Title: A learning rate parameter
1Longitudinal twin study of early literacy and
language Brian Byrne University of New
England with Richard Olson, Stefan Samuelsson,
Sally Wadsworth, Robin Corley, John C. Defries.
Erik Willcutt
2Why study twins?
- Monozygotic (MZ) twins share 100 of all their
genes - Dizygotic (DZ) twins share 50 of their
segregating genes (genes that make us different)
on average - MZ and DZ pairs reared together have similar
shared environment in the home and school
3Why study twins (cont)?
- Therefore, for traits that are substantially
heritable, MZ twins will be very similar to each
other and more alike than DZ twins - For traits that are substantially influenced by
early (shared) environment, MZ and DZ twins will
be highly and equally similar
4Concordance rates for schizophrenia
- MZ twins 48
- DZ twins 17
- First degree (e.g., sibling) 9
- Second degree (e.g., aunt) 4
5Correlations for intelligence
- MZ twins .85
- DZ twins .60
- First degree .45
- Second degree .30
6Structure of project
- Downward extension of existing reading studies to
preschool-aged children - Sites in Colorado, Australia, Norway and Sweden
- Four test occasions
- Preschool
- Kindergarten
- Grade 1
- Grade 2
- To date, approx 1700 children included
7Aims
- To model genetic, shared environment, and unique
environment effects on known foundations for
literacy growth, prior to complicating influences
of literacy levels themselves (ie, prior to
formal literacy instruction) - To trace these effects longitudinally as children
develop in literacy
8Twins seen in homes or pre-schools prior to
kindergarten
Note Each child assessed by a different tester
9Twins typically tested at home after kindergarten
year
10And again after first grade
11With a final assessment after second grade
12Some of the preschool test categories
- Phonological analysis and synthesis (PA)
- Print familiarity (PR)
- General verbal ability (GVA)
- Vocabulary (VOC)
- Morphology/syntax (GRAM)
- Working memory (WM)
- Rapid naming (RN)
13Sample twin correlations (composites)
- MZ DZ
- PA .79 .55
- RN .68 .40
- PR .87 .77
- GVA .85 .68
14Results of Mx modeling on preschool variables as
latent traits
Phonological awareness
Working memory
Rapid naming
15Results of Mx modeling on preschool variables as
latent traits (cont.)
Print knowledge
Vocabulary
Grammar/ morphology
16Summary of univariate preschool
- Phonological awareness, rapid naming, and working
memory show substantial genetic effects and
modest shared-environment effects - Print familiarity, vocabulary, and
morphology/syntax show substantial
shared-environment effects and modest genetic
effects
17Univariate analysis (the story so far)
- MZ twins
- Twin 1 Twin 2
- X X
- X X
- . .
- . .
- DZ twins
- Twin 1 Twin 2
- X X
- X X
- . .
- . .
If correlation for MZ twins is higher than for DZ
twins, evidence for genetic influence on Variable
X
18Multivariate analysis (new part of story)
- MZ twins
- Twin 1 Twin 2
- X Y
- X Y
- . .
- . .
- DZ twins
- Twin 1 Twin 2
- X Y
- X Y
- . .
- . .
- If correlation for MZ twins is higher than for DZ
twins, evidence for genetic influence that is
common to Variable X and Variable Y - Y can be a different variable or the same
variable at a different time
19Multivariate analyses
- Thus, goal is to identify whether genetic and
environmental sources influence more than one
variable - A commonly-used technique is Cholesky
decomposition - It is analogous to multiple regression where the
influence of a predictor on a dependent variable
is assessed after the influence of another
predictor is accounted for
20Cholesky decomposition ofpreschool latent
traits additive genetic effects
GVA
.64
A1
.45
PA
A2
.57
.35
RN
A3
.72
27
.20
PR
A4
.33
21Cholesky decomposition ofpreschool latent
traits shared-environment effects
GVA
.76
C1
.61
PA
C2
.23
.22
.28
RN
.58
.58
PR
22Cholesky decomposition ofpreschool latent
traits unique environment effects
GVA
.13
E1
.23
PA
.
.20
RN
PR
23Summary of multivariate preschool data
- A single genetic factor affects verbal ability,
phonological awareness, rapid naming, and print
familiarity - A second genetic factor affects phonological
awareness and print familiarity - Two additional genetic factors uniquely affect
rapid naming and print familiarity - Thus, each of the four latent traits is
genetically complex
24Summary of multivariate preschool data (cont.)
- In contrast to genetic influences, where four
factors affect the latent variables, only two
shared environment factors are in operation, each
affecting all or most latent traits
25Variables assessed after one year of formal
schooling (kindergarten)
- Word and nonword reading efficiency (TOWRE)
- Spelling (words and nonwords)
- Phonological awareness
- Rapid naming
- Grammar (TROG)
26Results of Mx modeling on kindergarten variables
as latent traits
27Results of Mx modeling on kindergarten variables
as latent traits (cont.)
28Summary of kindergarten univariate data
- Reading, phonological awareness, and rapid naming
show substantial genetic influence and modest
shared-environment effects - Spelling is equally affected by genes and shared
environment - Grammar is mainly affected by shared environment,
with modest genetic influence
29Cholesky decomposition ofkindergarten latent
traits additive genetic effects
PA
.81
A1
.34
RN
A2
.61
.59
.34
READ
A3
.51
.59
.29
SPELL
30Cholesky decomposition ofkindergarten latent
traits shared-environment effects
PA
.51
C1
.47
RN
.42
READ
.63
SPELL
31Cholesky decomposition ofkindergarten latent
traits unique environment effects
PA
.28
E1
.27
RN
E2
.43
.26
READ
.32
SPELL
32Summary of kindergarten multivariate data
- Reading and spelling are influenced by genes that
also affect phonological awareness and rapid
naming, and in addition by a third set of genes - A single shared-environment factor affects all
four kindergarten latent traits
33Longitudinal multivariate analyses
34Cholesky decomposition ofphonological awareness
development
PA1 preschool phonological awareness PA2
kindergarten phonological awareness
.
A1
PA1
.82
.56
C1
.65
A2
PA2
.55
35Where do the new genes for PA at kindergarten
come from?
- Possibly reciprocally from orthographic
processes, as implied by the position that there
is mutual influence between PA and orthography.
36To test this in our genetically sensitive design,
we entered kindergarten spelling prior to
kindergarten PA
PA1
A1
.79
.
.44
.63
A2
K spell
.61
.42
A3
PA2
NS
There is no genetic influence on PA2 that is
independent of the genetic influence on K spelling
37Cholesky decomposition ofrapid naming development
RN1 preschool rapid naming--colours,
objects RN2 kindergarten rapid naming--colours,
letters, digits
.
A1
RN1
E1
.79
.46
.13
.59
A2
E2
RN2
53
.47
38Summary of developmental data for two single
variables
- Phonological awareness and rapid naming both show
both genetic continuity and genetic change across
the period of development that we have tracked.
In the case of PA, the second genetic source may
be genetic influence on orthographic processes.
In the case of RN, the change may be due to
introduction of letters and digits in kindergarten
39Cholesky decomposition ofmultivariate
preschool-kindergarten development additive
genetic effects
PR1
.47
A1
preschool
.61
PA1
A2
.50
.41
RN1
A2
A3
.58
.
.72
A4
READ
.41
kindergarten
significance uncertain with current sample size
40Cholesky decomposition ofmultivariate
preschool-kindergarten development shared
environment effects
PR1
.85
C1
preschool
.52
C2
PA1
.28
.40
.24
RN1
.
.31
kindergarten
READ
41Cholesky decomposition ofmultivariate
preschool-kindergarten development unique
environment effects
PR1
.23
E1
preschool
.16
PA1
E3
.40
RN1
.
.15
kindergarten
READ
42Summary of developmental multivariate data
- A single set of genes influences preschool PA, RN
and PRINT and kindergarten READ - A second genetic factor affects PA but not RN or
READ - A third genetic factor affects RN but not READ
- Thus, PA and RN only share genetic variance with
READ through genes shared with PRINT
43Summary of developmental multivariate data (cont)
- A shared-environment factor affects preschool PA,
RN and PRINT and kindergarten READ - A second preschool factor affect PA and RN (only)
- There is no new shared environment factor
emerging in kindergarten
44Results of Mx modeling on Grade 1 literacy
variables as latent traits
45We see that word reading and reading
comprehension are both substantially affected by
genesbut, are they the same genes?
46Cholesky decomposition ofGrade 1 word reading
and reading comprehension
.
A1
word
E1
.91
.40
.27
.90
comp
47Another longitudinal analysis Cholesky
decomposition of kindergarten and Grade 1 word
reading
.
A1
kind.
C1
.82
.50
.77
E paths omitted modest effects at all three
possible paths
A2
Gd 1
.44
48Grade 1 summary
- Substantial genetic effects on word reading,
reading comprehension, and spelling in Grade 1 - Genetic effect on word reading accounts for all
of the genetic effect on reading comprehension
(Cholesky decomposition, plus genetic correlation
of .97) - New genes kick in for word reading in Grade 1
on top of those shared with kindergarten
49Grade 1 summary (cont)
- No reliable shared environment effects in
evidence at Grade 1 - Because our twins almost always share schools,
little evidence of a differentiating school
effect, therefore
50Summary and implications
- Reading is substantially affected by genes as
early as kindergarten - Most of these genes are in play prior to school,
influencing processes foundational for literacy
growth - Genes are beyond our control, therefore, we need
to pull on the environmental levers as
intelligently as possible
51Summary and implications 2
- There were no new shared environment effects on
reading in Kindergarten, and none were detectable
at all in Grade 1, in our sample - Twins almost always share schools, if not
teachers - Thus, schools may not be contributing to whatever
differential reading scores exist between schools - So public policy measures that penalise schools
for poor reading levels are misguided, perhaps by
around 180 degrees
52The future (funds permitting)
- Completion of existing cohorts (completion in
2009) - Extension to 4th grade
- More detailed comprehension measures
- More detailed print exposure measures (diary
methods?) - Data from other school subjects
- Integration with imagingfMRI, MEG?
53Acknowledgements
- Australian Research Council, Australian Twin
Registry, National Institute of Child Health and
Human Development, Stavanger University College
and Research Council of Norway, Swedish Research
Council, and our many testers, coordinators,
database managers and of course the twins and
their families
54Addendum
- So far we have focused on literacy
- What about spoken language in our data?
- Recall that there were modest but significant
genetic effects on grammar, morphology and
vocabulary - Where do they come from?
55An example
- of a test item from the TROG
56point to the boy the dog chases is big
57A hypothesis
- Genetic differences among 4-5 year-old children
on tests of grammar reflect performance rather
than competence factors, based on the
observation that the structures tested are
already present in the repertoires of normal
children of this age group
58Another hypothesis
- Genetic differences among 4-5 year-old children
in vocabulary derive from genetic differences in
ability to fix phonetic forms (as assessed by
nonword repetition)
59Cholesky decomposition of preschool working
memory, vocabulary and morph/syntax
A1
wm
.76
.51
voc
(No other genetic path close to significance)
.52
mor/syn
60Cholesky decomposition shared environment
effects (preschool)
C1
wm
.63
.63
C2
voc
.58
.65
mor/syn
61Cholesky decomposition of preschool working
memory composite and vocabulary and kindergarten
TROG additive genetic effects
A1
wm
.78
.52
voc
(No other genetic path close to significance)
.40
TROG
62Cholesky decomposition shared environment
effects (Year 1)
C1
wm
.62
.64
C2
voc
.56
.24
.19
TROG
63Summary and implications
- A working memory composite accounts for all of
the genetic influence on our vocabulary and
morphology/syntax measures - Thus there is no evidence in our data for
independent genetic influence on higher
language functions - The shared environment picture is more complex,
with a second factor affecting vocabulary (and
TROG)
64Summary and implications (cont)
- We speculate that working memory influences
- vocabulary via fixation of phonetic form
- TROG via performance demands of test itself
- In any case, research into genes, environment and
language needs to be sensitive to complex nature
of language variables