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Title: | Structure-aware Approaches for Deciphering Sequence-specific Protein-DNA Interactions |
Authors: | Wetzel, Joshua |
Advisors: | Singh, Mona |
Contributors: | Computer Science Department |
Keywords: | DNA-binding gene regulation protein-DNA interaction protein structure transcription factor zinc finger |
Subjects: | Computer science Bioinformatics Molecular biology |
Issue Date: | 2019 |
Publisher: | Princeton, NJ : Princeton University |
Abstract: | Interactions between proteins and specific genomic loci are critical to the proper functioning of all cells. The ability of a DNA-binding protein (DBP) to distinguish between its target binding sites and other genomic regions is required for a myriad of crucial functions, including transcriptional regulation, meiotic recombination, chromatin remodeling, and genome organization. However, the fundamental relationship between the amino acid sequence of a DBP and its DNA-binding preferences remains largely elusive. High-throughput experimental technologies for detecting protein-DNA interactions have advanced substantially in the past decade and have enabled measurements for thousands of natural and synthetic DBP variants. However, these technologies typically require sophisticated analyses to uncover intrinsic DNA-binding specificities from the measured signals, often have poorly understood noise and sampling profiles, and provide little insight into the underlying mechanism of interaction. Meanwhile, precise co-complex structural data provide great insight into the mechanistic principles guiding interactions between DBPs and their DNA ligands, albeit at substantially lower throughput. These two types of data are complementary but rarely considered in concert. In this dissertation, I describe novel computational approaches that improve the accuracy and interpretability of inferences derived from high-throughput protein-DNA interaction data, via direct consideration of the underlying protein-DNA structural interaction interface shared across proteins within the same DNA-binding family. First, I describe a systematic exploration of the DNA-binding landscape for Cys2-His2 zinc finger (C2H2-ZF) proteins, the most abundant DNA-binding family in eukaryotes. Here we inferred the largest set of C2H2-ZF specificities to date and developed a state-of-the-art structurally-inspired method for predicting specificities for novel C2H2-ZFs. Second, I demonstrate how to leverage the large amounts of specificity data available for DBPs to develop a general framework that improves accuracy of high-throughput DNA-binding specificity inferences by jointly considering interaction preferences for groups of proteins from the same DNA-binding family, rewarding global consistency according to an expected similarity measure reflecting family-level structural considerations. Finally, I provide a probabilistic framework for improving interpretability of high-throughput data by mapping inferred specificities of DBPs from the same DNA-binding family onto a common ``reference'' structural interface model derived from aggregated family-level co-complex data. |
URI: | http://arks.princeton.edu/ark:/88435/dsp01x346d6976 |
Alternate format: | The Mudd Manuscript Library retains one bound copy of each dissertation. Search for these copies in the library's main catalog: catalog.princeton.edu |
Type of Material: | Academic dissertations (Ph.D.) |
Language: | en |
Appears in Collections: | Computer Science |
Files in This Item:
File | Description | Size | Format | |
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Wetzel_princeton_0181D_12872.pdf | 15.62 MB | Adobe PDF | View/Download |
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