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First published online April 20, 2007
Journal of Experimental Biology 210, 1584-1592 (2007)
Published by The Company of Biologists 2007
doi: 10.1242/jeb.004333
Review Article |
Interpreting physiological responses to environmental change through gene expression profiling
Marine Environmental Biology, University of Southern California, 3616 Trousdale Parkway, Los Angeles, CA 90089, USA
e-mail: gracey{at}usc.edu
Accepted 12 March 2007
| Summary |
|---|
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Key words: acclimation, adaptation, gene expression, microarray
| Introduction |
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|
|---|
Since phenotype results ultimately from the expression of genes and gene
complexes, understanding patterns of gene expression evoked during changes in
physiological state, or in response to environmental change, yields insights
regarding the molecular basis of phenotype from the cellular to the whole
organism level. A key tool deployed in this research is the measurement of
mRNA transcript levels by microarray hybridization
(Gracey and Cossins, 2003
).
The microarray-based approach monitors the expression of many thousands of
genes simultaneously, providing a broad view of the transcriptional changes
that accompany alterations in physiological state.
| The role of the transcriptome in physiological regulation |
|---|
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Systems-based interpretations of biological processes are revealing new
insights into the role of the transcriptome in the regulation of phenotype. A
common theme in most systems-based investigations is an effort to link gene or
protein expression data with proteinprotein and proteinDNA
interaction data (Ideker et al.,
2001b
). The rationale behind this approach is that genes do not
function in isolation and instead are components of wider networks of
interacting molecules. As components of a wider system, the consequences of
gene expression should be interpreted within the context of the behavior of
the other molecules that participate in the biology of the organism. For
example, systems-based analysis of gene expression has begun to explain why
genes that are strongly differentially expressed in yeast stress experiments
often turn out to have no discernable effect on stress sensitivity in deletion
mutants (Birrell et al., 2002
;
Giaever et al., 2002
). Using
the yeast response to arsenic as a model, the analysis of deletion knockouts
revealed that the genes that conferred the most sensitivity to arsenic were in
pathways upstream of the arsenic detoxification pathways, while expression
profiling identified genes that were members of downstream pathways that
ultimately protect against toxicity but which share redundant functions,
explaining why they have no phenotypic effect with deletion
(Haugen et al., 2004
). A
similar conclusion was reached upon a system-based analysis of the DNA-damage
response of yeast (Workman et al.,
2006
). So interpretation of gene expression data within the
context of regulatory and metabolic networks suggests that gene expression
profiling tends to interrogate the downstream effectors of biological
responses.
A frequently asked question is whether changes in mRNA levels are a useful
proxy for inferring changes in protein abundance? The scientific literature is
replete with studies that have tried to address this question, most often by
applying a combination of microarray and proteomic techniques to explore the
concordance between mRNA and protein levels
(Tian et al., 2004
). A recent
study provides the most definitive exploration of this relationship, and
supersedes others by using an extremely accurate method to directly measure
protein abundance in living cells (Newman
et al., 2006
). Using a collection of yeast strains in which each
gene is expressed as a GFP-tagged fusion protein, GFP fluorescence was
measured to profile the expression of each protein under different
environmental perturbations and correlated with changes in the corresponding
mRNA abundance. Use of fluorescence provided unprecedented resolution of
protein abundance and revealed that mRNA abundance in 87% of genes changed
>twofold, showing correlated changes in protein abundance. In a minority of
cases, changes in protein abundance were observed in the absence of a change
in mRNA level. The conclusion that can be drawn from these results is that
mRNA expression profiling is an effective method to identify genes whose
protein expression is regulated at the transcriptional level, with the obvious
caveat that proteomic techniques are required to identify post-translationally
regulated genes. Indeed, a recent estimate assigns 73% of protein variance in
yeast to transcriptional regulation (Lu et
al., 2007
), and so gene expression screens will not provide
insights into the regulation of at least 25% of the proteome.
| Constructing microarrays for non-model organisms |
|---|
|
|
|---|
Comprehensive sequence data are often limited for most non-model organisms, precluding the design of gene-specific oligonucleotides, and so cDNA microarrays produced in-house will remain the most viable option for most laboratories in the short-term. In this format, cDNA libraries provide a source of cDNAs, which are then amplified by PCR and the products spotted onto the array. Because the primers employed in the PCR are based on the vector sequences that flank the cloned cDNAs, this approach can be employed without prior knowledge of the sequence of the cloned cDNA. This means that sets of PCR-amplified cDNAs can be quickly and affordably created for almost any species.
The procedure for preparing PCR products from cloned cDNAs is simple and
within the capacity of most molecular biology laboratories. Briefly, a cDNA
library cloned in plasmids is transformed into E. coli, plated onto
Luria-Bertani agar plates, yielding bacterial colonies that each represent a
single cDNA clone. A small portion of each colony is then picked into either
96- or 384-well microtiter plates containing Luria-Bertani broth and
propagated. Picking is done in a random fashion and thus the sequence and
identity of the cDNA clone present in the host E. coli is unknown.
The microtiter plates become the picked cDNA library with each coordinate in
the plate representing the location of a discrete cDNA clone. Microtiter
plates of clones can be copied and frozen, allowing the picked library to be
stored indefinitely. Accurate tracking of the plates of clones throughout the
picking and archiving process is an essential step
(Konno et al., 2001
), since
these plates will be the source for the next steps of PCR amplification,
arraying and sequencing.
Ideally, we would like to be able to curate a set of cDNA clones that
represents all the transcripts encoded by the genome of the organism we wish
to study. An array fabricated with this clone-set, a so-called whole
transcriptome microarray, would be invaluable since it would offer a global
overview of how the expression of every gene in the organism is orchestrated
under particular physiological or environmental conditions. However, creating
comprehensive cDNA collections that cover the entire genome has proved a
challenge. For most of the model organisms, laboratories around the world are
collaborating in efforts to create complete cDNA collections, yet after years
of work many cDNAs have remained elusive and the collections are still
incomplete. The project to identify and sequence every transcript in the mouse
genome is particularly noteworthy and an impressive range of strategies and
tools has been deployed in this effort
(Carninci et al., 2003
;
Okazaki et al., 2002
;
Carninci, 2007
). With these
problems in mind, it is important to consider the most effective strategy to
create comprehensive cDNA collections and arrays for new species.
| Normalized cDNA libraries |
|---|
|
|
|---|
A universal goal of all of the major cDNA collection and annotation
projects for model organisms is to isolate and sequence full-length cDNAs
clones (Imanishi et al., 2004
;
Strausberg et al., 2002
). A
full-length cDNA clone is one in which the entire coding sequence is present
together with the flanking 5' and 3' untranslated regions (UTRs).
The contribution of full-length clones to understanding gene function cannot
be understated. First, the complete cDNA sequence is useful for interpreting
genomic sequences, where exons are interspersed with non-coding introns, and
each gene may give rise to range of transcripts based on differential
splicing. Thus, a full-length cDNA is evidence of the genomic sequence that
was transcribed and of alternative splicing events
(Zavolan et al., 2003
).
Second, identification of the translation initiation codon and the 5'
UTR indicates the location of the promoter sequence of the gene, thus helping
to direct exploration of the gene's regulatory elements. Third, and most
importantly, knowing the sequence of the complete open reading frame of a gene
greatly facilitates its functional annotation. In the first instance, it
improves homology searches against the public databases and increases the
likelihood that its putative function can be assigned based on homology. For
cDNAs without recognizable homology to a known gene, characterization of the
functional motifs of the protein may help predict its function
(Okazaki et al., 2002
).
Furthermore, knowing the complete amino acid sequence of the encoded protein
is important for comparative analyses that aim to understand differences in
functional properties of orthologous proteins. For all these reasons,
full-length cDNA clones are a valuable foundation upon which further
investigations can be constructed.
One caveat with respect to using full-length clones as microarray probes is
that their sequence may contain regions that share homology with other genes
or contain repetitive sequence. These elements may lead to cross-hybridization
between the cDNA and transcripts other than the target transcript. The degree
to which these non-specific hybridization signals compromise array analysis is
still unclear, but it appears that increasing the stringency of both
hybridization and wash conditions can alleviate these problems
(Drobyshev et al., 2003
;
Korkola et al., 2003
). On the
other hand, the tolerance of long cDNAs to base-pair mismatches can be turned
into an advantage, since it allows nucleic acids from related taxa to be
hybridized heterologously to a single species array
(Renn et al., 2004
;
von Schalburg et al.,
2005
).
| Subtracted cDNA libraries |
|---|
|
|
|---|
| Oligonucleotide-based arrays and standardization |
|---|
|
|
|---|
Oligonucleotide probes provide additional advantages beyond that of
standardization. Most importantly, oligonucleotide probes can be designed to
distinguish between genes with high degrees of sequence similarity
(Hughes et al., 2001
). This is
particularly important given the complexity of the transcriptome, which may
include transcripts that are alternatively spliced
(Zavolan et al., 2003
),
antisense (Kiyosawa et al.,
2003
), allele-specific (Yan et
al., 2002
) or non-coding
(Okazaki et al., 2002
). The
ability to explore the function of these transcripts initially through an
understanding of when and where they are expressed will be dependent on the
discriminatory power offered by oligonucleotide arrays.
Cross-laboratory and cross-platform standardization is only relevant if
gene expression datasets are shared and made available in public databases.
Most journals, including The Journal of Experimental Biology, require
that gene expression data are submitted to one of the two public databases,
either ArrayExpress (Parkinson et al.,
2007
), or NCBI GEO (Barrett et
al., 2007
). In the past we have found that submitting data to both
these repositories was cumbersome and required informatics support in order to
organize massive amounts of data into the format required for compliance.
Realising that the complexity of the submission process was an obstacle to
submission and full disclosure of expression data, the public databases have
recently introduced a spreadsheet-based submission format
(Rayner et al., 2006
). This
simple tabular format is similar to the one used by most gene expression
analysis software packages, meaning that submission of expression data should
be within the capability of any research group with the ability to generate
and analyse microarray expression data. Removal of this impediment should
streamline the submission and publication of expression data generated for
non-model organisms, opening up the field to laboratories with limited
informatics capacity. Accordingly, it is hoped that submitting new expression
data to public databases will become as routine a step in microarray
investigations as preparing high quality RNA.
| High-throughput sequencing |
|---|
|
|
|---|
| Gene expression data interpretation |
|---|
|
|
|---|
In the course of our investigations into the transcriptional response of
carp to environmental cold (Gracey et al.,
2004
) and hypoxia (Fraser et
al., 2006
), we have adopted two different computational approaches
to extract novel insights into the physiological response of carp to these
perturbations. Our choice of methods was driven by the data: cold acclimation
caused a substantial proportion of the transcriptome to be differentially
expressed and this complexity prompted us to adopt a holistic interpretation
method with an emphasis on the detection of biological themes within the
expression data. In contrast, the transcriptional response to hypoxia was far
more constrained in terms of the number of genes that were expressed, and so
we adopted a simple statistical method to identify genes that exhibited large
changes in expression as candidates for follow-up studies.
| Metabolic reprogramming during cold-acclimation |
|---|
|
|
|---|
This approach has the ability to detect coherent changes in the expression
of sets of genes that may be hidden when considering the expression patterns
of individual genes in isolation. For example, analysis of the expression
signatures of muscle samples from diabetics identified that oxidative
phosphorylation genes were coordinately down-regulated in diabetes, despite
the fact that the decrease in their expression was modest, just 20%
(Mootha et al., 2003
). Since
the same ontology is applied universally to genes from all organisms, it
allows gene expression datasets from different species to be compared from a
thematic rather than from an orthologous gene perspective. For example, shared
metabolic programs associated with aging were identified in
Drosophila and C. elegans by identifying over-represented GO
terms in the lists of genes that were differentially expressed during the
onset of aging in each organism (McCarroll
et al., 2004
).
For the analysis of the carp cold-acclimation dataset presented here, one
(Subramanian et al., 2005
) of
the many methods (Dennis et al.,
2003
; Zeeberg et al.,
2003
; Zhong et al.,
2004
) for detecting biological themes in sets of differentially
expressed genes was applied to the data to identify GO-defined biological
processes that were up- or downregulated with cooling in each tissue. The data
are visualized as a heatmap matrix that describes the pattern of changes in
metabolism, protein expression and transport in each tissue
(Fig. 1). Inspection of the
biological processes associated with metabolism reveals that the brain is the
most active tissue with respect to the number of metabolic processes that are
upregulated during cold-acclimation. The matrix highlights the most
distinctive features of each tissue's metabolic adjustments to cold. For
example, changes in cholesterol, fatty acid and sterol metabolism were evident
in brain tissue, consistent with the importance of lipids for proper function
of the central nervous system. Genes involved in the TCA cycle are elevated in
six of the seven tissues, consistent with other studies that have shown that
mitochondrial enzymes activities are elevated in cold-adapted fish populations
(Lucassen et al., 2006
).
Cold-acclimation is also associated with the differential expression of genes
that function in regulating protein expression. The process of translation
initiation appears to be upregulated in all tissues with the exception of the
intestinal mucosa, consistent with evidence from prokaryotes that suggests
that cold compromises the translational apparatus
(Thieringer et al., 1998
). In
general, the intestinal mucosa exhibits a muted response to cold, with fewer
biological processes showing transcriptional evidence of acclimation. An
explanation for this might be that the mechanisms of cellular acclimation
might be different in this tissue since it experiences extremely high cellular
turnover.
|
This thematic analysis suggested a specific role for `protein folding'
genes during cold-acclimation, since this GO term was highly enriched in the
list of differentially expressed genes in five of the seven tissues. The
specific genes contributing to this enrichment were identified and are listed
in Table 1. The list includes
all the subunits of the T-complex chaperonin that assist in the folding of
proteins upon ATP hydrolysis. Isomerization of proline residues has a large
temperature-dependence and can be a rate-limiting step in protein folding at
low temperatures (Stoller et al.,
1995
), and so the inclusion in the gene list of three genes
involved in proline cistrans isomerization (FK506-binding
proteins) may indicate that this step is a target of compensatory regulation
in the cold. Recent analysis has identified two distinct sets of protein
chaperone genes in yeast, one with a role in refolding stress-induced damaged
proteins and another involved in protein synthesis
(Albanese et al., 2006
). The
yeast orthologues of the T-complex chaperonin, prefoldin, and FK506-binding
proteins, all fall into the latter category, suggesting that cold compromises
the folding of nascent proteins rather than directly causing protein
denaturation. Genes involved in `ubiquitin-dependent protein catabolism' are
also highly enriched in the cold-acclimating tissues, and it remains to be
seen if the expression of these genes (mainly components of the proteasome),
is a consequence of the production in the cold of aberrantly folded proteins
that require degradation.
|
| Identification of novel hypoxia-responsive genes |
|---|
|
|
|---|
|
Applying rank-based statistical methods to prioritize genes for further
study has proved useful in other investigations of physiology. For example,
gene expression profiling of leptin-regulated genes in the liver of obese
ob/ob mice (Cohen et
al., 2002
) identified stearoyl-CoA desaturase as the top ranked
gene under regulation, leading to follow-up studies that demonstrated that the
desaturase has a key role in fat deposition and that mutations in desaturase
promote weight loss (Ntambi et al.,
2002
). Using a custom microarray prepared for Darwin's ground
finches, calmodulin was identified as the regulatory gene whose expression was
most correlated with peak length across species
(Abzhanov et al., 2006
). This
discovery prompted further studies, first to validate that there was more
calmodulin protein expressed in the beaks of finches with elongated beak
morphology, and then to demonstrate that manipulating calmodulin expression in
the beaks of chickens could modify morphology. These two studies demonstrate
the usefulness of using rank-based criteria for prioritizing specific genes
identified in gene expression screens for further physiological or
evolutionary investigations.
| Conclusions |
|---|
|
|
|---|
| Acknowledgments |
|---|
| Footnotes |
|---|
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