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Divisions of Cancer Prevention [P. M. M.] and Cancer Epidemiology and Genetics [R. B. H., M. G-C., N. E. C., N. R.]; National Cancer Institute, Bethesda, Maryland 20892; Department of Environmental and Occupational Medicine, University of Aarhus, Aarhus, Denmark DK-8000 [H. A., H. O.]; Center for Clinical Pharmacology, University of Pittsburgh, Pittsburgh, Pennsylvania 15261 [R. A. B., M. R.]; Department of Clinical Pharmacology of the Charité 74, Humboldt University, Berlin D-10098 Germany [J .B., I. R.]; Department of Pharmacology and Therapeutics, Graduate School of Clinical Pharmacy, Kumamoto University, Kumamoto 862-0973 Japan [T. I.]; Department of Toxicology, Gazi University, Ankara 06100 Turkey [A. E. K.]; Hospital Clinico De San Carlos, Departamento de Medicina, Universidad Complutense de Madrid, 28040 Madrid, Spain [J. M. L.]; Surgical Department, Urologic Unit, Randers Hospital, Randers DK-8900 Denmark [S. M.]; and Unit of Cancer Epidemiology, University of Turin, 10126 Turin, Italy [P. V.]
| Abstract |
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| Introduction |
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Aromatic amines are suspected to be the primary causative agent for bladder cancer in tobacco smoke (3) . N-acetylation, which occurs mainly in the liver and is chiefly regulated by the enzyme NAT2,2 can detoxify monoarylamines (e.g., 4-aminobiphenyl), rendering them less susceptible to metabolic activation by P-450 enzymes (3) . The lack of two functional NAT2 alleles confers the slow acetylation phenotype, which is thought to compromise detoxification ability (3) . For that reason, Lower et al. (4) hypothesized in 1979 that slow acetylators would be at an elevated bladder cancer risk.
Since then, at least 22 case-control studies have examined the relationship of NAT2 acetylation status and bladder cancer in the general population (4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20, 21, 22, 23, 24) . A recent meta-analysis of those studies (25) reported a positive association between slow acetylation status and bladder cancer, although there was a suggestion that the relationship varied somewhat by geographic region; a positive association was observed for studies conducted in Europe and Asia, but not for studies conducted in the United States. Few of the 22 studies formally explored whether the relationship of cigarette smoking and bladder cancer differed by acetylation status; results were inconsistent among the studies that performed such analyses (5, 6, 7 , 17 , 19 , 22) .
Because cigarette smoking is a relatively common habit, and the slow acetylation phenotype is a relatively common metabolic polymorphism [about 55% in populations of European descent, 35% in populations of African descent, and 15% in populations of Asian descent (26) ], a potential modifying effect of acetylation status on the relationship between cigarette smoking and bladder cancer risk is of considerable interest. To explore such a possibility, as well as to summarize results of separate studies, we undertook a meta-analysis of bladder cancer studies that had been conducted in the general population and had collected data on cigarette smoking and acetylation status.
| Materials and Methods |
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After several years of data collection efforts, information had been received for only about half the identified studies, primarily because data sets were no longer available. Ultimately, we decided to employ a case-series design because this method would allow for inclusion of unavailable studies if case cross-classification of cigarette smoking (ever/never) and acetylation status (slow/rapid) had been published. Although control cross-classifications were available for some studies, it was unclear how representative the control series were of the individual base populations, especially with regard to tobacco use. Therefore, we did not use these data to address our primary research questions.
Another MEDLINE search was conducted to identify studies that had been published after our initial search and before the end of 1998. The results of this search brought the number of eligible published studies to 20 (4, 5, 6, 7, 8, 9, 10, 11, 12, 13 , 15, 16, 17, 18, 19, 20, 21, 22, 23) , 15 (4, 5, 6 , 8, 9, 10, 11, 12, 13 , 15, 16, 17 , 19 , 20 , 22) of which (1908 of 2179 cases; 88%) could be included in the meta-analysis. For the newly identified studies, acetylation and smoking were abstracted directly from published manuscripts, although in one instance it was necessary to contact authors for clarification (17) . We also included data from one study that had been supplied to us as unpublished data during the early stages of our project but is presently submitted (91 cases).3 The final data set for the meta-analysis included 16 studies and 1999 cases. Of those, response rates were available for only one study (17) .
Data on acetylation status (phenotype or NAT2 genotype) and cigarette smoking (never/ever smoked) were available for all cases. Some investigator-supplied data sets also provided information on age (9 , 12 , 13 , 16 , 20) and potential occupational exposure to aromatic amines (13) .3 Participants sex was known for all studies except two (4) ,3 although sex-specific cross-tabulations of acetylation status and cigarette smoking were available for only seven (6 , 9 , 11, 12, 13 , 16 , 20) . Race was not available for most studies, but it is reasonable to assume that studies conducted in Europe were comprised primarily of Caucasians. Of the two studies conducted in the United States, one was known to be comprised solely of Caucasians (15) ; in the other, 93% of cases were known to be Caucasian (22) .
In two studies, individuals who used tobacco products other than cigarettes could be identified (16) ;3 they were excluded to minimize tobacco exposure among never-smokers. Two studies were known to have included prevalent cases (5 , 17) , although it is likely that many other studies included such cases also. Ten studies had data on smoking and acetylation status for control subjects (5 , 6 , 10, 11, 12 , 16 , 19 , 20 , 22) .3 Most of these series (5 , 6 , 11 , 16 , 19 , 20 , 22) 3 consisted of either clinic attendees or hospital in-patients.
Statistical Analyses.
In a case-series study of gene-environment interaction, an OR (referred
to as a "case-series interaction OR" in the remainder of this
paper) is calculated from cross-classification of exposure and genetic
information among cases only (30, 31, 32, 33)
. A case-series
interaction OR >1 in the present study indicates that the relationship
of cigarette smoking and bladder cancer is stronger among slow
acetylators than among rapid acetylators. Independence of exposure and
the genetic factor in the base population is necessary for valid
interpretation of a case-series interaction OR. In the present study,
the validity of that assumption was assessed by calculating
2
statistics for the available controls series
as well as for a pooled analysis of those series (34
, 35)
.
Logistic regression was used to estimate ORs and 95% CIs in the
individual case series (36
, 37)
. Meta-analysis techniques
that weighted the estimated ß coefficient for each individual study
by a function of its variance were used to calculate a summary estimate
(38
, 39)
. Because results for fixed and random effects
models were nearly identical and because the hypothesis of homogeneity
was not rejected in any instance [using the Q-statistic
(38)
at a significance level of 0.05], results from only
fixed effect models are presented.
Our analyses addressed the association between ever having smoked cigarettes (versus never smoking) and slow acetylation status (versus rapid acetylation status) among bladder cancer cases. Because a number of studies have shown excellent correlation between NAT2 phenotype determined pharmacologically and that predicted by NAT2 genotyping (40, 41, 42, 43, 44) and because the relationship of NAT2 acetylation status and bladder cancer risk did not vary by method used to assess NAT2 in a recent meta-analysis (25) , only in one instance do we present separate results from studies using genotyping. The result of that analysis further supports pooling of studies.
Data on age were available for 32% of the pooled data set, and data on
potential occupational exposure to aromatic amines were available for
19%. By limiting analyses to subsets where these variables were
available, we assessed potential confounding effects. Age was
categorized as <55 years, 5564 years, 6574 years, and
75 years.
Potential occupational exposure to aromatic amines was coded as history
or no history of exposure. If the OR of interest changed by >10% with
inclusion of the variable, confounding was said to exist. Potential
effect modification by sex could not be assessed owing to the small
cell sizes produced by cross-tabulations of acetylation status and
cigarette smoking, even in analyses restricted to males.
To provide a more accustomed interpretation, we converted our case-series interaction OR to the corresponding measures that would be generated using data from a case-control study (that is, the ORs for non-smoking slow acetylators, smoking rapid acetylators, and smoking slow acetylators, all relative to nonsmoking rapid acetylators). Four additional parameters were necessary: prevalence of smoking and NAT2 slow acetylation in the base population, and the bladder cancer ORs for smoking and NAT2 slow acetylation. Details of this method are presented in the "Appendix." Calculations were restricted to European studies because several of the necessary parameters (e.g., prevalence of NAT2 slow acetylation and the association of NAT2 slow acetylation with bladder cancer) vary by geographic region (25) and substantial amounts of data were available for the European region only (77% of the total data set). Population attributable risk percents (45) were calculated using the European smoking and slow acetylation prevalences and the derived case-control ORs.
| Results |
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150 subjects (48% of all
data).
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| Discussion |
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Although the pooled analysis suggested a modest interaction between NAT2 status and smoking, the magnitude of the individual study case-series interaction ORs varied somewhat. Use of the Q-statistic indicated that pooling was not inappropriate, but that test has low power to detect heterogeneity (38) . To investigate variability in results, we conducted analyses on subsets of our data and observed stronger, more consistent associations among the larger studies. The larger studies may have produced consistent results because their point estimates were more precise. We also observed stronger and more consistent associations among the 10 studies conducted in Europe. Patterns of tobacco use, including intensity and type of tobacco smoked, impact the extent of aromatic amine exposure (46) and vary across geographic region; they therefore could be responsible for some variation in results. Variation in results could not be explained by the method used to assess NAT2 acetylation status, which is not surprising given how well results from NAT2 phenotyping and genotyping correlate (40, 41, 42, 43, 44) .
Five eligible studies, representing only 16% of eligible cases, could not be included in this meta-analysis (4 , 7 , 18 , 21 , 23) , yet there is no obvious reason to believe that their omission makes the group of included studies unrepresentative in some manner. The omitted studies are similar to the included studies in terms of the magnitude of the crude NAT2 main effect; using the same meta-analysis techniques, we obtained a bladder cancer OR of 1.4 (CI, 1.01.8) using the omitted studies, and an OR of 1.5 (CI, 1.21.8) using the included studies. Because good correlation exists between the crude NAT2 main effect and the NAT2-smoking interaction (Spearman correlation coefficient of 0.46 for the 16 studies included in this meta-analysis), it is unlikely that inclusion of the 5 omitted studies would have changed our findings substantially.
Publication bias, which occurs when studies with null or
unexpected results are not published and therefore cannot, in most
instances, be included in meta-analyses, could affect this
meta-analysis. Our ability to assess the degree of publication bias is
limited, but some evidence exists suggesting the absence of substantial
publication bias. Fig. 1
indicates a wide range of results for studies
with small sample size and a narrower range of results for studies with
larger sample size, as would be expected given the usual effects of
random variation (47)
both within and across studies.
Although many of the studies producing null or inverse associations
were published at a time when the slow acetylator hypothesis was not
firmly established (thus minimizing the chance that results would not
be published), two studies published in the second half of the 1990s
(10
, 22)
, a time when the slow acetylator hypothesis was
better known and more widely accepted, produced null associations also.
The validity of our results may be affected by confounding,
misclassification, or other limitations of our data. Adjustment for age
and possible occupational exposure to aromatic amines, the most
plausible confounding variables, did not meaningfully change the ORs of
interest, but these analyses could only be carried out on a small
subset of the data and therefore may not be generalizable to the rest.
Limited information on use of tobacco products other than cigarettes,
as well as exposure to environmental tobacco smoke, prevented us from
excluding from our unexposed category all individuals who were exposed
to aromatic amines from other tobacco sources. Such misclassification
would tend to attenuate our results. Our findings also may be affected
by error in assigned acetylation status, as well as misreport of
cigarette smoking history. Certain unusual misclassification scenarios
could bias results away from the null, but the most probable situation,
the one in which smoking and acetylation status misclassification are
independent of one another and sensitivity and specificity of the two
exposures are not severely compromised (that is, the sum of sensitivity
and specificity is
1), would result in bias toward the null
(48)
. Given these limitations, it is likely these
findings, if anything, are underestimates of the true relationship.
With regard to the assumptions required for valid interpretation of case-series findings, we are confident that in these studies, smoking and acetylation status were independent, but we are less certain about the representativeness of the bladder cancer cases. At least two studies included prevalent cases (5 , 17) , and it is likely that some of the older studies did as well. It has been suggested that the NAT2 slow polymorphism is more influential in aggressive bladder cancer (49) and as such, it would have been best to analyze data separately for certain tumor characteristics. A large study published in 1996, however, observed similar proportions of NAT2 slow acetylators among incident and prevalent cases, as well as for different tumor grades and histological subtypes (5) .
We were unable to examine whether the presence of a gene-environment interaction differs by level of smoking intensity (amount smoked per day) or duration (years smoked and pack-years smoked). Although such data were available for a small subset of the studies (around 20% of all subjects), we were concerned that such limited information would not produce generalizable results. Furthermore, a dearth of light smokers made point estimates for such categories very imprecise. The findings of a cross-sectional study that addressed the influence of NAT2 acetylation on the development of 4-aminobiphenyl hemoglobin adducts support the notion that the magnitude of the gene-environment interaction differs by smoking level, but suggests that the interaction may be most pronounced at lower levels of use (50) .
The study of gene-environment interactions may help enhance our understanding of how some exposures impact bladder cancer risk. Our meta-analysis of cigarette smoking, NAT2 acetylation status, and bladder cancer risk has addressed a number of pertinent issues, but our summary result, which was based in part on a number of small, older studies, must be replicated in larger studies. Future studies should address the impact of varied smoking habits, as well as the joint impact of NAT2 and other genetic factors, including the GSTM1 null genotype, which consistently has been associated with bladder cancer (51) , and polymorphisms in NAT1, thought to be involved in o-acetylation of aromatic amines (52) . Interestingly, Taylor et al. (22) reported a three-way multiplicative interaction of NAT1 genotype, NAT2 genotype, and cigarette smoking: a synergistic interaction of NAT2 and cigarette smoking was observed only among individuals who carried the NAT1*10 allele. Examination of urinary pH (53) , which influences the hydrolysis of aromatic amines in the bladder, as well as water intake (54) and voiding frequency, also may shed light on other susceptibility factors for tobacco-induced bladder cancer.
| Appendix 1 |
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The following equations* were used to solve for
ORE=1|G=0 and
ORG=1|E=0.
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*These equations are derived as follows: The crude OR for the main effect of exposure on disease risk (ORE=1) can be expressed in terms of the cell counts of two 2 x 2 tablesE by D for G = 1 and E by D for G = 0. The crude OR for the main effect of the genetic factor on disease risk (ORG=1) can be expressed in terms of the cells counts of two 2 x 2 tablesG by D for E = 1 and G by D for E = 0. Algebraic manipulation of ORE=1 and ORG=1 expressed in terms of the cell counts results in the formulas we present in the "Appendix" because all of the terms on the right-hand side of the equation can also be expressed in terms of the cell counts in the two 2 x 2 tables. These formulas assume that E and G are independent among the controls. In the instance of no interaction (ORint = 1), the formulas for the crude ORs will be the same as the Mantel-Haenszel OR. These formulas were presented in Ref. 55 .
| Acknowledgments |
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| Footnotes |
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1 To whom requests for reprints should be
addressed, at Division of Cancer Epidemiology and Genetics, National
Cancer Institute, Executive Plaza South, Room 8116, MSC 7240, Bethesda,
MD 20892. Phone: (301) 435-4719; Fax: (301) 402-1819; E-mail: rothmann{at}epndce.nci.nih.gov ![]()
2 The abbreviations used are: NAT2,
N-acetyltransferase 2; OR, odds ratio; CI, confidence
interval. ![]()
3 M. Romkes, N. Paulsen, C. M. Fleming, R. A.
Persad, P. J. B. Smith, C. Collins, A. Schwartz, and R. A. Branch. The N-acetyltransferase slow acetylator
phenotype as a major risk factor for aggressive bladder cancer
following industrial occupational exposure, submitted for
publication. ![]()
Received 9/ 1/99; revised 2/ 2/00; accepted 2/28/00.
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