Journal Pre-proof Exposure to air pollution during the first 1000 days of life and subsequent health service and medication usage in children Jingyi Shao, Graeme R. Zosky, Amanda J. Wheeler, Shyamali Dharmage, Marita Dalton, Grant J. Williamson, Tierney O'Sullivan, Katherine Chappell, Luke D. Knibbs, Fay H. Johnston PII:
S0269-7491(19)33477-3
DOI:
https://doi.org/10.1016/j.envpol.2019.113340
Reference:
ENPO 113340
To appear in:
Environmental Pollution
Received Date: 24 July 2019 Revised Date:
1 October 2019
Accepted Date: 1 October 2019
Please cite this article as: Shao, J., Zosky, G.R., Wheeler, A.J., Dharmage, S., Dalton, M., Williamson, G.J., O'Sullivan, T., Chappell, K., Knibbs, L.D., Johnston, F.H., Exposure to air pollution during the first 1000 days of life and subsequent health service and medication usage in children, Environmental Pollution (2019), doi: https://doi.org/10.1016/j.envpol.2019.113340. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. Please note that, during the production process, errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain. © 2019 Published by Elsevier Ltd.
Relative risk (95% CI) of each health outcome per 10 µg m-3 increase in infant exposure to mine fire related PM2.5
• Background: Hazelwood coal mine fire 2014 in the Latrobe Valley, Victoria,
1.8 1.6 1.4
Australia
1.2 1
• Participants: 286 children (age by
0.8 0.6
31/12/2016: 2.8±1.0 years)
0.4 0.2 0 GP attendances Asthma inhaler dispensation
Steroid skin cream dispensation
Antibiotic dispensation
• Exposure estimate: Chemical transport modelling
Relative risk (95%CI) of each health outcome per 10 µg m-3 increase in intrauterine exposure to mine fire related PM2.5
• Key findings: Exposure to coal mine fire emissions during infancy was associated
3 2.5
with increased dispensing of antibiotics.
2 1.5
This could reflect increased childhood
1 0.5
infections or increased prescriptions of
0 GP attendances Asthma inhaler Steroid skin dispensation cream dispensation
Antibiotic dispensation
antibiotics in the year following the fire.
1
Exposure to air pollution during the first 1000 days of life and
2
subsequent health service and medication usage in children
3 4
Jingyi Shao1, Graeme R. Zosky1,2, Amanda J. Wheeler1,3, Shyamali Dharmage4, Marita Dalton1, Grant
5
J. Williamson5, Tierney O’Sullivan1, Katherine Chappell1, Luke D. Knibbs6, Fay H. Johnston1
6
1
7
Medicine, Faculty of Health, University of Tasmania, Hobart, Tasmania 7000, Australia; 3Behaviour,
8
Environment and Cognition Research Program, Mary MacKillop Institute for Health Research, Australian
9
Catholic University, Melbourne, Victoria 3000, Australia; 4Allergy and Lung Health Unit, Melbourne School of
Menzies Institute for Medical Research, University of Tasmania, Hobart, Tasmania 7000, Australia; 2School of
10
Population and Global Health, University of Melbourne, Carlton, Victoria 3052, Australia; 5School of Natural
11
Sciences, University of Tasmania, Hobart, Tasmania 7000, Australia; 6School of Public Health, Faculty of
12
Medicine, The University of Queensland, Herston, Queensland 4006, Australia.
13 14
Correspondence: A/Prof Fay H. Johnston, Menzies Institute for Medical Research, University of Tasmania, 17
15
Liverpool Street, Hobart, Tasmania 7000, Australia. E-mail:
[email protected]
16 17
18 19 20 21 22 23 24 25 26
27
Abstract
28
Background: Evidence of health effects following early life exposure to short-to-medium
29
duration of high pollution levels is extremely limited.
30
Objectives: We aimed to evaluate the associations between: 1. intrauterine exposure to fine
31
particulate matter (PM2.5) from coal mine fire emissions and the frequencies of general
32
practitioner attendances and dispensations of prescribed asthma inhalers, steroid skin creams,
33
and antibiotics during the first year of life; 2. infant exposure and those outcomes during the
34
year following the fire.
35
Methods: All participants were recruited from the Latrobe Valley of Victoria, Australia.
36
Participants’ 24-hour average and hourly peak mine fire-specific PM2.5 exposures from
37
09/02/2014 to 31/03/2014 were estimated using chemical transport modeling. Outcome data
38
were obtained from the Australian Medicare Benefits Schedule and Pharmaceutical Benefits
39
Scheme from each child’s birth to 31/12/2016. We used negative binomial and logistic
40
regression models to independently assess risks of the outcomes associated with every 10 and
41
100 µg/m3 increase in average or peak PM2.5 exposure, respectively, while adjusting for
42
potential confounders.
43
Results: We included 286 of 311 children whose parents consented to be linked, comprising
44
77 with no exposure, 88 with intrauterine exposure and 121 with exposure in infancy. 10- and
45
100- µg m-3 increases in average and peak PM2.5 exposure during infancy were associated
46
with greater incidence of antibiotics being dispensed during the year following the fire: the
47
adjusted incidence rate ratios were 1.24 (95% CI 1.02, 1.50, p=0.036) and 1.14 (1.00, 1.31,
48
p=0.048) respectively. No other significant associations were observed.
49
Conclusion: Exposure to coal mine fire emissions during infancy was associated with
50
increased dispensing of antibiotics. This could reflect increased childhood infections or
51
increased prescriptions of antibiotics in the year following the fire.
52
Keywords: particulate matter, infant, prenatal exposure, infection, allergy and immunology
53 54
Main findings: Infant exposure to air pollution from coal mine fire emissions might be
55
associated with increased childhood infections.
56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73
74
Introduction
75
The first thousand days of life includes the periods in utero which usually lasts for about 9
76
months, and the first two years after birth (i.e. 9 ∗ 30 + 365 ∗ 2 = 1000 days). It is
77
recognised as a critical window for the development and growth of the respiratory and
78
immune systems (Dietert et al., 2000). There is emerging evidence that air pollution exposure
79
during this period could result in long-term adverse immunological or respiratory outcomes.
80
For example, previous studies have demonstrated that early life exposure to industrial and
81
traffic-related air pollution is associated with the development of childhood asthma and
82
allergic diseases (Hehua et al., 2017, Bowatte et al., 2015, Deng et al., 2015). Intrauterine
83
exposure to both particulate matter with an aerodynamic diameter < 2.5 micrometers (PM2.5)
84
and second-hand smoke (SHS) has been associated with increased risk of infantile eczema
85
(Jedrychowski et al., 2011). Epidemiological studies have also shown significant associations
86
between air pollution exposure in utero or during the first year of life and childhood
87
pneumonia, bronchiolitis and ear infections (Soh et al., 2018, Kennedy et al., 2018, Rice et al.,
88
2015), further highlighting potential susceptibility during this period. Exposure to air
89
pollution prompts immediate immune responses (Carlsen et al., 2016, Adetona et al., 2013)
90
and can modulate later immune expression (Yi et al., 2017, Rice et al., 2015). It is therefore
91
plausible that short-term exposure to air pollution in the critical first 1000 days of life, from
92
conception to age 2 years, could affect later immunological function (Wopereis et al., 2014).
93
However very few studies have evaluated this.
94 95
Smoke from outdoor landscape fires including burning forest, grass and peat makes a
96
significant contribution to air pollution (Johnston et al., 2012) and is an increasing global
97
concern due to the rising frequency and severity of fires resulting from climate change (Liu et
98
al., 2016). Epidemiological studies suggest that smoke exposure is associated with short-term
99
increases in medication usage, physician/emergency department visits, hospitalisations and
100
death (Reid et al., 2016, Black et al., 2017b). However, evidence of long-term health
101
outcomes following exposure to short-to-medium duration smoke events (i.e. weeks) is
102
extremely limited (Melody and Johnston, 2015, Black et al., 2017b).
103 104
Embers from a bushfire in the Latrobe Valley region of Victoria, Australia, ignited a fire in
105
an open cast coal mine located close to several rural towns in February 2014 that lasted for
106
about 45 days. The episode resulted in dramatically increased concentrations of PM2.5. The
107
peak daily average PM2.5 concentration reached 731 µg/m3 in the closest town, Morwell,
108
which is substantially higher than the national daily air quality standard of 25 µg m-3 (Reisen
109
et al., 2017, Department of the Environment and Heritage). One of the main concerns of the
110
community during this period was the possible risks to their long-term health. As there was
111
little existing evidence to draw on, the state government initiated a long-term study, the
112
Hazelwood Health Study, to investigate the health and wellbeing of adults and children
113
affected by the smoke episode (Melody et al., 2018).
114 115
We hypothesised that exposure to air pollution from the coal mine fire during the intrauterine
116
or infant periods would increase the risk of common allergic or infective illnesses in the year
117
following exposure. The aim of this study was to test if exposure to smoke from the coal
118
mine fire during the first 1000 days of life was associated with increased physician visits or
119
dispensing of medications used to treat infections, asthma or atopic skin conditions.
120 121
Materials and Methods
122
1.1 Study design
123
We linked data from a cohort of children recruited to the Latrobe Early Life Follow-up (ELF)
124
Study (Melody et al., 2018) to two national Australian administrative health datasets: the
125
Medicare Benefits Schedule (MBS) and the Pharmaceutical Benefits Scheme (PBS). Data
126
were extracted by the Australian Department of Human Services for the period from each
127
child’s date of birth to 31/12/2016. The MBS dataset contained de-identified information on
128
claims to Medicare, the national insurance system, for out-of-hospital health services such as
129
visits to GPs and specialists. The PBS dataset contained de-identified information on
130
prescription medications dispensed to patients. It captured medication dispensations that were
131
subsidised by the Australian government.
132 133
The Latrobe ELF cohort comprises 571 children born between 01/03/2012 and 31/12/2015,
134
who were recruited from the Latrobe Valley, Victoria, during 2016 as part of a long-term
135
follow-up study of the health impacts of the 2014 Hazelwood coal mine fire (Shao et al.).
136
Details of this cohort are described elsewhere (Melody et al., 2018). Sociodemographic,
137
health and residential characteristics of the participants (n=571) were obtained from a
138
baseline questionnaire completed by parents/carers at enrolment. Parental consent for linkage
139
with MBS and PBS datasets was obtained from 311 participants. We recruited four groups of
140
participants according to their dates of birth and gestational age at delivery. These were: (1)
141
the intrauterine exposure group, which comprised children whose mothers were pregnant
142
with them during the period of the mine fire; (2) the infant exposure group which comprised
143
children who were aged between 0-2 years during the entire fire period; (3) the mixed
144
exposure group, who were born during the fire period; and (4) an unexposed group, who were
145
conceived and born in the year following the fire. Children in the mixed exposure group
146
(n=25) were not included in our primary analysis. The annual average PM2.5 concentration
147
during the year 2015 when most of the unexposed children were born was 6.7 µg m-
148
3
149
been exposed to very low levels of environmental PM2.5 during their perinatal periods.
150
The Tasmanian Health and Medical Human Research Ethics Committee (reference H14875)
151
approved this study. Additional approval was received from the Human Research Ethics
152
Committees of Monash University, Monash Health, and the University of Melbourne. All
153
parents or caregivers of the studied participants provided signed consent forms for accessing
154
data from the MBS/PBS datasets.
155
1.2 Exposure estimates
156
Hourly coal mine fire-specific PM2.5 concentrations during the time of the fire (09/02/2014-
157
31/03/2014) were estimated using meteorological, dispersion and chemical transport
158
modelling at a spatial resolution of 1×1 km. Details of the methods used in generating the
159
modelled exposure estimates have been previously reported (Emmerson et al., 2016). The full
160
model included PM2.5 from natural sources, traffic, power stations, landscape fires and mine
161
fire emissions. The differences between the model run with, and without, mine fire emissions
162
were used to estimate the concentration of mine fire-specific PM2.5. The magnitude of the
163
modelled PM2.5 matched reasonably well with the observed PM2.5 concentrations, but the
164
exact timing of the peak values was less accurate on an hourly basis (Emmerson et al., 2016).
165
Therefore, we calculated individual 24-hour average and the peak hourly value of 24-hour
166
PM2.5 concentrations during the exposure period, based on air pollution concentrations at
167
participants’ day and night locations from baseline questionnaires. Those children conceived
168
after the mine fire were allocated a mine fire-specific PM2.5 concentration of zero.
169
We also assessed each child’s exposure to annual average nitrogen dioxide (NO2)
170
concentrations in order to adjust for the effects from longer-term exposures to background
171
non-fire sources of air pollution particularly from motor vehicles and power stations. Annual
(Environment Protection Authority Victoria, 2019), therefore, the unexposed children had
172
ambient nitrogen dioxide (NO2) concentrations for the years 2011 to 2015 were estimated
173
using a national satellite-based land-use regression (LUR) model (Knibbs et al., 2014) at
174
‘mesh blocks’, the smallest spatial unit in the Australian census (n = ~347,000 nationally)
175
(Australian Bureau of Statistics, 2011b). In an external validation, the LUR model explained
176
66% of spatial variation in NO2 at traffic-influenced and background sites (RMSE: 2 ppb
177
[25%]) (Knibbs et al., 2016). We assigned birth year NO2 estimates to the participants
178
according to their home addresses at birth.
179
1.3 Outcome definition
180
Health outcomes of interest were decided a priori, including GP attendances, dispensations of
181
prescribed asthma inhalers, steroid skin creams and antibiotics during the first year of life, or
182
the year following the fire. We analysed all MBS claims relating to consultations with a GP
183
and PBS records of dispensations of prescribed medications used to treat asthma, atopic
184
dermatitis, and bacterial infections (Table S1-S4).
185
Evaluation of outcomes in intrauterine exposure analysis
186
For intrauterine exposure analysis, we included children in the intrauterine exposure group
187
(birthdate: 01/04/2014-31/12/2014) and all children who were not exposed to mine fire
188
smoke in their first year of life. Unexposed children included the unexposed group who were
189
conceived and born after the fire (birthdate: 01/01/2015-31/12/2015), and also those from the
190
infant exposure group who were not exposed to mine fire smoke until their second year of life
191
(birthdate: 01/03/2012-09/02/2013). Our main outcome measures for intrauterine exposure
192
analysis were restricted to the first year of life.
193
Evaluation of outcomes in infant exposure analysis
194
This analysis included children aged 0-2 years at the time of the fire, and the unexposed
195
group of children born during 2015. For the infant exposure group, we evaluated outcomes in
196
the year following the fire from 01/04/2014 to 31/03/2015 and for the comparison group we
197
evaluated outcomes in the year from 01/01/2016 to 31/12/2016.
198
1.4 Covariates
199
We selected a list of potential confounders and effect modifiers a priori using a directed
200
acyclic graph in DAGitty (Textor et al., 2011, Williamson et al., 2014). Potential covariates
201
were selected according to the existing literature on air pollution and child health (Vanker et
202
al., 2017, Feleszko et al., 2014, Lee et al., 2018, Deng et al., 2018, Uphoff et al., 2014,
203
Golenko et al., 2015). We included age (months), sex, maternal tobacco smoking status
204
during pregnancy (yes vs. no), SHS exposure (yes vs. no), maternal prenatal stress
205
(frequently stressed vs. not/infrequently stressed), birth year nitrogen dioxide (NO2) exposure
206
and socio-economic status (SES) indicated by both maternal education (≤year 12 vs. post-
207
secondary) and the Socio-economic Index (IRSD) deciles within Victoria (Australian Bureau
208
of Statistics, 2011a). The IRSD measures the relative socio-economic disadvantage of people
209
and households within an area. A low score indicates greater disadvantage or lower SES.
210
SHS exposure status was determined by whether there was a regular smoker in the child’s
211
house at baseline.
212
1.5 Statistical analysis
213
Intrauterine and infant exposure analysis were conducted separately. Negative binomial
214
regression models were used to assess the associations between 10 or 100 µg m-3 increases in
215
average and peak PM2.5 exposure, respectively, prenatally or postnatally, and GP attendances,
216
and dispensations of prescribed asthma inhalers and antibiotics, with and without adjustment
217
for covariates. The association between mine fire PM2.5 exposure and dispensations of steroid
218
skin creams was assessed using logistic regression models by defining the outcome as a
219
binary variable due to the low frequency (0.2 per child per year during the first year of life
220
and the year following the fire) in the participants. Maternal prenatal stress was excluded
221
from these models, as the models failed to converge because of complete or quasi-complete
222
separation (i.e. low or no maternal prenatal stress perfectly predicted the outcomes). Possible
223
effect modification by sex was evaluated by adding an interaction term in the multivariable
224
models. Multiple imputation by chained equations was employed to estimate missing
225
covariates values (n=4 for both intrauterine and infant exposure analysis) by generating 20
226
independent datasets (Azur et al., 2011). Imputation models included exposure, all covariates,
227
maternal stress during the fire and outcome variables. All statistical analyses were performed
228
in R 3.5.3 (the R Foundation) (R Core Team, 2019) via RStudio, and a p value <0.05 was
229
considered statistically significant.
230
231
Results
232
Participant characteristics
233
Parents/carers of 311 (54.5%) children from the full Latrobe ELF cohort (n=571) consented
234
to be linked to the MBS/PBS datasets. There were 88 children in the intrauterine exposure
235
group, 77 in the no exposure group, 121 in the infant exposure group, and 25 children born
236
during the fire period. Therefore, 218 children were included in the intrauterine exposure
237
analysis, while 198 were included in the infant exposure analysis.
238
In the intrauterine exposure analysis, no statistically significant differences were observed
239
between exposed and non-exposed children for ambient NO2 exposure, or across sex, tobacco
240
smoke exposure, SES and maternal prenatal stress (Table 1; p>0.050 for all comparisons). In
241
contrast, children in the infant exposure group were, on average, older by approximately 4.6
242
months (Table 2; p<0.050) than those in the no exposure group. The other covariates were
243
approximately equally distributed across different groups (Table 2; p>0.050 for all
244
comparisons). Exposure to mine fire PM2.5 was higher in the infant exposure group than in
245
the intrauterine exposure group (Table 1-2).
246
Overall, a higher proportion of well-educated (i.e. post-secondary) (67.8%) and non-smoking
247
(87.1%) primary carers of the children were included in this study compared with the full
248
ELF cohort (Table S5).
249
250
GP visits and medication use by exposure groups
251
The frequencies of GP attendances, and dispensations of prescribed asthma inhalers, steroid
252
skin creams and antibiotics were generally low among all participants (Table 3). No
253
significant differences were observed between exposed and non-exposed children in the
254
intrauterine exposure analysis (Table 3; p>0.050 for all comparisons). In the infant exposure
255
analysis, the average rate of antibiotic prescribing was approximately double in the group
256
exposed compared with those not exposed (1.5 vs. 0.8, p<0.050), but there was a lower
257
frequency of prescribed steroid cream dispensations (0.1 vs. 0.4, p<0.050) in the exposed
258
children during the one year follow up period (Table 3).
259
260
Associations between mine fire smoke exposure and health outcomes
261
For intrauterine exposure analysis, univariable and multivariable regression analyses did not
262
show any significant associations between intrauterine mine fire PM2.5 exposure and any of
263
the outcomes (Table 4-5).
264
For infant exposure analysis, univariable analyses suggested that mine fire PM2.5 exposure
265
(continuous variable) was associated with increased antibiotic dispensations during the
266
follow-up year (Table 6). After adjusting for potential confounders, every 10 µg m-3 increase
267
in average PM2.5 exposure during infancy were associated with increased incidence of
268
antibiotics being dispensed during the year following the fire: adjusted incidence rate ratio
269
(IRR) 1.24 (95%CI, 1.02, 1.50; p=0.036). Every 100 µg m-3 increase in peak PM2.5 during
270
infancy was also associated with an increase in antibiotic dispensations (IRR 1.14, 95%CI
271
1.00, 1.31; p=0.048). Similar associations were not found for other outcomes (Table 7).
272
There was no evidence of effect modification by sex in either the intrauterine or infant
273
exposure analyses (Table S6; interaction p>0.050 for all analyses).
274
275
Discussion
276
To our knowledge, this study provides the first evidence that infant exposure to increased
277
PM2.5 derived from coal mine fire emissions over a medium duration was associated with
278
increased dispensations of antibiotics during the year following the fire. The association was
279
independent of potential confounders including age of the child, tobacco smoke exposure,
280
socio-economic status and background air pollution exposure. In contrast, we did not observe
281
significant associations for other outcomes among infants (frequency of GP attendances or
282
the usage of medications for asthma or allergic skin conditions), nor did we observe effects of
283
in utero exposure to fire smoke with any of the outcomes during the first year of life.
284
Our finding of an increase in antibiotic use after mine fire smoke exposure during infancy is
285
similar to an American study evaluating the associations between short-term increases in
286
ambient PM2.5 concentrations and respiratory infections in young children aged 0-2 years
287
(Horne et al., 2018). The authors of the American study suggested that every 10 µg m-3
288
increase in PM2.5 concentration was associated with a 15% (95% CI, 12%, 19%) greater odds
289
of healthcare encounters for acute lower respiratory infections one month following the
290
exposure. We are not aware of previous epidemiological studies investigating long-term
291
immune effects of perinatal exposure to fire smoke. However, animal and cell line studies
292
have shown that perinatal exposure to particles from landscape fire emissions induces
293
oxidative stress and inflammation, resulting in immune dysregulation and increased
294
susceptibly to respiratory infections (Black et al., 2017a, Roscioli et al., 2017, Wegesser et al.,
295
2010).
296
Our study did not observe any significant associations between in utero fire smoke exposure
297
and antibiotic usage during the first year of life. This is inconsistent with current evidence
298
regarding intrauterine air pollution exposure and childhood respiratory infections. For
299
example, a Polish study suggested a dose-response relationship between in utero PM2.5
300
exposure levels and the incidence of recurrent respiratory infections (≥5 episodes of
301
bronchitis and/or pneumonia) from birth to age 7 (OR 2.44; 95%CI, 1.12, 5.36)
302
(Jedrychowski et al., 2013). Another study suggested that intrauterine exposure to traffic-
303
related air pollution, estimated by proximity to a major roadway and traffic density, was
304
associated with increased risk of childhood respiratory infection (Rice et al., 2015). A
305
Chinese study suggested that intrauterine exposure to industrial air pollution was associated
306
with increased risk of otitis media in children aged 3-4 years (Deng et al., 2017). This
307
inconsistency might be due to the relatively short duration of exposure in our study compared
308
with the Polish study, the different ages of the children at the time of follow-up, and the
309
different chemical composition and toxicological properties of PM2.5 from the fire emissions
310
and urban sources (Verma et al., 2009). It is also worth noting that although a proportion of
311
our study participants were exposed to very high concentrations of mine fire PM2.5, the
312
average PM2.5 concentrations in our study were much lower than the cut-off points (2.8 vs.
313
26.6 and 45.9 µg m-3) used in the Polish study.
314
Our study did not observe any significant associations between either intrauterine or infant
315
fire smoke exposures and asthma inhaler dispensations by age 3. There is very limited
316
evidence regarding the long-term risk of childhood wheezing or asthma after perinatal
317
exposure to severe, medium duration air pollution events. The only comparable study
318
investigated the association between early life exposure to the Great Smog of 1952 in London
319
and childhood asthma assessed by self-reported diagnosis from birth to age 15. That study
320
suggested that children exposed to the Great Smog during infancy had increased risk of
321
childhood asthma by 19.87 percent (95%CI, 3.37, 36.38) compared with those conceived
322
before or after the event and those living beyond the affected area. In utero smog exposure
323
was not associated with asthma development (Bharadwaj et al., 2016). The inconsistent
324
results for infant exposure between the Great Smog study and ours could be due to the
325
different data collection methods, the challenges of asthma diagnoses in preschool children
326
(Cave and Atkinson, 2014) and our participants who were exposed during infancy had a
327
mean age of 2.0 years during the year of followed up. A harvesting effect might also exist
328
due to increased deaths from the Great Smog.
329
Using asthma medication prescription as an indicator of asthma diagnosis might
330
underestimate asthma incidence as many asthma inhalers can be purchased without a
331
prescription. Further, while prescription data can be a good proxy for the diagnosis of many
332
diseases such as asthma (Furu et al., 2007), we were not able to directly evaluate diagnoses
333
among the cohort. It will be important to continue to monitor these outcomes in our
334
participants to further explore any potential associations.
335
The observed increase in the dispensing of antibiotics might represent an increase in
336
infections commonly managed with antibiotics, or it could reflect a lower threshold for
337
prescribing antibiotic by doctors in the year following the fire, or an increase in parental
338
concern associated with a greater number of requests for antibiotics. However, the unchanged
339
rate of doctor attendances in the year following the fire, and the lack of association with
340
antibiotic prescribing in the first year of life in children who were exposed in utero, both
341
suggest that doctor or parental health seeking behaviour did not appreciably change and these
342
factors are unlikely to explain the association we observed.
343
A strength of the study is that we estimated individual PM2.5 exposure adjusting for
344
residential histories and activity patterns for each participant during the fire period, and we
345
were able to adjust for exposure to background air pollution using modelled estimates of
346
annual non-fire related NO2. This could reduce exposure measurement error. A previous
347
study reported that ignoring residential mobility when estimating traffic-related air pollution
348
exposure caused a modest bias of the associations towards the null (Pennington et al., 2017).
349
In addition, we used multiple imputations to minimise the bias from missing data, and loss of
350
power associated with reductions in sample size (Sterne et al., 2009).
351
However, we acknowledge some limitations in this study. First, our sample of 286
352
participants was relatively small and this limited the power of our analyses to detect
353
significant associations, especially those of small magnitude. A small sample may also affect
354
the generalisability of our study because it was not completely representative of the wider
355
population. Relative to the local population, a higher proportion of children with well-
356
educated and non-smoking parents were recruited (Melody et al., 2018) and included in our
357
study. Our results could be an underestimate of the impacts which might be expected in a
358
population with a higher prevalence of smoking and social disadvantage. Second, exposure
359
misclassification and recall error may have occurred due to the subjective measurement of
360
participants’ locations during the fire period for which we relied on parental reports. However,
361
most respondents reported that they were confident of their recall and eyewitness studies
362
have suggested a strong correlation between measures of confidence and accuracy of recall
363
(Wixted et al., 2016). In addition, the exposure estimate modelling we used could not capture
364
the impact of home air conditioning systems on personal exposures. Personalized monitoring
365
devices can be more accurate but not feasible to deploy during a public health emergency
366
such as this coal mine fire. Third, the use of medication dispensation data from PBS datasets
367
as indicators of childhood illnesses may introduce measurement error. The MBS/PBS
368
datasets only recorded the histories of medical service usage and medication dispensations
369
that were covered by the Australian government, so asthma inhalers purchased without a
370
medical prescription are not included in this analysis (Australian Government Department of
371
Health, 2018a, Australian Government Department of Health, 2018b). Furthermore, seasonal
372
variations in circulating pathogens may impact on antibiotic prescription. However, the effect
373
size (i.e. around 24% increase) was large enough to suggest a possible association between
374
infant coal mine fire smoke exposure and increased childhood infections. In addition, our
375
results might be influenced by residual confounding. However, we adjusted for the most
376
important factors including tobacco smoke exposure, SES and background air pollution
377
exposure.
378
379
Conclusions
380
In conclusion, our study suggested that infant exposure to a short-term severe air pollution
381
event was associated with increased childhood antibiotic dispensations, which might reflect
382
increased childhood infections. Future follow-up of the participants will be necessary to
383
confirm these findings and evaluate long-term effects.
384
385
Acknowledgements
386
The Latrobe Early Life Follow-up (ELF) Study constitutes the child health and development
387
stream of the Hazelwood Health Study. The Latrobe ELF Study forms part of the wider
388
research program of the Hazelwood Health Study (HHS) and is run by a multidisciplinary
389
group of researchers and administrative staff from the University of Tasmania, Monash
390
University, the University of Melbourne, the University of Sydney and CSIRO. We would
391
like to acknowledge all of these staff for their important contributions. Most of all, the study
392
team would like to acknowledge the contribution of all families and community members
393
who have participated in the study to date.
394
This work was supported by the Victorian Department of Health and Human Services
395
(Australia). The paper presents the views of the authors and does not represent the views of
396
the Department. Dr Wheeler’s fellowship was funded by the Centre for Air pollution, energy
397
and health Research.
398
Conflict of interest
399
The authors declare no conflict of interest with this study. Fay Johnston received payment for
400
expert testimony from Environment Protection Authority Victoria (Australia). Amanda
401
Wheeler’s fellowship was funded by the Centre for Air pollution, energy and health Research.
402
403
404
405
406
407
408
409
410
411
Appendix
412
Supplemental material
413
Table S1. Medicare Benefit Schedule items for general practitioner attendances
414
Table S2. Pharmaceutical Benefits Scheme items for the dispensations of prescribed asthma
415
medications
416
Table S3. Pharmaceutical Benefits Scheme items for the dispensations of steroid skin creams
417
Table S4. Pharmaceutical Benefits Scheme items for the dispensations of antibiotics
418
Table S5. Comparisons between participants in the study and the full cohort
419
Table S6. Effect modification by sex in intrauterine and infant exposure analysis
420
421
422
423
424
425
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427
428
429
430
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Table 1. Comparison of participant characteristics between groups in the intrauterine
646
exposure analysis Characteristics
Intrauterine exposure
No exposure group
group
(n=130)
(n=88) Median [IQR] IRSD deciles within Victoria
P
a
3 [1, 5]
3 [1, 7]
0.842
Birth year NO2 exposure (ppb)
3.9 [3.4, 4.4]
4.0 [3.3, 4.6]
0.884
Average mine fire PM2.5 (µg m-3)
2.8 [1.6, 7.8]
0.0 [0.0, 0.0]
-
76.7 [49.7, 162.3]
0 [0.0, 0.0]
-
Peak mine fire PM2.5 (µg m-3)
n (%)
P
b
Sex: male
39 (44.3%)
64 (49.2%)
0.476
Maternal smoking during pregnancy: yes
9 (10.2%)
23 (17.7%)
0.127
16 (18.2%)
27 (20.9%)
0.618
16 (18.4%)
20 (15.5%)
0.577
28 (31.8%)
47 (36.4%)
0.483
c
Secondhand smoke exposure : yes d
Maternal prenatal stress : frequently stressed c
Maternal education : ≤year 12
647
Note: IQR, interquartile range; IRSD, Index of Relative Socio-economic Disadvantage; NO2, nitrogen dioxide.
648
a
649
b
650
c
651
d
652 653 654 655 656
Mann-Whitney U test. Pearson’s chi-square test.
Having missing values (n=1). Having missing values (n=2).
657
Table 2. Comparison of participant characteristics between groups in the infant exposure
658
analysis Characteristics
Infant exposure group
No exposure group
(n=121)
(n=77) Median [IQR]
Age at the start of outcome year (months)
P
a
11.6 [7.1, 17.0]
7.0 [3.4, 9.3]
0.000
2 [1, 5]
3 [1, 8]
0.071
Birth year NO2 exposure (ppb)
4.3 [3.6, 4.9]
3.8 [3.2, 4.3]
0.001
Average mine fire PM2.5 (µg m-3)
6.8 [2.0, 13.6]
0.0 [0.0, 0.0]
-
106.5 [53.1, 195.8]
0 [0.0, 0.0]
-
IRSD deciles within Victoria
Peak mine fire PM2.5 (µg m-3)
n (%)
P
b
Sex: male
63 (52.1%)
36 (46.8%)
0.466
Maternal smoking during pregnancy: yes
21 (17.4%)
11 (14.3%)
0.567
29 (24.2%)
14 (18.4%)
0.344
18 (14.9%)
9 (11.8%)
0.547
43 (35.8%)
28 (36.4%)
0.940
c
Secondhand smoke exposure : yes d
Maternal prenatal stress : frequently stressed d
Maternal education : ≤year 12
659
Note: IQR, interquartile range; IRSD, Index of Relative Socio-economic Disadvantage; NO2, nitrogen dioxide.
660
a
661
b
662
c
663
d
664
665
666
667
Mann-Whitney U test. Pearson’s chi-square test.
Having missing values (n=2). Having missing values (n=1).
668
Table 3. Frequency of health services and medication usage in exposed and non-exposed
669
children Intrauterine exposure group
No exposure group
(during the first year of life)
(during the first year of life)
GP attendances
8.0
7.8
0.944
Prescribed asthma inhalers
0.4
0.3
0.598
Steroid skin creams
0.1
0.3
0.187
Antibiotics
0.8
0.7
0.248
Exposure group
No exposure group
(01/04/2014-01/04/2015)
(01/01/2016-31/12/2016)
GP attendances
6.9
7.8
0.179
Prescribed asthma inhalers
0.7
0.4
0.198
Steroid skin creams
0.1
0.4
0.005
Antibiotics
1.5
0.8
0.001
670
Note: GP, general practitioner.
671
a
673
674
675
676
677
678
a
Exposure group
Postnatal exposure group
672
Mean (per child/year)
Mann-Whitney U test.
P
679
Table 4. Univariable analysis of intrauterine mine fire PM2.5 exposure, risk factors and health
680
outcomes during the first year of life
Univariable analysis
GP attendances
(n=218)
Dispensations of
Dispensations of
Dispensations of
prescribed asthma
steroid skin creams
antibiotics
inhalers IRR
P
(95%CI) Average PM2.5 (per
1.00
10 µg m-3 increase)
(0.85, 1.18)
Peak PM2.5 (per 100
1.00
µg m-3 increase) Maternal education: ≤year 12 Maternal tobacco smoking status during
0.997
0.85
0.934
0.99
0.635
0.99
0.953
(0.80, 1.31)
1.20
1.10
0.98
0.982
0.94
0.804
(0.47, 3.07)
0.70
P
1.20
0.361
(0.81, 1.78) 0.925
1.07
0.498
(0.88,1.29) 0.894
(0.40, 2.22) 0.700
IRR (95%CI)
(0.67, 1.43)
(0.48, 2.03) 0.848
P
(0.53, 2.27)
(0.72, 1.36) 0.198
OR (95%CI)
(0.42, 1.69)
(0.94, 1.35) 1.02
P
(95%CI)
(0.92, 1.08) 1.13
IRR
1.68
0.023
(1.08, 2.62) 0.578
(0.20, 2.47)
1.78
0.047
(1.01, 3.12)
pregnancy: yes Second hand smoke exposure: yes
0.89
0.320
(0.72, 1.11)
Maternal prenatal
1.13
stress: frequently
(0.90, 1.42)
0.75
0.537
(0.31, 1.84) 0.292
1.73
0.91
0.857
(0.32, 2.56) 0.209
(0.74, 4.04)
0.37
1.28
0.364
(0.75, 2.19) 0.193
(0.08, 1.64)
1.52
0.142
(0.87, 2.64)
stressed IRSD
0.97
0.075
(0.95, 1.00) Background NO2 exposure
1.02 (0.97, 1.07)
0.99
0.910
(0.88, 1.12) 0.504
0.96 (0.76, 1.20)
1.12
0.091
(0.98, 1.27) 0.691
0.68 (0.42, 1.08)
0.91 (0.84, 0.98)
0.105
1.16 (1.04, 1.30)
681
Note: GP, general practitioner; IRR, incidence rate ratio; CI, confidence interval; OR, odds ratio; PM2.5,
682
particulate matter with an aerodynamic diameter less than 2.5 micrometers; IRSD, Index of Relative Socio-
683
economic Disadvantage; NO2, nitrogen dioxide.
684
0.016
0.009
685
Table 5. Mine fire smoke exposure during pregnancy and health outcomes during the first
686
year of life
Multivariable
GP attendances
analysis (n=218)
Dispensations of
Dispensations of
Dispensations of
prescribed asthma
steroid skin creams
antibiotics
inhalers IRRa
P
(95%CI) Average PM2.5 (per
1.00
10 µg m-3 increase)
(0.85, 1.18)
Peak PM2.5 (per 100
1.00
µg m-3 increase)
(0.93, 1.08)
IRRa
P
(95%CI) 0.987
0.87
1.01 (0.74, 1.37)
P
0.691
1.26
0.565
(0.57, 2.77) 0.969
1.00 (0.68, 1.46)
IRRa
1.16
0.991
1.08 (0.90,1.31)
Note: GP, general practitioner; IRR, incidence rate ratio; CI, confidence interval; OR, odds ratio; PM2.5,
688
particulate matter with an aerodynamic diameter less than 2.5 micrometers.
689
a
690
during pregnancy, secondhand smoke exposure, maternal prenatal stress and background nitrogen dioxide
691
exposure.
693
694
695
696
697
698
699
0.433
(0.80, 1.68)
687
692
P
(95%CI)
(95%CI)
(0.45, 1.71) 0.953
a
OR
Models adjusted for maternal education, index of relative socio-economic disadvantage, maternal smoking
0.393
700
Table 6. Univariable analysis of infant mine fire PM2.5 exposure, risk factors and health
701
outcomes during the year following the fire
Univariable analysis
GP attendances
(n=198)
Dispensations of
Dispensations of
Dispensations of
prescribed asthma
steroid skin creams
antibiotics
inhalers IRR
P
(95%CI) Average PM2.5 (per
0.99
10 µg m-3 increase)
(0.89, 1.10)
Peak PM2.5 (per 100
0.98
µg m-3 increase)
(0.91, 1.06)
Age (per month)
0.98
≤year 12 Maternal tobacco smoking status during
1.11
0.789
1.19
0.578
1.12
0.196
1.02
0.219
1.36
0.334
(0.68, 1.17)
1.36
0.277
0.67
0.88
0.260
0.38
0.150
(0.69, 2.66)
0.24
1.22
0.024
1.14
0.034
(1.01,1.28) 0.015
1.01
0.556
(0.98, 1.04) 0.100
(0.12, 1.19) 0.377
P
(1.03, 1.44)
(0.80, 0.98)
(0.80, 2.31) 0.421
0.70
IRR (95%CI)
(0.40, 1.15)
(0.98, 1.06) 0.312
P
(0.36, 1.34)
(0.94, 1.34) 0.003
OR (95%CI)
(0.92, 1.54)
(0.91, 1.37) 0.89
P
(95%CI)
(0.96, 0.99) Maternal education:
IRR
1.44
0.043
(1.01, 2.05) 0.167
(0.03, 1.82)
1.02
0.944
(0.63, 1.63)
pregnancy: yes Second hand smoke exposure: yes
0.82
0.121
(0.65 1.05)
Maternal prenatal
0.97
stress: frequently
(0.73, 1.30)
0.81
0.564
(0.41, 1.63) 0.837
1.48
0.34
0.164
(0.08, 1.54) 0.276
-
1.21
0.358
(0.80, 1.83) -
(0.73, 3.01)
0.92
0.753
(0.55, 1.54)
stressed IRSD
0.98
0.172
(0.95, 1.01) Birth year NO2 exposure (per ppb)
1.02 (0.97, 1.08)
0.95
0.215
(0.86, 1.03) 0.397
1.06 (0.92, 1.21)
1.01
0.908
(0.87, 1.17) 0.420
0.99 (0.76, 1.29)
0.98
0.497
(0.92, 1.04) 0.948
1.05 (0.95, 1.15)
702
Note: GP, general practitioner; IRR, incidence rate ratio; CI, confidence interval; OR, odds ratio; PM2.5,
703
particulate matter with an aerodynamic diameter less than 2.5 micrometers; IRSD, Index of Relative Socio-
704
economic Disadvantage; NO2, nitrogen dioxide.
0.339
705
Table 7. Mine fire smoke exposure in infancy and health outcomes during a one-year period
706
after the fire
Multivariable
GP attendances
analysis (n=198)
Dispensations of
Dispensations of
Dispensations of
prescribed asthma
steroid skin creams
antibiotics
inhalers IRRa
P
(95%CI) Average PM2.5 (per
0.96
10 µg m-3 increase)
(0.85, 1.09)
Peak PM2.5 (per 100
0.96
µg m-3 increase)
(0.89, 1.05)
IRRa
P
(95%CI) 0.550
1.16
1.08 (0.88, 1.33)
P
0.339
0.66
0.270
(0.31, 1.38) 0.459
0.65
IRRa
1.24
0.135
(0.37, 1.14)
1.14
708
particulate matter with an aerodynamic diameter less than 2.5 micrometers.
709
a
710
during pregnancy, secondhand smoke exposure, maternal prenatal stress and background nitrogen dioxide
711
exposure.
712
b
713
during pregnancy, secondhand smoke exposure and background nitrogen dioxide exposure.
716
717
718
719
0.048
(1.00,1.31)
Note: GP, general practitioner; IRR, incidence rate ratio; CI, confidence interval; OR, odds ratio; PM2.5,
715
0.036
(1.02, 1.50)
707
714
P
(95%CI)
(95%CI)
(0.86, 1.57) 0.380
b
OR
Models adjusted for age, maternal education, index of relative socio-economic disadvantage, maternal smoking
Models adjusted for age, maternal education, index of relative socio-economic disadvantage, maternal smoking
1
Highlights
2
•
Evidence on long-term health effects following early life air pollution is scarce.
3
•
We assessed the health impact of perinatal fire smoke exposure on 286 children.
4
•
Infant exposure was associated with increased antibiotic dispensation.
5
Declaration of interests ☒ The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper. ☐The authors declare the following financial interests/personal relationships which may be considered as potential competing interests:
Fay Johnston received payment for expert testimony from Environment Protection Authority Victoria (Australia). Amanda Wheeler’s fellowship was funded by the Centre for Air pollution, energy and health Research.