The metabolites produced by a cell, tissue or organism represent the endpoint of the omics process. Metabolomics workflows can be used to identify new and unknown compounds.
Download this infographic to learn more about:
• The essential role of metabolomics in the understanding of disease and the search for potential biomarkers
• The analytical techniques adopted in metabolomics
• The non-targeted vs. targeted metabolomic workflows
• The cutting-edge technology employed in metabolomics research
Why study metabolomics?
How do we study metabolites?
Targeted VS Untargeted
Bottlenecks in Metabolomics
Looking to the future
Metabolomics
Metabolomics is a powerful tool to study the complex metabolic processes that occur in a cell,
tissue or organism. Metabolomics has a wide set of applications and might be used to:
Metabolomics workflows include analytical techniques for separation and detection, such as:
Metabolomics workflows can be categorized as targeted or untargeted. Let’s explore generic
targeted and untargeted workflows.
The pairing of liquid chromatography with mass spectrometry (LC-MS) has become a
popular tool of choice for metabolomics research, owing to the technologies’ high throughput,
soft ionization and broad coverage.
The analytical tools adopted in a metabolomics study will largely depend on the
research question
and the
sample type
as these factors influence the type of workflow used.
Features
Sample selection
Sample analysis
Data processing + analysis
Data interpretation
Features
Validation
Sample selection
Sample analysis
Data processing + analysis
Untargeted
used to both
identify
and
quantify
the metabolites present in a sample.
This infographic will provide a visual exploration of what metabolites are,
and why and how we study them.
The metabolites produced by a cell, tissue or organism represent the endpoint of the omics process.
Genome Transcriptome Metabolome
Cell phenotype
Proteome
Mass spectrometry Nuclear Magnetic
Resonance Spectroscopy
Chromatography
The study of metabolites that are present in a cell, tissue or organism.
What can happen What appears to
be happening
What makes it happen What has happened
and is happening
Compared to earlier points in the
“omics” cascade, such as the genome
and transcriptome, the metabolome
more closesly reflects the phenotype.
Identify biomarkers
of health and disease
Monitor disease progression
and treatment responses
Identify novel drug targets
and study a drug’s effect on
metabolism, or how a drug is
metabolized
Explore the effect of
environmental factors or
exposures on metabolism
Study the effects of diet
on human metabolism
Study the metabolic
processes of plants, and how
we can engineer them for
optimization
Engineer new metabolic
systems in synthetic biology
This graphic summarizes a typical LC-MS set up.
• Hypothesis-driven
• Used to study a set of known
metabolites in a sample
• Provides absolute quantification
Metabolites of interest are selected
based on previous knowledge or
hypotheses.
Sample is analyzed using a targeted
analytical platform, most often a
mass spectrometer in Multi Reaction
Monitoring (MRM) acquisition mode.
The raw data is extracted, processed
and analyzed using software tools
capable of quantifying the targeted
metabolite(s).
Statistical analysis conducted.
Data is interpreted in the context
of the experiment.
• Hypothesis-generating
• Aims to comprehensively identify
and quantify as many metabolites
as possible in a sample
• Provides an unbiased approach
Sample is extracted and purified to
concentrate the metabolites present.
Sample is analyzed using a highthroughput platform capable of
global analysis, such as MS or NMR.
The data is analyzed and
processed to identify and/or
quantify the metabolites discovered.
Untargeted data processing workflows
incorporate several steps, such as:
• Noise filtering
• Peak detection
• Peak deconvolution
• Retention time correction
• Feature annotation
Data can be compared to existing
databases for analyte identification.
Statistical analysis conducted.
The unbiased approach
is advantageous; however,
it also carries the stipulation
that sample preparation
and analytical methods
can have a direct impact
on the qualitative results
that are gathered.
Data interpretation can
be challenging, and there
are often larger numbers
of false positives and
negatives with untargeted
metabolomics workflows.
Less false positives than
untargeted workflows,
but a limited number
of compounds can
be targeted.
Targeted
Sample
Analytical
challenges
Validation
Standardization
Integration with
other “omics”
Data analysis
Databases
As metabolomics research methods continue to be optimized and improved,
drug safety evaluation is expected to become more precise and efficient,
a more comprehensive understanding of disease will be garnered and
metabolomics is likely to emerge as a powerful tool for guiding human
health and monitoring the environment.
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