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1.
J Microbiol Methods ; 65(1): 144-52, 2006 Apr.
Artículo en Inglés | MEDLINE | ID: mdl-16083982

RESUMEN

The goal of this research was to investigate the influence of the error rate of sequence determination on the differentiation of cloned SSU rRNA gene sequences for assessment of community structure. SSU rRNA cloned sequences from groundwater samples that represent different bacterial divisions were sequenced multiple times with the same sequencing primer. From comparison of sequence alignments with unedited data, confidence intervals were obtained from both a 'double binomial' model of sequence comparison and by non-parametric methods. The results indicated that similarity values below 0.9946 are likely derived from dissimilar sequences at a confidence level of 0.95, and not sequencing errors. The results confirmed that screening by direct sequence determination could be reliably used to differentiate at the species level. However, given sequencing errors comparable to those seen in this study, sequences with similarities above 0.9946 should be treated as the same sequence if a 95% confidence is desired.


Asunto(s)
ADN Bacteriano/genética , ARN Ribosómico/genética , Análisis de Secuencia de ADN/métodos , Microbiología del Agua , Secuencia de Bases , Intervalos de Confianza , ADN Bacteriano/química , Agua Dulce , Filogenia , Reacción en Cadena de la Polimerasa , ARN Ribosómico/química , ARN Ribosómico 16S/química , ARN Ribosómico 16S/genética , Alineación de Secuencia
2.
Appl Environ Microbiol ; 70(11): 6525-34, 2004 Nov.
Artículo en Inglés | MEDLINE | ID: mdl-15528515

RESUMEN

Genomic techniques commonly used for assessing distributions of microorganisms in the environment often produce small sample sizes. We investigated artificial neural networks for analyzing the distributions of nitrite reductase genes (nirS and nirK) and two sets of dissimilatory sulfite reductase genes (dsrAB1 and dsrAB2) in small sample sets. Data reduction (to reduce the number of input parameters), cross-validation (to measure the generalization error), weight decay (to adjust model parameters to reduce generalization error), and importance analysis (to determine which variables had the most influence) were useful in developing and interpreting neural network models that could be used to infer relationships between geochemistry and gene distributions. A robust relationship was observed between geochemistry and the frequencies of genes that were not closely related to known dissimilatory sulfite reductase genes (dsrAB2). Uranium and sulfate appeared to be the most related to distribution of two groups of these unusual dsrAB-related genes. For the other three groups, the distributions appeared to be related to pH, nickel, nonpurgeable organic carbon, and total organic carbon. The models relating the geochemical parameters to the distributions of the nirS, nirK, and dsrAB1 genes did not generalize as well as the models for dsrAB2. The data also illustrate the danger (generating a model that has a high generalization error) of not using a validation approach in evaluating the meaningfulness of the fit of linear or nonlinear models to such small sample sizes.


Asunto(s)
Bacterias/enzimología , Agua Dulce/química , Agua Dulce/microbiología , Variación Genética , Redes Neurales de la Computación , Nitrito Reductasas/genética , Oxidorreductasas actuantes sobre Donantes de Grupos Sulfuro/genética , Uranio/metabolismo , Bacterias/genética , Carbono/metabolismo , Concentración de Iones de Hidrógeno , Modelos Biológicos , Níquel/metabolismo , Sulfatos/metabolismo , Eliminación de Residuos Líquidos , Contaminación del Agua
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