信息 中国科学引文数据库(CSCD);
  • 原文格式 PDF
  • 正文语种 eng
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