The goal of this group is to define the reporting requirements associated with the statistical analysis (including univariate, multivariate, informatics, machine learning etc.) of metabolite data with respect to other measured/collected experimental data (often called metadata). These definitions will embrace as many aspects of a complete metabolomics study as possible at this time. In chronological order this will include: Experimental Design, both in terms of sample collection/matching, and data acquisition scheduling of samples through whichever spectroscopic technology used; Deconvolution (if required); Pre-processing, for example, data cleaning, outlier detection, row/column scaling, or other transformations; Definition and parameterization of subsequent visualizations and Statistical/Machine learning Methods applied to the dataset; If required, a clear definition of the Model Validation Scheme used (including how data are split into training/validation/test sets); Formal indication on whether the data analysis has been Independently Tested (either by experimental reproduction, or blind hold out test set). Finally, data interpretation and the visual representations and hypotheses obtained from the data analyses.
Proposed minimum reporting standards for data analysis in metabolomics / Royston, Goodacre; David, Broadhurst; Age K., Smilde; Bruce S., Kristal; J., David Baker; Richard, Beger; Conrad, Bessant; Susan, Connor; Capuani, Giorgio; Andrew, Craig; Tim, Ebbels; Douglas B., Kell; Manetti, Cesare; Jack, Newton; Giovanni, Paternostro; Ray, Somorjai; Michael, Sjostrom; Johan, Trygg; Florian, Wulfert. - In: METABOLOMICS. - ISSN 1573-3882. - STAMPA. - 3:3(2007), pp. 231-241. [10.1007/s11306-007-0081-3]
Proposed minimum reporting standards for data analysis in metabolomics
CAPUANI, Giorgio;MANETTI, Cesare;
2007
Abstract
The goal of this group is to define the reporting requirements associated with the statistical analysis (including univariate, multivariate, informatics, machine learning etc.) of metabolite data with respect to other measured/collected experimental data (often called metadata). These definitions will embrace as many aspects of a complete metabolomics study as possible at this time. In chronological order this will include: Experimental Design, both in terms of sample collection/matching, and data acquisition scheduling of samples through whichever spectroscopic technology used; Deconvolution (if required); Pre-processing, for example, data cleaning, outlier detection, row/column scaling, or other transformations; Definition and parameterization of subsequent visualizations and Statistical/Machine learning Methods applied to the dataset; If required, a clear definition of the Model Validation Scheme used (including how data are split into training/validation/test sets); Formal indication on whether the data analysis has been Independently Tested (either by experimental reproduction, or blind hold out test set). Finally, data interpretation and the visual representations and hypotheses obtained from the data analyses.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.