Statistical models for the analysis of heterogeneous biological data sets / Eugen Christian Buehler.

Buehler, Eugen Christian.
viii, 69 p. : ill. ; 29 cm.
Local subjects:
Penn dissertations -- Computer and information science. (search)
Computer and information science -- Penn dissertations. (search)
The focus of this thesis is on developing methods of integrating heterogeneous biological feature sets into structured statistical models, so as to improve model predictions and further understanding of the complex systems that they emulate. Combining data from different sources is an important task in genomics because of the increasing variety of large-scale data being generated, all of which reflect different components of the same complicated network of biological interactions that make up an organism. We contend that traditional machine learning techniques are too general to accurately model heterogeneous biological data and provide insufficient feedback to researchers concerning the systems being modeled. In contrast, we will show that interpretable statistical models specifically designed for and inspired by the underlying structure of biological problems yield more accurate predictions and provide valuable insight into biological systems.
Toward proving this thesis, we introduce maximum entropy biological sequence models. Maximum entropy sequence models have been used previously to integrate arbitrary features in other (non-biological) domains, such as natural language modeling. Here, we apply the same model structure to amino acid and nucleotide sequences. We first propose a broad variety of biologically inspired features, define them mathematically, and test their ability to improve models of amino acid sequences. Of these features, particular attention is paid to long distance features such as triggers, which incorporate information unavailable to more conventional Markovian models and reflect the non-local nature of protein sequence constraints. The ability of these features to improve gene-finding models is demonstrated. We next extend maximum entropy models to nucleotide coding sequences and apply them to the detection of lateral gene transfer. This allows us to evaluate a diverse set of features in a statistically rigorous manner, improving understanding of the problem and eliminating the tendency to inaccurately label short genes. We also develop methods for integrating positional and gene expression data with our maximum entropy sequence model, allowing more accurate predictions of lateral gene transfer and resulting in significant biological insight.
Supervisor: Lyle Ungar.
Thesis (Ph.D. in Computer and Information Science) -- University of Pennsylvania, 2003.
Includes bibliographical references.
Local notes:
University Microfilms order no.: 3109158.
Ungar, Lyle, advisor.
University of Pennsylvania.
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