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First published online February 12, 2007
Journal of Experimental Biology 210, 865-880 (2007)
Published by The Company of Biologists 2007
doi: 10.1242/jeb.02707
Escape behavior and neuronal responses to looming stimuli in the crab Chasmagnathus granulatus (Decapoda: Grapsidae)
Laboratorio de Neurobiología de la Memoria, Depto. Fisiología, Biología Molecular y Celular, Facultad de Ciencias Exactas y Naturales, Universidad de Buenos Aires, IFIBYNE-CONICET, Buenos Aires 1428, Argentina
* Author for correspondence (e-mail: tomsic{at}fbmc.fcen.uba.ar)
Accepted 4 January 2007
| Summary |
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Key words: visual behavior, escape response, looming detection, looming sensitive neurons, intracellular recording, Crustacea, Chasmagnathus granulatus
| Introduction |
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To trigger a collision-avoidance response upon an expanding image, animals
might perform several different neural calculations. One possibility is a
`time-to-contact' model, where the individual determines the time left to
collision with an object (e.g. Hatsopoulus
et al., 1995
; Lee,
1976
; Wang and Frost,
1992
). Alternatively, an animal may generate a response when the
image across its retina subtends a certain size (e.g.
Glantz, 1974
;
Nalbach, 1990b
) or when the
borders of the expanding image exceed a certain retinal speed (e.g.
Hemmi, 2005b
). Finally,
animals might integrate image motion over space and time, with responses
occurring when the integral exceeds a threshold, referred to as the
`spatio-temporal integration' model (Borst
and Bahde, 1988
).
Behavioral reactions elicited by looming stimuli have been studied in
species as diverse as flies (e.g.
Jablonski and Strausfeld,
2000
; Tammero and Dickinson,
2002
), crabs (e.g. Hemmi,
2005a
; Hemmi,
2005b
), frogs (Yamamoto et
al., 2003
), chickens (Evans et
al., 1993
), gannets (Lee and
Reddish, 1981
), wood-chucks
(Kramer and Bonenfant, 1997
),
monkeys (e.g. Maier et al.,
2004
) and humans (e.g. Regan
and Hamstra, 1993
). Conversely, electrophysiological
investigations of neurons underlying looming detection have been performed in
relatively few species [e.g. flies (Borst,
1991
), hawkmoth (Wicklein and
Strausfeld, 2000
), goldfish
(Gallagher and Northmore,
2006
), locust (Gabbiani et
al., 2002
; Gray,
2005
; Rind and Simmons,
1992
), pigeon (Wang and Frost,
1992
; Wu et al.,
2005
)], but it is only in locusts where attempts have been made to
relate the neuronal activity with an actual behavioral response (e.g.
Gray et al., 2001
;
Santer et al., 2005
;
Santer et al., 2006
).
The visual system of locusts contains several types of movement-sensitive
interneurons (Rind, 1987
). Two
of these, known as the Lobula Giant Movement Detector 1 and 2 (LGMD1 and
LGMD2), strongly respond to looming stimuli
(Simmons and Rind, 1997
).
Continuous effort from different laboratories has concentrated almost
exclusively on studying the response to looming stimuli of the LGMD1 (usually
just called LGMD). Nonetheless, the exact mechanism by which this neuron
encodes information and uses spike trains to trigger behavioral reactions
remains contentious (e.g. Rind and Santer,
2004
). There are thus good reasons for the development of
additional experimental models in which both behavioral and neuronal studies
can be performed.
In semiterrestrial crabs, the conspicuous escape reaction elicited by
looming stimuli has largely captured the attention of field researchers (e.g.
Hemmi and Zeil, 2005
;
Jennions et al., 2003
;
Land and Layne, 1995a
;
Land and Layne, 1995b
;
Nalbach, 1990a
). Recently,
however, it has become evident that semiterrestrial crabs offer excellent
opportunities for investigating the processing of biologically meaningful
visual stimuli at the neurophysiological level, because stable intracellular
recordings can be made in the intact, awake animal
(Berón de Astrada et al.,
2001
; Johnson et al.,
2002
; Nalbach,
1990b
; Tomsic et al.,
2003
). Thus it is possible to characterize several classes of
neurons from the optic neuropils of the crab Chasmagnathus by their
response to visual and tactile stimuli. Amongst these classes, there is a
generic group of large tangential neurons from the lobula that share a clear
preference for motion stimuli. Intracellular dye injections revealed that
these neurons arborize extensively in the lobula and in the lateral
protocerebrum, and their axons project centripetally, leaving the optic
ganglia through the protocerebral tract. In the lobula, the dendritic trees
are organized as tangential branches that run parallel to each other,
indicating that the cells sample information from a large part of the visual
field (Berón de Astrada and Tomsic,
2002
; Sztarker et al.,
2005
).
The wide field movement detector neurons (MDNs) of the crab were previously
investigated in connection with the escape response of the animal to a
stimulus moving horizontally overhead
(Berón de Astrada and Tomsic,
2002
; Sztarker and Tomsic,
2004
). The profile of elicited spikes of MDNs to this stimulus was
found to correspond well with that of the behavioral reaction. Neurons reacted
to this stimulus with a delay of 3050 ms, and their elicited activity
anticipated the behavioral response by about 120 ms. In addition, the short-
and long-term reduction of the escape response caused by stimulus repetitions
can be entirely accounted for by the reduction of the response of MDNs to that
stimulation (Tomsic et al.,
2003
). Altogether, these results indicate that MDNs are good
candidates to be involved in the decision to initiate the escape response to
visual danger stimuli. By examining both the animal's performance in a walking
simulating device and the neuronal responses through in vivo
intracellular recording, we identify in this paper two subclasses of MDNs that
appear to play a fundamental role in the escape response of the crab to
looming stimuli.
| Materials and methods |
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, pH 7.47.6, and
maintained within a temperature range of 2224°C. The holding and
experimental rooms were maintained on a 12 h:12 h light:dark cycle (lights on
07.00 h to 19:00 h) and the experiments were run between 08.00 h and 19:00 h.
Experiments were performed within the first 2 weeks after the animal's
arrival. Crabs were fed rabbit pellets (Nutrients, Buenos Aires, Argentina)
every 3 days and after feeding the water was changed. Following experiments,
animals used in behavioral experiments were returned to the field and released
in an area separated by 30 km from the capture area.
Visual stimuli
Computer-generated visual stimuli were projected either simultaneously or
alternatively in four flat screen monitors (Phillips 107T, Suzhou, China;
horizontal and vertical screen dimensions 32 cmx24 cm respectively,
refreshing rate 60 Hz), located at 20 cm in front, above and at both sides of
the animal (Fig. 1A). The
monitors were located inside a Faraday cage completely covered to prevent
outside visual stimuli from reaching the animal, and anti-glare screens
reduced reflections among the monitors. Three of the monitors stood on a
vibration-damped table and the fourth was hanging from the ceiling. Both
behavioral and electrophysiological experiments began after a black curtain
was lowered in the front part of the cage and after the animal had remained
visually undisturbed for 10 min. All visual stimuli were generated from a
single PC using commercial software (Presentation 5.3, Neurobehavioral Systems
Inc., Albany, CA, USA). The stimulus image generated from the PC was first
split and then sent to four selector switches. From each selector the video
signal could be rapidly turned on and off. The selectors as well as other
control systems used during the experiments were located outside the Faraday
cage. In this way, a range of different stimuli could be selected and
presented to different parts of the visual field without distressing the
animal, while behavior or neuronal activity was being recorded.
|
Visual simulations generated by computer may differ in many ways from the
visual input experienced under natural conditions. Thus, for example, the
refreshing rate of a monitor screen may impose a severe constraint on the
study of the visual system of animals with a high flicker fusion frequency. We
did not measure the fusion frequency in Chasmagnathus, but are
confident that it is lower than the refresh rate of our monitors. Flicker
fusion in other crabs (the fiddler crab Uca pugilator) was found to
be below 50 Hz (Layne et al.,
1997
) and in the crayfish, responses to looming stimuli
corresponding to real approaching objects or to filmed representations
projected at 24 frames s1, rendered identical results
(Glantz, 1974
). We found no
response differences in Chasmagnathus when comparing a black sheet of
cardboard moving overhead with the computer-generated image (V.M. and D.T.,
unpublished observations).
The simulated looming stimulus used in the present study consisted of a 5
cm black square, which approached over a distance of 70 cm at a constant speed
of 20 cm s1 (Fig.
1B). Thus, for the crab's eye the stimulus had an apparent size
subtending an angle of 4° at its stationary initial position and expanded
until covering the entire screen (77° width, 62° height). It should be
noted that this definition is somehow arbitrary, because different properly
scaled combinations of sizes, speeds and distances of the object can generate
identical image expansions (Gabbiani et
al., 1999
). Thus, for example, a 5 cm object that approaches from
70 cm at a speed of 20 cm s1 cannot be distinguished on the
bases of its image expansion from an object of 10 cm that approaches from 140
cm at 40 cm s1. Despite this uncertainty, the animal would
still be able to estimate the time remaining before colliding with the
approaching object. Such information can be extracted from the rate of
expansion of the image and is independent of the combination of parameters
that generated that particular expansion. Indeed, the estimation of the
collision time can be obtained by determining the ratio between retinal image
size at a given instant and the rate of expansion of the image, provided that
the object approaches at a constant velocity
(Lee, 1976
;
Rind and Simmons, 1999
).
Throughout the experiments expansions were always directly towards the animal. In addition to the black looming stimulus, in some experiments we also used the following stimuli: (i) a white looming stimulus over a black background; (ii) a receding stimulus with an opposite but otherwise similar kinetic to the looming one; (iii) a stimulus that consisted of a black square subtending 17° (6 cm sides), which moved parallel to the animal at a constant speed of approximately 48° s1 (18 cm s1 on the screen); (iv) a gradual darkening without motion components. This was generated by reducing the light intensity at the screen from 2.1x102 mW cm2 (corresponding to the white background) to 0.03x102 mW cm2 (corresponding to the black looming stimulus at full expansion). The time course of the luminance change approximated that produced by the black looming stimulus.
Escape response
The locomotor activity of the crab was investigated in a walking simulator
device consisting of a floating styrofoam ball that could be freely rotated by
the animal from a standing position (Fig.
2). The method is a variation of that previously used to
investigate the orientation of walking in insects (e.g.
Dahmen, 1980
). The crab was
attached to a weightless rod through a piece of rubber glued to its dorsal
carapace. The rod was introduced inside a metal guide, positioned vertically
above the ball, where it could slide up and down with little friction. This
allows the animal to feel its own weight and thus to adopt their natural
posture while performing on the ball. The rod and the guide both had square
sections, which prevented rotational movements and thus opened the visual
feedback loop. Because crab eyes possess a panoramic field of view, but the
visual sensitivity may be different around the eye (e.g.
Sandeman, 1978
), opening the
feedback loop allowed us to vary the location of the visual input while
preventing the complications of the crab responding to the visual consequences
of its own actions (Land and Layne,
1995b
). On the other hand, crabs have their eyes mounted on top of
movable stalks, which they move to stabilize the optic flow that results from
its own movements. However, they have never been observed to move the eyes in
such a way as to bring the image of a target to bear upon a special part of
the retina, i.e. they do not fixate and track objects of interest
(Barnes and Nalbach, 1993
;
Sandeman, 1978
). In a series
of preliminary experiments we compared the escape response to looming stimuli
between crabs with free and immobilized eyestalks, and found no difference in
any response parameter. Therefore, there was no need for immobilizing the eyes
during behavioral experiments in the present study.
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The styrofoam ball (16 cm in diameter) was floating within a bowl-shaped container partially filled with water. Horizontal displacements of the ball were prevented by four set points provided by two optical mice and by two flexible sheets located at right angles from each other. The rotation of the ball was recorded by the two mice that have their optical reading systems protected by transparent acetate sheets, which also ensure smooth movements of the ball.
Recording and reconstruction of the locomotor pathway
During normal walking, crabs may perform translatory as well as rotational
movements. On the walking simulator these actions turn into corresponding
displacements of the ball beneath the crab. In the case of pure translation,
the path of the ball is a straight line whose direction is opposite to that of
the crab's intended locomotion. Pure rotation by the crab causes rotation of
the ball about a vertical axis through the crab, again in the opposite
direction to the crab's intention. Combinations of translation and rotation
result in circular movements by the ball, where the center of rotation is at a
distance from the crab itself. Translatory and rotatory movements were
extracted by the method shown in Fig.
2. A system of orthogonal coordinates centered in the crab defined
the Yc and Xc axes, which
corresponded, respectively, to the anteroposterior and lateromedial axes of
the crab. Attempts of the animal to move forward or backward displaced the
surface of the sphere beneath the crab along the Yc axis,
and this movement was recorded by monitoring Y-axis movements
(Y1) of mouse 1. Attempts of the animal to move sideways
displaced the surface along the Xc axis, and this movement
was recorded by monitoring Y-axis movement of mouse 2
(Y2). Rotational movements (
c) were
recorded by monitoring the X-axis of both mice. Thus pure
forwardbackward translatory movements over time t corresponded
to
Yc(t)=
1
Y1(t),
sideways translatory movements to
Xc(t)=
2
Y2(t),
and rotational movements to

c(t)=ß1
X1(t)=ß2
X2(t),
where
1,
2, ß1 and
ß2 are constants that were obtained by calibration of the
equipment. Signals from the mice were acquired using the recording facilities
of the commercial software generating the visual stimuli (Presentation 5.3,
Neurobehavioral Systems Inc., Albany, CA, USA). Mice data were taken at each
frame update (16.7 ms), which ensured accurate correspondence between the
recorded response times and the stimulus features (size, border speed, etc) at
each screen update. Two Presentation programs were run in two separate PCs.
PC1, which generated the visual stimuli, was used to record one of the mice,
as well as to trigger the recording of the second mouse in PC2
(Fig. 1A). Thus, the program
that generated the visual stimulus synchronized the recording of the two mice
just before stimulus onset. The data recorded by mice 1 and 2 during a trial
generated two Presentation files, which contained a list of the times
associated with each data record and frame update. The files were then
combined and analyzed off-line to obtain the profile of the escape
response.
A recording trial lasted 10 s and, when repeated, trials were recorded at either 1 or 3 min intervals. In all trials the stimulus remained stationary for 30 s at its initial position before starting to increase in size. Behavior was always monitored by visually observing the animal through a small hole in the curtain at the front of the cage.
Electrophysiology
Intracellular recordings from interneurons in the optic lobe were performed
in the intact living animal according to methods previously described
(Berón de Astrada et al.,
2001
). Briefly, the crab was firmly held in an adjustable clamp.
The eyestalks were cemented to the carapace at an angle of approximately
70° from the horizontal line, which corresponds to their normal position.
A tangential cut performed with a sharp scalpel was made to remove a small
piece of thin cuticle (about 500 µm in diameter) from the tip of the
eyestalk without causing damage to the ommatidial area. The crab was
positioned in the center of the arrangement of monitors within the Faraday
cage. The clamp with the crab was held in position using a magnetic holding
device. The glass microelectrode was then positioned and advanced through the
opening in the cuticle. Microelectrodes (borosilicate glass; 1.2 mm outer
diameter, 0.68 mm inner diameter), were pulled on a Brown-Flaming micropipette
puller (P-77; Sutter Instrument, Novato, CA, USA) yielding tip resistances of
4060 M
when filled with 3 mol l1 KCl. A bridge
balance amplifier was used for intracellular recordings (Axoclamp 2B; Axon
Instruments, Union City, CA, USA). The output of the amplifier was monitored
on an analogue oscilloscope, digitized at 10 kHz (Digidata 1320; Axon
Instruments) and recorded in a computer for subsequent analysis. All
intracellular recordings were performed at the membrane resting potential.
The monitors located inside the Faraday cage generated a significant level of electrical noise in the recordings, but we were able to prevent the noise in two ways: (i) by placing a wire mesh just in front of each one of the screens, and (ii) by wrapping the headstage, the electroholder and part of the glass electrode with a dense, properly grounded, metal wire mesh.
Note that after electrophysiological recordings, the crabs remained healthy and no subsequent behavioral differences were observed with respect to non-treated animals.
| Results |
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Repeated responses
Escape responses to repeated visual stimulation can be affected by
habituation (e.g. Tomsic et al.,
1998
; Tomsic et al.,
2003
). Therefore, before measuring the crab's response to repeated
presentation of the stimulus approaching from different visual regions (see
below), we decided to evaluate the extent to which repetitions of the same
looming stimulus affect the performance of the escape response in
Chasmagnathus. Fig. 5A
shows the mean response distance (open squares, left axis) run by a group of
14 crabs, upon 10 presentations of the looming stimulus separated by 1 min.
The figure also shows the mean response latency (as described above) for the
same animals (filled circles, right axis). The result indicates that repeated
stimulations caused a progressive reduction in the running distance and an
increase in response latency. Given that 1 min is a quite short intertrial
interval, the result may have been caused by motor fatigue rather than by a
central process of habituation. Consequently, we repeated the experiment with
a different group of 15 crabs but using an inter-trial interval of 3 min. The
result revealed that despite subtle changes in the running distances across
trials (a sensitization effect is apparent at trial 2) there were no
differences in the latency of response
(Fig. 5B). Therefore, in the
latter condition repeated responses to the same stimulus are always launched
at approximately the same time.
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In Fig. 8, recordings of an
M1 and an M2 neuron from different animals illustrate their responses to (A) a
flash of light, (B) a black rectangle moved laterally and (C) the looming
stimulus. In both types of neurons the response to the pulse of light consists
of a discrete IPSP or EPSP (occasionally a single spike), always associated
with the onset and the offset of the light, whereas to tangential motion the
two neurons respond with a train of spikes riding on top of a large and rather
sustained EPSP. The response in both M1 and M2 neurons to the looming stimulus
consists of a depolarization accompanied with spiking activity that
progressively increases as the image of the virtual object grows over the
retina of the animal (see also Fig.
9). Despite these similarities, the two neurons present
substantial differences. Type M1 neurons comprise a group of 14 units with a
well-documented morphology (Sztarker et
al., 2005
). Briefly, these neurons are homogeneously distributed
across the lobula, where they extend their dendrites tangentially along a
single layer, in such a way that each neuron collects information from a
different and restricted part of the retinotopic mosaic. Physiological
measurements revealed that the neurons have their receptive field oriented
toward different parts of the visual space, each neuron encompassing less than
90°. Therefore, although the neuronal assemble allows assessment of visual
information from the whole panorama, each element processes information from a
restricted part of the animal's visual field
(Medan et al., 2004
) (V.M. and
D.T., unpublished). These neurons had previously been named monostratified
movement detector neurons (MMDNs)
(Sztarker et al., 2005
) but,
in order to separate them from a second group of monostratified neurons
described below, we term them here simply M1. By contrast, the group of M2
neurons is formed by a yet-undetermined number of elements, although the
similarities in cell morphology observed over several independent
intracellular stainings indicate there may possibly be only one unit of this
type. This neuron possesses a very large dendritic tree that extends in a
single layer all the way through the lobula, thus collecting information from
the entire retinotopic mosaic. Physiological measurements revealed that the
receptive field of this neuron is extremely large, covering the entire visual
space (Medan et al., 2004
)
(V.M. and D.T., unpublished). We call these neurons monostratified 2 or
M2.
From electrophysiology, the two neuronal types are readily distinguishable because M1 do not fire spontaneously whereas M2 fires at a constant rate of about 6 Hz. At the end of the stimulus expansion M2 usually stops firing and occasionally shows a clear hyperpolarization that may last for several hundred milliseconds before regaining spontaneous activity (Figs 8, 9).
Neuronal and behavioral responses to looming, receding and laterally moving stimuli
We evaluated the responses of M1 and M2 neurons to visual stimuli
consisting of a black looming, a white looming, a black receding, a laterally
moving black square, and a motionless darkening of the screen. Recordings were
taken from the right lobula, stimuli were presented at the screen located to
the right of the crab, and in the case of M1 only neurons with the receptive
field oriented towards that side were used.
Fig. 9 shows representative
responses of one neuron from each type to the five visual stimuli, and
averaged data (± s.e.m.) from 11 M1 and 13 M2 neurons organized into
100 ms bins. The black receding stimulus
(Fig. 9B) evokes in M1 neurons
a small but consistent response at the beginning of the image contraction,
which is usually absent in M2 elements. In both neuron types the white looming
object (Fig. 9C) elicits a weak
response that slightly increases with the approach of the virtual object.
Lateral displacements of the black square
(Fig. 9D) produce a
considerable response, which is often sustained through the motion period.
Dimming of the screen without motion components generates a gradual response
in M2 but only a sharp response at the time of maximal darkness in M1 neurons
(Fig. 9E). The black looming
stimulus (Fig. 9A) is the one
that generates the strongest responses. This can be appreciated by comparing
the mean spike frequency reached in response to the different stimuli
(peristimulus histograms in Fig.
9), as well as the total number of spikes elicited by the stimuli
(Fig. 10).
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In order to begin exploring the relation between the activity of M1 and M2 neurons with the escape response, we evaluated the behavioral reactions to the various stimuli we used. Fig. 10 shows that there is good correspondence between the visual stimuli that elicit an escape behavior and those that are effective at exciting the M1 and M2 neurons. The black looming stimulus is the most powerful, while the black receding one is the weakest.
Temporal relation between the neuronal and the behavioral response to the looming stimulus
Before a visual interneuron can be considered to be involved in the
detection of stimuli that trigger an escape response, it must satisfy two
initial criteria: firstly, it must respond to the same stimuli that trigger
the escape behavior and secondly, its activity must precede the behavioral
response. The M1 and M2 neurons that we recorded from satisfy both of these
criteria. Comparison of the temporal profile of the crab escape response with
those of M1 and M2 neurons to the black looming stimulus is shown in
Fig. 11. Behavior is shown as
the mean running speed from 14 animals (one run per crab), organized into 100
ms bins. Neuronal responses are shown as the mean spike frequency of 19
records obtained from 10 M1 and 18 records from 13 M2 neurons (no more than 2
records per neuron per crab were considered), which are also organized into
100 ms bins. Note that the time axes for the records shown in Figs
7,
8,
9 and
11 are different from those in
Figs 3 and
4; the start of the looming
motion indicated by arrowheads in Fig.
11 corresponds to time zero in Figs
3 and
4. As described above, the
escape response starts (dotted line in
Fig. 11) approximately 2.4 s
after the stimulus begins to move. Clearly, at the moment of escape
initiation, both M1 and M2 neurons have significantly increased their firing
activity above their resting discharge. However, there is a delay of
approximately 120 ms between the responses of MDNs and the behavioral reaction
(Tomsic et al., 2003
), so that
the behaviorally relevant discharge level occurs 120 ms before the first
movement of the animal can be detected (see arrows in
Fig. 11).
The escape speed of crabs increases with the angular size of the stimulus (Fig. 11A), whereby running speed continues to increase up to the moment when the stimulus stops expanding (broken line). At the end of expansion, when the stimulus was moving at angular velocities above 200° s1, crabs reached an averaged escape velocity per bin of 24.5 cm s1. Interestingly, the run suddenly decelerates almost immediately following the end of expansion. This matching between the dynamic of the approaching image and that of the escape suggests that the response is under feedback control.
| Discussion |
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Reaction to looming stimuli in crabs
Semiterrestrial crabs possess a highly developed visual system and display
conspicuous visual guided behaviors (e.g.
Cannicci et al., 1997
;
Zeil and Hemmi, 2006
). In
nature, Chasmagnathus is preyed upon by different species of seabirds
(Spivak and Sanchez, 1992
),
the most important being the gull Larus atlanticus, which is a
specialized crab feeder (Escalante,
1966
; Copello and Favero,
2001
). The strategies used by this gull to approach and capture
Chasmagnathus have barely been studied. Yet, they seem to be varied,
the most important being walking and surface seizing
(Copello and Favero, 2001
).
Depending on the attack strategy and on the different stages of an attack,
visual cues vary widely for the crab prey. How do the animals then detect the
danger and elicit the appropriate response faced with such a variety of visual
cues? Fiddler crabs appear to employ a multistage predator avoidance strategy
depending on the level of risk, whereby this risk may be assessed by different
detector systems, sensitive to different aspects of predator-associated visual
cues (Hemmi, 2005b
). A similar
hypothesis has recently been proposed to explain the range of evasive
behaviors, from steering to diving, elicited by looming stimuli in the locust
(Santer et al., 2006
).
Parameters of the looming stimuli that determine the escape decision
Depending on their velocity, size, distance and movement direction,
approaching objects generate images that move and expand over the observer's
retina with different dynamics. Thus, the way in which the image changes
contains significant information about object behavior, even though biological
constraints may limit access to some of this information
(Hemmi and Zeil, 2005
). But
which one of the various parameters that define the expanding image is used by
the animal? Behavioral experiments performed in different species of crabs and
in crayfish have suggested different possibilities, including an increase in
the apparent size of the stimulus (Glantz,
1974
; Nalbach,
1990b
), a threshold in retinal speed
(Hemmi, 2005b
), or a
combination of these factors (Land and
Layne, 1995a
; Hemmi,
2005b
). For instance, the critical stimulus parameter to initiate
the escape in the crab Heloecius or to trigger the defense reaction
in the crayfish is the increase in angular size
(Nalbach, 1990b
;
Glantz, 1974
). In
Heloecius the apparent angular size of the stimulus had to increase
above 5.6° from its initial value (discussed in
Hemmi, 2005b
) while in the
crayfish the required increase was about 8°
(Glantz, 1974
). In
Chasmagnathus, the looming stimulus used in the present study
launched the escape response when the image reached an apparent angular size
of 13.9° and a retinal speed of 14° s1. Therefore,
at the response onset the apparent angular size of the stimulus had increased
by approximately 10° (from 4° at the initial position up to 13.9°
at the time of response onset), which is not far from the values reported in
Heloecius and the crayfish. It should be stressed, however, that the
value obtained corresponded to the average time at which most
Chasmagnathus decided to initiate the escape, and not to the minimum
threshold for detecting visual motion stimuli. In fact, our
electrophysiological recordings show clearcut neuronal responses when the
stimulus subtends less than 4.5° (i.e. an increase of 0.5° from the
initial value) and moved at a retinal speed below 1.4°
s1 (see arrows in Figs
7,
8).
When compared with field studies, the mean threshold values found in
Chasmagnathus appear to be much higher than those reported for
fiddler crabs (Hemmi, 2005b
;
Land and Layne, 1995a
).
Several reasons may account for the difference: First, fiddler crabs possess a
region of maximal vertical resolution around the eyes' equator, which is not
common to other groups like grapsid crabs
(Zeil et al., 1986
). Thus,
stimuli moving close to the level of the horizon might indeed be more readily
perceived in fiddler crabs than in Chasmagnathus. Second, the
discrepancy may arise from the fact that the values we report in the present
study correspond to the averaged thresholds from several animals, whereas in
fiddler crabs the reported values corresponded to the minimum individual
threshold detected among many animals. In fact, when looking at individual
responses we found escape reactions that were triggered when the stimulus had
an apparent angular size of only 5.7° and moved at a retinal speed of
2.3° s1. Lower thresholds would have been difficult to
obtain in our current experiments since the initial size of the stimulus was
already 4°. Interestingly, the lowest behavioral thresholds we observed
were from those few animals (hence excluded from the general analysis) that
were slowly walking at the time the looming was initiated, which suggests that
the locomotion state may have a facilitatory effect on the responsiveness to
danger visual stimuli.
A third possibility to explain the difference in thresholds between fiddler
crabs and Chasmagnathus relates to the fact that crabs display
different responses according to their assessment of the risk of predation
(Hemmi, 2005a
). In fact, crabs
respond to a predator in three different stages: freeze, home run and,
ultimately, refuge entry. Thus, a stimulus approaching from a long distance,
such as those used in field studies with fiddler crabs, initially elicits a
startle response. But as the stimulus comes closer (or initiates its approach
from a shorter distance, as in our study), the probability and the strength of
the escape increase. It has been proposed that the different stages of the
escape response are mediated by two distinct detector systems, sensitive to
different aspects of predator-associated visual cues
(Hemmi, 2005b
). Differential
activation of these two distinct, but complementary, predator response systems
was suggested to explain the discrepancy between the threshold values found in
fiddler crabs and in the crab Heloecius
(Hemmi, 2005b
). This
explanation could also account for the discrepancy between the values found in
fiddler crabs and Chasmagnathus.
To determine which one of the parameters that characterize a visual stimulus is used by the animal to identify it as an impending threat, and then initiate the escape, requires a comprehensive study employing a wide range of visual stimuli. The present study shows that regardless of the differences in response strength in different animals (Figs 3, 4) or in the same animal, depending on the number of exposures (Fig. 5B), the time course for the response remains invariant. Provided stimuli are separated by at least 3 min, temporal parameters such as the response latency can thus be assessed by repeatedly recording the responses to diverse looming stimuli in the same animal.
Neuronal responses to looming stimuli and the escape response
In this study we show that two subclasses of movement detector neurons from
the crab's lobula, here termed M1 and M2, respond to the looming stimulus in a
way that closely matches the time course of expansion and, equally important,
their activity correlates with the magnitude (speed) of the elicited escape
response (Fig. 11). This is
particularly clear in the case of M1 neurons, the discharge rate of which
correlates with each phase of the behavioral output. During the first part of
the stimulus approach M1 is silent and the crab remains still. Then, at a
certain point of the expansion the neuron begins to increase its firing rate,
and soon afterwards the crab starts to run. The increase in running speed of
the crab during the stimulus approach faithfully follows the increment in the
firing rate of M1 until the moment of maximum stimulus expansion, when the
neuron abruptly stops firing and the animal immediately decelerates its run.
However, before the relation of M1 neurons with the escape response can be
generalized, more experiments using looming stimuli of different sizes and
with different velocities of approach are needed.
The directional component of the escape response of crabs is known to be
controlled by continuous visual feedback
(Land and Layne, 1995a
;
Land and Layne, 1995b
). The
close correlation between the time course of image expansion and the speed of
running suggests that the velocity of the escape may also be controlled by a
visual feedback, which could operate through M1 neurons. However, because we
do not know the postsynaptic target of M1 neurons, their involvement in the
circuit that commands the escape response to looming stimuli remains
speculative.
Comparison of the looming sensitive neurons of the crab and the locust
The visual nervous system of insects and crustaceans are thought to be
homologous (Strausfeld, 2005
),
and the recent finding of a lobula plate neuropil in Chasmagnathus
gave further support to this idea
(Sztarker et al., 2005
). In
the present study we found that the looming-sensitive neurons of the crab
resemble those of the locust in many aspects. In both animals these neurons
collect visual information from a large portion of the retinotopic mosaic
through a large dendritic tree located in the lobula, and their axons project
to the midbrain. Functionally, these neurons respond vigorously to the
approach of dark objects towards the eye, with a response that continues to
increase as the object comes closer, as would occur during imminent collision
or during the strike of a predator. In both animals the neurons are excited by
translatory movements, their response wanes to a repetitive stimulus and they
are almost insensitive to wide field image motion. In addition, they respond
more strongly to black than white expanding stimuli or image contraction (e.g.
Berón de Astrada and Tomsic,
2002
; Medan et al.,
2004
; Rind, 1987
;
Rind and Simmons, 1999
) (see
results in the present paper).
In both locust and crabs there are two identified classes of
looming-sensitive neurons. Class M1 and class M2 of the crab share features
with class LGMD1 and class LGMD2, respectively, of the locust. Like LGMD1, M1
do not fire in the absence of visual stimulation, whereas LGMD2 as M2 both
have a significant resting spike discharge. The spontaneous firing of LGMD2
and M2 generates in these neurons a faster discharge rate than in LGMD1 and in
M1 during object approach and, unlike in LGMD1 and M1, they often exhibit a
hyperpolarization and reduction in spike rate at the end of approach. The
response of LGMD1 to approaches of objects that subtend >5° at the eye
usually comprise two peaks in the spike rate
(Rind and Simmons, 1992
), and
this feature is also apparent in M1 neurons. During contraction of a dark
image both M1 and LGMD1 are often strongly excited for a brief time, but such
excitation is not found in M2 and LGMD2. In addition, recordings from M1 and
LGMD1 usually show an abundant, sharp postsynaptic activity, which is not
common to M2 and LGMD2. To further appreciate the functional analogies between
the neurons from the crab and the locust, compare the records of this paper
with those previously published (Simmons
and Rind, 1997
).
Despite the likeness in their general morphology and similarity in their
functional properties, the looming-sensitive neurons of the crab and the
locust differ in some important aspects. In the locust, we know most about the
LGMD1 neuron and its involvement in the animal's escape response. There is
only one single bilateral pair of these neurons, each one covering the entire
view of the eye ipsilateral to its lobula projections. By contrast, the M1
class of the crab comprises 14 bilateral pairs
(Sztarker et al., 2005
), with
receptive fields that are distributed over the extensive visual field of the
crab's eye. Assuming that the system of M1 neurons of the crab, like the LGMD1
of the locust, participates in the escape behavior to looming stimuli, it is
reasonable to speculate about the differences between the two
looming-sensitive systems and the characteristics of the behaviors with which
they are involved.
Tethered flying locusts respond to an approaching object with steering
manoeuvres and eventually by switching to gliding, which is thought to be a
last-ditch effort to evade a fast aerial predator
(Santer et al., 2006
). Thus,
the gliding response appears to represent a true fixed action pattern that is
not influenced by visual feedback. The control of such an all-or-none type of
response does not require fine directional adjustments and, therefore, could
be achieved by a single pair of neurons such as the LGMD1. In contrast, the
response to approaching objects in crabs consists of a run, in which direction
and speed are clearly influenced by continuous visual feedback
(Land and Layne, 1995b
). In
the absence of a nearby shelter crabs run on a straight path away from the
approaching object, but readily change directions upon changes of its
direction of approach (e.g. Nalbach,
1990a
; Land and Layne,
1995b
). This fine directional tuning might require a system of
looming-sensitive neurons with differently oriented receptive fields, i.e. an
array such as that provided by the 14 pairs of M1 neurons found in
Chasmagnathus.
In the locust, the exact mechanism by which the LGMD1 neuron encodes
information about looming stimuli remains contentious. Two current models
predict how the output firing of the LGMD1 represents a looming stimulus. One
hypothesis states that the LGMD1 acts as an angular threshold detector.
According to this model, postsynaptic multiplication of excitatory and
inhibitory inputs that converge onto the LGMD1 produces a peak that occurs
with a fixed delay after the looming object reaches a fixed threshold angular
size (Gabbiani et al., 1999
;
Gabbiani et al., 2002
).
Accordingly, peak firing occurs before collision (Hatsopoulos et al., 1995;
Gabbiani et al., 1999
;
Gabbiani et al., 2002
).
Another model suggests that presynaptic inhibition shapes looming responses of
the LGMD1 (Rind, 1996
), which
produces a peak firing rate after the object motion ceases
(Rind and Simmons, 1999
).
Thus, the debate between the two hypotheses mainly concerns whether or not the
peak of LGMD1 firing rate is the `essential functional variable' (see
Rind and Santer, 2004
) that
triggers the locust escape. It was shown recently that high-frequency (>150
Hz) LGMD1 spikes (measured at its postsynaptic DCMD neuron) are involved in
triggering the glide response, but the analyses could not identify any feature
of the LGMD1 response alone that was reliably associated with glides in all
trials (Santer et al., 2006
).
This was because, for a glide to be triggered, the high-frequency spikes must
be timed appropriately within the wingbeat cycle to coincide with wing
elevation. This means that the locust's escape behavior can vary in response
to the same looming stimulus, so a predator cannot exploit predictability in
the locust's collision avoidance behavior
(Santer el al., 2006
). The
lack of predictability also makes it more complicated to relate a certain
threshold of the looming expansion with the actual behavioral output.
At variance with the gliding response of the locust, which is measured in
terms of the probability of occurrence
(Santer et al., 2005
;
Santer et al., 2006
), the
escape run of the crab is a graded response, the magnitude of which can be
measured in terms of the distance or the speed of the run. The onset of the
crab's escape response occurs much earlier than the peak firing rate of the M1
neurons, but their activity appears to convey information on the speed of the
escape run.
| Acknowledgments |
|---|
| Footnotes |
|---|
| References |
|---|
|
|
|---|
Barnes, W. J. P. and Nalbach, H. O. (1993). Eye movements in freely moving crabs: their sensory basis and possible role in flow-field analysis. Comp. Biochem. Physiol. 104A,675 -693.[CrossRef][Medline]
Berón de Astrada, M. and Tomsic, D. (2002). Physiology and morphology of visual movement detector neurons in a crab (Decapoda: Brachyura). J. Comp. Physiol. A 188,539 -551.[CrossRef][Medline]
Berón de Astrada, M., Sztarker, J. and Tomsic, D. (2001). Visual interneurons of the crab Chasmagnathus studied by intracellular recordings in vivo. J. Comp. Physiol. A 187,37 -44.[CrossRef][Medline]
Borst, A. (1991). Fly visual interneurons responsive to image expansion. Zool. Jb. Physiol. 95,305 -313.