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First published online January 17, 2007
Journal of Experimental Biology 210, 383-394 (2007)
Published by The Company of Biologists 2007
doi: 10.1242/jeb.02668
Running stability is enhanced by a proximo-distal gradient in joint neuromechanical control
Concord Field Station, MCZ, Harvard University, 100 Old Causeway Road, Bedford, MA 01730, USA
* Author for correspondence at present address: Division of Kinesiology, University of Michigan, Ann Arbor, MI 48109, USA (e-mail: mdaley{at}umich.edu)
Accepted 22 November 2006
| Summary |
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Key words: running, locomotion, biomechanics, motor control, joint work, joint moment, inverse dynamics
| Introduction |
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Dynamically stable running in varying conditions
A simple mass-spring model accurately describes the stance phase dynamics
of bouncing gaits, such as hopping and running, given the appropriate limb
parameters (initial limb angle, effective limb length and leg stiffness) and
initial conditions (McMahon,
1985
; Blickhan,
1989
; McMahon and Cheng,
1990
; Farley et al.,
1993
; Schmitt and Holmes,
2000a
; Schmitt and Holmes,
2000b
; Ghigliazza et al.,
2003
). Dynamically stable running can be accomplished over a broad
range of conditions by adjusting `leg spring' parameters appropriately (e.g.
McMahon and Cheng, 1990
;
Farley et al., 1993
;
Full and Farley, 2000
).
Experimental studies on hopping and running humans have shown that changes in
leg stiffness (kleg) help maintain similar body center of
mass (COM) motions over surfaces of varying compliance
(Ferris and Farley, 1997
;
Ferris et al., 1998
;
Ferris et al., 1999
;
Kerdok et al., 2002
). The
stability of mass-spring running can be further improved by adjusting initial
limb contact angle (Seyfarth et al.,
2002
), which is accomplished automatically if the limb retracts
during late swing phase (Seyfarth et al.,
2003
). Nonetheless, the mass-spring model is a conservative
system, meaning that the total mechanical energy of the body
(Ecom) remains constant. If a perturbation results in a
change in one type of mechanical energy, it must be redistributed to another.
For example, energy can be redistributed between gravitational potential
energy (PE) and kinetic energy (KE) through changes in
kleg or initial limb posture
(Ferris et al., 1999
;
Seyfarth et al., 2003
). If a
movement requires changing the total mechanical energy of the body, the animal
must deviate from spring-like mechanics.
Although the mass-spring model is an appropriate starting point for the
investigation of running stability, there is no a priori reason to
expect that the limb will remain a passive `leg-spring' when its interaction
with the environment unexpectedly changes. Even in steady forward running, the
muscles at individual joints produce or absorb net energy, achieving
spring-like dynamics for whole limb. Proximal joints produce energy, whereas
distal joints operate as springs or absorb energy (e.g.
Pandy et al., 1988
;
Belli et al., 2002
;
Roberts and Scales, 2004
).
Additionally, the mechanical performance of muscle is sensitive to intrinsic
mechanical factors, including muscle and tendon length, shortening velocity
and strain history, sometimes called `preflexes'
(Brown and Loeb, 2000
).
Moreover, limb posture can alter a muscle's mechanical advantage and,
consequently, kleg and ground reaction force (GRF) for a
given muscle force (McMahon et al.,
1987
; Biewener,
1989
; Biewener,
2003
). Consequently, muscle force and work performance can
immediately change upon encountering an external perturbation.
On a slower time scale, reflex feedback might also be rapid enough to
change muscle activation within the perturbed step (e.g.
Nichols and Houk, 1976
). Some
evidence suggests that reflexes contribute substantially to muscle activity in
steady locomotion (reviewed by Grillner,
1975
; Pearson et al.,
1998
; Pearson,
2000
). Therefore, both intrinsic mechanical and proprioceptive
feedback mechanisms can alter limb dynamics immediately following a
perturbation. Since running animals must control their speed and direction in
addition to maintaining dynamic stability, the extent to which they will
maintain conservative spring-like body motion in rough or unpredictable
terrain is not yet clear.
Perturbation experiments reveal strategies for neuromechanical integration
In this paper we explore the neuromuscular and mechanical control
strategies used by animals to maintain running stability over uneven terrain
by studying the limb and joint dynamics in response to a sudden perturbation.
We disrupt the running of helmeted guinea fowl Numida meleagris L. by
subjecting them to an unexpected drop in substrate height (
H)
that is camouflaged to remove any visual cue about the upcoming change in
terrain. We also compare the unexpected perturbation response to the response
when the drop step is visible.
Using this approach, we have previously found that guinea fowl are able to
maintain dynamic stability when they encounter a large, sudden drop in
substrate height during running (Daley et
al., 2006
). Nonetheless, the perturbation leads to a number of
changes in COM mechanics, examined in detail in the first paper. To summarize
briefly, the unexpected perturbation causes a 26±1 ms delay in limb
loading relative to that anticipated by the bird (assumed to be the point of
tissue paper contact). In the subsequent stance phase, contact time is
shortened and mean ground reaction force (GRF) reduced, resulting in a smaller
and more variable GRF impulse during stance. The sudden drop in substrate
height and decreased weight support following the perturbation causes the body
to fall, yielding a net loss in PE. Whether this PE is converted to KE,
causing acceleration, or absorbed through negative limb work, preventing
acceleration, depends on the magnitude and direction of the ground reaction
forces over the course of stance. The birds exhibit three distinct response
patterns: (1) KEh mode, in which the perturbation energy is
converted to forward KE, (2) Ecom mode, in which the
perturbation energy is absorbed through negative limb work, and (3)
KEv mode, in which the bird simply falls, converting PE to downward
KE (Daley et al., 2006
).
Despite the variability in COM mechanics following a drop perturbation, the
magnitude and time course of ground reaction forces in the perturbed step can
largely be explained by the dynamics of a simple mass-spring model
(Daley and Biewener, 2006
).
Most of the variation in limb loading is associated with altered initial limb
contact angle, consistent with the theoretical model
(Seyfarth et al., 2003
).
Nonetheless, the guinea fowl's body mechanics in Ecom mode
trials reveal that, in many cases, the total mechanical energy of the body
changes during the perturbed step. This suggests net energy absorption by the
hindlimb muscles in some circumstances. In this paper we investigate how body
mechanics relate to the underlying limb dynamics following the perturbation.
We assess how joint mechanics are coordinated to achieve whole limb function,
with particular focus on the implications for neuromechanical control.
Based on muscletendon architecture and previous studies of steady
and incline locomotion, we hypothesize that a proximo-distal gradient in
neuromechanical control is used to coordinate limb function during running. We
propose that this control strategy improves stability in rough terrain by
causing limb cycling to remain relatively constant, whereas limb energy
performance rapidly changes in response to altered interaction between the
limb and the ground. In this proximo-distal motor control gradient (1)
proximal muscles at the hip and knee joints are controlled in a largely
feedforward manner and exhibit load-insensitive mechanical performance,
whereas (2) function of distal muscles at the ankle and
tarsometatarso-phalangeal (TMP) joints is highly load dependent due to
intrinsic mechanical effects and rapid, higher gain proprioceptive feedback. A
proximo-distal gradient in muscle function is suggested by studies of limb
muscle architecture and in vivo muscle performance during steady and
incline running (Roberts et al.,
1997
; Biewener,
1998b
; Gillis and Biewener,
2002
; Daley and Biewener,
2003
; Gillis et al.,
2005
). Long-fibered proximal muscles modulate limb and body work,
whereas short-fibered distal muscles with long tendons favor more economical
force generation and elastic energy savings
(Biewener and Roberts, 2000
).
Compared to proximal muscles, we anticipate that muscles at the distal joints
are inherently more sensitive to altered loading and exhibit more rapid
proprioceptive feedback regulation. The reasons for this are that (1) the
distalmost joints interact directly with the ground and will be the first to
encounter and sense changes in terrain, (2) distal muscles may be more
sensitive to intrinsic nonlinear contractile effects due to their distinct
muscletendon architecture, and (3) distal limb joints likely undergo
greater intrinsic change in joint dynamics following a perturbation due to the
lower inertia of the small distal segments. In contrast, we expect that
proximal limb muscles at the hip and knee joints are under greater feedforward
control, driven by spinal motor circuits, and relatively insensitive to
changes in loading during stance.
We test this proximo-distal control hypothesis by examining the joint momentangle patterns of running guinea fowl in association with the bird's stabilization response to a sudden, unexpected perturbation involving a drop in substrate height. Based on the reasoning outlined above, we expect the hip and knee to maintain similar mechanical performance as in level running, and the ankle and TMP to undergo rapid changes in kinematics, joint moments and joint work in response to altered limb loading following the unexpected perturbation.
| Materials and methods |
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Experimental procedures and data collection
All experimental procedures and data collection have been described
previously (Daley et al.,
2006
). Briefly, running trials were conducted on an 8 m long
runway with Kistler force plate (model 9281A, Amherst, NY, USA) placed at the
midway point. The sidewalls in the middle 1.8 m were constructed of 6 mm
PlexiglassTM to allow recording of lateral view high-speed digital video.
In `Control' trials (C), the bird ran steadily across the level runway. In
`Unexpected Drop' trials (U), the runway was elevated relative to the
force-plate, to create a drop in substrate height (
H=8.5 cm)
that was disguised by tissue paper pulled tightly across the gap
(Fig. 1). The tissue paper
broke at a relatively low force of 6 N (approximately 30% of the bird's body
weight), and took 16±4 ms to break, exerting a negligible impulse on
the COM (Daley et al., 2006
).
The U trials were randomized to prevent habituation by placing a 6 mm thick
white board over the drop between trials and running the bird along a level
runway. We conducted no more than 2 or 3 U trials on a given recording day,
randomized among 1520 level trials. At the end of the experiment, we
conducted `Visible Drop' trials (V), in which the bird encountered the same
H as in U trials, but could see the upcoming change. We found
no evidence of a learning trend in sequential hidden drop trials when
kinematic variables were compared using repeated-measures analysis of variance
(ANOVA), whereas behavior differed markedly when the birds were allowed to see
the upcoming
H (V trials)
(Daley et al., 2006
). The V
trials allow a general comparison to the hidden drop, to provide insight into
the effect of removing visual feedback.
|
|
Kinematic points located at the middle toe, tarsometatarsophalangeal joint
(TMP), ankle, knee, hip, synsacrum and the approximate body COM were
digitized, smoothed and interpolated to 5000 Hz as described previously
(Daley et al., 2006
). We
calculated joint angles (Fig.
2), relative limb length (L/Lt, where
L is the distance between the hip and toe, and Lt
is the sum of all limb segment lengths), and limb angle (
), the angle
of the line between hip and toe, relative to horizontal
(Fig. 1,
Table 1).
|
Average limb stiffness (kleg) was calculated over the
duration of the limb compression (decrease in leg length during an increase in
GRF). Thus, kleg was the change in force divided by the
change in length during the limb compression phase of stance. Because there
was substantial size variation among the birds in the study
(Table 1), we normalized this
kleg as a dimensionless stiffness
(Kleg=klegLt
mg1) (McMahon and Cheng,
1990
) to account for the scaling of stiffness with body size
(Farley et al., 1993
). It is
important to note that the limb stiffness calculated in this study is not
equivalent to the effective virtual `leg spring' stiffness calculated by
McMahon and Cheng (McMahon and Cheng,
1990
), which assumes a simple mass-spring model and uses length
changes between the COM and the point of application of the GRF. During
unsteady behaviors, as investigated here, the collective performance of the
body and limb may or may not maintain spring-like function. Therefore, we used
this measure of kleg to quantify the compressive limb
stiffness following the perturbation, to avoid potentially incorrect
assumptions about the mechanics of locomotion during unsteady movement.
Nonetheless, it is important to note that if limb performance follows steady,
spring-like dynamics, the kleg calculated here would be
equal to that obtained using the method in previous studies.
We calculated the external moment and work at each joint over the course of
stance using inverse dynamics. We did not include internal moments (segment
inertial and gravitational terms) because we were concerned with relating
joint dynamics to body COM mechanics rather than obtaining accurate values of
total muscle work. The external moment is the magnitude of the cross product
between the instantaneous joint position vector P and the instantaneous
GRF vector Fg, where P is composed of the x
and y distances between the force plate center of pressure (COP;
Fig. 2) and the center of
rotation for each joint, and Fg is composed of the
x and y components of the GRF. By convention, an extensor
moment and an extending angle change were positive. The joint moment and joint
angular velocity were multiplied at each time point to obtain joint power.
Joint work was calculated by numerical integration of joint power over time.
Using this approach, the value of work at the last time point of stance is the
net external work done by that joint. We also calculated the absolute external
work done at each joint using the same method, except that we took the
absolute value of joint power before integration. Net limb work and absolute
limb work were obtained by summing the respective values across all joints in
the limb. Together, these two values (net and absolute limb work), also allow
calculation of the total negative and positive external limb work. The mean
absolute difference in net limb work calculated through inverse dynamics
versus COM energy analysis (integration of force plate data)
(Daley et al., 2006
) was
0.08+0.01 J, which is 6% of the average total external limb work done. All
work values were normalized for size by dividing by the bird's body mass.
Statistical analysis
For statistical analysis all mechanical variables were made dimensionless
by normalizing to body mass, the acceleration of gravity (g)
and total limb length (Lt)
(McMahon and Cheng, 1990
). We
subdivided the U trials into three categories corresponding to COM energy
response modes (KEh mode, Ecom mode, and
KEv mode) (Daley et al.,
2006
). A two-way ANOVA was used to assess the effect of individual
and `behavior category' (C, UKEh, UEcom,
UKEv, V), on limb angle at ground contact (
i),
effective limb length at contact
(Li/Lt), leg stiffness
(Kleg) and average limb retraction rate during stance
(
/Tc). A two-way ANOVA was also used to
assess the effect of individual and `behavior category' on net joint work and
initial limb angle at each joint (Hip, Knee, Ankle, TMP). We used the Tukey
Honestly Significant Difference post hoc test (THSD) or sequential
Bonferroni correction for multiple comparisons. Statistical tests were
performed using Systat (version 10.2 for the PC). Unless otherwise stated, we
report average values as the mean ± s.e.m.
| Results |
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i; P<0.001 THSD;
Fig. 5,
Table 2).
|
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As a consequence of unloading during the perturbation, the limb did not
compress as it normally does during the beginning of stance
(Fig. 3). During the tissue
break-through phase, the limb exhibited varying degrees of flexion and
extension (Fig. 4B). In the
stance phase following the
H, it extended for a short period
at the beginning of stance before compressing
(Fig. 4B). The U perturbations
consistently exhibited this pattern of limb extension early in stance, which
differed markedly from the leg compressionextension cycle seen in level
running. However, we did not observe a similar pattern during V perturbations.
In visible substrate drops the limb also contacted the ground with a steeper
angle (Fig. 5,
Table 2). However, the limb was
more extended upon contact and began compression immediately
(Fig. 4B).
The relationship between limb posture and body mechanics
Limb contact angle (
i), initial relative limb length
(Li/Lt), and limb stiffness
(Kleg) all varied considerably among the unexpected
perturbations (Fig. 5). Yet,
only the variation in initial limb posture (
i and
Li/Lt) significantly differed among
response modes, whereas Kleg did not
(Table 2). Limb stiffness
varied among individuals, but did not differ significantly across behavior
categories (Table 2).
Therefore, Kleg did not appear to play a major role in
distinguishing limb dynamics among the behavior categories. In contrast,
initial limb angle (
i) and initial relative limb length
(Li/Lt) differed significantly among
perturbation response modes. Initial limb angle (
i) was
significantly higher in KEv perturbation responses
(P=0.013), whereas Li/Lt
tended to be longer in Ecom responses (P=0.039;
Fig. 5D,
`
Ecom mode'). Thus, limb posture
(
i and Li/Lt)
significantly distinguished the three perturbation response modes. When the
limb contacted the ground with an extended posture, it absorbed the
perturbation energy through negative limb work. At intermediate
i and Li/Lt the limb
converted the perturbation energy to KEh. When the limb contacted
the ground with a very steep angle, the limb exerted little force on the
ground and the bird simply fell, converting PE to KEv.
The contribution of individual joints to limb mechanical function
The individual joints of the limb performed distinct roles during level
running (Fig. 6). The hip
produced positive work while extending. The knee flexed rapidly under a low
moment and maintained a relatively constant angle at higher moments,
performing little net work. The ankle primarily operated in a spring-like
manner, absorbing and returning energy (although it absorbed a small amount of
energy on average). The TMP joint acted as a damper, absorbing net energy. The
positive work produced by the hip was balanced by energy absorption at the
TMP, resulting in zero energy change for the whole limb
(Fig. 7C,
Fig. 8), as expected for steady
level running.
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|
In the perturbed trials, the magnitude of the work done at each joint
decreased with increasing limb contact angle
(Fig. 7; P<0.001
for all individual joints vs
i). There was also a
dramatic decrease in absolute limb work with increasing
i
(Fig. 7C). However, net energy
produced by the limb depended on the balance among the joints, and net limb
work did not exhibit a significant linear relationship with
i (Fig.
7C).
In association with altered limb loading following the perturbation, the torques at each joint often briefly reversed at the beginning of stance (Fig. 6, middle panels). Otherwise, the overall patterns of joint torques did not substantially differ from level running, apart from more rapid rise and fall, and shorter duration. The exceptions to this were KEv mode trials (3 of 19 U trials), in which the peak moments were greatly reduced in magnitude and duration (Fig. 6, green broken lines).
The U perturbations affected the mechanics at each joint differently. Despite altered loading, the proximal joints retained similar overall function as during steady running. The hip extended to a similar extent as in control trials, and consistently produced positive work under extension, although the amount of work done varied among U response modes (Fig. 6A, Fig. 7A). Whereas knee kinematics varied substantially, net work performed at the knee remained near zero in all cases because it underwent little angular change during periods of high torque (Fig. 6B, Fig. 7A).
In contrast, the function of the ankle and TMP joints depended on the posture of the limb at the point of ground contact. Both of these joints acted as dampers (absorbing energy) under some circumstances and as springs (absorbing and returning energy) under other circumstances (Fig. 6C,D, Fig. 7B). When the limb contacted the ground with an extended posture and shallower angle, these two distal joints absorbed net energy, whereas when the limb contacted the ground with a crouched posture and steeper angle, they operated in a spring-like manner with little net work (Ecom mode vs KEh mode, respectively). When limb contact angle was very near vertical, the forces on the limb were too low to exert substantial joint moments, and neither of these joints performed substantial work (KEv mode).
Thus, the balance of work among the joints related to the posture of the limb at the time of ground contact. Consequently, we were interested in understanding how overall limb posture related to the configuration of the joints at contact. Surprisingly, the variation in initial limb posture related only to the initial knee angle. The hip and ankle were consistently more extended at contact following the perturbation than during level running (Hip, P=0.014; Ankle, P<0.001; Fig. 6, left panel). However, this did not differ among the different U response modes. The TMP angle did not differ from control trials at the point of ground contact (Fig. 6D, left panel). In contrast, the knee sometimes flexed and sometimes extended following tissue break through, resulting in a variable joint angle at ground contact (Fig. 6B, left panel). The knee was the only joint that differed among the U response modes (P=0.008), landing in a significantly more extended position in Ecom mode (P=0.047) and a significantly more flexed position in KEv mode (P=0.006). Therefore, the variation in limb posture that distinguishes the different U response modes resulted from variation in knee angle at the time of ground contact (Fig. 9).
|
| Discussion |
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Control of running stability through a mass-spring template
To a large extent, the guinea fowl's response to the unexpected
H perturbation is consistent with the mass-spring model. Most
of the variation in limb loading can be explained by the effect of limb
contact angle on `leg spring' loading during stance
(Daley and Biewener, 2006
),
consistent with the theoretical running model proposed by Seyfarth and
colleagues (Seyfarth et al.,
2002
; Seyfarth et al.,
2003
). Likewise, the decrease in the magnitude of work done at
each joint with increasing
i
(Fig. 7) can be viewed as a
consequence of the inverse relationship between
i and
leg-spring loading.
Nonetheless, even during level running, the spring-like dynamics of the
whole body arise through a balance of positive and negative work among the
limb joints, rather than through actual elastic energy storage at each joint
(Fig. 6), although some elastic
storage occurs at the ankle and TMP during level running
(Daley and Biewener, 2003
).
Net energy production at the hip offsets energy absorption at distal joints
(Figs 6 and
7). This suggests that the
guinea fowl does not fully benefit from the efficiency of a truly elastic
system. However, the results are consistent with the idea that the mass-spring
model represents a true control target of the neuromechanical system (e.g.
Ferris and Farley, 1997
;
Ferris et al., 1999
;
Moritz and Farley, 2004
). By
controlling the limb around a mass-spring control template (e.g.
Full and Koditschek, 1999
;
Koditschek et al., 2004
), the
bird might simplify neuromuscular control by reducing the complexity of the
system to a few controllable limb parameters.
Stabilization at different energy states through posture-dependent limb actuation
When the limb moves away from its normal posture, the balance of energy
among the joints is altered, and the limb produces or absorbs net energy. This
posture-dependent limb actuation appears to relate to initial knee angle
(Fig. 9). When the limb
contacts the ground with an extended knee, resulting in a lower limb contact
angle (
i) and longer initial relative length
(Li/Lt), the distal joints (ankle and
TMP) act as dampers (Ecom mode, Figs
6 and
8). This shifts the energy
balance among the joints, resulting in net energy absorption, and the bird
does not accelerate as a result of the energy gained from the perturbation. In
contrast, when the limb contacts the ground with a flexed knee, resulting in a
higher
i and shorter
Li/Lt, the distal joints act as
springs (KEh mode, Figs
6 and
8). Consequently, the net limb
work is positive, and the bird accelerates. Thus, depending on the limb
posture at contact, the bird either absorbs energy and stabilizes at the
original velocity, or accelerates and stabilizes at a higher velocity. A
mass-spring system can achieve stable running at many different periodic
trajectories (Taga et al.,
1991
; Full et al.,
2002
; Koditschek et al.,
2004
). Posture-dependent actuation of the guinea fowl's limb
provides a simple mechanism for switching among stable periodic trajectories
with different energies (i.e. different COM height and/or velocity). This
allows rapid control of limb posture and forward velocity when running over
rough terrain.
Neuromuscular control of limb function during running
The neuromuscular mechanisms used to coordinate steady running influence
the mechanical response when the limb's interaction with the ground suddenly
changes. A muscle's mechanical performance depends on its activation pattern
as well as its intrinsic mechanical environment, due to the nonlinear
contractile properties of muscle tissue (reviewed by
Josephson, 1999
;
Marsh, 1999
). A muscle's
activation timing and intensity depends on a combination of rhythmic,
feedforward control, proprioceptive feedback (reviewed by
Grillner, 1975
;
Pearson et al., 1998
;
Pearson, 2000
). Additionally,
muscletendon architecture influences a muscle's sensitivity to
intrinsic mechanical effects (e.g. Brown
and Loeb, 2000
; Alexander,
2002
), which likely influences how it is controlled by the nervous
system. The relative contribution of feedforward, reflex feedback and
intrinsic mechanical control to muscle performance is not well established,
even for steady forward locomotion.
Due to the complex interaction between neural and intrinsic mechanical
factors in muscle performance, it is likely that there is an inherent link
between a muscle's architecture and the neural control strategy used to
activate it. In vivo muscle performance during level and incline
treadmill running suggest a proximo-distal gradient in muscle mechanical
function (Roberts et al.,
1997
; Biewener,
1998a
; Gillis and Biewener,
2002
; Daley and Biewener,
2003
; Gillis et al.,
2005
). Distal hindlimb muscles tend to have a distinct
muscletendon architecture with short muscle fibers and long tendons
(Biewener, 1998b
). This
architecture favors economical force generation and elastic energy savings,
whereas long-fibered proximal muscles modulate limb and body work
(Biewener and Roberts, 2000
).
Inherently linked with this morphological and functional gradient, we
hypothesize that limb muscles are coordinated through a proximo-distal
gradient in neuromechanical control. In this control gradient, proximal
hindlimb muscles are under greater feedforward control, driven by spinal motor
circuits, and relatively insensitive to changes in loading during stance. In
contrast, distal muscles undergo more rapid, higher gain proprioceptive
feedback regulation and experience greater intrinsic mechanical effects on
performance. The distal limb segments are the first to interact with the
ground, allowing them to receive rapid proprioceptive feedback. The short
fibers of distal muscles might be particularly sensitive to intrinsic changes
in forcelength performance following a perturbation, due to the
nonlinear contractile properties of muscle tissue (reviewed by
Josephson, 1999
;
Marsh, 1999
). Additionally,
due to their long tendons, tendon elasticity will have a greater impact on the
dynamics of distal muscle contraction
(Biewener and Roberts, 2000
;
Alexander, 2002
;
Roberts, 2002
), possibly
further enhancing intrinsic mechanical effects. Finally, distal muscles act
upon smaller limb segments with lower inertia, likely making distal joints
relatively susceptible to intrinsic mechanical changes in response to
perturbations. These mechanical properties of distal muscles might cause them
to exhibit more rapid and pronounced changes in mechanical performance
following a perturbation compared to proximal muscles. Because distal muscles
likely experience shorter mechanical time delays in their response to a
perturbation, the nervous system could operate them with a higher
proprioceptive feedback gain. Based on these observations, we predict a
proximo-distal gradient in motor control that is tightly coupled to the
morphological and functional gradient of limb muscles.
The joint mechanics following the unexpected perturbation are consistent
with the proposed proximo-distal gradient in joint neuromechanical control.
Limb retraction remains largely unchanged in response to the unexpected
break-through perturbation (Fig.
4). The hip primarily controls limb retraction, maintaining a
similar movement pattern and work performance in C and U trials
(Fig. 6). This suggests that
the hip extensors are activated primarily in a feedforward manner and
relatively insensitive to limb loading. This result is consistent with
previous work that suggests that activity of some stance phase muscles is
maintained until the hip reaches a certain angle (reviewed by
Grillner, 1975
;
Pearson et al., 1998
).
In contrast, distal joint mechanics exhibit greater load dependence, which
suggests higher proprioceptive feedback gain and greater sensitivity to
intrinsic mechanical factors. Like the hip, the ankle is more extended at
contact (Fig. 6), suggesting
that ankle extensors are also activated in a feedforward manner. However, the
extension of the ankle at the beginning of stance is a reversal of its normal
motion, and the work performance of the ankle switches between spring-like and
energy absorbing, depending on limb posture at contact
(Fig. 6). This suggests that
ankle extensor force-length performance depends on how the limb is loaded
during stance. Recent evidence suggests that positive force feedback through
Golgi tendon organs plays an important role in the regulation muscle activity
for weight support during stance
(Gorassini et al., 1994
;
Hiebert et al., 1994
;
Donelan and Pearson, 2004
).
The observed pattern of early ankle extension followed by spring-like action
is consistent with a combination of feedforward activation in anticipation of
stance followed by proprioceptive feedback regulation of activation level over
the course of stance.
The TMP angle at the start of ground contact is not altered in response to
the perturbation (Fig. 6),
suggesting that the activation of TMP extensors (i.e. the digital flexors) is
highly load dependent. As the most distal muscles, the digital flexors are
likely to be the first muscles to sense a change in the interaction between
the limb and ground. Consequently, they might respond rapidly to
proprioceptive feedback. Additionally, the performance of these distal muscles
may be particularly sensitive to intrinsic mechanical factors such as length,
velocity, strain history and gearing. In an in vivo study of muscle
performance, the guinea fowl digital flexor muscle exhibited substantial
changes in work that were not associated with altered electromyographic
intensity or duration (Daley and Biewener,
2003
). Instead, differences in muscle strain in relation to
activation pattern influence the digital flexors mechanical performance,
suggesting that `preflexes' (Brown and
Loeb, 2000
) are an important component of control for this muscle.
This warrants further study to evaluate how proprioceptive feedback and
intrinsic mechanical effects interact to provide rapid and robust control of
these important distal muscles.
The knee exhibits variable motion that sets the overall limb configuration and substantially influences limb mechanics (Fig. 9). Yet, it contributes little work itself because it flexes under low moments and remains relatively stationary at higher moments (Fig. 6). The close alignment of the knee to the COM likely allows this joint to reorient the distal limb without substantially altering the torques it must resist during stance (Figs 6, 9). The variable motion at the knee joint likely reflects altered force balance among the multi-articular muscles that cross it. Some of this variation might result from differences in loading during the tissue break-through phase of the perturbation (due to variation in breaking force of the tissue, for example). Although the tissue forces were quite small, they could elicit proprioceptive feedback that would alter subsequent muscle activation. The hip and ankle extensors might respond differently to variation in loading during the tissue break-through phase, due to different proprioceptive feedback gain or intrinsic mechanical sensitivity. If so, their force balance would be altered, leading to altered knee kinematics and limb configuration. Unfortunately, in the current experiment we were unable to measure the forces exerted on the tissue during the perturbation, so we are unable to fully investigate this issue.
Conclusions
The limb and joint mechanics following an unexpected drop in substrate
height suggest a proximo-distal gradient in neuromechanical control in which
(1) hip extensors are controlled in a largely feedforward manner and
insensitive to load, (2) ankle extensors and digital flexors are highly load
dependent due to higher proprioceptive feedback gain and sensitivity to
intrinsic mechanical effects and (3) knee posture reflects the force balance
among proximal and distal extensor muscles. Under this control strategy, limb
cycling remains constant, but limb posture, loading and energy performance are
interdependent. The proposed proximo-distal gradient in motor control could
explain the observed posture-dependent work performance of the limb, which
likely improves running stability by allowing rapid adjustment of limb posture
and forward velocity when running over rough terrain.
List of symbols and abbreviations
Elimb

lseg, the sum of leg
segment lengths

i
| Acknowledgments |
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