Royal Statistical Society
Research Section





Meetings 2003/2004 (all are RSS ordinary meetings)

2004
5.00 p.m.,
13th October 2004
S. C. Kou (Stanford University), X. S. Xie AND J. S. Liu (Harvard University)

Bayesian analysis of single-molecule experimental data .

Recent advances in experimental technologies allow scientists to follow biochemical processes on a single-molecule basis, which provides much richer information about chemical dynamics than traditional ensemble-averaged experiments but also raises many new statistical challenges. The paper provides the first likelihood-based statistical analysis of the single molecule fluorescence lifetime experiment designed to probe the conformational dynamics of a single deoxyribonucleic acid (DNA) hairpin molecule. The conformational change is initially treated as a continuous time two-state Markov chain, which is not observable and must be inferred from changes in photon emissions. This model is further complicated by unobserved molecular Brownian diffusions. Beyond the simple two-state model, a competing model that models the energy barrier between the two states of the DNA hairpin as an Ornstein - Uhlenbeck process has been suggested in the literature. We first derive the likelihood function of the simple two-state model and then generalize the method to handle complications such as unobserved molecular diffusions and the fluctuating energy barrier. The data augmentation technique and Markov chain Monte Carlo methods are developed to sample from the posterior distribution desired. The Bayes factor calculation and posterior estimates of relevant parameters indicate that the fluctuating barrier model fits the data better than the simple two-state model.
Electronic version of the paper

5.00 p.m.,
5th May 2004
JEROME H FRIEDMAN (Stanford University) AND JACQUELINE J MEULMAN (Leiden University)

Clustering objects on subsets of attributes.

Cluster analysis is an important tool for analyzing data from systems biology (genomics, proteomics, and metabolomics). These data typically represent a large number attributes (~ 10,000), measured on a small number of objects (~ 100). Unlike traditional clustering methods, the approach to be presented (COSA) is able to detect groups of objects that simultaneously have similar values on (very) small subsets of the attributes. The attribute subset for any discovered group may be completely, partially or nonoverlapping with those for other groups. The COSA software is publicly available.
Electronic version of the paper

2003
5.00 p.m.,
15th October 2003
(Tea 4.30pm)
JANET E HEFFERNAN AND JONATHAN A TAWN (Lancaster University, UK)

A conditional approach for multivariate extreme values.


We will present a semi-parametric approach for the estimation of the joint tail of a vector random variable. We develop a model based on the asymptotic form of the distribution of the variable conditional on it having an extreme component. The methods reveal the complex extremal dependence structure of an air pollution data-set that is consistent with scientific knowledge.

This paper will appear in the Journal of the Royal Statistical Society, Series B
2.00 p.m.,
10th December 2003
Half-day Ordinary Meeting on
INVERSE PROBLEMS


Further details are available here.


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