| Literature DB >> 35317835 |
Katarina Ost1, Lea Berrang-Ford2, Katherine Bishop-Williams3, Margot Charette4, Sherilee L Harper5, Shuaib Lwasa6, Didacus B Namanya7,8,9, Yi Huang10, Aaron B Katz11, Kristie Ebi12.
Abstract
BACKGROUND: There is concern in the international community regarding the influence of climate change on weather variables and seasonality that, in part, determine the rates of malaria. This study examined the role of sociodemographic variables in modifying the association between temperature and malaria in Kanungu District (Southwest Uganda).Entities:
Keywords: Age; Bakiga; Batwa; Climate change; Indigenous; Malaria; Meteorological; Sex; Sociodemographic modifiers; Uganda; Weather
Mesh:
Year: 2022 PMID: 35317835 PMCID: PMC8939205 DOI: 10.1186/s12936-022-04118-5
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 3.469
Fig. 1Map of Kanungu district and location of Bwindi community hospital
Socio-economic and health differences between Bakiga and Indigenous Batwa populations (adapted from MacVicar et al. 2017a [21])
| Health and socio-economic measure | Batwa (proportion of the population (%)) | Bakiga (proportion of the population (%)) |
|---|---|---|
| Malaria prevalence among adult a | 6.45 | 4.46 |
| Moderate acute malnutrition among adult womenb | 45.86 | 0.42 |
| Household mosquito net use (did not have nets)c | 70.99 | 53.56 |
| Access to handwashing facilities (did not have access to handwashing)d | 73.85 | 56.40 |
| Access to soap (did not have access to soap)e | 73.85 | 56.40 |
aPrevalence of positive malaria antigen detection test in both July 2013 and April 2014—survey of all Batwa adults, sample of Bakiga adults[2]
bClassified as moderately malnourished according to the Uganda ministry of health integrated management of acute malnutrition guidelines)[22]
c[2]
d,eOnly asked of people that had access to hand washing facility, for example for the Batwa, 32 or 94% of the households that had access to handwashing had access to soap[2]
Fig. 3Logarithmic scale; incidence rate ratios by demographic category for stratified models, gridline marks IRR of 1, stratified models for season do not include interaction term for season and temperature
Incidence Rate Ratio (IRR) for malaria hospital admission incidence and temperature, by weekly lag
| Lag by week | IRR | p-value | 95% CI |
|---|---|---|---|
| 10 | 1.02 | 0.63 | (0.94, 1.11) |
| 11 | 0.99 | 0.82 | (0.91, 1.08) |
| 14 | 1.06 | 0.15 | (0.98, 1.16) |
| 15 | 1.07 | 0.09 | (0.98, 1.18) |
a,bBold text indicates time lags between admission date and temperature preceding that date selected for use in final models
Fig. 2Conceptual model illustrating social modification of malaria-weather relationship: boxes and horizontal arrows represent main pathways of interest in climate–malaria relationship, while the black box represents our sociodemographic variables of interest. Bold vertical arrows indicate theorized effect modification
Description of dependent, independent, effect modification, and control variables used in effect modification analysis
| Variable (units) | Description |
|---|---|
| Dependent (outcome) variable | |
| Weekly malaria cases | Total case count per 7 day period |
| Independent (exposure) variable | |
| Mean weekly temperature ( °C) with a 12–13 weekly average temperature lag | Binary: lower (cooler) quartiles 1–3 (referent); top (hottest) quartile |
| Effect modification variables | |
| Ethnicity | Binary: Bakiga and other (referent); Batwa |
| Sex | Binary: male (referent); female |
| Age | Categorical: < 5 years (referent); 6-12 years; 13-18 years; 19-55 years; > 55 years |
| Confounding (control) variables | |
| Season | Binary: dry (referent); wet |
| Year | Categorical: 2011 (referent), 2012, 2013, 2014 |
Descriptive statistics of variables included in final models data from Bwindi Community Hospital, Uganda (2011–2014).
| Demographics | ||||
|---|---|---|---|---|
| No. of (x) demographic out of all admissions | Proportion of (x) demographic out of all admissions | No. of (x) demographic out of all malaria admissions | Proportion of (x) demographic out of all malaria admissions | |
| Female | 10,565 | 56.10% | 1826 | 53.10% |
| Male | 8281 | 43.90% | 1614 | 46.90% |
| 0–5 years | 5687 | 30.20% | 1143 | 33.20% |
| 6–12 years | 2514 | 13.30% | 896 | 26.00% |
| 13–18 years | 1950 | 10.30% | 414 | 12.00% |
| 19–55 years | 6957 | 36.90% | 895 | 26.00% |
| 55 + years | 1738 | 9.20% | 92 | 2.70% |
| Ethnicity (Bakiga) | 18,608 | 98.70% | 3,386 | 98.40% |
| Ethnicity (Batwa) | 238 | 1.30% | 54 | 1.60% |
| Season (wet) | 10,957 | 58.14% | 1948 | 56.63% |
| Season (dry) | 7889 | 41.86% | 1492 | 43.37% |
| Total number* | 18,846 | 3,440 | ||
| Meteorological variables | ||||
| Descriptive temperature statistics throughout (x) year (celsius) | Mean | Min | Max | |
| 2011 | 18.91 | 13.13 | 27.51 | |
| 2012 | 19.07 | 12.22 | 28.67 | |
| 2013 | 19.54 | 12.96 | 28.98 | |
| 2014 | 19.55 | 13.32 | 29.19 | |
| Average daily and yearly total rainfall (mm) | Average daily | Yearly total | ||
| 2011 | 3.55 | 1296 | ||
| 2012 | 3.55 | 1300 | ||
| 2013 | 3.22 | 1174 | ||
| 2014 | 3.07 | 1197 | ||
Results of baseline model measuring the effect of temperature on malaria with sociodemographic variables as fixed-effects
| Model variables | Baseline model IRR (95% CI) | p-value |
|---|---|---|
| Temperature ‘Cool’ quartiles | ||
| Temperature ‘Hot’ quartile | 1.27 (0.90, 1.80) | 0.18 |
| Bakiga | ||
| Batwa | 1.08 (0.76, 1.55) | 0.66 |
| Male | ||
| Female | ||
| 0–5 years old | ||
| 6–12 years old | ||
| 13–18 years old | 1.08 (0.94, 1.24) | 0.28 |
| 19–55 years old | ||
| 55 + years old | ||
| Season (wet) | ||
| Season (dry) |
*Bold indicates a p-value of < 0.05
Incidence rate ratio (IRR) interaction model results, including sociodemographic variables as effect modifiers
| Interaction model, results by temperature quartile | |||
|---|---|---|---|
| Quartile 1–3 (cool) | Quartile 4 (hot) | IRR hot/IRR cool within strata of ethnicity, sex, age, and season | |
| Bakiga | |||
| Batwa | 0.82 (0.34, 1.99) 0.67 | 1.63 (0.64, 4.16) 0.31 | 1.99 |
| Male | |||
| Female | 1.02 (0.86, 1.22) 0.81 | 1.98 | |
| 0–5 years old | |||
| 6–12 years old | 0.96 (0.74, 1.24) 0.75 | 1.98 | |
| 13–18 years old | 0.92 (0.64, 1.33) 0.65 | 1.98 | |
| 19–55 years old | 0.96 (0.72, 1.29) 0.78 | 1.98 | |
| 55 + years old | 1.43 (0.57, 3.59) 0.44 | 1.98 | |
| Season (wet) | |||
| Season (dry) | 1.96 | ||
Interpretation for ethnicity: the Batwa weekly malaria hospital admission incidence rate was 1.63 times the rate of admission for Bakiga during the lagged hot temperatures. The ratio of ratios for Batwa vs Bakiga in the hot quartile over the cool quartiles was 1.99
*Bold indicates a p-value of < 0.05
Incidence rate ratio (IRR) stratification model results with sociodemographic variables as effect modifiers
| Models stratified by social factor; IRR (95% CI) | |||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Ethnicity | Sex | Age (years) | Season | ||||||||
| Bakiga | Batwa | Male | Female | 0–5 | 6–12 | 13–18 | 19–55 | 55 + | Season (wet) | Season (dry) | |
| Temperature quartile 1–3 | |||||||||||
Temperature quartile 4 p-value | 0.71 (0.10, 4.81) 0.72 | 1.29 (0.84, 1.98) 0.25 | 1.01 (0.48, 2.12) 0.99 | ||||||||
| IRR strata1/ IRR strata0 | 0.34 | 0.88 | 1.01 | 0.63 | 0.79 | 0.50 | 0.21 | ||||
Interpretation for ethnicity: the Bakiga weekly malaria hospital admission incidence was 2.09 times greater during weeks in the hottest temperature quartile than in the coolest quartiles, compared to Batwa, who had 0.71 times greater incidence in weeks in the hottest quartile. The ratio of ratios (ROR) for Batwa vs. Bakiga in the hot season only was 0.34, indicating that the indicative ‘effect’ of the hottest quartile on malaria incidence was 0.34 times the rate in the Batwa than Bakiga, or that Bakiga incidence was more sensitive to temperature compared to Batwa incidence
*Bold indicates a p-value of < 0.05, **Stratified model for season does not include season-temperature interaction term