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Bioinformatic and Experimental Approaches for Deeper Metaproteomic Characterization of Complex Environmental Samples

Date Issued
December 1, 2017
Author(s)
Iyer, Ramsunder Mahadevan  
Advisor(s)
Robert L Hettich
Additional Advisor(s)
Gladys Alexandre, Maria Cekanova, Margaret E. Staton, Dale A. Pelletier
Permanent URI
https://trace.tennessee.edu/handle/20.500.14382/26030
Abstract

The coupling of high performance multi-dimensional liquid chromatography and tandem mass spectrometry for characterization of microbial proteins from complex environmental samples has paved the way for a new era in scientific discovery. The field of metaproteomics, which is the study of protein suite of all the organisms in a biological system, has taken a tremendous leap with the introduction of high-throughput proteomics. However, with corresponding increase in sample complexity, novel challenges have been raised with respect to efficient peptide separation via chromatography and bioinformatic analysis of the resulting high throughput data. In this dissertation, various aspects of metaproteomic characterization, including experimental and computational approaches have been systematically evaluated. In this study, robust separation protocols employing strong cation exchange and reverse phase have been designed for efficient peptide separation thus offering excellent orthogonality and ease of automation. These findings will be useful to the proteomics community for obtaining deeper non-redundant peptide identifications which in turn will improve the overall depth of semi-quantitative proteomics.


Secondly, computational bottlenecks associated with screening the vast amount of raw mass spectra generated in these proteomic measurements have been addressed. Computational matching of tandem mass spectra via conventional database search strategies lead to modest peptide/protein identifications. This seriously restricts the amount of information retrieved from these complex samples which is mainly due to high complexity and heterogeneity of the sample containing hundreds of proteins shared between different microbial species often having high level of homology. Hence, the challenges associated with metaproteomic data analysis has been addressed by utilizing multiple iterative search engines coupled with de novo sequencing algorithms for a comprehensive and in-depth characterization of complex environmental samples.

The work presented here will utilize various sample types ranging from isolates and mock microbial mixtures prepared in the laboratory to complex community samples extracted from industrial waste water, acid-mine drainage and methane seep sediments. In a broad perspective, this dissertation aims to provide tools for gaining deeper insights to proteome characterization in complex environmental ecosystems.

Subjects

Metaproteomics

de novo peptide seque...

Multi-dimensional Chr...

Unique Peptide Identi...

Mass Spectrometry

community proteomics

Disciplines
Bioinformatics
Biotechnology
Computational Biology
Environmental Microbiology and Microbial Ecology
Genomics
Marine Biology
Other Biochemistry, Biophysics, and Structural Biology
Other Genetics and Genomics
Systems Biology
Degree
Doctor of Philosophy
Major
Life Sciences
Embargo Date
December 15, 2018
File(s)
Thumbnail Image
Name

Ramsunder_Iyer_Doctoral_Dissertation_Final.pdf

Size

5.69 MB

Format

Adobe PDF

Checksum (MD5)

68bfb150e4b7366fbafa7f3e7f7c7756

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