FROM:
European Spine Journal 2018 (Jun); 27 (6): 1324–1331 ~ FULL TEXT
Marco Monticone, Luca Frigau, Howard Vernon, Barbara Rocca, Francesco Mola
Department of Medical Sciences and Public Health,
University of Cagliari,
Cittadella Universitaria,
Strada Statale, 554 - Monserrato,
Cagliari, Italy.
marco.monticone@unica.it
PURPOSE: The NeckPix© is a simple and rapid means of measuring the beliefs of subjects with chronic neck pain concerning pain-related fears of a specific set of activities of daily living. The original version showed satisfactory psychometric properties. This observational study is aimed at evaluating its responsiveness and minimal important changes (MICs) in subjects with chronic neck pain.
METHODS: At the beginning, at the end of an 8-week rehabilitation programme as well as at the one-year follow-up, 153 subjects completed the NeckPix. After the programme and at follow-up, subjects and physiotherapists also completed the global perceived effect (GPE) scale, which was divided to produce a dichotomous outcome. Responsiveness was calculated by distribution [effect size (ES); standardised response mean (SRM)] and anchor-based methods [receiver-operating characteristics (ROC) curves; correlations between change scores of the NeckPix and GPEs]. ROC curves were also used to compute MICs.
RESULTS: The ES ranged from 0.95 to 1.26 and the SRM from 0.84 to 0.98 at post-treatment and follow-up based on subjects' and physiotherapists' perspective. The ROC analyses revealed AUCs of 0.89 and 0.97 at post-treatment and follow-up, respectively; MICs (sensitivity; specificity) were of 6 (0.82; 0.88) and 8 (0.80; 0.92) at post-treatment and of 8 (0.95; 0.90 based on subjects and 0.95; 0.92 based on physiotherapists perspective) at follow-up. The correlations between change scores of the NeckPix and global perceived effects (GPEs) ranged from -0.69 to -0.82.
CONCLUSIONS: The NeckPix was sensitive in detecting clinical changes in subjects with chronic neck pain undergoing rehabilitation. We recommend taking the minimal important changes (MICs) provided into account when assessing subjects' improvement or planning studies in this clinical context.
KEYWORDS: Chronic neck pain; Kinesiophobia; Minimal important changes; NeckPix; Responsiveness
From the FULL TEXT Article:
Introduction
Integrating the management of psychological factors, such
as fear of movement (i.e. kinesiophobia) to multidisciplinary
rehabilitation is recommended in subjects with chronic neck
pain (NP) to improve their course of disability, pain and
quality of life. [1–4]
Interestingly, it has been suggested that the presentation
of images of activities of daily living (ADL’s) that persons
might find stressful or consider difficult to perform can allow
a more in-depth investigation of the situations important to
each individual subject which they are avoiding during everyday
activities. [5] However, the number of image-based
instruments for assessing fear-avoidance-based activity limitations
is limited. [6–8]
Among these tools, the NeckPix© was published in 2015
as a simple and rapid means of measuring the beliefs of
subjects with chronic NP concerning pain-related fears of
a specific set of ADL’s. [8] This 10-item questionnaire was
originally developed in Italian using a process of item generation
and reduction/selection. The images did not require
translation, while the instructions and captions were adapted
also into English to facilitate its widest use: an Italian/English-
speaking investigator made the first translation, which
was back translated by another English-speaking investigator
(see supplementary material). In completing the Neck-
Pix©, subjects are asked to rate each picture from 0 (no fear)
to 10 (greatest fear) according to the question: How much
do you fear doing this activity would hurt your neck?, and
the scale total score (0–100) is expected to generalise to
a measure of activity-related kinesiophobia. The results of
the initial study identified one main cognitive-behavioural
component (explained variance: 71.12%; item-factor loadings:
0.786–0.921) and demonstrated satisfactory psychometric
properties (internal consistency: 0.954; reproducibility:
0.979; and validity: 0.455–0.759, moderately to highly
associated with related measures of fear-avoidance beliefs,
pain catastrophising, NP disability and pain intensity). The
developers did not find any floor or ceiling effects. [8] Additional
analyses involving item response theory might be of
interest as they have been already conducted for other cervical
tools. [9]
However, it is of importance to investigate additional
psychometric properties which make an important contribution
to individuals management and research in measuring
clinical change, such as responsiveness (i.e. the ability of
an instrument to detect changes in the construct to be measured
over time) and minimal important change (MIC, i.e. the
smallest change in score of the construct to be measured that
subjects perceive to be important). [10–12]
The aim of this study was to determine the responsiveness
and MICs of the NeckPix© in subjects with chronic
NP undergoing multidisciplinary rehabilitation using both
distribution-based and anchor-based methods mainly suggested
in the current literature and based on the ‘‘COnsensus-
based Standards for the selection of health status Measurement
INstruments’’ (COSMIN) [13, 14]; influences of
subjects and physiotherapists on responsiveness and MICs
were assessed.
Methods
This research was part of an observational study approved
by the Institutional Review Board of our Hospital (date of
approval: 22/12/2014). Subjects gave their written consent
to participate.
Subjects
Outpatients admitted to our Rehabilitation Unit were
enrolled between January 2015 and April 2015. The inclusion
criteria were: a diagnosis of chronic axial NP (i.e. a
documented history of pain lasting for more than 12 weeks),
a good understanding of Italian, and an adult age. The exclusion
criteria were acute (lasting up to 4 weeks) and subacute
axial NP (lasting up to 12 weeks), specific causes of
NP (e.g. disc herniation, canal stenosis, spinal deformity,
fracture, spondylolisthesis, or infections), and central or
peripheral neurological signs. Subjects with systemic illness,
cognitive impairment (MMSE of < 24), recent myocardial
infarctions, cerebrovascular events, or chronic renal diseases
were excluded. Case histories, cervical radiographs and, in
doubtful cases, Computed Tomography or Nuclear Magnetic
Resonance were used to confirm inclusion/exclusion criteria;
common degenerative changes, such as disc degeneration
or spondyloarthrosis, were not considered as exclusion
criteria. [15] Subjects who previously received cognitivebehavioural
therapy for their NP were also excluded. The
subjects’ sociodemographic and clinical characteristics were
investigated using a specific form.
Procedures and outcome measures
All of the participants were provided written information
concerning the questionnaires and procedures by two
research assistants. Those satisfying the entry criteria underwent
an eight-week outpatient rehabilitation programme that
included exercises aimed at improving postural control,
strengthening and stabilising the neck muscles, and stretching;
subjects also received cognitive-behavioural therapy
and education in ergonomic principles. This rehabilitation
programme was the same for all of the subjects and was
already tested for its efficacy. [16] Mild analgesics and nonsteroidal
anti-inflammatory drugs (NSAIDs) were permitted
during the study and an excessive use of medicines for pain
control (> 3 pills of any type per day) was checked.
The NeckPix© was administered to all of the subjects as
part of the pre-rehabilitation, post-rehabilitation and followup
assessment.
At the end of treatment (8 weeks) and one year before
follow-up, subjects’ and physiotherapists’ global perceived
effect (pGPE and phGPE, respectively) was evaluated using
the question, respectively: “Overall, how much did the treatment
you received help your fear of movement due to current
neck pain?” and “Overall, how much did the treatment you
delivered help your subject’s fear of movement due to her/
his current neck pain?”; the GPE was determined using a
five-level Likert scale with two improvement levels, one nochange
level and two worsening levels. [17]
The questionnaires were administered by secretarial
staff who checked them and returned any uncompleted part
for completion to minimise the rate of missing/multiple
responses. At follow-up, the subjects returned to the Institute
or were contacted by phone by the same secretaries to
complete the questionnaires.
Statistics
Responsiveness was determined using distribution and
anchor-based methods [12, 18]: the former included the
effect size (ES), also using Guyatt’s approach, and the
standardised response mean (SRM). The ES is a standardised
measure of change over time calculated on the whole
sample by dividing the difference between the pre- and
post-test scores by the pre-test standard deviation (SD); in
the case of Guyatt’s approach, the change computed on the
whole sample is divided by the pre-test SD calculated only
for stable subjects whose clinical status remained unchanged
(GPE = 3). The ES therefore represents individual change
in terms of the number of pre-test SDs, with values of 0.20,
0.50, and 0.80, respectively, representing small, moderate,
and large changes. The SRM (also referred to as the responsiveness-
treatment coefficient or efficacy index) is the ratio
between individual change and the SD of that change. It has
been suggested that SRM values of 0.20, 0.50, and 0.80,
respectively, represent small, moderate, and large changes.
As an anchor-based method, receiver-operating characteristic
(ROC) curves were selected, which are useful indicators
of the relationship between a measure and an external
indicator of change, such as the GPE. Subjects were dichotomized
into two groups based on GPE scores and considered
improved when the GPE score was equal to 1 and 2, and
stable when the GPE score was equal to 3. Responsiveness
is described in terms of sensitivity (the probability that
the measure correctly classifies subjects who demonstrate
change when an external criterion of clinical change is used)
and specificity (the probability that the measure correctly
classifies subjects who do not demonstrate change when the
external criterion is used). The sensitivity and specificity
of each value of change in the measure are calculated and
used to plot a ROC curve. The sensitivity values and falsepositive
rates (1-specificity) are plotted on the y and the x
axis of the curve, and the area under the curve (AUC) represents
the probability a measure correctly classifies subjects
as improved or unchanged. This area theoretically ranges
from 0.5 (no discriminating accuracy) to 1.0 (perfect accuracy),
and an AUC of at least 0.70 is considered to be acceptable. [17] The optimal cutoff point was computed using the
Youden index and taken as the MIC, which indicates the
change score associated with the least misclassification. [19]
The sample size required for the ROC analysis is about 50
subjects per dichotomized group. [19]
External responsiveness was also investigated by means
of correlation analyses with external criteria (GPE). [17]
Correlations between the pre–post treatment change
scores and the pre-treatment/follow-up in the NeckPix©
and the GPE scores were tested by estimating Spearman’s
rank order correlation coefficients (r < 0.30 = low;
0.30 < r < 0.60 = moderate; r > 0.60 = high. P < 0.05 was
considered statistically significant). [20]
Results
Subjects
Table 1
Table 2
|
188 subjects were invited to participate, of whom 17
(9.1%) refused. Of the 171 selected subjects, 18 dropped
out before starting the rehabilitation sessions because of
logistic problems [12], economic difficulties [4], or personal
problems. [3] The final study population consisted
of 153 subjects (101 females, 66%, and 52 males, 34%)
a mean age of 47.39 ± 15.98 years, a mean pain duration
of 20.68 ± 16.69 months and a mean body mass index of
23.05 ± 3.51 kg/m2. All of the sociodemographic characteristics
of the subjects are illustrated in Table 1.
Mean values (standard deviation) for the total at pre-treatment,
post-treatment and follow-up were of 57.1 (15.7), 42.3
(17.4) and 37.5 (17.0), respectively. Baseline, post-treatment
and follow-up scores for improved and stable subjects based
on pGPE and phGPE are reported in Table 2.
Procedures
The study procedures were well accepted by all of the subjects,
who did not raise any specific questions during the
instruction phase or the administration of the questionnaires;
no missing or multiple answers were found. None of
the procedures led to any problems and all of the subjects
completed the rehabilitation programme. No excessive use
of medicines to control pain was shown. No specific issues
were raised by the physiotherapists.
Psychometric properties
The dichotomisations based on the pGPE and phGPE are
shown in Table 3. Given the number of the subjects in each
group, the sample size was considered suitable for calculating
responsiveness.
Both at post-treatment and follow-up, subjects and physiotherapists
agreed on improvements, whereas the differences
in stable and worsen subjects were shown. The subjects
improved at post-treatment were the same retrieved at
follow-up, whereas stable and worsen subjects showed minor
changes based on pGPE and phGPE.
The results of the distribution-based and anchor-based
methods are reported in Table 4. The ES suggested that the
intervention needed large changes at post-treatment, both on
the pGPE and phGPE (0.95). A further improvement was
required at follow-up (1.26); and it was similar when the
Guyatt’s approach was adopted (0.87–1.20 and 0.84–1.23,
respectively). No differences in SRM were found at posttreatment
and follow-up (0.84 and 0.98, respectively) based
on pGPE and phGPE.
ROC analyses showed acceptable values of AUC, demonstrating
good abilities to discriminate between improved
and stable subjects at both post-treatment and follow-up
(see Fig. 1). However, sensitivity and specificity differed:
a higher specificity both at post-treatment and at follow-up
was found on phGPE, suggesting a slightly better capability
of identifying those who are actually stable; on the contrary,
a higher sensitivity at post-treatment was found on pGPE,
demonstrating a slightly better ability of identifying those
who actually improved.
At post-treatment, the best cutoff points were 6 based
on the pGPE and 8 based on the phGPE, and this means
that a pre–post treatment change of > 6 and > 8, respectively,
would have been considered as a clinically important
change. At follow-up, the MICs were 8 in both cases and this
means that a pre to follow-up change of > 8 would have been
considered a clinically important change.
To statistically compare the AUC of the ROC curves
based on pGPE and phGPE, we performed a DeLong’s test. [21] We could not reject the hypothesis that AUCs were
equal both at post-treatment and at follow-up, and consequently
they had equivalent responsiveness properties. On
the other hand, we could reject the hypothesis that the AUC
at post-treatment and follow-up were equal. Based on the
high number of females enrolled, we additionally performed
a number of ROC analyses adjusted for gender for each of
the possible circumstances (i.e. pGPE at post-treatment,
pGPE at follow-up, phGPE at post-treatment, and phGPE
at follow-up). Given the estimates found (p values ranging
from 0.46 to 0.88), we could not reject the null hypothesis
that gender had no effect on the ROC analysis.
Figure 2 shows the relative frequency distributions of the
change scores based on GPEs. The plots show the distributions
of stable and improved subjects, and the MICs for
pGPE and phGPE both at post-treatment and follow-up. At
post-treatment, both for pGPE and phGPE, it arises that the
distributions of stable and improved are considerably separated
in spite of some acceptable overlapping due to the wide
range of the scale. At follow-up, the overlapping is reduced,
allowing an even better distinction.
The correlations between change scores of the NeckPix©
and GPEs were high (0.69–0.82, see Table 4): their values
improved moving from post-treatment to follow-up, with
estimates based on pGPE higher than phGPE, both at posttreatment
and at follow-up.
Discussion
This paper describes the estimation of responsiveness and
the MICs of the NeckPix© questionnaire in a population
of subjects with chronic NP undergoing multidisciplinary
rehabilitation. Analysing the responsiveness and MIC of
an outcome measure is an ongoing process and is strongly
recommended to strengthen its psychometric properties and
expand its applicability. [14, 22] Different approaches have
been used to calculate responsiveness, but as yet, there is still
no consensus as to which method is the best. [18] Hence, in
this study, we used both distribution-based (ES, Guyatt ES,
and SRM) and anchor-based methods (ROC analysis).
Distribution-based methods showed large responsiveness
to the multidisciplinary rehabilitation programme at both
post-treatment and one-year follow-up, as well as based on
subjects’ or physiotherapists’ perspective. Other findings
were not available in previous researches and, therefore,
comparisons cannot be performed.
It has been recommended that distribution methods
should be used cautiously as they tend to measure the magnitude
of change scores rather than their validity. [22] When
a general measure of change in patient-reported outcomes
(PRO) such as the GPE is available and can be dichotomized
into representative groups of improved and stable subjects,
an anchor-based method such as ROC analysis is preferred
as the AUC measures the ability of an instrument to discriminate
between improved and stable subjects. [14]
The findings of this study showed that AUCs are always
≥ 0.89 at both post-treatment and at the one-year follow-up
as well as based on subjects’ or physiotherapists’ perspective
for the questionnaire under investigation. Again, no similar
findings were retrieved in the literature available and, therefore,
no comparisons can be made.
The optimal cutoff point estimated on the basis of ROC
analysis at the end of treatment was about 6 and 8 based
on subjects’ or physiotherapists’ perspective, respectively,
suggesting the need for a greater improvement in kinesiophobia
when an external judgment is advocated. Otherwise,
similar estimates (i.e. MIC = 8) were achieved at follow-up,
suggesting the need for a greater improvement in the fear
of movement as assessed by the NeckPix© to achieve the
clinical relevance and a perfect consistency at the end of the
study by subjects and physiotherapists.
The external responsiveness was also investigated by
means of correlation analyses with GPE, which reflect the
extent to which changes in a PRO measure over a specific
time relate to corresponding changes in an external standard,
defined as an accepted indication of change in the condition
of a subject. [13] We found that the pre–post treatment and
pre-follow-up changes in the measure under investigation
were –0.78 and –0.82 based on pGPE, and –0.69 and –0.77
on phGPE, correlated to the change in perceived effect, suggesting
that they are responsive to GPE score, being able to
predict changes in perceived treatment effect. Again, similar
findings were not available in previous researches and comparisons
cannot be conducted.
This study does have some limitations. First of all, the
NeckPix© might not have been responsive to worsening
outcomes as the subjects who were a “little worse”
or “worse” were excluded from the analyses. Second,
GPE was assessed using a five-point Likert scale, and
clinically important changes would probably have been
more discriminating if a seven-point scale had been used.
Third, the applicability of this study is limited to an Italian
population and similar studies are recommended in other
countries.
In future, it would be interesting to evaluate responsiveness
and MICs values of other scales measuring the same
construct in the same population, to allow a comparison in
terms of psychometrics performances and thus providing
clinical indications. Despite the validity of clinical test commonly
used in subjects with neck pain has not been firmly
established, it would be also interesting to compare our findings
with similar outputs deriving from tests to evaluate their
actual impact on the management of kinesiophobia. [23] As
recently reported [24], other psychological factors, such as
outcome expectancy, have shown acceptable capability in
predicting treatment success and it could be attractive to
further investigate its contribution in addition to an imagebased
instrument for fear-avoidance, such as the NeckPix©.
In conclusion, the findings of this study show that the
NeckPix© questionnaire is a responsive measure in subjects
with chronic NP undergoing multidisciplinary rehabilitation.
It is recommended taking these MIC estimates into
account when assessing improvement or planning clinical
studies on a similar sample.
Acknowledgements
The authors would like to thank all the patients
and the physiotherapists who took part in the study.
Conflict of interest
The authors declare that they have no conflict of interest.
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