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Diet influences the ecology of lactic acid bacteria and Escherichia coli along the digestive tract of cattle: neural networks and 16S rDNA

机译:饮食影响沿牛的消化道乳酸菌和大肠杆菌的生态学:神经网络和16s rdna

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In this manuscript, the authors have sought to gain a better understanding of the interactions between Escherichia coli and lactic acid bacteria (LAB) isolated from Rogossa MRS agar along the digestive tract of grain- and forage-fed cattle. E. coli from cattle receiving a high-grain diet were more numerous (P0·05) than from the high-forage diet and the highest numbers were in the faeces. Isolates on Rogossa MRS agar were always greater in the high-grain diet (P0·05) and contained a significant number of LAB. A random set of Rogossa MRS agar colonies was selected and artificial neural networks were used to develop a relationship between colony description and species which was validated using sequence analysis (16S rDNA). The neural networks correctly predicted species in more than 80?% of cases and was composed, primarily, of Lactobacillus vitulinus, Lactobacillus ruminis, Selenomonas ruminantium, Streptococcus bovis, Acidaminococcus fermentans and Megasphaera elsdenii. In conjunction with statistical diversity indices, it was demonstrated that diversity in the high-fibre diet was always lower and was a consequence of the dominance of Str. bovis. In contrast, the diversity in the high-grain diet was greater (P0·05) and was a consequence of the decline in Str. bovis. These data demonstrate that there is a positive relationship between coliform and LAB isolates throughout the digestive tract of cattle, and diet is the major factor regulating bacterial composition.
机译:在这一原稿中,作者试图了解沿着谷物和饲喂牛的消化道,从Rogossa Mrs琼脂中分离的大肠杆菌和乳酸菌(实验室)之间的相互作用。来自接受高粒饮食的牛的大肠杆菌比从高饲料饮食中获得更多(p <0·05),最高数量在粪便中。 Rogossa Mrs Agar的分离物在高粒饮食中始终更大(P <0·05)并包含大量的实验室。选择一个随机的Rogossa琼脂菌落,并且使用人工神经网络在使用序列分析(16s rDNA)验证的菌落描述和物种之间的关系。神经网络在80多个案件中正确预测物种,主要是乳酸杆菌,乳酸杆菌,Ruminis,Selenomonas强者,链球菌萎缩,酰胺球菌发酵血清和梅代埃尔斯顿氏菌属。结合统计多样性指数,据证明,高纤维饮食中的多样性总是较低,并且是str的主导地位的结果。 Bovis。相比之下,高粒饮食中的多样性更大(P <0·05),并且是str下降的结果。 Bovis。这些数据表明,在牛的消化道中的大肠菌和实验室分离物之间存在正相关,饮食是调节细菌组合物的主要因素。

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