作者
Ziv Bar-Joseph, Georg Gerber, David K Gifford, Tommi S Jaakkola, Itamar Simon
发表日期
2002/4/18
图书
Proceedings of the sixth annual international conference on Computational biology
页码范围
39-48
简介
We present algorithms for time-series gene expression analysis that permit the principled estimation of unobserved time-points, clustering, and dataset alignment. Each expression profile is modeled as a cubic spline (piecewise polynomial) that is estimated from the observed data and every time point influences the overall smooth expression curve. We constrain the spline coefficients of genes in the same class to have similar expression patterns, while also allowing for gene specific parameters. We show that unobserved time-points can be reconstructed using our method with 10-15% less error when compared to previous best methods. Our clustering algorithm operates directly on the continuous representations of gene expression profiles, and we demonstrate that this is particularly effective when applied to non-uniformly sampled data. Our continuous alignment algorithm also avoids difficulties encountered by …
引用总数
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学术搜索中的文章
Z Bar-Joseph, G Gerber, DK Gifford, TS Jaakkola… - Proceedings of the sixth annual international …, 2002