Despite the multiple risk factors including older age, male gender, genetic, race, smoking, inactivity, overweight, diet, high blood pressure, high blood cholesterol and diabetes mellitus, a major focus of CHD risk reduction has been on dietary cholesterol. However, recent epidemiological evidence has raised questions about the relationship between dietary cholesterol, plasma cholesterol levels and CHD risk(Reference Howell, McNamara, Tosca, Smith and Gaines1–Reference Song and Kerver4).
The Health Professionals’ Follow-up Study (HPFS) showed no association between dietary cholesterol and CHD risk among male subjects(Reference Hu, Stampfer, Manson, Rimm, Colditz, Rosner, Hennekens and Willett2). At the highest quintile of intake (422 mg/d) the relative risk (RR) was 1·03 (95 % CI 0·81, 1·32). A non-significant association between dietary cholesterol and CHD risk was observed among females in the Nurses’ Health Study (NHS). There was a slight increase in CHD risk for all quintiles of cholesterol intake (P for trend = 0·24)(Reference Hu, Stampfer, Manson, Rimm, Colditz, Rosner, Hennekens and Willett2).
In the present paper the dietary cholesterol contribution to CHD risk among US females aged 25 years or older was derived using RR estimates from the NHS and data on intake and CHD risk factors from the National Health and Nutrition Examination Survey (NHANES) 1999–2002. A risk apportionment model(Reference Barraj, Tran, Goodman and Ginevan5) was applied. The egg cholesterol share of CHD risk was also ascertained.
Methods
Model
A proportional weight risk apportionment model was used to calculate the contribution of risk factors to the overall CHD risk. Techniques to calculate the proportionate contribution of causal factors to a disease risk and their application to a public health setting were reviewed by Barraj et al.(Reference Barraj, Tran, Goodman and Ginevan5). The ‘proportional weights model’ is a better model when the additivity assumption of the combined risk does not hold(Reference Barraj, Tran, Goodman and Ginevan5). This model estimates assigned share (ASi ) associated with the ith risk factor (RRi denotes the relative risk associated with the ith risk factor) as:
where
and
In the present study, the model was implemented as follows:
1. Stratify the US females aged 25 years or older based on their common risk attributes (diet, obesity, exercise and smoking) using NHANES 1999–2002 data(6).
2. Within each stratum, apply the model to calculate the diet share of CHD risk, using a ‘diet score’, relative to obesity, exercise and smoking.
3. Within each stratum, apply an apportionment model with only the dietary factors to estimate specific dietary shares of CHD risk.
4. Within each stratum, estimate the fraction of dietary cholesterol from egg foods and apply this fraction to the dietary cholesterol share of CHD risk to calculate the egg share.
Data
The following data for the lifestyle and diet risk factors and associated RR were used to implement the model.
Lifestyle factors
The American Heart Association (AHA) has identified exercise, BMI below 25 kg/m2, avoidance of smoking, moderate alcohol intake, and a diet low in trans fat and glycaemic load, high in fibre, marine n-3 fatty acids (FA) and folate, with a high ratio of PUFA to SFA, as important lifestyle factors to prevent CHD in women. Demographic, smoking, exercise, anthropometric and dietary data were abstracted and recoded from NHANES 1999–2002 to create the following dichotomous categories.
1. Exercise: responses to questions on vigorous or moderate physical activity over the previous month were recoded into ‘heavy’ and ‘moderate’.
2. Smoking: participants were classified into current smokers and former/non-smokers.
3. Obesity: participants were classified into two categories, BMI ≥ 25 kg/m2 or BMI < 25 kg/m2.
4. Diet score: this was calculated using the 24 h food-recall data. The scoring mimicked the approach described by Stampfer et al.(Reference Stampfer, Hu, Manson, Rimm and Willett7) and used intakes of trans fat, cereal fibre, dietary folate, glycaemic load and PUFA:SFA ratio. A diet score was derived and categorized into quintiles. Higher quintile scores are indicative of a ‘prudent’ diet, e.g. low intake of trans fat, high intakes of fruits, vegetables and fibre, higher intake of chicken and fish relative to red meat and/or higher PUFA:SFA ratio(Reference Stampfer, Hu, Manson, Rimm and Willett7). Quintiles 1, 2 and 3 are categorized as poor diet and quintiles 4 and 5 as good diet.
Based on these categories, US females were stratified into groups with similar modifiable lifestyle risk factors.
Intakes
Daily nutrient and cholesterol intakes were estimated using 24 h consumption data for NHANES 1999–2002 and food nutrient contents from the US Department of Agriculture’s (USDA) National Nutrient Database(8). The fraction of dietary cholesterol from egg foods was determined using USDA–Environmental Protection Agency food recipes(9). Only foods containing whole eggs or egg yolk were considered.
Estimated relative risks
A number of studies have estimated RR for CHD risk factors, but there is variability among them with respect to study size, geography, population, adjustment for confounders and design. To ensure consistency and avoid using RR for a risk factor that could have been confounded by other factors, only multivariate-adjusted RR from the NHS were used. The NHS was chosen because it is among the largest investigations of risk factors for chronic diseases in women, with long follow-up periods and carefully collected information. NHS data on the association between CHD and smoking, obesity, exercise and diet reported by Stampfer et al.(Reference Stampfer, Hu, Manson, Rimm and Willett7) were used (Table 1).
*Extrapolated from Stampfer et al. (2000)Reference Stampfer, Hu, Manson, Rimm and Willett(7).
Estimated RR values for specific dietary factors were also derived from the NHS. A number of publications on diet factors and CHD risk from the NHS were found in the published literature. Estimated RR and intakes for most of these studies are summarized in the Appendix. The apportionment model was limited to ten dietary factors: cholesterol, marine n-3 FA, PUFA, MUFA, trans fat, α-linolenic acid (ALA), dietary fibre, folate, vitamin B6 and vitamin C. The rationale for this selection and the exclusion of SFA from the model are as follows.
1. SFA was not included because no association with CHD was observed in the NHS subjects (RR = 1·00, 0·94, 0·96, 1·04 and 0·97 for quintiles 1 to 5 of exposure as a percentage of energy, respectively)(Reference Oh, Hu, Manson, Stampfer and Willett10). Given that the RR for all quintiles are at unity, had SFA been included in the model, no CHD risk would be apportioned to SFA as a risk factor.
2. Although the association between dietary cholesterol and CHD is not statistically significant in the NHS, it is listed as a risk factor by the AHA(11) and is a focus of the present study, so it was included.
3. The associations between CHD and low intake of marine n-3 FA(Reference Hu, Bronner, Willett, Stampfer, Rexrode, Albert, Hunter and Manson12), PUFA(Reference Oh, Hu, Manson, Stampfer and Willett10), folate(Reference Rimm, Willett, Hu, Sampson, Colditz, Manson, Hennekens and Stampfer13), vitamin B6(Reference Rimm, Willett, Hu, Sampson, Colditz, Manson, Hennekens and Stampfer13) and dietary fibre(Reference Wolk, Manson, Stampfer, Colditz, Hu, Speizer, Hennekens and Willett14), and high intake of trans fat(Reference Oh, Hu, Manson, Stampfer and Willett10), were statistically significant among NHS subjects and were included.
4. While not statistically significant for non-fatal CHD, the association between fatal CHD and low ALA(Reference Hu, Stampfer, Mason, Rimm, Wolk, Golditz, Hennekens and Willett15) intake was significant in the NHS and was included.
5. Although the associations between CHD and MUFA and vitamin C were not statistically significant, an inverse relationship between increasing intake and CHD risk was observed (MUFA: RR = 1·22, 1·15, 1·16, 1·11 and 1·00 for quintiles 1 to 5 as a percentage of energy, respectively(Reference Oh, Hu, Manson, Stampfer and Willett10); vitamin C: RR = 1·16, 1·06, 1·00, 0·98 and 1·00 for quintiles 1 to 5 of exposure, respectively(Reference Osganian, Stampfer, Rimm, Spiegelman, Hu, Manson and Willett16)). Thus MUFA and vitamin C were included.
The daily intakes for these ten factors were developed using NHANES 1999–2002 data and the associated RR were extrapolated from the quintiles of intakes and RR reported in the NHS study (Table 2).
NHANES, National Health and Nutrition Examination Survey.
* All outcomes: fatal + non-fatal CHD.
† Statistically significant.
Results
Diet and lifestyle factors
The prevalence of poor diet, inactivity, obesity and smoking among US females aged 25 years or older was determined using the NHANES 1999–2002 data. Over 82 % of females (>77 million) have >1 lifestyle risk factor. The most common mutually exclusive combinations of lifestyle factors are presented in Table 3. Approximately 68 % (>52 million) US females have poor diet as a risk factor, with 8 % having poor diet as the only modifiable factor and 60 % having combinations of >2 modifiable factors.
*Total weighted n is 77 129 836 (∼82 % of US females in the National Health and Nutrition Examination Survey 1999–2002).
†✓ = present; ( ) = CHD risk share.
Diet contribution to CHD risk varies depending on the presence/absence of other CHD risk factors. The current study focuses on the diet and lifestyle factors while ignoring health status and non-modifiable factors such as age and genetics. When diet is examined as a whole, its share of CHD risk is 13 % when obesity, inactivity and smoking risk factors are also present and 65 % when inactivity is the only other risk factor present. When diet is the only risk factor (8 % of the females) its share of the CHD risk is 100 %. On average, poor diet contributes about 20 % of the CHD risk among US females aged 25 years or older (Table 3).
Specific dietary factors
Of the 20 % dietary share of CHD risk, relative to obesity, inactivity and smoking, current consumption of trans fat contributes 2·9 %, dietary cholesterol 1·5 % and the remaining 16 % is due to low consumption of desirable nutrients such as MUFA (1·5 %), PUFA (1·7 %), marine n-3 FA (2·7 %), ALA (1·1 %), dietary fibre (2·4 %), vitamin B6 (4·1 %), vitamin C (0·5 %) and folate (1·8 %; Fig. 1).
Based on the NHANES 1999–2002 intake data, dietary cholesterol in 82 % of US females averages 227·7 mg/d. Cholesterol intake in females with poor diet ranges from 227·8 to 258·2 mg/d. Those with poor diet and having >1 modifiable risk factor represent 68 % of this group. Cholesterol intake ranges from 152·2 to 233·8 mg/d for females without poor diet (Table 4).
*Total weighted n is 77 129 836 (∼82 % of US females in the National Health and Nutrition Examination Survey 1999–2002).
†Based on weighted individual estimates.
Among females with poor diet, cholesterol has the lowest CHD risk share (1·14 %) when obesity, inactivity and smoking are also present, and the highest risk share (7·79 %) when poor diet is the only risk factor (Table 4). Given the current cholesterol intake among US females, dietary cholesterol CHD risk share, relative to the other nine factors included in the model (trans fat, MUFA, PUFA, marine n-3 FA, ALA, dietary fibre, vitamin B6, vitamin C and folate) and other lifestyle risk factors (obesity, inactivity, smoking), averages 1·5 %.
As a sensitivity analysis, the apportionment model was implemented with dietary cholesterol as the principal dietary factor (ignoring other dietary factors). In this case, dietary cholesterol was used instead of the overall diet score in the apportionment model and its contribution to CHD risk was assessed relative to obesity, inactivity and smoking. This analysis provides an upper-bound estimate of dietary cholesterol share of CHD risk, approximately 1·9 %.
Foods containing whole egg and/or egg yolk contribute 20–28 % (average 25 %) of dietary cholesterol for US females aged 25 years or older (Table 4). The egg CHD risk share when restricted to those with ‘poor diet’ (∼68 % of the US females included in the present analysis) ranges from 0·27 % to 1·96 % (average 0·8 %). When all females are considered the egg CHD risk share is 0·4–0·5 %.
Discussion
Epidemiological studies consistently have shown a close association between CHD risk and diets high in total fat, SFA and cholesterol, and low in fibre and PUFA(Reference Hu, Rimm, Stampfer, Ascherio, Spiegelman and Willett17, Reference Kratz18). In the present study, when genetics and age were ignored, a poor diet contributed approximately 13 % to 65 %, depending on whether smoking, obesity and inactivity were present. On average, the dietary share of CHD risk, relative to other lifestyle factors, was approximately 20 % for US females aged 25 years or older.
While the relationship between overall diet and CHD is consistent, the evidence on dietary cholesterol is not always clear(Reference Kratz18). Recent epidemiological evidence has raised questions about whether limiting dietary cholesterol intake would lead to any significant reduction in CHD risk(Reference Howell, McNamara, Tosca, Smith and Gaines1, Reference Kritchevsky and Kritchevsky3, Reference Song and Kerver4, Reference Hu, Stampfer and Manson19). Cholesterol feeding studies demonstrating that dietary cholesterol increases both LDL and HDL cholesterol, with little change in the LDL:HDL ratio, provide some explanation for the lack of findings of an association between dietary cholesterol and CHD(Reference McNamara20). Epidemiological studies also show a very limited effect of cholesterol intake on plasma lipoprotein, while PUFA and SFA intakes are found to closely relate to plasma lipoprotein concentrations(Reference Howell, McNamara, Tosca, Smith and Gaines1).
In the NHS, an association between dietary cholesterol and CHD risk was observed, but the relationship was not statistically significant (P for trend = 0·24). Nevertheless, assuming that the observed relationship was true and applying the RR associated with dietary cholesterol from the NHS to US females aged 25 years or older, the CHD risk share of current dietary cholesterol is 1·5 % (upper-bound estimate: 1·9 %), as compared with the 2·5 % share from current intake of trans fat (as a percentage of total energy) and the 16 % share from current deficiency in heart-healthy nutrients such as marine n-3 FA, PUFA, ALA, dietary fibre, vitamins B6 and C, and folate. These results suggest that while reducing trans fat and cholesterol intake could lead to CHD risk reduction, a greater reduction of CHD risk may be achieved with improving intakes of currently deficient heart-healthy nutrients. Thus, consideration of total diet is essential in evaluating CHD risk reduction strategies.
Egg foods contributed between 20 % and 28 % of the total dietary cholesterol, corresponding to 0·4–0·5 % of CHD risk among US females (0·8 % in females with poor diet). It should be noted that published studies do not find any association between CHD and egg consumption(Reference Kritchevsky and Kritchevsky3). The public health significance of egg consumption should be examined in the context of its benefits, since one single, large egg supplies 12 % of the daily value for protein and other nutrients, including vitamins A, B6, B12, D, folate, Fe, P and Zn. Beneficial effects have also been attributed to functional contents in egg yolk, i.e. choline, lutein and zeaxanthin.
The present study did not model CHD risk shares attributed to dietary factors for US adult males because data from the HPFS did not show any statistically significant association between specific dietary factors and CHD risk, with the exception of dietary and cereal fibres, Fe and alcohol consumption. The data for males from the HPFS are summarized in the Appendix.
There are several key limitations with the findings from the present study. A major consideration concerning the risk apportionment model is the selection of risk factors and estimated RR. Different risk shares may have been derived if dietary factors other than the ten considered were included or if RR from other cohorts were used, e.g. populations with different education levels or without the health knowledge of NHS participants. The associations between CHD and glycaemic load score and vegetable oil intake were statistically significant in the NHS but were not incorporated in the present study. Vegetable oil intakes were not extractable from the NHANES data and the lack of a consistent method to replicate the glycaemic load score were reasons for their exclusion. Both α- and β-carotene were found to be associated with CHD in the NHS; however, because of the controversy about potential cancer effects, they were not incorporated in the model. Further, since SFA was not included in the model (not shown to be associated with CHD in the NHS), the risk shares of the ten diet factors studied could have been overestimated. If RR for SFA were >1 and incorporated, the CHD risk shares for the ten factors included here would be lowered.
Moreover, the RR estimates from the NHS were based on consumption data collected using an FFQ. Random and systematic errors are present in FFQ-derived intake estimates, with random error resulting in an attenuation of the RR estimates and systematic error (from under- or over-reporting by consumers) leading to overestimation of the RR. The effect of random variation is typically larger than that of systematic error; however, when multiple factors are included the estimated effect could be biased in either direction(Reference Thiébaut, Freedman, Carroll and Kipnis21).
In conclusion, while the NHS was considered the best option for the risk apportionment model because it is a large study with long-follow-up periods and carefully collected information, and the RR estimates were multivariate-adjusted, application of the NHS data in a risk apportionment model is not without limitations. Interpretation of findings from the present study should be made in the context of the underlying data and over-interpretation should be avoided.
Acknowledgements
The work was partially funded by Exponent and the Egg Nutrition Center. There are no conflicts of interest. N.T. developed and implemented the dietary apportionment model, reviewed and extracted data from the published literature, and prepared and revised the manuscript. L.B. developed the apportionment model, reviewed and extracted data from the published literature, and assisted with manuscript preparation. We appreciate Donald McNamara for his advice and comments, Carolyn Scrafford and Xiaoyu Bi for their assistance.
Appendix
Estimated relative risks for dietary factors from the Nurses’ Health Study and the Health Professionals’ Follow-up Study
Estimated relative risks (RR) for the dietary risk factors (cholesterol, SFA, etc.) were derived from the Nurses’ Health Study (NHS). The following publications were found and reviewed: three publications examined the impact of ‘total’ diet on CHD risk, four evaluated the impact of ‘whole foods’ on CHD risk, and twelve assessed the impact of specific macro/micronutrients, fats, cholesterol, etc. on CHD risk. Specifically, Hu et al.(Reference Hu, Rimm, Stampfer, Ascherio, Spiegelman and Willett1) and Fung et al.(Reference Fung, Willett, Stampfer, Manson and Hu2) showed that the ‘prudent’ diet was associated with a lower CHD risk. Stampfer et al.(Reference Stampfer, Hu, Manson, Rimm and Willett3) used a diet score to assess diet quality and found that a high diet score was associated with lower CHD risk. Of the four publications that examined the association between ‘whole foods’ and CHD risk using data from the NHS, two studies(Reference Lopez-Garcia, van Dam, Willett, Rimm, Manson, Stampfer, Rexrode and Hu4, Reference Hu, Stampfer and Manson5) found no association between coffee or egg consumption and CHD. The other two studies found an inverse association between CHD and intake of fruits and vegetables, green leafy vegetables, vitamin-C-rich fruits and vegetables, and nuts(Reference Joshipura, Hu and Manson6, Reference Hu, Stampfer, Manson, Rimm, Colditz, Rosner, Speizer, Hennekens and Willett7). A large number of studies(Reference Hu, Stampfer, Manson, Rimm, Colditz, Rosner, Hennekens and Willett8–Reference Liu, Manson, Stampfer, Holmes, Hu, Hankinson and Willett27) examined the association between several macro- and micronutrients, fats, cholesterol intakes and CHD risk. The estimated RR and the quintiles of intakes for most of these studies are summarized in Table A1.
*Statistically significant.
The present study did not model the share of CHD risk attributed to dietary cholesterol and other dietary risk factors for US adult males because data from the Health Professionals’ Follow-up Study (HPFS) did not show any statistically significant association between specific dietary factors and CHD risk, with the exception of dietary and cereal fibres, Fe and alcohol consumption (Table A2). Among the males in the HPFS, a slight increase in CHD risk in the upper (5th) quintile of trans fat intake was observed; however, the relationship is not statistically significant (P for trend = 0·2). Non-statistically significant inverse associations between intakes of α-linolenic acid, Mg and vitamin E and CHD were also observed. In particular, no association between CHD and any of the quintiles of dietary cholesterol, total fat, SFA and marine n-3 fatty acids was found among the HPFS subjects. The multivariate-adjusted RR estimates were approximately unity even at the highest (5th) quintile of intake (Table A2). Incorporating dietary factors with RR of 1 into the apportionment model would apportion 0 % share of the CHD risk for these factors. Based on these results, it would appear that diet and dietary fats do not seem to have a significant impact on CHD risk in adult males.
*Statistically significant.