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首页> 外文期刊>Applied and Environmental Microbiology >Natural Microbial Community Compositions Compared by a Back-Propagating Neural Network and Cluster Analysis of 5S rRNA.
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Natural Microbial Community Compositions Compared by a Back-Propagating Neural Network and Cluster Analysis of 5S rRNA.

机译:通过反向传播神经网络和5S rRNA的聚类分析比较天然微生物群落组成。

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The community compositions of free-living and particle-associated bacteria in the Chesapeake Bay estuary were analyzed by comparing banding patterns of stable low-molecular-weight RNA (SLMW RNA) which include 5S rRNA and tRNA molecules. By analyzing images of autoradiographs of SLMW RNAs on polyacrylamide gels, band intensities of 5S rRNA were converted to binary format for transmission to a back-propagating neural network (NN). The NN was trained to relate binary input to sample stations, collection times, positions in the water column, and sample types (e.g., particle-associated versus free-living communities). Dendrograms produced by using Euclidean distance and average and Ward's linkage methods on data of three independently trained NNs yielded the following results. (i) Community compositions of Chesapeake Bay water samples varied both seasonally and spatially. (ii) Although there was no difference in the compositions of free-living and particle-associated bacteria in the summer, these community types differed significantly in the winter. (iii) In the summer, most bay samples had a common 121-nucleotide 5S rRNA molecule. Although this band occurred in the top water of midbay samples, it did not occur in particle-associated communities of bottom-water samples. (iv) Regardless of the season, midbay samples had the greatest variety of 5S rRNA sizes. The utility of NNs for interpreting complex banding patterns in electrophoresis gels was demonstrated.
机译:通过比较包括5S rRNA和tRNA分子在内的稳定的低分子量RNA(SLMW RNA)的带型,分析了切萨皮克湾河口的自由生活和与颗粒相关的细菌的群落组成。通过分析聚丙烯酰胺凝胶上SLMW RNA的放射自显影照片,将5S rRNA的条带强度转换为二进制格式,以传输至反向传播神经网络(NN)。 NN被训练为将二进制输入与采样站,采集时间,水柱中的位置以及样品类型(例如,与粒子相关的社区与自由的社区)相关联。通过使用欧几里德距离和平均值以及Ward的连锁方法对三个独立训练的神经网络的数据生成的树状图产生以下结果。 (i)切萨皮克湾水样品的群落组成在季节和空间上都变化。 (ii)尽管夏季自由活动细菌和与颗粒相关的细菌的组成没有差异,但冬季这些群落类型却有显着差异。 (iii)在夏天,大多数海湾样品都具有共同的121个核苷酸的5S rRNA分子。尽管该谱带出现在中海湾样品的顶部水域中,但它没有出现在与底部水样品的颗粒相关的群落中。 (iv)不论季节如何,中海湾样品的5S rRNA大小变化最大。证明了神经网络在解释电泳凝胶中复杂的带状图谱上的实用性。

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