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arxiv: 1012.3407 · v1 · pith:37BAL65Unew · submitted 2010-12-15 · 📊 stat.ML

Translating biomarkers between multi-way time-series experiments

classification 📊 stat.ML
keywords experimentsexperimentalmulti-waytime-seriestranslatingbiomarkersdesignmatching
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Translating potential disease biomarkers between multi-species 'omics' experiments is a new direction in biomedical research. The existing methods are limited to simple experimental setups such as basic healthy-diseased comparisons. Most of these methods also require an a priori matching of the variables (e.g., genes or metabolites) between the species. However, many experiments have a complicated multi-way experimental design often involving irregularly-sampled time-series measurements, and for instance metabolites do not always have known matchings between organisms. We introduce a Bayesian modelling framework for translating between multiple species the results from 'omics' experiments having a complex multi-way, time-series experimental design. The underlying assumption is that the unknown matching can be inferred from the response of the variables to multiple covariates including time.

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