Submitted by mjarvisa on November 23, 2010 - 10:00
Lecturer :
Ilkka Huopaniemi
Event type:
HIIT seminar
Event time:
2010-11-26 10:15 to 11:00
Place:
Kumpula Exactum C222
Description:
Talk announcement: HIIT Seminar Kumpula, Friday Nov 26, 10:15 a.m., Exactum C222 SPEAKER: Ilkka Huopaniemi Aalto University TITLE: Bayesian integration of multi-way, multi-species, and time-series metabolomic datasets ABSTRACT: Multi-way analysis of variance (ANOVA) - type methods are the default tool for modelling the effects of multiple covariates (disease, treatments, gender, time-series) in populations of (biomedical) continues-valued measurements. I present a multivariate Bayesian modelling framework for multi-way modelling, that can deal with the main restriction of modern biomedical data: small sample-size and high dimensionality. I then describe how we've extended this framework to analyze data from novel biomedical multi-way experiment types: (i) integrating multiple data sources, (ii) integrating data from multiple species, and (iii) time-series experiment with mixed aging- and disease progression effects. BIO: Ilkka Huopaniemi is a PhD student at the Department of Information and Computer Science at Aalto University, in the Statistical Machine Learning and Bioinformatics Group lead by Samuel Kaski. He received his M.Sc. degree in 2006 from the Department of Technical Physics and Mathematics of TKK, and did his Master's thesis in the Statistical Physics group. He's research interests are multi-way experimental designs, Bayesian methods, metabolomics, data integration, translational modelling.
Last updated on 23 Nov 2010 by Matti Järvisalo - Page created on 23 Nov 2010 by Matti Järvisalo