2013. Vol.4, No.3, 143-152
Published Online March 2013 in SciRes (
Copyright © 2013 SciRes. 143
Schedule of Growing Skills II: Pilot Study of an Alternative
Scoring Method
Margiad E. Williams1, Judy Hutchings1, Tracey Bywater2, David Daley3,
Christopher J. Whitaker4
1Centre for Evidence-Based Early Intervention, Bangor University, Bangor, UK
2Institute for Effective Education, University of York, York, UK
3School of Community Health Science, Queens Medical Centre, University of Nottingham, Nottingham, UK
4North Wales Organization for Randomised Controlled Trials in Health & Social Care, Bangor University,
Bangor, UK
Received November 26th, 2012; revised January 5th, 2013; accepted February 6th, 2013
The accurate early identification of developmental delay in young children is important. The aim of this
study was to highlight and propose a solution to problems associated with scoring a UK developmental
screening tool known as the Schedule of Growing Skills II. Potential problems associated with the sensi-
tivity of this screening tool were identified. As a possible solution to this problem, an alternative scoring
method was developed to yield a developmental quotient. A pilot investigation of the new scoring method
was conducted through comparisons with the Griffiths Mental Development Scales. Forty-three children
aged 0 - 5 years were recruited and administered both developmental assessments. Results from both as-
sessments were compared to examine validity. Both the new and published scoring methods showed good
concurrent validity, however the new scoring method demonstrated better criterion-related validity in
terms of higher sensitivity, comparable specificity, generally higher over-referrals, and lower un-
der-referrals. The Schedule of Growing Skills II could be a valid, cost-effective way of screening for de-
velopmental delay in young children using this new, more sensitive scoring method.
Keywords: Screening; Child Development; Developmental Delay; Early Intervention
The Need for Developmental Screening
The term developmental delay is used to identify children
that are significantly delayed in meeting developmental mile-
stones in two or more developmental domains, with “signifi-
cantly” indicating a performance of two or more standard de-
viations below the norm (MacDonald & Rennie, 2011). These
developmental domains include motor, language, social, and
academic skills. Developmental delay in children is a major
problem worldwide with an estimated prevalence rate of 3%
(MacDonald & Rennie, 2011). In the UK, 3% of school-aged
children are identified as having a special education need asso-
ciated with either a learning difficulty or an autistic spectrum
disorder (National Statistics, 2012). Large numbers of children
with mild or moderate learning difficulties are not detected
before they enter school, despite the implementation of child
health surveillance services (Mackrides & Ryherd, 2011; Ham-
ilton, 2006). Early detection is important because studies have
shown the substantial benefits that early intervention can offer
children with varying disabilities (Camilli, Vargas, Ryan, &
Barnett, 2010; Anderson et al., 2003).
The Use of Screening Measures
Screening tools are designed to be inexpensive, quick and
easy to use to provide a snapshot that enables the identification
of children needing a more thorough assessment. Some screen-
ing tools require the direct observation of a child’s skills in
conjunction with parental report, such as the Battelle Develop-
mental Inventory (BDI; Newborg, Stock, Wnek et al., 1984),
whilst others rely solely on parental report (Ages and Stages
Questionnaire [ASQ]; Squires, Potter, & Bricker, 1999). Pa-
rental reports of child development have been shown to be one
effective method of assessment for developmental delay (Glas-
coe, 2000; Regalado & Halfon, 2001; Sices, Stancin, Kirchner
et al., 2009) and have also been shown to be considerably less
expensive than developmental assessments (Hamilton, 2006).
In the UK, developmental screening is undertaken by health
visitors as part of the Healthy Child Programme (HCP). The
HCP provides a series of child health reviews, immunizations,
screening tests, and advice and support to parents to ensure that
children get the best start in life. It is the core health service for
protecting, promoting, and improving the health and well-being
of children (Department of Health, 2009). When a child is aged
between 24 and 30 months, a health visitor may conduct a de-
velopmental check using an appropriate screening tool. The
most commonly used screening tools in use in the UK are the
Denver Developmental Screening Tool (DDST; Frankenberg,
Fabdal, Sciarillo et al., 1981) and the Schedule of Growing
Skills II (SGS II; Bellman, Lingam, & Auckett, 2008; Hall &
Elliman, 2006). Such tools are considered second-level assess-
ments within the HCP in that they are only administered to
those children that have already been identified as potentially at
risk using other means, e.g. by parent-report measures such as
the ASQ (Squires et al., 1999) and the Parents Evaluations of
Developmental Status (PEDS; Glascoe, 1997). If children are
identified by the second-level assessment as potentially at risk
of developmental delay, then they are referred to a paediatrician
for a more rigorous assessment using a standardised develop-
mental assessment tool such as the Griffiths Mental Develop-
ment Scales (GMDS; Griffiths, 1954, 1970).
Problems with Screening Tools
Screening is not error free but it should be as accurate as pos-
sible in order to minimise both over- and under-referrals. Some
widely used screening tools, such as the DDST (Frankenburg et
al., 1981) have low detection rates (Sonnander, 2000; Glascoe,
2005). Consequently, in 2006, the American Academy for Pe-
diatrics (AAP) published recommended psychometric criteria
that all developmental screening tools should meet. Specifically
screening tools must have sensitivity and specificity levels of at
least .70 (AAP, 2006; Hamilton, 2006). Sensitivity is the pro-
portion of correctly identified children in need of further as-
sessment, whilst specificity is the proportion of correctly iden-
tified children that are developing typically (Glascoe, 2005).
The ASQ, a widely used screening tool, has shown sensitivity
and specificity levels of .72 and .86 respectively (Squires et al.,
1999), whilst the PEDS has shown sensitivity levels ranging .74
- .80 and specificity levels between .70 and .80 (Glascoe, 1997).
Getting the right trade-off between sensitivity and specificity
levels means that both over- and under-referral rates are mini-
mised, which reduces the number of children incorrectly identi-
fied as either delayed (over-referral) or developing typically
(under-referral). Other important characteristics for accurate
screening tools are established reliability, established validity,
standardisation using a large national sample, and the identifi-
cation of an appropriate cut-off point (Glascoe, 2005; Son-
nander, 2000).
The Schedule of Growing Skills (SGS)
The SGS II is based on Mary Sheridan’s STYCAR se-
quences (Sheridan, 1975) and was originally developed for use
in the National Childhood Encephalopathy Study (NCES) in
the late 1970s. The NCES tool was designed for use with chil-
dren aged between two and 36 months. Validity of the NCES
tool was established by comparison with the GMDS (Griffiths,
1954, 1970), one of the few developmental assessments stan-
dardised in the UK. The NCES tool showed good concurrent
validity and reliability in the form of highly significant correla-
tions. Sensitivity levels ranged from .44 - .82 whilst specificity
levels ranged from .94 - 1.0 depending on the developmental
domain (Bellman, Rawson, Wadsworth et al., 1985).
Following completion of the NCES, modifications were done
to make the tool simpler to use and to extend the age range to
cover children from birth to five years old and its name was
changed to the SGS. Since validity and reliability had already
been established for the birth to three years age range, addi-
tional validity/reliability checks were only conducted for the
three to five years age range. Comparisons were again carried
out with the GMDS and both reliability and validity results
were statistically significant (Bellman, Lingam, & Auckett,
1996) however no sensitivity/specificity calculations were con-
In 1996, the authors of the SGS revised the tool and con-
ducted a standardisation in the UK. Some items were reworded,
added, or removed and the developmental order of some was
changed. A cognitive skills domain was also added to aid in the
identification of children with cognitive deficits. Completed
items related to cognitive skill, which are highlighted on the
record form, are added together to give a cognitive skill score.
The standardisation was conducted in England and Wales with
a total of 348 children. A range of different analyses were con-
ducted to examine item order, test reliability, and test validity.
The revised SGS (SGS II) showed high levels of reliability,
significant intercorrelations, and good concurrent and construct
validity when compared to the DDST (Bellman et al., 1996).
Age norms from the standardisation sample were also calcu-
lated and used to create the SGS II profile form which presents
the age norms for each skill area. Again, no sensitivity/ speci-
ficity calculations were conducted.
The SGS II was designed to be a quick and easy tool for the
developmental screening of children aged from birth to five
years. It takes approximately 20 - 30 minutes for a full assess-
ment, however since it is being used as a second-level assess-
ment tool in the HCP, administration of individual subscales
takes only a few minutes. It requires only a short course of
training to use. Scoring consists of taking the score for the
highest item for each subscale and transferring this score to the
SGS II profile form. The child’s chronological age (CA) is then
added to the profile form. If the child performs within one age
band of their CA, they are classed as developing typically.
However, if their performance is two or more age bands below
their CA, they are categorised as having possible developmen-
tal delay indicating the need for further assessment.
Problems with the SGS II
One of the main problems with the SGS II is the breadth of
age bands on the profile form. The profile form consists of
two-month screening developmental windows during the first
year of life, but by age 18 months the developmental windows
have increased to six months, and by age 36 months they have
increased to 12-months wide. As a result, it may not be sensi-
tive to developmental change as children grow older particu-
larly since scores have to be two age bands below to be deemed
as evidence of developmental delay. It also means that the de-
velopmental status of children across time, or ones of different
ages, cannot be accurately compared and contrasted. This
problem has been found before with a different screening tool
known as the Battelle Developmental Inventory (BDI; New-
borg et al., 1984). Boyd (1989) noted that normative data for
the first 24 months on the BDI was presented in six-month
groups and thereafter, the groups increased to 12 months. This
resulted in age-related discontinuities whereby a difference of
only a few days could result in a child having an average score
one day and a score indicative of developmental delay the next
(Boyd, 1989).
Another problem concerns the validity data for the SGS II
which could potentially be flawed; performance on the SGS II
was compared to performance on the DDST (Frankenberg et al.,
1981), which has been shown to have low sensitivity levels
(Sonnander, 2000; Glascoe, 2005), and a very small sample size
was used (n = 15 for construct validity and n = 11 for concur-
rent validity; Bellman et al., 1996).
The Development of a Developmental Quotient (DQ)
To attempt to solve the problem associated with scoring the
Copyright © 2013 SciRes.
SGS II, the second author devised a developmental quotient
(DQ) score based on individual items that the child has com-
pleted and not the developmental windows or the highest item
completed. DQs were first used by Arnold Gesell to score the
Gesell Developmental Schedules (Gesell & Amatruda, 1947)
and are considered an index of the current rate of development.
Many subsequent developmental assessments were based on
the extensive work of Arnold Gesell and have utilized DQs as a
way of scoring and interpreting child developmental assess-
ments (e.g. Griffiths, 1954; Bayley, 1969; Sheridan, 1975).
When scoring the SGS II using the new scoring method, the
number of successfully completed items is calculated for each
skill area and this score is then converted into a developmental
age (DA) score using a scoring sheet designed by the second
author. The DQ for each skill area is then calculated as a ratio
of the DA divided by the chronological age (CA) multiplied by
100. This method would avoid the problems associated with the
current interpretation guidance based on the existing profile
Aims and Hypotheses
The aims of this paper were to highlight problems associated
with the SGS II and to pilot an alternative scoring method. The
validity of both the new and published scoring methods was
compared to see whether one shows better validity than the
The study hypothesis is that the new SGS II scoring method
will show better validity than the published scoring method in
terms of consistently high sensitivity and specificity levels
(ideally above .70) and low over- and under-referral rates.
The inclusion criterion for this study was that the children
were between birth and five years old since this is the age range
of the SGS II. Children were excluded from the study if they
were older than five years or if the time frame between each
assessment was longer than one week. A total of 43 children
were recruited from nurseries and nursery schools across North
Wales. Due to limited time and resources, it was only possible
to recruit a very small sample of children to undertake the study.
Participants were administered the SGS II and the GMDS, re-
spectively, at the home visit. A total of 39 (91%) of the sample
completed both developmental assessments. Three were ex-
cluded on the basis of the time frame between assessments
being considerably longer than one week, and one was ex-
cluded because they did not complete the GMDS assessment.
The children had a mean age of 31 months (SD 11.78) with a
range of nine - 52 months, and 24 (61%) of the sample were
male. Two had been referred to a paediatrician due to existing
developmental difficulties. All were Caucasian, 24 (62%) spoke
Welsh as their first language, and 28 (72%) lived in a rural area.
Some of the children showed patterns of developmental delay,
according to the GMDS. Six (15%) showed delays in locomo-
tor skills, three (8%) displayed delays in personal-social skills,
five (13%) showed delays in language skills, and three (8%)
displayed delays in fine motor skills (see Table 1 for demo-
Table 1.
Demographic characteristics of the sample.
Demographics n %
Male 24 61.5
Female 15 38.5
0-24 months 13 33.3
25-52 months 26 66.7
Caucasian 39 100
Urban 11 28.2
Rural 28 71.8
First Language
Welsh 24 61.5
English 15 38.5
Present at visit
Mother 39 100
Developmental delaya
Locomotor 6 15.4
Personal-Social 3 7.7
Language 5 12.8
Fine motor 3 7.7
Note: aDevelopmental delay identified by Griffiths Mental Development Scales.
Schedule of Growing Skills II (SGS II; Bellman et al., 2008)
The SGS II is a developmental screening tool used to assess
the developmental trajectories of children from birth to five
years of age. It comprises ten different skill areas: passive pos-
tural (e.g. “Braces shoulders and pulls self up”), active postural
(e.g. “Pulls self to stand”), locomotor (e.g. “Walks tiptoe”),
manipulative (e.g. “Tower of 4 to 6 bricks”), visual (e.g. “Rec-
ognizes details of Picture Book”), hearing and language (e.g.
“Follows a two-step command”), speech and language (e.g.
“Names familiar objects and pictures”), interactive (e.g. “Shares
toys”), self-care (e.g. “Eats skillfully with spoon”), and addi-
tional skills (e.g. “Respects the property of others”). A cogni-
tive skills score can also be computed by adding the highlighted
cognitive skill items together (e.g. “Matches all 10 colour cards”)
to give a cognitive skill score, however this subscale was not
used in the current study. The SGS II was designed to be quick
and easy to use, with administration time being approximately
20 - 30 minutes for a full assessment or shorter for a single
domain assessment. A manual is provided with instructions for
administering each item. Since it does not need intensive train-
ing to use, it can be used by child practitioners of varying levels
of experience, including health visitors and other individuals
working within a Sure Start/Flying Start Centre. A Sure
Copyright © 2013 SciRes. 145
Start/Flying Start Centre provide advice and support for parents
and carers and ensure that children receive the full range of
services available to them from birth to five years of age.
Psychometric Properties
The SGS II was standardised in the UK in 1996 (Bellman,
Lingam, & Aukett, 1996). It showed good reliability levels with
an average Cronbach alpha level of .91 for internal consistency.
Concurrent validity was examined using case studies of chil-
dren with diagnoses and construct validity was examined by
comparing the SGS II to the DDST (Frankenberg et al., 1981).
However, as mentioned earlier, the validity results could be
considered flawed since the DDST (Frankenberg et al., 1981)
has been shown to under-detect children with developmental
delay (Sonnander, 2000; Glascoe, 2005) and the sample size
was very small (n = 11 for concurrent validity and n = 15 for
construct validity; Bellman et al., 1996). There is no published
data concerning the sensitivity and specificity of the SGS II.
Griffiths Mental De velopment Scale s (GMDS; Griffi ths, 1954,
The GMDS is a standardised tool that is used to measure the
development of infants and children between birth and eight
years in two versions. The birth to two years version comprises
five subscales; locomotor (e.g. “Walks alone”), personal-social
(e.g. “Uses spoon well”), language (e.g. “Uses 12 words”),
eye-hand coordination (e.g. “Tower of 4 bricks”), and perform-
ance subscales (e.g. “Can open screw toy”). The two to eight
years version has an additional practical reasoning subscale,
however this subscale was not used in the current study. The
scales are administered using a kit of standardised equipment
and specific instructions. Administration time varies from 30
minutes to one and a half hours, depending on the age of the
child being assessed. It requires a five-day extensive training to
use and its use is limited to psychologists and paediatricians.
The GMDS is widely used in countries including Australia,
South Africa, Portugal, America and Hong Kong (Huntley,
Psychometric Properties
The GMDS is the only developmental assessment standard-
ised in the UK. The birth to 24 months version was first stan-
dardised in the 1950s and then re-standardised in 1996 (Huntley,
1996), whilst the 24 months to eight years version was first
standardised in the 1970s and then re-standardised in 2006
(Luiz et al., 2006). Average internal consistency for the birth to
24 months version subscales have been found to be .95 (Hunt-
ley, 1996) whilst Cronbach alpha coefficients for the 24 months
to eight years version all exceed .70 with the average being .99
(Luiz et al., 2006). Validity information for the birth to 24
months version is not provided in the manual. For the 24
months to eight years version a facet analysis was conducted to
examine the content validity of the subscales. The contents
were found to be representative of their respective content do-
main and each item had a satisfactory degree of relevance to the
construct being measured (Luiz et al., 2006).
Nursery/Nursery School Visits
Following Bangor University School of Psychology ethical
approval, a total of 12 nurseries and eight nursery schools
within the counties of Anglesey and Gwynedd in North Wales
were contacted to ask if they would be willing to help with
parent engagement for the research. Their participation in the
research involved staff giving out information packs, containing
the information sheet and a cover letter explaining the study, to
eligible parents. The cover letter specified whom parents should
contact if they were interested in participating in the study.
Referred Children
Paediatricians in the local area were contacted via letter to
ask if they were using the GMDS and if they would be willing
to collaborate on the research. One paediatrician replied and
was contacted to arrange a convenient time for SGS II assess-
ments to take place. Two children had been referred to the pae-
diatrician for GMDS assessments because of existing develop-
mental difficulties. NHS ethics approval was given for sharing
of the GMDS data and permission to administer the SGS II to
both children.
Home Visit Procedure
The first author, a postgraduate student who had received
training to use both the GMDS and the SGS II, conducted all
the home visits. Families were visited in their home on two
separate occasions. During the first home visit, parents were
asked if they had read the information sheet and whether they
had any questions regarding the study. If satisfied with the in-
formation and willing to participate, they were asked to read
and sign a consent form. The SGS II was then administered to
the child participant. Administering the GMDS first could have
led to a bias in the parents’ answers on the parent-report items
of the SGS II because the parent had already observed the child
performing these items on the GMDS assessment.
The second home visit was completed within one week of the
first visit. During the second visit, the GMDS was adminis-
tered to the child participant. Parents were given the option of
receiving a summary report of their child’s performance fol-
lowing the second visit. This report was based on the GMDS
assessment and was checked by the second author, a Consultant
Clinical Psychologist. Parents were paid £20 at the end of the
second home visit for their participation.
Statistical Analyses
Each developmental tool was scored and developmental de-
lay classified according to their manual. For the GMDS, a child
was classified as having a delay if they had a DQ score below
85. For the published SGS II scoring method, the manual states
that a child should be referred for further assessment if their
score is two or more age bands below their CA on the profile
form. For the new SGS II method, three different scores were
used as the cut-off point for developmental delay, namely a DQ
of less than 90, 85, or 80, to explore which cut-off point gives
the most accurate results.
Statistical analyses were undertaken using SPSS version 17.0
(SPSS Inc., Chicago, IL, USA). Initial analyses determined the
most accurate cut-off point for the new SGS II scoring method
using Receiver Operating Characteristic (ROC) curves based on
sensitivity and specificity levels. Previous studies have used
this method to determine appropriate cut-off points for devel-
opmental screening tools (e.g. Meisels, Henderson, Liaw et al.,
1993; Squires, Bricker, & Potter, 1997; Squires, Bricker, Heo et
al., 2001). Concurrent validity was determined by correlating
Copyright © 2013 SciRes.
Copyright © 2013 SciRes. 147
developmental ages (DA) generated by each tool. Criterion-
related validity was examined using 2 × 2 contingency tables to
determine the concordance between classifications and by cal-
culating sensitivity, specificity, over- and under-referral rates
(see Figure 1). A Kappa coefficient was also calculated.
Subscale Comparisons
On the SGS II, the assessment of language is split into two
skill areas, one for assessing receptive language (hearing and
language) and one for assessing expressive language (speech
and language). For this study, these two language skill areas
were combined for comparisons with the GMDS language sub-
scale since this subscale assesses both expressive and receptive
language. Also, the assessment of personal-social skills on the
SGS II is split into two skill areas, namely the interactive skill
area and the self-care skill area. These were also combined in
this study for comparison with the GMDS. The manipulative
skills area and the visual skills area were combined on the SGS
II, and for the GMDS the eye-hand coordination and perform-
ance subscales were combined. In the present analysis the
composite skill is named fine motor development. The com-
bining of subscales was undertaken to facilitate better corre-
spondence between tools as recommended in the SGS II man-
ual (Bellman et al., 1996). For the SGS II locomotor subscale,
both the passive postural and active postural skill areas were
combined with the locomotor skill area for comparison with the
GMDS locomotor subscale. Figure 1.
Contingency table and formulas for calculating criterion-related validity.
SGS II = Schedule of Growing Skills II.
36-month age band, the language delay is picked up. Similarly,
the SGS II only picks up a speech delay for the second and
third child on the 30-month age but picks up various develop-
mental difficulties when placed on the 36-month age band.
These results highlight the insensitivity of the profile form.
Age-Relat ed Disconti nuities
Table 2 shows the scores of three children within the sample
who were identified by the GMDS as being significantly de-
layed (DQ < 70). The first child had been referred to a speech
and language therapist for severe speech problems; the second
and third children were the children that had been referred to a
paediatrician for various developmental difficulties, including
locomotor, language, and personal-social problems. According
to the SGS II manual, developmental delay is represented by
performing two age bands below their CA, and because the
children are not yet 36 months, their scores should be placed on
the 30 months age band on the profile form. The numbers in the
table represent the number of age bands above/below the
child’s CA on the profile form.
Concurrent Validity
Before commencing the data analysis, the four subscales (lo-
comotor, language, personal-social, and fine motor) were as-
sessed for normality for each measure. The Shapiro-Wilk test
showed that three of the four SGS II and one of the four GMDS
subscales were not normally distributed (p < .05), therefore
non-parametric tests were used. Concurrent validity of both the
published and new SGS II scoring methods was determined by
correlations with the GMDS. DA for both SGS II scoring
methods were correlated with DA generated by the GMDS
using Spearman’s rho. The results are displayed in Table 3.
When the children’s scores are placed on the 30-month age
band, the SGS II fails to identify any developmental delay for
the first child, however when the scores are placed on the
Table 2.
Age-related discontinuities associated with the SGS II profile form.
CA Age band Loco-motorManipulative Visual Hearing & language Speech & language Interactive Self-care
35 30 0 0 +1 1 1 0 +2
36 1 1 0 2 2 1 +1
33 30 1 0 +2 1 3 0 2
36 2 1 +1 2 4 1 1
34 30 1 0 +2 1 3 0 1
36 2 1 +1 2 4 1 2
ote: CA = chronological age; SGS II = Schedule of Growing Skills II.
Table 3.
Correlations between developmental ages for each domain.
Locomotor .955*
p < .001
p < .001
Personal-social .950*
p < .001
p < .001
Language .964*
p < .001
p < .001
Fine motor .935*
p < .001
p < .001
Note: GMDS = Griffiths Mental Development Scales; SGS II = Schedule of
Growing Skills II. *p < .006 (Bonferroni correction).
A Bonferroni correction was applied to the alpha level be-
cause eight correlation coefficients were tested so that the alpha
level was set at = .006. The correlation analyses show highly
significant results for both SGS II scoring methods with all
correlations being significant at p < .001.
Establishing a Cut-Off Point
Before exploring the criterion-related validity of the two SGS
II scoring methods, it was necessary to explore which DQ
cut-off was the most accurate for the new scoring method. ROC
curves were generated to examine the relationship between
sensitivity levels and specificity levels. The true-positive rate
(sensitivity) is plotted against the false-positive rate (100-
specificity) for different cut-offs. The area under the curve
(AUC) is a measure of test accuracy. An AUC of .5 represents
an unreliable test whilst an AUC of 1 represents a perfectly
reliable test. Three cut-off points were used in this analysis,
namely DQ < 90, DQ < 85, and DQ < 80. The GMDS was used
as the standardised assessment. ROC curves were generated by
age-bands for each cut-off point across all developmental areas.
Table 4 shows the mean results from this analysis.
The ROC results show that the most accurate cut-off point
for the new method of scoring the SGS II at 0 - 24 months is a
DQ < 80. This cut-off gives the maximum specificity and sen-
sitivity levels. For the 25 - 52 months age-band, the most accu-
rate cut-off point is a DQ < 85. This is the only cut-off point
showing acceptable sensitivity/specificity levels (both more
than .70). For the remainder of the analyses, the new SGS II
cut-off of DQ < 80 for 0 - 24 month old children and DQ < 85
for children older than 24 months will be used.
Criterion-Related Validity
Despite the correlations being highly significant for both
SGS II scoring methods, some argue that correlation coeffi-
cients can be misleading (Altman & Bland, 1983; Bland &
Altman, 1986). Consequently, another type of validity was
calculated known as criterion-related validity. Sensitivity, spe-
cificity, over-referral rates, under-referral rates, and kappa co-
efficients are shown in Table 5.
No data was computed for the personal-social domain in the
0 - 24 months age-band because there were no children identi-
fied as having a delay in this domain. In the 0 - 24 months
age-band, the new DQ scoring method shows very high levels
Table 4.
Mean ROC analysis results.
Age-bands DQ cut-offAUC Sensitivity Specificity
0 - 24 months <90 .68 .73 .63
<85 .73 .73 .73
<80 .77 .73 .80
25 - 52 months <90 .80 .95 .65
<85 .79 .78 .80
<80 .79 .68 .91
Note: ROC = Receiver Operating Characteristic.
of specificity and sensitivity with equally high kappa levels.
The published scoring method shows equally high specificity
levels but poor sensitivity levels with two of the four compari-
sons not identifying any of the delayed children. In the 25 - 52
months age-band, the new DQ scoring method again shows
high specificity levels (with the exception of the locomotor
domain), good sensitivity and moderate kappa levels. The pub-
lished scoring method fails to identify any children with delay
on three of the four comparisons but has high specificity levels.
The first aim of this paper was to highlight problems associ-
ated with an extensively used British screening tool known as
the SGS II. Similar to the first version of the BDI (Newborg et
al., 1984), this study shows age-related discontinuities associ-
ated with the SGS II profile form. The performance of children
nearing their third birthday would normally be compared to the
performance of 30-month old children instead of 36 months old,
however this study shows that this means that developmental
delay is missed and therefore those children would not be re-
ferred for further assessment. These results highlight the insen-
sitivity of the profile form and the need to review its diagnostic
usefulness. Previous studies examining this phenomenon (e.g.
Boyd, 1989) suggest that instead of normative data, age-
equivalent scores or similar may be more stable. This is why
the second author developed a new scoring method that yields a
DQ score to examine whether the SGS II could be made more
sensitive to change.
The second aim of this paper was to pilot an alternative scor-
ing method. It was hypothesised that the new DQ scoring
method would demonstrate increased validity (both concurrent
and criterion-related) compared to the published scoring
method. Performance on the SGS II was compared to perform-
ance on a standardised developmental assessment tool (the
GMDS). The overall findings show that both scoring methods
show comparable concurrent validity, however the new DQ
scoring method has better criterion-related validity when com-
pared to the GMDS. The results support the study hypothesis.
The first analysis aimed to establish whether both scoring
methods have good concurrent validity when compared to the
GMDS. Correlation coefficients were calculated using DA and
a Bonferroni correction to control for multiple comparisons.
The results showed that both scoring methods showed highly
significant correlations with all comparisons being significant
at p < .001.
Copyright © 2013 SciRes.
Table 5.
Criterion-related validity of SGS II vs. GMDS.
Age-bands SGS II scoring Developmental area Sensitivity Specificity Over-referral % Under-referral % Kappa (p)
0 - 24 months New DQ < 80 Locomotor .67 1.0 0 8 .755 (.005)
Personal-Social - - - - -
Language 1.0 1.0 0 0 1.00 (.000)
Fine motor 1.0 1.0 0 0 1.00 (.000)
Published Locomotor .33 1.0 0 15 .435 (.057)
Personal-Social - - - - -
Language 0 .92 0 8 -
n = 13
Fine motor 0 .92 0 8 -
25 - 52 months New DQ < 85 Locomotor 1.0 .35 58 0 .110 (.220)
Personal-Social .67 .88 0 4 .780 (.000)
Language .75 .91 8 4 .598 (.002)
Fine motor .50 .83 15 4 .198 (.250)
Published Locomotor 0 .88 0 12 -
Personal-Social 0 .88 0 12 -
Language .25 1.0 0 12 .361 (.017)
n = 26
Fine motor 0 1.0 0 8 -
Note: - = data not computed due to no children being identified with developmental delay; SGS II = Schedule of Growing Skills II; GMDS = Griffiths Mental Develop-
ment Scales.
The second analysis aimed to establish which cut-off score
should be used for the newly developed DQ scoring method
using ROC curves. This data was split into two age bands,
namely children aged 0 - 24 months and children aged 25 - 52
months. The results show that the best cut-off for 0 - 24 month
children is a DQ < 80 since this cut-off shows the best sensitiv-
ity/specificity trade-off. For 25 - 52 month children, a DQ < 85
was the most accurate cut-off.
The third analysis conducted explored whether the scoring
methods showed good criterion-related validity. For this analy-
sis, the data was again split into two age bands. For the 0 - 24
month sample, the new DQ scoring method showed consis-
tently higher sensitivity, comparable specificity, lower over-
referral rates, and lower under-referral rates. Kappa levels were
also consistently higher and statistically significant for the new
DQ scoring method. For the 25 - 52 month sample, the new DQ
scoring method again showed higher sensitivity, comparable
specificity, higher over-referral rates, and lower under-referral
rates. Kappa levels were variable but still tended to be higher
for the new DQ scoring method. The variability within the
kappa levels was due to over- and under-referrals within the
data. The kappa statistic does not take these levels into account
and should be interpreted with caution (Altman, 1991).
In 2006, the AAP published guidelines on the recommended
sensitivity and specificity levels for accurate screening. They
recommend sensitivity/specificity levels of at least .70 to ensure
minimum over- and under-referrals. None of the subscale com-
parisons for the published SGS II scoring method showed ac-
ceptable sensitivity/specificity levels across both age bands.
Results for the new DQ scoring method varied across age bands.
Sensitivity/specificity levels for the new DQ scoring method
within the 0 - 24 month age band were high with two of the
four showing acceptable levels. For the 25 - 52 month age band,
only the language subscale showed acceptable levels. One rea-
son why the levels for some subscales were not within accept-
able levels could be because the sample was very small, with
only 8% - 15% of the sample with a developmental delay in any
one domain according to the GMDS (see Table 1).
The new SGS II scoring method generally had higher
over-referral rates than the published scoring method giving
increased sensitivity and lower specificity levels. The potential
cost of high over-referral rates include the unnecessary repeated
assessments with more rigorous assessment tools, and the un-
necessary cost of increasing parental anxiety since parents are
told their child may have a developmental delay when in fact
they’re developing typically (Meisels et al., 1993). However,
the cost of over-referrals has been shown to be substantially
less than the cost of under-referrals for both the child and soci-
ety, with the cost of under-referrals being an estimated 100
times more than over-referrals (Barnett & Escobar, 1990). Ad-
ditionally, Glascoe (2001) found that children with false-posi-
tive scores (or those that had been over-referred) perform sig-
nificantly lower than those children with true-negative scores
(those correctly identified as developing typically), and that
these children might benefit from early intervention, therefore a
high false-positive (or over-referral) rate is acceptable. The
published scoring method had higher under-referral rates than
the new method; the long-term consequences of this could be
Copyright © 2013 SciRes. 149
potentially damaging to some children who would not be iden-
tified for early intervention, and may therefore develop secon-
dary problems such as poor school performance (Anderson et
al., 2003; Campbell & Ramey, 1994). There is also the issue of
the cost of under-referrals to parents when a parent is told that
their child is developing typically and in no need of further
assessment. When their child shows increasing difficulties with
everyday tasks or at school and is re-assessed, most likely fol-
lowing a considerable time delay, the parent is likely to feel
angry or disappointed with the health system when told that
their child does have a developmental delay (Meisels, 1988).
Firstly, a very small sample was used in this study (n = 39)
with the age band analyses being even smaller (n = 13 for 0 -
24 months; n = 26 for 25 - 52 months). Within the sample, only
8% - 15% had an identifiable developmental delay according to
the GMDS. This could have affected the sensitivity/specificity
levels and the ROC analysis results since small sample sizes
may yield less precise estimates of overall diagnostic accuracy
(Bachmann, Puhan, ter Riet, & Bossuyt, 2006). Also, the sam-
ple consisted of only Caucasian children who were predomi-
nantly Welsh speaking (61.5%). A larger, more diverse sample
should determine whether the new DQ scoring method has
consistently higher validity than the published scoring method,
and whether sensitivity/specificity reach the AAP (2006) rec-
ommended levels.
Secondly, the first author who collected all of the data for the
study was trained in both the SGS II and GMDS. As mentioned
previously, the GMDS is only licensed for use by paediatricians
and psychologists and requires a rigorous five-day training that
includes sessions on child development and the development of
skills to identify specific special needs that testers may come
across if using the GMDS in a clinic setting (e.g. Cerebral Palsy;
Autism; speech & language difficulties). The SGS II, on the
other hand, only requires a one-day training, which does not
include detailed information about child development. Al-
though the SGS II is mainly used by health visitors who would
have knowledge about child development, anyone working with
children can complete the training. It is possible that training in
the use of the GMDS may have positively influenced the way
the researcher administered the SGS II due to more knowledge
about child development than some users of the SGS II. The
findings justify further research examining whether more
knowledge regarding child development can influence the abil-
ity of the person undertaking the assessment to use and interpret
screening results.
Lastly, this study does not include reliability data. The
time-scale and lack of resources meant that data regarding reli-
ability could not be collected. Future studies should examine
the reliability of both the published SGS II scoring method and
this newly developed DQ scoring method to determine whether
one is more reliable than the other.
The implications of this study are potentially important as the
SGS II is extensively used in the UK as part of the HCP. Re-
cent Government reports recommend that all children aged 24 -
36 months should undergo a developmental check by a health
visitor by increasing the coverage of the HCP to become uni-
versal (Tickell, 2011; Allen, 2011; Field, 2010). Additionally,
the SGS II is being used universally as the outcome measure for
an evaluation of the Flying Start Early Intervention Project
across Wales which has, to date, generated data on up to 14,000
children (Welsh Government, 2009). Based on these prelimi-
nary findings, the new DQ scoring method would allow health
visitors to more accurately identify those children with devel-
opmental needs than by using the published scoring method.
This would lead to more children being identified swiftly and,
if appropriate, getting additional required support rather than
being offered support later in life when it would probably be
more expensive and less effective (Allen & Duncan-Smith,
2008). The new DQ scoring method shows consistently higher
sensitivity levels than the published method, which is very im-
portant considering that the SGS II is used as a second-level
assessment within the HCP. The new scoring method would
also make the SGS II more acceptable and useable in research
practice since using a DQ score means that you can compare
performances across time and across different ages.
Another implication of this study is the importance of exam-
ining different aspects of validity. Many studies exploring the
validity of developmental tools have only examined concurrent
validity and, therefore, used correlation coefficients as their
main statistical test (e.g. Dixon, Badawi, French et al., 2009;
Gollenberg, Lynch, Jackson et al., 2010; Liao, Wang, Yao et al.,
2005). According to Altman and Bland (1983), using correla-
tion coefficients can be misleading since correlation coeffi-
cients do not sufficiently highlight the variability within the
data. This study is a perfect example of this. The concurrent
validity data showed that both SGS II scoring methods showed
highly significant correlations when compared to the GMDS.
Nevertheless, when examining the criterion-related validity, the
data shows that the published scoring method fails to correctly
identify children with developmental delay (low sensitivity)
when compared to the criterion measure (the GMDS). It is,
therefore, important to explore different types of validity to
ensure that the full picture is being taken into account.
In conclusion, this study aimed to highlight problems associ-
ated with a popular UK screening tool known as the SGS II and
to pilot a new scoring method. The results show promising
results in that both the published and new DQ scoring methods
show good concurrent validity, however the new DQ scoring
method shows better criterion-related validity in terms of con-
sistently higher sensitivity and comparable specificity levels
when compared to a standardised developmental assessment
(the GMDS). Caution should be taken when interpreting these
results due to the very small sample size. Based on the results
of this pilot study, it is worth the cost, time, and energy to con-
duct a larger investigation to validate this new scoring method,
which would be a useful addition to the SGS II screening tool.
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