Ana Carolina Campana Nascimento
Universidade Federal de Viçosa
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Publication
Featured researches published by Ana Carolina Campana Nascimento.
Crop Breeding and Applied Biotechnology | 2013
Moysés Nascimento; Luiz Alexandre Peternelli; Cosme Damião Cruz; Ana Carolina Campana Nascimento; Reinaldo de Paula Ferreira; Leonardo Lopes Bhering; Caio Césio Salgado
The purpose of this work was to evaluate a methodology of adaptability and phenotypic stability of alfalfa genotypes based on the training of an artificial neural network considering the methodology of Eberhart and Russell. Data from an experiment on dry matter production of 92 alfalfa genotypes (Medicago sativa L.) were used. The experimental design constituted of randomized blocks, with two repetitions. The genotypes were submitted to 20 cuttings, in the growing season of November 2004 to June 2006. Each cutting was considered an environment. The artificial neural network was able to satisfactorily classify the genotypes. In addition, the analysis presented high agreement rates, compared with the results obtained by the methodology of Eberhart and Russell.
Pesquisa Agropecuaria Brasileira | 2011
Moysés Nascimento; Fabyano Fonseca e Silva; Thelma Sáfadi; Ana Carolina Campana Nascimento; Reinaldo de Paula Ferreira; Cosme Damião Cruz
The objective of this work was to propose a Bayesian approach for the Eberhart & Russell method to evaluate the phenotypic adaptability and stability of alfafa (Medicago sativa) genotypes, as well as to evaluate the efficiency of the use of prior informative and noninformative distributions. Data from a randomized block design experiment evaluating the forage dry weight of 92 genotypes were used. The Bayesian methodology proposed was implemented in the free software R by the MCMCregress function of the MCMCpack package. To represent the noninformative prior distributions, a probability distribution with high variance was used; and, to represent the informative prior, a meta‑analysis concept was adopted, characterized by the use of information provided by previous studies. The comparison between the prior distributions was done using the Bayes Factor, with the BayesFactor function of the MCMCpack package, which indicated that an informative prior is more appropriate under the conditions of this study.
Revista Brasileira De Zootecnia | 2012
Ana Carolina Campana Nascimento; João Eustáquio de Lima; Marcelo José Braga; Moysés Nascimento; Adriano Provezano Gomes
O objetivo principal neste estudo foi analisar a influencia de variaveis tecnicas e economicas sobre os indices de eficiencia tecnica de produtores de leite de Minas Gerais ao longo de pontos distintos da distribuicao dos indices de eficiencia utilizando-se a tecnica de regressao quantilica. Os indices de eficiencia tecnica foram estimados com base em um modelo de fronteira estocastica utilizando-se dados de 875 produtores de leite do estado de Minas Gerais coletados no ano de 2005. Os principais resultados revelaram, na fronteira de producao, que possivelmente esta havendo utilizacao extensiva do fator terra. De modo geral, a variavel percentual de vacas em lactacao foi a mais relevante na explicacao da eficiencia tecnica em todos os quantis estudados, enquanto o percentual de mao-de-obra familiar utilizado foi importante para explicar apenas os menores niveis de eficiencia. Alem disso, foi encontrada diferenca significativa entre os coeficientes estimados dos quantis em estudo, o que mostra que as variaveis explicativas nao tem o mesmo impacto no aumento da eficiencia em todos os pontos da distribuicao.
PLOS ONE | 2017
Moysés Nascimento; Fabyano Fonseca e Silva; Thelma Sáfadi; Ana Carolina Campana Nascimento; Talles Eduardo Maciel Ferreira; Laís Mayara Azevedo Barroso; Camila Ferreira Azevedo; Simone Eliza Faccione Guimarães; Nick Vergara Lopes Serão
Gene expression time series (GETS) analysis aims to characterize sets of genes according to their longitudinal patterns of expression. Due to the large number of genes evaluated in GETS analysis, an useful strategy to summarize biological functional processes and regulatory mechanisms is through clustering of genes that present similar expression pattern over time. Traditional cluster methods usually ignore the challenges in GETS, such as the lack of data normality and small number of temporal observations. Independent Component Analysis (ICA) is a statistical procedure that uses a transformation to convert raw time series data into sets of values of independent variables, which can be used for cluster analysis to identify sets of genes with similar temporal expression patterns. ICA allows clustering small series of distribution-free data while accounting for the dependence between subsequent time-points. Using temporal simulated and real (four libraries of two pig breeds at 21, 40, 70 and 90 days of gestation) RNA-seq data set we present a methodology (ICAclust) that jointly considers independent components analysis (ICA) and a hierarchical method for clustering GETS. We compare ICAclust results with those obtained for K-means clustering. ICAclust presented, on average, an absolute gain of 5.15% over the best K-means scenario. Considering the worst scenario for K-means, the gain was of 84.85%, when compared with the best ICAclust result. For the real data set, genes were grouped into six distinct clusters with 89, 51, 153, 67, 40, and 58 genes each, respectively. In general, it can be observed that the 6 clusters presented very distinct expression patterns. Overall, the proposed two-step clustering method (ICAclust) performed well compared to K-means, a traditional method used for cluster analysis of temporal gene expression data. In ICAclust, genes with similar expression pattern over time were clustered together.
Revista Ceres | 2015
Moysés Nascimento; Adésio Ferreira; Ana Carolina Campana Nascimento; Fabyano Fonseca e Silva; Reinaldo de Paula Ferreira; Cosme Damião Cruz
This study aimed to evaluate the efficiency of multiple centroids to study the adaptability of alfalfa genotypes (Medicago sativa L.). In this method, the genotypes are compared with ideotypes defined by the bissegmented regression model, according to the researchers interest. Thus, genotype classification is carried out as determined by the objective of the researcher and the proposed recommendation strategy. Despite the great potential of the method, it needs to be evaluated under the biological context (with real data). In this context, we used data on the evaluation of dry matter production of 92 alfalfa cultivars, with 20 cuttings, from an experiment in randomized blocks with two repetitions carried out from November 2004 to June 2006. The multiple centroid method proved efficient for classifying alfalfa genotypes. Moreover, it showed no unambiguous indications and provided that ideotypes were defined according to the researchers interest, facilitating data interpretation.
PLOS ONE | 2018
Moysés Nascimento; Ana Carolina Campana Nascimento; Fabyano Fonseca e Silva; Leiri Daiane Barili; Naine Martins do Vale; José Eustáquio de Souza Carneiro; Cosme Damião Cruz; Pedro Crescêncio Souza Carneiro; Nick Vergara Lopes Serão
Flowering is an important agronomic trait. Quantile regression (QR) can be used to fit models for all portions of a probability distribution. In Genome-wide association studies (GWAS), QR can estimate SNP (Single Nucleotide Polymorphism) effects on each quantile of interest. The objectives of this study were to estimate genetic parameters and to use QR to identify genomic regions for phenological traits (Days to first flower—DFF; Days for flowering—DTF; Days to end of flowering—DEF) in common bean. A total of 80 genotypes of common beans, with 3 replicates were raised at 4 locations and seasons. Plants were genotyped for 384 SNPs. Traditional single-SNP and 9 QR models, ranging from equally spaced quantiles (τ) 0.1 to 0.9, were used to associate SNPs to phenotype. Heritabilities were moderate high, ranging from 0.32 to 0.58. Genetic and phenotypic correlations were all high, averaging 0.66 and 0.98, respectively. Traditional single-SNP GWAS model was not able to find any SNP-trait association. On the other hand, when using QR methodology considering one extreme quantile (τ = 0.1) we found, respectively 1 and 7, significant SNPs associated for DFF and DTF. Significant SNPs were found on Pv01, Pv02, Pv03, Pv07, Pv10 and Pv11 chromosomes. We investigated potential candidate genes in the region around these significant SNPs. Three genes involved in the flowering pathways were identified, including Phvul.001G214500, Phvul.007G229300 and Phvul.010G142900.1 on Pv01, Pv07 and Pv10, respectively. These results indicate that GWAS-based QR was able to enhance the understanding on genetic architecture of phenological traits (DFF and DTF) in common bean.
Journal of animal science and biotechnology | 2017
Laís Mayara Azevedo Barroso; Moysés Nascimento; Ana Carolina Campana Nascimento; Fabyano Fonseca e Silva; N. V. L. Serão; C. D. Cruz; Marcos Deon Vilela de Resende; F. L. Silva; Camila Ferreira Azevedo; Paulo Sávio Lopes; Simone Eliza Facioni Guimarães
BackgroundGenomic growth curves are generally defined only in terms of population mean; an alternative approach that has not yet been exploited in genomic analyses of growth curves is the Quantile Regression (QR). This methodology allows for the estimation of marker effects at different levels of the variable of interest. We aimed to propose and evaluate a regularized quantile regression for SNP marker effect estimation of pig growth curves, as well as to identify the chromosome regions of the most relevant markers and to estimate the genetic individual weight trajectory over time (genomic growth curve) under different quantiles (levels).ResultsThe regularized quantile regression (RQR) enabled the discovery, at different levels of interest (quantiles), of the most relevant markers allowing for the identification of QTL regions. We found the same relevant markers simultaneously affecting different growth curve parameters (mature weight and maturity rate): two (ALGA0096701 and ALGA0029483) for RQR(0.2), one (ALGA0096701) for RQR(0.5), and one (ALGA0003761) for RQR(0.8). Three average genomic growth curves were obtained and the behavior was explained by the curve in quantile 0.2, which differed from the others.ConclusionsRQR allowed for the construction of genomic growth curves, which is the key to identifying and selecting the most desirable animals for breeding purposes. Furthermore, the proposed model enabled us to find, at different levels of interest (quantiles), the most relevant markers for each trait (growth curve parameter estimates) and their respective chromosomal positions (identification of new QTL regions for growth curves in pigs). These markers can be exploited under the context of marker assisted selection while aiming to change the shape of pig growth curves.
Revista de Economia Contemporânea | 2011
Ana Carolina Campana Nascimento; Wilson da Cruz Vieira; Marcelo José Braga
This paper aims to identify possible patterns of price wars and the formation of collusion by the airlines that operate in the route Rio de Janeiro - Sao Paulo (TAM and GOL) and estimate the conditions that facilitated the two phenomena in the period 2002 - 2010. To this end, we used game theory, economic theory of cartels and logit models as analytical tools. The results show that the determinants of these two phenomena are different for each airline: TAM had a higher probability of collusion formation than GOL in the analyzed period, while the latter was more likely to enter a price war than in collusion. Furthermore, the variables used in this study could not explain the probability of TAM practice price war.
Archive | 2013
Laís Mayara Azevedo Barroso; Moysés Nascimento; Ana Carolina Campana Nascimento; Fabyano Silva; R. de P. Ferreira
Semina-ciencias Agrarias | 2013
Moysés Nascimento; Ana Carolina Campana Nascimento; Marcelo Ângelo Cirillo; Adésio Ferreira; Luiz Alexandre Peternelli; Reinaldo Ferreira de Paula