1 Viertel Centre for Research, Queensland Cancer Fund, Brisbane, Queensland, Australia
2 Department of Epidemiology and Preventive Medicine, Faculty of Medicine, Nursing and Health Sciences, Monash University, Melbourne, Victoria, Australia
3 School of Public Health, University of Sydney, Sydney, New South Wales, Australia
4 St. Vincent's Hospital, Sydney, New South Wales, Australia
5 National Centre in HIV Epidemiology and Clinical Research, University of New South Wales, Sydney, New South Wales, Australia
Correspondence to Dr. Jacqueline Fritschi, Viertel Centre for Research, Queensland Cancer Fund, 553 Gregory Terrace, Fortitude Valley, Queensland 4006, Australia (e-mail: lfritschi{at}qldcancer.com.au).
Received for publication February 4, 2005. Accepted for publication June 1, 2005.
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ABSTRACT |
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case-control studies; herbicides; lymphoma, non-Hodgkin; occupational exposure; pesticides
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INTRODUCTION |
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Importantly, "pesticides" is a generic term that includes substances with a variety of different chemical structures and mechanisms of action. Only particular types of pesticides or specific chemicals might be related to non-Hodgkin's lymphoma. There has been interest recently in trying to determine which of the many pesticides in use may be responsible for the reported association with non-Hodgkin's lymphoma. Interest has focused on three groups of substances:
In a case-control study of non-Hodgkin's lymphoma, we examined exposure to each of the above groups of pesticides using detailed methods of assessing pesticide exposure.
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MATERIALS AND METHODS |
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Controls were randomly selected from the New South Wales and Australian Capital Territory electoral rolls to approximately match the expected distributions of cases with regard to age, sex, and region of residence (New South Wales or Australian Capital Territory). Electoral registration is compulsory for Australian citizens aged 18 years or over. Similar eligibility criteria were used as for cases, except for human immunodeficiency virus infection, which was expected to be rare in the general population.
Cases and controls were mailed an introductory letter and an information leaflet, followed by a self-administered questionnaire to each consenting subject. The questionnaire included a diary with a detailed lifetime history of each job the subject had held for 1 year or more. Information obtained on each job included job title, employer, industry, start and finish years, number of hours worked per day, and number of days worked per week.
The final data set consisted of 694 cases (of 1,230 ascertained cases, 842 were apparently eligible and contactable) and 694 controls (of 1,687 controls selected, 1,136 were apparently eligible and contactable). Further details on response fractions are available in previous articles (5, 6
). Twenty-three cases were excluded after the pathology reviews because the pathologist considered them not to have an eligible diagnosis. Ten of these cases were removed after review of the pathology sections; these 10 cases were included in an earlier report (5
).
Exposure allocation
A total of 28 jobs and 16 industries were identified as being of particular interest because of the possibility of exposure to the substances evaluated in this study (6). For these 44 jobs and industries, detailed sets of questions (known as job-specific modules) were obtained from the US National Cancer Institute (9
) and modified to suit this study. The resulting modules included 623 questions asking about specific tasks performed in that occupation. Respondents were asked how many weeks per year and how many hours per week they had spent in each task. Modules were allocated to subjects by an occupational hygienist according to whether or not the subjects had worked in one or more of the 44 jobs and industries. The questions in the relevant modules were asked in a customized computer-assisted telephone interview. The hygienist and the interviewers were blinded to the case or control status of subjects.
The same expert occupational hygienist (again blind to status) reviewed the occupational histories and the answers to the module questions and determined exposure to various substances, including organophosphates, organochlorines, phenoxy herbicides, other herbicides, and other pesticides. The hygienist allocated exposures occurring before 1985 and after 1985 separately, because use of organochlorines had been phased out around 1985 and use of other pesticides (mainly pyrethrins) had become widespread. A pesticide-crop matrix was developed for assistance with exposure assessment (10). The matrix included information on what kinds of pesticides were known to be used (or recommended by the Australian Department of Agriculture) for each combination of crop or animal raised and pest type (insect, weed, etc.). A table was also prepared for assistance with identification of chemical composition from trade names reported by the subjects. Former Department of Agriculture employees, environmental scientists, and pesticide manufacturers assisted with construction of the matrix.
The hygienist first allocated likelihood of exposure to each substance as probable, possible, or no exposure. He then allocated one of three levels of exposure using previous literature and his own professional knowledge, without regard to the probability of exposure. The reference levels were internationally recognized occupational safety guidelines (time-weighted average threshold limit values set by the American Conference of Governmental Industrial Hygienists (11)). Levels of exposure higher than the time-weighted average threshold limit values were considered high; those less than or equal to one 10th of the time-weighted average threshold limit values were considered low; and other exposures were considered medium. For the few people who reported wearing gloves and overalls while mixing and applying pesticides, the exposure level was dropped one level lower. Frequency of exposure was allocated as number of 8-hour days per year and was calculated using responses to the task questions. If no data on frequency of exposure were available (n = 4), subjects were assumed to have been exposed for 2 days per year.
Amount of exposure was calculated by combining data from all jobs held over the person's entire working life. Amount was classified as substantial if the subject was probably exposed to the substance at a medium or high level for more than five 8-hour days per year for a combined total of more than 5 years, and nonsubstantial if the dose involved any other combination of exposures.
Statistical analysis
The data were first examined by use of contingency tables and comparisons of mean values. Logistic regression was used to calculate odds ratios (as estimates of relative risk) for non-Hodgkin's lymphoma associated with exposure to any pesticide and exposure to each pesticide subtype in each amount category (substantial or nonsubstantial), with adjustment for age, sex, ethnic origin, and state of residence. In addition, logistic regression analyses were carried out for exposure to any pesticide after restricting the sample to males only and after excluding cases that were not on the electoral roll. We also repeated the analyses for each pesticide for B-cell non-Hodgkin's lymphomas only, for follicular lymphomas only, and for diffuse large B-cell lymphomas only. We also examined the odds of non-Hodgkin's lymphoma using the following metrics of exposure to any pesticide: maximum exposure level (low, medium, high); ever being exposed before 1985 (yes, no); maximum frequency of exposure (0, 4, or >4 days/year); and total number of years exposed (0,
5, or >5 years). For the latter two metrics, 4 days per year and 5 years were the median frequency and duration, respectively, in control subjects. All p values were two-sided.
Approval for this study was given by the human research ethics committee at each participating institution. Participants were sent detailed information sheets and were subsequently telephoned to obtain their consent.
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RESULTS |
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Restricting the subjects to subgroups produced similar patterns, with statistically significant increases in risk for substantial exposure to any pesticide (table 3). The odds ratio for substantial exposure to any pesticide for males only was 3.7, and for persons on the electoral roll only, it was 2.9. The odds ratio for the 584 cases and 694 controls who were on the electoral roll was only 7 percent below the odds ratio for the entire group; this suggests that any bias which might have been due to the use of electoral rolls as a sampling frame for controls was largely controlled by adjustment for ethnic origin.
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Restricting the case group to persons with B-cell lymphoma (n = 665) produced results similar to those for the entire sample (table 4). Restricting the cases to persons with diffuse large B-cell lymphoma (n = 231) resulted in generally lower effect measures, except that for "other pesticides" (OR = 4.96, 95 percent CI: 1.17, 21.1). When we used only cases with follicular lymphoma (n = 227), we found stronger associations, especially for exposures to any pesticide, organophosphates, and "other herbicides."
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DISCUSSION |
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Exposure to pesticides is often seasonal, and spraying seasons may be only a few days to a few weeks in duration each year. Many previous studies have used any exposure (14, 16
) or any exposure for more than 1 year (17
19
). Case-control studies that have tried to isolate persons with higher levels of exposure have found results similar to ours. For example, in a US study, exposure to pesticides for more than 10 years increased the risk nearly threefold (OR = 2.72, 95 percent CI: 1.4, 5.4) (15
), and in an Italian study, exposure to herbicides for more than 10 years increased the risk 5.2-fold (16
). These definitions of high exposure take into account the length of exposure, which may be the important factor in determining risk. In our data, there was a weak relation between the number of years exposed to any pesticide and non-Hodgkin's lymphoma which was of borderline significance. There was little or no increase in risk with higher levels or frequencies of exposure; thus, from our data, it seems as though any risk of non-Hodgkin's lymphoma may be related to relatively high exposure to pesticides over a long period of time.
Substantial exposure to organophosphate pesticides approximately doubled the risk of non-Hodgkin's lymphoma in our study, although this finding was not statistically significant. A Canadian case-control study (20) found that exposure to any organophosphate insecticide was associated with a non-Hodgkin's lymphoma risk of 1.69 (95 percent CI: 1.28, 2.46), with statistically significant associations being found for malathion and diazinon. A US case-control study (21
) that examined exposure to a large number of specific pesticides (adjusted for exposure to other pesticides) found significant associations with coumaphos (OR = 2.4, 95 percent CI: 1.0, 5.8) and diazinon (OR = 1.9, 95 percent CI: 1.1, 3.6) but not with malathion. However, another large US study of pesticide exposure did not find any association between organophosphate use and non-Hodgkin's lymphoma (19
). It may be that different organophosphate pesticides have different effects, but we had insufficient numbers of subjects to analyze specific types of organophosphates.
Few people had substantial exposure to organochlorine pesticides in our study, so although the point estimate was quite high, the confidence intervals were wide. Previous studies have attempted to examine individual organochlorine pesticides, such as DDT, and have also found suggestive increases but wide confidence intervals (19, 21
24
). Prediagnostic serum levels of various organochlorines were not associated with non-Hodgkin's lymphoma in a nested case-control study (25
).
Phenoxy herbicides were not strongly associated with non-Hodgkin's lymphoma in our study. The literature on phenoxy herbicides is inconsistent. Several case-control studies have found increased risks of non-Hodgkin's lymphoma (20, 22
, 23
, 26
, 27
), while others have found no association (19
, 28
, 29
). Cohort studies of pesticide users and manufacturers have found risks ranging from 1.0 to 2.4, not all of which were statistically significant (30
32
). In general, the literature seems to show that case-control studies with more sophisticated exposure assessment (such as ours) tend to find smaller risks than those based on self-reports, which are liable to recall bias (Neil Pearce, Centre for Public Health Research, Massey University (Palmerston North, New Zealand), personal communication, 2004). In addition, studies carried out in Sweden tend to find higher risks than studies conducted elsewhere, and it is possible that conditions of use in Australia are more similar to those in New Zealand (where no increase in risk was found by Pearce (29
)) than to those in Sweden. A German study of pesticide manufacturing workers found higher risks of non-Hodgkin's lymphoma in plants where dioxin contamination of the phenoxy herbicides had occurred (33
) and suggested that the risk arises from dioxin, not the herbicide itself. However, Pearce argues that this explanation does not fit the available data and that there is more likely to be a small but real increase in risk due to exposure to phenoxy herbicides (Neil Pearce, Centre for Public Health Research, Massey University, personal communication, 2004).
We found increases in the risk of non-Hodgkin's lymphoma for persons exposed to "other herbicides" (mainly glyphosate and carbamates) and "other pesticides" (mainly phosphine, arsenicals, and pyrethrins). Past and present use of phosphine as a fumigant for grain crop storage was commonly reported by subjects in our study. Arsenicals were used in Australia until the 1970s, and their use was reported by subjects only in jobs held prior to 1985. The pyrethrins were introduced in the 1980s, and reported exposures occurred mainly in the 1990s. The herbicide glyphosate has been found to be associated with non-Hodgkin's lymphoma in three case-control studies (2022
), although in the last of these studies (22
) the confidence intervals included unity. Several other studies have examined exposure to carbamates and have found risks ranging from 0.9 to 1.5, mostly not statistically significant (19
22
, 28
, 34
).
Overall, our study was limited by the relatively small numbers of subjects exposed at a substantial level. This resulted in quite wide confidence intervals, especially in the analysis of subgroups. Still, the findings were reasonably consistent in showing a statistically significant trebling of risk with high exposure to pesticides.
There was some suggestion of a stronger link between organophosphates and "other pesticides" with follicular non-Hodgkin's lymphomas as compared with diffuse large B-cell subtypes. Findings from studies that used earlier classifications of lymphoma (such as the Working Formulation (35)) are difficult to extrapolate to the new classifications of non-Hodgkin's lymphoma. In addition, these studies had conflicting results. One found the effect estimates for pesticides to be slightly higher for follicular lymphomas than for large-cell diffuse lymphomas (19
), while another found the effect estimates to be higher for small lymphocytic non-Hodgkin's lymphoma (36
). One possible mechanism is a translocation involving the immunoglobulin heavy chain t(14;18). This translocation is found in farmers with heavy exposure to pesticides (37
, 38
), and it is most common in follicular and diffuse large (B)-cell lymphomas in the Revised European-American Lymphoma classification of histologic subtypes (37
).
Of the cases that involved substantial exposure to pesticides, more than expected were T-cell subtypes, and all of them were positive for Epstein-Barr virus early RNA. An association of nasal natural killer T-cell lymphoma with pesticide use has been reported in a father and son (39), and elevated Epstein-Barr virus antibodies have been reported in several studies of non-Hodgkin's lymphoma that included measures of pesticide exposure (24
, 40
), suggesting a possible interaction. One subtype of T-cell non-Hodgkin's lymphoma that has been examined is mycosis fungoides, a very rare form of T-cell non-Hodgkin's lymphoma; it does not appear to be linked with pesticide exposure (41
, 42
).
Small numbers of subjects in each subgroup limit the conclusions that can be made regarding associations between pesticides and histologic subtypes of non-Hodgkin's lymphoma in a single study. Collaborative studies with pooling of rare subtypes and multifactorial analyses are needed. One factor moderating the effect of pesticides is the use of personal protective equipment, such as masks and respirators, when preparing and spraying chemicals (43). We found that use of personal protective equipment was low overall and only appeared at all common in jobs held from the mid-1980s onwards. In assessing the level of exposure, the hygienist considered the use of personal protective equipment where it was used.
Exposure assessment in this study was very detailed and used the best methods available for assessing exposure to pesticides (9). A complete job history was taken from each subject, and then additional questions were asked about specific jobs, including farming, pest control, gardening, crop dusting, and janitorial work (44
). The job-specific module for farmers and pesticide users was highly detailed and elicited information from subjects regarding the types of crops and animals which the hygienist found appropriate. The pesticide exposure matrix developed for the study (10
) was found to be very useful for identifying the likely pesticides used. We did not rely on the subjects' recall of exactly which pesticide(s) they had used, unlike previous studies that have used self-reports for assessment of pesticide exposure. A recent study found that self-reports of pesticide exposure 20 years prior to the study were reasonable when compared with self-reports recorded 20 years earlier (45
). Another study compared self-reports from licensed pesticide applicators with known dates of introduction and use of specific pesticides and found that most responses were "plausible" (46
). In our study, approximately 10 percent of farmers answered "unable to recall" when asked for specific product details. A study that compared matrix-derived exposures and self-reports of pesticide use found different odds ratios for non-Hodgkin's lymphoma with use of the two measures1.16 for matrix-derived data and 0.76 for self-reportsbut offered no evidence on which of the measures better classified exposure (13
).
Other studies, even recent ones, have simply used job titles as a surrogate for exposure (4750
). Problems with this method include the facts that not all people with a particular job title will be exposed to the same pesticides and that people exposed to pesticides often have a number of different job titles, resulting in small numbers for any given title.
The major limitation of the exposure assessment method we used was its cost. Review of job histories, administration of telephone interviews, and review of responses to the assigned occupational modules are highly labor-intensive. In addition, lengthy consultation with experts in agriculture, farming, and pesticide exposure monitoring was required to construct the pesticide exposure matrix. Use of an existing job exposure matrix would have been less intensive but possibly subject to significant nondifferential misclassification.
In this study, we had a reasonably large sample size and used an intensive exposure assessment process. We found increases in risk of non-Hodgkin's lymphoma with high levels of pesticide exposure and no evidence of risk with lower levels of exposure. This study strengthens the existing evidence that occupational exposure to pesticides increases risk of non-Hodgkin's lymphoma.
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ACKNOWLEDGMENTS |
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The authors thank the clinicians who supported their patients' participation, the New South Wales Central Cancer Registry staff, The Cancer Council NSW, and research assistants Chris Goumas and Maria Agaliotis.
Conflict of interest: none declared.
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References |
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