2,590 research outputs found
Computational intelligence approaches to robotics, automation, and control [Volume guest editors]
No abstract available
L'intertextualité dans les publications scientifiques
La base de données bibliographiques de l'IEEE contient un certain nombre de duplications avérées avec indication des originaux copiés. Ce corpus est utilisé pour tester une méthode d'attribution d'auteur. La combinaison de la distance intertextuelle avec la fenêtre glissante et diverses techniques de classification permet d'identifier ces duplications avec un risque d'erreur très faible. Cette expérience montre également que plusieurs facteurs brouillent l'identité de l'auteur scientifique, notamment des collectifs de chercheurs à géométrie variable et une forte dose d'intertextualité acceptée voire recherchée
Algorithmic Techniques in Gene Expression Processing. From Imputation to Visualization
The amount of biological data has grown exponentially in recent decades. Modern biotechnologies, such as microarrays and next-generation sequencing, are capable to produce massive amounts of biomedical data in a single experiment. As the amount of the data is rapidly growing there is an urgent need for reliable computational methods for analyzing and visualizing it. This thesis addresses this need by studying how to efficiently and reliably analyze and visualize high-dimensional data, especially that obtained from gene expression microarray experiments.
First, we will study the ways to improve the quality of microarray data by replacing (imputing) the missing data entries with the estimated values for these entries. Missing value imputation is a method which is commonly used to make the original incomplete data complete, thus making it easier to be analyzed with statistical and computational methods. Our novel approach was to use curated external biological information as a guide for the missing
value imputation.
Secondly, we studied the effect of missing value imputation on the downstream data analysis methods like clustering. We compared multiple recent imputation algorithms against 8 publicly available microarray data sets. It was observed that the missing value imputation indeed is a rational way to improve the quality of biological data. The research revealed differences between the clustering results obtained with different imputation methods. On most data sets, the simple and fast k-NN imputation was good enough, but there were also needs for more advanced imputation methods, such as Bayesian Principal Component Algorithm (BPCA).
Finally, we studied the visualization of biological network data. Biological interaction networks are examples of the outcome of multiple biological experiments such as using the gene microarray techniques. Such networks are typically very large and highly connected, thus there is a need for fast algorithms for producing visually pleasant layouts. A computationally efficient way to produce layouts of large biological interaction networks was developed. The algorithm uses multilevel optimization within the regular force directed graph layout algorithm.Siirretty Doriast
Systematic gene function prediction from gene expression data by using a fuzzy nearest-cluster method
BACKGROUND: Quantitative simultaneous monitoring of the expression levels of thousands of genes under various experimental conditions is now possible using microarray experiments. However, there are still gaps toward whole-genome functional annotation of genes using the gene expression data. RESULTS: In this paper, we propose a novel technique called Fuzzy Nearest Clusters for genome-wide functional annotation of unclassified genes. The technique consists of two steps: an initial hierarchical clustering step to detect homogeneous co-expressed gene subgroups or clusters in each possibly heterogeneous functional class; followed by a classification step to predict the functional roles of the unclassified genes based on their corresponding similarities to the detected functional clusters. CONCLUSION: Our experimental results with yeast gene expression data showed that the proposed method can accurately predict the genes' functions, even those with multiple functional roles, and the prediction performance is most independent of the underlying heterogeneity of the complex functional classes, as compared to the other conventional gene function prediction approaches
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CHARACTERIZING ADAPTIVE NON-CODING CHANGES IN THE REGULATION OF HUMAN GENE EXPRESSION
Differential patterns of gene expression contribute to phenotypic differences between species. Understanding evolutionary changes in gene regulatory elements can help explain traits that separate humans from closely related species. Here, in two separate studies, we investigate gene expression and gene regulatory differences between humans our closest living evolutionary relatives, chimpanzees, in the context of uniquely human traits: increased susceptibility to epithelial cancers and neural developmental and functional processes that underlie our increased cognitive capacity. Using genomic methods to study gene expression and open chromatin, we compare human and chimpanzee responses to a serum challenge, an assay that that mimics patterns of gene expression that occur during cancer progression, and in another approach, we investigate the functional consequences of evolutionary changes in non-coding regulatory elements in neural progenitor cells and neurons. These studies identify recently evolved changes in physiological stress responses in humans, and patterns of adaptive changes in regulatory elements around highly conserved developmental pathways. Together, using these comparative genomic studies in relevant physiological contexts, we can thus further define the molecular basis for uniquely human phenotypes
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