Authors: David M. Andrews, Patricia L. Weir, and Brian D. Lowe
Observation-based posture assessment practices (PDF)
Posture is a significant risk factor for musculoskeletal disorders in the workplace and has been included in many observation-based assessment methods5, including Rapid Upper Limb Assessment (RULA)4 and 3DMatch (a posture matching tool for estimating three dimensional cumulative loading on the low back).2 However, it is often difficult to compare outputs from these methods because postures are not represented consistently within each method, in terms of the to quantify working postures or how they are recorded. Given the importance of posture as a risk factor for injury in the workplace, posture categories used in many observation-based assessment methods should be standardized with respect to objective criteria (e.g., how many errors are made using the method, how long the method takes to use). Therefore, the purposes of this position paper are to recommend standardized posture categories, based on research evidence, that minimize observer error and help practitioners optimize observation-based posture recording and analysis practices.
Recommendations
for
Standardized
Posture
Categories
Decisions
about
the
size
of
posture
categories
in
observation-based
methods
have
been
justified
based
on
subjective
criteria,
including
that
non-neutral
postures
place
workers
at
risk3,
and
on
muscle
force
and
fatigue
criteria4.
Posture
categories
of
45°
in
size
have
been
commonly
used,
as
this
angle
is
believed
to
be
easily
distinguishable
by
observers.
Others
have
divided
the
range
of
motion
into
large,
relatively
equal
sized
categories.
However,
this
does
not
address
differences
in
ranges
of
motion
at
different
joints
(e.g.,
shoulder
vs.
wrist),
or
consider
the
number
and
size
of
errors
observers
make
when
selecting
postures6.
An objective way of determining the optimal posture category size for an observation-based posture assessment tool is to determine where the tradeoff is between the number of errors an observer makes and the size of the errors when errors are made. This approach has been used recently for the trunk, shoulder and elbow6. Selecting a posture category size larger than the optimal was shown to result in fewer posture errors, but these errors were larger in size. Conversely, selecting a posture category size smaller than the optimal resulted in reduced error size when an error was made, but increased the number of errors. Based on these findings, and those related to decision time for posture category selection1, it is recommended that the following optimal posture category sizes (and numbers of categories) (Table 1) be used for the trunk, shoulder and elbow in observation-based posture assessment methods.
Segment/View | TRFL | TRLB | SHFL | SHAB | ELFL |
---|---|---|---|---|---|
Category size | 30o | 15o | 30o | 30o | 30o |
No. of categories | 4 | 3 | 5 | 5 | 4 |
Recommendations
for
Optimizing
Posture
Recording
and
Analysis
Practices
The
quality
and
accuracy
of
posture
observations
depends
on
recording
and
analysis
practices.
Observer
training
should
be
a
primary
consideration
prior
to
recording
and
analyzing
work
postures
using
any
method.
The
following
recommendations
provide
a
basic,
practical
guide
for
recording
and
analyzing
work
postures
using
observation-based
approaches.
View:
Tasks
performed
similarly
by
both
sides
of
the
body
or
that
occur
mostly
in
one
direction,
may
only
require
a
single
camera
view
to
capture
an
accurate
sample
of
working
postures.
Asymmetrical
tasks
will
likely
require
more
views.
For
symmetrical
tasks,
views
that
are
perpendicular
to
the
main
direction
of
movement
provide
valuable
information.
Some
analysis
methods
allow
for
multiple
views
from
one
or
more
cameras
to
be
analyzed2,
which
can
help
when
assessing
asymmetrical
tasks
or
tasks
where
a
body
segment
is
obscured
by
an
object
or
by
the
worker’s
own
body.
Lighting
and
Contrast:
The
amount
of
light
and
visual
contrast
between
the
worker
and
their
environment
can
affect
real-time
and
deferred
posture
observations,
but
will
likely
impact
video-based
approaches
most.
If
a
worker
moves
between
environments,
lighting
conditions
and
contrast
may
change
considerably;
portable
lighting
(on
a
tripod
or
camera
mounted)
can
be
used
to
improve
viewing
conditions.
Camera
Movement,
Stability
and
Framing:
Observation-based
posture
assessment
methods
such
as
RULA4
or
3DMatch2
require
observers
to
select
posture
categories
that
correspond
to
the
actual
body
postures
seen
in
real-time4
or
via
previously
recorded
video2,4.
These
approaches
also
allow
observers
to
move
around
in
order
to
obtain
an
optimal
view.
However,
posture
analysis
accuracy
can
be
affected
by
unstable
camera
views.
A
tripod
can
be
used
to
ensure
a
stable
camera
view,
but
if
the
worker
moves
out
of
camera
view,
the
operator
will
likely
need
to
move
as
well.
Using
a
monopod
or
solid
surfaces
within
the
work
space
to
rest
the
camera
can
help
reduce
the
impact
of
camera
shake
and
improve
image
quality.
Framing
the
body
segments
of
interest
fully
in
the
camera
view
is
helpful.
When
one
is
unable
to
get
as
close
to
a
worker
as
needed
to
fill
the
frame,
using
the
zoom
function
on
the
camera
from
a
safe
distance
away
is
recommended.
Observation
Duration:
For
repetitive
work,
observing
only
a
few
cycles
of
the
task
is
likely
necessary.
Similarly,
if
you
are
evaluating
the
peak
or
heaviest
instant
of
a
task,
only
a
few
frames
may
need
to
be
analyzed.
For
variable
or
non-repetitive
tasks
or
when
you
are
evaluating
a
worker’s
postures
over
an
extended
time,
you
should
observe
a
representative
sample
of
what
they
do.
More
variable
tasks
require
more
observations
to
obtain
a
representative
sample
of
the
worker’s
postures.
Conclusion
While many observation-based posture assessment methods exist, the lack of standardization makes it difficult to compare them. Determining the optimal trade-off between the size of the observer error and the likelihood of making an error is an objective way of quantifying the optimal posture category size. Using the optimal category sizes and/or method reported here, in addition to sound recording practices, will help to improve the consistency of findings from observation-based posture assessment tools, and help practitioners make accurate assessments of MSD risk in the workplace.
Key messages
- Observation-based posture assessment methods are widely used for quantifying risk factors during work, helping to inform job design decisions, and establishing safe work limits
- Many of these methods are not standardized in terms of the categories used to quantify working postures, or how postures are recorded
- Determining the optimal trade-off between the size of the observer error and the likelihood of making an error is an objective way of quantifying the optimal posture category size minimizing observer error and helping practitioners optimize observation-based posture recording and analysis practices
Implications for the prevention of MSD
By using observation-based tools and recording and analysis practices which are supported by research evidence, practitioners can accurately identify and quantify MSD risk factors, such as posture, when addressing worker health and safety issues. Strategies can then be devised and implemented that are specifically aimed at reducing and preventing MSDs associated with poor working postures.
References
- Andrews, D.M., Holmes, A.M., Weir, P.L., Arnold, T.A., & Callaghan, J.P. (2008). Decision times and errors increase when classifying trunk postures near posture bin boundaries. Theoretical Issues in Ergonomics Science, 9(5), 425-440.
- Callaghan, J.P., Jackson, J., Albert, W.J., Andrews, D.M., & Potvin, J.R. (2003). The design and preliminary validation of ‘3DMatch’ – a posture matching tool for estimating three dimensional cumulative loading on the low back. Proceedings of XXIV Association of Canadian Ergonomists (ACE) Conference, London.
- Keyserling, W.M. (1986). Postural analysis of the trunk and shoulders in simulated real time. Ergonomics, 29(4)569-583.
- McAtamney, L., & Corlett, E.N. (1993). RULA: A survey method for the investigation of work-related upper limb disorders. Applied Ergonomics, 24(2), 91-99.
- Takala, E-P., Pehkonen, I., Forsman, M., Hansson, G-A, Mathiassen, S.E., Neumann, W.P., Sjogaard, G., Veiersted, K.B., Westgaard, R.H., & Winkel, J. (2010). Systematic evaluation of observational methods assessing biomechanical exposures at work. Scandinavian Journal of Work Environment and Health, 36(1), 3-24.
- van Wyk, P.M., Weir, P.L., Andrews, D.M., Fiedler, K., & Callaghan, J.P. (2009). Determining the optimal size for posture categories used in posture assessment methods. Ergonomics, 52(8), 921-930.
Last updated: 2016
Disclaimer: Position papers are funded by the Centre of Research Expertise for the Prevention of Musculoskeletal Disorders, which receives funding through a grant provided by the Ontario Ministry of Labour. The views expressed are those of the authors and do not necessarily reflectthose of the Centre nor of the Province.