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The Journal of Neuroscience, June 1, 1998, 18(11):4325-4334
Translation-Invariant Orientation Tuning in Visual "Complex"
Cells Could Derive from Intradendritic Computations
Bartlett W.
Mel1,
Daniel L.
Ruderman1, and
Kevin A.
Archie2
1 Department of Biomedical Engineering and
2 Neuroscience Program, University of Southern California,
Los Angeles, California 90089
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ABSTRACT |
Hubel and Wiesel (1962) first distinguished "simple" from
"complex" cells in visual cortex and proposed a processing
hierarchy in which rows of LGN cells are pooled to drive oriented
simple cell subunits, which are pooled in turn to drive complex cells. Although parsimonious and highly influential, the pure hierarchical model has since been challenged by results indicating that many complex
cells receive excitatory monosynaptic input from LGN cells or do not
depend on simple cell input. Alternative accounts of complex cell
orientation tuning remain scant, however, and the function of
monosynaptic LGN contacts onto complex cell dendrites remains unknown.
We have used a biophysically detailed compartmental model to
investigate whether nonlinear integration of LGN synaptic inputs within
the dendrites of individual pyramidal cells could contribute to
complex-cell receptive field structure. We show that an isolated
cortical neuron with "active" dendrites, driven only by excitatory
inputs from overlapping ON- and OFF-center LGN subfields, can produce
clear phase-invariant orientation tuning a hallmark response
characteristic of a complex cell. The tuning is shown to depend
critically both on the spatial arrangement of LGN synaptic contacts
across the complex cell dendritic tree, established by a Hebbian
developmental principle, and on the physiological efficacy of
excitatory voltage-dependent dendritic ion channels. We conclude that
unoriented LGN inputs to a complex cell could contribute in a
significant way to its orientation tuning, acting in concert with
oriented inputs to the same cell provided by simple cells or other
complex cells. As such, our model provides a novel, experimentally
testable hypothesis regarding the basis of orientation tuning in the
complex cell population, and more generally underscores the potential
importance of nonlinear intradendritic subunit processing in cortical
neurophysiology.
Key words:
complex cells; orientation tuning; active dendrites; single neuron computation; visual cortex; energy models; computational
models
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INTRODUCTION |
The mechanisms underlying
orientation tuning in visual cortical neurons are among the most
studied in systems neuroscience. Under the original Hubel and Wiesel
(1962) classification scheme, simple cell receptive fields (RFs) could
be subdivided into separable, oriented ON and OFF subregions, with
quasilinear spatial summation within a subregion and antagonism between
subregions. Orientation tuning in simple cells is now widely considered
to derive from a combination of influences, specifically a weak
orientation bias in the input from LGN, modulated by feedback
inhibition and excitation from other cortical neurons (Ferster et al.,
1996 ; Vidyasagar et al., 1996 ; Somers et al., 1995 ; Krukowski et al.,
1996 ). In contrast, complex cell receptive fields, with overlapping ON
and OFF subfields, exhibit a number of fundamentally nonlinear
behaviors that distinguish them from simple cells, including
orientation tuning across a receptive field much wider than an optimal
bar stimulus, responses to both light and dark bars at the same
receptive field loci (Hubel and Wiesel, 1962 ), and antagonistic
interactions between pairs of bars that are individually excitatory
(Movshon et al., 1978 ).
The Hubel and Wiesel (1962) model and several subsequent models
(Movshon et al., 1978 ; Pollen and Ronner, 1983 ; Heeger, 1992 ) have held
that complex cell orientation tuning is achieved by pooling the outputs
of a set of simple cell-like subunits with different positions and
phases, allowing the complex cell to respond selectively to a
particular stimulus orientation while generalizing over position and
contrast polarity. This kind of subunit pooling is of relevance well
beyond the primary visual cortex, because the construction of receptive
fields that grow progressively more stimulus specific, and more
spatially invariant, roughly characterizes the transformation of the
visual code from level to level in the form-processing cortical stream
and culminates in cells in the inferotemporal complex with elaborate
form preferences maintained over very large receptive fields (Ito et
al., 1995 ). The ubiquity of subunit pooling as a cortical computation,
therefore, makes it essential to establish which biophysical mechanisms
and cortical circuit properties contribute to it.
The idea that simple cells are the exclusive oriented subunits
contributing to complex cell responses has been challenged repeatedly.
Four types of evidence may be cited, including (1) evidence for direct
LGN input to complex cells (Hoffmann and Stone, 1971 ; Toyama et al.,
1973 ; Singer et al., 1975 ; LeVay and Gilbert, 1976 ; Bullier and Henry,
1979 ; Sillito, 1979 ; Ferster and Lindstrom, 1983 ; Henry et al., 1983 ),
(2) reports of visual stimuli that drive complex cells but not simple
cells [Movshon (1975) , although see Wilson and Sherman (1976) , Gilbert
(1977) ; Hammond and MacKay (1975 , 1977 ), Hoffman and von Seelen (1978) ,
Burr et al. (1981) , Poggio et al. (1985) , although see Skottun et al.
(1988 , 1991 ), Hammond (1991) ], (3) a lack of monosynaptic connections
from simple to complex cells as revealed by cross-correlation analysis
(Toyama et al., 1981 ; Ghose et al., 1994 ), (although see Alonso, 1996 ), and (4) persistence of complex cell responses when simple cells are
silenced by pharmacological inactivation of appropriate LGN layers.
(Malpeli et al., 1986 ; Mignard and Malpeli, 1991 ) (although see Alonso,
1996 ).
Although many questions remain, the experimental record is consistent
with a scenario in which some complex cells both receive direct LGN
input and may not depend on simple cell input. The existence of cells
of this kind, however, requires an alternative source of oriented
subunits, "tiling" the cells' receptive fields and acting in
parallel with those putatively provided by simple cells. One
possibility is that a network of complex cells with excitatory and
inhibitory couplings could manufacture phase-independent orientation
tuning from raw, unoriented LGN inputs. A second possibility is that
the subunit computation necessary for constructing a complex cell
receptive field could be carried out within the dendritic tree of an
individual complex cell.
Similar proposals have been made in other contexts. Building on the
work of Barlow and Levick (1965) , for example, Koch et al. (1982 , 1986 )
used a compartmental model to show that the divisive, "veto"-like
action of shunting inhibition distributed across a large number of
dendritic subunits could underlie direction-selective responses.
Dendritic subunit computations based on expansive nonlinear synaptic interactions have also been modeled (Rall and Segev, 1987 ;
Shepherd and Brayton, 1987 ; Mel, 1992a ,b , 1993 ). In a precursor to the
present work, it was established in Mel (1992b , 1993 ) that a
neocortical pyramidal cell driven by strong NMDA-type synaptic currents
and/or containing dendritic Ca2+ or
Na+ channels, can respond more strongly when
synapses are activated in spatially clustered groups, in comparison
with the same number of synapses activated diffusely about the
dendritic arbor. Furthermore, the steady-state input-output function
of an active, "cluster-sensitive," dendritic tree was abstracted as
a "big sum of little products," where the particular set of product
terms depended on the spatial arrangement of synaptic inputs across the
dendritic tree. A close match to the mathematical expressions
underlying quadratic "energy" models for complex cell orientation
tuning (Pollen and Ronner, 1983 ; Ohzawa et al., 1990 ; Heeger, 1992 )
suggested that an intracellular basis for complex cell responses was
possible. We set out to investigate this possibility here, using
compartmental modeling techniques.
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MATERIALS AND METHODS |
Simulations of a pyramidal cell from cat visual cortex
(morphology courtesy of Rodney Douglas and Kevan Martin, Institute for
Neuroinformatics, ETH/University of Zurich) were carried out in NEURON
(Hines, 1989 ). Because the morphometric data for the cell used in these
experiments were derived from a large layer 5 pyramidal cell, we also
used spatially restricted subsets of the cell's dendritic tree in
control experiments to emulate smaller cells with varying
geometries.
Because the available anatomical data did not encode the locations and
structural parameters of dendritic spines, a scheme proposed by
Stratford et al. (1989) was used to increment the length and diameter
of each dendritic branch so that its area, input resistance, axial
resistance, and effective electrotonic length mimicked those of a
branch covered with spines at an assumed density of one spine per
micrometer (Douglas and Martin, 1990 ; Larkman, 1991 ). Under this
manipulation, the total dendritic branch length was increased from 17 to 20 mm.
Biophysical simulation parameters are summarized in Table
1. The soma and dendritic membrane
contained Hodgkin-Huxley-type (HH) voltage-dependent sodium and
potassium channels. Following evidence for higher spike thresholds and
decremental propagation in dendrites (Stuart and Sakmann, 1994 ), HH
channel density was set to a uniform, fourfold lower value in the
dendritic membrane relative to that of the cell body. Excitatory
synapses from LGN cells included both NMDA and AMPA-type synaptic
conductances. Because the cell was considered to be isolated from the
cortical network, inhibitory input was not modeled. Cortical cell
responses were reported as average spike rate recorded at the cell body over the 500 msec stimulus period, excluding the 50 msec initial transient (because few spikes occurred during this period in the isolated cell model).
A stimulus image consisted of a 64 × 64 pixel array containing a
stationary light or dark bar (pixel value ±1 against a background of
0) or a sinusoidal grating (peak values ±0.15). Images were spatially
convolved with a center surround filter whose effective center diameter
and optimal bar width was 7 pixels (Fig.
1). Non-zero filter outputs were treated
as subthreshold LGN cell activation values: positive values were mapped
onto a 64 × 64 array of ON-center cells, and negative values were
mapped (as positive values) onto the corresponding array of OFF-center
cells. Accordingly, only one cell type could be active at any given LGN
site for a given stimulus. Activation values for each cell were then
linearly scaled to yield a mean firing rate for a Poisson
spike-generating process, such that LGN cell outputs ranged from 0 Hz
(no stimulus) to 100 Hz (high-contrast optimal width bar through center
of receptive field). Temporal modulation of LGN cell responses was not
modeled in the present experiments.

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Figure 1.
Connectivity from LGN cells onto cortical
dendrites. The LGN model consisted of dual, superimposed 64 × 64 arrays of ON and OFF cells on a rectangular lattice. Receptive fields
were represented by difference-of-Gaussian filters (center SD = 2, surround SD = 4; truncated to a size 16 × 16 with DC
component subtracted away). RF center locations are indicated by
small dots. An optimal width bar is shown passing through
the center of two ON-center cells (1, 3) and through the
ON-surrounds of two horizontally offset OFF-center cells (2, 4). For vertical orientation tuning, the three vertically
aligned groups of 64 cells, with centers indicated by bolder
dots, were designated as the "friends" of cell 1, i.e., they
were maximally correlated with this cell for an ensemble of vertically
oriented bars of optimal width. All ON-center cells in the same
vertical group (e.g., 1, 3, etc.) had identical friends.
Each OFF-center cell had friends organized in a precisely complementary
arrangement. Given the random 1 in 8 subsampling from the LGN array to
establish the connections onto any given complex cell, each designated
LGN cell had on average 3 × 8 1 = 23 friends in the
subsample. The available pool of designated LGN cell axons was
spatially mapped onto the pyramidal cell dendrites by first randomly
choosing a "seed" cell (1) and forming a connection at
the first available dendritic site i, then randomly choosing
one of its friends (2) for the next available dendritic site
i + 1, then randomly choosing a friend of the afferent
at site i + 1 (3) for site i + 2 (4), and so on, until either all of the friends
of the cell at the current site were already deployed (occurred after
5), in which case a new seed cell (6) was
chosen at random to restart the sequence, or all cells had been chosen,
indicating that all of the available LGN synapses had been mapped
successfully onto the dendritic tree. Dendritic sites were mapped in
depth-first order; in the standard complex cell run, LGN sites were
separated by 20 µm.
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Of the 8192 LGN neurons, one-eighth were chosen at random to form a
single excitatory synapse onto the cortical cell's dendritic tree. The
assumption of ~1000 excitatory synaptic inputs to the cell was based
on reports that LGN inputs make up between 5 and 20% of the total
synaptic contacts onto cells in the middle layers of cat primary visual
cortex (LeVay and Gilbert, 1976 ; Peters and Payne, 1993 ), out of an
assumed total of 10,000 synaptic contacts onto a relatively large cell
such as we used in these simulations. Given the uncertainty in the
precise numbers and distribution of LGN contacts on pyramidal cells in
each layer, however, and to rule out major effects of cell size and
dendritic morphology, we included control runs in which only 100 LGN
synapses were activated, confined to either the apical or basal
dendritic tree.
The activity pattern of one such random subset of 1024 LGN cells is
shown in Figure 2A in
response to vertical and oblique bars. The spatial arrangement of the
synaptic contacts from these subsampled LGN cells onto the pyramidal
cell dendrites was the crucial determinant of the cell's nonlinear
response selectivity. The arrangement was generated according to a
pseudo-developmental rule that mimicked a balance of (1) random,
activity-independent synapse formation and (2) activity-dependent
synapse stabilization based on localized postsynaptic voltage signals
(Shatz, 1990 ; Cline, 1991 ). As has been previously verified in
simulation experiments, one outcome of learning rules of this type is
that strongly correlated inputs are more likely to form synapses at
nearby sites in the dendritic tree (Mel, 1992a ). In the present
context, ON and OFF cells whose activity was correlated with respect to
an ensemble of vertically oriented light and dark bars were designated
to form neighboring synaptic contacts (Fig. 1). Thus, the axodendritic contact of each ON-center cell in the LGN population was flanked at a
distance of either 20 µm or 100 µm (in one control run) by connections from other ON-center cells in the same vertical strip and/or from OFF-center cells in horizontally offset vertical strips. A
complementary arrangement held for OFF-center cells. This
translation-invariant orientation bias in the microarrangement of
dendritic input guaranteed that a vertically oriented stimulus
activated more groups of neighboring synapses than did stimuli at
nonoptimal orientations (Fig. 2B,C). We expected this
orientation dependence to be functionally significant in light of
previous work, which showed that synapses activated in a number of
spatial clusters could produce significantly larger cell responses than
the same number of synapses activated diffusely about the dendritic
tree (Mel, 1992a ,b , 1993 ). This expectation was borne out, as
illustrated in Figure 2D.

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Figure 2.
Mechanism underlying orientation tuning for a
single neuron. A, Activity of 1024 randomly subsampled LGN
cells in response to a vertical or oblique bar of optimal width.
B, Distribution of ~150 most active synapses on dendritic
tree shows more clustery distribution for vertically oriented bar. In
other cases, clustering was not easily visible by eye. C,
Spatial correlation function for synaptic input to dendritic tree: plot
shows Corr(xi,
xj) against distance i j measured in sites (20 µm spacing), where
xi was the firing rate of the synapse at site
i. The correlation was measured in a linear array of site
activity values before sites were mapped in depth-first order onto the
dendritic tree at 20 µm intervals. For a vertically oriented bar,
synaptic input is correlated to a distance of approximately eight sites
(160 µm): an active (or inactive) synapse reliably predicts the same
in its neighborhood of this size. In contrast, the correlation function
for an oblique bar is close to a function, indicating minimal
extent of spatial correlation. D, Corresponding records from
cell body showing significantly larger response to vertical bar.
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RESULTS |
Average spatial-frequency tuning and bar length summation curves
for model complex cells are shown in Figure
3. Spatial-frequency tuning was largely
inherited from the LGN cell model: the optimal grating wavelength (14 pixels) was twice the width of LGN receptive field centers. Curves are
within normal ranges for complex cells, assuming a conversion of
roughly 10 pixels per degree (Orban, 1984 ), although the comparison is
weak because the isolated cell model used here lacks all intracortical
(excitatory and inhibitory) influences that could act to shape its
basic tuning curve. Because the general form of both spatial frequency
and bar length curves were primarily related to total LGN output, i.e.,
did not depend on cooperative nonlinear synaptic interactions within
cortical dendrites, qualitatively similar curves were obtained when LGN inputs to the cell were spatially scrambled or when all dendritic HH
and NMDA channels were blocked, leaving an electrically passive dendritic tree (Fig. 3, dashed curves).

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Figure 3.
LGN-dependent response patterns. Each point is an
average of 20-30 randomized runs. A, Spatial-frequency
tuning. Cell responses (spikes per second) are plotted against spatial
frequency of vertically oriented sinusoidal gratings applied to the
entire receptive field. Three curves shown are for (1) active dendrites
with spatially organized geniculocortical projection, (2) active
dendrites but with spatially scrambled geniculocortical projection, and
(3) passive dendrites with spatially organized geniculocortical
projection. B, For length summation runs, a vertical bar of
optimal width was presented at a range of lengths, centered in the
receptive field. An increasing trend can be seen in all three cases
(same conditions as in A).
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Orientation tuning curves for a complex cell are shown in Figure
4A,B for light and dark
bars at a range of receptive field locations. Half width at half
maximum (HWHM) for this isolated cell was ~15°; in the cat, complex
cell HWHMs typically range from 20 to 30° (Orban, 1984 ). Tuning in
this cell is roughly invariant to stimulus position and contrast
polarity. This invariance was expected given that the statistics used
to organize the LGN projection onto the cortical cell dendrites were
both translationally invariant and symmetric with respect to ON and OFF
cell types. Random departures from ideal tuning curves were
attributable to (1) random subsampling of the LGN array, which led to
fluctuations in total LGN drive to the cell at particular positions and
orientations, and (2) randomness in the learning rule used to generate
the spatial arrangement of LGN contacts onto the complex cell dendritic
tree. That these effects were not systematic was revealed by the fact
that averages over several complex cells (and RF positions) yielded
smooth, peaked tuning curves. Tuning curves for sinusoidal gratings
were essentially similar to those for bars (data not shown).

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Figure 4.
Complex cell orientation tuning. A,B,
Orientation tuning curves are shown in response to optimal-width light
and dark bars over a range of receptive field positions for a single
complex cell. Tuning is roughly invariant to stimulus position and
contrast polarity. C, Average of tuning curves at all
positions for light and dark bars is shown for the cell in A
and B (Complex). Tuning was abolished when
synapses onto this cell were spatially scrambled in the dendritic tree
(Scrambled), or when all voltage-dependent channels (NMDA,
dendritic HH) were blocked leaving an electrically passive cell
(Passive). Somatic current injections were needed in these
isolated cell cases to bring the response off the floor (0.3 nA in
Scrambled case, 1.2 nA in Passive case).
D, Orientation tuning could be seen in complex cells that
contained either of the two voltage-dependent mechanisms alone.
Averaged tuning curves are shown for a cell in which NMDA channels were
blocked, leaving only dendritic Na+ channels to
support the nonlinear dendritic integration (diamonds). AMPA
conductances were increased by a factor of 4 relative to values in
Table 1 for this run. When dendritic HH channels were blocked instead,
leaving the NMDA channels as the only source of voltage-dependent
dendritic current, the cell remained orientation tuned, although
individual tuning curves were broader and far noisier; an average
tuning curve for five complex cells is shown in this case (+). Synaptic
conductances were increased by a factor of 2 relative to Table 1 for
this case, to compensate for the lack of Na+
currents in the dendritic tree.
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Separate tests were carried out in this cell to test the two crucial
features of the model: the dependence on (1) a spatially organized
axodendritic interface and (2) the presence of excitatory voltage-dependent membrane mechanisms in the dendrites. To confirm that
orientation-tuning was mediated by spatially dependent intradendritic processing operations, the connectivity from LGN cells onto the dendritic tree was randomly scrambled for the cell from Figure 4A,B, leading to a complete collapse of the cell's
tuning curve (Fig. 4C, Scrambled); the original
averaged tuning curve is provided for comparison (Complex).
Identical spike trains were delivered to each synapse in both the
Complex and Scrambled conditions to maintain maximum experimental
control. To confirm that active dendritic processing was responsible
for the translation-invariant orientation tuning in this cell, all
voltage-dependent dendritic channels were blocked (NMDA and dendritic
HH), which again flattened the cell's tuning curve (Fig.
4C, Passive).
Orientation tuning could also be seen in complex cells that contained
either of the two voltage-dependent mechanisms alone. Examples are
shown for complex cells in which only Na+ channels
or only NMDA channels were available to support the complex cell
receptive field properties (Fig. 4D), confirming that
a continuum of physiological configurations can support the needed
dendritic subunit nonlinearity, involving NMDA channels and dendritic
Na+ channels (and likely voltage-dependent
Ca+ channels) in varying combinations. We easily
generated examples in which selective NMDA-channel blockade led to
suppression of cell responses, consistent with experiments involving
NMDA blockade in visual cortex (Miller et al., 1989 ; Fox et al., 1989 ,
1990 ; Fox et al., 1992 ), but in which complex-cell-like properties were maintained by dendritic Na+ channels. However, the
degree of response suppression seen in tuned cells under NMDA block in
our simulations could be controlled over a wide range by varying the
initial (preblock) conductances of NMDA channels in the dendrites. The
main lesson of this manipulation, therefore, was that complex-cell-like
response did not require NMDA channel activation, assuming the presence
in the dendrites of other excitatory voltage-dependent channels, even
in cases where NMDA channels contributed strongly to the normal
visually evoked responses of the cell.
In other experiments, we found that hyperpolarizing current injections
to the soma were by themselves ineffective at eliminating orientation
tuning in the subthreshold somatic voltage trace, because of inadequate
space clamp within the pyramidal cell dendritic tree. This is
consistent with the results of Schwindt and Crill (1997) , who found
that somatic hyperpolarization did not block dendritically generated
action potentials.
Having demonstrated that the full pyramidal cell dendritic tree could
support the subunit computations underlying complex cell orientation
tuning, control runs were carried out to assess the dependence of
orientation tuning on gross dendritic morphology and synaptic
activation density, because both of these factors could impact on the
critical nonlinear interactions among synapses in the dendritic tree
(Koch et al., 1982 ; Woolf et al., 1991 ). Runs were therefore carried
out using only 100 excitatory inputs drawn from a 20 × 20 LGN
receptive field, uniformly subsampled from dual ON and OFF layers as
before. These 100 synaptic contacts were confined to either the apical
or the basal dendritic tree, each of which accounted for approximately
half of the total dendritic length.
Prominent orientation tuning persisted under these conditions; example
tuning curves for an "apical" and a "basal" case are shown in
Figure 5; curves are averaged over
several RF positions. The bar stimulus used in these runs was a
relatively squat 18 × 7 pixels, i.e., of optimal width but short
enough to be completely contained within the cell's 20 × 20 RF.
In the absence of intracortical inhibition, this low aspect ratio
tended to equalize the cell's responses at 0 and 90°, explaining the
significant elevation of the response curves at ±90°.

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Figure 5.
Replication of orientation tuning when LGN inputs
were confined to either the apical or basal dendritic tree. Total
branch length in each subtree was approximately half the 20 mm total
length of the pyramidal cell dendritic tree. In these runs, 100 excitatory synapses from LGN were used to drive the cortical cell in
lieu of the 1024 inputs used in the runs of Figure 4. Tuning was
evaluated with a relatively short, wide bar (18 × 7). Curves
shown are averages over several RF positions. Noticeable elevation of
responses at 90° from optimal were evident as the horizontal top and
bottom edges of the bar swung into vertical position at 90°.
Biophysical parameters used here were as follows: HH conductances were
double those of Table 1, and maximum peak synaptic conductances were
NMDA = 5 nS,
AMPA = 0.5 nS.
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To verify that the presence of nonlinear voltage-dependent channels
would not preclude a cortical cell from generating simple cell responses, we constructed a simple cell receptive field as follows. We drew ON and OFF inputs from adjacent, elongated,
nonoverlapping subregions of the LGN array. The ON subregion consisted
of all ON cells whose centers lay in five vertical columns of 20 cells ranging between +3 and +7 pixels to right of RF center, and the OFF
subregion consisted of all OFF cells whose centers lay in five vertical
columns of 20 cells in the range of 3 to 7 pixels to left of RF
center. The separation between ON and OFF subgroups was chosen such
that the centers of the centermost columns of ON and OFF cells just
abutted each other. Single excitatory contacts from each of these 200 LGN cells were distributed at random across the full dendritic tree of
the cortical cell (in contrast to the structured arrangement of LGN
inputs to the model complex cell), with ON and OFF cells randomly
intermixed. The cell's orientation tuning is shown in Figure
6A, measured using a
light bar centered in the ON subregion. Clearly separable ON and OFF
subregions were also mapped using light and dark vertical bars at a
range of horizontal positions across the receptive field (Fig.
6B).

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Figure 6.
Constructing a simple cell receptive field. Model
cortical cell received 200 inputs drawn from elongated, nonoverlapping
ON and OFF subregions of the LGN. Contacts were randomly intermixed in
the dendrites. Left, Orientation tuning using a light bar
centered in the ON subregion. Right, Map of ON and OFF
subregions using vertical light and dark bars at a range of horizontal
positions across the RF. Small ON and OFF sidelobes were caused by cell
surrounds. Biophysical parameters used here were as follows: HH
conductances were double those of Table 1, and maximum peak synaptic
conductances were NMDA = 4 nS,
AMPA = 0.4 nS.
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DISCUSSION |
An intracellular substrate for complex-cell orientation tuning
The results of Figure 4 indicate that an individual cortical
pyramidal cell, driven exclusively by excitatory inputs from ON- and
OFF-center LGN cells, is biophysically capable of producing robust
orientation-tuned responses to both light and dark bars over a
spatially extended receptive field and in this important sense, of
behaving like a complex cell. No systematic orientation bias existed in
the LGN cell receptive fields themselves or in the spatial distribution
of LGN cell receptive fields afferent to the cortical complex cell, so
that total LGN cell activity and hence mean input to the model complex
cell was equivalent at every bar position and orientation in these
experiments. The significantly larger average responses to optimal
orientations therefore could not be explained by an elevation in the
total synaptic drive impinging on the cortical neuron. Moreover,
individual synaptic efficacies were set quasiuniformly throughout the
dendritic tree (Table 1 legend), ruling out any patterning of synaptic
"weights" as a basis for these results.
Rather, the orientation effect could be explained in two steps: (1)
optimally oriented stimuli typically drove synapses in a number of
loose clusters scattered about the dendritic tree, whereas nonoptimal
stimuli drove an equivalent number of synapses, but in a
more diffuse spatial arrangement, and (2) these spatially concentrated
domains of synaptic input were more effective at activating local
intrinsic voltage-gated excitatory currents, which in turn led to
larger postsynaptic responses.
Two key assumptions of the model
The intradendritic subunit computation at the heart of the present
model depends on two main assumptions: (1) the dendritic tree must
contain a sufficient set of voltage-dependent channels whose biophysics
provide threshold-like behavior, hard or soft, and (2) the spatial
arrangement of LGN synaptic contacts onto the complex cell dendrites
must be manipulated to yield a pool of micro-oriented subunits
scattered across the dendritic tree, each consisting of a loosely
grouped cohort of ON and OFF cells co-consistent with an optimally
oriented bar. The critical nature of these two assumptions is reflected
in the observation that when the active dendritic channels included in
our model (HH and NMDA) were suppressed together, or when the spatial
arrangement of synaptic inputs was scrambled, complex cell response
properties were abolished (Fig. 4C). In the following
sections, we examine these key assumptions in greater detail.
Sensitivity to assumptions about dendritic channels
The generality of the present model depends critically on its
sensitivity to the inventory and properties of voltage-dependent channels assumed to govern the dendritic tree's electrical behavior. There is now solid evidence that the dendrites of neocortical pyramidal
cells contain physiologically prominent concentrations of NMDA
channels, which have been shown to contribute a large fraction of the
excitatory synaptic drive in primary visual cortex (Miller et al.,
1989 ; Fox et al., 1989 , 1992 ), and voltage-dependent Na+ channels capable of generating full-blown
dendritic action potentials (Amitai et al., 1993 ; Kim and Connors,
1993 ; Stuart and Sakmann, 1994 ; Schiller et al., 1995 ; Markram et al.,
1997 ). However, the pattern of nonlinear synaptic integration under
discussion here could reflect a highly specialized biophysical niche,
unrelated to the normal operating conditions of pyramidal cells,
arrived at by careful tuning of model parameters. Indeed, significant uncertainties remain regarding the biophysical parameters and spatial
distribution of voltage-dependent channels throughout the dendritic
tree, and the present model contains major simplifying assumptions in
this regard. More importantly, other types of voltage-dependent channels are known to exist in these cells' dendrites as well, including voltage-dependent calcium channels (Amitai et al., 1993 ; Reuveni et al., 1993 ; Markram et al., 1995 ), which could in principle complicate or disrupt the present story in unknown ways, and thereby frustrate our attempts to make general statements about the integrative behavior of "active" dendritic trees in visual cortex.
The specter of this unmodeled complexity is partly mitigated, however,
by a result of the present study. In keeping with the results of
previous work on the integrative properties of excitable dendritic
trees (Mel, 1993 ), we found that the basic nonlinear spatial structure
of a complex cell receptive field, which arose from a cell containing
both NMDA and HH channels, could also be produced in a model cell whose
dendrites contained only NMDA channels, or only
HH channels, despite the radically different biophysics governing these
two channel mechanisms. Thus, NMDA channels were not capable of
producing regenerative currents and were in force only at the
restricted loci of actively driven LGN synapses. Dendritic HH channels,
in contrast, contained Na+ and K+
components with different voltage sensitivities and kinetics, were
capable of full regenerative signaling, and were in force across the
entire dendritic tree. Given the profoundly different contributions of
these two mechanisms to the postsynaptic voltage environment, it is
striking that both mechanisms could effect the "same" nonlinear
subunit computation (although not necessarily with comparable
efficacy). We did not in the present study include voltage-dependent
Ca2+ channels, although on the basis of the results
of Mel (1992a , 1993 ), we would expect a qualitatively similar outcome,
i.e., that Ca2+ channels are a sufficient, but not
necessary, source of dendritic excitability to produce nonlinear
receptive field subunits.
In more detailed examinations of the intradendritic signals generated
by optimal visual stimuli, we noted qualitatively different patterns of
synaptic integration for HH-only versus NMDA-only conditions. HH-only
conditions involved frequent occurrences of actively propagated
dendritic action potentials that could be initiated by a "cluster"
of synaptic inputs in a distal dendritic region and propagated
throughout the dendritic arbor, including the soma. In contrast, output
spikes generated during NMDA-only conditions were caused by the
combined (nonregenerative) EPSCs from widespread dendritic subunits
driven by concentrated synaptic input. The kind of dendritic
electrogenesis we see in the HH-only condition is on its face
consistent with the results of Kim and Connors (1993) , who inferred
from intradendritically recorded voltage traces the existence of
multiple independent sites of dendritic spike generation in response to
distal synaptic inputs (also see Schwindt and Crill, 1997 ). However,
the question as to the "normal" initiation and propagation patterns
of dendritic spikes has yet to be settled satisfactorally (Stuart and
Sakmann, 1994 ).
Required specificity of learned synaptic arrangements
Because the present model also depends critically on the spatial
arrangement of LGN contacts onto the complex cell dendritic tree, it is
important to assess the level of spatial precision required for the
essential nonlinear synaptic interactions to take effect. At the
experimental level, nothing is currently known about the spatial
distribution of LGN contacts onto complex cell dendrites in relation to
their ON and OFF receptive fields. However, we have observed that it is
remarkably "easy" for a Hebbian learning rule to generate layouts
of LGN connections that lead to orientation-tuned complex cell
responses. One reason for this is that LGN (or other) contacts can
interact cooperatively through shared voltage signals over considerable
distances, making precise placement of contacts unnecessary. For
example, in the simulations we report in which 1024 LGN inputs were
modeled, the fixed distance between dendritic sites occupied by LGN
inputs was 20 µm. This spacing allowed the LGN synapses to just span
the total length of the dendritic tree at low density, under the
assumption that the majority of contacts onto these cells derive from
non-LGN sources. Because the orientation-related correlations among
these LGN synapses were significant to a maximum distance of eight
dendritic sites, or 160 µm (Fig. 2C), this suggests that
the relevant nonlinear dendritic processing in these experiments was
largely confined within a continuously sliding dendritic neighborhood of this approximate scale. In the experiments using only 100 LGN inputs
onto half the dendritic tree, the LGN input site separation was a fixed
100 µm, such that only one or a few LGN synapses could occur on any
given dendritic branch. Roughly speaking, the learning rule in this
case needed only to ensure that each LGN afferent was anywhere within
~100 µm in either direction of another LGN afferent with which it
was correlated (i.e., vertically aligned).
The control runs of Figure 5 further demonstrate that pyramidal cell
dendrites are extremely accommodating with respect to the
intradendritic operations under study here. Using the identical developmental rule to micro-organize the geniculocortical interface in
all cases, we showed that complex cell receptive fields could emanate
from at least the two very different morphologies of the apical versus
basal dendritic trees of pyramidal cells, in addition to the more
typical cell morphology containing both. Furthermore, the demonstration
of subunit-based orientation tuning when either 100 or 1024 LGN cells
provided direct input to the cortical cell suggests that the relevant
cooperative synaptic interactions can operate under a wide range of
synaptic activation densities. These observations taken together
suggest that any cell in the cortical column receiving even a modest
number of direct LGN contacts onto either its apical or basal dendrites
or both could have its response shaped in a functionally significant
way by nonlinear intradendritic computations. Because LGN inputs to
area 17 in cat terminate on the apical and basal dendrites of many
pyramidal cells whose cell bodies reside outside layer 4, specifically
onto the basal dendrites of cells near the layer 3-4 and 4-5 borders,
emanating from LGN layers A and A1, and onto these cells' apical tufts
in layer 1 via the projection from LGN layer C (LeVay and Gilbert,
1976 ), many complex cells in primary visual cortex could be influenced by this type of mechanism.
LGN versus simple-cell subunit structure
It is worthwhile to consider the relatively subtle differences in
the nonlinear receptive field structure afforded to a complex cell by
simple-cell-like subunits versus center-surround LGN subunits. One
important difference between these two cases is reflected in the
geometry of nonlinear spatial antagonism expected within the complex
cell's receptive field, deriving from the geometry of the respective
linear subunits (i.e., simple cells vs LGN cells).
In the case of simple cell subunits, two spots of light can interact
antagonistically even when separated by the length of a simple cell's
long axis of orientation, giving rise to long-range suppressive
nonlinear interactions in the complex cell. In a pure LGN-based complex
cell model, on the other hand, two spots could interact
antagonistically only within the more limited, circularly symmetric ON
and OFF subregions of some given LGN subunit. Any longer-range
antagonistic nonlinear interactions in a complex cell, such
as are actually observed in second-order spatial kernels (Szulborski
and Palmer, 1990 ; Gaska et al., 1994 ), therefore could not derive from
LGN afferents alone. To explain such suppressive interactions, it is
necessary to invoke larger linear subunits (e.g., simple cells) or some
action of lateral inhibition within the cortical network.
One observation that could specifically signal a direct LGN
contribution to a complex cell's nonlinear receptive field structure would be whether the degree of nonlinear boosting between two spots of
light varied significantly as the two spots were moved relative to each
other, in and out of range of individual LGN receptive fields, although
always remaining within the complex cell's (and presumably simple
cells') more elongated receptive fields. White noise analysis has
indicated that spatial modulation of nonlinear interactions in fact can
occur on scales much smaller than the extent of a complex cell's
receptive field, traveling along the preferred orientation axis. For
example, in a complex cell in cat V1 chosen to illustrate the nonlinear
spatial interaction between pairs of light and dark spots [Szulborski
and Palmer (1990) , their Fig. 2], the peak nonlinear boost was seen
when a second spot was illuminated within a fraction of a degree (on
average) of the reference spot, for reference spots in four virtually
nonoverlapping domains within a 6° diameter complex cell receptive
field. Although the interpretation of these data is not entirely
straightforward, this pattern of results could indicate a contribution
from a subunit that is an order of magnitude smaller in spatial scale
than the complex cell itself. The precise origin of these fine-spatial scale nonlinear boosting interactions, however, remains unknown.
Other avenues for experimental validation
Another approach to experimental validation of the present
hypothesis involves intracellular suppression of the nonlinear membrane
mechanisms underlying oriented subunit computations. Techniques could
combine hyperpolarization with intracellular channel blockers, in
analogy to the simulation experiments of Figure 4C,D. Under
this type of manipulation, a complex cell that receives direct LGN
inputs should show a partial or complete loss of orientation tuning as
reflected in its output firing rate or subthreshold PSP. The degree of
tuning suppression should grow with the relative effectiveness of the
cell's direct LGN drive, which could range from null to highly
effective in different complex cells, and whose strength could be
independently assessed.
The interpretation of results in such an experiment would be greatly
facilitated if intracortical inputs could be selectively blocked, and
LGN inputs to the cell are left functionally intact. This has been a
technical objective of recent experiments involving the cooling of
visual cortex (Ferster et al., 1996 ), which suppresses the firing of
cortical cells and leaves afferent geniculocortical axonal transmission
relatively unaffected. A serious complication of this type of
technique, however, is that the intervention used to suppress cortical
cell firing could interfere equally with active dendritic subunit
processing. Thus, cooling, or alternatively application of GABA, could
functionally inactivate the essential voltage-dependent dendritic ion
channels that contribute to the cells' orientation tuning. In such a
case, any suppression of complex cell response tuning could be
attributed to either the removal of input from external oriented
subunits such as simple cells or to the loss of nonlinear
intradendritic processing needed to compute the subunits locally, or
both. Given the likely confounding effects of cortical response
suppression methods in relation to the present hypothesis, other
measures of LGN-derived orientation tuning could be attempted, such as
the peak of the shortest latency EPSP. Observation of a phase-invariant
orientation tuning curve in this measure, combined with a suppression
of tuning under intracellular blockade of voltage-dependent channels,
would constitute direct evidence for an intradendritic contribution to
complex-cell orientation tuning.
Significance and limitations of the isolated
complex-cell model
Although its central tenets remain to be experimentally validated,
and despite various limitations, our dendritically based isolated
complex-cell model provides the first detailed account, in answer to a
longstanding puzzle, as to how direct LGN inputs to a complex cell
could contribute nondestructively to the cell's shift-invariant
orientation tuning, in cooperation with oriented inputs provided by
simple or other complex cells.
Its independence from the cortical circuit, however, also leads to one
of the present model's main weaknesses: it cannot easily generate
clean experimental predictions regarding the behavior of complex cells
as they normally exist within the cortical circuit. Thus, many
important aspects of complex-cell physiology are inaccessible to our
isolated-cell model in its present form, including, for example, all
consequences of intracortical inhibition (e.g., sharpening of receptive
field tuning, long-range paired-stimulus suppression effects, contrast
gain control, etc.), or of the long-range excitatory connections that
may contribute to extra-classical receptive field structure (Gilbert et
al., 1996 ). Furthermore, our overly simplistic steady-state model of
LGN responses has left many important questions of cortical receptive
field dynamics outside the scope of our current model.
Finally, the present model raises questions, but provides no answers,
regarding the intriguing relation between oriented receptive field
subunits that could be computed within the postsynaptic dendritic
milieu of an individual LGN-recipient complex cell and those computed
by a presynaptic population of simple cells, where in principle both
could mix within the dendrites of a single complex cell. In spite of
its limitations, our model emphasizes the potential importance of
intradendritic computation for visual neurophysiology and points to new
experimental approaches relating to the role of the individual neuron
in neocortical information processing.
 |
FOOTNOTES |
Received Sept. 11, 1997; revised March 9, 1998; accepted March 12, 1998.
This work was supported by the National Science Foundation and the
Office of Naval Research and by a Sloan Foundation Fellowship (D.R.).
We thank Ken Miller, Allan Dobbins, Christof Koch, and the anonymous
reviewers for many helpful comments on this work.
Correspondence should be addressed to Bartlett W. Mel, Department of
Biomedical Engineering, Mail Code 1451, University of Southern
California, Los Angeles, CA 90089. E-mail: mel{at}lnc.usc.edu
Dr. Ruderman's present address: Sloan Center, The Salk Institute,
10010 N. Torrey Pines Road, La Jolla, CA 92037. E-mail: ruderman{at}salk.edu
 |
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D. Graboi and J. Lisman
Recognition by Top-Down and Bottom-Up Processing in Cortex: The Control of Selective Attention
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M. S. Livingstone and B. R. Conway
Substructure of Direction-Selective Receptive Fields in Macaque V1
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J. F. Linden and C. E. Schreiner
Columnar Transformations in Auditory Cortex? A Comparison to Visual and Somatosensory Cortices
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J.-M. Alonso
Book Review: Neural Connections and Receptive Field Properties in the Primary Visual Cortex
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B. Lau, G. B. Stanley, and Y. Dan
Computational subunits of visual cortical neurons revealed by artificial neural networks
PNAS,
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M. L. Hines and N. T. Carnevale
Neuron: A Tool for Neuroscientists
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April 1, 2001;
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I. Segev and M. London
Untangling Dendrites with Quantitative Models
Science,
October 27, 2000;
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J. S. Anderson, M. Carandini, and D. Ferster
Orientation Tuning of Input Conductance, Excitation, and Inhibition in Cat Primary Visual Cortex
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August 1, 2000;
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M. Carandini and D. Ferster
Membrane Potential and Firing Rate in Cat Primary Visual Cortex
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January 1, 2000;
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J. L. Casagrand, A. L. Guzik, and R. C. Eaton
Mauthner and Reticulospinal Responses to the Onset of Acoustic Pressure and Acceleration Stimuli
J Neurophysiol,
September 1, 1999;
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