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PERSPECTIVE Understanding Nutritional Epidemiology and Its Role in Policy1,2 3,4 3 3–5 3–5 Ambika Satija, Edward Yu, Walter C Willett, andFrankBHu * 3Department of Nutrition and 4Department of Epidemiology, Harvard School of Public Health, Boston, MA; and 5Channing Division of Network Medicine, Brigham and Women’s Hospital, Boston, MA ABSTRACT Nutritional epidemiology has recently been criticized on several fronts, including the inability to measure diet accurately, and for its reliance onobservational studies to address etiologic questions. In addition, several recent meta-analyses with serious methodologic flaws have arrived at erroneous or misleading conclusions, reigniting controversy over formerly settled debates. All of this has raised questions regarding the ability of nutritional epidemiologic studies to inform policy. These criticisms, to a large degree, stem from a misunderstanding of the methodologic issues of the field and the inappropriate use of the drug trial paradigm in nutrition research. The exposure of interest in nutritional epidemiology is human diet, which is a complex system of interacting components that cumulatively affect health. Consequently, nutritional epidemiology constantly faces a unique set of challenges and continually develops specific methodologies to address these. Misunderstandingtheseissues canleadtothenonconstructive andsometimesnaivecriticismsweseetoday.Thisarticle aimstoclarifycommon misunderstandings of nutritional epidemiology, address challenges to the field, and discuss the utility of nutritional science in guiding policy by focusing on 5 broad questions commonly asked of the field. Adv Nutr 2015;6:5–18. Keywords: dietary assessment, food policy, meta-analysis, nutritional epidemiology, randomized controlled trials, prospective cohort studies Introduction also dangerous because they can be perceived as misleading Epidemiologyhaslonghaditsshareofskeptics,withTaubes’ messages, or can lead to the communication of misleading 1995 article being the most well-known (1). However, more messagestothepublicbypopularmediaandtheconsequent recent commentaries have attacked nutritional epidemiol- adoption of unhealthy practices by the population at large. ogy on several fronts. Ioannidis (2) criticizes the observa- For instance, after the publication of the latter meta-analysis, tional nature of epidemiologic studies and small trials, New York Times columnist Mark Bittman told his readers stating that “definitive solutions won’t come from another that they “can go back to eating butter” (6). million observational papers or small randomized trials.” Manyauthorshavesuggestedthat large randomized con- 6 He refers to an article by Archer et al. (3), which calls into trolled trials (RCTs) are the only solution to circumventing question the validity of data from the NHANES and suggests the problems in observational research. In reality, RCTs are that “the ability to estimate population trends in caloric far from being the panacea in the study of diet and chronic intake and generate empirically supported public policy rel- disease, and the results of such trials can be misleading. A evant to diet-health relations from US nutritional sur- key reason is that the exposure of interest in nutritional veillance is extremely limited.” Furthermore, questionably epidemiology—dietary intake—is complex, with interac- designed and executed meta-analyses have disseminated tions and synergies across different dietary components, conflicting messages about nutrition and health, such as which can be difficult to study with use of a linear drug trial the conclusion that being overweight lowers the risk of all- approach. A complex behavioral exposure such as diet also cause mortality (4) and that replacing saturated fat with makes other aspects important in pharmacologic RCTs, polyunsaturated fats has no substantial impact on cardiovas- such as high compliance and blinding, difficult and infea- cular risk (5). Such conclusions are not only confusing but sible in most dietary intervention trials. Consequently, 1Supported by NIH grants HL60712, DK58845, P30 DK46200, and U54CA155626. 6 Abbreviations used: CVD, cardiovascular disease; DLW, doubly labeled water; IHD, ischemic 2Author disclosures: A Satija, E Yu, WC Willett, and FB Hu, no conflicts of interest. heart disease; NTD, neural tube defect; RCT, randomized controlled trial; SSB, *To whom correspondence should be addressed. E-mail: nhbfh@channing.harvard.edu. sugar-sweetened beverage; TFA, trans FA; WHI, Women’s Health Initiative. ã2015 American Society for Nutrition. Adv. Nutr. 6: 5–18, 2015; doi:10.3945/an.114.007492. 5 nutritional epidemiology has design and analysis issues tables. The nutrient content of a food varies with season, lo- unique to the field, and understanding the details of nutri- cation of production, growing conditions, storage, process- tional epidemiologic studies requires a deep knowledge of ing, and cooking techniques, and many of these factors are nutritional science and its methodologic background. unaccounted for in food composition tables. The degree to The purpose of this article is to clarify common misun- which this is problematic differs from nutrient to nutrient. derstandings of nutritional epidemiology, address the chal- Although for some nutrients, such as dietary FAs, it is rea- lenges to the field, and discuss the utility of nutritional sonable to assume that these variations do not substantially science in guiding policy. In particular, we address 5 broad affect calculated intakes, for others, such as selenium, the questions that have been commonly raised about nutritional variation can result in calculated intakes that are substan- epidemiologic studies. tially different from true intakes (7). In general, however, this source of error does not substantially compromise the Can We Reliably Measure Dietary Intakes in ability to rank individuals with respect to nutrient intake Individuals and Populations? so as to evaluate associations with health outcomes (7, Measuring diet in free-living populations is challenging be- 13). Nevertheless, estimating nutrient composition from cause individual diets are complex exposures with innumer- food intake data is a challenge, especially given the changing able and sometimes poorly characterized components that food landscape, and it is crucial that we continue to improve are consumed in varying amounts and combinations by dif- the accuracy of food composition databases. ferent individuals. Dietary variables are rarely dichotomous; When participants provide biological specimens, re- often, but not always, the entire population is “exposed” to searchers can additionally measure intake by assaying bio- some degree. Diet is also a time-varying exposure, with in- markers. Examples of biomarkers include doubly labeled dividual dietary habits and food composition changing water (DLW) (for total energy intake), urinary nitrogen over time. It is not surprising, then, that most dietary assess- (for protein intake), 24-h urinary sodium and potassium, ment methods have a component of error, which could be blood lipid profiles, serum and plasma folate, and selenium randomday-to-day,diurnal,andseasonalvariationinanin- and other trace minerals in toenails. Biomarkers allow for dividual’s diet over time, or because of systematic mecha- objective measurement of intake without any bias because nisms, such as omission of foods when collecting data. of self-reporting. The limitations of biomarkers, however, Nonetheless, several techniques have been developed to as- have prevented their wider use. In particular, many foods certain dietary intake from free-living populations, and and nutrients lack sensitive or specific biomarkers, their these methods have shown good validity with use of multi- assessment always includes error from multiple sources, ple criteria. Although each assessment method comes with they maynotbeindicatorsofindividuallong-termintake, its own set of limitations, strengths unique to each method andobtainingandtestingfor biomarkersisexpensiveand make it appropriate for use in specific applications (7–10). burdensome.Thus,useofbiomarkerstoinvestigatenutrient- Multiple-week diet records, which require participants to disease relations has been mostly confined to nested case- record everything they eat or drink over the course of several control studies and small trials. Biomarkers are also useful weeks, are regarded as the gold standard for ascertaining di- in assessing the validity of less-expensive, self-reported as- etary information because, unlike other methods, they do sessments of diet, such as FFQs. not rely on memory. The high participant burden and cost AnFFQconsistsofastructuredfood list and a frequency of keeping diet records has limited their use in large-scale response section on which the participant indicates his/her epidemiologic studies; however, their ability to accurately usual frequency of intake of each food over a certain period ascertain detailed dietary information makes them useful of time in the past, usually 1 y. This is the most common in validation studies of other diet assessment methods, choice for measuring intake in large observational studies and in monitoring compliance in trials. Another limitation owing to its ease of use, low participant burden, and ability of diet records is that the process of recording can change to capture usual long-term dietary intake. These features an individual’s diet, rendering the data atypical of usual in- makepossible repeated assessments over time, which is im- take, although estimated intakes from diet records have been portant to capture longer term variation in diets. Table 1 found to correlate reasonably well with those from multiple presents a comparative summary of the advantages, disad- 24-h recalls (11). Repeated 24-h recalls involve a respondent vantages, and applications of these dietary assessment reporting all foods consumed in the previous 24 h or calen- methods. dardaytoatrainedinterviewer inpersonorover thephone. Thus, a collection of diverse diet assessment methods is Although reliance on the participant’s memory leaves room available; their appropriate application, alone or in combi- for measurement error, a skilled interviewer can produce nation, allows for a reasonably comprehensive assessment highly detailed and useful nutritional data comparable to a of the diet of free-living populations. Nevertheless, recent diet record (11, 12). This method has been widely employed critiques of these dietary assessment methods have called in dietary intervention trials. It is also used in national sur- into question their utility in examining diet-disease relations veys to monitor trends in nutritional intake. and informing policy. A recent example is the article by Ar- Apotential source of error common to these methods is cher et al. (3), which criticizes the use of 24-h dietary recall in the estimation of nutrients with use of food composition data periodically collected in the NHANES. Archer et al. 6 Satija et al. TABLE 1 Comparison of diet assessment methods Several day/week diet records Multiple 24-h recalls Asingle 24-h recall Validated FFQ Biomarkers Advantages Provides accurate, de- Provides fairly accurate, Provides detailed, Provides time-inte- Provides an objective tailed, open-ended detailed, open- open-ended data on grated data that rep- assessment of intake. data on dietary in- ended data on die- dietary intake, with- resents usual long- Represents bioavail- take, with no reliance tary intake, without out reliance on long- term intake. Can as- able dose, which is on memory, and di- reliance on long- term memory. sess past dietary relevant when it is rect computation of term memory. intake. used in etiologic portion sizes. analyses. Errors from omission, Has lower respondent Has lower respondent Theleast expensive and May be available in ret- portion size estima- burden and is less burden and is less most easily adminis- rospect (analysis of tion, and recall are expensive than diet expensive than diet tered diet assess- stored specimens). least likely. records, and works records and multiple ment method, with well in low-literacy recalls; works in low- the lowest respon- contexts. literacy contexts. dent burden. Disadvantages Needs literate, moti- Thereis scope for short- Thereis scope for short- There is scope for long- Biomarker may not be vated participants; term recall error, term recall error, term recall error. sensitive to intake, participant burden is omissions, and errors omissions, and errors Omissions possible may have low speci- very high whendone in portion size in portion size esti- because of fixed- ficity, may not be over several days. estimation. mation. Has high food list. time-integrated, may Could also alter usual random within-per- FFQs need to be cul- not represent usual eating habits. son error. ture- and population- long-termintake,and specific. is subject to labora- tory errors and other sources of bias. Expensive and re- Has high interviewer Has high interviewer Semi-quantitative. Expensive and more in- source-intensive diet burden and is more burden and is more Potential for errors in vasive. Biomarkers assessment method. expensive than a expensive than FFQs. nutrient estimation are not available for Potential for errors in single recall and Potential for errors in from food composi- many nutrients. nutrient estimation FFQs. nutrient estimation tion tables. from food composi- Potential for errors in from food composi- tion tables. nutrient estimation tion tables. from food composi- tion tables. Applications Validation of other diet Validation of other diet National surveillance of Association analyses in Validation of other diet assessment methods. assessmentmethods. mean population large epidemiologic assessmentmethods. intake. studies. Monitoring compliance Monitoring compliance Assessment of trends in Assessing past dietary Association analyses in in dietary interven- in dietary interven- dietary intake (earlier intake. epidemiologic stud- tion trials. tion trials. NHANES). ies and monitoring Assessment of trends compliance in inter- in dietary intake vention trials (current NHANES). comparedreported energy intake as assessed by the 24-h re- individuals, a single recall, as was used by Archer et al. in calls with expected basal metabolic rate and concluded that their analysis, will tend to capture extremes of dietary intake recalled energy intake data were implausibly low and recom- as opposed to usual current intake, increasing the likelihood mended that NHANES data be eliminated in considering that any individual’s single recall will be implausibly high or public policy. This finding represents the danger of misun- low. This random variation adds noise to the data, overesti- derstanding methodologic issues and making inferences mating the variance, and flattening the distribution, thereby with use of faulty logic. A recent article by Hébert et al. increasing the numbers of individuals in the extremes of the (13) comprehensively refutes the conclusions drawn from distribution. Thus, repeated 24-h recalls on nonconsecutive this study. The following section discusses key points from days are recommended to reduce within-person error. More this article while providing an overview of measurement er- epidemiologic studies that use 24-h recalls to assess diet now ror assessment and correction in nutritional epidemiology. obtain multiple replicate measures on each participant, and Nutritional epidemiologyhasadvancedconsiderablyover starting in 2002, a second 24-h recall was introduced in the the last 50 y with respect to understanding types and sources NHANEStoaddress some of these issues (8). of measurement error in dietary intake data (7, 14). An However, as noted earlier, error in diet assessment need insufficient appreciation of this can lead to erroneous con- not be completely random. Systematic sources of variation clusions like those of Archer et al. (3). Because of the con- include omission of foods consumed by individuals, errors siderable day-to-day variation in dietary intake among in estimating portion sizes, and over- or under-reporting Understanding nutritional epidemiology 7 becauseofsocialapproval(respondincertainwaystogetso- widened with time. These data underscore the importance cial praise) or social desirability (respond in certain ways of developing nutritional policies to improve diet quality avoid social criticism) (15–17). All of these could have led and reduce health disparities. to the under-reporting of energy intake observed by Archer Because of its low cost and low participant burden, self- et al. The underestimation of energy intake from self- administered computer-processed FFQs are the only option reported data has long been known to nutrition researchers, in most large cohort studies to assess usual dietary intakes. andmanystrides in methodology have been made to reduce FFQs usually have lower random within-person variation this source of measurement error (7, 18–22). Under-reporting than other dietary assessment methods because they are de- because of omission or portion size estimation errors is un- signed to assess average usual intake over the past year. For likely to be differential with respect to determinants of the this reason, they are better equipped to assess long-term di- outcome of interest. In addition, there have been improve- etary intake, the exposure of etiologic interest for most dis- ments in 24-h recall methodology that reduce these sources eases (7). Because of their reliance on memory, FFQs may of error, such as the USDA 5-pass method (8), which is suffer from greater measurement error relative to recalls structuredtominimizeomissionoffoodsandtohelppartic- and records if these methods are used for many days to re- ipants report accurate portion sizes by using visual aids. This flect longer-term intakes (for certain nutrients, just a few 5-pass method, which was introduced into the NHANES days of diet records or recalls might be enough, provided starting in 2002, was found to agree reasonably well with ac- the days are spread out over the entire reference period of tual intake assessed by direct observation (r = 0.57, P < 0.05) the FFQ). Nevertheless, FFQs have been shown to have ac- (23), as well as with energy intake as assessed by the DLW ceptable validity when compared to reference measures technique (r = 0.32 for males; r = 0.25 for females), which (29, 30), with typical correlation coefficients for individual is considered the gold standard for energy intake assessment nutrients or foods ranging from 0.4 to 0.7 (7). Adjustment (provided body compartment masses such as fat mass and for total energy intake, along with use of repeated FFQs in water mass are stable over time because DLW is a measure long-term prospective cohort studies, further improves of energy expenditure), although the DLWtechnique has er- these validity coefficients. Although extended dietary rec- rors of its own (8). Another solution is to use an isocaloric ords are the most popular reference method, when bio- statistical model in analysis, i.e., adjust for total energy in- markers are available, triangulation methods can be used take. In analytic epidemiology we are generally less inter- to obtain improved estimates of correlations of FFQ intake ested in the association of absolute energy/macronutrient with true intake (31). These validity coefficients can be intake with health outcomes, and more with how dietary used to correct for measurement error in epidemiologic composition relates to risk of disease because this is what analyses, and the application of these measurement error is most modifiable by individuals or populations. Hence, ad- correction methods is increasingly being extended to more justing for energy intake is standard practice in nutritional complicated analyses (18–20). These techniques have al- epidemiology. Adjusting for energy intake also diminishes lowed for valid inferences to be drawn from large cohort extraneous sources of variation in dietary intake, and to studies with use of FFQ data. some extent also reduces systematic sources of under- and Despite these developments in reducing measurement er- over-reporting (7, 21, 22). Issues related to measurement ror in dietary intake data, continued improvementsindietary error are not isolated to dietary assessment methods, but assessment methodology and measurement error correction extend to assessment of most behavioral exposures and bio- are needed to advance the field. Nevertheless, the consider- markers, including physical activity (24, 25), with which Ar- able progress made over the past few decades, especially the cher and colleagues, having worked considerably in the area use of repeated measures of diet over time, has enabled nu- of physical activity epidemiology, are familiar (26, 27). tritional epidemiologists to reliably collect and use dietary in- Hence, although there is no perfect method, there is am- formation in both individuals and populations. ple evidence that dietary measurements in national surveys have reasonably good reliability and validity. The conclusion WhatIstheRoleofNutritionalEpidemiologyin of Archer et al. that dietary data with use of these methods Inferring Causality? cannot support public policy is misleading. National survey Oneofthemaincriticisms leveled against nutritional epide- data such as the NHANES represent a small fraction of the miology is that it relies predominantly on observational totality of evidence on the basis of which national guidelines data, which is deemed to be inferior to experimental data and public policy are made. A main purpose of using na- in determining causality. Figure 1 illustrates the typical hier- tional survey data is to assess average population intakes archy of evidence from various study designs. While ran- andtrends. For example, we recently examined trends in di- domized trials with hard endpoints occupy the highest etary quality from 1999 to 2010 in the US adult population position in this hierarchy, they are usually not the most ap- among a nationally representative sample of 29,124 adults propriate or feasible study design to answer nutritional epi- aged 20–85 y with use of the NHANES data (28). We found demiologic questions regarding long-term effects of specific that better dietary quality, measured by the Alternate foods or nutrients (unless they can be packaged in a pill). Healthy Eating Index, was associated with higher socioeco- In the absence of evidence from large RCTs on hard nomic status, and the gap between the rich and the poor endpoints, nutritional epidemiologists typically rely on 8 Satija et al.
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