| Literature DB >> 35270593 |
Isobel Sharpe1, Colleen M Davison1.
Abstract
Children, particularly those living in low- and middle-income countries (LMICs), are highly vulnerable to climate change and its impacts. Our main objective was to conduct a scoping literature review to determine how exposure to climate change and climate-related disasters influences the presence of mental disorders among children in LMICs. We also aimed to identify gaps in this area of scholarship. We included studies of children in LMICs that had a climate change or climate-related disaster exposure and mental disorder outcome. Twenty-three studies were included in the final synthesis. Fourteen studies were conducted in China, three in India, two each in Pakistan and the Philippines, and one each in Namibia and Dominica. All studies assessed the association between a climate-related disaster exposure and a mental disorder outcome, while none explored broader climate change-related exposures. Post-traumatic stress disorder (n = 21 studies) and depression (n = 8 studies) were the most common mental disorder outcomes. There was considerable between-study heterogeneity in terms of sample size, follow-up length, and outcome measurement. Overall, the literature in this area was sparse. Additional high-quality research is required to better understand the impacts of climate-related disasters and climate change on mental disorders within this population to ultimately inform future policies and interventions.Entities:
Keywords: LMICs; children; climate change; climate-related disasters; low and middle income; mental disorders; mental health; scoping review
Mesh:
Year: 2022 PMID: 35270593 PMCID: PMC8910112 DOI: 10.3390/ijerph19052896
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Scoping review inclusion and exclusion criteria.
| Inclusion Criteria | Exclusion Criteria | |
|---|---|---|
| Population | - Child focused (study population with mean age 18 years and under) | - Adult focused (study population with mean age over 18 years) |
| Intervention (Exposure) | - Climate-related disaster exposure (see | |
| Comparison | - Any | |
| Outcome | - Mental disorders (anxiety, depression, post-traumatic stress, acute stress, substance use and addiction, bipolar, schizophrenia, suicidal behavior, non-suicidal self-injury) evaluated based on DSM or ICD symptoms | - Mental disorders not evaluated based on DSM or ICD symptoms |
| Study Design | Any type of empirical literature, including | - Narrative reviews, syntheses (scoping reviews, systematic reviews, meta-analyses, etc.), commentaries, editorials, expert opinions |
Abbreviations: Diagnostic and Statistical Manual of Mental Disorders (DSM); International Classification of Diseases (ICD). 1 Based on the World Bank’s designation of a low- and middle-income country (includes low-, lower-middle, and upper-middle-income economies) [33]. 2 Climate change is a challenging concept to define and measure. We chose to include studies where the study author explicitly mentioned that they were investigating the effects of climate change (e.g., used the words “climate change” when describing the study exposure). 3 The Intergovernmental Panel on Climate Change’s fourth assessment report (AR4) was published in 2007, in which the authors began to acknowledge the impacts of climate change on human health and well-being. This approach was taken in a similar scoping review by Middleton and colleagues [34].
Figure 1PRISMA diagram showing the study inclusion process.
Figure 2World map showing the 12 unique climate change exposures captured by the included studies (dark blue countries). The climate change events took place in China (n = 4), India (n = 3), Philippines (n = 2), Pakistan (n = 1), Namibia (n = 1), and Dominica (n = 1). The remaining low- and middle-income countries are colored light blue and high-income countries are colored grey.
Figure 3Included studies (n = 23) by year and country.
Summary of all included studies (n = 23). All studies were quantitative unless otherwise specified.
| Study ID | Design | Sample Size and Population | Sampling Method | Climate-Related Disaster Exposure(s) | Mental Disorder Outcome(s) | Outcome Measurement Tool(s) | Post-Exposure Follow-Up Length | Main Findings (on the Association between Climate-Related Disasters and Mental Disorders) | Mental Disorder Prevalence Estimates |
|---|---|---|---|---|---|---|---|---|---|
| China ( | |||||||||
| An-2019 | Prospective cohort | 154 middle school students | Multistage cluster random sampling | Tornado | PTSD, depression | CPSS, CES-DC (self-reported surveys) | 6 (T1), 9 (T2), and 12 (T3) months | Post-tornado PTSD and depression: 55.84% and 56.49% at T1, 50.0% and 65.58% at T2, 47.40% and 66.01% at T3; PTSD at T1 significantly predicted depression at T2 ( | |
| An-2018a | Cross-sectional | 443 junior high school students | Multistage cluster random sampling | Tornado | PTSD | CPSS | 12 months | ||
| An-2018b | Prospective cohort | 204 middle school students | Multistage cluster random sampling | Tornado | PTSD | CPSS | 6 and 9 months | ||
| Li-2010 [ | Cross-sectional | 4327 children aged 7–15 and their parents | Multistage cluster random sampling | Flood (Dongting Lake) | PTSD | DSM-IV criteria | 18 months | Presence of PTSD was significantly greater among children who experienced flash or drainage problem flooding, experienced moderate (25–49% of total village area) or severe (≥50% of total village area) flooding, were dropped into water, were trapped in water, had a serious injury, had seriously injured relatives, witnessed somebody drown, had death of a family member or friend, were trapped in water near a dead body, had previous flood experience, were separated from family members, had teachers or classmates drown, had class suspended, had the following school semester postponed, and had parents with PTSD (all | Post-flood PTSD: children 4.7%, parents 11.2% |
| Peng-2011 [ | Cross-sectional | 7038 children aged 7–15 | Multistage cluster random sampling | Flood (Dongting Lake) | PTSD | DSM-IV criteria | ~18 months | Flood type (flash > collapsed > soaked) and whether school reopening was delayed (yes > no) were significantly associated with PTSD ( | Post-flood PTSD: 2.05% |
| Quan-2017 [ | Cross-sectional | 951 middle school students | Multistage cluster random sampling | Rainstorms | PTSD | PCL-5 | 1 week | Presence of PTSD was significantly correlated with rainstorm-related experiences and perceived severity of disaster ( | Post-rainstorm PTSD: 15.2% identified as probable cases |
| Wu-2011 [ | Cross-sectional | 968 students who walked home during storm | Convenience sampling | Snowstorm | PTSD | IES-R | 3 months | Walk time (5+ hours > 2–5 h > 0–2 h) and walk distance (20+ km > 10–20 km > 0–10 km) were significantly associated with PTSD ( | Post-snowstorm PTSD: 14.5% |
| Xu-2018a [ | Cross-sectional | 247 middle school students (grades 7–9) | Multistage cluster random sampling | Tornado | PTSD, depression | CPSS, CES-DC | 3 months | Significantly greater odds of PTSD among children who had injured relatives/friends (OR 1.98, 95% CI 1.01–3.92), feared injury/death (OR 1.92, 95% CI 1.14–3.24); significantly greater odds of depression among children who had injured relatives/friends (OR 2.05, 95% CI 1.03–4.07) | Post-tornado PTSD: 57.5%, depression: 58.7% |
| Xu-2018b | Cross-sectional | 431 middle school | Multistage cluster random sampling | Tornado | Depression | CES-DC | 9 months | ||
| Xu-2018c | Cross-sectional | 247 middle school | Multistage cluster random sampling | Tornado | PTSD, depression | CPSS, CES-DC | 6 months | ||
| Yuan-2018a | Cross-sectional | 431 middle school | Multistage cluster random sampling | Tornado | PTSD | CPSS | 9 months | ||
| Yuan-2018b | Cross-sectional | 247 middle school | Multistage cluster random sampling | Tornado | PTSD | CPSS | 3 months | ||
| Zhang-2018 | Cross-sectional | 443 middle school | Multistage cluster random sampling | Tornado | PTSD | CPSS | 12 months | ||
| Zhen-2016 (same sample as Quan-2017) | Cross-sectional | 951 middle school | Multistage cluster random sampling | Rainstorms | PTSD | PCL-5 | 2 months | PTSD was significantly correlated with severity of rainstorm-related experiences ( | |
| India ( | |||||||||
| Chowhan-2016 [ | Cross-sectional | 100 children aged 6–17 from local school | Systematic sampling | Snowstorm, avalanche | DSM-IV disorders | MINI-KID | 5 years | Observed 54 post-event diagnoses among 41 patients: PTSD (14), GAD (5), separation anxiety disorder (4), MDD (4), dysthymia (3), agoraphobia (3), social phobia (3), adjustment disorder (3), suicidality (2), PD (2), mania (1), specific phobia (1), substance abuse (1) | |
| Hassan-2018 | Cross-sectional | 64 children who had resumed schooling | Convenience sampling | Flood | PTSD | Quantitative: CRIES-8; Qualitative: group discussions | 1 month | Main qualitative themes: initial reactions to shock, intrusion, flashbacks, avoidance, difficulty in concentration, and helplessness and sadness | |
| Kar-2007 [ | Cross-sectional | 447 students | Multistage stratified cluster random sampling | Cyclone | PTSD, MDD | Psychiatrist evaluation using ICD-10-DCR criteria | 12 months | Exposure level was significantly associated with PTSD (high vs. low OR 4.10, 95% CI 2.30–7.30) | Post-cyclone PTSD: 30.6% (an additional 13.6% considered subsyndromal); MDD: 23.7% (comorbid with PTSD in 34.3% |
| Pakistan ( | |||||||||
| Ahmad-2011 [ | Cross-sectional | 522 students aged 10–16 | Random sampling | Flood | PTSD | IES-R | 4 months | PTSD score significantly higher among those who were displaced vs. those who were not displaced ( | Post-flood PTSD: 3.06% none, 14.17% partial, 8.81% probable, 73.94% high |
| Sitwat-2015 [ | Cross-sectional | 205 females aged 13–19 | Purposive sampling | Flood | PTSD, GAD, MDD | Diagnostic interview using DSM-IV-TR | ~12 months | Post-flood PTSD: 2%, GAD: 1%, MDD: 2% | |
| Philippines ( | |||||||||
| Mordeno-2018 [ | Cross-sectional | 225 child and adolescent | Convenience sampling | Typhoon (Washi) | ASD, depression | ASDI (interview), DSRS-C | 1 month | ||
| Nalipay-2018 [ | Cross-sectional | 446 college | Convenience sampling | Typhoon (Haiyan) | PTSD | PCL-5 | 3 months | Post-typhoon PTSD: 16.14% | |
| Namibia ( | |||||||||
| Taukeni-2016 [ | Cross-sectional | 429 students | Stratified sampling | Flood | PTSD | CTSQ | 2 years | Post-flood PTSD: 72.8% of children 13+, 55.2% of children <13 | |
| Dominica ( | |||||||||
| Tavernier-2019 [ | Cross-sectional | 174 college students | Not specified (sample from a larger study) | Tropical | PTSD | Adapted PTSD Checklist | 6 months | PTSD was significantly correlated with severity of tropical storm exposure ( | |
Abbreviations: ASD (acute stress disorder), ASDI (Acute Stress Disorder Interview), DSM (Diagnostic and Statistical Manual of Mental Disorders), DSRS-C (Depression Self-Rating Scale for Children), CES-DC (Center for Epidemiologic Studies Depression Scale for Children), CPSS (Child PTSD Symptom Scale), CRIES-8 (Children’s Revised Impact of Event Scale), CTSQ (Child Trauma Screening Questionnaire), GAD (generalized anxiety disorder), ICD-DCR (International Classification of Diseases—Diagnostic Classification for Research), IES-R (Impact of Events Scale—Revised), MDD (major depressive disorder), MINI-KID (Mini International Neuropsychiatric Interview for children and adolescents), PCL-5 (PTSD Checklist for DSM-5), PD (panic disorder), and PTSD (post-traumatic stress disorder).