Exploring Omics data from designed experiments using analysis of variance multiblock Orthogonal Partial Least Squares |
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Authors: | Julien Boccard Serge Rudaz |
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Affiliation: | School of Pharmaceutical Sciences, University of Geneva, University of Lausanne, Geneva, Switzerland |
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Abstract: | Many experimental factors may have an impact on chemical or biological systems. A thorough investigation of the potential effects and interactions between the factors is made possible by rationally planning the trials using systematic procedures, i.e. design of experiments. However, assessing factors' influences remains often a challenging task when dealing with hundreds to thousands of correlated variables, whereas only a limited number of samples is available. In that context, most of the existing strategies involve the ANOVA-based partitioning of sources of variation and the separate analysis of ANOVA submatrices using multivariate methods, to account for both the intrinsic characteristics of the data and the study design. However, these approaches lack the ability to summarise the data using a single model and remain somewhat limited for detecting and interpreting subtle perturbations hidden in complex Omics datasets. |
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Keywords: | Omics Chemometrics Analysis of variance Design of experiments Multiblock analysis Orthogonal Partial Least Squares |
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