Literature DB >> 34091802

Interpreting the lipidome: bioinformatic approaches to embrace the complexity.

Jennifer E Kyle1, Lucila Aimo2, Alan J Bridge2, Geremy Clair1, Maria Fedorova3, J Bernd Helms4, Martijn R Molenaar5, Zhixu Ni3, Matej Orešič6,7, Denise Slenter8, Egon Willighagen8, Bobbie-Jo M Webb-Robertson9.   

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.

Entities:  

Keywords:  Bioinformatics; Data integration; Lipid Identification; Lipidomics; Ontologies; Pathway enrichment

Mesh:

Substances:

Year:  2021        PMID: 34091802     DOI: 10.1007/s11306-021-01802-6

Source DB:  PubMed          Journal:  Metabolomics        ISSN: 1573-3882            Impact factor:   4.290


  55 in total

1.  NIST lipidomics workflow questionnaire: an assessment of community-wide methodologies and perspectives.

Authors:  John A Bowden; Candice Z Ulmer; Christina M Jones; Jeremy P Koelmel; Richard A Yost
Journal:  Metabolomics       Date:  2018-03-20       Impact factor: 4.290

2.  Lipid Mini-On: mining and ontology tool for enrichment analysis of lipidomic data.

Authors:  Geremy Clair; Sarah Reehl; Kelly G Stratton; Matthew E Monroe; Malak M Tfaily; Charles Ansong; Jennifer E Kyle
Journal:  Bioinformatics       Date:  2019-11-01       Impact factor: 6.937

Review 3.  Eicosanoid storm in infection and inflammation.

Authors:  Edward A Dennis; Paul C Norris
Journal:  Nat Rev Immunol       Date:  2015-07-03       Impact factor: 53.106

4.  Automated, parallel mass spectrometry imaging and structural identification of lipids.

Authors:  Shane R Ellis; Martin R L Paine; Gert B Eijkel; Josch K Pauling; Peter Husen; Mark W Jervelund; Martin Hermansson; Christer S Ejsing; Ron M A Heeren
Journal:  Nat Methods       Date:  2018-05-21       Impact factor: 28.547

Review 5.  Systems biology approaches to study lipidomes in health and disease.

Authors:  Marina Amaral Alves; Santosh Lamichhane; Alex Dickens; Aidan McGlinchey; Henrique Caracho Ribeiro; Partho Sen; Fang Wei; Tuulia Hyötyläinen; Matej Orešič
Journal:  Biochim Biophys Acta Mol Cell Biol Lipids       Date:  2020-12-02       Impact factor: 4.698

Review 6.  Understanding the diversity of membrane lipid composition.

Authors:  Takeshi Harayama; Howard Riezman
Journal:  Nat Rev Mol Cell Biol       Date:  2018-02-07       Impact factor: 94.444

7.  ChEBI in 2016: Improved services and an expanding collection of metabolites.

Authors:  Janna Hastings; Gareth Owen; Adriano Dekker; Marcus Ennis; Namrata Kale; Venkatesh Muthukrishnan; Steve Turner; Neil Swainston; Pedro Mendes; Christoph Steinbeck
Journal:  Nucleic Acids Res       Date:  2015-10-13       Impact factor: 16.971

8.  The DAVID Gene Functional Classification Tool: a novel biological module-centric algorithm to functionally analyze large gene lists.

Authors:  Da Wei Huang; Brad T Sherman; Qina Tan; Jack R Collins; W Gregory Alvord; Jean Roayaei; Robert Stephens; Michael W Baseler; H Clifford Lane; Richard A Lempicki
Journal:  Genome Biol       Date:  2007       Impact factor: 13.583

9.  Recon3D enables a three-dimensional view of gene variation in human metabolism.

Authors:  Elizabeth Brunk; Swagatika Sahoo; Daniel C Zielinski; Ali Altunkaya; Andreas Dräger; Nathan Mih; Francesco Gatto; Avlant Nilsson; German Andres Preciat Gonzalez; Maike Kathrin Aurich; Andreas Prlić; Anand Sastry; Anna D Danielsdottir; Almut Heinken; Alberto Noronha; Peter W Rose; Stephen K Burley; Ronan M T Fleming; Jens Nielsen; Ines Thiele; Bernhard O Palsson
Journal:  Nat Biotechnol       Date:  2018-02-19       Impact factor: 54.908

10.  LipidFinder on LIPID MAPS: peak filtering, MS searching and statistical analysis for lipidomics.

Authors:  Eoin Fahy; Jorge Alvarez-Jarreta; Christopher J Brasher; An Nguyen; Jade I Hawksworth; Patricia Rodrigues; Sven Meckelmann; Stuart M Allen; Valerie B O'Donnell
Journal:  Bioinformatics       Date:  2019-02-15       Impact factor: 6.937

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  2 in total

1.  Analysis of Muscle Lipidome in Juvenile Rainbow Trout Fed Rapeseed Oil and Cochayuyo Meal.

Authors:  John Quiñones; Rommy Díaz; Jorge F Beltrán; Lidiana Velazquez; David Cancino; Erwin Muñoz; Patricio Dantagnan; Adrián Hernández; Néstor Sepúlveda; Jorge G Farías
Journal:  Biomolecules       Date:  2022-06-09

Review 2.  A Current Encyclopedia of Bioinformatics Tools, Data Formats and Resources for Mass Spectrometry Lipidomics.

Authors:  Nils Hoffmann; Gerhard Mayer; Canan Has; Dominik Kopczynski; Fadi Al Machot; Dominik Schwudke; Robert Ahrends; Katrin Marcus; Martin Eisenacher; Michael Turewicz
Journal:  Metabolites       Date:  2022-06-23
  2 in total

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