Please use this identifier to cite or link to this item: http://hdl.handle.net/123456789/3682
Title: Computational methods for denoising high-throughput data
Authors: Buri, Gershom
Keywords: Computational methods
Denoising
High-throughput data
Issue Date: Jul-2015
Publisher: University of Cape Coast
Abstract: T-cell diversity has a great influence on the ability of the immune system to recognise and fight the wide variety of potential pathogens in our environment. The current state of art approach to profiling T-cell diversity involves high-throughput sequencing and analysis of T-cell receptors (TCR). Although this approach produces huge amounts of data, the data has noise which might obscure the underlying biological picture. To correct these errors, two computational methods have been developed; a method of moments and a method based on Bayesian inference. Using simulated data, it is shown that Bayesian Inference is superior to the method of moments in terms of accuracy but the latter is preferable when time is a limiting factor as it is faster and adequately accurate. Furthermore, using high-throughput sequencing data, it is shown that significant differences exist between the raw and the denoised relative abundances of TCR V segments. For TCR J segments, however, the difference between raw and denoised data is minimal. This observation agrees with the fact that primers, which are used to enrich T-cell receptors before they are sequenced, and which are the main source of errors, are specific for TCR V segments.
Description: xi, 143p:, ill
URI: http://hdl.handle.net/123456789/3682
ISSN: 23105496
Appears in Collections:Department of Mathematics & Statistics

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