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Graph-based Support Vector Machines for Patient Response Prediction Using Pathway and Gene Expression Data

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2013-10-14

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Huang, Norman Jason. 2013. Graph-based Support Vector Machines for Patient Response Prediction Using Pathway and Gene Expression Data. Doctoral dissertation, Harvard University.

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Abstract

Over the past decade, multiple function genomic datasets studying chromosomal aberrations and their downstream implications on gene expression have accumulated across a variety of cancer types. With the majority being paired copy number/gene expression profiles originating from the same patient groups, this time frame has also induced a wealth of integrative attempts in hope that the concurrent analysis between both genomic structures will result in optimized downstream results. Borrowing the concept, this dissertation presents a novel contribution to the development of statistical methodology for integrating copy number and gene expression data for purposes of predicting treatment response in multiple myeloma patients.

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Biostatistics, Expression Data, Integration, Pathway Information, Response Prediction, SVM

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