Department of Mathematics
Mathematics Colloquium - Spring 2016
Thursday, February 18th, 2016
2:00pm - 3:00pm, in McCormack 1-208 Prabhani DonHarvard UniversityFinding Hidden Patterns in Genomic Data: Recent Developments
Abstract:
Composite likelihood is a likelihood modification useful in
instances where maximum likelihood estimation (MLE) is computationally
infeasible. The first part of the talk focuses on discrete latent
variable models for two-way data arrays, in which MLE is intractable
due to the complex structures of the models. We construct composite
likelihood as a computationally tractable alternative to the full
likelihood of our models, and discuss the performance of our methods
via simulations and applications to genomic data. With over 20 million formalin-fixed, paraffin-embedded (FFPE) tissue samples archived each year in the US alone, archival tissues remain a vast and under-utilized resource in the genomic study of cancer. The focus of the second part of this talk will be on open methodological challenges relate to RNA expression profiling in FFPE tissue samples.
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