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First published online 11 September 2008
doi: 10.1242/dev.024612
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1 Department of Biochemistry and Molecular Biology, The University of Texas M.
D. Anderson Cancer Center, Houston, TX 77030, USA.
2 Department of Ophthalmology and Visual Science, The University of Texas
Houston Medical School, Houston, TX 77030, USA.
3 Training Program in Genes and Development, The University of Texas Graduate
School of Biomedical Sciences at Houston, Houston, TX 77030, USA.
* Author for correspondence (e-mail: whklein{at}mdanderson.org)
Accepted 26 August 2008
| SUMMARY |
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Key words: Retinal ganglion cells, Retinal progenitor cells, bHLH genes, Math5 (Atoh7), Neurod1, Math3 (Neurod4)
| INTRODUCTION |
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A remarkable feature of retinal development is that RPCs are capable of
simultaneously producing multiple cell types, suggesting the presence of
subpopulations RPCs with each possessing a distinct genetic makeup.
Unfortunately, these genetically distinct RPC subpopulations have not been
clearly defined by conventional cell lineage tracing experiments (reviewed by
Mu and Klein, 2004
;
Mu and Klein, 2008
). The bHLH
genes Math5, Mash1 (Ascl1 - Mouse Genome Informatics),
Math3 (Neurod4 - Mouse Genome Informatics) and
Neurod1 are expressed in the developing retina at overlapping times
but in largely distinct, interspersed RPC subpopulations
(Vetter and Brown, 2001
;
Akagi et al., 2004
;
Hatakeyama and Kageyama, 2004
;
Le et al., 2006
;
Ohsawa and Kageyama, 2008
;
Trimarchi et al., 2008
). The
bHLH factors collaborate with homeobox factors to specify particular retinal
cell fates at the expense of others (Wang
and Harris, 2005
; Cayouette et
al., 2006
; Ohsawa and
Kageyama, 2008
). However, in early developing retina, many key
homeobox genes, such as Pax6 and Six3, are expressed in
virtually all RPCs (Lagutin et al.,
2001
; Bäumer et al.,
2003
) and have multiple functions in specifying distinct cell
fates (Ohsawa and Kageyama,
2008
). It is therefore likely that the mosaic expression pattern
of bHLH genes more accurately mirrors the state of competency within each
individual RPC for the early retinal cell types
(Cayouette et al., 2006
). This
concept implies that a unique bHLH gene expression pattern regulates the
competence state of each RPC fate for the early differentiating cell types,
with more widely expressed homeobox factors acting in conjunction with the
bHLH factors. Thus, replacing one bHLH gene with another might be expected to
redirect the RPC to assume the competence state defined by the replacing bHLH
gene. However, it is also possible that this type of replacement would not be
tolerated because the replacing bHLH gene, which might have evolved
specialized functions in the retina, would be incapable of integrating into
the intrinsic program of a foreign RPC. A final possibility is that replacing
one bHLH gene with another would restore the original RPC lineage. If this
were the case, it would suggest that retinal bHLH genes might not be highly
specialized and therefore are susceptible to the intracellular environment of
the foreign RPC.
To determine which of these possibilities actually occurs, we replaced
Math5 with either Neurod1 or Math3, which are
required together for establishing amacrine cell fate, and are capable of
producing excess numbers of amacrine cells when each of them is ectopically
co-expressed with Pax6 or Six3 (Inoue et
al., 2002
). Here, we demonstrate that Neurod1 can partially rescue
the functions of Math5 in RGC production. By contrast, Math3 could only
modestly rescue Math5 mutant defects by activating some RGC genes. In
addition, Neurod1 and Math3 co-expression at the
Math5 locus does not lead to the overproduction of amacrine cells.
Our results demonstrate that although Neurod1 and Math3 have
evolved specialized functions, they are nevertheless capable of alternative
functions when expressed in a foreign environment. These results suggest that
RPC heterogeneity is largely programmed by intrinsic mechanisms that are not
solely dependent on a specific bHLH gene.
| MATERIALS AND METHODS |
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All animal procedures in this study followed the US Public Health Service Policy on Humane Care and Use of Laboratory Animals and were approved by the Institutional Animal Care and Use Committee at The University of Texas M. D. Anderson Cancer Center.
Histology, in situ hybridization and immunohistochemical analysis
Embryos and eyes dissected from embryos or adults were fixed,
paraffin-embedded and sectioned into 7 µm or 12 µm slices for
immunohistochemical analysis or in situ hybridization, respectively, as
described by Mao et al. (Mao et al.,
2008
). After de-waxing and rehydration, the sections were stained
with Hematoxylin and Eosin before further analysis. In situ hybridization was
performed as described by Mu et al. (Mu et
al., 2004
).
For immunohistochemical analysis, sections were placed in a microwave oven
at 600 W in 10 mM sodium citrate for 15 minutes to expose the antigen
epitopes. Microwave-treated sections were then incubated with the primary
antibodies listed below. For indirect immunofluorescence, a tyromide signal
amplification kit (TSA biotin system, PerkinElmer) was used for Neurod1 and
Eomes to optimize signal intensity. For double immunofluorescence,
Alexa-conjugated secondary antibodies (Invitrogen) were used. The primary
antibodies were anti-Brn3b/Pou4f2 (Santa Cruz Biotech, 1:200 dilution),
anti-Chx10 (Exalpha, 1:1000 dilution), anti-GSK3β (Cell Signaling, 1:400
dilution), anti-NFL (Invitrogen, 1:250 dilution), anti-NF160 (DSHB, 1:1000
dilution), anti-Isl1 (DSHB, 1:250 dilution), anti-melanopsin (provided by
Satchidananda Panda, Salk Institute), anti-SMI32 (Covance, 1:1000 dilution),
anti-Tbr2/Eomes (Chemicon, 1:1000 dilution), anti-Sox9 (Chemicon, 1:200
dilution), anti-TUJ1 (Covance, 1:500 dilution), anti-ChAT (Chemicon, 1:100
dilution), anti-opsin(R/G) (Chemicon, 1/200 dilution), anti-calrectinin
(Chemicon, 1:2500 dilution), anti-calbindin (Swant, 1:5000 dilution),
anti-Pax6 (DSHB, 1:200 dilution) and anti-p57 (Santa Cruz, 1:40 dilution).
Horseradish peroxidase-conjugated secondary antibody for tyromide signal
amplification was obtained from Jackson ImmunoResearch. To detect RGC axons,
anti-NFL antibody was used to stain flat-mounted adult retinas
(Mao et al., 2008
). The number
of axonal bundles and the axonal density within each bundle were analyzed with
the same settings using SimplePCI software (Compix, Sewickley, PA) to
automatically select regions of interest from the peripheral retinal
flat-mount images. Flat-mount immunostaining was also used to monitor the
distribution of melanopsin and SMI-32 positive RGCs. For quantifying RGC
specification during embryonic stages, Pou4f2-positive cells were used to
estimate RGC number. Three retinal sections (three sections apart) collected
from littermates of different genotypes were stained with anti-Brn3b/Pou4f2
antibody, and the number of Pou4f2-positive cells on each section was counted
on an Olympus Fluoview 1000 confocal microscope.
Quantitative reverse transcriptase-PCR analysis
Total RNA were collected from two E13.5 retinas using TRIZOL reagent
(Invitrogen, CA). RNAs were reversed transcribed using Superscript
First-Strand Synthesis System for reverse transcriptase (RT)-PCR (Invitrogen)
following the manufacturer's instruction. One twentieth of the total cDNAs was
amplified for quantitative (q)PCR using SYBR green PCR master mix (Applied
Biosystems, CA). The relative expression levels were normalized to that of
GAPDH and calculated using the comparative Ct method (7500
Fast Real-time PCR systems SDS software, Applied Biosystems). DNA sequences of
PCR primers indicated were: Math5 5'UTR forward,
5'-TCCGTCTGTGTCTTATTCACTC-3'; Math5 reverse,
5'-TTTGCAGGCCGACTTCATCCTC-3'; Math3 reverse,
5'-ATATACATTTTTGCCATGGCCGC-3'; GAPDH forward,
5'-AGGTCGGTGTGAACGGATTTG-3'; GAPDH reverse,
5'-TGTAGACCATGTAGTTGAGGTCA-3'.
| RESULTS |
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We first determined whether Math5Neurod1-KI and Math5Math3-KI alleles were expressed in a pattern mimicking that of Math5. At E12.5, we detected low expression levels of Neurod1 protein in the retinas of wild-type mice (Fig. 1E). By contrast, high levels of Neurod1 expression were observed in Math5Neurod1-KI/Math3-KI retinas at E12.5 (Fig. 1F). Similar to Neurod1 protein expression, Math3 transcript expression, although weak, was readily detectable near the ventricular region in E12.5 wild-type retinas, and in a pattern similar to that of Neurod1 expression in Math5Neurod1-KI/Math3-KI retinas at the same developmental time (Fig. 1G,H). Between E12.5 and E15.5, the expression of Neurod1 and Math3 from the Math5Neurod1-KI and Math5Math3-KI alleles closely resembled endogenous Math5 expression, indicating that ectopic Neurod1 and Math3 expression was under the control of the Math5 regulatory region. Furthermore, Neurod1 expression did not differ between retinas with Math5Neurod1-KI/+ or Math5Neurod1-KI/Neurod1-KI genotypes, indicating the accurate replacement of Math5 by Neurod1 (data not shown). To determine whether the knock-in Math3 allele expressed transcripts at the same level as the wild-type Math5 allele, we compared the expression levels of Math5 and Math5Math3-KI alleles at E13.5. Fig. 1I shows that Math5 and Math5Math3-KI alleles were expressed at similar levels in Math5Math3-KI/+ retinas, and that Math5Math3-KI in Math5Math3-KI/Math3-KI retinas was expressed at levels corresponding to those of Math5 in wild-type retinas.
|
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The lack of a complete rescue of the optic nerve in the knock-in retinas might be explained by enhanced apoptosis; a significant increase in cell death was detected in Math5Neurod1-KI/lacZ-KI and Math5Neurod1-KI/Math3-KI retinas from E11.5 to E16.5 compared with wild-type controls (data not shown). No differences in RGC axon number or density were detected when Math5Neurod1-KI/+ and Math5Math3-KI/+ retinas were compared with wild-type controls (data not shown). The results demonstrated that Neurod1 could partially replace Math5 in restoring RGC axons and that Math3 alone could not replace Math5.
In the mouse retina, RGCs have been categorized into
12-14 subtypes by
morphological criteria (Sun et al.,
2002
; Coombs et al.,
2006
). Across the GCL, RGC subtypes display regular spacing
between cell bodies, and arborize within precise strata of the inner plexiform
layer (IPL). To determine whether RGC subtypes formed in
Math5Neurod1-KI/Math3-KI retinas, we selected two
previously characterized RGC subtype markers, melanopsin and SMI-32
(Lin et al., 2004
), and
performed immunostaining with flat-mount retinas. Melanopsin-expressing RGCs
have small somata (
20 µm) and their dendrites run through the IPL,
terminating at layer 1 immediately underneath the inner nuclear layer (INL).
SMI-32 is expressed in RGCs with large somata (
30 µm). Melanopsin- and
SMI-32-expressing RGCs both displayed a nonrandom mosaic pattern across
wild-type and Math5Neurod1-KI/Math3-KI retinas
(Fig. 3E-H). Additionally, the
dendrites of melanopsin-expressing RGCs always arborize to layer 1 of the IPL
(insets in Fig. 3E,F;
n>40). These data suggest that Neurod1 can replace Math5 to
specify different RGC subtypes evenly across retina, and these RGC subtypes
differentiate normally with proper dendritic arborization.
Expression of RGC genes in embryonic retinas of Math5Neurod1-KI and Math5Math3-KI mice
The earliest sign of RGC differentiation begins at E12.5, when the
expression of Pou4f2 and Isl1 is first apparent
(Gan et al., 1999
;
Elshatory et al., 2007
;
Mu et al., 2008
). These genes
encode POU domain and LIM domain transcription factors, respectively, and both
are required for RGC differentiation (Gan
et al., 1999
; Mu et al.,
2008
; Pan et al.,
2008
). We used anti-Pou4f2/Brn3b and anti-Isl1 antibodies to
determine the expression pattern of these proteins in E13.5 retinas. In
Math5lacZ-KI/+ (wild-type) retinas, Pou4f2 and Isl1 were
co-expressed in differentiating RGCs, as we and others have shown previously
(Fig. 4A,A1,A2)
(Rachel et al., 2002
;
Mu et al., 2008
). Expression
was largely absent in Math5lacZ-KI/lacZ-KI retinas
(Fig. 4B,B1,B2). We found that
retinas expressing Math5Neurod1-KI allele in the absence
of Math5 significantly restored the expression of Pou4f2 and Isl1
(Fig. 4C-C2,D-D2), whereas in
Math5Math3-KI/lacZ-KI retinas, the expression of these
early RGC markers, although detectable, was appreciably lower
(Table 1). We had shown
previously that expression of the neurofilament protein NF160 is strongly
dependent on the presence of Pou4f2 (Mu et
al., 2004
). Retinas expressing the
Math5Neurod1-KI allele in the absence of Math5
had significantly higher expression of NF160
(Fig. 4A3-D3). The expression
of Pou4f2, Isl1 and NF160 is indicative of RGC differentiation, and,
therefore, of the number of RGCs present in the retinas of the
Math5Neurod1-KI and Math5Math3-KI
mice. According to this criterion, we estimated that the numbers of RGCs
present in the Math5Neurod1-KI/LacZ-KI and
Math5Math3-KI/LacZ-KI retinas were
40% (173/434) and
10% (40/413), respectively, the number of RGCs in wild-type retinas
(Table 1). Furthermore, the
expression of Pou4f2 in Math5Neurod1-KI/lacZ-KI and
Math5Math3-KI/lacZ-KI retinas was significantly lower than
that in wild-type controls at E12.5, but recovered to higher levels at E14.5
(Table 1), suggesting a delayed
RGC differentiation in the Math5Neurod1-KI/LacZ-KI and
Math5Math3-KI/LacZ-KI retinas.
|
|
At E13.5 and E14.5, the numbers of Pou4f2-positive cells in the Math5Neurod1-KI/lacZ-KI (n>20) or the Math5Math3-KI/lacZ-KI (n>20) retinas were always much greater than in the Math5lacZ-KI/lacZ-KI retinas. However, we noticed that many Pou4f2-expressing cells in these knock-in retinas were abnormally positioned when compared with wild-type controls, residing in the upper-most region of the RPC layer (compare Fig. 5A2 with Fig. 5C2,D2). This suggested that RGCs expressing Neurod1 or Math3 in the absence of Math5 were unable to properly migrate to the GCL. However, in Math5Neurod1-KI/Math3-KI retinas, this abnormality was partially corrected (Fig. 5B2). This result suggested that, together, Neurod1 and Math3 were slightly more effective in replacing the functions of Math5 than was Neurod1 alone.
The RGC gene regulatory network is restored in Math5Neurod1-KI/Math3-KI retinas
The partial restoration of RGC axons and optic nerves in adult retinas and
the expression of the early RGC markers Pou4f2, Isl1, NF160 and Eomes in
Math5Neurod1-KI/Math3-KI retinas indicated that, together,
Neurod1 and Math3 could replace Math5 to activate the entire RGC gene
regulatory network (Mu et al.,
2004
; Mu et al.,
2005
; Mu et al.,
2008
; Mu and Klein,
2008
). We therefore determined the expression levels of a number
of RGC-expressed genes in wild-type and
Math5Neurod1-KI/Math3-KI E14.5 retinas that had various
roles in RGC integrity and physiology, transcriptional regulation and
extracellular signal transduction. The selected genes included those whose
expression was dependent on the presence of Math5 and Pou4f2 (Persyn,
Gap43 and Shh) (Mu et al.,
2004
), those whose expression was dependent on Math5 but not
Pou4f2 (Myt1, Stmn2 and TuJ1)
(Brown et al., 2001
;
Mu et al., 2005
), and two
genes whose dependence on Math5 and Pou4f2 has not been determined
[GDF11 (Kim et al.,
2005
), Gsk3β
(Tokuoka et al., 2002
) (see
Table S1 in the supplementary material for details)].
Fig. 6 shows that all of the genes were expressed in RGCs of Math5Neurod1-KI/Math3-KI retinas in a similar pattern but at lower levels than in wild-type controls (compare A1-H1 with A2-H2). These results strongly suggest that the RGC gene regulatory network was activated in its entirety in Math5Neurod1-KI/Math3-KI retinas.
Because Neurod1 and Math3 are required together for amacrine cell
development (Inoue et al.,
2002
), we determined whether increased numbers of amacrine cells
were present in Math5Neurod1-KI/Math3-KI retinas. Staining
with antibodies against markers for amacrine cells, including ChAT, p57Kip2,
calrectinin and calbindin, revealed no differences in the numbers of cells
between wild-type and Math5Neurod1-KI/Math3-KI retinas
(see Fig. S1 in the supplementary material). However, we detected 20% more
opsin-positive photoreceptors in Math5Neurod1-KI/Math3-KI
retinas than in wild-type retinas (see Fig. S1 in the supplementary material).
The significance of this modest increase was unclear, but it might reflect a
re-direction of Math5Neurod1-KI/Math3-KI-expressing RPCs
to a photoreceptor cell fate. This might occur as a result of restored
Ngn2 expression in Math5Neurod1-KI/Math3-KI RPCs,
as happens in Math5-null RPCs
(Brown et al., 2001
;
Le et al., 2006
). Math3,
together with Mash1, is essential for bipolar cell formation
(Tomita et al., 2000
). We
therefore determined whether increased numbers of bipolar cells could be
detected in Math5Neurod1-KI/Math3-KI retinas. Fig. S1
shows that there is no difference in Chx10-positive cells in wild-type and
Math5Neurod1-KI/Math3-KI retinas. The number of
Sox9-positive Müller glial cells also did not change.
Math5Math3-KI/LacZ-KI retina displayed histological
phenotypes reminiscent of Math5-null retina, in which the numbers of all cell
types normally found in the INL are reduced owing to the reduced thickness of
the INL, but the ratio of each cell type was not significantly different from
wild-type controls (Moshiri et al.,
2008
). We found that the proportion of amacrine, bipolar,
horizontal and Müller cell types in the INL of
Math5Math3-KI/LacZ-KI retina was similar to that of
Math5LacZ-KI/+ retinas (see Table S2 in the supplementary
material). These data suggest that Math3 alone does not significantly
influence cell fate determination when expressed at the Math5
locus.
|
| DISCUSSION |
|---|
|
|
|---|
|
The intrinsic program necessary for a naïve RPC to advance to a
specific competence state is thought to arise from a dynamic local external
environment. This environment changes through time and continually provides
instructions to RPCs to assume successive competence states
(Cayouette et al., 2006
;
Wallace, 2008
). The discovery
of numerous transcriptional regulators essential for retinal cell fate
specification and differentiation has lead to the elucidation of detailed
genetic regulatory pathways that define the intrinsic programs of most RPCs
(reviewed by Ohsawa and Kageyama,
2008
; Mu and Klein,
2008
). However, the mechanisms connecting the dynamic local
environment within the developing retina to the intrinsic genetic programs
that operate in distinct RPCs remain elusive.
Although we have emphasized the evidence that Neurod1 is more
capable of adapting to a foreign environment than Math3, our results
also show that neither Neurod1 nor Math3 can fully restore RGCs in the absence
of Math5. Neurod1 and Math3 together were slightly more effective that Neurod1
alone, which in turn was more effective than Math3 alone. Recently, it has
been shown that a Math5Mash1-KI allele has only modest
restorative ability (Nadean Brown, personal communication). The obvious
explanation for these differences is that all of these bHLH factors have amino
acid sequence differences within and outside of their bHLH domains that are
likely to reflect differences in protein-protein interactions,
post-translational modifications, and promoter-enhancer preferences. For
example, three amino acids within the basic domain of chicken Ath5 are
reported to be crucial for protein-protein interactions that confer DNA
binding specificity to Ath5
(Skowronska-Krawczyk et al.,
2005
). These residues are found in Math5 but not in Neurod1, Math3
or Mash1 (see Table S3 in the supplementary material). The helix 1 and helix 2
domains within Mash1 and Math1 are crucial in determining neuronal
differentiation (Nakada et al.,
2004
). Thus, the sequence differences in helix 1 and helix 2
domains among Math5, Neurod1, Math3 or Mash1 might account for their
differential function in the same environment (see Table S3 in the
supplementary material).
|
Several studies have reported on the effects of replacing one related
transcription factor with another in a developmental context. In many cases,
gene swapping demonstrates a large degree of functional redundancy and
indicates that the timing of expression is perhaps more crucial than
specialized functions that might have evolved. For example, in the retina, the
closely related POU domain factors Pou4f1 and Pou4f2 appear to be
interchangeable in their ability to function as regulators of RGC
differentiation if they are expressed at the Pou4f2 locus
(Pan et al., 2005
). In
mid-hindbrain development, the lethal En1 mutant phenotype can be rescued by
replacing En1 with closely related En2
(Hanks et al., 1995
). However,
two related bHLH genes, Mash1 and Ngn2, have been shown to
maintain their divergent functions in the specification of neuronal subtype
identity in the dorsal telencephalon and ventral spinal cord
(Parras et al., 2002
). In
skeletal muscle, the myogenic bHLH regulatory factor myogenin can substitute
for the closely related Myf5 factor in promoting myogenesis, although less
efficiently (Wang and Jaenisch,
1997
). The same swap leads to complete rescue of the lethal Myf5
mutant rib phenotype (Wang et al.,
1996
). Similarly, in the sensory nervous system of
Drosophila, the proneural bHLH factor Amos, a bHLH factor closely
related to Atonal, can substitute for Atonal in specifying R8 photoreceptor
fate (Maung and Jarman, 2007
),
whereas another bHLH factor, Sc, cannot
(Sun et al., 2000
). By
contrast, Amos cannot rescue the chordotonal phenotype seen in Atonal
mutants (Maung and Jarman,
2007
), suggesting that the developmental context is critical for
distinct bHLH factors to exert their specific activity. Our current study
suggests that developmental time and the intrinsic properties within distinct
RPCs largely dictate the roles of bHLH factors in specifying early retinal
cell fate.
In the developing retina, bHLH factors and other transcriptional regulators
produce a highly complex combinatorial state that defines each RPC
subpopulation (Ohsawa and Kageyama,
2008
; Mu and Klein,
2008
; Mu et al.,
2008
). Thus, each subpopulation is under the control of a specific
gene regulatory network composed of hierarchical tiers of transcription
factors connected to their cis regulatory sites on target regulatory
genes (Ben-Tabou de-Leon and Davidson,
2007
). Although each network is distinct, its underlying framework
is likely to be similar to that of other RPC subpopulation. The crucial nodes
in the different RPC networks are likely to be represented by transcription
factors of the same class. There is little question that bHLH factors have
evolved specialized features for each lineage, but the fact that they are
sometimes interchangeable reflects the flexibility of RPC gene regulatory
networks. A given network can tolerate the replacement of one bHLH factor with
another, provided the other factor has the capability of fitting into the
network at the correct hierarchical level to receive the inputs and transmit
the outputs that are required for successful network operation.
Supplementary material
Supplementary material for this article is available at
http://dev.biologists.org/cgi/content/full/135/20/3379/DC1
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