| Literature DB >> 25282338 |
Benjamin T Crookston1, Renata Forste, Christine McClellan, Andreas Georgiadis, Tim B Heaton.
Abstract
BACKGROUND: There is a well-established link between various measures of socioeconomic status and the schooling achievement and cognition of children. However, less is known about how cognitive development is impacted by childhood improvements in growth, a common indicator of child nutritional status. This study examines the relationship between socioeconomic status and child growth and changes in cognitive achievement scores in adolescents from resource-poor settings.Entities:
Mesh:
Year: 2014 PMID: 25282338 PMCID: PMC4193389 DOI: 10.1186/1471-2431-14-253
Source DB: PubMed Journal: BMC Pediatr ISSN: 1471-2431 Impact factor: 2.125
Young lives study achievement tests [44]
| Test | Description |
|---|---|
|
| A mathematics test was administered in rounds 2 and 3 while a single multiplication item was used in round 1. Test items consisted of questions related to: addition, subtraction, multiplication, division, problem solving, measurement, data interpretation, and basic geometry. Psychometric characteristics of the mathematics scores were examined resulting in some score corrections from deletion of items with poor indicators of reliability and validity. |
|
| The Peabody Picture Vocabulary Test (PPVT), which uses stimulus words and accompanying pictures to test receptive vocabulary, has been used extensively to demonstrate correlation between the PPVT and cognitive and intellectual ability (Walker 2000; Walker 2005). The PPVT (204 items) was used in Ethiopia, India, and Vietnam while the Spanish PPVT (125 items) was used in Peru. Young Lives researchers in each country followed a standard process for adaptation and standardization of the PPVT. This was followed by a thorough analysis of psychometric properties to establish reliability and validity. |
|
| The Cloze test was developed to measure verbal skills and reading comprehension. Children were given 24 items that increased in difficulty. Each item consisted of a sentence or short paragraph that lacked one or more words. Children were asked to identify a word that completed the meaning of the sentence or paragraph. Similar to other tests, a process of adaptation and translation into the local language was conducted. Finally, psychometric characteristics were examined to establish reliability and validity of the test. |
Factor analysis for summary measures of adolescent reading, writing, and mathematics tests by round and country, Young Lives [44]
| Country | Measure | Factor score | Eigen value | N (listwise) |
|---|---|---|---|---|
| Ethiopia: Round 1 | Writing | .807 | 1.96 | 876 |
| Reading | .864 | |||
| Numeracy | .747 | |||
| Round 2 | Writing | .825 | 1.80 | 787 |
| Reading | .778 | |||
| Math | .718 | |||
| Round 3 | Cloze* | .893 | 1.60 | 832 |
| Math | .893 | |||
| India: Round 1 | Writing | .867 | 1.50 | 938 |
| Reading | .867 | |||
| Round 2 | PPVT** | .721 | 2.43 | 886 |
| Writing | .821 | |||
| Reading | .741 | |||
| Math | .828 | |||
| Round 3 | PPVT | .874 | 2.36 | 813 |
| Cloze | .895 | |||
| Math | .893 | |||
| Peru: Round 1 | Reading | .893 | 1.60 | 638 |
| Writing | .893 | |||
| Round 2 | Reading | .766 | 2.22 | 626 |
| Writing | .735 | |||
| Math | .697 | |||
| PPVT | .781 | |||
| Round 3 | PPVT | .889 | 2.29 | 655 |
| Cloze | .902 | |||
| Math | .831 | |||
| Vietnam: Round 1 | Writing | .940 | 1.77 | 966 |
| Reading | .940 | |||
| Round 2 | Writing | .665 | 854 | |
| Reading | .586 | |||
| PPVT | .738 | 1.90 | ||
| Math | .755 | |||
| Round 3 | PPVT | .801 | 2.08 | 927 |
| Cloze | .838 | |||
| Math | .860 |
Notes: *Cloze = reading comprehension test **PPVT = Peabody Picture Vocabulary Test. Factor analysis was used to develop a summary measure for each round and each country. Different sets of tests were used from year to year and country to country to achieve desirable psychometric properties (high factor loadings, high eigenvalues, and few missing cases). Standardized scores are used. Specific tests and psychometric properties used at each round are reported here.
Participant characteristics, Young Lives
| Peru N = 625 | Ethiopia N = 867 | India N = 936 | Vietnam N = 947 | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| R1 | R2 | R3 | R1 | R2 | R3 | R1 | R2 | R3 | R1 | R2 | R3 | |
| Sex (% male) | 53 | – | – | 51 | – | – | 49 | – | – | 50 | – | – |
| Same language as interviewer (% yes) | – | – | 87.0 | – | – | 88.2 | – | – | 82.9 | – | – | 74.4 |
| Both parents living in household (% yes) | 77 | – | – | 70 | – | – | 93 | – | – | 94 | – | – |
| Residence (% urban) | 74 | 60 | 77 | 35 | 40 | 42 | 24 | 25 | 25 | 19 | 20 | 20 |
| Household size | 5.7 | 5.6 | 5.4 | 6.5 | 6.5 | 6.4 | 5.5 | 5.2 | 6.1 | 4.9 | 4.9 | 5.4 |
| sd | 2.0 | 2.1 | 2.2 | 1.6 | ||||||||
| Father schooling (y) | 3.9 | – | – | 3.7 | – | – | 4.6 | – | – | 7.6 | – | – |
| sd | .9 | 4.0 | 4.8 | 3.7 | ||||||||
| Mother schooling (y) | 3.5 | – | – | 2.7 | – | – | 2.8 | – | – | 6.8 | – | – |
| sd | 1.5 | 3.5 | 3.9 | 3.8 | ||||||||
| Father schooling (% missing) | 20 | – | – | 6 | – | – | .5 | – | – | 3 | – | – |
| Birth order | 1.7 | – | – | 1.8 | – | – | 1.7 | – | – | 1.6 | – | – |
| sd | 1.0 | .8 | 1.0 | 1.0 | ||||||||
| Mother age | 34.0 | – | – | 34.1 | – | – | 30.6 | – | – | 34.4 | – | – |
| sd | 6.8 | 7.1 | 5.6 | 5.8 | ||||||||
| Wealth (deciles) | 4.6 | 5.2 | 5.9 | 2.2 | 3.0 | 3.5 | 4.1 | 4.7 | 5.2 | 4.5 | 5.2 | 6.0 |
| sd | 2.1 | 1.8 | 2.0 | 2.1 | ||||||||
| Height-for-age Z-score | -1.42 | -1.54 | -1.48 | -1.48 | -1.40 | -1.37 | -1.57 | -1.64 | -1.66 | -1.47 | -1.47 | -1.43 |
| sd | 1.03 | 1.28 | 1.29 | .99 | ||||||||
Notes: Data from a single round only (e.g., maternal and paternal schooling) were found to have little to no variation from round to round and were thus only represented once in subsequent regression models.
Multi-level linear regression models for children’s cognitive scores, Young Lives
| Vietnam | 95% CI | Ethiopia | 95% CI | Peru | 95% CI | India | 95% CI | |
|---|---|---|---|---|---|---|---|---|
|
| ||||||||
| Mother schooling | .059*** | .043 | .029** | .011 | .094*** | .046 | .045*** | .029 |
| .075 | .046 | .142 | .062 | |||||
| Father schooling | .049*** | .033 | .022** | .006 | .133*** | .065 | .030*** | .017 |
| .067 | .038 | .202 | .043 | |||||
| Father schooling missing | -.026 | -.310 | .224* | .002 | -.002 | -.240 | – | |
| .257 | .446 | .236 | ||||||
| Wealth | .045*** | .022 | .039** | .010 | .074*** | .048 | .048*** | .024 |
| .067 | .068 | .100 | .072 | |||||
| Height-for-age | .126*** | .086 | .099*** | .066 | .111*** | .053 | .039** | .010 |
| .166 | .132 | .148 | .068 | |||||
|
| ||||||||
| Child was male | -.100* | -.184 | .135** | .043 | -.037 | -.145 | .192*** | .097 |
| -.015 | .227 | .072 | .289 | |||||
| Both parents | .061 | -.205 | .003 | -.119 | -.126 | -.361 | .106 | -.135 |
| .327 | .124 | .110 | .347 | |||||
| Mother age | -.004 | -.012 | .007* | .000 | -.004 | -.013 | -.005 | -.014 |
| .003 | .014 | .005 | .004 | |||||
| Birth order | -.037 | -.082 | .054 | -.015 | .026 | -.034 | .034 | -.021 |
| .008 | .123 | .087 | .088 | |||||
| Urban | .076 | -.042 | .450*** | .332 | .135* | .022 | .034 | -.098 |
| .193 | .568 | .249 | .166 | |||||
| Same language | .338*** | .230 | .135 | -.011 | .221* | .017 | .198** | .049 |
| .446 | .280 | .426 | .348 | |||||
| Household size | -.059*** | -.086 | -.009 | -.030 | -.025* | -.047 | -.020* | -.040 |
| -.033 | .013 | -.002 | -.001 |
Notes: *p < 0.05 **< .01 ***.001. Multi-level linear models were used to examine change in cognitive development from 8 to 12 years associated with changes in child growth from 8 to 12 years, wealth at 8 years, and parental schooling at 8 years. Factor analysis was used to develop the summary cognitive measure for each round and each country (Tables 1 and 2). Standardized scores were used. Round is treated as level 1 while the individual is treated as level 2.
Figure 1Relative effects of socioeconomic status and child growth on cognition.