Literature DB >> 26875192

Inflammatory markers and exposure to airborne particles among workers in a Swedish pulp and paper mill.

Håkan Westberg1, Karine Elihn2, Eva Andersson3, Bodil Persson4,5, Lennart Andersson6, Ing-Liss Bryngelsson6, Cathe Karlsson7, Bengt Sjögren8.   

Abstract

PURPOSE: To study the relationship between exposure to airborne particles in a pulp and paper mill and markers of inflammation and coagulation in blood.
METHODS: Personal sampling of inhalable dust was performed for 72 subjects working in a Swedish pulp and paper mill. Stationary measurements were used to study concentrations of total dust, respirable dust, PM10 and PM2.5, the particle surface area and the particle number concentrations. Markers of inflammation, interleukins (IL-1b, IL-6, IL-8, and IL-10), C-reactive protein (CRP), serum amyloid A (SAA), and fibrinogen and markers of coagulation factor VIII, von Willebrand, plasminogen activator inhibitor, and D-dimer were measured in plasma or serum. Sampling was performed on the last day of the work free period of 5 days, before and after the shift the first day of work and after the shifts the second and third day. In a mixed model analysis, the relationship between particulate exposures and inflammatory markers was determined. Sex, age, smoking, and BMI were included as covariates.
RESULTS: The average 8-h time-weighted average (TWA) air concentration levels of inhalable dust were 0.30 mg/m(3), range 0.005-3.3 mg/m(3). The proxies for average 8-h TWAs of respirable dust were 0.045 mg/m(3). Significant and consistent positive relations were found between several exposure metrics (PM 10, total and inhalable dust) and CRP, SAA and fibrinogen taken post-shift, suggesting a dose-effect relationship.
CONCLUSION: This study supports a relationship between occupational particle exposure and established inflammatory markers, which may indicate an increased risk of cardiovascular disease.

Entities:  

Keywords:  C-reactive protein (CRP); Fibrinogen; Interleukins (IL-1b, IL-6, IL-8 and IL-10); PM10; PM2.5; Respirable dust; Serum amyloid A (SAA)

Mesh:

Substances:

Year:  2016        PMID: 26875192      PMCID: PMC4871919          DOI: 10.1007/s00420-016-1119-5

Source DB:  PubMed          Journal:  Int Arch Occup Environ Health        ISSN: 0340-0131            Impact factor:   3.015


Introduction

Production of pulp and paper is an important sector of Swedish industry with around 42,000 employed. The historical production was dominated by the sulfite process, and today the sulfate process has taken the lead (Nordström et al. 1988; Persson et al. 2007). The occupational chemical exposures in this industry comprised paper and wood dust, chlorine, chlorine dioxide, formaldehyde, terpenes, cutting and lubricating oils, asbestos, and calcium carbonate (Andersson et al. 2010; Kauppinen et al. 2002; Korhonen et al. 2004). The exposures vary a lot between processes and departments (Torén et al. 1996). Further exposures include noise, microorganisms, heat, and shift work (Korhonen et al. 2004; Langseth and Kjaerheim 2006). Some studies have observed an increased risk of cardiovascular diseases among pulp and paper mill workers (Andersson et al. 2007; Hammar et al. 1992; Jäppinen and Tola 1990; Langseth and Kjaerheim 2006; Milham and Demers 1984; Persson et al. 2007; Torén et al. 1996) and others have not (Henneberger et al. 1989; Matanoski et al. 1998; Robinson et al. 1986; Sala-Serra et al. 1996; Solet et al. 1989; Wingren et al. 1991; Wong et al. 1996). In 2010, a writing group of the American Heart Association stated that the overall evidence is consistent with a causal relationship between PM2.5 exposure and cardiovascular morbidity and mortality (Brook et al. 2010). These effects have been found in short-term studies, which relate day-to-day variations in air pollution and health, in long-term studies, which have followed cohorts of exposed individuals over time, and in intervention studies. There is also strong mechanistic evidence from animal and human studies supporting a systemic inflammatory response as the pathway between airborne particle exposure and cardiovascular disease. Other possible biological pathways are disturbances in the autonomic nervous system and direct effects of particles reaching the systemic circulation (Brook et al. 2010). The inflammatory causal link between inhalation of particulate matter and the incidence of cardiovascular disease was launched as a hypothesis in the mid-1990 (Seaton et al. 1995; Sjögren 1997). Several inflammatory markers, such as interleukin-6, C-reactive protein (CRP), and fibrinogen, are established risk factors for cardiovascular disease (Danesh et al. 1998, 2000, 2005, 2008). Serum amyloid A (SAA) has also been proposed as a risk factor for cardiovascular disease in a battery of several biomarkers (Arant et al. 2009). Studies on qualitative and quantitative associations between particle exposure and inflammatory markers in industrial environments are sparse and have not been performed in the pulp and paper industry. The purpose was to study the possible exposure–effect relationship between airborne particles and markers of inflammation and coagulation in workers in a pulp and paper mill.

Methods

Study object and group

The study was performed at a pulp and paper mill in the middle of Sweden with 850 employees. The mill is one of the largest producers of paper for packaging in Europe. The raw material is softwood as well as hardwood, and the production is based on unbleached and bleached sulfate pulp as well as neutral sulfite semi-chemical (NSSC) pulp. The products has included Kraft paper, sacks, spinning paper, white top liner (WTP), coated paper, sterile paper, sandwich and envelope paper. The departments represented were raw material supply, pulp and paper production, mixing and steam and power production. The exposures varies between different departments, but the main chemical exposures are wood and paper dust, terpenes and bleachery chlorine-based chemicals, calcium hydroxide, sulfur dioxide, hydrogen sulfide, and various reduced sulfur compounds. The production is performed continuously during day and night in a 5-shift schedule. The shiftwork comprised 8-h for all workers. Production workers in each department, from at least two representative shifts out of a total of 5, were invited to participate in the study. The acceptance rate varied between 50 and 90 % in different shifts. In total, 72 subjects, 62 men and 10 women, were investigated. Five workers were excluded due to infectious symptoms, and consequently 67 workers were included in the analysis. Their median age was 46 years (range 25–60 years), and the median duration of employment was 10 years (range 0–38). The shiftwork comprised 8-h for all workers. 16 subjects were current smokers, 16 ex-smokers and 35 were never smokers. The median BMI was 26.7. No personal protective masks were used, only gloves and glasses.

Study design

The study was performed between May 2007 and February 2009. The investigation comprised aerosol as well as blood sampling the first days after a work free period of generally 5 days. Blood sampling was started in the afternoon (3–4.30 p.m.) the last day of the work free period (day 0), and continued before (4.45–5.45 a.m.) and after the shift the first day of work (day 1) and later after the shifts the second (day 2) and third day (day 3). These post-shift samples were taken between 1.30 and 2.30 p.m. This post-shift sampling study design aimed to control for circadian variation. A questionnaire was completed by all participants, containing items about current and previous working conditions, smoking habits, medication, and symptoms of respiratory irritation, infection or other inflammation, which could influence the levels of the biomarkers. Aerosol sampling was performed on the first day (day 1) for all participants. The study was approved by the Regional Ethical Review Board, Uppsala, id number 2007/51.

Aerosol measurements

The effects of inhalation of airborne particles have traditionally been focused on coarse and fine particles (Brunekreef and Forsberg 2005). In addition particle surface area and particle number have been discussed as agents with inflammatory impact in the lung. Consequently, several exposure metrics, comprising various particle size fractions, have been included. For practical reasons, personal exposure measurements could only be performed for inhalable dust. Other aerosol metrics were determined stationary. The inhalable dust exposure of the participating subjects was determined with personal sampling measurement, i.e., using personal pumps carried by each worker, the first day after a work free period and the same day as the medical investigations. Personal sampling of inhalable dust was carried out as 8-h full shift samples according to standards for measurement of inhalable dust using GSP-samplers operating at 3.5 l/min, (HSE 2000). Measuring rigs were used for stationary measurements (area measurements). These measurements were taken at different areas where the workers were present during the work shift, i.e., in the control room as well as along the surveillance tours performed at different departments in the plant. These measurements included sampling of inhalable dust using the same techniques as for the personal samples. Total dust was determined as 8-h full shift samples according to a modified gravimetric method (NIOSH 1994) using an open faced 25-mm filter cassettes (OFC), with an air flow of 2.0 l/min. Respirable dust was determined using SKC aluminum cyclones for 25-mm filters, operating at an air flow of 2.5 l/min (HSE 2000). The PM10 and PM2.5 air concentrations were determined using a Chempass system operating at 1.8 l/min (EN 1999, 2005). Particle surface area concentration was determined using an A-trak 9000 (Aero Trak Nanoparticle Aerosol Monitor) where the particle surface area is determined real-time, ranging in particle size from 10 to 1000 nm. The particle number concentrations in the size range 20–1000 nm was determined using a real-time aerosol monitoring instrument, (P-Trak 8525, Ultrafine Particle Counter). In addition to the determined personally sampled exposures of inhalable dust presented as 8-h time-weighted averages (8-h TWAs), the corresponding exposure measures were determined for other aerosol and particle fractions based on the measurements performed in the rig. The TWA exposure regarding respirable and total dust, PM10, PM2.5, particle surface area as well as the particle number concentrations was calculated for each participant. These exposure metrics were estimated by recorded time in different departmental work areas for each worker and the measured aerosol air concentrations at stationary sampling sites representing these work areas. The time spent in different areas was recorded by individual logging of daily work schemes. The individual 8-h TWAs exposures were calculated in the following way for each participant: Air concentration during time period 1 (work area 1), stationary measurement 1 Air concentration during time period n (work area n), stationary measurement n Time spent in period 1 Time spent in period n

Markers of inflammation and coagulation

The concentrations of several markers of inflammation and coagulation were determined in serum and plasma; interleukins (IL-1b, IL-6, IL-8, and IL-10), γ-interferon (IFNγ), tumor necrosis factor-α (TNFα), CRP, SAA, fibrinogen, factor VIII, von Willebrand factor (vWF), plasminogen activator inhibitor (PAI-1), and D-dimer. All blood samples were centrifuged and frozen to −70 °C. The analyses were performed at the Clinical Research Center, Örebro University Hospital and at the Department of Occupational and Environmental Medicine, Sahlgrenska University Hospital, Göteborg. The concentrations of interleukins, IFNγ, and TNFα were analyzed with a Milliplex Human Cytokine/Chemokine Immunoassay kit (Millipore Corporation, 290 Concord Road Billerica, MA 01821, USA), the measurements were taken with Luminex 200TM recorder (12212 Technology Blvd, Austin, Texas, USA), and the results were calculated with Luminex xPONENT software.

Statistical analysis

For descriptive purposes, the aerosol concentrations of different exposure metrics, i.e., inhalable, total, and respirable dust, PM10 and PM2.5, the particle surface area (A-Trak), and the particle number concentration (P-trak) were presented as 8-h TWAs for the full workday. Standard parameters such as arithmetic mean (AM), standard deviation (SD), geometric mean (GM) geometric standard deviation (GSD) and range were calculated for the log normal distribution of all the measurements, including the static samples of the aerosol mass fractions, the concentrations of particle number and particle surface area (Table 1). A corresponding description, mean and range, of the blood concentration by sampling day is also presented (Table 2).
Table 1

Exposure concentration levels of inhalable dust and calculated personal exposure levels of inhalable, total and respirable dust, PM10, PM2.5, particle surface area (A-trak,) and particle number concentrations (P-trak) for all departments

Exposure concentration levels N AMMedianSDGMGSDMinMax
Exposure measurements
 Inhalable dust (mg/m3)720.300.140.520.153.10.0053.3
Stationary measurements-calculated exposure levels
 Inhalable dust (mg/m3)570.360.051.30.064.80.019.1
Total dust (mg/m3)550.270.050.840.064.60.0055.2
Respirable dust (mg/m3)550.0450.0250.060.0261.10.0040.29
PM10 (mg/m3)470.170.100.250.112.30.031.5
PM2.5 (mg/m3)450.080.050.0970.043.60.0040.45
Total particle area (A-trak) (µm2/cm3)551103820019180.0011000
Particle number (P-trak)/cm3 5541,00019,00060,00012,000922270,000

N number of measurements, AM arithmetic mean, SD standard deviation, GM geometric mean, GSD geometric standard deviation

Table 2

Blood concentrations of biological markers, median (minimum–maximum) among 67 participants in different days

Biological markerAfternoonPre-shiftPost-shiftPost-shiftPost-shift
Day 0Day 1Day 1Day 2Day 3
Inflammation
 IL-1b (pg/ml)2.3 (2.3–440)3.4 (2.3–410)2.3 (2.3–480)2.3 (2.3–610)2.3 (2.3–510)a
 IL-6 (pg/ml)4.8 (2.3–680)7.7 (2.3–540)5.7 (2.3–330)4.1 (2.3–340)4.2 (2.3–510)a
 IL-8 (pg/ml)5.1 (2.3–84)6.1 (2.3–97)4.3 (2.3–37)3.9 (2.3–27)b 4.2 (2.3–31)a
 IL-10 (pg/ml)7.1 (2.3–1000)8.2 (2.3–820)5.5 (2.3–570)6.3 (2.3–610)6 (2.3–860)a
 IFNγ (pg/ml)2.3 (2.3–160)2.3 (2.3–32)2.3 (2.3–29)2.3 (2.3–25)2.3 (2.3–44)a
 TNFα (pg/ml)6.8 (2.3–160)8 (3.5–130)6.5 (2.3–160)6.4 (2.3–200)7.1 (2.3–170)
 CRP (mg/l)1.3 (0.13–27)1.4 (0.16–48)1.5 (0.16–42)1.5 (0.15–21)1.4 (0.18–28)
 SAA (mg/l)1.7 (0.13–65)2.3 (0.39–73)1.8 (0.016–64)2 (0.001–58)1.6 (0.001–63)
 Fibrinogen (g/l)2.7 (1.7–4.4)2.7 (1.7–4.4)2.7 (1.8–4.5)2.7 (1.8–4.4)2.7 (1.8–4.3)
Coagulation
 Faktor VIII (kIU/l)0.98 (0.45–2.1)1 (0.58–2)1 (0.48–1.9)0.99 (0.52–1.8)1.1 (0.58–2)
 vWillebrand (kIU/l)1.1 (0.52–3.1)1.1 (0.58–2)1 (0.48–2.4)0.98 (0.53–1.9)0.99 (0.56–2)b
 PAI (µg/l)15 (4–80)25 (5–80)15 (2.9–66)14 (2.8–68)14 (2.7–80)a
 D-dimer (µg/ml)0.17 (0.11–1.2)0.16 (0.11–1.5)0.11 (0.11–1.5)0.11 (0.11–2.1)0.15 (0.11–11)

Five workers with infectious symptoms were excluded

aBiological marker with at least one post-shift significantly decreased compared to day 0

bBiological marker with at least one post-shift significantly increased compared to day 0

Exposure concentration levels of inhalable dust and calculated personal exposure levels of inhalable, total and respirable dust, PM10, PM2.5, particle surface area (A-trak,) and particle number concentrations (P-trak) for all departments N number of measurements, AM arithmetic mean, SD standard deviation, GM geometric mean, GSD geometric standard deviation Blood concentrations of biological markers, median (minimum–maximum) among 67 participants in different days Five workers with infectious symptoms were excluded aBiological marker with at least one post-shift significantly decreased compared to day 0 bBiological marker with at least one post-shift significantly increased compared to day 0 A linear mixed model was applied to describe the relation of the different inflammatory markers and the exposure metrics. Our design and use of mixed model offered a possibility to consider within-and between worker variability for our repeated measurements of inflammatory markers. We used the mixed model to study the biomarker levels between different days compared to day 0, the reference category (Table 2), and the variation of biomarkers by exposure categories 1–4 (Tables 3, 4).
Table 3

Mixed model analysis of particle exposure (n = 67) and inflammatory markers (n = 335) for 67 participants (five workers with infectious symptoms were excluded)

Exposure measureCRP (mg/l)SAA (mg/l)Fibrinogen (g/l)
MeanSE p MeanSE p MeanSE p
Inhalable dust (mg/m3 p)
 Exp 4
  0.34+2.771.35 0.021 3.131.350.1042.871.060.231
 Exp 3
  0.15–0.330.991.290.5021.451.290.5392.581.050.590
 Exp 2
  0.08–0.141.291.370.9092.691.370.2272.821.060.348
 Exp 1
  <0.081.241.311.791.312.671.05
Inhalable dust (mg/m3 s)
 Exp 4
  0.15+3.151.40 0.000 4.501.40 0.004 3.041.06 0.007
 Exp 3
  0.06–0.141.601.35 0.011 2.121.350.1502.801.06 0.047
 Exp 2
  0.03–0.051.521.29 0.015 1.821.290.3072.801.050.049
 Exp 1
  <0.030.621.341.251.342.451.05
Total dust (mg/m3 s)
 Exp 4
  0.14+2.941.35 0.007 3.851.34 0.038 2.971.050.059
 Exp 3
  0.06–0.131.321.340.5561.601.340.7082.801.050.311
 Exp 2
  0.03–0.050.951.300.7251.411.290.4312.521.050.462
 Exp 1
  <0.031.071.301.821.292.631.05
PM10 (mg/m3 s)
 Exp 4
  0.14+3.481.31 0.009 4.381.33 0.004 3.101.05 0.015
 Exp 3
  0.08–0.130.991.290.1781.621.300.8892.621.050.612
 Exp 2
  0.04–0.070.651.33 0.019 1.361.340.5432.471.050.176
 Exp 1
  <0.041.511.281.701.292.691.04

Adjusted mean and SE by exposure classes 1–4 representing quartiles of the different exposure measures (particles size fractions). Inhalable personal, inhalable, total and P10 aerosol fractions

Bold value indicates p < 0.05

p personal sampling, s stationary sampling

Table 4

Mixed model analysis of particle exposure (n = 67) and inflammatory markers (n = 335) for 67 participants (five workers with infectious symptoms were excluded)

Exposure measureCRP (mg/l)SAA (mg/l)Fibrinogen (g/l)
MeanSE p MeanSE p MeanSE p
Respirable dust (mg/m3 s)
 Exp 4
  0.06+2.221.490.0793.041.480.1653.021.07 0.038
 Exp 3
  0.03–0.051.891.320.0752.391.310.2782.781.050.206
 Exp 2
  0.02–0.021.061.340.8881.671.330.9642.701.050.448
 Exp 1
  <0.021.011.351.651.342.581.05
PM2.5 (mg/m3 s)
 Exp 4
  0.09+2.041.380.0513.101.36 0.014 2.861.060.063
 Exp 3
  0.05–0.081.351.360.4162.361.340.0902.721.050.296
 Exp 2
  0.03–0.041.211.400.6401.991.370.2642.751.060.247
 Exp 1
  <0.031.021.281.351.272.561.04
Particle surface area (µm2/cm3 s)
 Exp 4
  96+1.821.380.2972.501.380.3392.861.06 0.038
 Exp 3
  47–961.411.300.7781.931.310.8512.761.050.157
 Exp 2
  15–460.781.390.2101.531.390.6692.681.060.374
 Exp 1
  <151.271.311.801.312.531.05
Particle nr (nr/104cm3 s)
 Exp 4
  3.19+1.881.340.1502.131.350.6442.871.05 0.038
 Exp 3
  1.81–3.181.581.290.3572.141.300.6382.811.040.093
 Exp 2
  0.43–1.800.721.350.2021.431.360.5292.501.050.766
 Exp 1
  <0.431.151.321.811.332.541.05

Adjusted mean and SE by exposure classes 1–4, representing quartiles of the different exposure measures (particles size fractions). Respirable, PM 2.5, particle surface area and particle number air concentrations

Bold value indicates p < 0.05

p personal sampling, s stationary sampling

Mixed model analysis of particle exposure (n = 67) and inflammatory markers (n = 335) for 67 participants (five workers with infectious symptoms were excluded) Adjusted mean and SE by exposure classes 1–4 representing quartiles of the different exposure measures (particles size fractions). Inhalable personal, inhalable, total and P10 aerosol fractions Bold value indicates p < 0.05 p personal sampling, s stationary sampling Mixed model analysis of particle exposure (n = 67) and inflammatory markers (n = 335) for 67 participants (five workers with infectious symptoms were excluded) Adjusted mean and SE by exposure classes 1–4, representing quartiles of the different exposure measures (particles size fractions). Respirable, PM 2.5, particle surface area and particle number air concentrations Bold value indicates p < 0.05 p personal sampling, s stationary sampling Since the distribution of inflammatory markers was skewed, a transformation to natural logarithm was performed. The estimates (β) of the fixed effects from the model allowed us to identify factors affecting inflammatory markers. The mixed model applied has the following equation ln(X); X and Y are the inflammatory marker concentration and log-transformed concentration the overall average inflammatory marker concentration on log-scale the fixed effects of exposure measures (i….j) classified by quartiles with the lowest exposure as reference category (exposure class 1) the fixed effects of sampling time (afternoon days 0, 1, 2, 3) with the afternoon day 0 (unexposed) as reference. Pre-shift morning values were not included in the analysis the fixed effects of gender, male or female with males as the reference category the fixed effects of BMI, dichotomized by median, the highest level used as reference category the fixed effects of smoking habits, ever, never and ex smoker, never smoker as reference category the fixed effects of age dichotomized by median, the oldest group as the reference category residual The result of the mixed model analysis is presented as adjusted mean and standard error (SE). For statistical significance we used p < 0.05. The analyses were performed after exclusion of five subjects with symptoms of infection, leaving 67 subjects for analysis. The analyses were performed with the SPSS software 22.0.

Results

Aerosols

Personal sampling of inhalable dust from 72 participants showed an 8-h TWA exposure of 0.30 mg/m3 with variation between 0.005 and 3.3 mg/m3, Table 1. The highest exposure was found in the mixing department, 3.3 mg/m3 and the average 8–h TWA exposure in this department was 1.6 mg/m3. The calculated mean 8-h TWA of inhalable dust based on stationary measurement, 0.36 mg/m3, did not differ substantially from the mean of the personal measurements, 0.30 mg/m3, but the variation was larger for the stationary measurements. A series of blood samples from 67 exposed participants were obtained after the exclusion of five subjects with symptoms of infection. All measurements of biological markers of inflammation and coagulation are presented in Table 2. Our mixed model analysis showed significant decrease for most markers (IL-1b, IL-6, IL-8, IL-10, IFNγ, vWF, and PAI-1) was observed from the afternoon on day 0 and to one or several post-shift days in the workweek. However, there was one exception as factor VIII increased (Data not shown). Some inflammatory markers showed several positive relations with exposure metrics, Tables 3 and 4. Increasing exposures, regarding the mass-based exposure measures, were related to significant increases in CRP, SAA and fibrinogen. Some of the highest quartiles of exposure of total dust showed a positive significant relation with several interleukins, e.g., IL-1b, IL-6, and IL-10, data not shown. Furthermore, a positive relation was also found between exposure to inhalable dust and IL-8. No significant relationships were found between the highest quartiles of exposures and IFNγ, TNFα, D-dimer, vWF, or PAI-1.

Discussion

The main result of this study was the positive relation between several exposure metrics of the highest quartiles of exposure and some traditional markers of inflammation; CRP, SAA and fibrinogen. Correlations were found for the exposure metrics PM10, total and inhalable dust and these inflammatory markers. The correlations were generally stronger for larger particles, but some relations were also found for small particles (20 nm–1 μm). The consistent correlations between the exposure matrices (PM10, total and inhalable dust) and the well-established inflammatory markers (CRP, SAA and fibrinogen) supports a relationship between particle exposure and inflammatory markers. We did not observe any increase on a group level for most of the markers of inflammation or coagulation for the workers in this industry during a working week after a non-exposure period of 5 days. To our knowledge, no data have been presented regarding the relationship between occupational exposure to particles and inflammatory markers in the pulp and paper industry, despite the observed risk of cardiovascular disease within this industry. The strength of this study is the measurement of airborne particles comprising a wide range of sizes from many different departments in the industry. However, the chemical composition has not been analyzed and the composition may differ somewhat in different departments, i.e., wood and paper dust, terpenes and bleachery chlorine-based chemicals, calcium hydroxide, sulfur dioxide, hydrogen sulfide, and various reduced sulfur compounds. The significant decrease in most biological markers (IL-1b, IL-6, IL-8, IL-10, IFNγ, vWF, and PAI-1) is not well understood. A diurnal variation may play some role as the blood samples were taken 1–2 h earlier during the workweek (Rudnicka et al. 2007; Vgontzas et al. 2005). CRP is the most sensitive acute-phase reactant and has widespread clinical use because serum CRP reflects the presence and intensity of inflammation (Li et al. 2012). In the review by Li et al. (2012), significant positive associations between ambient particle exposure and CRP were found in all four cross-sectional studies of children younger than 18 years. In contrast to the studies of children, weaker associations were found in cross-sectional studies conducted on adults. Three occupational studies were identified. Among 37 steel production plant workers, CRP levels were significantly positively correlated to the air concentrations of PM1 (median 3.6, range 1.7–30.5 μg/m3) and coarse PM (median 162, range 71–1190 μg/m3) (Bonzini et al. 2010). In a study of welders, a significant increase in CRP was observed 1 day after a mean exposure of PM2.5 at 1.66 mg/m3 (median 1.69, 25th–75th percentile 0.89–2.44) (Kim et al. 2005). In our previous study of workers exposed to particles, generated during processes of welding, cutting, grinding or foundry and concrete work, a relationship was found between particle exposure and CRP the second day of work after a summer vacation. The mean total dust exposure was 0.93 mg/m3 (range 0.034–6.3 mg/m3), (Ohlson et al. 2010). CRP also increased among volunteers exposed for 3–5 h to swine dust (Larsson et al. 1994). Thus, several occupational studies observed a relation between particle exposures and increased levels of CRP. In the current study, several exposure metrics were correlated with plasma fibrinogen concentrations. The concentration of fibrinogen was not related to any of the measured aerosol fractions in our previous study (Ohlson et al. 2010). Other studies have shown increases after exposure to swine dust (Sjögren et al. 1999), concentrated ambient particles (Ghio et al. 2003), and urban air pollutants in Taipei (Chuang et al. 2007). However, there are some studies observing a significant decrease in fibrinogen in relation to air pollutant exposure. A significant decrease in fibrinogen was observed 6-h post-exposure in non-smoking welders (Kim et al. 2005). A significant decrease in both fibrinogen and thrombocytes was seen in Belfast and Edinburgh. This was discussed as a possible early consumption coagulopathy (Seaton et al. 1999). The possible relation between air pollutants and SAA is less frequently studied (Ruckerl et al. 2011). However, one study of patients with coronary heart disease found a small positive relation between ambient particulate air pollution and SAA (Ruckerl et al. 2006). In our previous study of industrial workers exposed to particles, generated during processes of welding, cutting, grinding or foundry and concrete work, a relationship was found between particle exposure and plasma levels of IL-6 the first day of work after a summer vacation (Ohlson et al. 2010). The workers in the present study were exposed to lower levels of particles in the pulp and paper industry (mean inhalable dust 0.30 mg/m3) compared to the workers of the previous study (mean total dust 0.93 mg/m3). Another difference between these two studies is the length of non-exposure period prior to the study. In the present study, the period was generally 5 days and in the previous study it was 4–5 weeks. A long exposure-free interval and a relative high exposure may generate an IL-6 response which is not observed when the exposure-free interval is short and the airborne exposure is relatively low. These two aspects may explain a weak response in the current study which was only significant in the highest quartile of total dust exposure. Different responses were observed when previously unexposed volunteers and swine farmers were exposed for 3 h in swine confinement building weighing pigs. IL-6 increased fourfold among the volunteers but only slightly among the farmers with previous recent exposure to this environment (Palmberg et al. 2002). The inflammatory response investigated by bronchiolar alveolar lavage (BAL) was stronger among volunteers exposed once to zinc oxide fume 5 mg/m3 compared with volunteers exposed on three successive days to the same fume. The concentration of IL-6 in BAL was three times higher after the single exposure (Fine et al. 2000). These experiments indicate an adaptation with a milder inflammatory response after recent repeated exposures. The highest afternoon concentrations of IL-8 and IL-10 were found on day 0, and the levels were found to be lower in all exposed afternoons. The pattern of this change is somewhat surprising as IL-8 is a pro-inflammatory chemokine which increased in bronchial wash after human exposure to diesel exhaust (Stenfors et al. 2004). IL-10 is a pleiotropic, immune regulatory cytokine that is important in protecting the host from infection-associated diseases, autoimmunity and allergy (Ng et al. 2013). However, we observed a positive significant relation between the highest quartile of inhalable dust exposure and IL-8 and also a positive significant relation between the highest quartile of total dust exposure and IL-10. Some studies of pulp and paper mill workers have observed an increased risk of cardiovascular mortality (Hammar et al. 1992; Jäppinen and Tola 1990; Langseth and Kjaerheim 2006; Milham and Demers 1984; Persson et al. 2007; Torén et al. 1996). However, to our knowledge, no studies have presented adequate measurements of airborne pollutants and in order to perform dose-response or dose-effect calculations. An increase in inhalable dust concentration with 0.84 mg/m3 (the mean of lowest quartile 0.05 mg/m3 versus the mean of the highest quartile 0.89 mg/m3) was associated with an increase in serum CRP concentration with 1.5, from 1.24 to 2.77 mg/l, Table 3. An increase in CRP from less than 0.9 mg/l to above 2.4 mg/l has been associated with a doubled risk of developing coronary heart disease (Danesh et al. 2000). However, the present study compares means of CRP concentrations and the previous study by Danesh compares the highest versus the lowest tertile represented by two cut offs. Consequently, the tentative extrapolated risk of coronary heart disease in the present study is lower than twofold. The overall evidence from time-series analyses regarding urban air pollutants conducted worldwide has confirmed the existence of a small but consistent association between increased cardiovascular mortality of 0.4 % and short-term 10 µg/m3 elevations of PM10. Long-term exposures over years increase the risk for cardiovascular mortality to an even greater extent than exposures over a few days (Brook et al. 2010). An average exposure of 0.89 mg/m3 will theoretically increase the short-term cardiovascular mortality by 36 % (890/10 × 0.4 %). This study shows consistent and significant increases in some inflammatory markers (CRP and SAA) when dust exposure (inhalable stationary measured dust, total dust and PM10) was 0.14 mg/m3 or higher. It could be argued that measurements from personal sampling of inhalable dust are better measures of individual exposures than the calculated exposure based on time spent in different work areas. However, the only significant positive relationship was between the inhalable dust levels of 0.34 mg/m3 or above and CRP, Table 3.

Conclusion

We have determined air exposure to particle mass, particle number and particle surface area air concentrations and inflammatory markers. The mean 8-h TWA of inhalable dust exposure was 0.30 mg/m3, and the range was 0.005–3.3 mg/m3. Several of the exposure metrics were associated with dose-dependent increases in some inflammatory markers in the blood (CRP, SAA, and fibrinogen). These dose-effect relations may indicate an increased risk of cardiovascular disease. We did not observe any increase on a group level for most of the markers of inflammation or coagulation for the workers in this industry during a working week after a non-exposure period of 5 days. Our study group is relatively small, and the findings need to be confirmed by investigating larger number of exposed workers in the pulp and paper industry.
  43 in total

1.  Characterization of clinical tolerance to inhaled zinc oxide in naive subjects and sheet metal workers.

Authors:  J M Fine; T Gordon; L C Chen; P Kinney; G Falcone; J Sparer; W S Beckett
Journal:  J Occup Environ Med       Date:  2000-11       Impact factor: 2.162

2.  Mortality pattern among pulp and paper mill workers in Sweden: a case-referent study.

Authors:  G Wingren; B Persson; K Thorén; O Axelson
Journal:  Am J Ind Med       Date:  1991       Impact factor: 2.214

Review 3.  Health effects of working in pulp and paper mills: exposure, obstructive airways diseases, hypersensitivity reactions, and cardiovascular diseases.

Authors:  K Torén; S Hagberg; H Westberg
Journal:  Am J Ind Med       Date:  1996-02       Impact factor: 2.214

4.  Increase in interleukin-6 and fibrinogen in peripheral blood after swine dust inhalation.

Authors:  B Sjörgren; Z Wang; B M Larsson; K Larsson; P H Larsson; P Westerholm
Journal:  Scand J Work Environ Health       Date:  1999-02       Impact factor: 5.024

Review 5.  IL-6 and its circadian secretion in humans.

Authors:  A N Vgontzas; E O Bixler; H-M Lin; P Prolo; G Trakada; G P Chrousos
Journal:  Neuroimmunomodulation       Date:  2005       Impact factor: 2.492

6.  Cardiovascular mortality among Swedish pulp and paper mill workers.

Authors:  Bodil Persson; Anders Magnusson; Håkan Westberg; Eva Andersson; Kjell Torén; Gun Wingren; Olav Axelson
Journal:  Am J Ind Med       Date:  2007-03       Impact factor: 2.214

7.  Cohort study on cancer mortality among workers in the pulp and paper industry in Catalonia, Spain.

Authors:  M Sala-Serra; J Sunyer; M Kogevinas; D McFarlane; J M Antó
Journal:  Am J Ind Med       Date:  1996-07       Impact factor: 2.214

8.  Multimarker approach predicts adverse cardiovascular events in women evaluated for suspected ischemia: results from the National Heart, Lung, and Blood Institute-sponsored Women's Ischemia Syndrome Evaluation.

Authors:  Christopher B Arant; Timothy R Wessel; Paul M Ridker; Marian B Olson; Steven E Reis; B Delia Johnson; Barry L Sharaf; Daniel F Pauly; Eileen Handberg; Issam Zineh; George Sopko; Sheryl F Kelsey; C Noel Bairey Merz; Carl J Pepine
Journal:  Clin Cardiol       Date:  2009-05       Impact factor: 2.882

9.  Airway responses of healthy farmers and nonfarmers to exposure in a swine confinement building.

Authors:  Lena Palmberg; Brit-Marie Larssson; Per Malmberg; Kjell Larsson
Journal:  Scand J Work Environ Health       Date:  2002-08       Impact factor: 5.024

10.  Diurnal, seasonal, and blood-processing patterns in levels of circulating fibrinogen, fibrin D-dimer, C-reactive protein, tissue plasminogen activator, and von Willebrand factor in a 45-year-old population.

Authors:  Alicja R Rudnicka; Ann Rumley; Gordon D O Lowe; David P Strachan
Journal:  Circulation       Date:  2007-02-12       Impact factor: 29.690

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  5 in total

1.  Biomarkers of Human Cardiopulmonary Response After Short-Term Exposures to Medical Laser-Generated Particulate Matter From Simulated Procedures: A Pilot Study.

Authors:  Ramon Lopez; Mark O Farber; Vincent Wong; Steven E Lacey
Journal:  J Occup Environ Med       Date:  2016-09       Impact factor: 2.162

2.  Editorial: dose-dependent ZnO particle-induced acute phase response in humans warrants re-evaluation of occupational exposure limits for metal oxides.

Authors:  Ulla Vogel; Flemming R Cassee
Journal:  Part Fibre Toxicol       Date:  2018-02-12       Impact factor: 9.400

3.  Differences in inflammation and acute phase response but similar genotoxicity in mice following pulmonary exposure to graphene oxide and reduced graphene oxide.

Authors:  Stefan Bengtson; Kristina B Knudsen; Zdenka O Kyjovska; Trine Berthing; Vidar Skaug; Marcus Levin; Ismo K Koponen; Abhay Shivayogimath; Timothy J Booth; Beatriz Alonso; Amaia Pesquera; Amaia Zurutuza; Birthe L Thomsen; Jesper T Troelsen; Nicklas R Jacobsen; Ulla Vogel
Journal:  PLoS One       Date:  2017-06-01       Impact factor: 3.240

4.  Association between a urinary biomarker for exposure to PAH and blood level of the acute phase protein serum amyloid A in coke oven workers.

Authors:  Niels Hadrup; Danuta Mielżyńska-Švach; Agnieszka Kozłowska; Manuela Campisi; Sofia Pavanello; Ulla Vogel
Journal:  Environ Health       Date:  2019-09-02       Impact factor: 5.984

5.  Inflammatory and coagulatory markers and exposure to different size fractions of particle mass, number and surface area air concentrations in Swedish iron foundries, in particular respirable quartz.

Authors:  Håkan Westberg; Alexander Hedbrant; Alexander Persson; Ing-Liss Bryngelsson; Anders Johansson; Annette Ericsson; Bengt Sjögren; Leo Stockfelt; Eva Särndahl; Lena Andersson
Journal:  Int Arch Occup Environ Health       Date:  2019-06-04       Impact factor: 3.015

  5 in total

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