Paraoxonase is an enzyme mainly synthesised in the liver that catalyses the hydrolysis of organophosphates such as pesticides, neurotoxins and arylesters( Reference Kilic, Aydin and Kilic 1 , Reference Marsillach, Ferre and Vila 2 ). It is widely distributed among tissues in the body, with its higher activity in blood and liver( Reference Keskin, Dolar and Dirican 3 , Reference Rao, Marmillot and Gong 4 ). Paraoxonase has four known activities: paraoxonase (PON1) (carrying the same name as the enzyme itself), arylesterase (AE), lactonase and dyazoxonase – which are all functions of a single enzyme( Reference Keskin, Dolar and Dirican 3 , Reference Marsillach, Camps and Ferre 5 – Reference Ferre, Camps and Prats 7 ) and depend on a substrate-dependent activity polymorphism of the PON1 gene( Reference Kilic, Aydin and Kilic 1 ). PON1 enzyme circulates in plasma bound to HDL and hydrolyses lipid peroxides( Reference Marsillach, Ferre and Vila 2 , Reference Marsillach, Camps and Ferre 5 , Reference Primo-Parmo, Sorenson and Teiber 8 , Reference La Du, Aviram and Billecke 9 ), protecting lipoproteins against oxidative modification( Reference Kilic, Aydin and Kilic 1 ). PON1 enzyme also protects against the toxicity of lipopolysaccharides (bacterial endotoxins), and it can possibly prevent or reduce the release of cytokines( Reference La Du, Aviram and Billecke 9 ). PON1 activity varies widely among individuals, up to 40-fold( Reference Singh, Kumar and Thakur 10 , Reference Costa, Vitalone and Cole 11 ), and it is influenced by genetic, developmental, environmental and pathologic determinants( Reference Kilic, Aydin and Kilic 1 , Reference Acay, Erdenen and Altunoglu 12 – Reference Kota, Meher and Kota 14 ). Low PON1 and AE activities have been associated with a variety of health outcomes( Reference Mackness, Durrington and McElduff 15 – Reference Oran, Tulubas and Mete 17 ). For instance, low PON1 activity has been suggested as a predictor for coronary events( Reference Mackness, Durrington and McElduff 15 ), and both low PON1 and AE activities have been associated with an increased risk of vascular dementia( Reference Cervellati, Trentini and Romani 16 ).
Serum PON1 and AE activities have been suggested as useful markers of liver function status( Reference Kilic, Aydin and Kilic 1 , Reference Ferre, Camps and Prats 7 ). Because of the liver damage caused as a consequence of heavy alcohol drinking, it has been hypothesised that excessive alcohol intake would lead to a reduction of serum PON1 and AE activities, which has also been demonstrated in a few studies( Reference Marsillach, Ferre and Vila 2 , Reference Rao, Marmillot and Gong 4 , Reference Costa, Vitalone and Cole 11 , Reference Mogarekar and Talekar 18 ). A case–control study with 328 persons with chronic alcohol dependency and 368 healthy individuals investigated the relationship between PON1 activity and liver damage, where PON1 activity was decreased in alcohol abusers( Reference Marsillach, Ferre and Vila 2 ). Similarly, a small case–control study described lower AE activity in chronic alcoholic hepatitis patients than in healthy control individuals( Reference Mogarekar and Talekar 18 ). However, studies investigating light and moderate alcohol consumption in relation to PON1 and AE activities in the general population are scarce and results have been inconsistent( Reference Ferre, Camps and Fernandez-Ballart 19 , Reference Vincent-Viry, Sass and Bastien 20 ). Therefore, we aimed to investigate the cross-sectional association between alcohol consumption and serum activities of PON1 and AE using data from the population-based Bavarian Food Consumption Survey II (BVSII), in which dietary intake was assessed by three 24-h dietary recalls. Furthermore, we performed analyses with and without adjustment for circulating HDL in order to investigate its possible role as a mediator.
Methods
The BVSII is a randomly sampled cross-sectional study of 1050 individuals aged 13–80 years old from Bavaria, Germany. Recruitment took place in 2002–2003. The study protocol comprised a computer-aided personal interview, three 24-h dietary recalls by telephone, as well as blood sampling and anthropometric measures. The overall response rate in the BVSII was 70·9 %. All adult participants who had participated in the personal interview and at least one dietary recall (n 879) were invited to the nearest public health office for blood sampling and anthropometrical measurements. This invitation was followed by 65 % (n 568) of eligible study participants. All participants gave their written informed consent. The study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving human subjects were ethically approved by the Bavarian Ministry of Health( Reference Himmerich, Gedrich and Karg 21 ). The study population for the present analysis consisted of BVSII participants with full information on PON1 and AE activities and with at least two 24-h dietary recalls (mean 2·99 (sd 0·07)). In all, two participants were excluded because of missing PON1 and AE data, leaving a total of 566 BVSII participants.
Laboratory methods
Venous blood was extracted into serum or EDTA tubes and chilled at 4°C and then processed within 3 h by centrifugation to separate the serum from the blood cells. The samples were kept cold for a maximum of 1 d for transportation and aliquoting and then stored at −80°C until analysis.
Enzymatic activities of PON1 and AE were determined spectrophotometrically in serum samples of the study participants under a controlled temperature of 25°C and a pH of 8, as previously described( Reference Bub, Barth and Watzl 22 ). Enzymatic activity of PON1 was measured using paraoxon as substrate, and the reaction was recorded at 405 nm. One unit of PON1 activity equals 1 nmol of P-nitrophenol formed/min per ml. The activity of AE was measured using phenylacetate as substrate, and the reaction was monitored at 270 nm. One unit of AE activity equals 1 µmol of phenylacetate hydrolysed/min per ml. Spontaneous hydrolysis was corrected using blanks without serum and subtracting this activity from the serum analysis samples.
Alcohol consumption assessment
Alcohol consumption was assessed with 24-h dietary recalls (three recalls, two in weekdays and one in a weekend day) conducted by trained interviewers by telephone using the EPIC-SOFT software, program developed to standardize 24-h diet recall interviews from the ten countries participating in a large European multi-centre study( Reference Slimani, Deharveng and Charrondière 23 , Reference Slimani, Ferrari and Ocke 24 ). The intake of grams of pure alcohol on each recalled day were obtained through the participants’ type and quantity (number of servings consumed) of alcoholic beverages consumed, which were then multiplied by the ethanol content in each portion of beverage type based on the German Nutrient Database (BLS II.3)( Reference Klemm 25 ). The mean pure alcohol consumption per day was then obtained by a weighed conversion of the weekday and weekend 24-h recalls to resemble a full week.
Statistical analysis
To compare participants’ characteristics across alcohol consumption categories, we used generalised linear models for the continuous, non-dietary variables, χ 2 test for the categorical variables and Kruskal–Wallis test for non-parametrical data for the dietary variables. For the purpose of this study, we defined drinking categories as follows: non-drinkers (0 g/d), low alcohol consumption (0·1–5 g/d or up to 2 drinks/week), low-medium alcohol consumption (5·1–15 g/d or up to 1 drink/d), medium alcohol consumption (15·1–30 g/d or up to 2 drinks/d) and high alcohol consumption (>30 g/d or >2 drinks/d).
The association between alcohol consumption and PON1 and AE enzymatic activities was investigated using multivariable linear regression models with robust variance( Reference Jacqmin-Gadda, Sibillot and Proust 26 ). Alcohol consumption was analysed as a categorical variable, as well as continuously. Trends across alcohol categories were calculated by treating the middle value for each alcohol category (median for high alcohol consumption group) as a continuous variable and examining significance using Wald’s test. If the categorical analysis was indicative of a non-linear relationship, we additionally examined quadratic trends using likelihood ratio tests.
We examined the impact of several potentially confounding factors in our analysis, including age, sex, socio-economic status, sports activity, body fatness and dietary intake. Covariables were selected according to clinical relevance and univariate significance testing based on a previously described model-fitting procedure( Reference Hosmer, Lemeshow and May 27 ). The final multivariable models were adjusted for age, sex and socio-economic status. In separate models, we additionally adjusted for HDL, as paraoxonase enzyme is mainly transported bound to HDL. As a sensitivity analysis, we ran all models excluding participants with chronic diseases that have been related to PON1 or AE activities in previous studies( Reference Kilic, Aydin and Kilic 1 , Reference Acay, Erdenen and Altunoglu 12 – Reference Kota, Meher and Kota 14 ) (type 2 diabetes, n 40; asthma, n 34; CVD, n 136; inflammatory bowel disease, n7). CVD was considered as individuals having at least one of the following: arterial hypertension, history of myocardial infraction or stroke. Furthermore, we ran models with exclusion of heavy drinkers (>70 g ethanol/d, n 9). Moreover, we tested for statistical interaction in the association between alcohol consumption and PON1 and AE by sex, age, smoking status and obesity (BMI</≥30 kg/m2) using cross-product terms.
Results
Characteristics of BVSII study participants by alcohol consumption categories are shown in Table 1. Comparing the upper alcohol consumption categories with the lower categories, study participants were of older age, more likely to be male, less likely to belong to the lowest socio-economic status and had a higher energy intake. BMI and physical activity did not differ substantially by alcohol consumption categories. Circulating HDL-cholesterol was the lowest in non-drinkers and of similar magnitude across the other alcohol consumption categories.
SES, socio-economic status; MET, metabolic equivalent task.
*P<0·05.
† P values were obtained by χ 2 test.
‡ P values were obtained by linear trend derived from generalised linear models.
§ P values were obtained by trend based on Kruskal–Wallis test.
Regression models
We did not observe strong differences in PON1 activity across alcohol consumption categories (Table 2). Mean PON1 activities across alcohol consumption categories were suggestive of a non-linear association, with lowest PON1 activities observed in non-drinkers and highest PON1 activities in the medium alcohol consumption category. However, tests for quadratic trend were non-significant. The results were not substantially different between the crude model, the multivariable adjusted model and the model that additionally adjusted for HDL. Results were also not substantially changed after exclusion of study participants with chronic diseases or heavy drinkers (Fig. 1). We observed no statistically significant interactions by sex, age, smoking status or obesity (data not shown).
Ref., referent values.
*P<0·05.
† Mixed method linear regression models were used.
‡ Continuous model (alcohol consumption in grams of pure alcohol per d).
§ P trend was calculated by using the middle values (median for highest category) of each alcohol consumption category and was treated as a continuous variable.
|| P for quadratic trend was obtained through log-likelihood ratio testing to examine quadratic trends.
¶ Multivariable model was adjusted for sex, age and socio-economic status.
AE activity increased across alcohol consumption categories, with a borderline statistically significant linear trend (P=0·04). On a continuous scale in the multivariable model (adjusted for sex, age and socio-economic status), about 1 g higher consumption of alcohol was associated with 0·26 U/ml higher activity of AE (95 % CI −0·02, 0·49) (Table 2). After adjusting for HDL, the main transport protein of paraoxonase enzyme, the association was attenuated. In sensitivity analyses excluding participants with chronic diseases and heavy alcohol use, mean concentrations and continuous effect estimates were similar to the main analysis, although no statistically significant linear trends were observed (Fig. 2). We observed no statistically significant interactions by sex, age, smoking status or obesity (data not shown).
Discussion
In this study, we found a weak, non-significant, non-linear association between alcohol consumption and serum PON1 activity, with lowest activities in non-drinkers and highest activities in people with medium alcohol consumption. In addition, we observed a borderline statistically significant positive association between alcohol consumption and AE activity, which was, however, attenuated and no longer statistically significant after adjusting for HDL. These results suggest that the positive association between alcohol consumption and AE is partly explained by HDL-cholesterol, paraoxonase’s main transport protein.
So far, observational studies on PON1 and AE activities have been small and investigated the association with larger quantities of alcohol consumption, usually among people with alcohol dependency, rather than intake in the general population. The present study is one of the few population-based studies investigating alcohol consumption in relation to PON1 and AE activities. Our observation of no statistically significant association between alcohol consumption and PON1 activity is generally supported by two previously conducted population-based studies: in a study of 918 individuals in France, alcohol drinking was not associated with PON1 activity. However, alcohol drinking was analysed as a binary variable (yes/no)( Reference Vincent-Viry, Sass and Bastien 20 ). In a second population-based study on 388 individuals in Spain, no linear association between alcohol consumption and PON1 activity was observed( Reference Ferre, Camps and Fernandez-Ballart 19 ). Furthermore, in a small cross-sectional study, light drinkers (n 12, 1–3 drinks/d in the past 6 months or longer, equivalent to low-medium/medium intake in our study) had higher PON1 activity than abstainers (n 12, <1 drink/d in the past 6 months or longer)( Reference Rao, Marmillot and Gong 4 ), which is in line with our observations of lower PON1 activity in non-drinkers than in the medium alcohol consumption category. With regard to intervention studies with alcohol, our PON1 activity findings are consistent with a study of fourteen healthy male individuals( Reference Sarandol, Serdar and Dirican 28 ), in whom intake of red wine for 3 weeks (40 g of ethanol/d or about 4 drinks/d) did not trigger a significant change in PON1 activity. In contrast, in two further intervention studies( Reference Rajdl, Racek and Trefil 29 , Reference van der Gaag, van Tol and Scheek 30 ), PON1 activity was higher after an intervention of about 40 g of alcohol/d (for 3–4 weeks), which is equivalent to high alcohol consumption in our study.
Our finding of a weak positive association between alcohol consumption and AE activity is in line with the population-based study from France, in which alcohol consumption was analysed as a binary exposure( Reference Vincent-Viry, Sass and Bastien 20 ). Contrary to our observation, a decrease in AE activity was observed after a red wine intervention (about 3–4 drinks/d) for 3 weeks in a study by Sarandol et al.( Reference Sarandol, Serdar and Dirican 28 ). To our understanding, these studies did not adjust for HDL, and we are not aware of any other population-based or intervention study investigating low or moderate alcohol consumption in relation to AE activity.
Strengths and limitations
The BVSII is the first population-based study that measured PON1 and AE activity in Germans, with detailed characterisation of lifestyle, anthropometric and medical information, and a wide array of biomarkers including HDL available. A strength of the present study is that alcohol consumption was assessed through the application of three interactive, standardised 24-h dietary recalls. A main advantage of this method is that it is a more precise, quantitative dietary assessment method in comparison with other tools such as FFQ( Reference Schatzkin, Kipnis and Carroll 31 ). It is also an advantage that the 24-h dietary recalls were conducted relatively close in time (up to 6 weeks) to the blood draw. However, similar to other self-reported methods, assessment of alcohol consumption through 24-h recalls is prone to errors. The dietary assessment tool used in this study (EPIC-SOFT) has been validated. In a study including 127 men and women, two non-consecutive 24-h dietary recalls were compared against a 5-d estimated dietary record, and a fairly good Spearman’s correlation coefficient of 0·60 was observed for alcohol intake( Reference De Keyzer, Huybrechts and De Vriendt 32 ). However, alcohol is an episodically consumed food group with substantial weekly( Reference Marques-Vidal, Arveiler and Evans 33 ) and seasonal variation( Reference Ferraroni, Decarli and Franceschi 34 ), complicating measurement of the usual intake. A general limitation of the 24-h dietary recall is that it is dependent on the memory of the participant. Thus, it is impossible to rule out under- or over-reporting and a resulting misclassification in the alcohol consumption groups. This would likely be a non-differential misclassification because of an independent behaviour from PON1 and AE activities, which could potentially bias the results towards the null. We also cannot discard the possibility of intentional misclassification as non-drinkers (response bias)( Reference Babor, Stephens and Marlatt 35 ). For instance, it has been suggested that persons with chronic alcohol dependency and women during pregnancy are more likely to under-report alcohol consumption( Reference Ernhart, Morrow-Tlucak and Sokol 36 ). Biochemical indicators of dietary intake are an objective tool to assess the validity of reported intake. In the case of alcohol consumption, urinary ethyl glucuronide would be of value and is a limitation of this study that such data were not available. Furthermore, it is a general limitation of our study that the data collection for the BVSII study took place 12–13 years ago, although we would expect to obtain similar results in a present-day analysis. Another limitation is that there is no universal definition for low, medium and high alcohol consumption, which may complicate comparability between studies. Finally, statistical power in the present analysis was limited, and therefore we cannot exclude that we missed to detect small associations.
Conclusion
In conclusion, our study does not support the hypothesis that alcohol consumption is related to important PON1 and AE activity alterations. The observed association between alcohol consumption and PON1 activity was weak and non-linear (lowest activity in non-drinkers, highest in moderate drinkers), whereas a weak positive linear association was observed between alcohol consumption and AE activity. As the evidence on this topic is still scarce, more large-scale population-based longitudinal studies with multiple exposure measurements are warranted, which would allow elucidating temporal associations. A better understanding of the behaviour of serum PON1 and AE activities in response to alcohol intake could be useful for future epidemiological studies relating PON1 and AE activities to physiological conditions and diseases and at later stages of research and evidence, for public health recommendations regarding the management and prevention of physiological disorders.
Acknowledgements
The authors acknowledge the cooperation of all study participants. The authors thank Georg Karg, Kurt Gedrich and Stefanie Himmerich for their major contribution in the setup and conduct of the study.
This work was supported by funds of the Bavarian Ministry of Environment, Health and Consumer Protection and the Kurt-Eberhard-Bode-Stiftung. The funder had no role in the design, analysis or writing of this article.
C. S. carried out the study, and analysed and interpreted the data. K. N. added substantial contributions to the conception and design, made the data availability possible and together with T. P. revised the article critically for important intellectual content. J. L. was responsible for the concept and design of the BVSII and critically appraised the manuscript. A. B. was responsible for the measurement of PON1 and AE and critically appraised the manuscript. All authors gave their final approval of the version to be published.
The authors declare that there are no conflicts of interest.