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Epidemiology and Psychiatric Sciences logoLink to Epidemiology and Psychiatric Sciences
. 2020 Aug 13;29:e155. doi: 10.1017/S2045796020000700

Children's behavioural problems and its associations with socioeconomic position and early parenting environment: findings from the UK Millennium Cohort Study

K Tamura 1,, J Morrison 1, H Pikhart 1
PMCID: PMC7443775  PMID: 32787989

Abstract

Aims

To investigate behavioural problems throughout childhood and adolescent, and its relationship with socioeconomic position (SEP) and early parenting environment.

Methods

Using data from the Millennium Cohort Study conducted in the UK, behavioural problems of 14 452 children were analysed using a growth curve model. The children were followed from birth to adolescence, and their behavioural problems were measured by the Strengths and Difficulties Questionnaire (SDQ). The SDQ was sub-scaled into externalising and internalising problems. After assessing the general trajectory of children's behavioural problems, variables representing SEP and parenting environments were introduced to the model to analyse the association with children's outcomes.

Results

Overall, children's trajectories in externalising problems showed a decreasing trend while internalising problems increased as they aged. Household income and maternal education in early childhood were independently associated with children's behavioural problems, while the association for maternal occupation was significantly weaker. Positive early parenting environments attenuated the association between SEP and children's behavioural problems. Also, with regards to children's behavioural problems, positive parenting explained more variance between children compared to SEP. Favourable parent–child relationship buffered the income gradient in children's behavioural problems during early childhood, and although this buffering effect did not last until adolescence, those who had good parent–child relationships developed better outcomes regardless of their SEP.

Conclusions

The results of the study emphasise the importance of a positive early parenting environment for improving and reducing the socioeconomic gap in children's behavioural problems and encourages policies to promote better parenting circumstances.

Key words: Adolescence, child psychiatry, economic issues, families, social environment

Introduction

In 2017, one in eight (12.8%) 5–19 year olds in the UK met the criteria for a mental disorder, and the prevalence of these disorders has kept an upward trend since the late 1990s (Sadler et al., 2018). It has also been shown that half of all-time mental health issues start by age 14, underscoring the substantial importance of childhood and adolescent socioemotional behaviour during the life-course (Kessler et al., 2005). The relevance of this issue to public health is shared by policy makers in the UK, as children and young people are targeted as priority groups for mental health promotion (The Mental Health Taskforce to the NHS in England, 2016).

Another important topic is the presence of health inequality. Studies have found worse socioemotional outcomes in children from lower incomes than those from higher incomes (McLeod and Shanahan, 1993; Korenman et al., 1995; Green et al., 2005; Kelly et al., 2011; Sadler et al., 2018). Although the number of studies may be less, comparable results have been shown regarding parent's educational or occupational status (von Rueden et al., 2006; Perna et al., 2010).

A key factor affecting these issues is children's parenting environment. Studies on early to mid-childhood have revealed that negative parenting styles, such as those with harsh, punitive and controlling attitudes, increases the risk of developing socioemotional difficulties, whilst warm and positive parenting has a protective effect for the child (Weiss et al., 1992; Gazelle et al., 2005; McKee et al., 2007; Boeldt et al., 2012; van der Sluis et al., 2015; Reuben et al., 2016). This may also have a long-term impact on children, since some studies indicate that parenting in early childhood is associated with outcomes in pre-adolescence and young adulthood (Beckwith et al., 1992; Keiley et al., 2001; Lorber and Egeland, 2009; Petersen et al., 2015). Considering this longstanding impact and the importance of early child development, a positive early parenting environment could have an impact in reducing the socioeconomic gap between children with regards to their socioemotional outcomes in later stages of life. Studies trying to look at this association suggest that income gradients in children's socioemotional difficulties and competence can be partly explained by parenting activities (Gershoff et al., 2007; Kelly et al., 2011; Granero et al., 2015). Parenting practices were also shown to mediate the association between family economy and children's mental health among adolescents as well (Bøe et al., 2014).

Despite these findings, there are several limitations in previous studies. Conger et al. point out that most of the previous findings were based on cross-sectional studies, which makes it difficult to discuss long-term effects and causal relationships (Conger et al., 2010). Also, they indicate that most of the past studies have constructed a latent factor for socioeconomic position (SEP) or focused solely on income, making it difficult to assess various aspects of SEP. Finally, studies on interaction between SEP and the parenting environment are limited and often small scale. This study aims to overcome some of these limitations and reveal the relationships between SEP, parenting environment and children's behavioural problems in the UK. Based on available evidence, it is hypothesised that: (1) children from disadvantaged SEP are more likely to have worse outcomes throughout childhood and adolescence; (2) parenting environment will attenuate the association between SEP and children's behavioural problems; (3) parenting environment will modify the association between SEP and children's behavioural problems.

Methods

Study population and study sample

This study was performed using data from the Millennium Cohort Study (MCS). The MCS is a nationally representative prospective study of children born in the UK between September 2000 and January 2002 (Hansen, 2014). In total, 18 552 families were recruited to the cohort during this period. The first interview was conducted when the children were aged 9 months, and subsequent follow-up interviews were held at ages 3, 5, 7, 11 and 14. Since the main exposures used in this assessment were collected at sweep 1 and 2, those who were not present at these surveys, and those whose main respondents were not their mothers were excluded from this study. Second, since twins and triplets have moderated behavioural characteristics, they were excluded from the sample as well (Hansen and Joshi, 2007). Finally, participants who had never answered the Strengths and Difficulties Questionnaire (SDQ) were excluded. This resulted in a total of 14 452 participants in the whole assessment.

Socioeconomic position

There are three SEP variables: household income, maternal education and maternal occupation used as the main explanatory variable in the analysis. All the SEP variables were taken from sweep 1 collected through the main respondent's interview when the cohort members were aged 9 months. Household income was categorised into quintiles from the lowest to the highest after being equivalised by the modified Organisation for Economic Co-operation and Development scales (Hansen, 2014). Data on maternal education were measured using the five category National Vocational Qualification (NVQ) classification, alongside with categories defining ‘overseas qualification’ and ‘no qualification’ (Macratos, 2016). NVQ is a competence-based qualification built on UK national occupational standards, where level-1 is the lowest level which involves the application of knowledge and skills for routine and predictable works, and level-5 being the highest level which involves the application of skills and significant range of fundamental principles and complex techniques with substantial autonomy and significant responsibility for the work of others. Occupational class was categorised into six categories, which is ‘managerial and professional’, ‘intermediate’, ‘small employer and self-employed’, ‘lower supervisory and technical’, ‘semi-routine and routine’ and ‘not doing any paid work’, based on the National Statistics Socioeconomic Classification (NS-SEC) (Office for National Statistics, 2005). The NS-SEC is a widely used classification in the UK, and it aims to differentiate positions within labour markets in terms of their employment relations (e.g. routine occupations, such as waiters, have the least need for employee discretion and employees are regulated by a basic labour contract).

Parenting environment

There are 17 items from three domains of parenting domains used in the analysis: ‘learning activities’, ‘family routines’ and ‘psychosocial environment’. These variables were chosen based on previous research and were obtained in sweep 2 through the main respondent's interview (Kelly et al., 2011).

Learning activities

A total of eight questions were asked regarding the child's learning activities. The questions were collected based on the ‘home learning environment index’ developed by the Effective Provision of Pre-school Education (EPPE) study conducted in England (Melhuish et al., 2008; De La Rochebrochard, 2012). Whether someone reads to the child or helped the child learn sport was answered in binary terms; ‘Yes’ or ‘No’. Other questions on learning activities were the frequency of involvement in reading, learning alphabets, counting, singing and painting which were answered in eight ordered categories ranging from ‘do not’ to ‘7 times a week/constantly’.

Family routines

Family routines were measured by how often the child went to bed or had meals on a routine time schedule. The two items are also from the EPPE study, and the answers are categorised in five levels ranging from ‘missing’ to ‘always’ (Johnson et al., 2015).

Psychosocial environment

The child's psychosocial environment was measured by the following seven markers. Mother's parenting competence in five categories ranging from ‘not very good at being a parent’ to ‘a very good parent’. Parent distress measured by Kessler's Psychological distress scale (K6), which is a widely used measure of non-specific psychological distress (Kessler et al., 2002; Mitchell and Beals, 2011). Child–parent relationship measured by the scale developed by Pianta (CPRS) (Pianta, 1992). Family rules based on questions on the number of rules and how they were enforced. A composite score based on nine items from the Home Observation for Measurement of the Environment(HOME) inventory (Linver et al., 2004), and discipline practices constructed by seven items from the Straus's conflict tactics scale (Straus and Hamby, 1997). The nine items taken from the HOME inventory were whether: the mother's voice was positive when they were speaking to the child; the mother converses at least twice with the child; the mother answers to the child's questions verbally; the mother praises the child spontaneously; the mother caresses or kisses the child; the mother introduces the interviewer to the child; the mother scolded the child more than once; the mother used physical restraint on child; the mother slapped or spanked the child (Chronbachs α = 0.6). Similarly, the seven items taken from the Straus's conflict tactics scale were how often the mothers: ignored their child; smacked the child; shouted at the child; sent the child to the bedroom/naughty chair; took away treats; told them off; bribed the child with sweets (Chronbachs α = 0.7).

Demographic indicators

Child's sex and items which may be associated with both household/maternal SEP and children's behavioural problems such as ‘mother's age at the time of birth’, ‘whether the child was a first-born’, and the ‘language spoken at home’ were included as demographic variables, based on previous research, to reduce possibilities of confounding (Kelly et al., 2011). Also, the child's age was used as the time-variant variable in the analysis.

Behavioural problems

Children's behavioural problems were measured using the SDQ score from sweeps 2 to 6. The SDQ is a brief behavioural screening questionnaire widely used to identify children's psychological morbidity and to assess their behavioural problems (Goodman, 1997). It is used for children aged 3–16 years old and is constructed by a total of 25 questions from five domains of behaviour: emotional symptoms, conduct problems, hyperactivity/inattention, peer relationship problems and prosocial behaviours. Since the interest of the study is the behavioural problem of the general population, the scores were sub-scaled into ‘externalising problems’ and ‘internalising problems’ (Goodman et al., 2010). Externalising problems generally represent behavioural aspects of children's behavioural problems such as aggression and disruption, while internalising problems stand for emotional aspects such as anxiety and depression. Scores for both externalising and internalising problems range from 0 to 20, and lower score suggests positive outcomes.

Data management

Missing data in the study sample were multiply imputed using multiple imputation by chained equations (MICE) (Azur et al., 2011). All the variables used in the regression analysis were introduced to the imputation model, including the dependent, independent and design variables considering the clustered nature of the data. Imputed values of the dependent variable were excluded afterwards, because the growth curve model can handle unbalanced data and complete data were not required for the dependent variable. Since the amount of missing data ranged from 0 to 20% among the variables, 20 data sets were generated by MICE (White et al., 2011). The results of analysis using the imputed data sets were consolidated using Rubin's combination rules (Rubin, 2004). Also, a stratum variable was included in the regression analysis to take into account the stratified sampling process of the MCS. This was based on the suggestion by the Centre of Longitudinal studies, responsible for the MCS (Hansen, 2014).

Analytical strategy

The children's trajectory in behavioural problems was investigated by fitting a growth curve model with two levels (Table 1). The level-1 sub-model represents how the SDQ scores for child i changes by time j. It is constructed with parameter π0i representing the intercept of the individual, and π1i/π2i representing the linear/quadratic slope of the change trajectory. The level-2 sub-model represents how this trajectory may differ between individuals. The intercept (π0i) and the slope of the change trajectory (π1i/π2i) are considered as level-2 outcomes for each component of the model, and its association with predicting variables is assessed.

Table 1.

Summary of the models

Model Level-1 (within individual) Level-2 (between individual)
1 yij = π0i + ɛij πoi = Intercept00 + ζ0i
2 yij = π0i + π1iAGE + π2iAGE2 + ɛij πoi = Intercept0 + DEMOGRAPHICS + ζ0i, π1i = Intercept1 + DEMOGRAPHICS + ζ1i, π2i = Intercept2 + DEMOGRAPHICS + ζ2i
3 yij = π0i + π1iAGE + π2iAGE2 + ɛij πoi = Intercept0 + DEMOGRAPHICS + SEP + ζ0i, π1i = Intercept1 + DEMOGRAPHICS + SEP + ζ1i, π2i = Intercept2 + DEMOGRAPHICS + SEP + ζ2i
4 yij = π0i + π1iAGE + π2iAGE2 + ɛij πoi = Intercept0 + DEMOGRAPHICS + SEP + PARENTING + ζ0i, π1i = Intercept1 + DEMOGRAPHICS + SEP + PARENTING + ζ1i, π2i = Intercept2 + DEMOGRAPHICS + SEP + PARENTING + ζ2i
5 yij = π0i + π1iAGE + π2iAGE2 + ɛij πoi = Intercept0 + DEMOGRAPHICS + SEP + PARENTING + SEP × PARENTING + ζ0i, π1i = Intercept1 + DEMOGRAPHICS + SEP + PARENTING + SEP × PARENTING + ζ1i, π2i = Intercept2 + DEMOGRAPHICS + SEP + PARENTING + SEP × PARENTING + ζ2i

The assessment proceeded in five steps shown in Table 1. First, the unconditional means model was fit to assess where the systematic variation resided. Second, the time-related predictors and demographic variables were added to the model, and the general trajectory in children's behavioural problem was investigated. The third step introduced SEP variables to the model, and an assessment was carried on addressing how the trajectory in behavioural problems differed between children with different SEP. The fourth step introduced parenting variables to the model. The variables were chosen based on previous research (Kelly et al., 2011), and it was investigated to what extent they may account for the association between SEP and children's behavioural problems. The last step added the interaction term between SEP and parenting variables to identify any interaction between these variables. The interaction terms were introduced to the model in a stepwise way; they were added and excluded from the model one by one and kept in the model if the coefficient was statistically significant at the 0.05 level. The model was fit centring age at 3 when the parenting variables were collected, and at 14 to investigate the effect in adolescence. All the statistical assessment was carried out by Stata 15 (StataCorp, 2017).

Results

The descriptive statistics of the data are summarised in Appendix 1 and Appendix 2. In general, children with disadvantaged household/maternal SEP had a higher mean SDQ score. The SDQ score for externalising problems generally showed a steady decrease from age 3 to 14, while those for internalising problems showed a mild increase after age 5.

Socioeconomic gradient in children's behavioural problems

Table 2 shows the results for externalising problems and its association with the three SEP variables: household income maternal education and maternal occupation. The general trajectory of children's SDQ score was evaluated by model-2, showing that the scores tend to decrease in early childhood, but would slightly increase in later childhood and adolescence. Model-3 shows that children from an advantaged household/maternal SEP tend to have lower SDQ scores. For example, the SDQ score of children from the 5th income quintile was −1.25 (95% confidence interval −1.47 to −1.03) lower than those from the lowest quintile. Similarly, children whose mothers were NVQ level 5 had −1.58 (95% confidence interval −1.02 to −1.25) lower scores than those with mothers of no educational qualification. The linear/quadratic rate of change suggests that these differences may narrow during early childhood, but widen thereafter.

Table 2.

Growth model for externalising problems (centred at age 3)

Model-1 Model-2 Model-3 Model-4
Fixed effects: coefficients (standard errors)
Initial status, π0i Intercept 5.20** (0.026) 10.26** (0.17) 10.32** (0.19) 18.72** (0.46)
Household income
Lowest quintile
Second quintile −0.54** (0.084) −0.20* (0.068)
Third quintile −0.96** (0.095) −0.43** (0.077)
Fourth quintile −1.11** (0.10) −0.52** (0.083)
Fifth quintile −1.25** (0.11) −0.64** (0.092)
Maternal education
None of below
Overseas quality only −0.31 (0.19) −0.29 (0.16)
NVQ level 1 −0.38* (0.12) −0.19 (0.097)
NVQ level 2 −0.91** (0.93) −0.48** (0.077)
NVQ level 3 −1.14** (0.11) −0.63** (0.087)
NVQ level 4 −1.48** (0.10) −0.95** (0.086)
NVQ level 5 −1.58** (0.17) −1.12** (0.14)
Maternal occupation
Not in work/on leave
Semi-routine and routine 0.29* (0.86) 0.21* (0.069)
Lower supervisory and technical 0.11 (0.17) 0.24 (0.14)
Small employers and self-employed −0.58* (0.17) −0.32* (0.14)
Intermediate −0.060 (0.96) 0.058 (0.076)
Managerial and professional −0.21* (0.087) −0.0097 (0.068)
Linear rate of change, π1i Intercept −0.79** (0.055) −0.80** (0.062) −2.10** (0.19)
Household income
Lowest quintile
Second quintile 0.0085 (0.028) −0.018 (0.028)
Third quintile 0.0097 (0.031) −0.032 (0.031)
Fourth quintile −0.0092 (0.034) −0.052 (0.034)
Fifth quintile 0.0088 (0.037) −0.037 (0.037)
Maternal education
None of below
Overseas quality only 0.049 (0.064) 0.069 (0.062)
NVQ level 1 0.066 (0.040) 0.056 (0.039)
NVQ level 2 0.081* (0.032) 0.059 (0.031)
NVQ level 3 0.078* (0.036) 0.057 (0.036)
NVQ level 4 0.11* (0.035) 0.096* (0.035)
NVQ level 5 0.15* (0.056) 0.14* (0.055)
Maternal occupation
Not in work/on leave
Semi-routine and routine −0.012 (0.028) −0.010 (0.028)
Lower supervisory and technical 0.064 (0.056) 0.056 (0.055)
Small employers and self-employed 0.12* (0.056) 0.10 (0.055)
Intermediate 0.0081 (0.031) −0.0054 (0.030)
Managerial and professional 0.049 (0.028) 0.023 (0.027)
Quadratic rate of change, π2i Intercept 0.058** (0.0051) 0.058** (0.0057) 0.13** (0.018)
Household income
Lowest quintile
Second quintile −0.0022 (0.0026) −0.00074 (0.0026)
Third quintile −0.0027 (0.0029) −0.00040 (0.0029)
Fourth quintile −0.00079 (0.0031) 0.0014 (0.0031)
Fifth quintile −0.0014 (0.0034) 0.0011 (0.0034)
Maternal education
None of below
Overseas quality only −0.0033 (0.0058) −0.0048 (0.0057)
NVQ level 1 −0.0028 (0.0037) −0.0026 (0.0037)
NVQ level 2 −0.0045 (0.0029) −0.0037 (0.0030)
NVQ level 3 −0.0045 (0.0033) −0.0039 (0.0034)
NVQ level 4 −0.0076* (0.0032) −0.0076* (0.0033)
NVQ level 5 −0.011* (0.0051) −0.012* (0.0051)
Maternal occupation
Not in work/on leave
Semi-routine and routine 0.00058 (0.0026) 0.00056 (0.0026)
Lower supervisory and technical −0.0062 (0.0052) −0.0059 (0.0051)
Small employers and self-employed −0.0065 (0.0052) −0.0053 (0.0051)
Intermediate 0.00028 (0.0029) 0.0012 (0.0028)
Managerial and professional −0.0038 (0.0026) −0.0022 (0.0025)
Variance components: standard deviations and correlation coefficients (standard errors)
Level-1 Within-person (σɛ) 2.49 (0.0084) 1.97 (0.0096) 1.97 (0.0096) 1.97 (0.0096)
Level-2 Initial status (σ0) 2.76 (0.020) 2.86 (0.022) 2.76 (0.022) 1.94 (0.019)
Linear rate of change (σ1) 0.60 (0.012) 0.59 (0.012) 0.54 (0.012)
Corr (linear – initial) −0.26 (0.015) −0.25 (0.015) 0.057 (0.022)
Quadratic rate of change (σ2) 0.045 (0.0013) 0.045 (0.0013) 0.042 (0.0013)
Corr (quadratic – initial) 0.12 (0.019) 0.11 (0.020) −0.20 (0.027)
Corr (quadratic – linear) −0.94 (0.0035) −0.94 (0.0035) −0.93 (0.0042)
Pseudo R2 statistics
Inline graphic 0.38 0.38 0.37
Inline graphic 0.07 0.54
Inline graphic 0.007 0.19
Inline graphic 0.006 0.13

*p < 0.05, **p < 0.001.

Model-1: empty.

Model-2: demographics.

Model-3: demographics + SEP.

Model-4: demographics + SEP + parenting.

Table 3 shows the results for internalising problems and its association with the three SEP variables: household income, maternal education and maternal occupation. Model-2 shows that the decreasing trend in the early ages was much milder and shorter in internalising problems, indicating a generally increasing trend in SDQ scores. As in externalising problems, model-3 shows that children with advantaged household/maternal SEP tend to have lower SDQ scores. For example, children from the 5th income quintile had lower scores by −0.82 (95% confidence interval −0.97 to −0.67) compared to those from the lowest quintile. Similarly, children whose mothers were NVQ level 5 had −0.92 (95% confidence interval −1.15 to −0.70) lower scores than those with mothers of no educational qualification. However, as in externalising problems, the difference between maternal occupation was milder than the other two SEP variables.

Table 3.

Growth model for internalising problems (centred at age 3)

Model-1 Model-2 Model-3 Model-4 Model-5
Fixed effects: coefficients (standard errors)
Initial status, π0i Intercept 3.00** (0.019) 4.13** (0.11) 4.36** (0.12) 10.09** (0.36) 11.39** (0.44)
Household income
Lowest quintile
Second quintile −0.32** (0.057) −0.13* (0.053) −0.76 (0.43)
Third quintile −0.60** (0.064) −0.26** (0.060) −2.24** (0.46)
Fourth quintile −0.80** (0.069) −0.41** (0.065) −2.95** (0.49)
Fifth quintile −0.82** (0.076) −0.42** (0.071) −2.93** (0.50)
Maternal education
None of below
Overseas quality only −0.47** (0.13) −0.43** (0.12) −0.43** (0.12)
NVQ level 1 −0.49** (0.080) −0.35** (0.074) −0.34** (0.074)
NVQ level 2 −0.77** (0.063) −0.50** (0.059) −0.48** (0.059)
NVQ level 3 −0.92** (0.072) −0.59** (0.068) −0.58** (0.068)
NVQ level 4 −1.03** (0.070) −0.68** (0.067) −0.68** (0.067)
NVQ level 5 −0.92** (0.12) −0.65** (0.11) −0.64** (0.11)
Maternal occupation
Not in work/on leave
Semi-routine and routine −0.013 (0.058) −0.0066 (0.053) 0.0030 (0.053)
Lower supervisory and technical −0.084 (0.11) −0.0085 (0.11) −0.0055 (0.11)
Small employers and self-employed −0.046 (0.12) 0.11 (0.11) 0.10 (0.11)
Intermediate −0.27** (0.064) −0.18* (0.059) −0.19* (0.059)
Managerial and professional −0.22** (0.058) −0.10 (0.53) −0.11* (0.053)
(Household income) × (CPRS)
Lowest quintile
Second quintile 0.010 (0.0067)
Third quintile 0.031** (0.0071)
Fourth quintile 0.040** (0.0075)
Fifth quintile 0.39** (0.0077)
Linear rate of change, π1i Intercept −0.18** (0.046) −0.21** (0.052) −0.66** (0.16) −0.83** (0.16)
Household income
Lowest quintile
Second quintile −0.0027 (0.024) 0.0055 (0.024) 0.032 (0.081)
Third quintile −0.022 (0.026) −0.013 (0.027) 0.25* (0.087)
Fourth quintile −0.041 (0.028) −0.028 (0.029) 0.35** (0.093)
Fifth quintile −0.043 (0.031) −0.029 (0.032) 0.30* (0.096)
Maternal education
None of below
Overseas quality only 0.11 (0.53) 0.12* (0.053) 0.12* (0.053)
NVQ level 1 0.011 (0.34) 0.013 (0.034) 0.013 (0.034)
NVQ level 2 0.036 (0.027) 0.041 (0.027) 0.039 (0.027)
NVQ level 3 0.073* (0.030) 0.080* (0.031) 0.079* (0.031)
NVQ level 4 0.084* (0.029) 0.094* (0.030) 0.093* (0.030)
NVQ level 5 0.087 (0.047) 0.096* (0.047) 0.094* (0.047)
Maternal occupation
Not in work/on leave
Semi-routine and routine 0.00093 (0.024) 0.0056 (0.024) 0.0040 (0.024)
Lower supervisory and technical 0.0075 (0.047) 0.014 (0.047) 0.014 (0.047)
Small employers and self-employed 0.0070 (0.047) 0.013 (0.047) 0.013 (0.047)
Intermediate −0.0049 (0.026) 0.00031 (0.026) 0.00082 (0.026)
Managerial and professional −0.021 (0.023) −0.019 (0.023) −0.017 (0.023)
(Household income) × (CPRS)
Lowest quintile
Second quintile −0.00046 (0.0012)
Third quintile −0.0042* (0.0013)
Fourth quintile −0.0060** (0.0014)
Fifth quintile −0.0051* (0.0014)
Quadratic rate of change, π0i Intercept 0.025** (0.0045) 0.024** (0.0051) 0.049* (0.015) 0.049* (0.015)
Household income
Lowest quintile
Second quintile −0.00094 (0.0023) −0.0016 (0.0024) −0.0016 (0.0024)
Third quintile 0.00023 (0.0026) −0.00053 (0.0026) −0.00057 (0.0026)
Fourth quintile 0.00062 (0.0028) −0.00045 (0.0028) −0.00049 (0.0028)
Fifth quintile −0.00023 (0.0030) −0.0013 (0.0031) −0.0014 (0.0031)
Maternal education
None of below
Overseas quality only −0.0063 (0.0051) −0.0071 (0.0051) −0.0070 (0.0051)
NVQ level 1 0.0016 (0.0033) 0.0011 (0.0033) 0.0011 (0.0033)
NVQ level 2 −0.00049 (0.0026) −0.0015 (0.0027) −0.0015 (0.0027)
NVQ level 3 −0.0042 (0.0030) −0.0055 (0.0030) −0.0055 (0.0030)
NVQ level 4 −0.0063* (0.0029) −0.0079* (0.0030) −0.0079* (0.0030)
NVQ level 5 −0.0085 (0.0045) −0.010* (0.0046) −0.010* (0.0046)
Maternal occupation
Not in work/on leave
Semi-routine and routine −0.00070 (0.0023) −0.0011 (0.0023) −0.0011 (0.0023)
Lower supervisory and technical −0.00052 (0.0046) −0.0011 (0.0046) −0.0012 (0.0046)
Small employers and self-employed 0.0012 (0.0046) 0.00086 (0.0046) 0.00085 (0.0046)
Intermediate 0.000062 (0.0025) −0.00035 (0.0025) −0.00039 (0.0025)
Managerial and professional 0.0018 (0.0023) 0.0016 (0.0023) 0.0016 (0.0023)
Variance components: standard deviations and correlation coefficients (standard errors)
Level-1 Within-person (σɛ) 2.15 (0.0072) 1.77 (0.0086) 1.77 (0.0086) 1.77 (0.0086) 1.76 (0.0086)
Level-2 Initial status (σ0) 1.91 (0.015) 1.71 (0.017) 1.63 (0.017) 1.39 (0.017) 1.42 (0.017)
Linear rate of change (σ1) 0.42 (0.012) 0.42 (0.012) 0.41 (0.012) 0.42 (0.012)
Corr (linear – initial) 0.075 (0.025) 0.085 (0.025) 0.11 (0.028) 0.12 (0.028)
Quadratic rate of change (σ2) 0.037 (0.0012) 0.037 (0.0012) 0.036 (0.0012) 0.036 (0.0012)
Corr (quadratic – initial) −0.14 (0.027) −0.16 (0.028) −0.19 (0.031) −0.20 (0.031)
Corr (quadratic – linear) −0.83 (0.010) −0.83 (0.010) −0.83 (0.010) −0.83 (0.010)
Pseudo R2 statistics
Inline graphic 0.33 0.33 0.33 0.33
Inline graphic 0.08 0.34 0.34
Inline graphic 0.007 0.03 0.03
Inline graphic 0.005 0.02 0.02

*p < 0.05, **p < 0.001.

Model-1: empty.

Model-2: demographics.

Model-3: demographics + SEP.

Model-4: demographics + SEP + parenting.

Model-5: demographics + SEP + parenting + interaction term.

Early parenting environment and socioeconomic gradient in children's behavioural problems

For externalising problems, the introduction of variables for parenting environment attenuated the association between SDQ scores and SEP by 49% for household income, 29% for maternal education and 95% for maternal occupation at age 3, and 31, 26 and 82%, respectively, at age 14 (Table 4). Considering the variance components, there was an additional 47% reduction in the level-2 variance of the initial status (Table 2: model-4). Parenting environment seems to have explained a larger part of the difference in SDQ scores between children than SEP (Fig. 1).

Table 4.

Attenuation of socioeconomic gradient in children's SDQ score by the introduction of parenting variables

Externalising problems Internalising problems
Age 3 Age 14 Age 3 Age 14
Household income −49% −31% −49% −32%
Maternal education −29% −26% −30% −17%
Maternal occupation −95% −82% −55% −50%

Fig. 1.

Fig. 1.

Predicted trajectories of externalising problems by household income and child–parent relationship.

For internalising problems, the introduction of parenting variables attenuated the association between SDQ scores and SEP by 49% for household income, 30% for maternal education and 55% for maternal occupation at age 3, and 32, 17 and 50%, respectively, at age 14 (Table 4). There was an additional 26% reduction in the level-2 variance of the initial status, showing that parenting environment explained a certain degree of difference in SDQ scores between children (Table 3: model-4).

Evaluation of interactions

There was no statistically significant interaction between household/maternal SEP and parenting environment with regards to externalising problems. On the contrary, there was a statistically significant interaction regarding internalising problems where parent–child relationship modified the effect of household income (Table 3: model-5). There was a more modest income gradient among those with better parent–child relationship in early childhood. However, the income gradient within this group grew as children aged. By the time they reached adolescence, the difference in SDQ scores between children from 1st and 5th income quintiles was larger within children who were under a better parent–child relationship than those under poor parent–child relationships. Nonetheless, the SDQ score was better for those who had good parent–child relationship than those who had a poor one, irrespective of their SEP (Fig. 2).

Fig. 2.

Fig. 2.

Predicted trajectories of internalising problems by household income and child–parent relationship.

Discussion

Summary of findings and comparison with other studies

The aim of this study was to reveal the relationships between SEP, parenting environment and children's behavioural problems. For both internalising and externalising problems, children under disadvantaged SEP during early childhood were more likely to have worse behavioural problems. However, the socioeconomic gradient differed between measures of SEP, showing a greater gap between those in advantaged and disadvantaged categories for household income and maternal education, and a smaller gap for maternal occupation. Second, early parenting environment had a stronger independent association with children's socioemotional well-being than parental SEP and also attenuated the socioeconomic gradient throughout childhood and adolescence. Finally, there was an interaction between household income and parent–child relationship for internalising problems. It indicated that good parent–child relationship buffered the income gradient in children's behavioural problems during early childhood, and although this buffering effect did not last until adolescence, those who had good parent–child relationships developed better outcomes regardless of their SEP.

Although previous studies have shown that parenting may attenuate the income gradient in children's behavioural problems, most of these studies have been cross-sectional studies and therefore its temporality and long-term effects were not clear (Gershoff et al., 2007; Kelly et al., 2011; Bøe et al., 2014). Perhaps reflecting the rising influence from other factors such as school activity and peer relationships, this study showed that the effect of attenuation weakened as children aged. Nonetheless, early parenting environment still explained a certain degree of socioeconomic gradient in SDQ scores among adolescents. Another strength of this study is the multiple measures used to assess SEP. A cross-sectional pathway analysis conducted on Norwegian adolescents showed that maternal education did not have a direct effect on either internalising or externalising problems after introducing parenting variables, while household income had a direct association with internalising problems (Bøe et al., 2014). This is somewhat different from this study, where both SEP variables preserved a significant association with behavioural problems. Since the model in the Norwegian study only explained half the variance of the children's behavioural problems explained in this study, this difference may be due to a smaller amount of inequality and a powerful social security system in the Nordic countries. Finally, this study assessed whether there was an interaction between SEP and parenting environment, finding evidence in internalising problems. Harsh parenting, for which some studies found significant interaction, was not shown to moderate the effect, possibly because of the broader aspects of parenting covered in this study (MacKenzie et al., 2014; Flouri and Midouhas, 2017). For example, Flouri and Midouhas investigated the roll of harsh parenting in moderating the effects of socioeconomic disadvantage and adverse life events on children's behavioural problems, and have found some evidence of support (Flouri and Midouhas, 2017). However, since their interest was focused on harsh parenting, they did not include much variables to control for other parenting activities which contrasts to this study. The interaction on internalising problems found in this study was consistent with a former study which showed that parent–child relationship buffered the socioeconomic disadvantage in 3-year-old children (Malmberg and Flouri, 2011). However, this study has revealed that this buffering effect declines as children grow. Since parenting data were taken when children were 3 years old, this decrease in the buffering effect might possibly be reflecting the difficulty of maintaining good parent–child relationship in disadvantaged families.

Meaning of the study

In general, this study has shown that a low-quality parenting environment in early childhood is a considerable risk for developing behavioural problems, regardless of children's familial/maternal SEP. Therefore, it is crucial to improve the parenting environment to prevent children from developing behavioural problems. Interventions such as home visiting programmes and community programmes providing parents with support and guidance may contribute to improving this environment, and at the end, this might also narrow the socioeconomic gradient among them. Second, for those programmes and interventions which take targeted strategies, this study suggests that in childhood, children in lower parenting environment are under higher risk than those from disadvantaged SEP families. However, as children age, those from lower household income may require consideration, because they will be under increased risk in developing internalising problems even if they were under favourable parenting environment. Finally, when considering importance between policies to improve children's socioeconomic circumstances, this study suggests that policies focusing on maternal occupation may be less important in raising their behavioural outcomes. Furthermore, since household income seems to have more effect than maternal education as children grow older, income-related policies may require the most importance in the long run.

Strengths and limitations

A distinct strength of this study is that it is a prospective longitudinal analysis, based on large-scale samples from a nationally representative cohort. This makes the temporality of the association clearer and the external validity stronger. The number of sweeps and variables collected in the MCS has also led to strengths. It has contributed in reducing the possibility of residual bias and enabled this study to apply a growth curve model which, compared to traditional techniques, has an advantage in handling missing data and modelling trajectories in the individual level rather than the aggregate level (StataCorp, 2017). Also, data for MCS were collected through trained interviewers to improve the quality of the data. On the contrary, there are some limitations. One of them is regarding the selection of the study sample and missing data. The initial response rate of the MCS ranged between 60 and 70%, which may cause bias in the result of the study (Hansen, 2014). However, evaluation of the known characteristics in those lost before issue to field did not seem to be systematically biased (Plewis et al., 2007; Hansen, 2014). Also, missing data within the study sample were either accounted for by the growth curve model or by multiple imputation. Another possible limitation of this study was that the SDQ scores used in this study were based on parent report. In a previous study using the MCS, the socioeconomic gradient in the SDQ score was stronger in parent report compared to teacher report, which may be demonstrating reporting bias (Plewis et al., 2007). Nevertheless, the socioeconomic gradient was statistically significant in both parent and teacher report, and the scores were well correlated in their study. Also, SDQ is widely known as a validated and reliable measure of children's behavioural status (Goodman, 2001; Plewis et al., 2007).

Some topics which were not covered by this study may provide implications for further research. Regarding SEP, this study did not cover paternal measures. Some study indicates that paternal SEP may have an independent effect on children's behavioural problems, and may have a pathway different from those for maternal SEP (Bøe et al., 2014). Also, further follow-up may be important to assess the long-term effect of parenting environment, since some small-scaled study found a rebound in the strength of association after adolescence (Lorber and Egeland, 2009). Finally, although early parenting explained a certain degree of gradient in behavioural problems of adolescents, much of the variance is still unexplained. Further research may be called for to reveal how this socioeconomic gradient is fully explained.

Acknowledgements

The authors thank the Millennium Cohort Study families for their time and cooperation, as well as the Centre for Longitudinal Studies at the Institute of Education at University College London. The Millennium Cohort Study is funded by the UK Economics and Social Research Council.

Appendix

Appendix 1.

Descriptive data for exposures

N (%) Mean (s.d.)
Mother's age at child's birth
Missing 2 (0.01)
Valid 14 450 (99.99) 28.66 (5.87)
Child's sex
Male 7388 (51.12)
Female 7064 (48.88)
First child
Not first child 8458 (58.52)
First child 5994 (41.48)
Household language
Missing 67 (0.46)
English only 12 267 (84.88)
Any other language spoken 2118 (14.66)
Household income
Missing 38 (0.26)
Lowest quintile 3235 (22.38)
Second quintile 3113 (21.54)
Third quintile 2799 (19.37)
Fourth quintile 2728 (18.88)
Fifth quintile 2539 (17.57)
Maternal education
Missing 21 (0.15)
None of below 2055 (14.22)
Overseas quality only 384 (2.66)
NVQ level 1 1193 (8.25)
NVQ level 2 4174 (28.88)
NVQ level 3 2097 (14.51)
NVQ level 4 4015 (27.78)
NVQ level 5 513 (3.55)
Maternal occupation
Missing 71 (0.49)
Not in work/on leave 7288 (50.43)
Semi-routine and routine 1860 (12.87)
Lower supervisory and technical 362 (2.50)
Small employers and self-employed 351 (2.43)
Intermediate 1539 (10.65)
Managerial and professional 2981 (20.63)
Mother's reading
Missing 68 (0.47)
Every day 8279 (57.29)
Several times a week 2769 (19.16)
Once or twice a week 2233 (15.45)
Once or twice a month 374 (2.59)
Less often 288 (1.99)
Not at all 441 (3.05)
Anyone else reading
Missing 68 (0.47)
Yes 12 196 (84.39)
No 2188 (15.14)
Helping with sports
Missing 68 (0.47)
Yes 11 349 (78.53)
No 3035 (21.00)
Taking to the library
Missing 68 (0.47)
Do not 8554 (59.19)
On special occasions 1327 (9.18)
Once a month 2416 (16.72)
Once a fortnight 1084 (7.50)
Once a week 1003 (6.94)
Helping with alphabet
Missing 69 (0.48)
Do not 2766 (19.14)
Occasionally/less than once a week 1810 (12.52)
1–2 days per week 3128 (21.64)
3 times a week 1795 (12.42)
4 times a week 1073 (7.42)
5 times a week 706 (4.89)
6 times a week 343 (2.37)
7 times a week/constantly 2762 (19.11)
Helping with counting
Missing 69 (0.48)
Do not 547 (3.78)
Occasionally/less than once a week 752 (5.20)
1–2 days per week 1949 (13.49)
3 times a week 1540 (10.66)
4 times a week 1129 (7.81)
5 times a week 936 (6.48)
6 times a week 605 (4.19)
7 times a week/constantly 6925 (47.92)
Teaching songs
Missing 69 (0.48)
Do not 665 (4.60)
Occasionally/less than once a week 560 (3.87)
1–2 days per week 1512 (10.46)
3 times a week 1316 (9.11)
4 times a week 1097 (7.59)
5 times a week 1008 (6.97)
6 times a week 617 (4.27)
7 times a week/constantly 7608 (52.64)
Child drawing
Missing 69 (0.48)
Do not 286 (1.98)
Occasionally/less than once a week 566 (3.92)
1–2 days per week 2042 (14.13)
3 times a week 1716 (11.87)
4 times a week 1434 (9.92)
5 times a week 1227 (8.49)
6 times a week 801 (5.54)
7 times a week/constantly 6311 (43.67)
Regular bed times
Missing 68 (0.47)
Never/almost never 1112 (7.69)
Sometimes 1988 (13.76)
Usually 5417 (37.48)
Always 5867 (40.60)
Regular meal times
Missing 68 (0.47)
Never/almost never 306 (2.12)
Sometimes 1083 (7.49)
Usually 6166 (42.67)
Always 6829 (47.25)
Family rules
Missing 69 (0.48)
Lots of rules 4201 (29.07)
Not many rules 6292 (43.54)
It varies 3890 (26.92)
Enforcement of rules
Missing 69 (0.48)
Strictly enforced 6601 (45.68)
Not very strictly enforced 3806 (26.34)
It varies 3976 (27.51)
Parenting competence
Missing 1619 (11.20)
Not very good 36 (0.25)
Have some trouble being a parent 371 (2.57)
Average parent 4844 (33.52)
Better than average parent 3290 (22.77)
Very good parent 4292 (29.70)
K6 score
Missing 1511 (10.46)
Valid 12 941 (89.54) 3.25 (3.74)
CPRS
Missing 1649 (11.41)
Valid 12 803 (88.59) 64.20 (7.05)
HOME inventory
Missing 1892 (13.09)
Valid 12 560 (86.91) 9.65 (1.07)
Discipline strategy
Missing 2868 (19.85)
Valid 11 584 (80.15) 19.98 (5.00)

Appendix 2.

Descriptive data for outcomes (mean SDQ scores) by SEP

Age 3 Age 5 Age 7 Age 11 Age 14
Internalising problems
Household income
Lowest quintile 3.88 3.37 3.67 4.13 4.84
Second quintile 3.28 2.82 3.10 3.64 4.24
Third quintile 2.72 2.31 2.57 3.07 3.59
Fourth quintile 2.31 1.97 2.11 2.59 3.09
Highest quintile 2.20 1.91 2.05 2.47 2.84
Maternal education
None of below 4.17 3.58 3.85 4.16 4.81
Overseas quality only 3.64 3.29 3.63 3.95 4.68
NVQ level 1 3.46 3.04 3.28 3.74 4.59
NVQ level 2 2.96 2.47 2.72 3.31 3.89
NVQ level 3 2.70 2.30 2.54 3.10 3.59
NVQ level 4 2.29 1.99 2.16 2.60 3.02
NVQ level 5 2.32 2.11 2.09 2.48 2.77
Maternal occupation
Not in work/on leave 3.33 2.84 3.13 3.58 4.21
Semi-routine and routine 3.04 2.63 2.83 3.38 3.83
Lower supervisory and technical 2.75 2.27 2.68 3.14 3.73
Small employers and   self-employed 2.58 2.26 2.44 2.96 3.63
Intermediate 2.42 2.12 2.25 2.78 3.29
Managerial and professional 2.19 1.89 2.00 2.48 2.90
Externalising problems
Household income
Lowest quintile 8.25 6.09 5.99 5.78 5.65
Second quintile 7.30 5.26 5.21 4.96 4.86
Third quintile 6.53 4.50 4.54 4.32 4.05
Fourth quintile 5.88 4.14 4.03 3.71 3.66
Highest quintile 5.39 3.71 3.71 3.39 3.31
Maternal education
None of below 8.39 6.22 5.92 5.64 5.52
Overseas quality only 7.67 5.54 5.56 4.89 5.02
NVQ level 1 7.96 5.81 5.84 5.55 5.61
NVQ level 2 6.98 4.99 4.90 4.78 4.60
NVQ level 3 6.57 4.60 4.58 4.29 4.19
NVQ level 4 5.61 3.83 3.85 3.55 3.38
NVQ level 5 5.07 3.58 3.61 3.17 3.13
Maternal occupation
Not in work/on leave 7.31 5.25 5.16 4.89 4.80
Semi-routine and routine 7.27 5.12 5.11 4.90 4.67
Lower supervisory and technical 6.65 4.88 4.88 4.41 4.40
Small employers and   self-employed 5.44 3.89 4.11 3.75 3.90
Intermediate 6.33 4.33 4.38 4.19 4.03
Managerial and professional 5.42 3.79 3.73 3.47 3.29

Author contributions

KT, JM and HP conceived and designed the study. KT analysed the data and drafted the manuscript. All authors contributed to critical revision of the manuscript for important intellectual content and approved the final version of the manuscript.

Financial support

This research received no specific grant from any funding agency, commercial or not-for-profit sectors.

Ethical standards

The authors assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional committees on human experimentation and with the Helsinki Declaration of 1975, as revised in 2000. The authors assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional guides on the care and use of laboratory animals.

Data

The full dataset used for this study is available from the UK Data Service under standard conditions: https://discover.ukdataservice.ac.uk/series/?sn=2000031#access.

Conflict of interest

Non.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Data Availability Statement

The full dataset used for this study is available from the UK Data Service under standard conditions: https://discover.ukdataservice.ac.uk/series/?sn=2000031#access.


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