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Predicting diet quality of donkeys via fecal-NIRS calibrations.

机译:通过粪便近红外光谱仪校准来预测驴的饮食质量。

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摘要

Successful applications of fecal-near infrared reflectance spectroscopy (fecal-NIRS) techniques have been reported for ruminant animals. Information on the ability of fecal-NIRS to characterize diet quality in equines is lacking. The objective of these studies was to determine the potential of fecal-NIRS to predict diet quality of free-grazing equines. Two independent in vivo feeding trials, one in Texas (United States) and one in Kenya, were conducted to generate paired samples of diet chemistry:fecal spectrum (D:F). Using 20 female donkeys (Equus asinus), 14 (10 US, 4 Kenya) in vivo pen feeding trials were conducted to generate 140 (100 US, 40 Kenya) D:F paired samples. Over 25 species of forage and crop residues ranging from 3.3% to 21.4% crude protein (CP) were used to blend unique diets. Three CP predictive equations based on paired samples from US alone, Kenya alone, US+Kenya combined, and one predictive equation for digestible organic matter (DOM) from US alone were developed. The standard errors of calibration (SEC) and R2 values were 0.77 and 0.97, 0.97 and 0.95, and 0.88 and 0.90, respectively, for the US, US+Kenya, and Kenya CP equations. The US DOM equation resulted in an SEC of 2.58 with a corresponding R2 of 0.60. Validation of the US CP equation using an independent dataset resulted in standard error of prediction (SEP) and R2 of 1.79 and 0.82, respectively, indicating acceptable predictive ability. The validation results (SEP=15.56) for the US DOM equation were not satisfactory. We calibrated and validated fecal-NIRS equations to predict the DOM and CP contents of diets for donkeys. Crude protein content of diets was predicted with acceptable levels of accuracy, but prediction of diet digestibility was less successful. The degree of accuracy obtained for CP equations indicated that fecal-NIRS can be considered as a tool for routine nutritional management of donkeys.
机译:已经报道了反刍动物的粪便-近红外反射光谱技术(粪便-NIRS)已成功应用。缺乏关于粪便近红外光谱分析仪表征马中饮食质量的能力的信息。这些研究的目的是确定粪便近红外光谱法预测自由放牧马的饮食质量的潜力。进行了两项独立的体内喂养试验,一项在美国德克萨斯州,另一项在肯尼亚,以生成饮食化学:粪便谱(D:F)的配对样本。使用20只雌性驴(Equus asinus),进行了14例(10 US,4肯尼亚)体内笔喂养试验,以产生140(100 US,40肯尼亚)D:F配对样品。超过25种草料和农作物残渣在3.3%至21.4%的粗蛋白(CP)范围内用于混合独特的日粮。基于美国单独,肯尼亚单独,美国+肯尼亚的配对样本,开发了三个CP预测方程,以及一个单独来自美国的可消化有机物(DOM)预测方程。对于美国,美国+肯尼亚和肯尼亚CP方程,校准(SEC)和R2值的标准误分别为0.77和0.97、0.97和0.95、0.88和0.90。 US DOM方程得出的SEC为2.58,相应的R2为0.60。使用独立数据集对US CP方程进行的验证分别导致标准预测误差(SEP)和R2分别为1.79和0.82,表明可接受的预测能力。美国DOM方程的验证结果(SEP = 15.56)不令人满意。我们校准并验证了粪NIRS方程,以预测驴饮食中的DOM和CP含量。可以预测日粮中的粗蛋白质含量具有可接受的准确性水平,但日粮消化率的预测不太成功。通过CP方程获得的准确度表明,粪便近红外光谱可被认为是驴日常营养管理的工具。

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