R.O. Dror, J.G. Murnick, N.J. Rinaldi, V.D. Marinescu, R.M. Rifkin, and R.A. Young. A Bayesian approach to transcript estimation from gene array data: the BEAM technique. Proceedings of the Sixth Annual International Conference on Research in Computational Molecular Biology, Washington, DC, April 2002.
[Full text, PDF]

Abstract

We present a new statistically optimal approach to estimate transcript levels and ratios from one or more gene array experiments. The Bayesian Estimation of Array Measurements (BEAM) technique uses a model of measurement noise and prior information to estimate biological expression levels. It provides a principled method to deal with negative expression level measurements, combine multiple measurements, and identify changes in expression level. BEAM is more flexible than existing techniques, because it does not assume a specific functional form for noise and prior models. Rather, it uses a more accurate noise model developed from experimental data, a process we illustrate here using Affymetrix yeast chips.


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