| Literature DB >> 23432835 |
Bonnie Wing-Yin Chow1, Connie Suk-Han Ho2, Simpson Wai-Lap Wong3, Mary M Y Waye4, Dorothy V M Bishop5.
Abstract
This study considered how far nonverbal cognitive, language and reading abilities are affected by common genetic influences in a sample of 312 typically developing Chinese twin pairs aged from 3 to 11 years. Children were individually given tasks of Chinese word reading, receptive vocabulary, phonological memory, tone awareness, syllable and rhyme awareness, rapid automatized naming, morphological awareness and orthographic skills, and Raven's Colored Progressive Matrices. Factor analyses on the verbal tasks adjusted for age indicated two factors: Language as the first factor and Reading as the second factor. Univariate genetic analyses indicated that genetic influences were substantial for nonverbal cognitive ability and moderate for language and reading. Multivariate genetic analyses showed that nonverbal cognitive ability, language and reading were influenced by shared genetic origins, although there were specific genetic influences on verbal skills that were distinct from those on nonverbal cognitive ability. This study extends the Generalist Genes Hypothesis to Chinese language and reading skills, suggesting that the general effects of genes could be universal across languages.Entities:
Mesh:
Year: 2013 PMID: 23432835 PMCID: PMC3757317 DOI: 10.1111/desc.12022
Source DB: PubMed Journal: Dev Sci ISSN: 1363-755X
Age distribution of the participants
| Age | Frequency (Twin pairs) (Percentage in parentheses) |
|---|---|
| 3–4 | 17 (5.45%) |
| 4–5 | 57 (18.27%) |
| 5–6 | 58 (18.59%) |
| 6–7 | 43 (13.78%) |
| 7–8 | 47 (15.06%) |
| 8–9 | 49 (15.71%) |
| 9–10 | 21 (6.73%) |
| 10–11 | 20 (6.41%) |
| Total | 312 (100%) |
Rotated factor loadings of exploratory factor analysis with direct oblimin rotation on scores controlling for age
| Variables | Language | Reading |
|---|---|---|
| Receptive vocabulary | .06 | |
| Phonological memory | −.10 | |
| Tone awareness | −.11 | |
| Syllable and rhyme awareness | .28 | |
| Morphological awareness | .17 | |
| Word reading | .07 | |
| Rapid automatized naming | −.15 | |
| Orthographic skills | .17 |
Note. Factor loadings over .4 are bolded. N = 312.
Figure 1Univariate ACE model.
Twin correlations by zygosity and genetic model parameter estimates of measures controlling for age (95% confidence Intervals in parentheses)
| Variable | Twin correlations | ACE models | |||||
|---|---|---|---|---|---|---|---|
| MZ | DZ | a2 | c2 | e2 | |||
| Nonverbal Cognitive Ability | .71 | .37 | .70 (.61, .80) | .00 (.00, .00) | .30 (.26, .33) | 5.84 | .44 |
| Language | .80 | .65 | .32 (.15, .48) | .48 (.31, .66) | .20 (.17, .23) | 6.15 | .41 |
| Reading | .74 | .50 | .49 (.27, .72) | .25 (.03, .47) | .26 (.22, .29) | 1.53 | .96 |
Note. MZ = 210 to 227 pairs; DZ = 80 to 84 pairs. a2 = additive genetic variance; c2 = shared environment variance; e2 = nonshared environment variance; ∆χ and ∆df are the differences between the saturated and the ACE models.
Figure 2Cholesky decomposition model.
Standardized path coefficients from a Cholesky decomposition model of genetic (A); shared-environment (C); and nonshared-environment (E) influences on general cognitive ability, language and reading controlling for age (95% confidence intervals in parentheses)
| Variables | Paths | ||
|---|---|---|---|
| A1 | A2 | A3 | |
| Nonverbal Cognitive Ability | 0.76 (0.64,0.88) | ||
| Language | 0.44 (0.16,0.73) | 0.43 (0.11,0.75) | |
| Reading | 0.36 (0.20,0.52) | 0.14 (−0.15,0.42) | 0.45 (0.24,0.66) |
| C1 | C2 | C3 | |
| Nonverbal Cognitive Ability | 0.34 (0.11,0.58) | ||
| Language | 0.95 (0.70,1.19) | 0.26 (−0.40, 0.92) | |
| Reading | 0.03 (−0.42,0.47) | 0.39 (0.15,0.63) | 0.00 (−9.57,9.57) |
| E1 | E2 | E3 | |
| Nonverbal Cognitive Ability | 0.55 (0.50,0.60) | ||
| Language | 0.06 (−0.02,0.14) | 0.03 (−0.07,0.12) | |
| Reading | 0.35 (0.32,0.38) | −0.06 (−0.11,0.00) | 0.39 (0.36,0.43) |