| Literature DB >> 35897477 |
Darshnika Pemi Lakhoo1, Helen Abigail Blake2,3, Matthew Francis Chersich1, Britt Nakstad4,5, Sari Kovats6.
Abstract
Children, and particularly infants, have physiological, anatomic, and social factors that increase vulnerability to temperature extremes. We performed a systematic review to explore the association between acute adverse infant outcomes (children 0-1 years) and exposure to high and low ambient temperatures. MEDLINE (Pubmed), Embase, CINAHL Plus, and Global Health were searched alongside the reference lists of key papers. We included published journal papers in English that assessed adverse infant outcomes related to short-term weather-related temperature exposure. Twenty-six studies met our inclusion criteria. Outcomes assessed included: infant mortality (n = 9), sudden infant death syndrome (n = 5), hospital visits or admissions (n = 5), infectious disease outcomes (n = 5), and neonatal conditions such as jaundice (n = 2). Higher temperatures were associated with increased risk of acute infant mortality, hospital admissions, and hand, foot, and mouth disease. Several studies identified low temperature impacts on infant mortality and episodes of respiratory disease. Findings on temperature risks for sudden infant death syndrome were inconsistent. Only five studies were conducted in low- or middle-income countries, and evidence on subpopulations and temperature-sensitive infectious diseases was limited. Public health measures are required to reduce the impacts of heat and cold on infant health.Entities:
Keywords: SIDS; ambient temperature; cold exposure; heat exposure; infant health; mortality; neonatal health
Mesh:
Year: 2022 PMID: 35897477 PMCID: PMC9331681 DOI: 10.3390/ijerph19159109
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 4.614
Figure 1The factors that could increase temperature vulnerability in infants compared to older children and adults [15,16,17,18,19,20].
Inclusion and exclusion criteria using the PECOS framework.
| PICOS Framework | Inclusion | Exclusion |
|---|---|---|
| People | Results report for infants 0–1 year age group | If infants were included in wider range of age, e.g., 0–2 or 0–5 years old, and not specifically for 0–1 years |
| Exposure and comparator (considered together) | Weather related, high and low temperatures | Non-weather-related temperature exposures, e.g., incubators, baths, or infant body temperature |
| Short term exposure, i.e., temperatures 0–14 days before event | Seasonality, monthly temperature and/or temperature exposure >14 days prior to outcome measures | |
| Indoor and outdoor ambient temperature | Factors such as ozone and pollution that may be secondarily affected by temperature | |
| Exposure after birth | Diurnal temperature range, or mean day-to-day temperature changes | |
| Humidity only as exposure | ||
| Outcomes | Any adverse health outcomes | Birth-related outcomes—pre-term birth, stillbirth, low birth weight, and birth defects |
| Setting | All countries/regions | |
| Type of study design | Quantitative observational study designs | Conference abstracts, case studies, editorials, opinion papers, reviews, protocols, modelling studies, and systematic or narrative reviews |
| Type of paper | English language | Grey literature |
| Peer-reviewed, published literature | ||
| Published from January 2000–July 2020 |
Diurnal temperature range—difference between daily minimum and maximum temperatures.
Figure 2PRISMA flow diagram that illustrates the study selection process.
Summary of study findings that assess temperature effects on all-cause infant mortality and SIDS.
| Main Author (Year) | Research Design | Location, Year of Study | Description of Climate | Main Temperature Exposure Variable(s) | Statistical Analysis | Outcomes Measure (Source of Data) | Effect Estimates |
|---|---|---|---|---|---|---|---|
| All-Cause Mortality | |||||||
| Basu (2008) [ | Case-crossover | California, USA 1999–2003 | Mean apparent temperature in warm season: 21.4 °C | Mean daily apparent temperature. Lag 0 days | Time-stratified case-crossover | Nonaccidental infant death. Sample size not provided for this age group (routine data) | 4.9% (95%CI = 1.0, 7.1%) increase in mortality for every 4.7 °C increase in temperature (no threshold presented). |
| Basu (2015) [ | Case-crossover | California, USA, 1999–2011 | Mean temperature in warm season in coastal area, 17.8 °C and in non-coastal area 20.8 °C | Mean daily apparent temperature in warm season. Lag 0–3 days | Time-stratified case-crossover | 12,356 infant deaths (routine data) | Increase in all-cause mortality by 4.4% (95%CI = −0.3, 9.2) per 5.6 °C increase temperature (no threshold presented). For stratified analysis; all-cause mortality in black race/ethnic group: 13.3% (95%CI = 0.6, 27.6). |
| Schinasi (2020) [ | Case-crossover | Philadelphia, USA, 2000–2015 | Humid, subtropical climate. Mean dry bulb temperature 23.3 °C in warm season | Minimum daily temperature in warm season. Lag 0–3 days | Time-stratified case-crossover | 1522 all-cause infant deaths (routine data) | OR comparing 23.9 °C and 26.1 °C with 4.4 °C were 2.1 (95%CI = 1.2, 3.6) and 2.6 (95%CI = 1.3, 5.0), respectively. Risk of infant mortality increased by 22.4% (95%CI = 5.0, 42.6) for every 1 °C increase in temperature above 23.9 °C. No evidence of effect modification. |
| Son (2017) [ | Retrospective cohort | 7 cities in South Korea, 2004–2007 | Climate varies across cities. Average 13.0 °C–14.8 °C. | Mean daily temperature averaged 2 weeks before death | Cox proportional hazards model | 557 all-cause infant mortality and SIDS (routine data) | HR for 1 °C increase in temperature during 2 weeks before death; 1.51 (95%CI = 1.45, 1.56) for total mortality and 1.50 (95%CI = 1.35, 1.66) for SIDS. No evidence of effect modification. |
| Basagaña (2011) [ | Case-crossover | Catalonia, Spain, 1983–2006 | Mediterranean climate. Average maximum temperature 19.9 °C–27.4 °C. 95th percentile of maximum temperature in warm season was 27.3 °C–38.0 °C | Maximum daily temperature during warm season over 95th percentile. Lag 0–6 days | Time-stratified case-crossover | 3144 deaths on hot days (routine data) | RR 1.25 (95%CI = 1.02, 1.53) on hot day as compared to non-hot day. |
| Fouillet (2006) [ | Heat episode analysis | France, August 2003 | Temperate oceanic climate. During heatwave, temperature exceeded 35° for at least 9 days in most French departments | Daily minimum and maximum temperatures for very hot days | Excess mortality (observed over expected deaths) | Excess mortality in infant population (0.4 million) (routine data) | Excess of 25 deaths in male infants; mortality ratio 1.3 (95%CI = 1.0, 1.6) of observed over expected deaths during same time period. No excess mortality observed in females. |
| Diaz (2004) [ | Retrospective cohort | Madrid, Spain, 1986–1997 | Mediterranean climate. Mean maximum temperature 19.7 °C. | Maximum, minimum, and temperature in cold wave. Lag 0–7 days | Poisson regression models | Infant mortality (sample size not provided for this age group) (routine data) | 17.4% of deaths are attributable to cold wave. RR 1.21 (95%CI = 1.10, 1.32) per 1 °C, below 6 °C, at lag 4 days. |
| Karlsson (2020) [ | Retrospective cohort | Northern Sweden 1860 –1899 | Sub-artic climate. Mean monthly temperatures 14.8 °C–15 °C | Mean daily temperature. No lags. | Time-event binomial regression model | 330 neonatal deaths (parish registers) | Temperature at and after birth not associated with increased risk of neonatal mortality for whole study population. Sami infants had a higher mortality risk than winter-born non-Sami infants with lower temperatures on day of birth, HR 1.46 (95%CI = 1.07, 2.01). |
| Scalone (2018) [ | Retrospective cohort | Northern Italy, 1820–1900 | Prolonged rainy and dry periods with frequent violent weather events. Mean temperatures 1.2 °C–20.7 °C | Minimum daily temperature. No lag. | Multivariate statistical analysis, using event-history techniques | 175 neonatal deaths (parish registers) | Temperature at birth had a significant effect on neonatal mortality; RR 0.911 SE 0.028, |
| SIDS | |||||||
| Jhun (2017) [ | Case-crossover | 210 cities in USA 1972–2006 | 8 climate clusters were created given variability across different cities | Mean temperature. Lag 0–2 days | Time-stratified case-crossover | 60,364 SIDS cases (routine data. ICD 8–795.0, ICD 9–798.0 and ICD 10-R95.0) | 8.6% (95%CI = 3.6, 13.8) increase in SIDS risk for 5.6 °C increase in temperature. 3.1% (95% CI = −5.0, −1.3) decrease in the winter. Summer risks were greater among black infants 18.5% (95%CI = 9.3, 28.5) compared to white infants 3.6% (95%CI = −2.3, 9.9) |
| Auger (2015) [ | Case-crossover | Montreal, Canada1981–2010 | Continental climate with hot summers and cold winters. Maximum temperatures ranged from −1.5 °C to 33.8 °C on days before SIDS occurred. | Maximum temperature during warm months. Lag 0–2 days | Time-stratified case-crossover | 196 SIDS cases (routine data) | Same-day maximum daily temperature of 24 °C, 27 °C and 30 °C when compared to 20 °C increased the odds of SIDS by 1.41 (95%CI = 1.17, 1.69), 2.12 (95%CI = 1.43, 3.14) and 3.18 (95%CI = 1.76, 5.77), respectively. |
| Waldhoer (2017) [ | Case-crossover | Vienna, Austria1984–2014 | Continental climate. Mean maximum temperatures on day before and day of SIDS 14.4 °C–28.9 °C | Maximum daily temperature. Lag 0–1 days | Time-stratified case-crossover | 187 SIDS cases (routine data. ICD 10-R95.0, ICD 9–798.0 and mentioned autopsy) | OR for SIDS at same day temperatures of 24 °C, 27 °C and 30 °C compared to 20 °C were 1.05 (95%CI = 0.87, 1.27), 1.13 (95%CI = 0.76, 1.68), and 1.23 (95%CI = 0.67, 2.29), respectively. |
| Scheers-Masters (2004) [ | Retrospective cohort | Arkansas, Georgia, Kansas and Missouri, USA1980 | Temperate climate | Daily average and maximum temperatures | Chi-squared test for trend. Spearman’s rank correlation coefficient | 111 SIDS cases (ICD 9–79.8) and heat-related mortality (ICD 9–900: Death due to excessive heat due to weather conditions) | No increase in SIDS rate with increasing average ( |
| Chang (2013) [ | Case-control | Taiwan 1994–2003 | Temperate climate | Daily maximum temperature categorised into percentiles | Log-liner model | 1671 SIDS cases (routine data, ICD 9–789) | Risk of SIDS at the lowest percentile <5th (9.2–14.2 °C) compared to 45th–55th percentile (21.9–23.3 °C) is 2.10 (95%CI = 1.67, 2.64). Daily mean temperature in 85th–95th percentile (26.4–27.3 °C) and >95th percentile (27.3–33.2 °C) associated with reduced risk of SIDS 0.60 (95%CI = 0.46, 0.79) and 0.61 (95%CI = 0.50, 0.75), respectively. |
CI–confidence interval; OR—odds ratio; HR—hazard ratio; RR—relative risk; SE—standard error; SIDS—sudden infant death syndrome; lag—effects of temperature may reflect exposure on the preceding days. Cold exposure.
Summary of the study findings that assess temperature effects on hospital visits/admissions, infectious diseases and other neonatal outcomes.
| Main Author (Year) | Research Design | Location, Year of Study | Description of Climate | Main Temperature Exposure Variable(s) | Statistical Analysis | Outcomes Measures (Source of Data) | Effect Estimates |
|---|---|---|---|---|---|---|---|
| All-Cause/Heat-Related Hospital Visits and/or Admissions | |||||||
| Sheffield (2018) [ | Case-crossover | New York City, USA 2005–2011 | Continental climate. | Minimum, maximum and average apparent daily temperature. Lag 0–6 days | Time-stratified case-crossover | 278,114 all-cause emergency department (ED) visits (hospital records, all-cause diagnostic codes) | Positive association with maximum temperature; 0.6% (95%CI = 0.1, 1.1). |
| Xu (2017) [ | Time-series analysis | Brisbane, Australia2005–2015 | Humid, sub-tropical climate. Mean temperature 9.0 °C–30.9 °C | Mean daily temperature. Nine different heatwave definitions | Poisson generalised additive model and distributed lag non-linear model | 53,792 all-cause hospital admissions (hospital records) | When mean temperature was >97th percentile, the RR of hospital admissions increased by 1.05 (95%CI = 1.01, 1.10), and then further increased to 1.18 (95%CI = 1.05, 1.32) when duration of heatwave increased from 2 days to 4 days. No evidence of effect modification. |
| Kakkad (2014) [ | Retrospective cohort | Ahmedabad, India 2009–2011 | Warm, dry conditions that often include heat waves. Average monthly maximum of 38.8 °C between March and June. Heat wave in May 2010, maximum temperature 46.8 °C. | Daily maximum temperature. No lags. | Generalised linear models and segmented regression. | Heat-related illness in neonatal admissions—defined as diagnosis of exclusion when body temperature >38 °C with any signs and symptoms such as refusal to feed, signs of dehydration, increased respiratory rate, convulsions and/or lethargy (hospital records) | Above 42 °C, each temperature increase of a degree was associated with a 43% increase in heat-related admissions (95%CI = 9.2, 88). |
| Mannan (2011) [ | Retrospective cohort | Sylhet district, Bangladesh2004–2006 | Tropical monsoon climate. Monthly average temperatures range 19.3 °C–29.3 °C for Sylhet and 17.7 °C–29.5 °C for Mirzapur | 7 day rolling average temperature and rolling humidity index prior to diagnosis | Multivariable logistic regression. | Very severe disease in 6936 newborns in Sylhet and 5900 newborns in Mirzapur—diagnosed on history using clinical algorithms) (data from 2 cluster randomised controlled trials) | OR for temperature at time of diagnosis of very severe disease were 1.14 (95%CI = 1.08, 1.21) in Sylhet and 1.06 (95%CI = 1.04, 1.07) in Mirzapur. |
| Infectious diseases | |||||||
| Gosai (2009) [ | Retrospective cohort | Auckland, New Zealand1994–2004 | Temperate oceanic climate. Average monthly temperatures 10.8 °C–19.8 °C | Daily minimum temperature. Lag 0–7 days | Pearson’s correlation | Hospital admissions for respiratory illness (hospital admissions data. No ICD codes given) | Correlation between minimum temperature and respiratory infections and inflammation (r = −0.42 and |
| Yan (2019) [ | Time-series analysis | Shenzhen, China 2009–2017 | Subtropical monsoon climate. Mean temperature over period 23.3 °C. | Daily temperature, unclear which index used. Lag with a max of 30 days | Quasi-Poisson regression based on distributed lag nonlinear model | 50,657 HFMD cases (surveillance data—notifiable disease) | Cumulative RR of HFMD over 14 days in 0–1 age group was RR 0.58 (95%CI = 0.4, 0.84) for temperature in 5th percentile and RR 2.03 (95%CI = 1.77, 2.33) in the 95th percentile. 5th percentile was 12.9 °C, 95th was 30 °C and median 24.6 °C. |
| Yin (2015) [ | Time series analysis | Chengdu, China 2013–2014 | Humid sub-tropical climate. Mean temperature for study period 16.21 °C. | Daily mean temperature. Lag 0–14 days | Poisson generalised linear regression combined with distributed lag non-linear model | 74,247 HFMD cases aged 0–5 years (surveillance data—notifiable disease) | Risk of HFMD significantly increased at temperatures 14, 17.2, 23.2 and 27 compared to 0 °C at lag 0 and lag 14 for infants <1 years old. No increase in HFMD risk for colder temperature exposure of 4.1 °C. For lag 0, RR 1.15 (95%CI = 1.03, 1.29), 1.19 (95%CI = 1.06, 1.34), 1.29 (95%CI = 1.13, 1.44), and 1.31 (95%CI 1.16, 1.48) for 14, 17.2, 23.2, and 27 °C, respectively. For lag 14 RR 1.09 (95%CI = 1.03, 1.16), 1.07 (95%CI = 1.00, 1.14), 1.06 (95%CI = 1.00, 1.13), and 1.03 (95%CI = 1.02, 1.04) for 14, 17.2, 23.2, and 27 °C, respectively. |
| Nenna (2017) [ | Prospective cohort | Rome, Italy 2004–2014 | Mediterranean climate | Weekly average temperature. No lag | Pearson’s correlation | 723 cases of viral bronchiolitis in hospitalised infants (prospective clinical records) | The number of RSV-positive infants correlated negatively with temperature (r = −0.46, |
| Kim (2017) [ | Prospective cohort | Cheonan, South Korea 2006–2014 | Subtropical climate | Mean daily temperature. No lag days | Logistic regression | 2484 infants admitted with RSV A and RSV B (lab confirmed admissions with respiratory symptoms) | RSV A and RSV B infections were negatively correlated with average temperature; −0.056 for RSV A and −0.069 for RSV B infection, with |
| Hoeppner (2017) [ | Retrospective cohort | Australia and New Zealand 2009–2011 | Perth—Mediterranean, Melbourne and Auckland-oceanic and Brisbane—humid, subtropical | Minimum temperature aggregated over a week. Lag 0–4 weeks | Linear regression. Poisson and negative binomial regression to verify results | 3876 infants admitted with bronchiolitis (data from prospective, multicentre clinical trial) | Minimum temperature and lag 0): r −0.62 (−0.75, 0.48) |
| Other neonatal outcomes | |||||||
| Iijima (2016) [ | Prospective cohort | Hamamatsu, Japan 2012–2013 | Temperate climate. Average temperatures spring 15.3 °C, summer 27.3 °C, autumn, 18.0 °C and winter 7.0 °C. | Mean outdoor and indoor, and wind chill temperature. No lag | Simple and multivariate regression | 498 neonates. International normalised ratio on day 4 after birth (data from healthy neonates) | Significant correlation between INR and outdoor temperature (r = 0.25, |
| Scrafford (2013) [ | Retrospective cohort | Southern Nepal 2003–2006 | Humid subtropical climate | Minimum daily temperature. No lag days | Bivariate and multivariate analyses | Incidental jaundice in 18,985 neonates, defined as first report of yellow eyes/body based on visual assessment by study staff, not laboratory confirmed (part of nested pair of cluster-randomised, placebo-controlled, community based clinical trial) | OR 1.03 (95%CI = 1.02, 1.05) |
RSV—Respiratory Syncytial Virus; HFMD—Hand, Foot, and Mouth Disease; CI—confidence interval; OR—odds ratio; RR—relative risk; INR—International Normalised Ratio. Cold exposure.
Figure 3A summary of the critical appraisal using a modified OHAT Risk of bias tool [15,17,19,21,28,29,30,31,32,33,34,35,36,37,38,39,40,41,42,44,45,46,47,48,49,50].