First published online January 9, 2003; 10.1104/pp.012732
Plant Physiol, February 2003, Vol. 131, pp. 430-442
Gene Expression in Autumn Leaves1
Rupali
Bhalerao,
Johanna
Keskitalo,
Fredrik
Sterky,
Rikard
Erlandsson,
Harry
Björkbacka,2
Simon
Jonsson
Birve,
Jan
Karlsson,
Per
Gardeström,
Petter
Gustafsson,
Joakim
Lundeberg, and
Stefan
Jansson*
Umea Plant Science Center, Department of Plant Physiology, Umea
University, 901 87 Umea, Sweden (R.B., Jo.K., H.B., S.J.B., Ja.K.,
Per. G., Pet. G., S.J.); and Department of Biotechnology,
Kungliga Tekniska Högskolan, Royal Institute of
Technology, Stockholm Center for Physics, Astronomy, and
Biotechnology, 106 91 Stockholm, Sweden (F.S., R.E., J.L.)
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ABSTRACT |
Two cDNA libraries were prepared, one from leaves of a field-grown
aspen (Populus tremula) tree, harvested just
before any visible sign of leaf senescence in the autumn, and one from
young but fully expanded leaves of greenhouse-grown aspen
(Populus tremula × tremuloides). Expressed sequence tags
(ESTs; 5,128 and 4,841, respectively) were obtained from the two
libraries. A semiautomatic method of annotation and functional
classification of the ESTs, according to a modified Munich Institute of
Protein Sequences classification scheme, was developed, utilizing
information from three different databases. The patterns of gene
expression in the two libraries were strikingly different. In the
autumn leaf library, ESTs encoding metallothionein, early
light-inducible proteins, and cysteine proteases were most abundant.
Clones encoding other proteases and proteins involved in respiration
and breakdown of lipids and pigments, as well as stress-related genes,
were also well represented. We identified homologs to many known
senescence-associated genes, as well as seven different genes encoding
cysteine proteases, two encoding aspartic proteases, five encoding
metallothioneins, and 35 additional genes that were up-regulated in
autumn leaves. We also indirectly estimated the rate of plastid protein
synthesis in the autumn leaves to be less that 10% of that in young
leaves.
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INTRODUCTION |
Leaf senescence is the final stage
in leaf development, and understanding senescence is important not only
for purely scientific reasons, but also for practical purposes.
Premature senescence leads, for example, to decreased photosynthetic
capacity, and consequently lower yield. Senescence is not simply the
passive death of a leaf because of aging, but is a tightly controlled process during which cell components are degraded in a coordinated fashion and, when nutrients have been relocated to other parts of the
plant body, the cell finally dies (Gan and Amasino,
1997 ; Nooden et al., 1997 ). Despite the
resemblance with apoptosis of animal cells (Yen and Yang,
1998 ), a form of programmed cell death, only a few orthologs of
genes regulating apoptosis have been found in plants, indicating that
there are significant differences between the processes (Koonin
and Aravind, 2002 ). Plant cells respond to some animal
apoptosis regulators (e.g. Danon et al., 2000 ), so there
must be common elements between the processes. However, it seems as if
plants have developed a unique mode of cell death (Beers,
1997 ) that, if understood, may give insight into processes that
are important for cell integrity and viability. However, very little is
known about the details of plant leaf senescence.
During the last decade, studies of leaf senescence, focusing especially
on Arabidopsis, and other annual species to a lesser extent, have
identified a number of senescence-associated genes (SAGs) and cellular
mechanisms of senescence have begun to be elucidated, as reviewed by
various authors (Buchanan-Wollaston, 1997 ; Nam,
1997 ; Quirino et al., 2000 ). The most obvious
visual phenotype of senescence, the color changes from green to yellow, red, or orange, is the result of chlorophyll degradation, often combined with anthocyanin accumulation (Hoch et al.,
2001 ). During senescence, photosynthesis declines and the leaf
changes its metabolism from anabolism to catabolism and the
chloroplasts turn into gerontoplasts. This initial decay is limited to
the photosynthetic mesophyll cells, whereas epidermal cells, including
stomata and cells in the phloem, stay intact and functional
(Feller and Fischer, 1994 ). Even for the photosynthetic
cells the degradation is initially only partial, and compartmentation
is maintained with intact mitochondria, peroxisomes, and vacuoles.
Respiration continues after photosynthesis starts to decline and
mitochondria remain intact (Collier and Thibodeau,
1995 ). It has been suggested that mitochondria may play an
important role in the process both for ATP production and for the
metabolic events leading to recapture of nutrients (Feller and
Fischer, 1994 ; Smart, 1994 ; Collier and
Thibodeau, 1995 ). However, very little experimental evidence
has been published to support this hypothesis. Surprisingly, leaf
senescence in perennial species, especially trees (which give the most
conspicuous and esthetically pleasing display of leaf senescence, at
least in the temperate regions of the world) has not been studied with modern molecular genetic tools. Autumnal leaf senescence is an attractive system in which to study leaf senescence because the senescence process can be induced, at least in most trees, simply by
shortening the photoperiod, as shown, for example, by Olsen et
al. (1997) . In contrast, senescence in annual plants tends to
be induced either by some type of stress or, in monocarpic plants like
soybean (Glycine max) and cereals, by the development of the seeds. There are no reasons to believe that autumnal senescence should be completely different from other types of leaf senescence but
because the trigger is different, regulatory differences must exist.
We have initiated a project to understand the genetic basis of autumn
senescence and describe here the first steps in this initiative:
large-scale sequencing and analysis of aspen (Populus tremula) expressed sequence tags (ESTs) to identify
candidate genes for regulating and mediating the process. In addition
to gene identification, EST sequencing can also be used to obtain estimates of relative expression levels. Provided that no subtractive methods have been applied during library construction, relative EST
abundance provides an approximate indication of the level of each
transcript in the mRNA pool. If genes are grouped into broad categories
(for example, according to function), the mean numbers of ESTs give a
fairly good estimate of the gene transcription in each category and the
EST frequency of several sets of Arabidopsis and rice
(Oryza sativa) genes have been shown to roughly
correspond to relative protein stoichiometries (Mekhedov et al.,
2000 ; Ohlrogge and Benning, 2000 ).
Here, we present an analysis of two different sets of aspen leaf ESTs,
and use the data to draw conclusions regarding gene expression during
autumnal leaf senescence in aspen.
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RESULTS |
RNA Sampling and Preparation
From a free-growing aspen on the Umea University campus, leaf
samples were harvested twice a week from August 17 until October 1, 1999, flash frozen in liquid nitrogen, and stored at 80°C until RNA
preparation. The leaves showed no visible signs of autumn senescence
until September 14 but then, within a week, the leaves turned yellow
(Fig. 1) and started to fall. By the
beginning of October, virtually all leaves had fallen, so sampling was
stopped.

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Figure 1.
Autumn senescence in free-growing aspen. The
pictures were taken at the time of leaf sampling (11.00) during the
autumn of 1999.
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We measured the amount of extractable RNA from three independent RNA
extractions of leaves from each sampling date to get a crude estimate
of the kinetics of RNA disappearance as the leaf senesced. We noted an
increase in the amount of extractable RNA in the first half of
September, but during the latter half of the month the RNA gradually
decreased in abundance and finally disappeared (Fig.
2). The amount of extractable RNA does
not necessarily correspond precisely to the amount of RNA present in
the sample or to the level of protein synthesis. Nevertheless, these
changes indicate that chloroplast degradation may be preceded by an
increase in protein synthesis, and that protein synthesis activity
probably continued for about 2 weeks after the initiation of massive
chlorophyll degradation.

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Figure 2.
Amount of extractable RNA from aspen leaves at
different dates during the autumn of 1999. Values are means of three
different preparations.
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EST Sequencing, Bioinformatics, and Database
Construction
Two cDNA libraries were constructed and analyzed using a
high-throughput DNA sequencing setup. From the autumn leaf library (harvested on September 14 as described above), 5,258 EST sequences were obtained. To get a reference data set for comparison, we sequenced
4,923 clones from a cDNA library prepared from young, but fully
expanded, leaves of an aspen hybrid grown in a greenhouse (Larsson et al., 1997 ). The reasons for choosing this
library for comparison are presented in "Discussion." The ESTs had
average (trimmed) read lengths of 349 and 355 bp in the autumn leaf and young leaf library, respectively. All clones found to contain rRNA,
mitochondrial DNA, and chloroplast DNA were excluded from the analysis.
EST libraries, especially from free-growing aspen, could be
contaminated by sequences from fungal pathogens. Therefore, all clones
that showed highest homology to a fungal sequence in SWISS-PROT/TrEMBL
were manually checked and removed from the analysis if they were likely
to be of fungal origin. After this curation procedure, 5,128 and 4,841 ESTs remained from the autumn leaf and young leaf libraries,
respectively. To annotate the ESTs, we designed a semiautomatic system
for clustering and annotation (see "Materials and Methods") and
included a quality assessment with three grades (valid, perhaps
valid, and probably invalid) in the annotations. Quality was scored by
dividing the BLASTX score by the self-blast score to calculate the
relative confidence value (RCV; Lonsdale and Arnold,
1999 ) to normalize the BLASTX scores with respect to sequence
length because long contigs produce higher BLASTX scores than shorter
ones with the same percent similarity. It is, in our experience, easier
to define a sound threshold value for "valid" annotation using RCVs
than the more commonly used BLASTX scores or E values. We manually
examined a large number of sequence alignments and found that RCVs of
>0.35 corresponded to what we regarded as "valid" annotation. For
a 500-bp sequence, this corresponds to a BLASTX score of about 300. For
very long contigs, significantly higher BLASTX scores could still give
a RCV of <0.35, so all BLASTX scores >300 were also regarded as "valid." At the lower end of the quality scale, the RCV is not as
good a measurement of quality. Instead, a BLASTX score of <100 is more
consistent with a nonsignificant hit (as judged by manual inspection)
than a low RCV or E value. Therefore, sequences with BLASTX scores of
<100 were scored as "probably invalid" and the remaining
annotations were denoted "perhaps valid."
The number of genes represented in a cDNA library and the redundancy of
specific genes can be estimated by clustering the EST sequences
according to sequence similarity. There are several pitfalls in this
procedure. ESTs obtained from the 5' end of the clone might not overlap
although they derive from the same transcript. This is because of the
fact that many clones (especially those originating form large
transcripts) are not full length. In addition, for highly expressed
genes represented by many copies among the ESTs, clustering programs
like Phrap and the TIGR assembler have a strong tendency to
split them into several contigs (Liang et al., 2000 ).
These problems could result in a significant overestimation of the
number of genes represented in an EST collection. To reduce this
problem, we used the Mendel database. This high-quality database organizes all plant sequences into gene family numbers (GFNs). All
contigs that produced a valid or probably valid hit to an entry in the
Mendel database were assigned to the corresponding GFN (together with a
quality measurement, identical to that of the annotation). One GFN in
our database could then consist of several contigs/singlets originating
from either the same or very similar genes. The contigs/singlets that
did not produce a valid hit to a Mendel entry were assigned an aspen
GFN (PGFN) as a unique denominator. In the following text, we will
refer (for simplicity) to each GFN/PGFN as a single gene but we are
aware that although many of these contigs/singlets may originate from
different parts of the same transcript, several highly homologous genes
are sometimes grouped into the same GFN.
We also identified, for each sequence, the protein in the Munich
Institute of Protein Sequences (MIPS) Arabidopsis database (MATDB) that
gave the highest BLASTX score. Many annotations in MATDB are
automatically performed and are, in our experience, less reliable than
those in the other databases. However, because every gene in MATDB has
been assigned to a functional class in the MIPS classification system,
identification of the closest Arabidopsis homologue provided a rapid
way to obtain a preliminary functional classification of our sequences,
which was later subjected to extensive manual curation. All annotations
were entered into a FileMaker Pro-database using appropriate scripts.
A total of 4,512 ESTs (44%) could be assigned to a Mendel gene family.
In the autumn leaf library, 380 different Mendel GFNs (see "Materials
and Methods") were represented, and the young leaf library contained
460 different GFNs. Of these, 155 were shared between the two
libraries. The remaining 5,669 ESTs fell into 3,717 homology groups and
were given PGFNs. Only 207 PGFNs were shared between the libraries: The
autumn leaf library had 2,027 unique PGFNs and the young leaf library
had 1,483. Thus, the genes expressed in young leaves corresponded more
often to previously characterized proteins or genes than those
expressed in autumn leaves, and the pattern of gene expression in the
two types of leaf differed markedly.
Different Genes Were Most Abundant in the Two Libraries
To analyze more carefully the differences in gene expression we
compared, from the curated lists of annotated clusters, the most
abundant ESTs in the two libraries. Genes encoding "standard" photosynthetic proteins were scarce in the autumn leaf library (Table
I). Rubisco ESTs, for example, were found
at a frequency corresponding to 4% of that in the young leaf library
(see below), and similar frequencies were found for other genes
encoding proteins involved in the photosynthetic light and dark
reactions (see below). However, ESTs encoding early light-inducible
proteins (ELIPs), which accumulate in the thylakoid membrane during
stress, were 13 times more abundant in the autumn leaf library. Several
other stress-related proteins, for example metallothionein,
blight-associated protein P12 (which has homology to expansin), pollen
coat protein (which is related to dehydrins), and proteases, were also
frequently found among the autumn leaf ESTs.
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Table I.
The 20 most abundant types of ESTs in autumn
leaves
The nos. of ESTs in autumn and young leaf libraries, the enrichment
factor in the autumn leaf library (% in autumn leaves/% in young
leaves), and the significance level for differential expression are
indicated.
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As expected, in the young leaf library most genes with a high abundance
of ESTs encoded proteins of the photosynthetic apparatus. In
fact, of the 20 most abundant genes (Table
II), 14 were related to photosynthesis:
679 clones (14%) represented RbcS, encoding the small subunit of
Rubisco, and 219 (4.5%) represented Lhcb1, encoding the major LHC II
protein. No other protein was represented by more than 2% of the
clones. Other proteins related to photosynthesis included seven
light-harvesting chlorophyll a/b-binding
proteins, two other PS I proteins, two other PS II proteins, and three
soluble proteins. One additional gene encoded a chloroplast-located
protein (a thiazole biosynthetic enzyme). Among the most frequent
sequences that were not related to photosynthesis were two that encoded cytosolic proteins (ubiquitin and metallothionein) and two encoding proteins that appeared to be sorted through the secretory pathway: a
cell wall protein (Pro-rich protein) and a germin-like protein. It was
apparent that the genes represented in the autumn leaf library were
generally less well characterized than those in the young leaf library:
Almost all of the genes in Table II have
a very well-defined function, whereas this is only true for a minority of the genes in Table I.
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Table II.
The 20 most abundant transcript types in young
leaves
The nos. of ESTs in young and autumn leaf libraries and the enrichment
factor in the young leaf library (% in young leaves/% in autumn
leaves) are indicated.
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Five Metallothionein Genes Were Highly Expressed in Autumn
Leaves
Genes encoding metallothionein, the most abundant type of EST in
the autumn leaf library, have previously been shown to be senescence
induced (Kagi, 1991 ). Metallothioneins are divided into
several classes, and we found genes encoding both type 2 and 3 metallothioneins to be very abundant in the autumn library. Manual
inspection of the clones showed that the transcripts apparently originated from six different genes, which we name PMt1 through 6 (Table III). Four of these had a
significantly higher EST frequency in the autumn leaf library: One
(PMt1) was present at higher frequency, but at a low significance level
(80% probability) and one (PMt4) was not enriched in the autumn leaf
library at all. For the genes PMt3, PMt5, and PMt6, we identified
clones that were aberrant: Two of the 32 PMt3 clones had an 83-bp
insertion, one of the 39 PMt5 clones had a 48-bp insertion, and 19 of
the 231 PMt6 clones had a 65-bp insertion. We assume that these
aberrants represent unspliced clones or perhaps splice variants, but we
cannot rule out the possibility of the existence of almost identical
genes with insertions in the exons. However, the latter possibility seems less likely because two of the three insertions result in frame
shifts, so these mRNAs do not encode a protein with high homology to
known metallothioneins.
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Table III.
Metallothionein genes expressed in aspen
leaves
The name and class of each metallothionein gene is given, as well as
the no. of ESTs from each gene found in the autumn leaf and young leaf
library.
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Several Cys and Aspartic Protease ESTs Were Abundant in the Autumn
Leaf Library
Proteases have important roles in the senescence process
(Ye and Varner, 1996 ; Beers, 1997 ;
Ueda et al., 2000 ), and were also abundant among the
clones in the autumn leaf library. However, not all types of protease
were well represented among the autumn leaf ESTs. Although ESTs
encoding Cys and aspartic proteases and the components of the ubiquitin
system were significantly enriched, the components of the proteasome
system, which is involved in the degradation of ubiquitinated proteins,
were not (Table IV), indicating that this
stage of leaf senescence does not involve an increase in proteasome
activity. Because Cys proteases were particularly abundant and many
known SAGs encode Cys proteases (Noh and Amasino, 1999a ;
Solomon et al., 1999 ), we paid particular attention to
these genes. All clones encoding Cys proteases were manually checked
and assigned to individual genes. In this way, we identified 12 genes coding for Cys proteases (which we named Pcyprot1-12; Table
V); Pcyprot1 through 7 are quite similar
(denoted Cys proteases in Table I and GFN 1,134 in the Mendel
database). ESTs from five of these proteases (Pcyprot1-5, including
one most similar to SAG12) were significantly enriched in the autumn
leaf library but one (Pcyprot7) appeared more frequently in the young leaf library. Thus, this class of vacuolar-located proteases appears to
have a role in this stage of autumn senescence, but not other Cys
proteases (apparent orthologs of the Arabidopsis proteins At4g01610,
At5g60360, and At4g11320). Clones encoding aspartic proteases were also
checked in the same way, and we found that two rather similar genes
(with 70% homology at the DNA level) encoded aspartic proteases that
seemed to have higher expression in autumn leaves.
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Table IV.
Proteases in young and autumn leaf libraries
The nos. of ESTs found in the autumn and young leaf libraries encoding
various types of proteases are indicated.
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ESTs from 35 Additional Genes Were Significantly Enriched in Autumn
Leaves
We have used the annotation procedure to analyze about 27,000 ESTs
from five other aspen cDNA libraries (Sterky et al.,
1998 ; R. Bhalerao, S. Jansson et al., unpublished data).
All unique ESTs in the autumn leaf library may correspond to
senescence-associated or stress-induced genes, but those represented by
just one or a few clones could, of course, have been found there
fortuitously. According to the equations of Audic and Claverie
(1997) , genes that are represented by four or five ESTs in
5,200 clones from one library, but do not appear among 5,000 clones in
another, are significantly enriched (with 90% and 95% confidence,
respectively). In the autumn leaf library, we identified 35 genes that were represented by at least four copies in the autumn leaf
library, but not any other, and named these genes Paul
(Populus autumn leaf) 1 through 35 (Table
VI). Some of these were very abundant
among the ESTs. Paul1 and Paul2 were represented by 30 and 17 ESTs,
respectively, and represent aspen homologs of two Arabidopsis genes
that have not been assigned any function. Six of the Pauls showed no
significant homology to any gene in public databases, nine were
homologous to Arabidopsis genes of unknown function, and for several
others the most similar Arabidopsis protein had only a poorly defined function. At least nine of the encoded proteins seemed to be plastid located: for eight of the Arabidopsis orthologs, chloroplast-sorting signals were found and Paul5 encodes DegP1 protease, which is known to
be chloroplast located and involved in the degradation of the PS II
reaction center polypeptide D1. Five of the proteins encoded by the
Paul genes are predicted to be sorted through the secretory pathway,
two to the mitochondria and two to the nucleus, based on their
respective annotations, whereas for 11 of the proteins, no sorting is
predicted. For the Paul genes where we could not identify any
Arabidopsis ortholog, no specific location was predicted.
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Table VI.
The most strongly expressed genes unique for the
aspen autumn leaf library
Localization is based on the predicted sorting signals of the
Arabidopsis orthologs or (within parentheses) by function.
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Although none of the Paul genes, to our knowledge, have homologs
previously claimed to be directly involved in leaf senescence, several
have functions or expression patterns that relate to stress or
senescence. Paul20 encodes a protein homologous to At3g54040 (Nt-sube80
protein), which is known to be induced by elicitors and photoassimilate
accumulation (Herbers et al., 1995 ). Paul4 (NAD-dependent formate dehydrogenase) has been reported to be present mainly in mitochondria of non-photosynthetic tissues, but it
was strongly induced by a number of stress treatments in a study by
Desfrancssmall et al. (1993) . Paul28 showed similarity to Acd (Accelerated cell death) 2, encoding a red chlorophyll catabolite reductase, which may protect cells from death by
catabolizing chlorophyll breakdown products that could cause
photooxidative stress if not degraded (Mach et al.,
2001 ). Several Paul genes encoded putative regulatory proteins
(transcription factors and kinases) and several showed homology to
proteins induced by biotic stress (e.g. Paul8 and Paul26).
Representation of Known SAGs
Previous studies of other types of senescing leaves have
identified many genes induced during senescence. To see whether some of
these were expressed at higher levels in autumn leaves than in young
leaves, we compared EST frequencies for all genes listed as senescence
associated by Buchanan-Wollaston (1997 and refs. therein; Table VII) that have not already
been discussed above (Cys and aspartic proteases, ubiquitin,
ubiquitin-conjugating protein, metallothionein, and
1-aminocyclopropane-1-carboxylic acid oxidase). This list is
certainly not covering all genes shown to be senescence induced, but
could be regarded as a representative collection. Cytochrome P450 and
MIP proteins were excluded because of problems with identifying the
aspen orthologs to the senescence-induced members of these large
multigene families.
Known SAGs that were significantly (95% confidence level) enriched in
the autumn leaf library were ferritin and the pathogenesis-related protein PR1. Phospholipase D, Asn synthetase, ATP sulfulyase, chitinases class III, and NADH-ubiquinone oxidoreductase subunit K also
had higher clone frequencies in the autumn leaf library, but these
enrichments were not statistically significant.
A number of genes reported to be senescence associated were not
enriched in the autumn leaf library, including
beta-galactosidase, glutathione S-transferase, catalase,
chitinase class I and the glyoxisomal forms of
NAD+ malate dehydrogenase, Fru-bisphosphate
aldolase, cytosolic Gln synthetase, and
glyceraldehyde-3-phosphate dehydrogenase. However, we cannot
exclude the possibility that in some of these cases there could be
problems involved in the identification of the true aspen ortholog to a
senescence-specific form of the protein. Several known SAGs were not
found in either library (although some were found in other libraries,
not derived from leaf tissue). These included ribonuclease RNS2, malate
synthase, isocitrate lyase, phosphoenolpyruvate
carboxykinase, and pyruvate orthophosphate dikinase.
Of the 26 analyzed genes previously found to be senescence induced, we
found expression patterns consistent with such induction for 13 (eight
of which were statistically significant), eight appeared not to be
up-regulated in this stage of senescence as compared with young leaves,
and for five genes, we obtained no data on their expression patterns.
Photosynthesis Was Down-Regulated But Lipid Metabolism and
Respiration Were Up-Regulated
The MIPS functional classification scheme is not always
appropriate for plant genes. For example, there is no single class for
"photosynthesis": Rubisco and the Calvin cycle enzymes are found in
class 01.05.01.05.01 (metabolism, C compound and carbohydrate metabolism, C compound and carbohydrate utilization, autotrophic CO2-fixation, and Calvin cycle), the proteins of
the PSs are found in class 02.30 and the chloroplastic ATPase is found,
together with mitochondrial ATPase, in class 02.11. Therefore, we
constructed a slightly modified MIPS classification scheme, differing
from the original in some subclasses within class 1 (metabolism) and 2 (energy) and classified all genes according to it. The modified scheme
(named UPSC-MIPS) is presented in the supplementary material.
Based on the functional classification of the clones, we compared the
classes of genes that were expressed in the two libraries. We did not
attempt to classify genes with BLASTX scores under 100 ("not
classified" in Fig. 3), and those that
were most similar to a plant gene without a known function, typically
an Arabidopsis open reading frame, were put in the category
"unclassified." The functional classification for each of these
genes is included in the list of clones in the supplementary
material.

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Figure 3.
Functional classification (according to the
UPSC-MIPS classification scheme) of autumn leaf and young leaf
ESTs.
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In Figure 3, the percentage of clones found in the different main
UPSC-MIPS classes is shown, and the distribution of clones in the
subclasses of class 01 (metabolism) and 02 (energy) is shown in Table
VIII. The full list of clones in the
different classes is found in the supplementary material. The fraction
of clones in class 01 (metabolism) was the same in the two libraries,
but the subclasses C compound and carbohydrate metabolism, lipid, fatty
acid and isoprenoid metabolism, nucleotide metabolism, and nitrogen and
sulfur metabolism were more strongly represented among the clones in
the autumn leaf library than in the young leaf library.
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Table VIII.
Functional classification (according to
Umea Plant Science Centre [UPSC]-MIPS classification
scheme) of autumn leaf and young leaf ESTs belonging to the metabolism
and energy classes
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The differences between the libraries were much more pronounced in the
class 02 (energy). For instance, the subclass photosynthesis contained
5.2% of the clones in the autumn leaf library, compared with
33% in the young leaf library. Major differences were also found
within the photosynthesis subclass. Subclass 02.30.01.01 (photosynthetic light reaction), for example, accounted for 0.9% of
the ESTs in the autumn leaf library, compared with 16% in the young
leaf library, an almost 20-fold reduction. On the other hand, subclass
02.30.02.05 (photorespiration) was much less depleted (0.6% versus
1.0%).
Several authors have suggested that lipid metabolism provides
energy for the senescing leaf (Gut and Matile, 1988 ;
Wanner et al., 1991 ). We found enrichment in autumn
leaves of ESTs in the classes 01.06 (lipid and fatty acid metabolism),
02.01 (glycolysis and gluconeogenesis), and 02.11 (electron transport
and membrane-associated energy conservation).
The classes from the list of most abundant genes that seemed to be most
enriched in the autumn leaf library, 06 protein destination (including
06.13, proteolysis), and 11 Cell rescue, defense, death, and aging,
were much better represented in the autumn than in the young leaf
library (7% versus 3% and 11% versus 4%, respectively). The
fraction of ESTs without significant homology to any gene in public
databases was almost twice as large in the autumn leaf library (28%
versus 15%), whereas the fraction of "unclassified" clones
(homologous to a gene without assigned function) was about the same in
the two libraries.
Transcript Profiling
We analyzed transcript abundance for five of the genes: ubiquitin,
PR1, and three Cys proteases (Pcyprot 1, 4, and 6), which we identified
as putative SAGs in aspen during the autumn in leaves of a free-growing
aspen tree. As a comparison, one apparently down-regulated gene (Lhcb2)
was also analyzed.
The expression patterns of the two types of gene were, as expected,
strikingly different: Although the Lhcb2 mRNA level decreased steadily
during the autumn, all five putative SAGs showed an increase in
transcript abundance (Fig. 4). However,
the patterns were different. Pcyprot6 and PR1 mRNAs accumulated to high
levels only in the very late stages of senescence, ubiquitin and the
Pcyprot 1 showed a more gradual increase and the Pcyprot4 transcript
showed biphasic behavior, with one peak at August 24 and another at
September 14. This supports the hypothesis that many of the genes we
identified as potential SAGs in the EST material are SAGs.

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Figure 4.
RNA gel-blot analysis of mRNA transcripts during
senescence. Total RNA was isolated from leaves at different dates
during the autumn of 1999 and hybridized with labeled cDNA probes for
Lhcb2, polyubiquitin (UBQ), three Cys proteases, and
pathogenesis-related protein 1 (PR1).
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DISCUSSION |
The coloration of the leaves of deciduous trees in the fall in
temperate regions is perhaps the most striking example of leaf senescence. Therefore, it is rather surprising that there are no data
on gene expression during autumn leaf senescence. This type of leaf
senescence is probably very similar to senescence in, for example,
detached leaves, but there must also be differences. The autumnal leaf
senescence program is induced in all the leaves by decreasing day
length, regardless of whether they are stressed by other environmental
factors. There is also a lot of natural variation in the regulation of
the process. For instance, in an adaptation to the earlier autumns in
the north, trees from higher latitudes start senescing earlier than
trees from lower latitudes (Pauley and Perry, 1954 ). We
have embarked on a project to elucidate the genetic basis of autumn
senescence in aspen leaves, and describe here the first steps and
results. We have performed large-scale EST sequencing to isolate
candidate SAGs and to study the differences in overall gene expression
between senescing leaves and young, but fully expanded, leaves. As a
reference material, we have chosen young, greenhouse-grown leaves to
maximize gene finding. This is assuming the comparison will detect not
only differences in gene expression dependent on senescence, but also
differences induced by various environmental stresses imposed on leaves
of the free-growing aspen. Further studies will reveal which of the genes discussed in this paper that are truly senescence associated and
those that are induced by various stress treatments, but even at this
stage we can draw several interesting conclusions about gene expression
in autumn leaves.
Estimating expression levels from EST frequencies is an indirect method
and there are both technical and biological limitations to such an
analysis. For example, uneven efficiency in the reverse transcription
of mRNAs of different sizes, size fractionation, and the possible
recalcitrance of some genes toward cloning in Escherichia
coli are all problems that may affect the results. Despite these
limitations, the "digital northern" approach has a major advantage
over traditional northern or most DNA chip array experiments because it
gives data on mRNA levels for individual genes relative to the total
mRNA pool. mRNA levels do not necessarily correspond well to protein
synthesis, and there are many well-documented examples of translational
regulation of gene expression in plants. However, for most major
enzymatic components, EST abundance seems to be a fair approximation of
relative protein abundance (Jansson, 1999 ;
Mekhedov et al., 2000 ; Ohlrogge and Benning,
2000 ). For all genes that we have tested so far, RNA blotting
has given similar results to EST frequency analysis, although direct
methods have to be used to obtain high-quality data for individual
genes. We are now performing large-scale transcript profiling using DNA microarrays to get further information about the precise transcript abundance of the different genes.
The pattern of gene expression in the two libraries was strikingly
different. Our data indicate that most of the metabolic characteristics
previously reported for senescing leaves (down-regulation of
photosynthesis and up-regulation of genes involved in protein, lipid,
pigment degradation, and respiration, as well as stress-related genes;
for review, see Smart, 1994 ) were also found in aspen
autumn leaves. For the majority of genes previously shown to be
senescence associated in annual plants, we found the same in autumn
leaves. This confirms that the general pattern of metabolism is the
same in autumn leaves as in senescing leaves of annual plants. Some of
the genes previously reported to be SAGs in other systems were not well
represented in the autumn leaf library. The transcript profiling that
we performed on a limited number of genes shows that mRNA for several
of them accumulates later in the process, and it is likely that the
majority of the known SAGs will also prove to be SAGs in the autumn
leaf system. However, we also believe that we will be able to identify
genes whose expression patterns in autumn leaves are not mimicked in
senescing leaves of annuals such as Arabidopsis. Because the process is
triggered differently we expect there to be at least some regulatory
proteins that have a specific role in inducing autumn senescence.
In the young, greenhouse-grown leaves a very large proportion of the
mRNA pool (and, thus, protein synthesis) was devoted to synthesis of
the photosynthetic apparatus: 33% of the ESTs encoded proteins known
to be components of the various protein complexes involved in
photosynthesis. In contrast, only 5% of the clones in the library from
senescing leaves encoded photosynthetic proteins and one-half of those
were stress-related photosynthetic proteins such as ELIPs. The average
gene encoding a "standard" photosynthetic protein, directly
involved in light reaction or CO2 fixation, was
down-regulated about 20-fold in the autumn leaves. We expected gene
expression in young leaves grown under non-stressed conditions to be
heavily concentrated on photosynthesis, but we were surprised to find
how little of the gene expression in autumn leaves, which still showed
no visible sign of chlorophyll degradation, was dedicated to
photosynthesis. Senescence is a strictly controlled developmental
process and by the middle of September, photosynthetic gene expression
had apparently been turned off and the leaves had prepared to break
down their chloroplasts.
In addition to the confirmation that autumn senescence shares many
features with senescence in leaves of annual plants, we also identified
a number of genes whose orthologs in Arabidopsis are either unknown or
have not been connected with senescence. By choosing leaves in the
process of chlorophyll degradation as sources for the autumn leaf cDNA
library, we believed that we could get a snapshot of the protein
synthesis activity related to degradation of the chloroplasts, and
possibly other cell constituents as well. Of our identified 35 Paul
genes, nine encoded proteins Arabidopsis orthologs seem to be
chloroplast located, and four of these have no assigned function. These
are all good candidates for proteins involved in degradation of the
chloroplast components, and we also found two known chloroplast
proteases, DegP1 and FtsH2 (Adam et al., 2001 ), and one
enzyme involved in chlorophyll degradation among the genes apparently
up-regulated in the autumn leaves.
Another striking difference was the higher fraction of ESTs in the
autumn leaf library that showed no significant homology to any known
protein in public databases. This could simply be a consequence of the
fact that young, green leaves have been very extensively studied and
the proteins of such leaves are better characterized. Because gene
prediction also relies on EST data, genes expressed in tissues that not
have been subjected to EST sequencing are overrepresented among genes
for which no orthologs have been found, and/or whose putative function
remains unknown. This means that we may overestimate the fraction of
"truly novel" genes in our data but, even so, there are many
potentially interesting genes to be found in autumn leaves of aspen.
A prominent feature of the nuclear genome of plants is the large
fraction of genes that appear to have originated from the cyanobacterial genome. It is believed that in the evolution of the
green plant, a cyanobacterial progenitor of the chloroplast was
engulfed by the eukaryotic host, becoming enclosed by a double membrane, and then permanently integrated into the plant cell as an
organelle, the chloroplast. The ancestral chloroplast genome has been
estimated to have consisted of around 3,200 genes, roughly 1,700 of
which have been lost because of redundancy between the nuclear and
plastid gene products, and about 1,400 genes appear to have been
transferred to the nuclear genome, leaving only 87 plastid-encoded
genes (Sato et al., 1999 ; Abdallah et al.,
2000 ). EST sequencing does not give direct information
concerning organelle mRNA content, but our data can also be used to
indirectly estimate organelle protein synthesis in aspen leaves. The
basis of the calculation is that nearly all of the proteins encoded
in the organelle genomes form, together with nuclear-encoded
subunits, multiprotein complexes in which the protein subunits and
their relative stoichiometries are known in great detail. Because we can calculate the average EST frequency of all nuclear-encoded subunits of these complexes and assume that the plastid-encoded subunits are synthesized in matching amounts, we can estimate relative
rates of chloroplast protein synthesis (details of these calculations
are given in the supplemental material). Based on these
calculations, we estimate plastid protein synthesis to account for
130/5,128 2.5% of the cytoplasmic protein synthesis in autumn leaves and 1,144/4,842 24% in young leaves. Although these
figures are only indirect estimations and may not be quantitatively
accurate, they strongly indicate that there is a massive
down-regulation of plastid protein synthesis before any visible sign of
autumn senescence.
We found no evidence for a conversion of peroxisomes to glyoxysomes,
like in senescing rape (Brassica napus) leaves
(Vicentini and Matile, 1993 ) during this stage of
senescence; the key enzymes of the glyoxylate cycle (malate synthase
and isocitrate lyase) and of gluconeogenesis
(phosphoenolpyruvate carboxykinase and pyruvate
orthophosphate dikinase) were not found among the ESTs from autumn
leaves. However, the changes in subclasses of "energy" indicate
that respiration and mitochondrial energy conversion were important in
autumn leaves and that mitochondria have already taken over the
chloroplasts' role as energy-generating organelles even before massive
chloroplast breakdown has occurred. Formate dehydrogenase (one of the
Paul genes) was strongly induced in the autumn leaves and can be
involved in energy production in mitochondria without the participation
of the tricarboxylic acid cycle. Alternatively, this enzyme may
be involved in metabolism of C1 compounds, although the source of these
putative metabolites cannot be defined at present. The senescing leaves
are still source leaves because the phloem presumably transports
recycled nutrients away from the leaves into the overwintering parts of
the tree. The exact nature of the compounds transported is unknown, but amino acids with high nitrogen content (e.g. Gln and Asn) are obvious
candidates. An important challenge for further research will be to
define the metabolic pathways involved in nutrient recapture from
senescing leaves.
Our data indicate that Cys and aspartic proteases may play an important
role during chloroplast degradation, whereas at least the ubiquitin
system (as evident from the RNA blot data) is not up-regulated until a
later stage of senescence. It has been shown in other systems that the
proteasome components do not accumulate during senescence
(Bahrami and Gray, 1999 ), but the enzymes of the
ubiquitin pathway do (Belknap and Garbarino, 1996 ). It
is possible that the proteasomes present are sufficient to degrade the
ubiquitinated proteins that, presumably, accumulate during later stages
of autumn senescence. The senescence-associated Cys proteases may all
be located in the vacuole or endoplasmic reticulum bodies
(Hayashi et al., 2001 ). This would be consistent with
the secretory system having an important role in the senescence
process. One of the Cys proteases we detected seems to be the aspen
ortholog to SAG12, which has very restricted expression in Arabidopsis and Brassica napus, limited to the last stages of
senescence (Noh and Amasino, 1999b ). The expression
pattern in aspen was different, with one peak at the beginning of
September, and one at the time when chlorophyll degradation started.
The first peak correlated with weather factors likely to cause
photooxidative stress, which would induce genes (PsbS and ELIP) that
are up-regulated during light stress in aspen leaves (K. Wissel
and S. Jansson, unpublished data). Because leaf senescence is probably
an oxidative process (Munne-Bosch and Alegre, 2002 )
unfavorable conditions may trigger degradative processes that, at least
in part, may be reversed if weather conditions become more favorable again.
We believe that this work, in addition to discovering genes, provides
insights into gene expression in aspen leaves at a rather early stage
of autumn senescence. Moreover, it illustrates the usefulness of leaves
of deciduous trees as a model system to study leaf senescence, and we
believe that our ongoing transcript profiling using DNA microarrays
will make it possible to pinpoint a number of candidate genes for
regulators of the process. Ability to control senescence will have
important biotechnological implications because trees that shed their
leaves too early have lower than optimal productivity, whereas if the
senescence process is initiated too late, the tree does not have
sufficient time to recapture nutrients and complete the hardening
procedure before the winter, and, thus, is likely to suffer from growth
limitations and/or frost injuries. Therefore, this study (the first, to
the best of our knowledge, in which gene expression during autumn leaf
senescence has been studied) may be the first step to a deeper
understanding of this biologically important process.
 |
MATERIALS AND METHODS |
Plant Material
Leaves were sampled from a free-growing aspen (Populus
tremula) at the University of Umea campus. About 30 leaves,
from the outer part of the crown, were sampled twice a week, at 11 AM on each occasion. Leaves were flash frozen in liquid
nitrogen and stored at 80°C.
RNA Preparation and Blotting
Aspen RNA was prepared according to Chang et al.
(1993) with the following modifications. No spermidine was used
in the extraction buffer and 2.67% (v/v)
-mercaptoethanol was used instead of 2%. One additional extraction
step was performed after LiCl precipitation. RNA concentrations were
determined spectrophotometrically (GeneQuant, Amersham-Pharmacia
Biotech, Uppsala) and equal amounts of total RNA were separated
on a 1.2% (w/v) agarose gel, transferred to a Hybond
N+ (Amersham, Buckinghamshire, UK) membrane, and
RNA-blot analysis was performed using standard procedures.
cDNA Library Constructions
The senescence cDNA library was constructed from RNA prepared
from leaves harvested on September 14, using the SMART cDNA library
construction kit system (CLONTECH Laboratories, Palo Alto, CA).
The young leaf cDNA library, described by Larsson et al. (1997) , was prepared from hybrid aspen (Populus tremula × tremuloides T89) plants grown in fertilized peat in a
greenhouse under natural light conditions with supplementary light
(18-h photoperiod).
EST Sequencing
The cDNA inserts were sequenced from the 5' end using PCR
products as templates by a Biomek robot (Beckman Instruments,
Fullerton, CA) in a 96-well microtiter format. PCR
amplifications were performed using general vector primers and standard
PCR protocols. The size and quality of the PCR products were checked by
gel electrophoresis. The samples were analyzed using a DYEnamic ET Dye
Terminator Kit (Amersham-Pharmacia Biotech) and a biotinylated
sequencing primer (reverse sequencing primer). The sequencing reaction
products were purified on a magnetic workstation (Magnatrix 1200, Magnetic Biosolutions, Stockholm) using paramagnetic beads
(Dynapure, Dynal, Oslo) before the samples were loaded onto an ABI 377 (Perkin-Elmer Applied Biosystems, Foster City, CA) or MegaBACE
1000 (Amersham-Pharmacia Biotech) DNA sequencer.
Bioinformatics
Raw sequences chromatograms were processed by the Phred program
(http://www.phrap.com/phred/). Vector sequences and low-quality regions
were deleted using Vectorstrip
(http://www.hgmp.mrc.ac.uk/Software/EMBOSS/). The cleaned inserts were
then stored in FASTA format. The whole of the above process was
performed semiautomatically with the help of Perl scripts. ESTs
containing rRNA, chloroplast DNA, or mitochondrial DNA were identified
by the BLASTN algorithm of NCBI-BLAST (Altschul et al.,
1990 ) followed by comparison of homologous Arabidopsis sequences (accession nos. X52322, AP000423, and Y08501/Y08502, respectively) and excluded from further analysis. Sequences were clustered into singlets and contigs using Phrap (http://www.phrap.com/) and compared locally with SWISS-PROT/TrEMBL, MATDB (downloaded from
http://www.expasy.ch and http://mips.gsf.de, respectively) and the
Mendel Gene Family Database (obtained from
http://www.mendel.ac.uk) using BLASTX. TBLASTX was used to calculate
the BLAST score of the sequence against itself (self-blast score). A
set of Perl scripts was arranged for the pipeline process of running
multiple blast searches, parsing the blast result files, and retrieving the annotations of the sequencing producing the best hits.
We constructed a FileMaker Pro-database with a Web interface with
options like direct BLAST searches against our own database (on a local
Unix server) or against MIPS or SWISS-PROT (over the Internet). There
are also direct links to the Kyoto Encyclopedia of Genes and Genomes
(http://www.genome.ad.jp/kegg/) and Enzyme (http://www.expasy.ch/enzyme/) databases for easy access to more detailed information. For contigs, there is also information about the
number of clones present in them, and the libraries from which they originate.
Significance levels for differential expression were calculated by the
equation of Audic and Claverie (1997) .
 |
ACKNOWLEDGMENTS |
We wish to thank Baram Amini, Thomas Hiltonen, Susanne Larsson,
Björn Sjöblom, and Carl Zingmark for their participation during various stages of this work.
 |
FOOTNOTES |
Received August 14, 2002; returned for revision October 9, 2002; accepted November 7, 2002.
1
This work was supported by the Knut and Alice
Wallenberg Foundation, by the Foundation for Strategic Research, by the
Swedish Research Council (grant to S.J.), and by the Swedish Research Council for the Environment, Agricultural Sciences, and Spatial Planning (Formas; grants to S.J., J.L., and P.G.).
2
Present address: Lipid Metabolism Unit, Massachusetts
General Hospital, 32 Fruit Street, GRJ 1328, Boston, MA 02114.
*
Corresponding author; e-mail
stefan.jansson{at}plantphys.umu.se; fax 46-786-66-76.
Article, publication date, and citation information can be found at
www.plantphysiol.org/cgi/doi/10.1104/pp.012732.
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