Interpreting the lipidome: bioinformatic approaches to embrace the complexity

Publication date

2021-06-06

Authors

Kyle, Jennifer E
Aimo, Lucila
Bridge, Alan J
Clair, Geremy
Fedorova, Maria
Helms, J BerndISNI 0000000390424642
Molenaar, Martijn RISNI 0000000506828105
Ni, Zhixu
Orešič, Matej
Slenter, Denise

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

taverne

Abstract

BACKGROUND: Improvements in mass spectrometry (MS) technologies coupled with bioinformatics developments have allowed considerable advancement in the measurement and interpretation of lipidomics data in recent years. Since research areas employing lipidomics are rapidly increasing, there is a great need for bioinformatic tools that capture and utilize the complexity of the data. Currently, the diversity and complexity within the lipidome is often concealed by summing over or averaging individual lipids up to (sub)class-based descriptors, losing valuable information about biological function and interactions with other distinct lipids molecules, proteins and/or metabolites. AIM OF REVIEW: To address this gap in knowledge, novel bioinformatics methods are needed to improve identification, quantification, integration and interpretation of lipidomics data. The purpose of this mini-review is to summarize exemplary methods to explore the complexity of the lipidome. KEY SCIENTIFIC CONCEPTS OF REVIEW: Here we describe six approaches that capture three core focus areas for lipidomics: (1) lipidome annotation including a resolvable database identifier, (2) interpretation via pathway- and enrichment-based methods, and (3) understanding complex interactions to emphasize specific steps in the analytical process and highlight challenges in analyses associated with the complexity of lipidome data.

Keywords

Bioinformatics, Lipid Identifcation, Lipidomics, Ontologies, Pathway enrichment, Data integration, Taverne

Citation

Kyle, J E, Aimo, L, Bridge, A J, Clair, G, Fedorova, M, Helms, J B, Molenaar, M R, Ni, Z, Orešič, M, Slenter, D, Willighagen, E & Webb-Robertson, B-J M 2021, 'Interpreting the lipidome : bioinformatic approaches to embrace the complexity', Metabolomics, vol. 17, no. 6, 55, pp. 1-10. https://doi.org/10.1007/s11306-021-01802-6