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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.
1

Computational models for extracting structural signals from noisy high-throughput sequencing data: 通过计算模型来提取高通量测序数据中的分子结构信息 / 通过计算模型来提取高通量测序数据中的分子结构信息 / CUHK electronic theses & dissertations collection / Computational models for extracting structural signals from noisy high-throughput sequencing data: Tong guo ji suan mo xing lai ti qu gao tong liang ce xu shu ju zhong de fen zi jie gou xin xi / Tong guo ji suan mo xing lai ti qu gao tong liang ce xu shu ju zhong de fen zi jie gou xin xi

January 2015 (has links)
Hu, Xihao. / Thesis Ph.D. Chinese University of Hong Kong 2015. / Includes bibliographical references (leaves 147-161). / Abstracts also in Chinese. / Title from PDF title page (viewed on 26, October, 2016). / Hu, Xihao.
2

A multi-agent model for DNA analysis

高銘謙, Ko, Ming-him. January 1999 (has links)
published_or_final_version / Electrical and Electronic Engineering / Master / Master of Philosophy
3

Finding motif pairs from protein interaction networks

Siu, Man-hung., 蕭文鴻. January 2008 (has links)
published_or_final_version / Computer Science / Master / Master of Philosophy
4

On multiple sequence alignment

Wang, Shu, 1973- 29 August 2008 (has links)
The tremendous increase in biological sequence data presents us with an opportunity to understand the molecular and cellular basis for cellular life. Comparative studies of these sequences have the potential, when applied with sufficient rigor, to decipher the structure, function, and evolution of cellular components. The accuracy and detail of these studies are directly proportional to the quality of these sequences alignments. Given the large number of sequences per family of interest, and the increasing number of families to study, improving the speed, accuracy and scalability of MSA is becoming an increasingly important task. In the past, much of interest has been on Global MSA. In recent years, the focus for MSA has shifted from global MSA to local MSA. Local MSA is being needed to align variable sequences from different families/species. In this dissertation, we developed two new algorithms for fast and scalable local MSA, a three-way-consistency-based MSA and a biclustering -based MSA. The first MSA algorithm is a three-way-Consistency-Based MSA (CBMSA). CBMSA applies alignment consistency heuristics in the form of a new three-way alignment to MSA. While three-way consistency approach is able to maintain the same time complexity as the traditional pairwise consistency approach, it provides more reliable consistency information and better alignment quality. We quantify the benefit of using three-way consistency as compared to pairwise consistency. We have also compared CBMSA to a suite of leading MSA programs and CBMSA consistently performs favorably. We also developed another new MSA algorithm, a biclustering-based MSA. Biclustering is a clustering method that simultaneously clusters both the domain and range of a relation. A challenge in MSA is that the alignment of sequences is often intended to reveal groups of conserved functional subsequences. Simultaneously, the grouping of the sequences can impact the alignment; precisely the kind of dual situation biclustering algorithms are intended to address. We define a representation of the MSA problem enabling the application of biclustering algorithms. We develop a computer program for local MSA, BlockMSA, that combines biclustering with divide-and-conquer. BlockMSA simultaneously finds groups of similar sequences and locally aligns subsequences within them. Further alignment is accomplished by dividing both the set of sequences and their contents. The net result is both a multiple sequence alignment and a hierarchical clustering of the sequences. BlockMSA was compared with a suite of leading MSA programs. With respect to quantitative measures of MSA, BlockMSA scores comparable to or better than the other leading MSA programs. With respect to biological validation of MSA, the other leading MSA programs lag BlockMSA in their ability to identify the most highly conserved regions.
5

Finding a needle in haystack: the Eukaryotic selenoproteome

Chapple, Charles E. 15 July 2009 (has links)
Les selenoproteïnes constitueixen una família diversa de proteïnes, caracteritzada per la presència del Seleni (Se), en forma de l'amino àcid atípic, la selenocisteïna (Sec). La selenocisteïna, coneguda com l'amino àcid 21, és similar a la cisteïna (Cys) amb un àtom de seleni en lloc de sofre (S). Les selenoproteïnes són els responsables majoritaris dels efectes biològics del seleni i s'ha observat que poden estar implicades en la infertilitat masculina, el càncer, algunes malalties coronàries,l'activació de virus latents i l'envelliment. La selenocisteïna es codifica pel codó UGA, normalment codó de parada (STOP). Per a la recodificació correcta del UGA són necessaris diversos factors. A la part 3' de la regió no traduïda (UTR) dels transcrits dels gens de selenoproteïnes en organismes eucariotes s'hi troba una estructura de "stem-loop" anomenada SECIS. La proteïna SBP2 interactua amb el SECIS, així com amb el ribosoma, i forma un complex amb el factor d'elongació EFsec i el tRNA de la selenocisteïna, el tRNASec. Donat que el codó TGA normalment significa fi de la traducció, les formes tradicionals de cerca de gens no el reconeixen com a codó codificant. Per aquesta raó ha estat necessari desenvolupar una metodologia específica per a la predicció de gens de selenoproteïnes. En els últims anys, hem contribuït a la descripció del selenoproteoma eucariota amb el descobriment de noves famílies (Castellano et al., 2005), amb l'elaboració de nous mètodes (Taskov et al., 2005; Chapple et al., 2009) i l'anotació de diferents genomes (Jaillon et al., 2004; Drosophila 12 genomes Consortium, 2007; Bovine Genome Sequencing and Analysis Consortium, 2009). Finalment, hem identificat el primer animal que no té selenoproteïnes (Drosophila 12 genomes Consortium, 2007; Chapple and Guigó, 2008), un descobriment soprenent donat que, fins el moment, es creia que les selenoproteïnes eren essencials per la vida animal. / Selenoproteins are a diverse family of proteins containing the trace element Selenium (Se)in the form of the non-canonical amino acid selenocysteine (Sec). Selenocysteine, the 21st amino acid, is similar to cysteine (Cys)but with Se replacing Sulphur. In many cases the homologous gene of a known selenoprotein is present with cysteine in the place of Sec in a different genome. Selenoproteins are believed to be the effectors of the biological functions of Selenium and have been implicated in male infertility, cancer and heart diseases, viral expression and ageing. Selenocysteine is coded by the opal STOP codon (TGA). A number of factors combine to achieve the co-translational recoding of TGA to Sec. The 3' Untranslated regions (UTRs) of eukaryotic selenoprotein transcripts contain a stem-loop structure called a Sec Insertion Sequence (SECIS) element. This is recognised by the Secis Binding Protein 2 (SBP2), which binds to both the SECIS element and the ribosome. SBP2, in turn, recruits the Sec-specific Elongation Factor EFsec, and the selenocysteine transfer RNA, tRNASec. The dual meaning of the TGA codon means that selenoprotein genes are often mispredicted by the standard annotation pipelines. The correct prediction of these genes, therefore, requires the development of specific methods. In the past few years we have contributed significally to the description of the eukaryotic selenoproteome2 with the discovery of novel families (Castellano et al., 2005), the elaboration of novel methods (Taskov et al., 2005; Chapple et al., 2009) and the annotation of different genomes (Jaillon et al., 2004; Drosophila 12 genomes Consortium, 2007; Bovine Genome Sequencing and Analysis Consortium, 2009). Finally, and perhaps most importantly, we have identified the first animal to lack selenoprotein genes (Drosophila 12 genomes Consortium, 2007; Chapple and Guigó, 2008). This last finding is particularly surprising because it had previously been believed that selenoproteins were essential for animal life.

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