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植物次生化合物光谱分析预测动物采食量研究进展
引用本文:王元素,洪绂曾,王堃.植物次生化合物光谱分析预测动物采食量研究进展[J].光谱学与光谱分析,2007,27(9):1770-1774.
作者姓名:王元素  洪绂曾  王堃
作者单位:1. 中国农业大学动物科技学院草地研究所,北京,100094;贵州省饲草饲料工作站,贵州,贵阳,550001
2. 中国农业大学动物科技学院草地研究所,北京,100094
基金项目:国家高技术研究发展计划(863计划)
摘    要:植食动物采食量的研究对提高动物生产力以及野生动植物保护有重要的意义,但长期以来对放牧动物和野生动物一直缺乏比较准确的采食量预测方法.植物次生化合物及其代谢物与动物采食量有相关关系,动物排泄物中次生代谢物种类及含量取决于其采食的植物次生化合物.应用波谱分析技术,对动物排泄物中的次生代谢物及其在植物中的前体物(对应的植物次生化合物)进行提取、分离和纯化、结构鉴定,并进行量化分析,建立次生代谢物与采食量之间的回归相关关系和浓度-比率模型,可以准确地预测放牧家畜和野生动物的采食量.最具预测采食量潜力的一类次生化合物是芳香族化合物及其衍生物,并已经在利用光谱技术的基础上,以单宁、链烷、类黄酮等作内源标记物预测采食量方面取得了进展.提出了存在问题和需进一步研究的方向.

关 键 词:采食量  植物次生化合物  次生代谢物  光谱分析  预测
文章编号:1000-0593(2007)09-1770-05
修稿时间:2007-01-10

Progress in Predicting Animal Feed Intake of Plant Secondary Compounds by Spectral Analysis
WANG Yuan-su,HONG Fu-zeng,WANG Kun.Progress in Predicting Animal Feed Intake of Plant Secondary Compounds by Spectral Analysis[J].Spectroscopy and Spectral Analysis,2007,27(9):1770-1774.
Authors:WANG Yuan-su  HONG Fu-zeng  WANG Kun
Institution:1. Institute of Grassland Science, College of Animal Science and Technology, China Agricultural University, Beijing 100094, China;2. Grass and Forage Service Station, Guizhou Province, Guiyang 550001, China
Abstract:Study on feed intake of phytophagic animals is a key issue in promoting animal productivity and conservation of wild life.However,how to accurately predict the feed intake of grazing animal and wild life is a long remaining problem.Under the mechanism of co-evolution,plant produces secondary compounds such as phenolics,terpenoids and nitrogen-containing compounds to avoid or reduce animal herbivorous damage as a defensive strategy,while animal attained detoxification capacity of bio-transforming and mineralizing the compounds by microbial activities and reactions such as hydrolysis and reduction.The attributes of feedstuff and the amount of a particular feed consumed by the animal affect directly the urinary excretion of secondary metabolites.Plant secondary compounds and their metabolites can be efficiently extracted,separated and structure-identified by spectroscopic analytic method.Then the feed intake of the animal can be accurately measured or predicted by the inference model of concentration-ratio that is based on the regression of correlating the secondary metabolites to the precursors in plant.Aromatic compounds,an universal occurrence in vascular plants,play an important role in predicting feed intake of ruminants.Progresses have been made all-around about the new method.Intensive studies have found that different species and developing stage of plant have varying kinds and levels of secondary compounds,and the age,gender and type of animal have different capacity of metabolizing the compounds.Increasing concentrations of the compounds in the diet led to a dose-dependent decrease in food intake best described as an exponential decay.Animals that had not previously been exposed to the compounds ate significantly more when first offered food containing the compound than on subsequent days.Advanced spectroscopic analytic method has been developed and widely applied in extraction(e.g.microwave assisted extraction and ultrasonic extraction),separation and purification(e.g.paper chromatography,VLC,GC,HSCCC,Micro-LC and HPLC),and structure-identification(e.g.Fourier transform infrared spectroscopy,ultraviolet spectroscopy,and nuclear magnetic resonance spectroscopy) of plant secondary compounds and their metabolites.Studies suggest that some aromatic compounds like phenolic alkaloids,flavonoids,tannins,lignin and N-alkane are suited internal markers and find that the method to predict animal feed intake of plant secondary compound by spectral analysis is quick,accurate and applicable.The further focus should be on selecting appropriate compounds and their fate in metabolizing and excretion,and the development of intelligentized spectroscopy equipments.
Keywords:Feed intake  Plant secondary compounds  Secondary metabolite  Spectrocopy  Prediction
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