Method
Search Strategy
Identification and Abstraction of Relevant Studies
Results
Study | Sample Size a; Sociodemographic characteristics: Ages Studied (Yrs.); Sex (%, n); Race and Ethnicity (%, n); Location | Socioeconomic Status (SES) Indicators | Socio-ecological Factors Addressed/Main Findings |
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1– Baker et al. (2023) | N = 397; Mean Age = 6.45 ± 3.70 yrs., Range = 4–15; Age at wave 1 = 4–5 yrs.; 77.1% Male (n = 306); Race/Ethnicity NR; Australia | Maternal Highest Education: 40.4% Advanced Diploma (n = 154), 36.2% Tertiary (n = 138), 23.4% HS or less (n = 89); Maternal Employment: 53.5%, Employed (n = 204), 43.6% Not in labour force (n = 166), 2.9% Unemployed (n = 11); Family Structure: 84.1% Married (n = 323), 15.9% Single parent (n = 61); SEIFA Australia = 1000.3 ± 74.6 | Family Factors: • Maternal psychological distress when children were aged 4–5 years predicted child sleep problems at age 6–7 years • Child sleep problems when children were aged 12–13 years predicted greater maternal psychological distress when children were aged 14–15 years |
2– Bin Eid et al. (2022) | N = 116 a; Saudi Arabia (n = 81): Mean Age = 8.18 ± 1.56 yrs., Range = 5–12 yrs.; 82.7% Male (n = 67); Race/Ethnicity NR; United Kingdom (n = 35): Mean Age = 9.21 ± 1.97 yrs.; 74.3% Male (n = 26); Race/Ethnicity NR | Maternal Highest Education (ASD): 0% Postgraduate degree, 53% Undergraduate degree (n = 43), 23.5% GCSE A-Levels Vocational Level 3 (n = 19), 16.1% GCSE O-Levels Vocational Level 2 (n = 13), 7.4% No Qualification (n = 6) Paternal Highest Education (ASD): 22.2% Postgraduate (n = 18), 39.5% Undergraduate degree (n = 32), 18.5% GCSE A-Levels Vocational Level 3 (n = 15), 12.4% GCSE O-Levels Vocational Level 2 (n = 10), 7.4% No Qualification (n = 6) | Neighborhood and Socio-cultural Factors: • Overall, children with ASD in Saudi Arabia experience poorer sleep than children with ASD in the United Kingdom • Children with ASD in Saudi Arabia had shorter sleep duration than children with ASD in the United Kingdom • Children with ASD in the United Kingdom had more sleep anxiety and more parasomnias than children with ASD in Saudi Arabia Family Factors: • Children with ASD in Saudi Arabia were exposed to more screen time than children with ASD in the United Kingdom • Children with ASD in the United Kingdom had more regular mealtimes than children with ASD in Saudi Arabia |
3– Broder-Fingert et al. (2014) | N = 2,976 a; Age range = 2–20 yrs.; ASD (n = 2,075): 79.5% Male (n = 1,650); 80.7% White (n = 1,670), 7.4% Hispanic/Latino (n = 153), 5.5% Black (n = 114), 6.4% Other (n = 132); Asperger’s (n = 901): 78.7% Male (n = 709); 81.3% White (n = 733), 3.6% Black (n = 33), 6.4% Hispanic/Latino (n = 58), 8.6% Other (n = 77); US | Insurance (ASD): 44.9% Private (n = 931), 55.1% Public (n = 1,144); Insurance (Asperger’s): 55.2% Private (n = 497), 44.8% Public (n = 403) | Neighborhood and Socio-cultural Factors: • Among children with ASD, those of older age, with public insurance, and with a co-occurring sleep disorder had a higher odds of being overweight and/or obese |
4– Bruni et al. (2022) | N = 111; Age range = 1–18 yrs.; 83.8% Male (n = 93); Race/Ethnicity NR; Italy | Caregiver Highest Education: 38.7% (n = 43), 51.4% HS (n = 57), 8.1% Middle school (n = 9), 1.8% Elementary school (n = 2). Family Income: 77.5% Middle income (n = 86), 18.9% Low income (n = 21), 3.6% High income (n = 4) | Neighborhood and Socio-cultural Factors: • Bedtime, rise time, and sleep duration changed during pandemic • Difficulty falling asleep, bedtime anxiety, sleep terrors, and daytime sleepiness increased during the pandemic • Daily screen time increased during the pandemic, and caregivers identified that having fewer obligations and extracurricular activities contributed to more screen time, which in turn impacted sleep |
5– Davenport et al. (2021) | N = 1; Mean Age = 7 yrs. 4 months; Male; Biracial; US | NR | Individual Factors: • After the intervention, sleep onset latency decreased and sleep efficiency improved • Improved sleep was associated with decreased daytime disruptive behavior Neighborhood and Socio-cultural Factors: • The authors speculated that telehealth could enhance access, benefiting underserved communities and those with financial disadvantage |
6– Delahaye et al. (2014) | N = 86; 69.5% ASD, 25% PDD-NOS, 5% Asperger’s; Mean Age = 7.18 ± NR yrs., Range = 4–12 yrs.; 83.7% Male (n = 72); Race/Ethnicity NR; US | NR | Individual Factors: • Sleep habits were correlated with physical and psychosocial QoL • Physical QoL was correlated with daytime sleepiness, parasomnias, sleep duration, and sleep anxiety • Physical QoL was not correlated with bedtime resistance, night wakings, sleep-disordered breathing, or sleep onset delay • Psychosocial QoL was correlated with parasomnias, sleep-disordered breathing, sleep duration, sleep onset delay, and sleep anxiety • Psychosocial QoL was not correlated with bedtime resistance, daytime sleepiness, and night wakings |
7– Durán-Pacheco et al. (2023) | N = 3,150; Median Age = 9.0 yrs., Range = 3–17 yrs.; 80.1% Male (n = 2,507); 5.2% Non-White/Hispanic (n = 163), 16.1% Non-White/Non-Hispanic (n = 507), 10.0% White/Hispanic (n = 315), 68.7% White/Non-Hispanic (n = 2,165); US | Household Income: 36.1% <$50,000 annually (n = 1,137), 32.8% $50,000–$99,999 (n = 1,034), 27.2% ≥$100,000 (n = 856), 3.9% Prefer not to answer (n = 122); Caregiver Employment: 43.3% Full-time (n = 1,360), 29.4% Homemaker (n = 924), 18.7% Part-time (n = 588), 2.8% Unemployed (n = 89), 2.4% Student (n = 75), 0.7% Retired (n = 23), 2.5% Other (n = 79); Household Structure: 28.6% 2–3 members (n = 898), 39.2% 4 members (n = 1,233), 32.2% ≥ 5 members (n = 1,014); Family Structure: 80% has a partner (n = 2,505) | Individual Factors: • Various factors were associated with worse sleep quality in children with ASD, including older age, female sex, medication use for ASD, and longer time since ASD diagnosis • After controlling for demographic factors, children who eloped, experienced mental comorbidities, or a greater impact of ASD core symptoms had poor sleep quality Family Factors: • Lower household income and larger household size (≥ 5) were linked to worse sleep quality • After controlling for demographic factors, caregiver impression of ASD severity was linked to poor child sleep quality Neighborhood and Socio-cultural Factors: • Living in the northeast US region was associated with worse child sleep quality compared to the west |
8– Elkhatib Smidt et al. (2022) | N = 681 a; Mean Age = 12.1 ± 3.5 yrs., Range = 6–12 yrs.; 77.8% Male (n = 530); 75.9% White (n = 517), 8.8% ≥ Two Races (n = 60), 2.1% Other Race (n = 14), 0.3% Pacific Islander (n = 2), 7.1% Black (n = 48), 4.6% Asian (n = 31), 1.3% American Indian/Alaskan Native (n = 9); 12.0% Hispanic (n = 82); US | Caregiver Education: 54.5% College degree or higher (n = 371), 28.9% Associate degree (n = 197), 14.1% HS (n = 96), 2.5% Less than HS (n = 17) | Individual Factors: • After adjusting for covariates, being physically active 1–3, 4–6, and 7 days a week is associated with increased odds of sufficient sleep duration for both ASD and non-ASD children • Probability of sufficient sleep duration was greater for non-autistic children than children with severe ASD • Females had a significantly lower positive effect of physical activity on sleep, compared to non-ASD females • No age-group differences in associations between physical activity and sleep duration were found |
9– Elkhatib Smidt et al. (2020) | N = 4,636; Mean Age = 6.6 ± 3.5 yrs., Range = 2-17.5 yrs.; 83.7% Male; 4.5% Asian, 7.2% African American or Black Canadian, 80.9% White, 7.5% Other/multiracial; 9.2% Hispanic; US/Canada | Caregiver Education: 4.3% < HS, 16.8% Finished HS, 32.8% Some college, 27.9% Bachelor’s degree, 18.2% Postgraduate degree | Individual Factors: • Younger age, Hispanic ethnicity, higher IQ, and a diagnosis of ASD were associated with poorer sleep habits • Poorer skills in daily living, socialization, and communication are associated with poorer sleep habits. Family Factors: • Lower primary caregiver education level was associated with greater sleep problems in children with ASD |
10– Ezell et al. (2016) | N = 5,787; Mean Age = 6.2 ± 3.4 yrs., Range = 1.5–17.6 yrs.; Nonadoptees with ASD (n = 5,624): Mean Age = 6.2 ± 3.4 yrs.; 84.1% Male; 80.5% White, 19.5% Non-White; 8.3% Hispanic/Latino; Adoptees with ASD ( = 163): Mean Age = 7.9 ± 3.8 yrs.; 72.4% Male; 74.2% White, 25.8% Non-White; 10.4% Hispanic/Latino; US | NR | Individual/Family Factors: • There was no association between difficulty staying asleep/restlessness or difficulty falling asleep in adopted and nonadopted children with ASD • Adopted children had significantly more sleep problems and sleep medications than the non-adopted group |
11– Galli et al. (2022) | N = 100; Mean Age = 5.56 ± 2.28 yrs., Range = 2.06–12.68 yrs.; 79% Male (n = 79); Race/Ethnicity NR; Italy | Maternal Highest Education: 1.0% Elementary school (n = 1), 19.0% Middle school (n = 19), 55.0% Vocational or HS (n = 55), 20.0% Bachelor’s degree (n = 20), 5.0% Master’s and/or PhD (n = 5); Maternal Employment Status: 51.0% Unemployed (n = 51), 49.0% Employed (n = 49); Paternal Highest Education: 1.0% Elementary school (n = 1), 23.0% Middle school (n = 23), 57.0% Vocational or HS (n = 57), 15.0% Bachelor’s degree (n = 15), 49.0% Master’s and/or PhD (n = 4); Paternal Employment Status: 95.0% Employed (n = 95), 5.0% Unemployed (n = 5); Marital Status: 87.0% Married (n = 87), 11.0% Single (n = 11), 2.0% Divorced: (n = 2); Household SES (Avg. Hollingshead score): 30.4 (SD = 11.6, range 8–66) | Individual Factors: • Sleep disorders were associated with developmental delay, emotional and behavioral problems, and the absence of strategies used to induce sleep after night wakings • No association was found between sleep problems and epilepsy or between melatonin and resolution of insomnia Family Factors: • No association was found between sleep disturbance and family stress or family variables |
12– Garcia et al. (2020) | N = 49; Mean Age = 12.4 ± 3 yrs., Range 8–17 yrs.; 78% Male (n = 36); 64% White (n = 25); US | NR | Individual Factors • Children who met sleep duration recommendations were significantly younger and had higher physical activity levels than children who did not meet the recommendations • A significantly greater number of children who were “Caucasian” met the criteria for sleep efficiency compared to children from minority groups • Children who met both sleep duration and efficiency criteria had fewer sedentary minutes per day compared to those who only met the sleep efficiency criteria Family Factors: • Children with recommended sleep duration were more likely to meet screen time recommendations |
13– Han et al. (2022) | — | — | Individual Factors: • Sleep problems were correlated with increased clinical symptomatology (e.g., anxiety, depression), and externalizing symptoms (e.g., aggression, hostility), adaptive and executive functioning, and physical health (e.g., healthy eating, physical activity) • Sleep problems were not significantly associated with age across studies Family Factors: • Sleep problems were correlated with family factors, such as SES and family history of medical, neurodevelopmental, and psychiatric conditions |
14– Herrmann (2016) | — | — | Individual Factors: • Children with comorbid hyperactivity, emotional problems, and conduct disorder are at an increased risk of sleep disorders • Developmental regression in children with ASD is linked to higher prevalence of sleep disorders Family Factors • Child sleep problems may be linked to maternal sleep, stress and health |
15– Hodge et al. (2013) | N = 90 a; Mean Age = 7.49 ± NR yrs., Range = 4–12 yrs.; 78.9% Male (n = 71); 43% White, 18% Hispanic, 17% Black or African American, 4% Asian, 1% Middle Eastern, 1% Native American, 16% Other/mixed ethnicity; US | NR | Family Factors • Maternal stress and maternal sleep were each mediating variables through which child sleep problems affected maternal mental health |
16– Iwamoto et al. (2023) | N = 26; Mean Age = 4.45 ± 0.79 yrs., Range = 3–5 yrs.; 73.1% Male (n = 19); 23.1% White, non-Hispanic/Latino (n = 6), 50% White, Hispanic/Latino (n = 13), 11.5% Asian, non-Hispanic/Latino (n = 3), 7.7% Asian, Hispanic/Latino (n = 2), 3.8% Pacific Islander, non-Hispanic/Latino (n = 1), 7.7% Native American & White, Hispanic/Latino (n = 2); US | Caregiver Education: 11.5% Graduate degree (n = 3), 26.9% Bachelor’s degree (n = 7), 23.0% Some college (n = 6), 15.4% Technical or associate degree (n = 4), 19.2% HS or less (n = 5); Household Income (Annual): 26.9% >$90k (n = 7), 23.0% $70k to < $90k (n = 6), 15.4% < $30k (n = 4), 15.4% $30k to <$50k (n = 4), 11.5% $50k to <$70k (n = 3) | Individual Factors: • Shorter sleep duration was associated with greater disruptive behavior Family Factors: • Child behavior was related to parental stress after controlling for sleep duration |
17– Jeon et al. (2023) | N = 68 a; Age Range = 6-12.92 yrs.; United Kingdom ASD (n = 35): Mean Age = 9.21 ± 1.97 yrs.; 74.3% Male (n = 26); Race/Ethnicity NR; 45.7% CARS-2 standard (n = 16), 54.3% high functioning (n = 19); South Korea ASD (n = 33): Mean Age = 8.27 ± 1.89 yrs., 78.8% Male (n = 26); Race/Ethnicity NR | United Kingdom ASD: Family Members: 4.14 ± 0.97 Maternal Highest Education: 34.3% Postgraduate (n = 12), 40.0% Undergraduate (n = 14), 25.7% A-levels, vocational level 3 or equiv. (n = 9) Paternal Highest Education: 15.4% Postgraduate (n = 4), 50% Undergraduate (n = 13), 23.1% A-levels, vocational level 3 or equiv. (n = 6), 7.7% GCSE/O-Level Grade A*C, vocational level 2 or equiv. (n = 2), 3.8% No qualification (n = 1) South Korea ASD: Family Members: 3.91 ± 0.84 Maternal Highest Education: 21.9% Postgraduate (n = 7), 68.8% Undergraduate (n = 22), 9.4% A-levels, vocational level 3 or equiv. (n = 3) Paternal Highest Education: 21.9% Postgraduate (n = 7), 65.6% Undergraduate (n = 21), 9.4% A-levels, vocational level 3 or equiv. (n = 3), 3.1% GCSE/O-Level Grade A*C, vocational level 2 or equiv. (n = 1) | Neighborhood and Socio-cultural Factors: • Significant effects were found in sleep duration and parasomnias in between children with ASD in the UK compared to Korea • Children with ASD in the UK had an earlier bedtime, waketime, longer time in bed, and sleep time than children in Korea with ASD • Children with ASD in Korea had later bedtimes and shorter sleep latency |
18– Johnson et al. (2023) | N = 74; Mean Age = 2–7 yrs.; Sleep Parent Training (n = 36): Mean Age = 3.6 ± 1.4 yrs.; 81% Male (n = 29); 8.3% Black (n = 3), 5.6% Asian/Pacific Islander (n = 2), 81% White (n = 29), 5.6% More than one race/other (n = 2); Sleep Parent Education (n = 38): Mean Age = 3.8 ± 1.4 yrs.; 87% Male (n = 33); 13% Black (n = 5), 2.6% Asian/Pacific Islander (n = 1), 63% White (n = 24), 18% more than one race/other (n = 7), 2.6% unknown (n = 1); US | Sleep Parent Training: Caregiver’s Highest Education: 39% Advanced graduate/professional degree (n = 14), 36% College graduate (n = 13), 14% Some college/post-HS or 2-Year degree (n = 5), 11% HS graduate/GED (n = 4); Child Living Arrangement: 97% Parental home (n = 35), 2.8% Other relative (n = 1) Sleep Parent Education: Caregiver’s Highest Education: 55% Advanced graduate/professional degree (n = 21), 24% College graduate (n = 9), 11% Some college or post-HS or 2-year degree (n = 4), 11% HS graduate/GED (n = 4); Child Living Arrangement: 97% Parental home (n = 37), 2.6% Other relative (n = 1) | Individual Factors: • Children who received the telehealth sleep intervention had greater improvements in bedtime and sleep disturbance • No differences in irritability scores were found across groups Family Factors: • Children who received the sleep intervention vs. the control group did not have any differences in parental stress • Children who received the sleep intervention had improvements in parental self-efficacy scores compared to controls Neighborhood and Socio-cultural Factors: • Telehealth may reduce healthcare costs and enhance access, benefiting those who are underserved and those with lower incomes • 61% lived in rural areas vs. 39% lived in urban areas |
19– Leader et al. (2022) | N = 118; Mean Age = 9.55 ± 3.74 yrs.; 78% Male (n = 92); Race/Ethnicity NR; Ireland | NR | Individual Factors: • Daytime sleepiness was the highest reported sleep disturbance in children age 3–18 years • Children with ASD + ADHD had more sleep problems and bedtime resistance than children with ASD only • ADHD symptoms add to the complexity of ASD and sleep problems |
N = 9; Mean Age = 9.75 ± 2.53 yrs., Range = 7–14 yrs.; 67% Male (n = 6); Race/Ethnicity NR; Ireland | Marital Status: 8% single (n = 1), 67% married (n = 8), 17% divorced (n = 2); Parent Educational Level: 33% Secondary school (n = 4), 67% Tertiary education (n = 8) | Family Factors: • Parental depressive symptoms may be linked to child sleep problems, specifically wake after sleep onset | |
21– Levin and Scher (2016) | N = 66; ASD (n = 35): Mean Age = 3.27 ± 0.44 yrs., Range = 2.4-4 yrs.; 71.4% Male (n = 25); Race/Ethnicity NR; TD (n = 31): Mean Age = 36.23 ± 5.75 months, Range = 25–48 months; 48.4% Male (n = 15); Race/Ethnicity NR; Israel | ASD: Caregiver education (Avg. yrs.): 13.9 (SD = 3.0). Yrs. range: 12–18; Marital Status: 91.2% Married (n = 31), 8.8% Divorced (n = 3); TD: Caregiver education (Avg. yrs.): 15.0 (SD = 2.2). Yrs. range: 12–18; Marital Status: 93.5% Married (n = 29), 6.5% Divorced (n = 2) | Family Factors: • Child sleep problem scores accounted for 39–50% of the variance in maternal stress • Problematic maternal sleep-related cognitions, related to doubts about parenting competence and limit setting difficulties, were linked to greater child sleep problems |
22– Lewis et al. (2023) | — | — | Neighborhood and Socio-cultural Factors: • Children were vulnerable to disrupted sleep during COVID-19 due to environmental stressors • Sleep problems in ASD worsened during COVID-19: reduced sleep duration and quality, difficulty falling asleep, frequent night awakenings, and difficulty waking |
23– MacDonald et al. (2021) | N = 43; Study 1 (n = 10): Mean Age = 8.1 ± 2.5 yrs., Range = 2–10 yrs.; 70% Male (n = 7), Race/Ethnicity NR; Study 2 (n = 33): Mean Age = 6.2 ± 2.7 yrs., Range = 2–12 yrs.; 75.8% Male (n = 25), Race/Ethnicity NR; US | Family SES: Study 1, Avg. Hollingshead score = 36.4 (SD = 11.4) Study 2, Avg. Hollingshead score = 40.0 (SD = 14.8) | Individual Factors: • Modest improvements in sleep and behavior were reported Family Factors: • Parents valued accessible research- and community-based sleep interventions and working with familiar therapists Neighborhood and Socio-cultural Factors: • Community therapists implemented a sleep program |
24– Malow et al. (2014) | N = 80; Individual Education (n = 47): Mean Age = 5.6 ± 2.6 yrs.; 83% Male (n = 39); 80% White (n = 37); Group Education (n = 33): Mean Age = 5.9 ± 2.8 yrs.; 76% Male (n = 25); 84% White (n = 26); US | Family SES: Individual: Avg. Hollingshead score = 44.3 (SD = 13.5) Group: Avg. Hollingshead score = 44.7 (SD = 10.6) | Individual Factors: • Children with ASD had improvements in sleep latency, sleep efficiency, and overall child QoL post sleep education • Children with ASD had improvements in repetitive behavior post sleep education Family Factors: • Parent sleep education for children with ASD was associated with improved parenting sense of competence |
25– Martin et al. (2021) | N = 234; Mean Age = 8.79 ± 2.11 yrs., Range 5–13 yrs.; 64.5% Male (n = 151); Race/Ethnicity NR; Australia | Caregiver Highest Education: 64.1% completed tertiary study (n = 150), 24.8% HS only (n = 58), 11.1% did not complete HS (n = 26); Household Structure: 24.4% Single parent home (n = 57); SEIFA Australia: 1033.03 (SD = 55.74, range: 795–1117) | Family Factors: • Associations were found between sleep initiation and duration and maternal mental health • Specific child sleep problems were not associated with HRQoL or parenting stress Neighborhood and Socio-cultural Factors: • Child sleep problems and an area deprivation index, reflecting neighborhood-level SES, were associated with poorer maternal well-being, but associations between this index and sleep problems were not assessed |
26– Masi et al. (2022) | N = 969; Age Range = 2–17 yrs.; 78.7% Male (n = 763); Race/Ethnicity NR; Australia | Family Income (Annual): 29.8% <$70k (n = 234), 25.6% $70k to $104k (n = 203), 44.3% >$104k (n = 348) | Individual Factors: • Children with ASD have a greater severity of sleep problems compared to non-ASD siblings and unrelated children • Females had greater bedtime resistance, reduced sleep duration, increased sleep anxiety, and daytime sleepiness than males Family Factors: • Low family income was linked to greater severity of sleep problems |
27– Mazurek and Petroski (2015) | N = 1,347; 2–5 yrs. (n = 461): Mean Age = 4.69 ± 0.79 yrs.; 82.9% Male (n = 382); 90.2% White (n = 403); 9.8% Other Race (n = 44); 6–18 yrs. (n = 886): Mean Age = 9.60 ± 2.91 yrs.; 85.9% Male (n = 761); 90.8% White (n = 779); 9.2% Other Race (n = 79); US & Canada | Caregiver Highest Education (Age 2–5 yrs.): 0.7% some HS (n = 3), 7.9% HS (n = 34), 28.3% some college (n = 122), 30.9% Bachelor’s degree (n = 133), 32.2% Postgraduate education (n = 139); Caregiver Highest Education (Age 6–18 yrs.): 1.1% some HS (n = 9), 9.4% HS (n = 80), 30.4% some college (n = 259), 30.4% Bachelor’s degree (n = 259), 28.8% Postgraduate education (n = 246) | Individual Factors: • Children with anxiety and sensory over-responsivity are at risk for sleep problems • Hyperarousal may be an underlying mechanism of sleep disturbance for some children with ASD • Anxiety was associated with bedtime resistance, sleep-onset delay, sleep duration, sleep anxiety, and night wakings |
28– McLay et al. (2020) | N = 244; Age NR; Sex NR; 77% New Zealand European/Pakeha (n = 187), 6.6% Maori (n = 16), 4.8% Asian (n = 11), 10.7% Other (n = 26); New Zealand, US, & Australia | Caregiver Highest Education: 66% University degree (n = 160); Caregiver Employment: 52% Employed (n = 127), 25% Homemaker (n = 60), 12.3% Self-employed (n = 30), 6.1% Unable to work (n = 15), 3.7% Student (n = 9), 1.2% Retired (n = 3); Household Structure: 78.3% married (n = 191), 12% divorced/separated (n = 29), 7% single (n = 17), 0.8% same sex (n = 2), 1.2% widowed (n = 3); Family Income (Annual): 73% $50 to $100k+ (n = 179); Family Size: 6.6% one (n = 16), 20.5% two (n = 50), 43% three (n = 105), 30% 4 + members (n = 72) | Individual Factors: • Parents believed that child’s sleep problems were linked to intrinsic ASD features and were part of who they (children) were and were unlikely to change without treatment Family Factors: • Parental attributions about child sleep: 67% of parents reported they tried a sleep intervention for their child more than once and parents reported trying on average six different treatments for sleep problems and 68% tried medication to treat sleep problems |
29– Papadopoulos et al. (2021) | N = 56; ASD + ID (n = 34, 91%): Mean Age = 8.91 ± 2.21 yrs.; 91.2% Male (n = 31), Race and Ethnicity NR; ASD (n = 22, 73%): Mean Age = 9.59 ± 2.26 yrs.; 72.7% Male (n = 16), Race and Ethnicity NR; Australia | ASD + ID: Caregiver Highest Education: 8.8% Completed year 10 (n = 3), 8.8% completed HS (n = 3), 41.2% completed tertiary school (n = 14); Marital Status: 79.4% couple (n = 27), 20.6% Single (n = 7); Caregiver Employment: 67.6% employed (n = 23); Household Structure: 76.5% lives with both parents (n = 26); ASD: Caregiver Highest Education: 9.1% Completed year 10 (n = 2), 50% completed tertiary school (n = 11); Marital Status: 86.4% couple (n = 19), 13.6% single (n = 3); Caregiver Employment: 54.5% employed (n = 12); Household Structure: 86.4% lives with both parents (n = 19) | Individual Factors: • Emotional and behavioral problems were associated with sleep problems in children with ASD and ASD + ID • In children with ASD + ID and ASD, emotional and behavioral problems were associated with sleep problems Family Factors: • In children with ASD, parent mental health was associated with sleep problems |
30– Pattison et al. (2022) | N = 123; Mean Age = 8 ± NR yrs., Range = 5–13 yrs.; 65% Male; Race/Ethnicity NR; Australia | Caregiver Highest Education: 67% completed tertiary study (n = 82) | Individual Factors: • Barriers to implementation of the sleep intervention included child illness and anxiety Family Factors: • Barriers to implementation of the sleep intervention included parent anxiety • Facilitators to implementation of the sleep intervention included family support and consistency and patience in implementing strategies • Parents valued practical child sleep resources tailored to the family |
31– Phung et al. (2019) | N = 20–28; Study 1 (n = 28)a: Mean age = 14.64 ± 1.97 yrs., Range = 12–18 yrs.; 89.3% Male; 45.2% White, 35.5% Multiracial/other, 19.3% Hispanic/Latino; Study 2 (n = 20)a: Mean age = 16.74 ± 2.52 yrs., range 11–20 yrs.; 80% Male; 45% White, 30% Multiracial/other, 25% Hispanic/Latino; US | NR | Individual Factors: • Sleep quality and amount were associated with depressive symptoms Family Factors: • Daytime sleepiness was correlated with mother-adolescent discordance and depressive symptoms • Adolescent-reported discordance with siblings was correlated with objective sleep measures |
32– Richdale and Schreck (2009) | — | — | Individual Factors: • Some children with ASD have a disturbance in melatonin production and circadian timing • Insomnia in children with ASD is linked to unfavorable bedtime routines and disruptive behaviors Family Factors: • Sleep problems in children with ASD can increase psychological distress of family members |
33– Roberts et al. (2017) | N = 70; Mean Age = 7.32 ± NR yrs., Range 4–12 yrs.; 75.7% Male (n = 53); 80% White (n = 56); US | Family’s Financial Status: 8.57% Unable to meet financial needs (n = 6), 38.57% Can consistently meet financial needs (n = 27); Household Structure: 18.57% Single-parent household (n = 13) | Individual Factors: • Children with ASD + ADHD had worse sleep than those without ADHD • Child age, time since ASD diagnosis, and medication use was not associated with sleep Family Factors: • Family strain, family distress, and negative resilience were higher in families of children with sleep problems |
34– Shui et al. (2023) | N = 950; All cohorts: Age Range = 2–5 yrs.; 80.6% Male (n = 766), 82.8% White (n = 764), 17.2% Non-White (n = 159); US & Canada | Caregiver Highest Education: Completed at least some college: Cohort 1: 86% (n = 86), Cohort 2: 83% (n = 166), Cohort 3: 84.8% (n = 156), Cohort 4: 81.5% (n = 163), Cohort 5: 81.1% (n = 198); Completed at most HS: Cohort 1: 14% (n = 14), Cohort 2: 17% (n = 34), Cohort 3: 15.2% (n = 28), Cohort 4: 18.5% (n = 37), Cohort 5: 18.9% (n = 46) | Individual Factors: • Significant factors in developing sleep problems are self-injurious behavior, sensory issues, and dental problems • Predictors of future sleep problems include dental problems, racial/ethnic status, sensory issues, and self-injurious behavior • Racial and ethnic minoritized background was associated with poorer child sleep Family Factors: • A significant factor in developing sleep problems was lower caregiver education longitudinally |
35– Singer et al. (2019) | Commentary based on Tomkies et al. (2019) | — | Individual Factors: • Children with OSA did not have differences in demographics or clinical characteristics compared to those without OSA • Hispanic ethnicity and African American race were associated with severe OSA, but more likely due to higher weight rather than ASD |
36– Tomkies et al. (2019) | N = 45; Mean Age = 6.1 ± 2.8 yrs., range 2–14 yrs.; 80% Male (n = 36); 49% Hispanic/Latino (n = 22), 27% Black or African American (n = 12), 22% White (n = 10), and 2.2% other (n = 1); US | NR | Individual Factors: • 58% of the children had OSA and of those 35% had severe OSA • Comorbidities like seizure, cerebral palsy, and ADHD were not determined to be predictors of OSA • Higher weight was a predictor of severe OSA and Hispanic and African American children were more likely to be obese |
37– Waddington et al. (2020) | N = 203; Mean age = 8.47 ± 4.08 yrs., range 2–18 yrs.; 80% Male (n = 163); Race and Ethnicity NR; Australia | Family Income: 25% <$70k (n = 49), 26% $70k to $104k (n = 51), 41% >$104k (n = 82), 9% Prefer not to say (n = 17); Maternal Highest Education: 16% < 12 yrs. (n = 32), 22% 12 yrs. (n = 45), 21% Trade/technical certificate (n = 43), 41% Completed/completing university (n = 83); Paternal Highest Education: 21% < 12 yrs. (n = 41), 13% 12 yrs. (n = 26), 32% Trade/technical certificate (n = 63), 33% Completed/completing university (n = 65) | Individual Factors: • Increased sleep disturbance was associated with greater ASD symptom severity, anxiety, depression, and child seizures Family Factors: • Increased sleep disturbance was associated with lower paternal education, lower family income, and maternal ASD traits • Strongest predictor of sleep disturbance was maternal ASD traits |
38– Wang et al. (2016) | N = 60; Mean age = 11.53 ± 2.92 yrs., range 6–17 yrs.; 83.3% Male (n = 50); Race and Ethnicity NR; China | Caregiver Highest Education: 53.7% Undergraduate degree or above (n = 29), 46.3% HS or below (n = 25); Family Income: 62% < 100,000 RMB Yuan (n = 31), 38% ≥ 100,000 RMB Yuan (n = 19); Household Structure: 86.5% Two parents (n = 45), 9.6% Single parent (n = 5), 3.8% Remarried or Other (n = 2) | Individual Factors: • Sleep disturbance was correlated with poorer prosocial behavior, higher hyperactivity, and female sex Family Factors: • Sleep disturbance was correlated with older parental age • Parental education, marital status, family income, living space, noise in the house, and co-sleeping did not predict child sleep disturbance |
39– Whelan et al. (2022) | — | — | Individual Factors: • Children with ASD with sleep problems had more disruptive behavior, such as irritability, hyperactivity, and aggression • Poor sleep was linked to anxiety and emotional problems • Sleep duration and sleep latency were linked to social functioning • ASD symptom severity was increased by short sleep duration |
40– Williams et al. (2004) | N = 210; Mean Age = 8.4 ± NR yrs., range 2–16 yrs.; 80.5% Male (n = 169); Race and Ethnicity NR; 63% were designated “MR” (n = 127); US | NR | Individual Factors: • Difficulty falling asleep, restless sleep, not falling asleep in own bed, and frequent night wakings were the most frequently reported sleep problems • Nighttime wakings were significantly more common in the “MR group” versus the “not MR group” • No difference in sleep problems related to the child’s age except for nocturnal enuresis • Vision problems, runny nose, and upper respiratory problems were associated with decreased sleep • Vision problems, poor appetite, and poor growth were associated with increased night wakings • Decreased willingness to fall asleep was associated with poor appetite and poor growth |
41– Won et al. (2019) | N = 1,069; Mean age = 7.7 ± 3.8 yrs.; 81% Male (n = 856); 66.9% White (n = 651), 20.5% Black (n = 199), 5.0% Asian or Pacific Islander (n = 49), 7.6% Other Race (n = 74); 79.3% non-Hispanic/Latino (n = 772); US | Caregiver Highest Education: 45.4% College graduate and above (n = 316), 44.3% HS graduate/some college (n = 308), 10.3% < HS (n = 72); Medical Insurance: 49.9% private (n = 487), 45.0% public (n = 439), 2.3% public + private (n = 22), 2.9% other (n = 28) | Individual Factors: • Sleep problem documentation differed by age group • Maladaptive behaviors may take precedence over sleep problems in children with ASD + ADHD, which results in under-reporting of sleep problems by pediatricians Neighborhood and Socio-cultural Factors: • Sleep problems differed by medical insurance type and site • Public + private medical insurance was associated with more sleep problems |