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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
11

The development and application of informatics-based systems for the analysis of the human transcriptome.

Kelso, Janet January 2003 (has links)
<p>Despite the fact that the sequence of the human genome is now complete it has become clear that the elucidation of the transcriptome is more complicated than previously expected. There is mounting evidence for unexpected and previously underestimated phenomena such as alternative splicing in the transcriptome. As a result, the identification of novel transcripts arising from the genome continues. Furthermore, as the volume of transcript data grows it is becoming increasingly difficult to integrate expression information which is from different sources, is stored in disparate locations, and is described using differing terminologies. Determining the function of translated transcripts also remains a complex task. Information about the expression profile &ndash / the location and timing of transcript expression &ndash / provides evidence that can be used in understanding the role of the expressed transcript in the organ or tissue under study, or in developmental pathways or disease phenotype observed.<br /> <br /> In this dissertation I present novel computational approaches with direct biological applications to two distinct but increasingly important areas of research in gene expression research. The first addresses detection and characterisation of alternatively spliced transcripts. The second is the construction of an hierarchical controlled vocabulary for gene expression data and the annotation of expression libraries with controlled terms from the hierarchies. In the final chapter the biological questions that can be approached, and the discoveries that can be made using these systems are illustrated with a view to demonstrating how the application of informatics can both enable and accelerate biological insight into the human transcriptome.</p>
12

A Neuro-Fuzzy Approach for Functional Genomics Data Interpretation and Analysis

Neagu, Daniel, Palade, V. January 2003 (has links)
No
13

Algorithms for the analysis of gene expression data

Venet, David 07 December 2004 (has links)
High-throughput gene expression data have been generated on a large scale by biologists.<p>The thesis describe a set of tools for the analysis of such data. It is specially gearded towards microarray data. / Doctorat en sciences appliquées / info:eu-repo/semantics/nonPublished
14

Meta-aprendizagem aplicada à classificação de dados de expressão gênica / Meta-learning applied to gene expression data classification

Souza, Bruno Feres de 26 October 2010 (has links)
Dentre as aplicações mais comuns envolvendo microarrays, pode-se destacar a classificação de amostras de tecido, essencial para a identificação correta da ocorrência de câncer. Essa classificação é realizada com a ajuda de algoritmos de Aprendizagem de Máquina. A escolha do algoritmo mais adequado para um dado problema não é trivial. Nesta tese de doutorado, estudou-se a utilização de meta-aprendizagem como uma solução viável. Os resultados experimentais atestaram o sucesso da aplicação utilizando um arcabouço padrão para caracterização dos dados e para a construção da recomendação. A partir de então, buscou-se realizar melhorias nesses dois aspectos. Inicialmente, foi proposto um novo conjunto de meta-atributos baseado em índices de validação de agrupamentos. Em seguida, estendeu-se o método de construção de rankings kNN para ponderar a influência dos vizinhos mais próximos. No contexto de meta-regressão, introduziu-se o uso de SVMs para estimar o desempenho de algoritmos de classificação. Árvores de decisão também foram empregadas para a construção da recomendação de algoritmos. Ante seu desempenho inferior, empregou-se um esquema de comitês de árvores, que melhorou sobremaneira a qualidade dos resultados / Among the most common applications involving microarray, one can highlight the classification of tissue samples, which is essential for the correct identification of the occurrence of cancer and its type. This classification takes place with the aid of machine learning algorithms. Choosing the best algorithm for a given problem is not trivial. In this thesis, we studied the use of meta-learning as a viable solution. The experimental results confirmed the success of the application using a standard framework for characterizing data and constructing the recommendation. Thereafter, some improvements were made in these two aspects. Initially, a new set of meta-attributes was proposed, which are based on cluster validation indices. Then the kNN method for ranking construction was extended to weight the influence of nearest neighbors. In the context of meta-regression, the use of SVMs was introduced to estimate the performance of ranking algorithms. Decision trees were also employed for recommending algorithms. Due to their low performance, a ensemble of trees was employed, which greatly improved the quality of results
15

Statistical Analysis of High-Dimensional Gene Expression Data

Justin Zhu Unknown Date (has links)
The use of diagnostic rules based on microarray gene expression data has received wide attention in bioinformatics research. In order to form diagnostic rules, statistical techniques are needed to form classifiers with estimates for their associated error rates, and to correct for any selection biases in the estimates. There are also the associated problems of identifying the genes most useful in making these predictions. Traditional statistical techniques require the number of samples to be much larger than the number of features. Gene expression datasets usually have a small number of samples, but a large number of features. In this thesis, some new techniques are developed, and traditional techniques are used innovatively after appropriate modification to analyse gene expression data. Classification: We first consider classifying tissue samples based on the gene expression data. We employ an external cross-validation with recursive feature elimination to provide classification error rates for tissue samples with different numbers of genes. The techniques are implemented as an R package BCC (Bias-Corrected Classification), and are applied to a number of real-world datasets. The results demonstrate that the error rates vary with different numbers of genes. For each dataset, there is usually an optimal number of genes that returns the lowest cross-validation error rate. Detecting Differentially Expressed Genes: We then consider the detection of genes that are differentially expressed in a given number of classes. As this problem concerns the selection of significant genes from a large pool of candidate genes, it needs to be carried out within the framework of multiple hypothesis testing. The focus is on the use of mixture models to handle the multiplicity issue. The mixture model approach provides a framework for the estimation of the prior probability that a gene is not differentially expressed. It estimates various error rates, including the FDR (False Discovery Rate) and the FNR (False Negative Rate). We also develop a method for selecting biomarker genes for classification, based on their repeatability among the highly differentially expressed genes in cross-validation trials. The latter method incorporates both gene selection and classification. Selection Bias: When forming a prediction rule on the basis of a small number of classified tissue samples, some form of feature (gene) selection is usually adopted. This is a necessary step if the number of features is high. As the subset of genes used in the final form of the rule has not been randomly selected but rather chosen according to some criteria designed to reflect the predictive power of the rule, there will be a selection bias inherent in estimates of the error rates of the rule if care is not taken. Various situations are presented where selection biases arise in the formation of a prediction rule and where there is a consequent need for the correction of the biases. Three types of selection biases are analysed: selection bias from not using external cross-validation, selection bias of not working with the full set of genes, and the selection bias from optimizing the classification error rate over a number of subsets obtained according to a selection method. Here we mostly employ the support vector machine with recursive feature elimination. This thesis includes a description of cross-validation schemes that are able to correct for these selection biases. Furthermore, we examine the bias incurred when using the predicted rather than the true outcomes to define the class labels in forming and evaluating the performance of the discriminant rule. Case Study: We present a case study using the breast cancer datasets. In the study, we compare the 70 highly differentially expressed genes proposed by van 't Veer and colleagues, against the set of the genes selected using our repeatability method. The results demonstrate that there is more than one set of biomarker genes. We also examine the selection biases that may exist when analysing this dataset. The selection biases are demonstrated to be substantial.
16

Hierarchical Multi-Bottleneck Classification Method And Its Application to DNA Microarray Expression Data

Xiong, Xuejian, Wong, Weng Fai, Hsu, Wen Jing 01 1900 (has links)
The recent development of DNA microarray technology is creating a wealth of gene expression data. Typically these datasets have high dimensionality and a lot of varieties. Analysis of DNA microarray expression data is a fast growing research area that interfaces various disciplines such as biology, biochemistry, computer science and statistics. It is concluded that clustering and classification techniques can be successfully employed to group genes based on the similarity of their expression patterns. In this paper, a hierarchical multi-bottleneck classification method is proposed, and it is applied to classify a publicly available gene microarray expression data of budding yeast Saccharomyces cerevisiae. / Singapore-MIT Alliance (SMA)
17

ChlamyCyc : an integrative systems biology database and web-portal for Chlamydomonas reinhardtii

May, Patrick, Christian, Jan-Ole, Kempa, Stefan, Walther, Dirk January 2009 (has links)
Background: The unicellular green alga Chlamydomonas reinhardtii is an important eukaryotic model organism for the study of photosynthesis and plant growth. In the era of modern highthroughput technologies there is an imperative need to integrate large-scale data sets from highthroughput experimental techniques using computational methods and database resources to provide comprehensive information about the molecular and cellular organization of a single organism. Results: In the framework of the German Systems Biology initiative GoFORSYS, a pathway database and web-portal for Chlamydomonas (ChlamyCyc) was established, which currently features about 250 metabolic pathways with associated genes, enzymes, and compound information. ChlamyCyc was assembled using an integrative approach combining the recently published genome sequence, bioinformatics methods, and experimental data from metabolomics and proteomics experiments. We analyzed and integrated a combination of primary and secondary database resources, such as existing genome annotations from JGI, EST collections, orthology information, and MapMan classification. Conclusion: ChlamyCyc provides a curated and integrated systems biology repository that will enable and assist in systematic studies of fundamental cellular processes in Chlamydomonas. The ChlamyCyc database and web-portal is freely available under http://chlamycyc.mpimp-golm.mpg.de.
18

Deriving Genetic Networks from Gene Expression Data and Prior Knowledge

Lindlöf, Angelica January 2001 (has links)
In this work three different approaches for deriving genetic association networks were tested. The three approaches were Pearson correlation, an algorithm based on the Boolean network approach and prior knowledge. Pearson correlation and the algorithm based on the Boolean network approach derived associations from gene expression data. In the third approach, prior knowledge from a known genetic network of a related organism was used to derive associations for the target organism, by using homolog matching and mapping the known genetic network to the related organism. The results indicate that the Pearson correlation approach gave the best results, but the prior knowledge approach seems to be the one most worth pursuing
19

Learning gene interactions from gene expression data dynamic Bayesian networks

Sigursteinsdottir, Gudrun January 2004 (has links)
Microarray experiments generate vast amounts of data that evidently reflect many aspects of the underlying biological processes. A major challenge in computational biology is to extract, from such data, significant information and knowledge about the complex interplay between genes/proteins. An analytical approach that has recently gained much interest is reverse engineering of genetic networks. This is a very challenging approach, primarily due to the dimensionality of the gene expression data (many genes, few time points) and the potentially low information content of the data. Bayesian networks (BNs) and its extension, dynamic Bayesian networks (DBNs) are statistical machine learning approaches that have become popular for reverse engineering. In the present study, a DBN learning algorithm was applied to gene expression data produced from experiments that aimed to study the etiology of necrotizing enterocolitis (NEC), a gastrointestinal inflammatory (GI) disease that is the most common GI emergency in neonates. The data sets were particularly challenging for the DBN learning algorithm in that they contain gene expression measurements for relatively few time points, between which the sampling intervals are long. The aim of this study was, therefore, to evaluate the applicability of DBNs when learning genetic networks for the NEC disease, i.e. from the above-mentioned data sets, and use biological knowledge to assess the hypothesized gene interactions. From the results, it was concluded that the NEC gene expression data sets were not informative enough for effective derivation of genetic networks for the NEC disease with DBNs and Bayesian learning.
20

Deriving Genetic Networks from Gene Expression Data and Prior Knowledge

Lindlöf, Angelica January 2001 (has links)
<p>In this work three different approaches for deriving genetic association networks were tested. The three approaches were Pearson correlation, an algorithm based on the Boolean network approach and prior knowledge. Pearson correlation and the algorithm based on the Boolean network approach derived associations from gene expression data. In the third approach, prior knowledge from a known genetic network of a related organism was used to derive associations for the target organism, by using homolog matching and mapping the known genetic network to the related organism. The results indicate that the Pearson correlation approach gave the best results, but the prior knowledge approach seems to be the one most worth pursuing</p>

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