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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

Positive-Unlabeled Learning in the Context of Protein Function Prediction

Youngs, Noah 19 December 2014 (has links)
<p> With the recent proliferation of large, unlabeled data sets, a particular subclass of semisupervised learning problems has become more prevalent. Known as positive-unlabeled learning (PU learning), this scenario provides only positive labeled examples, usually just a small fraction of the entire dataset, with the remaining examples unknown and thus potentially belonging to either the positive or negative class. Since the vast majority of traditional machine learning classifiers require both positive and negative examples in the training set, a new class of algorithms has been developed to deal with PU learning problems.</p><p> A canonical example of this scenario is topic labeling of a large corpus of documents. Once the size of a corpus reaches into the thousands, it becomes largely infeasible to have a curator read even a sizable fraction of the documents, and annotate them with topics. In addition, the entire set of topics may not be known, or may change over time, making it impossible for a curator to annotate which documents are NOT about certain topics. Thus a machine learning algorithm needs to be able to learn from a small set of positive examples, without knowledge of the negative class, and knowing that the unlabeled training examples may contain an arbitrary number of additional but as yet unknown positive examples. </p><p> Another example of a PU learning scenario recently garnering attention is the protein function prediction problem (PFP problem). While the number of organisms with fully sequenced genomes continues to grow, the progress of annotating those sequences with the biological functions that they perform lags far behind. Machine learning methods have already been successfully applied to this problem, but with many organisms having a small number of positive annotated training examples, and the lack of availability of almost any labeled negative examples, PU learning algorithms have the potential to make large gains in predictive performance.</p><p> The first part of this dissertation motivates the protein function prediction problem, explores previous work, and introduces novel methods that improve upon previously reported benchmarks for a particular type of learning algorithm, known as Gaussian Random Field Label Propagation (GRFLP). In addition, we present improvements to the computational efficiency of the GRFLP algorithm, and a modification to the traditional structure of the PFP learning problem that allows for simultaneous prediction across multiple species.</p><p> The second part of the dissertation focuses specifically on the positive-unlabeled aspects of the PFP problem. Two novel algorithms are presented, and rigorously compared to existing PU learning techniques in the context of protein function prediction. Additionally, we take a step back and examine some of the theoretical considerations of the PU scenario in general, and provide an additional novel algorithm applicable in any PU context. This algorithm is tailored for situations in which the labeled positive examples are a small fraction of the set of true positive examples, and where the labeling process may be subject to some type of bias rather than being a random selection of true positives (arguably some of the most difficult PU learning scenarios).</p><p> The third and fourth sections return to the PFP problem, examining the power of tertiary structure as a predictor of protein function, as well as presenting two case studies of function prediction performance on novel benchmarks. Lastly, we conclude with several promising avenues of future research into both PU learning in general, and the protein function prediction problem specifically. </p>
2

Application of Graph Theoretic Clustering on Some Biomedical Data Sets

Ahlert, Darla 11 June 2015 (has links)
<p> Clustering algorithms have become a popular way to analyze biomedical data sets and in particular, gene expression data. Since these data sets are often large, it is difficult to gather useful information from them as a whole. Clustering is a proven method to extract knowledge about the data that can eventually lead to many discoveries in the biological world. Hierarchical clustering is used frequently to interpret gene expression data, but recently, graph-theoretic clustering algorithms have started to gain some attraction for analysis of this type of data. We consider five graph-theoretic clustering algorithms run over a post-mortem gene expression dataset, as well as a few different biomedical data sets, in which the ground truth, or class label, is known for each data point. We then externally evaluate the algorithms based on the accuracy of the resulting clusters against the ground truth clusters. Comparing the results of each of the algorithms run over all of the datasets, we found that our algorithms are efficient on the real biomedical datasets but find gene expression data especially difficult to handle.</p>
3

Remote Homology Detection in Proteins Using Graphical Models

Daniels, Noah Manus 24 July 2013 (has links)
<p> Given the amino acid sequence of a protein, researchers often infer its structure and function by finding homologous, or evolutionarily-related, proteins of known structure and function. Since structure is typically more conserved than sequence over long evolutionary distances, recognizing remote protein homologs from their sequence poses a challenge. </p><p> We first consider all proteins of known three-dimensional structure, and explore how they cluster according to different levels of homology. An automatic computational method reasonably approximates a human-curated hierarchical organization of proteins according to their degree of homology. </p><p> Next, we return to homology prediction, based only on the one-dimensional amino acid sequence of a protein. Menke, Berger, and Cowen proposed a Markov random field model to predict remote homology for beta-structural proteins, but their formulation was computationally intractable on many beta-strand topologies. </p><p> We show two different approaches to approximate this random field, both of which make it computationally tractable, for the first time, on all protein folds. One method simplifies the random field itself, while the other retains the full random field, but approximates the solution through stochastic search. Both methods achieve improvements over the state of the art in remote homology detection for beta-structural protein folds.</p>
4

A web semantic for SBML merge

Thavappiragasam, Mathialakan 05 November 2014 (has links)
<p> The manipulation of XML based relational representations of biological systems (BioML for Bioscience Markup Language) is a big challenge in systems biology. The needs of biologists, like translational study of biological systems, cause their challenges to become grater due to the material received in next generation sequencing. Among these BioML's, SBML is the de facto standard file format for the storage and exchange of quantitative computational models in systems biology, supported by more than 257 software packages to date. The SBML standard is used by several biological systems modeling tools and several databases for representation and knowledge sharing. Several sub systems are integrated in order to construct a complex bio system. The issue of combining biological sub-systems by merging SBML files has been addressed in several algorithms and tools. But it remains impossible to build an automatic merge system that implements reusability, flexibility, scalability and sharability. The technique existing algorithms use is name based component comparisons. This does not allow integration into Workflow Management System (WMS) to build pipelines and also does not include the mapping of quantitative data needed for a good analysis of the biological system. In this work, we present a deterministic merging algorithm that is consumable in a given WMS engine, and designed using a novel biological model similarity algorithm. This model merging system is designed with integration of four sub modules: SBMLChecker, SBMLAnot, SBMLCompare, and SBMLMerge, for model quality checking, annotation, comparison, and merging respectively. The tools are integrated into the BioExtract server leveraging iPlant collaborative resources to support users by allowing them to process large models and design work flows. These tools are also embedded into a user friendly online version SW4SBMLm.</p>
5

Taxonomic assignment of gene sequences using hidden Markov models

Huang, Huanhua 16 October 2014 (has links)
<p> Our ability to study communities of microorganisms has been vastly improved by the development of high-throughput DNA sequences. These technologies however can only sequence short fragments of organism's genomes at a time, which introduces many challenges in translating sequences results to biological insight. The field of bioinformatics has arisen in part to address these problems. </p><p> One bioinformatics problem is assigning a genetic sequence to a source organism. It is now common to use high&minus;throughput, short&minus;read sequencing technologies, such as the Illumina MiSeq, to sequence the 16S rRNA gene from a community of microorganisms. Researchers use this information to generate a profile of the different microbial organisms (i.e., the taxonomic composition) present in an environmental sample. There are a number of approaches for assigning taxonomy to genetic sequences, but all suffer from problems with accuracy. The methods that have been most widely used are pairwise alignment methods, like BLAST, UCLUST, and RTAX, and probability-based methods, such as RDP and MOTHUR. These methods can classify microbial sequences with high accuracy when sequences are long (e.g., thousand bases), however accuracy decreases as sequences are shorter. Current high&minus;throughout sequencing technologies generates sequences between about 150 and 500 bases in length. </p><p> In my thesis I have developed new software for assigning taxonomy to short DNA sequences using profile Hidden Markov Models (HMMs). HMMs have been applied in related areas, such as assigning biological functions to protein sequences, and I hypothesize that it might be useful for achieving high accuracy taxonomic assignments from 16S rRNA gene sequences. My method builds models of 16S rRNA sequences for different taxonomic groups (kingdom, phylum, class, order, family genus and species) using the Greengenes 16S rRNA database. Given a sequence with unknown taxonomic origin, my method searches each kingdom model to determine the most likely kingdom. It then searches all of the phyla within the highest scoring kingdom to determine the most likely phylum. This iterative process continues until the sequence cannot be assigned at a taxonomic level with a user-defined confidence level, or until a species-level assignment is made that meets the user-defined confidence level. </p><p> I next evaluated this method on both artificial and real microbial community data, with both qualitative and quantitative metrics of method performance. The evaluation results showed that in the qualitative analyses (specificity and sensitivity) my method is not as good as the previously existing methods. However, the accuracy in the quantitative analysis was better than some other pre-existing methods. This suggests that my current implementation is sensitive to false positives, but is better at classifying more sequences than the other methods. </p><p> I present my method, my evaluations, and suggestions for next steps that might improve the performance of my HMM-based taxonomic classifier.</p>
6

Ambiguous fragment assignment for high-throughput sequencing experiments

Roberts, Adam 28 May 2014 (has links)
<p> As the cost of short-read, high-throughput DNA sequencing continues to fall rapidly, new uses for the technology have been developed aside from its original purpose in determining the genome of various species. Many of these new experiments use the sequencer as a digital counter for measuring biological activities such as gene expression (RNA-Seq) or protein binding (ChIP-Seq). </p><p> A common problem faced in the analysis of these data is that of sequenced fragments that are "ambiguous", meaning they resemble multiple loci in a reference genome or other sequence. In early analyses, such ambiguous fragments were ignored or were assigned to loci using simple heuristics. However, statistical approaches using maximum likelihood estimation have been shown to greatly improve the accuracy of downstream analyses and have become widely adopted Optimization based on the expectation-maximization (EM) algorithm are often employed by these methods to find the optimal sets of alignments, with frequent enhancements to the model. Nevertheless, these improvements increase complexity, which, along with an exponential growth in the size of sequencing datasets, has led to new computational challenges. </p><p> Herein, we present our model for ambiguous fragment assignment for RNA-Seq, which includes the most comprehensive set of parameters of any model introduced to date, as well as various methods we have explored for scaling our optimization procedure. These methods include the use of an online EM algorithm and a distributed EM solution implemented on the Spark cluster computing system. Our advances have resulted in the first efficient solution to the problem of fragment assignment in sequencing.</p><p> Furthermore, we are the first to create a fully generalized model for ambiguous fragment assignment and present details on how our method can provide solutions for additional high-throughput sequencing assays including ChIP-Seq, Allele-Specific Expression (ASE), and the detection of RNA-DNA Differences (RDDs) in RNA-Seq.</p>
7

Protein structure analysis and prediction utilizing the Fuzzy Greedy K-means Decision Forest model and Hierarchically-Clustered Hidden Markov Models method

Hudson, Cody Landon 13 February 2014 (has links)
<p>Structural genomics is a field of study that strives to derive and analyze the structural characteristics of proteins through means of experimentation and prediction using software and other automatic processes. Alongside implications for more effective drug design, the main motivation for structural genomics concerns the elucidation of each protein&rsquo;s function, given that the structure of a protein almost completely governs its function. Historically, the approach to derive the structure of a protein has been through exceedingly expensive, complex, and time consuming methods such as x-ray crystallography and nuclear magnetic resonance (NMR) spectroscopy. </p><p> In response to the inadequacies of these methods, three families of approaches developed in a relatively new branch of computer science known as bioinformatics. The aforementioned families include threading, homology-modeling, and the de novo approach. However, even these methods fail either due to impracticalities, the inability to produce novel folds, rampant complexity, inherent limitations, etc. In their stead, this work proposes the Fuzzy Greedy K-means Decision Forest model, which utilizes sequence motifs that transcend protein family boundaries to predict local tertiary structure, such that the method is cheap, effective, and can produce semi-novel folds due to its local (rather than global) prediction mechanism. This work further extends the FGK-DF model with a new algorithm, the Hierarchically Clustered-Hidden Markov Models (HC-HMM) method to extract protein primary sequence motifs in a more accurate and adequate manner than currently exhibited by the FGK-DF model, allowing for more accurate and powerful local tertiary structure predictions. Both algorithms are critically examined, their methodology thoroughly explained and tested against a consistent data set, the results thereof discussed at length. </p>
8

Analysis and applications of conserved sequence patterns in proteins

Ie, Tze Way Eugene. Unknown Date (has links)
Thesis (Ph.D.)--University of California, San Diego, 2007. / (UMI)AAI3264605. Source: Dissertation Abstracts International, Volume: 68-04, Section: B, page: 2446. Adviser: Yoav Freund.
9

Text mining of point mutation information from biomedical literature.

Lee, Lawrence Chet-Lun. January 2008 (has links)
Thesis (Ph.D.)--University of California, San Francisco, 2008. / Source: Dissertation Abstracts International, Volume: 69-12, Section: B, page: 7230. Adviser: Fred E. Cohen.
10

The design and evaluation of an assistive application for dialysis patients

Siek, Katie A. January 2006 (has links)
Thesis (Ph.D.)--Indiana University, Dept. of Computer Science, 2006. / "Title from dissertation home page (viewed June 28, 2007)." Source: Dissertation Abstracts International, Volume: 67-06, Section: B, page: 3242. Adviser: Kay H. Connelly.

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