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首页> 外文期刊>Rangeland Ecology & Management >Fecal near-infrared reflectance spectroscopy to predict Leymus chinensis of diets from penned sheep in north China.
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Fecal near-infrared reflectance spectroscopy to predict Leymus chinensis of diets from penned sheep in north China.

机译:粪便近红外反射光谱法可预测华北圈养绵羊日粮中的羊草(Leymus chinensis)。

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Selective foraging among free-ranging herbivores can make measuring botanical composition of diets challenging. Using near-infrared reflectance spectroscopy (NIRS) on feces for predicting botanical components of individual animal diets is a novel method for studying diet selection. This study was conducted to determine the ability of fecal NIRS to predict the percentage of consumption of Leymus chinensis (Trin.) Tzvel., a dominant species in north China, by sheep (Ovis aries L.). The calibration data set consisted of 47 diets of known L. chinensis composition, paired with corresponding fecal spectra. These pairs were generated in a trial using restricted feeding. Validation pairs (n=9) were collected in a similar trial that used ad libitum feeding. Derived coefficients of determination (R2) and standard error of calibration were 0.99% and 2.2% for partial least squares (PLS) regression and 0.89% and 7.3% for stepwise regression, respectively. Derived coefficients of determination (r2) and standard error of prediction were 0.78% and 4.8% for PLS regression and 0.90% and 3.2% for stepwise regression, respectively. PLS regression resulted in better calibration than stepwise regression, but when the calibration data set was small, stepwise regression improved the precision and accuracy of predictions compared with the PLS regression. Results of the present study show that a fecal NIRS equation developed from a restricted feeding trial could be used to predict the percentage of L. chinensis in fecal materials collected from voluntary feeding trials.
机译:在自由放牧的食草动物中进行选择性觅食会使饮食中植物性成分的测量具有挑战性。在粪便上使用近红外反射光谱(NIRS)预测单个动物饮食的植物成分是研究饮食选择的一种新方法。进行这项研究是为了确定粪便NIRS预测绵羊( Ovis aries <的)在中国北方优势种羊草(Trin。)Tzvel。>的消费百分比的能力。 / i> L.)。校准数据集由47种已知L的饮食组成。组成,并与相应的粪便光谱配对。这些对是在限制饲喂的试验中产生的。在使用随意喂养的类似试验中收集了验证对( n = 9)。偏最小二乘(PLS)回归的推导测定系数( R 2 )和标准校正误差为逐步最小回归(PLS)分别为0.99%和2.2%,逐步回归为0.89%和7.3% , 分别。 PLS回归的确定系数( r 2 )和预测的标准误分别为0.78%和4.8%,逐步回归的分别为0.90%和3.2%。 PLS回归比逐步回归具有更好的校准效果,但是当校准数据集较小时,与PLS回归相比,逐步回归提高了预测的准确性和准确性。本研究的结果表明,由限制性喂养试验开发的粪便NIRS方程可用于预测iL的百分比。自愿进食试验收集的粪便中的中华。

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