Predicting interpretability of metabolome models based on behavior, putative identity, and biological relevance of explanatory signals


Autoria(s): Enot, David P.; Beckmann, Manfred; Overy, David Patrick; Draper, John
Contribuinte(s)

Institute of Biological, Environmental and Rural Sciences

Data(s)

11/12/2008

11/12/2008

03/10/2006

Resumo

Enot, D. P., Beckmann, M., Overy, D., Draper, J. (2006). Predicting interpretability of metabolome models based on behavior, putative identity, and biological relevance of explanatory signals. Proceedings of the National Academy of Sciences of the USA, 103(40), 14865-14870. Sponsorship: BBSRC RAE2008

Powerful algorithms are required to deal with the dimensionality of metabolomics data. Although many achieve high classification accuracy, the models they generate have limited value unless it can be demonstrated that they are reproducible and statistically relevant to the biological problem under investigation. Random forest (RF) generates models, without any requirement for dimensionality reduction or feature selection, in which individual variables are ranked for significance and displayed in an explicit manner. In metabolome fingerprinting by mass spectrometry, each metabolite can be represented by signals at several m/z. Exploiting a prior understanding of expected biochemical differences between sample classes, we aimed to develop meaningful metrics relevant to the significance both of the overall RF model and individual, potentially explanatory, signals. Pair-wise comparison of related plant genotypes with strong phenotypic differences demonstrated that robust models are not only reproducible but also logically structured, highlighting correlated m/z derived from just a small number of explanatory metabolites reflecting the biological differences between sample classes. RF models were also generated by using groupings of samples known to be increasingly phenotypically similar. Although classification accuracy was often reasonable, we demonstrated reproducibly in both Arabidopsis and potato a performance threshold based on margin statistics beyond which such models showed little structure indicative of either generalizibility or further biological interpretability. In a multiclass problem using 25 Arabidopsis genotypes, despite the complicating effects of ecotype background and secondary metabolome perturbations common to several mutations, the ranking of metabolome signals by RF provided scope for deeper interpretability.

Peer reviewed

Formato

6

Identificador

Enot , D P , Beckmann , M , Overy , D P & Draper , J 2006 , ' Predicting interpretability of metabolome models based on behavior, putative identity, and biological relevance of explanatory signals ' Proceedings of the National Academy of Sciences of the United States of America , vol 103 , no. 40 , pp. 14865-14870 . DOI: 10.1073/pnas.0605152103

0027-8424

PURE: 92054

PURE UUID: ecd4ccea-688f-4cf9-a713-ec54a9ad376e

dspace: 2160/1539

http://hdl.handle.net/2160/1539

http://dx.doi.org/10.1073/pnas.0605152103

Idioma(s)

eng

Relação

Proceedings of the National Academy of Sciences of the United States of America

Palavras-Chave #mass spectral fingerprinting #phenotyping #random forest data analysis
Tipo

/dk/atira/pure/researchoutput/researchoutputtypes/contributiontojournal/article

Direitos