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The Journal of Neuroscience, May 1, 2003, 23(9):3807
Gene Microarrays in Hippocampal Aging: Statistical Profiling
Identifies Novel Processes Correlated with Cognitive Impairment
Eric M.
Blalock1, *,
Kuey-Chu
Chen1, *,
Keith
Sharrow1,
James P.
Herman2,
Nada M.
Porter1,
Thomas C.
Foster1, and
Philip W.
Landfield1
1 Department of Molecular and Biomedical Pharmacology,
University of Kentucky College of Medicine, Lexington, Kentucky
40536-0298, and 2 Department of Psychiatry, University of
Cincinnati, Cincinnati, Ohio 45267-0559
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ABSTRACT |
Gene expression microarrays provide a powerful new tool for
studying complex processes such as brain aging. However, inferences from microarray data are often hindered by multiple comparisons, small
sample sizes, and uncertain relationships to functional endpoints. Here
we sought gene expression correlates of aging-dependent cognitive
decline, using statistical profiling of gene microarrays in well
powered groups of young, mid-aged, and aged rats (n = 10 per group). Animals were trained on two memory tasks, and the hippocampal CA1 region of each was analyzed on an individual microarray (one chip per animal). Aging- and cognition-related genes were identified by testing each gene by ANOVA (for aging effects) and then by Pearson's test (correlating expression with memory). Genes identified by this algorithm were associated with several phenomena known to be aging-dependent, including inflammation, oxidative stress,
altered protein processing, and decreased mitochondrial function, but
also with multiple processes not previously linked to functional brain
aging. These novel processes included downregulated early response
signaling, biosynthesis and activity-regulated synaptogenesis, and
upregulated myelin turnover, cholesterol synthesis, lipid and monoamine
metabolism, iron utilization, structural reorganization, and
intracellular Ca2+ release pathways. Multiple
transcriptional regulators and cytokines also were identified. Although
most gene expression changes began by mid-life, cognition was not
clearly impaired until late life. Collectively, these results suggest a
new integrative model of brain aging in which genomic alterations in
early adulthood initiate interacting cascades of decreased signaling
and synaptic plasticity in neurons, extracellular changes, and
increased myelin turnover-fueled inflammation in glia that cumulatively
induce aging-related cognitive impairment.
Key words:
bioinformatics; gene expression; memory; synaptic
plasticity; myelin; inflammation
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Introduction |
Brain aging processes are enormously
complex phenomena that affect multiple systems, cell types, and
cellular pathways, and eventually induce cognitive decline and
increased risk of Alzheimer's disease (AD) (Landfield et al., 1992 ;
Tanzi and Bertram, 2001 ). Several biological processes have been
associated with normal brain aging and neurodegenerative conditions,
including inflammatory responses (Rogers et al., 1996 ; Murray and
Lynch, 1998 ; Hauss-Wegrzyniak et al., 2000 ; Andreasson et al., 2001 ;
Finch et al., 2002 ; Gemma et al., 2002 ; Wyss-Coray and Mucke, 2002 ),
oxidative stress (Carney et al., 1991 ; Butterfield et al., 1999 ;
Bickford et al., 2000 ; Nicolle et al., 2001 ; Wang et al., 2001 ),
reduced mitochondrial function (Nicotera and Orrenius, 1998 ; Wallace,
2001 ), and altered Ca2+ regulation
(Landfield and Pitler, 1984 ; Michaelis et al., 1984 ; Gibson and
Peterson, 1987 ; Khachaturian, 1989 ; Disterhoft et al., 1993 ; Franklin
and Johnson, 1994 ; Lipton and Rosenberg, 1994 ; Foster and Norris, 1997 ;
Nicotera and Orrenius, 1998 ; Verkhratsky and Toescu, 1998 ).
The triggers and consequences of these putative brain aging mechanisms
are not well understood, although several are accompanied by altered
gene expression (Rogers et al., 1996 ; Finch and Tanzi, 1997 ; Chen et
al., 2000 ; Lee et al., 2000 ; Nicolle et al., 2001 ). Moreover, specific
gene mutations are directly involved in age-dependent neurodegenerative
disease (for review, see Price and Sisodia, 1998 ; Selkoe, 2001 ;
Tanzi and Bertram, 2001 ). Consequently, gene microarray technology,
which can monitor the parallel expression of thousands of genes (Schena
et al., 1996 ; Lockhart and Barlow, 2001 ), appears to be a powerful new
tool for investigating the complex processes of brain aging (Lee et
al., 2000 ; Jiang et al., 2001 ).
Nonetheless, microarray approaches pose significant resource and
bioinformatics problems. With only a few exceptions (Pletcher et al.,
2002 ), microarray studies have not used the formal statistical analyses
and sample sizes (power) necessary to estimate expected false positives
or detect moderate changes in expression. Thus, given the large
multiple-comparison error anticipated in microarray analyses (Miller et
al., 2001 ), both false positive (type I) and false negative (type II)
errors are often high. As corollaries, the statistical reliability of
microarray results is often clouded, and many potentially important
processes have likely been overlooked (Watson et al., 2000 ; Miller et
al., 2001 ; Becker, 2002 ). Additionally, it has frequently been
difficult to assess which of many hundreds of observed gene alterations
are potentially relevant to functional endpoints.
Here we used the advantages of microarray analyses to identify novel
brain aging processes with potential relevance to cognitive decline. We
addressed the key problems of reliability, sensitivity, and functional
relevance noted above by using adequately powered statistical profiling
and a strategy of correlating the expression of each gene with a
defined functional endpoint (memory performance). Several studies have
previously found links between specific genes and plasticity or memory
(Gall et al., 1990 ; Steward et al., 1998 ; Guzowski et al., 2000 ; Silva
et al., 2000 ; Cavallaro et al., 2001 ; Kandel, 2001 ; Luo et al., 2001 ,
2002 ; Nicolle et al., 2001 ). However, this appears to be the first
study to correlate massively parallel expression microarrays with
behavior across individual subjects. Collectively, the data suggest a
new integrative model in which cascades of neuronal and glial processes
interact cumulatively to induce aging-related cognitive impairment.
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Materials and Methods |
Subjects and behavioral testing
All procedures involving rats were performed in accordance with
the guidelines set forth by the Institutional Animal Care and Use
Committee. Male Fischer 344 rats aged 4 months (young, n = 10), 14 months (mid-aged, n = 10),
and 24 months (aged, n = 10) were used in these
studies. Animals were trained sequentially on two tasks, first in the
Morris spatial water maze (SWM) and then in the object memory task
(OMT). Overall, the training/testing sequence lasted 7 d, and
hippocampal tissue was collected 24 hr later. Training or testing
occurred on each day except for the second and third day of the 7 d sequence.
Morris spatial water maze
Methods used here for cognition assessment in the SWM, a task
sensitive to both hippocampal function and aging, have been described
previously (Norris and Foster, 1999 ). Briefly, rats were trained in a
black tank, 1.7 m in diameter, that was filled with water (27 ± 2°C). Behavioral data were acquired with a Columbus Instruments tracking system. After habituation to the pool,
animals were given cue training with a visible platform (five blocks of three trials, maximum of 60 sec per trial, 20 sec intertrial interval, and a 15 min interval between blocks). Rats remained in home cages under warm air after each block. Cue training was massed into a single
day, and the criterion for learning was finding the platform on four of
the last six trials. For all animals that met this criterion, spatial
discrimination training was initiated 3 d later in which the
escape platform was hidden beneath the water but remained in the same
location relative to the distal cues in the room. Fifteen minutes after
the end of spatial training, a 1 min duration free-swim probe trial
with the platform absent was administered, during which crossings over
the former platform site (platform crossings) were recorded to test
acquisition, followed by a refresher training block. Retention for
platform location was again tested 24 hr later using a second 1 min
free-swim probe trial.
Object memory task
The OMT is also both sensitive to hippocampal function and
affected by aging but is less dependent on physical strength and endurance (Markowska et al., 1998 ). On the afternoon of the final spatial maze probe trial, animals were administered a habituation session (15 min) in the empty mesh cage to be used for the OMT (63.5 × 63.5 cm). OMT training began 24 hr after habituation and consisted of a 15 min acquisition session during which two
three-dimensional objects were placed at opposite sides of the cage,
followed by two 15 min retention test sessions at 1 and 24 hr after
training. During the acquisition session, the cage contained two sample objects (A and B), and the time spent actively exploring each object
was recorded. After 1 hr, the rat was reintroduced into the cage, and
the time spent exploring a novel object, C, relative to the familiar
object, B, was recorded. On the 24 hr test, familiar object A was
reintroduced and object B was replaced by a second novel object, D. Objects were randomized across individuals, and timed measures of
exploration were used to calculate a memory discrimination index (DI)
as follows: DI = (N F)/T, where N is time spent
exploring the novel object, F is time spent exploring the familiar object, and T is total time spent exploring
the two objects. More time spent exploring the novel object (higher DI) is considered to reflect greater memory retention for the familiar object.
Tissue collection
Twenty-four hours after completion of the OMT testing, animals
were anesthetized with CO2 gas and decapitated.
The brains were rapidly removed and immersed in ice-cold, oxygenated
artificial CSF consisting of (in mM): 124 NaCl, 2 KCl, 1.25 KH2PO4, 2 MgSO4, 0.5 CaCl2, 26 NaHCO3, and 10 dextrose. Hippocampi were removed, and the CA1 region from one hippocampus per animal was dissected by
hand under a stereomicroscope. The CA1 tissue block from each animal
was placed in a microcentrifuge tube and flash frozen in dry ice for
RNA isolation. Microarray analyses were performed on hippocampal CA1
tissues from each of the same behaviorally characterized 30 animals
(one chip per animal), but one chip was lost for technical reasons,
leaving a data set of 29 microarrays (young = 9; mid-aged = 10; aged = 10). Each U34A rat chip (Affymetrix, Santa
Clara, CA) contained 8799 probe sets (gene representations).
RNA isolation and Affymetrix GeneChip processing
Total RNA was isolated using the TRIzol reagent and following
the manufacturer's RNA isolation protocol (Invitrogen,
#15596). One milliliter of TRIzol solution was added to each tube
containing the frozen tissue block, and the tissue was homogenized by
10 passages through an 18.5 ga syringe needle. After centrifugation, the RNA was precipitated from the aqueous layer, washed, and dissolved in RNase-free water. RNA concentration and integrity were assessed by
spectrophotometry and gel electrophoresis. The RNA samples were stored
at 80°C.
Gene expression analyses were performed using the
Affymetrix GeneChip System. The labeling of RNA samples,
rat GeneChip (RG-U34A) hybridization, and array scanning were performed
according to the Affymetrix GeneChip Expression Analysis
Manual (r.4.0, 2000). Each animal's CA1 subfield RNA was processed and
run on a separate rat gene chip. Briefly, an average yield of 40 µg
of biotin-labeled cRNA target was obtained from 5 µg of total RNA
from each CA1 sample, of which 20 µg of cRNA was applied to one chip.
The hybridization was run overnight in a rotating oven
(Affymetrix) at 45°C. The chips were then washed and
stained on a fluidics station (Affymetrix) and scanned at
a resolution of 3 µm in a confocal scanner (Agilent Affymetrix GeneArray Scanner).
Microarray data analysis
Microarray suite software (MAS 4.0, Affymetrix)
calculated the overall noise of the image (Qraw), which was highly
similar across arrays in all three age groups (young: 21.81 ± 1.55; mid-aged: 21.25 ± 2.24; aged: 20.66 ± 2.06; NS).
"All probe set scaling" was used to set overall intensities of
different arrays to an arbitrary target central intensity of 1500. There was no significant difference in the scaling factor across ages
(young: 1.58 ± 0.14; mid-aged: 1.46 ± 0.20; aged: 1.63 ± 0.16, NS).
The algorithms used to determine average difference expression (ADE)
scores (expression level) and presence/absence calls are described in
the Microarray Suite 4.0 Manual and formed the basis for determining
expression (relative abundance) of transcripts and whether a particular
transcript was reliably detectable, respectively.
Statistical analysis
The presence/absence calls and ADE scores for all probe sets on
all 29 arrays were then copied from the MAS pivot table to an Excel 9.0 (Microsoft, SR-1) workbook. The data transformations, filtering, and most statistical analyses of our gene identification algorithm (see Results) were performed within Excel. Statistical tests
were performed using a combination of Excel (Microsoft, v.9, SR-1) and SigmaStat (SPSS, v.2).
Absence calls. Each probe set on each chip had a
"present," a "marginal," or an "absence" call. We
considered a probe set present for the purposes of our analysis if,
within at least one age group, it showed a present or marginal call in
at least 40% of the chips.
Minimum-maximum. For
the purposes of one phase of the filtering procedure (see
Results), each probe set was normalized according to the
formula:
|
(1)
|
where x is ADE score,
min is the mean for the age
group with the lowest ADE score, and
max is the mean for the age
group with the largest ADE score. Thus, normalized mean values varied
between 0 (lowest) and 1 (highest) for each probe set.
Standardization (Z-score). For the purpose of obtaining
means within functional categories and graphing, data were normalized using the Z-score method:
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(2)
|
where is the mean, and SD(x) is
the SD of ADE across all age groups for an individual probe set.
Functional categorization by gene ontology. We used two
methods for categorizing identified genes. One method assigned genes to
broad functional categories that we defined on the basis of gene
functions derived from literature searches (see Results), and one
method relied on the category assignments in the gene ontology (GO)
system. The Gene Ontology Consortium
(www.geneontology.org/doc/GO.doc.html) maintains a controlled
vocabulary database of functional descriptions for genes. These are
divided into three families: biological process, cellular
component, and molecular function. We searched the NetAffx site
(www.affymetrix.com/analysis/index.affx) for GO terms associated with
all unique known gene name/symbols (3789) for the entire RG-U34A chip
and were able to associate 3540 of them with GO terms (GO numbers). We
used the total list of GO terms within the biological process and
molecular function categories to build custom GO functional trees
(outlines) that reflected only the functional attributes (and their
parent attributes) for the genes that were rated present in our study.
The number of times a GO term (or group of terms) appeared at each
sub-level of the GO tree was counted, and hierarchical sums were
calculated (of the number of occurrences at or below each sub-branch).
A similar procedure was performed separately for statistically
identified upregulated and downregulated aging-dependent genes. To
assess relative over- or underrepresentation of GO functional terms
associated with identified genes, we used the binomial statistic. The
ratio of "significantly increased (or decreased)/entire chip" formed the basis of the binomial statistic. For testing the null hypothesis, it was assumed that the ratio of identified aging-dependent genes to all genes at each functional level of the tree was similar to
the ratio for the entire chip and that deviations of the binomial statistic (at p 0.05) from that proportion reflected
significant over- or underrepresentation of identified genes at that
level of the GO tree (Pletcher et al., 2002 ).
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Results |
Behavioral results
During cue training in the SWM, all animals were able to locate
the visible escape platform (the criterion used for adequate sensorimotor performance) and were then trained on the hidden platform
spatial task. During acquisition, aged animals learned the task more
slowly (longer latencies) than mid-aged or young but performed
similarly to young and mid-aged animals on the 1 hr probe retention
test (data not shown). However, an aging-dependent decrease in 24 hr
retention, as measured by platform crossings (one-way ANOVA;
p 0.01), was observed on the 24 hr retention probe
trial (Fig. 1). Post hoc
analysis indicated that young and mid-aged animals exhibited more
platform crossings relative to aged animals on this test but did not
differ from each other. In the OMT, aged animals performed as well as
young or mid-aged on the 1 hr retention test (data not shown), but
there was a significant age-related decline in recall (one-way ANOVA;
p 0.001, for the main effect of age) on the 24 hr
test (Fig. 1). At 24 hr, young and mid-aged groups were significantly
different from the aged group but not from one another (young vs aged:
p < 0.001; mid-aged vs aged: p < 0.05; young vs mid-aged: NS, Tukey's post hoc test).

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Figure 1.
Age-dependent impairment of memory performance.
Aged animals exhibited significantly reduced performance on 24 hr
memory retention on both the SWM and OMT tasks in comparison with
either young or mid-aged animals (one-way ANOVA and Tukey's
post hoc). The young and mid-aged animals did not differ
from each other on either task. On the SWM task, higher platform
crossings (PC) reflects greater retention of the spot where the
platform was previously located. For the OMT, a higher discrimination
index (DI) reflects greater retention of the previously explored object
and resultant increased exploration of the novel object (see Materials
and Methods). *p < 0.01; **p 0.001.
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Gene identification algorithm
To identify aging and cognition-related genes (ACRGs) while
managing multiple comparison error, we used a multistep gene
identification algorithm comprising a priori filtering,
ANOVA, and correlation testing (Fig. 2).
The filtering was aimed at reducing the total comparisons by excluding
unnecessary or less interesting gene probes. Because the number of
expected false positives equals the p value percentage of
the total number of comparisons tested (tests of individual genes),
reducing total comparisons is useful for managing false positive error.
That is, if 10,000 genes are tested at the p < 0.05 level of significance, 500 (5%) can be expected to be positive by
chance alone (Miller et al., 2001 ). Such high false positives can rival
or obscure true positives and thereby detract from statistical
confidence. Therefore, reducing the number of total comparisons on the
basis of clearly specified a priori filters can be
statistically advantageous.

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Figure 2.
Filtering and statistical test algorithm for
identifying aging- and cognition-related genes (ACRGs). The initial set
of 8799 gene probe sets contained on the HG-U34A gene chip was reduced
according to a priori filters before statistical testing
to decrease multiple comparisons and expected false positives. Gene
probe sets were removed if they were called absent (1a),
if they were ESTs (1b), or if the difference between the
young and aged groups did not comprise at least 75% of the maximal
normalized age differences (1c). Each of the remaining
1985 (gene) probe sets was then tested by ANOVA across the three age
groups (n = 9-10 per group) to determine whether
it changed significantly with aging (2). Each of
the 233 genes that changed significantly with age
(p 0.025) was then tested across all
animals (n = 29) for significant behavioral
correlation with the OMT and SWM 24 hr retention values (Pearson's;
p 0.025). Age-dependent genes that correlated
with either or both tasks were identified as primary ACRGs.
Additionally, 11 genes that were not correlated behaviorally were
included as ACRGs (3b) because their age-dependent
alterations were significant at a much higher confidence level (ANOVA;
p 0.001).
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Data filtering step
We reduced the total gene probe sets to be tested according to
three a priori filters (Fig. 2,
1a-c). First, all probe sets rated
"absent" (4118) by our criteria (see Materials and Methods) were
excluded. (However, it should be emphasized that a substantial number
of low-abundance neuronal molecules that are known to be expressed in
hippocampus, including many ion channels and membrane receptors, were
rated absent in this study.) Second, all present transcript sets
representing unannotated "expressed sequence tags" (ESTs) (1213)
and control probe sets (60) also were excluded. Although ESTs contain
true positives, they add comparisons to be managed without providing
further insight into known pathways (ESTs are being analyzed separately
in a similar analysis). Third, we reasoned that genes that changed with
aging at the mid-aged point and then reversed would be less reliable
biomarkers of "progressive aging" than genes that changed by
mid-age and stabilized or changed further in the aged group. Therefore,
we also excluded genes in which the young and the aged groups were not
different by at least 75% of the maximal difference among groups. This
criterion excluded an additional 1483 probe sets (Fig. 2). (It should
be noted that although such "reversing" genes may not be as useful
as monotonically altered genes for biomarkers, they might reflect
important initiating mechanisms that are subsequently offset by
compensatory changes. Therefore, the set of ANOVA-significant genes
excluded from analysis by this filter is included on-line).
These filters retained 1985 gene probes. If the original 8799 gene probes had all been tested at, for example, the p 0.025 level, ~220 false positives would have been expected
(2.5% of 8799). However, by using defined a priori filters
to decrease the total genes tested, we reduced the absolute number of
expected false positives by >75% (to ~50). Thus, this approach
represents a useful adjunct to rigorous statistical corrections for
multiple comparison error (Bonferroni correction) (Benjamini et al.,
2001 ; Miller et al., 2001 ).
Group statistical testing step (ANOVA)
In this second main step of the algorithm (Fig. 2, 2),
each of the retained 1985 gene probes was tested by one-way ANOVA
across the three age groups (n = 9-10 per group) for a
significant effect of aging using a relatively rigorous p
value (p 0.001). To estimate the fraction of
observed total positives expected to be false because of multiple
comparison error, we used a modified version of the false discovery
rate (FDR = expected false positives/observed positives)
(Benjamini et al., 2001 ). At p 0.001, 2 false
positives are expected in 1985 comparisons (i.e., 0.001 × 1985),
but 77 total positives were observed. Thus, the FDR was 2 of 77 = 0.026, indicating that only 2.6% of the 77 observed total positives
should be positive by chance alone and that any single positive result had a 2.6% chance of being a false positive. This FDR compares very
favorably with the p 0.05 level conventionally
accepted for statistical significance and shows that the sample sizes
used provided adequate statistical power and sensitivity to detect many
more positives than would be expected by chance alone.
On the basis of this favorable FDR, we operationally defined these 77 ANOVA-positive genes (at p 0.001) as a subset of
genes that changed with aging with high statistical reliability.
Nonetheless, there are also important advantages to identifying larger
sets of genes using less stringent p values, even at the
expense of some statistical confidence. One advantage is fewer false
negatives (less type II error). Furthermore, the lower stringency is
partly offset by the increased confidence gained via detection of
co-regulation among larger numbers of functionally related genes
(Mirnics et al., 2000 ). Finally, a third advantage is that a more
comprehensive picture of the associated processes/pathways is generated
by larger sets of genes. Consequently, we also assessed the FDR using
three less stringent p values: p 0.05, p 0.025, and p 0.01. At p 0.05, 348 genes were found positive, but 99 were
expected to be false positives, yielding an FDR of 99 of 348 = 0.29. At p 0.025, 50 false positives are expected in
1985 tests, but 233 total positives were found, yielding an FDR of 50 of 233 = 0.21. At p 0.01, ~20 genes should be
found positive by chance alone among the 1985 transcripts tested, but
145 positives were observed, yielding an FDR of 20 of 145 = 0.14. To balance the competing advantages of a stringent and a relaxed
p value, we selected the genes obtained at the
p 0.025 as the primary set of aging biomarkers for
use in the next step of the analysis, the behavioral correlation. This
p value level provided an intermediate FDR (0.21) and number
of genes (233) for functional analysis. (However, all genes that
changed at p 0.05 are posted on the web site.)
Cognitive performance correlation step (Pearson's test)
In the next step (Fig. 2, 3a,b), we used
Pearson's test (p 0.025) to test for
correlation of each of the 233 age-dependent biomarker genes with
memory performance. Across all 29 animals, the expression level of each
gene was tested for correlation with cognitive performance in both the
OMT and SWM. However, these correlation tests were not fully
independent of the previous ANOVA test that selected the
aging-dependent genes to be tested (i.e., genes that changed with aging
would be more likely to show a chance correlation with performance,
because the latter also changed with aging). Thus, it was not feasible
to calculate an independent FDR estimating false positives among the
behavioral correlation results. Despite this, however, correlated genes
clearly seemed more likely to be relevant to cognitive decline than
noncorrelated genes. Additionally, given the decrease in cognition with
age, genes downregulated with aging could only correlate positively, and genes upregulated with aging could only correlate negatively, with
performance. Consequently, one-tailed tests were used.
Gene expression was also tested for correlation with performance within
the aged group alone. This approach can reveal expression fluctuations
associated with different degrees of impairment in animals of the same
age. (In addition, because this correlation is relatively independent
of the aging variable, it allows an FDR to be calculated.) Each aging
biomarker gene was tested for correlation with 24 hr memory performance
on the OMT in the aged group. The OMT was selected over the SWM for
this test because it showed a more appropriate dispersion of
performance among aged animals. Correlation tests limited to subjects
in the aged group (n = 10) of course had considerably
less power than tests across all three groups (n = 29),
and therefore the criterion for significance was set at
p 0.05.
Aging- and cognition-related genes
Of the 233 genes found to differ with aging at the
p 0.025 level, 161 (69%) also correlated
significantly (at the p 0.025 level) with either the
OMT or SWM across all age groups. These genes were defined as the
primary set of ACRGs. Of these 161, 84 (51%) were correlated with both
tasks. Of the 161 genes that were correlated significantly with memory
performance on at least one task, 64 (~40%) were downregulated with
aging (and positively correlated with performance) and 97 (~60%)
were upregulated with aging (and negatively correlated with
performance). Of the core subset of 77 genes identified at the higher
confidence level (p 0.001), 66 (86%) were
among the 161 correlated with behavioral performance on at least one
task, and of these, 49 (74%) were correlated with both tasks. Eleven
of these 77 genes were not correlated with behavior at
p < 0.025, but because of their higher reliability as
aging markers were included with the 161 ACRGs (for a total of 172 ACRGs) in the functional categorization step (see below). Of these 172, we were unable to functionally categorize 6 transcripts, and 20 other
transcripts also were deleted as duplicate gene representations,
leaving a total of 146 primary ACRGs. In addition, 8 of 65 (12%) of
the downregulated ACRGs but 25 of 81 (31%) of the upregulated ACRGs
were correlated with retention performance on the OMT within the aged
group only (indicated by asterisks in all tables). The overall FDR in
the aged group-only correlation for ACRGs was 0.25. Examples of the
correlation patterns with performance across all 29 animals for five
ACRGs highly correlated in each direction are shown in Figure
3.

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Figure 3.
Correlation of gene expression and OMT performance
across all animals. Five representative examples of high positive
correlations with OMT scores among genes that decreased with aging
(A) and five examples of high negative
correlations among genes that increased with aging
(B). Standardized expression values are shown on
the left y-axis and standardized OMT performance scores
(DI) are plotted on the x-axis. Some points are obscured
by overlapping values for expression or retention. OMT retention
performance increases with increasingly positive (leftward) values of
the graph. Note the clustering of gene expression values for aged
animals toward the low performance (right) side.
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Functional categorization
We assigned the 146 primary ACRGs to functional categories by two
approaches. In the first approach, we used extensive literature searches in PubMed and other databases, including SwissProt, Trembl, NetAffx, GeneCards, Pfam, and InterPro to characterize each ACRG and
assign it a broad functional category. Many of the same categories appeared to fit multiple ACRGs. In the second approach, we relied on
the GO database. Although the GO system provides information that can
be used to quantify over- or underrepresentation of identified genes
relative to total microarray genes within a functional category (see
Materials and Methods), it does not provide a functional designation
for all genes. Therefore, our functional interpretations relied
primarily on the first approach. Using the first approach, we
identified 7 downregulated and 10 upregulated functional categories of
ACRGs (Table 1). Some categories are broader than others, and some
headings are modified by parenthetical characteristics that apply to a
majority of ACRGs in that category. Of course, many of the genes fit
within multiple categories.
Four ACRG examples for each category identified by the first approach
are shown in Table 1. The examples were
selected in each category first from ACRGs correlated with both tasks
and then by lowest ANOVA p value. Selected levels within the
GO biological process and GO molecular function categories (to which
ACRGs were assigned through the GO system) are shown in Table
2. The full set of 146 primary ACRGs
identified here, and their assigned categories through the first
classification approach, are shown in on-line Tables 3 and 4 (those
correlated with both behavioral tasks are listed at the top of each
category and ranked by ANOVA p value for aging changes). The
set of all potential aging biomarker genes (those that changed with
aging by ANOVA at p 0.05 but did not meet ACRG
criteria) is posted in on-line Table 5 available at www.jneurosci.org).
Categories of downregulated genes
Multiple genes related to energy metabolism, particularly to
mitochondrial function and the electron transport chain (Rieske's iron-sulfur protein, NADH dehydrogenase) were downregulated with aging
(Table 1A, on-line Table 3). Similarly, many more energy metabolic
genes, including those involved in catabolism of glucogenic amino
acids, were downregulated with aging (on-line Table 5A).
One of the most intriguing downregulated categories comprised ACRGs
related to activity-dependent synaptic/neurite plasticity (agrin,
Gap-43, Narp, Arc, Vgf) (Table 1A, on-line Table 3), many of
which have been linked previously to synaptogenesis, neurite remodeling, plasticity, or memory (Biewenga et al., 1996 ; Steward et
al., 1998 ; Guzowski et al., 2000 ; Bezakova et al., 2001 ; French et al.,
2001 ). However, Gap-43 appears to be one of the few, or possibly the
only, of these yet reported to change with aging and AD (Coleman et
al., 1991 ). Importantly, several of these genes (agrin, Narp) are also
significant components of the extracellular matrix (ECM). Because other
major ECM elements including collagen IA, were also downregulated
(Table 1A), the results suggest genomically mediated erosion or
reorganization of the ECM.
Many other neural activity-dependent genes, including immediate early
response genes (IEGs) in the transcription (Egr1, NGFI-C) and signaling
(MAPKK6) categories were downregulated ACRGs (Table 1A, on-line Table
3). In addition, multiple ACRGs important for biosynthesis
(nucleoporin, histone H2AZ) and protein trafficking (chaperones: Hsp60,
DnaJ-like homolog) were also downregulated with aging as were specific
neuronal marker and signaling genes (receptors, neuropeptide Y) (Table
1A, on-line Table 3). Decreased chaperone capacity could have
substantial implications for protein aggregation and vulnerability to AD.
Categories of upregulated genes
Not unexpectedly, many upregulated ACRGs were associated with
glial functions, inflammation, immunity, and oxidative stress (Table
1B, on-line Table 4). However, several unanticipated findings included
extensive upregulation of genes encoding proteins for myelin synthesis
and cholesterol and lipid metabolism (Table 1B, on-line Table 4).
Several genes important for lipid -oxidation and free fatty acid
(FFA) catabolism (carnitine palmitoyltransferase, acyl-CoA oxidase)
(on-line Tables 4, 5B), the primary pathway for FFA catabolism, were
upregulated. The increase in myelin synthesis programs could entail
elevated lipid turnover. Recent studies show that stimulation of myelin
synthesis programs in oligodendrocytes is associated with induction of
genes for both myelin proteins and lipogenic pathways (Nagarajan et
al., 2001 ).
Consistent with the upregulation of myelin-related proteins, moreover,
was the increased expression of genes related to protein/vesicle trafficking, including SNARE
(N-ethylmaleimide-sensitive factor attachment protein
receptor) proteins (Table 1B, on-line Table 4). Although several
of these molecules are associated with neuronal vesicle transport and
fusion, they are also known to play a major role in transport of myelin
vesicles in oligodendrocytes (Madison et al., 1999 ). In addition,
myelin is normally degraded to FFAs through the endosomal-lysosomal
pathway and cathepsin S, which also was upregulated (Table 1B,
Protein Processing), is particularly important in the processing of
antigenic myelin fragments (Nixon et al., 2000 ; Dickinson, 2002 ).
Notably, lysosomal alterations appear to be important in aging and AD
(Bi et al., 2000 ; Nixon et al., 2000 ).
Expression was also upregulated for multiple genes encoding enzymes
related to metabolism of the ketogenic/glucogenic amino acids,
tyrosine, phenylalanine, and tryptophan (DHPR, KAT, FAH) (Table 1B,
Amino Acid), which can be used for either energy metabolism or
lipogenesis. Moreover, upregulation of DHPR, which catalyzes the
formation of a critical cofactor (tetrahydrobiopterin) for tyrosine and
monoamine synthesis, together with concomitant upregulation of MAO-B
(on-line Table 5), suggests greater monoamine turnover. Another
unexpected observation was a consistent upregulation of genes involved
in iron utilization or storage [globins, transferrin, Nramp2 (Table
1B); ferritin (on-line Table 5B]. This may be related to increased
oxygen utilization, oxidative stress, or inflammatory responses in
activated glia, because iron accumulation is associated with multiple
age-related neurodegenerative conditions.
As noted, there also was massive upregulation of genes encoding major
histocompatibility complex (MHC) class I antigen presenting molecules,
as well as numerous other inflammatory/immune/oxidative stress
molecules [GST (Table 1B, on-line Tables 4, 5B)].
ACRGs in the inflammation category exhibited some of the most robust monotonic changes with aging seen in this study (most were significant at or below the p 0.001 criterion) (on-line Table
4). In addition, the DHPR product, tetrahydrobiopterin, is also an
essential cofactor for nitric oxide synthase (Boyhan et al., 1997 );
therefore, oxyradicals formed from increased nitric oxide could play a
major role in inflammatory neuronal damage (Calingasan and Gibson,
2000 ; Bal-Price and Brown, 2001 ).
Astrocyte reactivity and other glial markers are well recognized to
increase in the aged rodent and human hippocampus (Landfield et al.,
1992 ; Finch and Tanzi, 1997 ), and the present data confirm upregulation
of several glial marker genes [vimentin, GFAP (Table 1B, on-line Table
4)]. Furthermore, genes for extracellular components of
astroglial scars [proteoglycans, fibronectin (Table 1B, on-line Tables
4, 5B)] also were upregulated.
Several signal transduction genes related to calcium-regulating or
G-protein-coupled pathways also were upregulated ACRGs (Table 1B,
on-line Table 4). In particular, S100A1 modulates Ca2+-induced
Ca2+ release (Treves et al., 1997 ; Fulle
et al., 2000 ), and phosphatidylinositol 4-kinase (PI 4-kinase)
catalyzes a key step in IP3 production. Phospholemman (Table 1B), which regulates ion exchange, inhibits the
Na+/Ca2+
exchanger (Zhang et al., 2003 ), and the mitochondrial voltage-dependent anion channel (VDAC), which plays a central role in apoptosis, also
appears to mediate Ca2+ flux into
mitochondria (Gincel et al., 2001 ). Genes for other Ca2+-binding proteins [S100A4 (on-line
Tables 4, 5B)] and annexin, a
Ca2+-dependent, membrane-binding molecule
(Table 1B), also were upregulated ACRGs.
In addition, there was wide upregulation of ACRGs related to growth and
protein synthesis (Table 1B, on-line Table 4). This upregulation may be
linked to the apparently major activation of MHC, proteoglycan, and
myelin synthesis in glial compartments. The algorithm also identified a
number of upregulated transcription factors, including KZF-1, Roaz, and
members of the NFI family (Table 1B, Transcriptional Regulation), which
can function as broadly acting negative transcriptional regulators.
Gene ontology: downregulated biological process ACRGs
(Table 2A)
In the GO analysis, there was a significant overrepresentation of
G-protein coupled processes among downregulated ACRGs, indicating that
a greater number of genes in this category decreased with aging than
would be expected relative to the experiment-wide proportion of genes
that decreased with age. This agrees with previous work describing
decreased G-protein activity with age in vivo (Roth et al.,
1995 ) or in vitro (Blalock et al., 1999 ). An
overrepresentation of downregulated ACRGs was also found in categories
related to developmental process, second messenger signaling, and
electron transport. Conversely, downregulated ACRGs in the categories
of lipid metabolism (particularly lipid biosynthesis) and protein metabolism were significantly underrepresented. These results are
consistent with the large numbers of downregulated ACRGs in the energy,
signaling, and synaptic plasticity categories in the first
categorization approach and the upregulation of lipid and protein
processing ACRGs (Table 1B).
Gene ontology: upregulated biological process ACRGs (Table 2A)
For genes upregulated with age, there was a significant
overrepresentation of ACRGs in stress response and inflammatory
categories. Conversely, upregulated ACRGs in several other categories
were significantly underrepresented, including carbohydrate and
phosphate metabolism. These results also are generally consistent with
the upregulation of inflammatory/immune ACRGs and the downregulation of
energy ACRGs identified through the first categorization (Table 1).
Gene ontology: molecular function categories (Table 2B)
Downregulated ACRGs in categories of lipases, carbohydrate
kinases, monooxygenases and oxidoreductases, and transcription factors
were overrepresented. Upregulated ACRGs related to defense/immunity, vesicle transport, cytokine function, growth factor secretion, serine
protease activity, and heavy metal binding also were significantly overrepresented.
Relationship to fold change
The large majority of microarray analyses to date have used
fold-change criteria to identify changes in expression. However, apart
from the statistical issues raised by these approaches (Miller et al.,
2001 ), the 1.7- to twofold change detection criteria commonly used are
relatively insensitive, particularly for identifying the moderate
changes that might be expected in normal biological processes such as
aging. On the basis of mean fold-changes between the young and aged
groups, <15% of our results would have been detected by the
twofold-change criterion used in many microarray studies (on-line
Tables 3, 4). Furthermore, the rank order of group mean fold-change
correlated only very modestly
(r2 = ~0.20) with that of
p values on the ANOVA for all ACRGs.
Age course of gene expression changes
Importantly, using an experimental design with three age groups
elucidated the general chronological patterns of age-dependent change
(Fig. 4). ACRGs could be classified by
whether 75% of the maximal change occurred between the young and
mid-aged groups (Yng to Mid), the mid-aged and aged groups (Mid to
Age), or the young and aged groups (Monotonic).

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Figure 4.
Age course of genes altered with aging.
A, Chronological aging patterns for the mean expression
values of all genes in the five representative functional categories
containing the most ACRGs downregulated with aging (Table 1A, on-line
Table 3). The expression of each gene was standardized (see Materials
and Methods) before category mean values were calculated. Additionally,
ACRGs were classified on the basis of the two age points between which
75% of the expression change occurred. Note that most categories of
downregulated ACRGs exhibited 75% mean change by the mid-aged point
(Yng to Mid), tending to level off between the mid-aged and aged
groups. However, many downregulated genes also showed a more monotonic
pattern (Yng to Age). No category showed a predominantly mid to aged
pattern of change. Pie chart inset: Relative distribution of
chronological patterns of change for all individual downregulated
ACRGs. B, Chronological aging patterns for the mean
expression changes of all genes in the five largest functional
categories of upregulated ACRGs (Table 1B, on-line Table 4).
Calculations and nomenclature as in Figure 4A.
Note that in comparison with downregulated genes
(A), more upregulated genes
(B) exhibited continuing change between mid life
and late life (e.g., a monotonic pattern) (pie chart insets).
|
|
Many downregulated ACRGs, in particular, exhibited their greatest mean
change in expression between the young and mid-aged points. Less than
50% showed a monotonic pattern (Fig. 4A, pie chart
inset). In contrast, >50% of upregulated ACRGs showed a monotonic age
course, with change beginning between the young and mid-aged points and
continuing to increase between the mid-aged and aged points (Fig.
4B, pie chart inset). Interestingly, only a few
scattered upregulated or downregulated genes showed a predominantly mid
to aged change pattern (Fig. 4A,B,
pie charts). Thus, nearly all genomic alterations began before midlife,
and many, particularly among upregulated ACRGs, continued to advance
between midlife and late life.
Strongest correlations with memory performance
To determine which processes were most closely correlated with
memory performance, we calculated the percentage of genes in each of
our functional categories that were correlated significantly (at
p 0.025) with both memory tests. We reasoned that
because each test is subject to its own error and contributions from
noncognitive performance factors, genes that correlated with both tasks
were more likely to be associated consistently with cognitive processes.
More upregulated (42) than downregulated (29) ACRGs were correlated
with both behavioral tasks. Among downregulated functional categories,
those with the highest percentages of ACRGs correlated with both
tasks were the energy (9 of 13, 69%), protein trafficking (3 of 4, 75%), and biosynthesis (5 of 10, 50%) categories (on-line Table 3).
Among upregulated categories, those with the highest percentages of
ACRGs correlated with both tasks were the
inflammation/immunity/oxidative (13 of 17, 76%), signal transduction
(Ca2+-related) (6 of 8, 75%), and
myelin-related (3 of 5, 60%) categories (on-line Table 4). However,
subsets within larger categories in some cases showed a notably higher
percentage than the overall category [(on-line Table 3) ECM subset of
the ECM/structural category, 3 of 5 or 60%]. The criterion of highest
percentage ACRGs correlated with retention within the aged group alone
was used to identify two additional categories, the downregulated
synaptic plasticity (activity regulated) category (43%) (on-line Table
3) and the upregulated protein processing/vesicle trafficking category
(44%) (on-line Table 4).
 |
Discussion |
Novel processes associated with functional brain aging
The present studies used well powered statistical analyses and a
strategy of correlating gene expression profiles with behavioral endpoints to identify a wide range of aging- and cognition-related genes. Some of the identified ACRGs were associated with processes that
have been implicated previously in brain aging or AD, including inflammation, oxidative stress, glial activation,
mitochondrial/metabolic dysfunction, protein processing, and some
growth factors. However, many other ACRGs identified here have not been
previously linked to normal brain aging or cognitive decline and
therefore appear to be novel biomarkers of functional brain aging. The
processes associated with these novel ACRGs included downregulation of
synaptic structural plasticity, extracellular matrix
formation/turnover, activity-regulated signaling, and transcription,
biosynthesis, and protein chaperone functions (Table 1A, Fig.
4A), and concomitant upregulation of myelin
turnover, cholesterol synthesis/transport, lipid metabolism, vesicle
trafficking, cytoskeletal reorganization, iron utilization,
tyrosine/tryptophan/monoamine metabolism, protein synthesis,
transcriptional regulation (negative), and signal transduction (especially involving Ca2+ regulation,
e.g., phospholemman, PI 4-kinase, S100A1, annexin A3). Although a
few scattered molecules within several of these novel categories of
ACRGs have been found previously to change with brain aging (e.g.,
c-Fos, Gap-43, KAT, some chaperones), the present findings of
co-regulation among numerous related genes provide essentially the
first evidence implicating many of these larger functional processes in
normal brain aging and cognitive decline.
Implications for theories of brain aging
Brain expression of a number of genes is known to change with
aging (Finch and Tanzi, 1997 ; Lee et al., 2000 ). However, the present
data indicate that many more genes and gene programs than previously
thought may be altered. Additionally, the present studies indicate that
reasonably high statistical confidence can be associated with this
evidence of widespread alterations in expression, particularly for
co-regulated ACRGs. Importantly, nearly all of the expression alterations began before midlife (Fig. 4) and therefore appear to be
regulated rather than nonspecific responses to generalized senescent
deterioration of the brain. Furthermore, few if any of these
pre-midlife changes seem to reflect early developmental changes, given
that most continued to advance after midlife. ACRGs also were
identified by correlation with cognitive decline that did not develop
until late life. Finally, the young group, at 4 months of age, was
fully mature.
Genomic regulation by itself does not constitute sufficient evidence
that brain aging is "programmed" or evolutionarily selected. Instead, altered regulation could be a response to subtle early random
damage (e.g., molecular errors, oxidative stress) or reflect pleiotropic genomic effects that are adaptively controlled until adulthood (Austad, 1999 ). Nonetheless, the wide extent of genomic orchestration of brain aging seen in early adulthood here will have to
be addressed by aging theories.
Functional implications
By the criteria for strongest correlation (highest percentage
ACRGs correlated with both tasks or with performance in the aged
group), the categories of energy metabolism, protein trafficking, biosynthesis, a subset of ECM, and synaptic plasticity (downregulated) (Table 1A, on-line Table 3), and of inflammation, signal transduction (Ca2+-related), myelin, and
protein/vesicle trafficking (upregulated) (Table 1B, on-line Table 4)
were most closely correlated with cognitive impairment. Taken together,
these functionally correlated categories appear to reflect patterns of
metabolic and biosynthetic involution and reduced synaptogenesis in
neurons, in parallel with elevated myelin turnover, phagocytosis, and
inflammation in glia. Although correlation alone does not demonstrate
causation, it fulfills a key prediction of a causal relationship (i.e.,
that two causally linked variables will covary) and consequently can substantially focus the search for causal factors. Thus the
functionally correlated age-dependent processes identified here likely
represent particularly good candidates for factors that impact memory
decline. At the least, they clearly represent potentially valuable
early biomarkers of functional brain aging. Because the genomic
alterations apparently precede measurable cognitive impairment (compare
Figs. 1, 4), however, any deleterious cognitive impact of these
expression changes presumably depends on cumulative actions between mid
and late life.
In addition, several of the observed expression changes may have
implications for functions other than cognition. For example, reductions in mitochondrial/biosynthetic functions and protein folding/chaperoning (Table 1A, on-line Table 3) or increases in
oxidative stress, inflammation, and Ca2+
signaling (Table 1B, on-line Table 4) could be associated with increased vulnerability to apoptosis. In particular, the increased expression of the mitochondrial VDAC (Table 4) seems to have major implications for release of apoptogenic proteins.
Behavioral arousal and activity-regulated genes
Many of the downregulated ACRGs are IEGs that are highly
responsive to neural activity, stress, and arousal and are correlated with synaptic plasticity (Gall et al., 1990 ; Steward et al., 1998 ; Guzowski et al., 2000 ; French et al., 2001 ). Aspects of memory consolidation are also arousal-dependent (McGaugh, 2000 ). Thus, because
the training procedures are highly arousing, expression of some
activity-regulated ACRGs may well have remained elevated 24 hr after
the last retention test, when brain samples were collected. This
suggests that age differences and correlation with memory for these
ACRGs may be detectable only under arousing but not baseline conditions.
Myelin turnover as an inflammatory trigger
Clearly, a critical unresolved question is what triggers the
widespread neuroinflammatory response seen in brain aging and AD.
Although oxidative stress is one important possibility (Gemma et al.,
2002 ), a new candidate mechanism, demyelination, is suggested by the
findings here that genes for myelin and cholesterol synthesis were
upregulated in normal brain aging (Table 1B, on-line Table 4). That is,
because upregulation of myelin synthesis programs in adult animals is
often stimulated by demyelination (Kristensson et al., 1986 ), the
myelin program activation seen here might well be a compensatory
response to an underlying demyelinating process. Myelin fragments are
extremely potent antigens for triggering autoimmunity and thus could
account for the major increases observed in MHC antigen-presenting
molecules, cytokines, and other inflammation/phagocytic-related factors
(Table 1B, on-line Tables 4, 5B). Furthermore, because elevation of
some proinflammatory cytokines (e.g., IL-18) (on-line Table 4) can
induce hypomyelination (Corbin et al., 1996 ), inflammation might well
exacerbate the initial demyelinating process, thereby creating an
accelerating positive feedback loop between demyelination and
inflammation. A similar low-grade demyelination (with or without compensatory activation of myelin programs) could also account for the
hypomyelination that accompanies human brain aging (Golomb et al.,
1995 ). Additionally, the increased cholesterol synthesis/transport accompanying myelin synthesis might contribute separately to functional decline, because cholesterol metabolism has recently been implicated in
AD (Puglielli et al., 2001 ; Petanceska et al., 2002 ). Thus we suggest
that a chronic demyelinating process and activation of myelin and
cholesterol synthesis may act as triggers for inflammation in the aged brain.
Neuronal triggers of demyelination
This suggestion, in turn, raises the question of what might
initiate the demyelinating process. Interestingly, both reduced mitochondrial function (Kalman et al., 1997 ) and reduced neuronal activity (Demerens et al., 1996 ) are sufficient to induce
demyelination. Widespread evidence was found here of decreased
mitochondrial function (Table 1A, on-line Table 3). In addition, genes
for GluR5-2 and KAT, which both favor synaptic inhibition (Vignes et
al., 1998 ; Moroni, 1999 ), were upregulated ACRGs (Table 4), and the
product of KAT, kynurenic acid, increases with aging (Finn et al.,
1991 ; Moroni, 1999 ). Electrophysiological data also support the
conclusion that glutamatergic and adrenergic transmission are decreased
with aging (Barnes, 1994 ; Bickford et al., 2000 ). Conceivably, either
reduced energy metabolism or neuronal activity could trigger
demyelination, perhaps by impairing synaptogenesis or axonal
maintenance, but other pathways are obviously possible.
Ca2+ regulation
Elevated intracellular Ca2+
concentrations can also reduce neuronal activity by activating
inhibitory Ca2+-dependent
conductances, and several
Ca2+-regulating genes were upregulated
ACRGs, including phospholemman (Zhang et al., 2003 ), PI 4-kinase,
and S100A1, which interacts with the ryanodine receptor (RyR) to
increase Ca2+-induced
Ca2+ release (Treves et al., 1997 ; Fulle
et al., 2000 ). Intracellular Ca2+ release
also has been found to be enhanced in some AD models (Ito et al., 1994 ;
Mattson et al., 2000 ). In addition, although many
Ca2+ channel subunits were rated "not
present" (see Results, Data filtering), L-type
Ca2+ channel availability appears
increased with aging (Thibault and Landfield, 1996 ), and the L-type
Ca2+ channel is closely coupled to the RyR
(Chavis et al., 1996 ). Together, these changes could amplify
Ca2+ influx and release in aged
hippocampal neurons, thereby dampening neuronal responsiveness and
synaptic plasticity (Disterhoft et al., 1993 ; Foster and Norris, 1997 ;
Thibault et al., 2001 ).
New model of functional brain aging
A more comprehensive and complex picture of functional brain aging
emerges from these microarray analyses. On the basis of this overview,
we suggest a new integrative model of aging-related cognitive decline
(Fig. 5). In this model, alterations in
neuronal activity or metabolism inhibit neurite growth that, in turn,
triggers a demyelination process and an inflammatory cascade. Together, these neuronal and glial processes eventually impair memory. The sequential cascades hypothesized in Figure 5, of course, represent only
one of numerous possible models. Nonetheless, because these microarray
analyses identified many novel potential cause and effect interactions
in aging, tests of the proposed mechanisms, whether they reject or
support the hypotheses, should greatly clarify basic processes of brain
aging and identify potential new targets for therapeutic
interventions.

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Figure 5.
Integrative model of brain aging. Numbers
represent one putative sequence of events leading to aging-related
cognitive impairment. Arrows indicate hypothesized causal interactions
for the inflammatory cascade component. Altered Ca2+
and synaptic signaling (1) in neurons (N) reduce
neural activity responses, which then activate genomic alterations that
downregulate activity-dependent signaling pathways
(2) and induce general neuronal, metabolic, and
biosynthetic involution (3a,b). These
involutional changes induce other transcriptional alterations that
downregulate the capacity for neurite outgrowth, synaptogenesis, and
maintenance of extracellular structure (4). The
weakening of extracellular structure and axonal regression trigger an
initial demyelination process (5) that in turn
activates remyelinating programs and associated cholesterol
biosynthesis/transport (6a) in oligodendrocytes (O).
Concurrently, myelin fragments are endocytosed by glia and degraded to
antigenic epitopes that stimulate innate autoimmunity and antigen
presentation (6b) in microglia (M). These autoimmune
responses then activate a glial-mediated inflammatory cascade
(7) in microglia (M) and astrocytes (A),
associated with altered glial metabolism (8a) and
glucose uptake from capillaries (C) and astrocytic hypertrophy
(8b). The increasing inflammatory and glial activation
induce additional extracellular matrix transformation and neuronal
erosion (9) and exacerbate demyelination. The
accumulating inflammatory damage (7) and
extracellular changes (9) eventually interact
with decreased neuronal activity (1) and synaptic
plasticity (4) to impair cognition and increase
neuronal vulnerability (bottom).
|
|
 |
FOOTNOTES |
Received Oct. 23, 2002; revised Jan. 31, 2003; accepted Feb. 6, 2003.
*
E.M.B. and K.-C.C. contributed equally to this work.
This work was supported in part by National Institute on Aging Grants
AG04542, AG10836, AG18228, and AG14979 and by National Institute of
Mental Health Grant MH59891. We thank Kelley Secrest for
excellent contributions to this manuscript and Arnold Stromberg and
Xuejun Peng for valuable statistical discussion.
Correspondence should be addressed to Dr. Philip W. Landfield,
University of Kentucky, Department of Molecular and Biomedical Pharmacology, MS-305, UKMC, Lexington, KY 40536-0298. E-mail: pwland{at}uky.edu.
 |
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R. M. Miller, L. M. Callahan, C. Casaceli, L. Chen, G. L. Kiser, B. Chui, T. M. Kaysser-Kranich, T. J. Sendera, C. Palaniappan, and H. J. Federoff
Dysregulation of Gene Expression in the 1-Methyl-4-Phenyl-1,2,3,6-Tetrahydropyridine-Lesioned Mouse Substantia Nigra
J. Neurosci.,
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P. Yu, N. A. Di Prospero, M. T. Sapko, T. Cai, A. Chen, M. Melendez-Ferro, F. Du, W. O. Whetsell Jr., P. Guidetti, R. Schwarcz, et al.
Biochemical and Phenotypic Abnormalities in Kynurenine Aminotransferase II-Deficient Mice
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[Abstract]
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K. Kitajka, A. J. Sinclair, R. S. Weisinger, H. S. Weisinger, M. Mathai, A. P. Jayasooriya, J. E. Halver, and L. G. Puskas
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PNAS,
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[Abstract]
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J. Zhang, A. Moseley, A. G. Jegga, A. Gupta, D. P. Witte, M. Sartor, M. Medvedovic, S. S. Williams, C. Ley-Ebert, L. M. Coolen, et al.
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[Abstract]
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A. Nagahara and M. H. Tuszynski
The Ageless Question--What Accounts for Age-Related Cognitive Decline?
Sci. Aging Knowl. Environ.,
May 12, 2004;
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[Abstract]
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M. Verbitsky, A. L. Yonan, G. Malleret, E. R. Kandel, T. C. Gilliam, and P. Pavlidis
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E. M. Blalock, J. W. Geddes, K. C. Chen, N. M. Porter, W. R. Markesbery, and P. W. Landfield
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D. A. Gray, M. Tsirigotis, and J. Woulfe
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