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. 2015 Oct 26;14:84. doi: 10.1186/s12940-015-0072-1

Allergic rhinitis, rhinoconjunctivitis and hayfever symptoms among children are associated with frequency of truck traffic near residences: a cross sectional study

Joyce Shirinde 1,✉,#, Janine Wichmann 2,#, Kuku Voyi 2,#
PMCID: PMC4620607  PMID: 26503217

Abstract

Background

Allergic rhinitis (AR) is an increasing and common condition affecting many people globally, especially children. The aim of the study was to investigate the association between the frequency of truck traffic and allergic rhinitis symptoms, rhinoconjunctivitis and hayfever among 13 to 14 year old school children in Ekurhuleni Metropolitan Municipality, Gauteng Province, South Africa.

Methods

In a cross-sectional study design, 3764 children from 16 randomly selected high schools were eligible to participate, 3468 completed the International Study of Asthma and Allergies in Childhood (ISAAC) Phase I questionnaire of which 3424 were suitable for analysis; the overall response rate was 92 %. Data were analysed using multilevel logistic regression analysis.

Results

The prevalence of self-reported rhinitis ever, current rhinitis rhinoconjunctivitis and hayfever was 52, 40, 21 and 37 % respectively. Rhinitis ever, current rhinitis and current rhinoconjunctivitis were significantly associated with the frequency of trucks passing near residences almost all day on weekdays, (OR 1.46 95 % CI: 1.16 − 1.84), (OR 1.60 95 % CI: 1.24–2.02) and (OR 1.42 95 % CI: 1.09–1.84) respectively. No association was observed between truck traffic and hay fever in the multiple analyses.

Conclusion

The study shows a high prevalence of allergic rhinitis symptoms amongst children. The results support the hypothesis that traffic related pollution plays a role in the prevalence of allergic rhinitis symptoms in children residing in the area.

Keywords: Allergic rhinitis, Rhinoconjunctivitis, Hayfever, Traffic, Air pollution, South Africa

Background

Allergic rhinitis (AR) is a global health problem, affecting many people from childhood to adulthood [1]. The disease is most common and one of the leading chronic conditions in children less than 18 years of age; it is frequently ignored, under-diagnosed, misdiagnosed or mistreated [2, 3]. Rhinitis is defined as the inflammation of the nasal lining, but is characterised by nasal symptoms of: sneezing, itching, rhinorrhoea/nasal running and/or nasal congestion [4]. Rhinitis is frequently accompanied by symptoms involving the eyes, ears and throat, including postnasal drainage [2, 4]. The disease affects 400 million people worldwide, with high prevalence recorded in industrialised nations. Epidemiological surveys have reported an increase in the disease, with different regions of the world reporting prevalence rates of between 10 and 40 %. The prevalence of childhood AR shows wide global variation, ranging from 0.8 to 39.7 % [510].

The reasons for the global increase in the prevalence of allergic rhinitis are still not understood. The disease has been associated with various risk factors including among others: gender, housing characteristics, socioeconomic status, environmental air pollution, exposure to tobacco smoke, birth during pollen season, no older siblings, exposure to allergens such as animal dander and dust mites [2, 3, 11, 12]. The findings are inconsistent and the major determinant contributing to the development of allergic rhinitis is still unclear. Few air pollution studies have addressed allergic rhinitis as an endpoint with some suggesting that exposure to air pollutants may increase its risk [13]. Studies have also reported that living in closed proximity to a major road with high volumes of motor vehicles or truck traffic is associated symptoms of allergic diseases, due to high levels of air pollutants from traffic [14]. The majority of epidemiological studies emanate from developed countries; little is known about such association in developing countries. In South Africa, AR is an important and common condition encountered in most communities and affecting anywhere from 20 to 30 % of the population. However, data from South Africa is limited, with infrequent updates on circulating aeroallergens and the possible impact of climate change [15].

Existing studies are not generalised; some have small sample sizes and assess specific populations [16, 17]. One study that was carried out in Cape Town, Western Cape Province, reported an increase in the symptoms over a 7 year period, from 30.4 % in 1995 to 38.5 % in 2003 [18]. The main aim of this study was to investigate the association between traffic related-air pollution and allergic rhinitis, current rhinoconjunctivitis and hayfever symptoms amongst children attending schools in Tembisa and Kempton Park areas of Ekurhuleni Metropolitan Municipality (EMM), Gauteng Province, South Africa.

Methods

Study area

The study was conducted in Tembisa and Kempton Park areas, which fall under the EMM. Tembisa is the second largest township in Gauteng Province, with both formal and informal housing, being home mainly to people belonging to Black/African ethnic groups. The main air polluting sources in the area includes, amongst others, residential fuel burning (particularly coal), industrial and commercial fuel burning (coal-fired boilers in close proximity to residential areas) and vehicular exhaust emissions (both petrol and diesel) [19]. Kempton Park is a suburban area surrounded by industry and arterial roads connecting Gauteng Province. The OR Tambo International Airport, which is Africa’s busiest airport, is also located nearby. Vehicular exhaust emissions (both petrol and diesel), industrial and commercial fuel burning (coal-fired boilers in close proximity to residential areas), OR Tambo International Airport (contributing a small fraction of low level, concentrated NO2) and large industries associated with various stack, vent and fugitive emissions were identified as significantly contributing to air pollution [19]. The (EMM) where the two areas are located falls under the Highveld Region, which was declared an air pollution priority area in the country, due to poor air quality, which is still the worst to date [20].

Study design, population and sample selection

A cross-sectional epidemiological study was conducted between February and June 2012, following the International Study of Asthma and Allergies in Childhood (ISAAC) Phase I protocol [21]. The ISAAC was designed as a multicentre-study to investigate the epidemiology of asthma, rhinitis and atopic dermatitis amongst children using standardised definitions, allowing comparisons worldwide [21]. A list of all schools (primary and secondary) in EMM was provided by the Gauteng Department of Education. All primary schools were excluded and 16 high schools were randomly selected from the list of high schools. Each school was contacted and requested to participate in the study. Following approval by the principal and governing body in each school, all eligible children between the ages of 13 and 14 years and in Grade 8 were requested to participate. The 13 to 14 year age group was chosen because it is the age most adolescents go to school regularly, making data collection easier. Each school was requested to make available a copy of class lists. An appointment was scheduled with the school to deliver the consent forms for the children two weeks prior to the study and they were requested to return them within three days. The study population consisted of 3764, children based on the numbers given by each school prior to data collection. Data were collected using the English version of ISAAC written questionnaires. The questionnaires were completed by the children in the classroom under the supervision of the data collectors, who were specifically trained and briefed to avoid explanations which could interfere with the participant’s answers.

Health outcomes

In this study we estimated health outcomes on the basis of positive answers from the written ISAAC questionnaire for 13 to 14 years old. Answers to written questions were self-reported by children. Questions on symptoms relating to rhinitis were as follows:

  1. Rhinitis ever: Have you ever had a problem with sneezing or runny or blocked nose, when you DID NOT have a cold or flu? (Yes/No)

  2. Current rhinitis: In the past 12 months, have you had a problem with sneezing or a runny or blocked nose, when you DID NOT have a cold or the flu? (Yes/No)

  3. Current rhinoconjunctivitis: In the past 12 months, has this nose problem been accompanied by itchy-watery eyes? (Yes/No)

  4. In which of the past 12 months, has this nose problem been accompanied by itchy-watery eyes? (Month names listed).

  5. In the past 12 months, how much did this nose problem interfere with your daily activities? (Not at all, a little, a moderate amount, a lot)

  6. Hayfever: Have you ever had hayfever? (Yes/No)

The main independent variables

Information regarding exposure to traffic-related pollution was obtained through the following questions: how often do tucks pass near your home on weekdays? (Never, seldom, frequently through the day, almost all day).

Confounders

A priori selection of the following confounding was done: sex (male/female), being born in Tembisa/Kempton Park the area (yes/no), type of house (brick, mud, corrugated iron, combination), vigorous physical activity (never/occasionally/1–2 times per week/, ≥ 3 times per week); How do you usually get to school? walk, taxi/bus, motorcar, combination of motorcar/taxi or train; hours watching television per day (<1 h/1 h but <3 h/ 3 h but <5 h /≥5 h) in 24 h; ETS exposure at home in the past 30 days (yes/no), ETS exposure at school in the past 30 days (yes/no), tobacco smoking by participant (yes/no), mother/father smoking tobacco (yes/no), any other person smoking at home other than participant (yes/no). Children were asked to select the most frequently used energy source at home; they had to select one type of energy source: for cooking at home (electricity, gas, paraffin, open fires) and for heating (electricity, gas, paraffin, open fires). Other variables, which were included in the questionnaire but not selected as confounders and were only reported in the descriptive analysis, were: period lived in the residential area (<6 months/ 6 to 12 months/ 1 to 2 years/ ≥3 years), the variables.

Data management and statistical analysis

The data were entered into a database set up in EpiInfo V3.5.3. Stata Version 12 was applied for the data analysis. Prevalence rates for the health outcomes and proportion on risk factors under investigation were calculated by dividing the number of participants who responded affirmatively to a particular question by the number of questionnaires completed. Observations marked as “do not know”, “not stated” or “other responses” were set as missing. This resulted in each question having a slightly different sample size. Crude and adjusted odds ratios (OR) and 95 % confidence intervals (CI) were calculated with multilevel logistic regression analysis (MLRA) with random effect to estimate the likelihood of having rhinitis ever, current rhinitis, rhinoconjunctivitis and hayfever health outcomes given the presence of a potential risk factor. The multilevel data included sixteen schools nested within two districts (level 1). Confounding variables were added in a stepwise manner, starting with the most significant from the univariate analysis. Each time a new potential confounder was added to the model, if the effect estimate between the exposure of interest and respiratory outcome already in the models changed by more than 5 %, the additional variable was retained in the final multiple MLRA, otherwise the variable was removed and a different one was added [22]. This resulted in the final models having slightly different confounders. The most parsimonious multiple MLRA models were reported, i.e., those with variables having a p-value < 0.05 [22].

Ethical considerations

The Ethics and Research Committee of the Faculty of Health Sciences, University of Pretoria approved the study (Ethics Number: S121/2011). The Gauteng Department of Education, Ekurhuleni North District, school principals and governing bodies were approached and gave approval and cooperation for the study. Parents of participants were sent a letter explaining the details and nature of the study and gave consent for the children to participate in the study. All information was kept confidential.

Results

The study population consisted of 3764 children from 16 schools. A total of 3468 completed the questionnaires (92 % response rate). The study focused on children who were present at school during at the time of fieldwork and so 296 learners did not participate. The teachers gave assurance that most of the children were present. School attendance was high during the study therefore bias that may have been introduced by non-response rate was assumed to be relatively low. Forty-four questionnaires were excluded during the data capturing due to incomplete information. A total of 3424 questionnaires were finally included in the data analysis.

The frequencies and percentages for health outcomes and general characteristics of children are summarised in Table 1. The prevalence of rhinitis ever was 52.3 %, current rhinitis 40.1 % rhinoconjunctivitis 22.5 % and hayfever 37 %. Girls accounted for 52 % of the participants. The majority of the children lived in Tembisa Township (67.2 %) and more than three quarters had lived in the same area for more than 3 years (76.2 %). Fifty three percent of the children were born within the study areas. The majority of the children lived in formal housing structures (86.11 %). Forty one percent of the children engaged in vigorous physical activity once or twice per week, 29 % three or more times per week, the other 30 % never or occasionally. Forty two percent were exposed to tobacco smoke at home, whilst 34 % were exposed at school. A small percentage of pupils reported the use of gas (5.2 %) and paraffin (5.8 %) for cooking at home, while the majority used electricity (87.5 %). Trucks passing near residences almost all day were reported by 35.4 % of the children. Just over half of the children walked to school (50.5 %), while the other half used other modes of transport (cars, taxi, buses and train).

Table 1.

Health outcomes and demographic characteristics of the study participants (n = 3424)

Variable Total Percentage
Rhinitis ever 1790 52.3
Current rhinitis 1372 40.1
Current rhinoconjunctivitis 769 22.5
Ever had hayfever 1285 37.5
Sex of child
Female 1790 52.3
Male 1634 47.7
Type of Area
Township 2301 67.2
Suburb 1117 32.6
Missing 6 0.18
Period lived in the area
Less than 6 months 253 7.4
6 to 12 months 216 6.3
1 to 2 years 346 10.1
3 years and longer 2609 76.2
Born in the areas of Tembisa and Kempton Park
Yes 1812 52.9
No 1609 47.0
Missing 3 0.1
Type of house
Brick 2938 85.8
Mud 45 1.3
Corrugated iron 184 5.5
Combination 126 3.7
Missing 126 3.7
Vigorous physical activity per week
Never or occasionally 984 28.7
Once or twice per week 1417 41.4
Three or more times a week 983 28.7
Missing 40 1.2
Hours watching television on average in a day
Less than 1 h 532 15.5
Hour but less than 3 h 835 24.4
2 h but less than 5 h 827 24.4
More than 5 h 1213 35.4
Missing 17 0.50
ETS exposure at home in the past 30 days
Yes 1452 42.4
No 1460 42.6
Missing 512 15.0
ETS exposure at school in the past 30 days
Yes 1177 34.4
No 1452 42.4
Missing 755 23.2
Residential cooking fuel type most frequently used
Electricity 2995 87.5
Gas 179 5.2
Paraffin 200 5.8
Open fires (wood, coal) 30 0.9
Missing 20 0.6
Residential heating fuel type most frequently used
Electricity 2041 59.6
Gas 426 12.4
Paraffin 631 18.4
Open fires (wood, coal) 270 7.9
Missing 56 1.64
Mode of transport to school
Walk 1728 50.5
Taxi\Bus 708 20.7
Motor car 683 20.0
Combination 201 5.9
Train 100 2.9
Missing 4 0.1
Frequency of trucks passing near homes on weekdays
Never 563 16.4
Seldom 1033 30.2
Frequently through the day 580 16.9
Almost every day 1212 35.4
Missing 36 1.1

Table 2, summarise the MLRA results for the frequency of truck traffic and symptoms of rhinitis ever, current rhinitis, current rhinoconjunctivitis and hayfever along with crude and adjusted odd ratios (for further results see Appendix). Rhinitis ever; current rhinitis and current rhinoconjunctivitis were significantly associated with the frequency of trucks passing near residences almost all day on weekdays, (OR 1.46 95 % CI: 1.16 − 1.84), (OR 1.60 95 % CI: 1.24–2.02) and (OR 1.42 95 % CI: 1.09–1.84) respectively. No association was observed between truck traffic and hayfever in the multiple analyses.

Table 2.

Frequency of truck traffic and symptoms of rhinitis ever, current rhinitis, current rhinoconjunctivitis and hayfever along with crude and adjusted odd ratios

Frequency of trucks passing near homes on weekdays Totale (%) Crude OR (95 % CI) P Adjusted OR (95 % CI) P
Rhinitis evera
Never 563 47.3 1 1
Seldom 1033 53.1 1.26 (1.02–1.55) 0.027 1.16 (0.92–1.56) 0.197
Frequently through the day 580 49.3 1.09 (0.86–1.37) 0.451 1.03 (0.79–1.34) 0.791
Almost all day 1212 55.9 1.43 (1.16–1.75) 0.001 1.46 (1.16–1.84) 0.001
Current rhinitisb
Never 563 34.6 1 1
Seldom 1033 41.2 1.25 (1.01–1.55) 0.038 1.30 (0.99–1.62) 0.059
Frequently through the day 580 39.1 1.23 (0.97–1.57) 0.081 1.25 (0.95–1.64) 0.102
Almost all day 1212 42.5 1.46 (1.88–1.81) 0.000 1.60 (1.24–2.02) 0.000
Current rhinoconjunctivitisc
Never 563 18.8 1 1
Seldom 1033 23.0 1.23 (0.95–1.59) 0.113 1.17 (0.89–1.54) 0.234
Frequently through the day 580 19.0 1.01 (0.75–1.37) 0.904 0.96 (0.70–1.30) 0.799
Almost all day 1212 25.7 1.54 (1.20–1.97) 0.001 1.42 (1.09–1.84) 0.008
Hayfeverd
Never 563 32.7 1 1
Seldom 1033 38.7 1.22 (0.98–1.51) 0.074 1.12 (0.87–1.43) 0.362
Frequently through the day 580 37.9 1.28 (1.00–1.63) 0.047 1.19 (0.90–1.57) 0.203
Almost all day 1212 38.2 1.34 (1.08–1.66) 0.007 1.23 (0.96–1.57) 0.087

a, bModel adjusted for the folowing v mode of transport to school, being born in the area, vigorous physical activity, ETS exposure at home in the past 30 days, residential fuel heating type most frequently used at home

cModel adjusted for mode of transport to school, being born in the area, vigorous physical activity, hours watching TV during normal week, residential heating fuel type most frequently used at home

dModel adjusted for vigorous physical activity, residential fuel heating type most frequently used at home, ETS exposure at home

eTotals for each risk factor are different due to difference in missing values

The following confounding variables were associated with the health outcomes: the likelihood of rhinitis ever, current rhinitis, current rhinoconjunctivitis and hayfever were less for males, (OR 1.22 95 % CI: 1.05–1.43), (OR 0.82 95 % CI: 0.70–0.96), (OR 0.68 95 % CI: 0.57–0.81) and (OR 0.56 95 % CI: 0.47–0.65). Rhinitis ever was associated with vigorous physical activity once or twice per week OR 1.27 95 % CI: 1.06–1.53), ETS exposure at home (OR 1.15 95 % CI: 0.99–1.34). Current rhinitis was associated with being born in the area OR 0.82 95 % CI: 0.70–0.96), vigorous physical activity once or twice per week OR 1.27 95 % CI: 1.05–1.53), the use of gas for heating OR 1.31 95 % CI: (1.04–1.65) and ETS at home (OR 1.16 95 % CI: 0.99–1.36). Rhinoconjunctivitis was associated with being born in the area (OR 1.22 95 % CI:(1.02–1.45), vigorous physical activity once or twice per week (OR 1.42 95 % CI: 1.16–1.76) and three or more times a week (OR 1.34 95 % CI: 1.06–1.68), watching TV per week day (OR 1.37 95 % CI: 1.06–1.78) and gas frequently used for heating at home (OR 1.45 95 % CI: 1.14–1.85). Hay fever, sex, vigorous physical activity once or twice per week (OR 1.38 95 % CI: 1.44–1.68) and three or more times per week (OR 1.52 95 % CI: 1.23–1.88), open fires used for heating (OR 1.51 95 % CI 1.13–2.02) and exposure to tobacco smoke at home (OR 1.20 95 % CI: 1.02–1.40). Rhinitis ever and current rhinitis were associated with using a combination of walking and taxi/bus as mode of transport to school; (OR 1.45 95 % CI: 1.04–2.04), (OR 1.81 95 % CI: 1.21–2.71). No association was observed between hayfever and rhinoconjunctivitis with mode of transport to school.

Discussion

The study investigated the association between the frequency of truck traffic and allergic rhinitis symptoms, rhinoconjunctivitis and hayfever amongst 13 to 14 year old school children attending schools in areas of Tembisa and Kempton Park, located in EMM. The prevalence of rhinitis ever was 52.3 %, current rhinitis 40.1 %, rhinoconjunctivitis 22.5 % and hayfever 37 %. The prevalence of childhood allergic rhinitis shows wide variation throughout the world, ranging from 0.8 to 39.7 % [23]. The prevalence of rhinitis ever reported for this study is close to that reported for Turkish adolescents of 53.5 %, while current rhinitis was slightly higher at (38.3 %) [24], and similar to that in Bogotá, Colombia, which was 36.7 % [10]. The prevalence of current rhinitis in this study was high, in contrast to that (14.9 %) reported in Budapest [25] and to that reported in two previous studies conducted in Cape Town, South Africa, 30 % in 1999 and 38 % 2003 [18]. Twenty-two centres across the African continent participated in Phase III of the ISAAC study. There were considerable variations in the prevalence of allergic rhinoconjunctivitis within the participating centres (7.2–27.3 %). A number of centres showed high symptoms of allergic rhinoconjunctivitis (Cape Town, Reunion Island, Brazzaville, Eldoret, Urban Ivory Coast, Conakry, Casablanca, Wilays of Algiers and Sousse) [23].

Trucks passing near homes almost the whole day during weekdays increased the likelihood of rhinitis ever, current rhinitis and current rhinoconjunctivitis. Studies have previously reported on the association between traffic-related pollution and allergic rhinitis symptoms. A study conducted in Bochum, Germany reported a positive relationship between the prevalence of wheezing and allergic rhinitis and the indicators of traffic density [26]. A positive global relationship between childhood symptoms of rhinoconjunctivitis and self-reported truck traffic on the street of residence were reported from studies that were conducted in 110 ISAAC centres globally [27]. A cross-sectional study conducted amongst 32,143 Taiwanese school children found that allergic rhinitis was associated with urban levels of SO2, carbon monoxide (CO) and NOX (traffic-related air pollution NOx and CO) [28]. A present report by the World Health Organization found evidence linking health effects to traffic-related pollution [29]. In recent years, South Africa, particularly Gauteng Province, has experienced an increase in the number of cars and trucks on the road. The total number of live vehicles (licenced) in Gauteng province, where the EMM is located was over 4.4 million, in April 2015 [30]. Vehicles, particularly trucks, are known to release polluting chemicals into the atmosphere, which may have respiratory effects on nearby residents. It is plausible that the observed association between health outcomes is linked to the increased level of pollution in the area.

Certain limitations should be taken into account in the interpretation of the results. Firstly, the study had a cross-sectional epidemiological design. The results of the study might be higher than the actual prevalence since the results are based on self-reported answers from the questionnaire. With cross-sectional studies, where a questionnaire is administered to collect data and participants are questioned on the presence of nasal symptoms, a significantly higher rate of symptoms is reported than for true allergic rhinitis [16]. However, cross-sectional studies are important indicators of health problems occurring in communities and serve as a baseline for further analytical and experimental investigation.

Secondly, we adjusted for confounding variable such as sex, being born in the area, physical activity, hours watching TV daily, mode of transport tot school; however there many other risk factors such as genetics, environmental factors and allergens which may play a role in the development and exacerbation of rhinitis. Thirdly, information on traffic density as an indicator of exposure to traffic related pollution was also taken from self-reports from children. The frequency of trucks passing near homes on weekdays may have been misclassified, as on weekdays children are at school. Furthermore, the traffic density may not accurately reflect the exposure the children experience inside and outside their homes. Children who are aware of the possible health effects of traffic-related air pollution and who have had symptoms may report exposure. Future studies should attempt to compare questionnaire responses with traffic data.

Fourthly, no quantitative air pollution exposures assessments were conducted during the study; we were not able to validate the participant’s responses by checking individual addresses or by measuring ambient pollution levels in or near their homes, as we did not have addresses. However, the findings are consistent with results of other studies, suggesting that traffic-related air pollution exacerbates existing conditions or increases the likelihood of the development of allergic rhinitis. Fifthly, although the study was done in an air pollution priority area, on the basis of multiple sources of air pollution; only proximity to truck traffic was investigated as an ambient (outdoor source) exposure variable. We did not include any other questions e.g., on distance of industries from residential areas. More research should be conducted in the area to investigate other outdoor air pollution sources. Studies should be conducted amongst children in the area to test for allergen triggering or exacerbating rhinitis symptoms.

Lastly the study was conducted from February to June 2012, in South Africa February to April falls is autumn, while May to July fall within winter, it is possible where data was collected in winter months children may have reported more symptoms than those surveyed during autumn months. Despite the limitations, there are also strengths which should be noted. The ISAAC questionnaire has been shown to be valid for this age group and has been used extensively in international studies relating to symptoms of rhinitis. Secondly, a larger sample size of more than 3000 children, as required by ISAAC centres, would increase the statistical power for the study.

Conclusion

The study found an association between the frequency of trucks near residences and symptoms of rhinitis, rhinoconjunctivitis and hayfever 13 to 14 years old children, attending schools in Tembisa and Kempton Park located in EMM. This study will serve as a suitable baseline for monitoring future trends in the prevalence of allergic rhinitis amongst children in this particular area, which is known to have poor air quality.

Acknowledgements

The authors would like to thank all the children who completed the questionnaires, the parents, school principals and the Gauteng Department of Education for giving permission to conduct the study, the students who conducted the interviews, the data capturers and Cornelius Nattey and Vusi Nkosi for their assistance during the data processing stages. The authors would like to thank the University of Pretoria, Tshwane University of Technology, Medical Research Council and the National Research Foundation for funding the study for academic research purposes.

Abbreviations

BC

Black carbon

CI

Confidence intervals

EMM

Ekurhuleni metropolitan municipality

ETS

Environmental tobacco smoke

OR

Odds ratio

ISAAC

International study of asthma and allergies in childhood

LRA

Logistic regression analysis

UFP

Ultra-fine particles

Appendix

Table 3.

The prevalence of self-reported rhinitis ever along with crude and adjusted odd ratios

Variable Totala Rhinitis evera (%) Crude OR (95 % CI) P Adjusted OR (95 % CI)b P
Mode of transport to school
Walk 1728 51.7 1 1
Taxi/Bus 708 49.7 0.92 (0.77–1.10) 0.400 0.99 (0.81–1.21) 0.965
Motor car 683 53.9 1.08 (0.90–1.29) 0.358 1.15 (0.93–1.42) 0.186
Combination 201 60.8 1.42 (1.05–1.92) 0.019 1.45 (1.04–2.04) 0.028
Train 100 53.0 1.05 (0.70–1.58) 0.798 1.13 (0.71–1.81) 0.582
Frequency of trucks passing near homes on weekdays
Never 563 47.3 1 1
Seldom 1033 53.1 1.26 (1.02–1.55) 0.027 1.16 (0.92–1.56) 0.197
Frequently through the day 580 49.3 1.09 (0.86–1.37) 0.451 1.03 (0.79–1.34) 0.791
Almost all day 1212 55.9 1.43 (1.16–1.75) 0.001 1.46 (1.16–1.84) 0.001
Being born in Tembisa/Kempton park areas
No 1609 49.3 1 1
Yes 1812 54.9 1.28 (1.11–1.47) 0.000 1.22 (1.05–1.43) 0.008
Vigorous physical activity
Never or occasionally 984 49.1 1 1
Once or twice per week 1417 54.8 1.26 (1.07–1.48) 0.005 1.27 (1.06–1.53) 0.008
3 or more times per week 983 52.1 1.12 (0.94–1.34) 0.193 1.08 (0.88–1.31) 0.447
ETS exposure at home in the past 30 days
No 1460 51.3 1 1
Yes 1452 55.7 1.19 (1.03–1.38) 0.017 1.15 (0.99–1.34) 0.056
Residential heating fuel type most frequently used
Electricity 2041 51.4 1 1
Gas 426 56.3 1.23 (0.99–1.52) 0.055 1.23 (0.98–1.56) 0.070
Paraffin 631 52.9 1.07 (0.87–1.31) 0.487 1.04 (0.84–1.28) 0.694
Open fire 270 51.1 0.99 (0.76–1.28) 0.973 1.07 (0.80–1.14) 0.621

aTotals for each risk factor are different due to difference in missing values

bModel adjusted for all the variables in this table

Table 4.

The prevalence of self-reported current rhinitis with crude and adjusted odd ratios

Variable Totala Current rhinitis (%) Crude OR (95 % CI) P Adjusted OR (95 % CI)b P
Mode of transport to school
Walk 1728 37.1 1 1
Taxi/Bus 708 40.1 1.11 (0.92–1.33) 0.253 1.15 (0.93–1.42) 0.194
Motor car 683 43.2 1.18 (0.92–1.51) 0.169 1.31 (0.92–1.87) 0.127
Combination 201 52.7 1.75 (1.27–2.43) 0.001 1.81 (1.21–2.71) 0.004
Train 100 44.0 1.27 (0.83–1.93) 0.259 1.40 (0.86–2.27) 0.172
Frequency of trucks passing near homes on weekdays
Never 563 34.6 1 1
Seldom 1033 41.2 1.25 (1.01–1.55) 0.038 1.30 (0.99–1.62) 0.059
Frequently through the day 580 39.1 1.23 (0.97–1.57) 0.081 1.25 (0.95–1.64) 0.102
Almost all day 1212 42.5 1.46 (1.88–1.81) 0.000 1.60 (1.24–2.02) 0.000
Sex
Female 1790 43.0 1 1
Male 1634 37.0 0.77 (0.67–0.89) 0.000 0.82 (0.70–0.96) 0.016
Born within the area
No 1609 37.6 1
Yes 1812 42.2 1.29 (1.12–1.49) 0.000 0.82 (0.70–0.96) 0.013
Vigorous physical activity
Never or occasionally 984 37.2 1 1
Once or twice per week 1417 42.2 1.22 (1.03–1.44) 0.017 1.27 (1.05–1.53) 0.012
3 or more times per week 983 40.2 1.10 (0.92–1.33) 0.263 1.08 (0.88–1.34) 0.424
Residential heating fuel type most frequently used
Electricity 2041 40.3 1 1
Gas 426 46.0 1.26 (1.02–1.56) 0.029 1.31 (1.04–1.65) 0.022
Paraffin 631 36.3 0.93 (0.76–1.13) 0.466 0.88 (0.70–1.11) 0.289
Open fire 270 39.2 1.01 (0.77–1.31) 0.934 1.09 (0.81–1.46) 0.553
Exposure to ETS at home
No 1460 39.0 1 1
Yes 1452 42.0 1.16 (1.00–1.34) 0.048 1.16 (0.99–1.36) 0.054

aTotals for each risk factor are different due to difference in missing values

bModel adjusted for all the variables in this table

Table 5.

Prevalence of self-reported current rhinoconjunctivitis along with crude and adjusted odd ratios

Variable Totala Allergic rhino-conjunctivitis (%) Crude OR (95 % CI) P Adjusted OR (95 % CI)b P
Mode of transport to school
Walk 1728 20.7 1 1
Taxi/Bus 708 22.3 1.09 (0.88–1.35) 0.387 1.06 (0.84–1.33) 0.615
Motor car 683 24.6 1.25 (1.01–1.54) 0.033 1.19 (0.87–1.62) 0.260
Combination 201 26.4 1.53 (1.10–2.12) 0.011 1.44 (0.98–2.11) 0.054
Other 100 27.0 1.46 (0.92–2.30) 0.105 1.57 (0.96–2.57) 0.068
Frequency of trucks passing near homes on weekdays
Never 563 18.8 1 1
Seldom 1033 23.0 1.23 (0.95–1.59) 0.113 1.17 (0.89–1.54) 0.234
Frequently through the day 580 19.0 1.01 (0.75–1.37) 0.904 0.96 (0.70–1.30) 0.799
Almost all day 1212 25.7 1.54 (1.20–1.97) 0.001 1.42 (1.09–1.84) 0.008
Sex
Female 1790 25.8 1 1
Male 1634 18.9 0.67 (0.57–0.79) 0.000 0.68 (0.57–0.81) 0.000
Being born in Tembisa/Kempton park areas
No 1609 20.7 1 1
Yes 1812 24.0 1.27 (1.07–1.50) 0.004 1.22 (1.02–1.45) 0.024
Vigorous physical activity
Never or occasionally 984 18.4 1 1
Once or twice per week 1417 24.8 1.45 (1.19–1.78) 0.000 1.42 (1.16–1.76) 0.001
3 or more times per week 983 23.3 1.33 (1.06–1.65) 0.011 1.34 (1.06–1.68) 0.012
Hours watching TV during normal week
Less than 1 h 532 19.6 1
1 h but less than 3 h 835 19.8 0.97 (0.74–1.28) 0.873 0.93 (0.69–1.24) 0.622
3 h but less than 5 h 827 23.1 1.20 (0.91–1.57) 0.180 1.15 (0.87–1.53) 0.313
5 h or more 1213 25.1 1.37 (1.07–1.77) 0.012 1.37 (1.06–1.78) 0.016
Residential heating fuel type most frequently used
Electricity 2041 21.5 1 1
Gas 426 29.3 1.50 (1.18–1.89) 0.001 1.45 (1.14–1.85) 0.002
Paraffin 631 20.1 0.96 (0.76–1.22) 0.760 0.95 (0.75–1.22) 0.739
Open fires (wood, coal) 270 24.1 1.18 (0.87–1.59 0.276 1.18 (0.86–1.61) 0.291

aTotals for each risk factor are different due to difference in missing values

bModel adjusted for all the variables in this table

Table 6.

Prevalence of self-reported hayfever along with crude and adjusted odd ratios, by risk or protective factors

Variable Totala Hayfever (%) Crude OR (95 % CI) p Adjusted OR (95 % CI)b p
Frequency of trucks passing near homes on weekdays
Never 563 32.7 1 1
Seldom 1033 38.7 1.22 (0.98–1.51) 0.074 1.12 (0.87–1.43) 0.362
Frequently through the day 580 37.9 1.28 (1.00–1.63) 0.047 1.19 (0.90–1.57) 0.203
Almost all day 1212 38.2 1.34 (1.08–1.66) 0.007 1.23 (0.96–1.57) 0.087
Sex of child
Female 1790 43.2 1 1
Male 1634 31.3 0.59 (0.51–0.68) 0.000 0.56 (0.47–0.65) 0.000
Vigorous physical activity per week
Never or occasionally 984 30.7 1 1
Once or twice per week 1417 40.2 1.51 (1.27–1.80) 0.000 1.38 (1.44–1.68) 0.001
Three or more times per week 983 40.5 1.48 (1.23–1.79) 0.000 1.52 (1.23–1.88) 0.000
Residential fuel heating type most frequently
Electricity 2041 35.8 1
Gas 426 43.0 1.30 (1.05–1.61) 0.015 1.20 (0.95–1.52) 0.121
Paraffin 631 35.8 1.15 (0.94–1.40) 0.160 1.11 (0.89–1.39) 0.330
Open fire 270 43.3 1.46 (1.12–1.89) 0.004 1.51 (1.13–2.02) 0.005
ETS exposure at home
No 1460 36.1 1 1
Yes 1452 40.1 1.23 (1.05–1.43) 0.007 1.20 (1.02–1.40) 0.022

aTotals for each risk factor are different due to difference in missing values

bModel adjusted for all the variables in this table

Footnotes

Joyce Shirinde, Janine Wichmann and Kuku Voyi contributed equally to this work.

Competing interest

The authors declare they have no competing interests.

Authors’ contributions

JS participated in the design of the study, acquisition of data, statistical analysis and interpretation of the results and draft of the manuscript. JW participated in the design of the study, statistical analysis, interpretation of results and critically revised the manuscript. KV participated in the design of the study, statistical analysis, interpretation of results and critically revised the manuscript. All authors have read and approved the final manuscript.

Contributor Information

Joyce Shirinde, Email: shirindej@tut.ac.za.

Janine Wichmann, Email: janine.wichmann@up.ac.za.

Kuku Voyi, Email: Kuku.Voyi@up.ac.za.

References

  • 1.Ozdoganoglu T, Songu M. The burden of allergic rhinitis and asthma. Ther Adv Respir Dis. 2012;6:11–23. doi: 10.1177/1753465811431975. [DOI] [PubMed] [Google Scholar]
  • 2.Skoner DP. Allergic rhinitis: definition, epidemiology, pathophysiology, detection, and diagnoses. J Allergy Clin Immunol. 2001;108:S2–8. doi: 10.1067/mai.2001.115569. [DOI] [PubMed] [Google Scholar]
  • 3.Greiner AN, Hellings PW, Rotiroti G, Scadding GK. Allergic rhinitis. Lancet. 2011;378:2112–22. doi: 10.1016/S0140-6736(11)60130-X. [DOI] [PubMed] [Google Scholar]
  • 4.Scadding KG. Allergic rhinitis in children. J Paediatr Child Health. 2008;18:323–8. doi: 10.1016/j.paed.2008.04.005. [DOI] [Google Scholar]
  • 5.Gerber M, Brignoli R, Canevascini M, Wuthrich B. Epidemiological survey in hay fever patients. Allergy. 1995;50:161–3. [PubMed] [Google Scholar]
  • 6.Butland BK, Strachan DP, Lewis S, Bynner J, Butler N, Britton J. Investigation into the increase in hay fever and eczema at age 16 observed between the 1958 and 1970 British birth cohorts. BMJ. 1997;315:712–21. doi: 10.1136/bmj.315.7110.717. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 7.Fleming DM, Crombie DL. The prevalence of asthma and hay fever in England and Wales. Brit Med J. 1987;294:279–83. doi: 10.1136/bmj.294.6567.279. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 8.Burr ML, Butland BK, King S, Vaughan-Williams E. Changes in asthma prevalence: two surveys 15 years apart. Arch Dis Child. 1989;64:1452–6. doi: 10.1136/adc.64.10.1452. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 9.Galassi C, De Sario M, Biggeri A, Bisanti L, Chellini E, Cccone G, et al. Changes in the prevalence of asthma and allergies among children and adolescents in Italy 1994–2002. Pediatrics. 2006;117:34–42. doi: 10.1542/peds.2004-2709. [DOI] [PubMed] [Google Scholar]
  • 10.Peñaranda A, Aristizabal G, Garcia E, Vasquez C, Rodriguez-Martinez EC, Satizábal LC. Allergic rhinitis and associated factors in school children from Bogotá, Colombia. Rhinology. 2012;50:122–8. doi: 10.4193/Rhino11.175. [DOI] [PubMed] [Google Scholar]
  • 11.Mandhane SN, Shah JJ, Thennati R. Allergic rhinitis: an update on disease, present treatments and future prospects. Int Immunopharmacol. 2011;11:1646–62. doi: 10.1016/j.intimp.2011.07.005. [DOI] [PubMed] [Google Scholar]
  • 12.Soto-Quiros ME, Silverman KE, Hanson AL, Weiss TS, Celedon CJ. Maternal history, sensitization to allergens, and current wheezing, rhinitis and eczema among children in Costa Rica. Pediatr Pulmonol. 2002;33:237–43. doi: 10.1002/ppul.10070. [DOI] [PubMed] [Google Scholar]
  • 13.Brunekreef B, Sunyer J. Asthma, rhinitis and air pollution: is traffic to blame? Eur Respir J. 2003;21:913–5. doi: 10.1183/09031936.03.00014903. [DOI] [PubMed] [Google Scholar]
  • 14.Janssen N, Brunekreef B, Van Vliet P, Aarts F, Meliefste K, Harssema H, et al. The relationship between air pollution from heavy traffic and allergic sensitization, bronchial hyperresponsiveness, and respiratory symptoms in Dutch schoolchildren. Environ Health Perspect. 2003;111:1512–8. doi: 10.1289/ehp.6243. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 15.Berman D. Climate change and aeroallergens in South Africa. Curr Opin Allergy Clin Immunol. 2011;24:65-71.
  • 16.Green RJ, Hockman M, Friedman R, Vardas E, Cole P, Halkas A, et al. Allergic rhinitis in South Africa: 2012 guidelines. S Afr Med J. 2012;102:693–6. doi: 10.7196/samj.5810. [DOI] [PubMed] [Google Scholar]
  • 17.Green RJ, Hockman M, Friedman MR, Davies M, Mc Donald M, Seedat R, et al. Chronic rhinitis in South Africa: update 2013. S Afr Med J. 2013;103:419–22. doi: 10.7196/samj.6972. [DOI] [PubMed] [Google Scholar]
  • 18.Zar HJ, Ehrlich RI, Workman L, Weinberg EG. The changing prevalence of asthma, allergic rhinitis and atopic eczema in African adolescents from 1995 to 2002. Pediatr Allergy Immunol. 2007;18:560–5. doi: 10.1111/j.1399-3038.2007.00554.x. [DOI] [PubMed] [Google Scholar]
  • 19.Scorgie Y, Fischer T, Watson R. Air quality management plan for the Ekurhuleni metropolitan municipality. [www.ekurhuleni.gov.za/465-air-quality-management-plan-2005/file [Accessed 01 March 2015].
  • 20.South Africa: Government Notice, Department Environmetal Affairs and Tourism, No.1123, 23 November 2007 . Declaration of the Highveld as priority area in terms of Section 18(1) of the National Environmetal Management : Air Quality Act. 2004. [Google Scholar]
  • 21.Asher MI, Keil U, Anderson HR, Beasley R, Crane J, Martinez F, et al. International study of asthma and allergies in childhood (ISAAC): rationale and methods. Eur Respir J. 1995;8:483–91. doi: 10.1183/09031936.95.08030483. [DOI] [PubMed] [Google Scholar]
  • 22.Gortmaker SL, Hosmer DW, Lemeshow S. Applied logistic regression. Contemporary sociology. 2. New York: John Wiley and Sons; 1994. p. 159. [Google Scholar]
  • 23.Ait-Khaled N, Odhiambo J, Pearse N, Adjoh KS, Maesano IA, Benhabyles B, et al. Prevalence of symptoms of asthma, rhinitis and eczema in 13 to 14 year old children in Africa: the International Study of Asthma and Allergies in Childhood Phase III. Allergy. 2007;62:247–58. doi: 10.1111/j.1398-9995.2007.01325.x. [DOI] [PubMed] [Google Scholar]
  • 24.Tamay Z, Akcay A, Ergin A, Guler N. Effects of dietary habit and risk factors on allergic rhinitis among Turkish adolescents. Int J Pediatr Otorhinolaryngol. 2013;77:1416–23. doi: 10.1016/j.ijporl.2013.05.014. [DOI] [PubMed] [Google Scholar]
  • 25.Sultész M, Katona G, Hirschberg A, Gálffy G. Prevalence and risk factors for allergic rhinitis in primary schoolchildren in Budapest. Int J Pediatr Otorhinolaryngol. 2010;74:503–9. doi: 10.1016/j.ijporl.2010.02.008. [DOI] [PubMed] [Google Scholar]
  • 26.Weiland KS, Mundt AK, Rückmann A, Keil U. Self reported wheezing and allergic rhinitis in childen and traffic density on street of residence. Ann Epidemiol. 1994;4:243–7. doi: 10.1016/1047-2797(94)90103-1. [DOI] [PubMed] [Google Scholar]
  • 27.Brunekreef B, Stewart AW, Anderson R, Lai CKW, Strachan DP, Pearce N, et al. Self-reported truck traffic on the the street of residence and symptoms of asthma and allergic disease: a global relationship in ISAAC Phase 3. Environ Health Perspect. 2009;117:1791–8. doi: 10.1289/ehp.0800467. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 28.Hwang BF, Jaakkola JJK, Lee YL, Lin YC, Guo LYL. Relation between air pollution and allergic rhinitis in Taiwanese school children. Respir Res. 2006;7:23. doi: 10.1186/1465-9921-7-23. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 29.World Health Organization . Review of evidence on health aspects of air pollution- REVIHAAP Project. 2013. [Google Scholar]
  • 30.South Africa. Electronic National Administration Traffic Information System (eNaTIS). Live vehicle population as per the National Traffic Information System. [udated 30 April 2015; cited 2015 Jun 27] available from: http://www.enatis.com.

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