Building bioinformatics solutions for biomarker identification

This thesis describes the design, implementation and application of bioinformatics systems to aid work in the field of biomarker discovery and diagnostic test development. The aim of the work was to develop a flexible data storage and analysis platform that would be capable of housing and working wi...

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Main Author: Oakley, Darren
Other Authors: Bessant, Conrad
Published: Cranfield University 2008
Subjects:
Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.539397
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spelling ndltd-bl.uk-oai-ethos.bl.uk-5393972015-10-03T03:20:37ZBuilding bioinformatics solutions for biomarker identificationOakley, DarrenBessant, Conrad2008This thesis describes the design, implementation and application of bioinformatics systems to aid work in the field of biomarker discovery and diagnostic test development. The aim of the work was to develop a flexible data storage and analysis platform that would be capable of housing and working with data from a variety of modern biomarker analysis techniques. In order to achieve this aim, several tools were developed: a flexible database schema, taking ideas from the field of systems biology, was developed with the goal of being flexible enough to house information about experiments looking at targets such as genes, proteins and metabolites; and API was created to allow easy programmatic interaction with the database; and multivariate data analysis routines were prepared so that data imported into the database could be investigated. Together this toolset was named XPA [for ‘Cross Platform Analysis’]. The XPA system was tested by using it to house and analyse data from two different medical studies, one using quantitative PCR [qPCR] to observe gene expression changes in prostate cancer, and the second using surface enhanced laser desorption/ionisation mass spectrometry [SELDI MS] to generate protein profiles in sufferers of pre-eclampsia. In both studies XPA was used to develop multivariate classification models using partial least squares discriminant analysis [PLS-DA] and support vector machines [SVMs], with the aim of evaluating the data acquired for potential diagnostic use. The results showed the benefit of a tool such as XPA to the field of biomarker discovery.610.28Cranfield Universityhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.539397http://dspace.lib.cranfield.ac.uk/handle/1826/6276Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 610.28
spellingShingle 610.28
Oakley, Darren
Building bioinformatics solutions for biomarker identification
description This thesis describes the design, implementation and application of bioinformatics systems to aid work in the field of biomarker discovery and diagnostic test development. The aim of the work was to develop a flexible data storage and analysis platform that would be capable of housing and working with data from a variety of modern biomarker analysis techniques. In order to achieve this aim, several tools were developed: a flexible database schema, taking ideas from the field of systems biology, was developed with the goal of being flexible enough to house information about experiments looking at targets such as genes, proteins and metabolites; and API was created to allow easy programmatic interaction with the database; and multivariate data analysis routines were prepared so that data imported into the database could be investigated. Together this toolset was named XPA [for ‘Cross Platform Analysis’]. The XPA system was tested by using it to house and analyse data from two different medical studies, one using quantitative PCR [qPCR] to observe gene expression changes in prostate cancer, and the second using surface enhanced laser desorption/ionisation mass spectrometry [SELDI MS] to generate protein profiles in sufferers of pre-eclampsia. In both studies XPA was used to develop multivariate classification models using partial least squares discriminant analysis [PLS-DA] and support vector machines [SVMs], with the aim of evaluating the data acquired for potential diagnostic use. The results showed the benefit of a tool such as XPA to the field of biomarker discovery.
author2 Bessant, Conrad
author_facet Bessant, Conrad
Oakley, Darren
author Oakley, Darren
author_sort Oakley, Darren
title Building bioinformatics solutions for biomarker identification
title_short Building bioinformatics solutions for biomarker identification
title_full Building bioinformatics solutions for biomarker identification
title_fullStr Building bioinformatics solutions for biomarker identification
title_full_unstemmed Building bioinformatics solutions for biomarker identification
title_sort building bioinformatics solutions for biomarker identification
publisher Cranfield University
publishDate 2008
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.539397
work_keys_str_mv AT oakleydarren buildingbioinformaticssolutionsforbiomarkeridentification
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