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Analysis of dietary patterns and cross-sectional and longitudinal associations with hypertension, high BMI and type 2 diabetes in Peru

Published online by Cambridge University Press:  28 August 2019

Carmelia Alae-Carew*
Affiliation:
Department of Population Health, London School of Hygiene & Tropical Medicine, London WC1E 7HT, UK
Pauline Scheelbeek
Affiliation:
Department of Population Health, London School of Hygiene & Tropical Medicine, London WC1E 7HT, UK
Rodrigo M Carrillo-Larco
Affiliation:
CRONICAS Centre of Excellence in Chronic Diseases, Universidad Peruana Cayetano Heredia, Lima, Peru School of Medicine, Universidad Peruana Cayetano Heredia, Lima, Peru Department of Epidemiology and Biostatistics, School of Public Health, Imperial College London, London, UK
Antonio Bernabé-Ortiz
Affiliation:
CRONICAS Centre of Excellence in Chronic Diseases, Universidad Peruana Cayetano Heredia, Lima, Peru School of Public Health and Administration, Universidad Peruana Cayetano Heredia, Lima, Peru
William Checkley
Affiliation:
Division of Pulmonary and Critical Care, School of Medicine, Johns Hopkins University, Baltimore, MD, USA Center for Global Non-Communicable Disease Research and Training, Johns Hopkins University, Baltimore, MD, USA
J Jaime Miranda
Affiliation:
CRONICAS Centre of Excellence in Chronic Diseases, Universidad Peruana Cayetano Heredia, Lima, Peru
*
*Corresponding author: Email [email protected]
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Abstract

Objective:

To determine if specific dietary patterns are associated with risk of hypertension, type 2 diabetes mellitus (T2DM) and high BMI in four sites in Peru.

Design:

We analysed dietary patterns from a cohort of Peruvian adults in four geographical settings using latent class analysis. Associations with prevalence and incidence of hypertension, T2DM and high BMI were assessed using Poisson regression and generalised linear models, adjusted for potential confounders.

Setting:

Four sites in Peru varying in degree of urbanisation.

Participants:

Adults aged ≥35 years (n 3280).

Results:

We identified four distinct dietary patterns corresponding to different stages of the Peruvian nutrition transition, reflected by the foods frequently consumed in each pattern. Participants consuming the ‘stage 3’ diet, characterised by high proportional consumption of processed foods, animal products and low consumption of vegetables, mostly consumed in the semi-urban setting, showed the highest prevalence of all health outcomes (hypertension 32·1 %; T2DM 10·7 %; high BMI 75·1 %). Those with a more traditional ‘stage 1’ diet characterised by potato and vegetables, mostly consumed in the rural setting, had lower prevalence of hypertension (prevalence ratio; 95 CI: 0·57; 0·43, 0·75), T2DM (0·36; 0·16, 0·86) and high BMI (0·55; 0·48, 0·63) compared with the ‘stage 3’ diet. Incidence of hypertension was highest among individuals consuming the ‘stage 3’ diet (63·75 per 1000 person-years; 95 % CI 52·40, 77·55).

Conclusions:

The study found more traditional diets were associated with a lower prevalence of three common chronic diseases, while prevalence of these diseases was higher with a diet high in processed foods and low in vegetables.

Type
Research paper
Copyright
© The Authors 2019

Unhealthy diet is one of the main modifiable risk factors for the predominant non-communicable diseases (NCD), as it can contribute to the development of conditions such as hypertension and type 2 diabetes mellitus (T2DM), as well as overweight and obesity which are precursors to many NCD(1). The rise of unhealthy diets in low- and middle-income countries has been in part attributed to a rapid ‘nutrition transition’, in which traditional diets are being replaced by consumption of more energy-dense Westernised foods, including animal products high in saturated fat and processed foods high in salt, oils and refined sugar(Reference Bermudez and Tucker2, Reference Popkin3).

The nutrition transition in Peru, an upper-middle-income country, has been taking place at different rates throughout the country due to its diverse geography, nutrition profile and levels of urbanisation(Reference Chaparro and Estrada4). The diet in rural areas of Peru remains in line with a more traditional dietary pattern, which is mostly comprised of potatoes and other tubers(Reference Berti, Fallu and Cruz Agudo5) and starchy seeds such as quinoa(Reference Oyarzun, Borja and Sherwood6), although there are substantial regional differences in diet. However, as 77·3 % of Peru’s inhabitants now live in urban areas(7), this is no longer the case for much of the country; urbanisation being one the drivers underpinning the change in consumption that characterises the nutrition transition towards a Westernised dietary pattern(Reference Popkin3). Examination of food intake trends inferred from food balance sheets over the 1990s have shown increasing consumption of animal products, saturated fat and sugar(Reference Bermudez and Tucker2), while energy supply from cereals, roots and tubers has declined as gross domestic product per capita has improved(8). Mapping of the ‘stages’ of transition in 2012 based on prevalence of stunting and obesity suggested that some coastal regions of the country had moved away from traditional diets and showed low levels of stunting and a high burden of obesity and other nutrition-related chronic disease. Diets in most other regions of Peru were much more in transition, showing a typical ‘double burden’ profile with a substantial burden of both stunting and obesity among people consuming a diet similar to the traditional Peruvian diet and people consuming more Westernised diets, respectively(Reference Chaparro and Estrada4).

In 2014, NCD accounted for 66 % of deaths in Peru(7). Hypertension and T2DM are two of the leading risk factors for many of the major NCD, and further characterisation of the estimated local burden of these risk factors is required to develop and support local and regional strategies for prevention and control of NCD(9). Previous studies in Peru have shown that both overweight and obesity increase the risk of hypertension and T2DM, with obesity being the leading risk factor for both(Reference Bernabé-Ortiz, Carrillo-Larco and Gilman10, Reference Bernabe-Ortiz, Carrillo-Larco and Gilman11). The contribution of obesity to disease risk was found to vary in different parts of the country, and similarly variations in incidence and prevalence of hypertension(Reference Bernabé-Ortiz, Carrillo-Larco and Gilman10, Reference Bernabe-Ortiz, Carrillo-Larco and Gilman11) and T2DM(Reference Bernabe-Ortiz, Carrillo-Larco and Gilman11, Reference Bernabe-Ortiz, Carrillo-Larco and Gilman12) were found among different parts of the country that vary in degree of urbanisation. In 2012, the prevalence of overweight and obesity in Peru was >30 % in all but one of its twenty-five regions(Reference Chaparro and Estrada4). However, there has been very little examination of the role of diet in the development of obesity and other NCD determinants in a country with extensive environmental and cultural diversity.

The link between nutrition and disease is increasingly being investigated using dietary pattern analysis, which takes into account many of the complexities associated with examining the diet; it is inclusive of eating behaviours, food synergy and nutrient interactions(Reference Hu13). While it does not take the place of studying single food components, dietary pattern analysis can provide valuable information on the overall effects of diet in order to predict disease risk or aid in a comprehensive approach to prevention strategies(Reference Hu13, Reference Fung, Willett and Stampfer14). No previous dietary pattern analyses have been performed on Peruvian dietary data, a country where diets are heterogeneous and can be difficult to classify. Therefore the present study was undertaken to achieve the following objectives: (i) to characterise dietary patterns in four different locations in Peru; (ii) to examine the cross-sectional relationship of these dietary patterns with hypertension, T2DM and BMI; and (iii) to investigate changes in disease risk over time by assessing the longitudinal association between baseline dietary patterns and the three outcomes. By doing this we aimed to contribute to the evidence on the link between dietary patterns and NCD in resource-constrained settings to further inform targeted intervention strategies.

Methods

Study design and setting

The CRONICAS Cohort Study is a longitudinal ongoing cohort study of NCD progression in distinct geographic areas of Peru, which has been described elsewhere(Reference Miranda, Bernabe-Ortiz and Smeeth15). In short, four study sites were included in the study: two sea-level sites (a highly urbanised area of Lima, the capital, and a semi-urban setting in Tumbes, in the north of the country) and two high-altitude sites (an urban and a rural site in Puno in the south of the country). Beginning in September 2010, the study sought to characterise the baseline prevalence and rate of progression of cardiopulmonary diseases and their risk factors among these different populations. To date, the study has had two rounds of follow-up over a 30-month period. The first follow-up comprised repeated clinical measurements only, while the second follow-up consisted of repeated clinical measurements and blood sampling. For the current analysis, we used data from baseline and the second follow-up, hence covering a 30-month period.

Participants

Using the most recent census available in all study sites, participants were randomly selected using a sex- and age-stratified sampling strategy. Only one individual per household was selected. Those eligible were 35 years or older and had to be a permanent resident in the selected area. Those who were pregnant, bedridden, unable to provide consent, had active tuberculosis or had a physical disability that would prevent measurement of clinical outcomes were excluded. The CRONICAS Cohort Study protocol and informed consent forms were approved by the Ethics Committees at Universidad Peruana Cayetano Heredia and A.B. PRISMA in Lima, Peru, and the Institutional Review Board at the Johns Hopkins Bloomberg School of Public Health, in Baltimore, MD, USA.

Data collection

At baseline, participants were visited at home by fieldworkers to verify eligibility criteria and obtain informed consent. Socio-economic, dietary and lifestyle information was gathered by fieldworker-administered paper-based questionnaire, which was adapted from the WHO STEPwise approach for NCD risk factor surveillance(16). Within this was contained a short version of an FFQ, based on a similar questionnaire designed by an earlier study(Reference O’Donnell, Xavier and Diener17), to obtain information on consumption frequency of certain foods and beverages, selected because either they are commonly eaten foods in Peru or known to be linked to chronic disease(Reference McCloskey, Tarazona-Meza and Jones-Smith18). In completing the FFQ participants were asked to report how many times per month or week they consumed foods and beverages within twenty-three categories (see online supplementary material, Supplemental Table S1). Participants were subsequently seen for clinical assessment including blood sampling by a trained technician according to standardised techniques and protocols. Blood pressure was measured using a previously validated automatic monitor (model OMRON HEM-780)(Reference Coleman, Steel and Freeman19). Three readings were taken and an average of the last two measurements was used in the analysis. Blood samples were analysed for fasting plasma glucose level using an enzymatic colorimetric method (GOD-PAP; Modular P-E/Roche-Cobas, Grenzach-Whylen, Germany). Weight was measured using a body composition analyser (model TBF-300A; TANITA Corporation, Tokyo, Japan). The second follow-up comprised repeated completion of subsections of the baseline questionnaire (not including the FFQ) and repeated clinical assessment including blood sampling following the same procedures conducted at baseline.

Variables

The outcomes of interest at baseline and follow up were hypertension, T2DM and high BMI. Hypertension was defined as systolic blood pressure ≥140 mmHg or diastolic blood pressure ≥90 mmHg in participants younger than 60 years, and systolic blood pressure ≥150 mmHg or diastolic blood pressure ≥90 mmHg in those aged 60 years or older, as per the eighth Joint National Committee target blood pressure recommendations(Reference James, Oparil and Carter20). Participants self-reporting a diagnosis of hypertension by a physician or currently prescribed antihypertensive medications were also included in the definition of hypertension. T2DM was defined as fasting plasma glucose level ≥126 mg/dl(21), self-reported diagnosis by a physician or currently prescribed medications for T2DM. High BMI was considered to be BMI ≥25 kg/m2 to incorporate both overweight (≥25·0–29·9 kg/m2) and obese (≥30·0 kg/m2) persons as per the WHO international classification of BMI(22). All outcome variables were binary.

Dietary patterns were derived from responses to the short version FFQ. Data were aggregated into fourteen food groups (Supplemental Table S1) from which daily frequency of consumption was calculated. Foods were grouped based on similarities in the way the foods are consumed, and similar health impacts. Unrealistic extreme intake values of over ten times daily were excluded. Each food group variable was split into four categories (zero consumption and tertiles of frequency) to reflect proportional consumption frequency of each food group prior to dietary pattern analysis(Reference Leech, Worsley and Timperio23, Reference Joy, Green and Agrawal24).

Analyses were adjusted for age (35–44, 45–54, 55–64, 65–74, >75 years old), sex, ethnicity (native Quechua/Aymara, half Spanish/Native, other), education level (none, primary, secondary and further education), currently employed, socio-economic status (based on wealth index indicator derived from assets and household facilities; categorised into tertiles), smoking (never, former, current), heavy alcohol consumption (≥2 nights in the past month of heavy drinking, defined as ≥6 alcoholic drinks), physical activity (low, moderate, high; based on metabolic equivalent score) and watching television (<2 or ≥2 h/d). Baseline measurements were assumed to stay constant throughout the 30-month follow-up period except age, which was updated to age at last follow-up for follow-up analyses.

Statistical methods

Latent class analysis(Reference Leech, Worsley and Timperio23, Reference Noor, Ross and Lai25Reference Fahey, Thane and Bramwell27) was used to identify dietary patterns from a set of observed categorical variables. Meaningful latent classes or subgroups of individuals were created based on shared patterns of consumption. Individuals were assigned to a certain dietary pattern group based on similar dietary characteristics. Latent class analysis was performed using Mplus version 7.4 (Muthen & Muthen, Los Angeles, CA, USA) using the fourteen categorical food group variables. A series of models was generated with increasing number of classes from one to seven. Model selection was based on the Akaike information criterion and Bayesian information criterion to compare goodness of fit, entropy to assess the certainty of classification, and pattern interpretability of each model(Reference Leech, Worsley and Timperio23, Reference Tein, Coxe and Cham28). From the selected model, each individual’s most likely class membership, as determined by posterior probabilities, was exported into the data set as a new variable. Dietary patterns for each of the classes were described based on the conditional probabilities of reported food groups within each class(Reference Padmadas, Dias and Willekens26, Reference Berlin, Williams and Parra29).

Tabulation and univariate analyses were used to explore the prevalence of the outcomes and check for collinearity between the exposure variables. Generalised linear models assuming logistic-normal distribution were used to explore the relationship between dietary patterns and prevalence of the three disease outcomes, adjusting for potential confounders using forward selection stepwise regression; likelihood ratio tests were used to assess goodness of fit. The effect of site was assessed using variables for urbanisation (urban, semi-urban, rural) and site (sea level, altitude) within the models; goodness of fit was determined by Akaike information criterion and Bayesian information criterion values. Stratified analysis by site was also carried out to further explore within-site associations; however, there were not enough data to perform individual analysis in each site. For all models, the prevalence ratio (PR) and 95 % CI were obtained for each dietary pattern category, with the dietary pattern showing the highest outcome prevalence chosen as the reference group. Ethnicity was not included in the final model due to collinearity with socio-economic status and education level.

Generalised linear models assuming Poisson distribution using random censoring were used to determine the association of overall and site-specific dietary patterns with incidence of the three outcomes, generating crude and adjusted incidence risk ratio (IRR) and 95 % CI. Participants who already had the condition of interest at baseline were excluded. Analyses of the relationship between dietary patterns and hypertension, T2DM and obesity were performed using the statistical software package Stata version 15.0. Analysis code can be made available on request (https://datacompass.lshtm.ac.uk/).

Results

Population characteristics

Of the 3280 participants, 1064 (32·4 %) were residing in Lima, 599 (18·3 %) in urban Puno, 586 (17·9 %) in rural Puno and 1031 (31·4 %) in Tumbes. Baseline data on hypertension were complete for 3266 (99·6 %) participants, T2DM for 3134 (95·6 %) and BMI for 3112 (94·9 %) participants (Fig. 1). Detailed characteristics of the study population at baseline are shown in Table 1.

Fig. 1 Inclusion of participants at baseline and follow-up of the CRONICAS Cohort Study 2010–2013. *Incidence calculations were performed separately for each outcome; therefore numbers represent those excluded from calculations for the specified outcome only (T2DM, type 2 diabetes mellitus)

Table 1 Baseline participant characteristics of Peruvian adults in the CRONICAS Cohort Study 2010–2013 (n 3280) and their distribution according to study site

T2DM, type 2 diabetes mellitus.

* Values do not add up due to missing data.

High BMI defined as ≥25 kg/m2 to incorporate both overweight and obesity.

Dietary patterns

The four-class latent class analysis model was the preferred model to take forward in the analysis (see online supplementary material, Supplemental Fig. S1) based on optimal Bayesian information criterion, Akaike information criterion and entropy values, and pattern interpretability. Dietary patterns were determined from the percentage distributions of the frequency of intake categories (none, low, moderate, high) of each food group within each class (Supplemental Fig. S2). Table 2 shows the summarised dietary intake patterns which can be labelled as follows based on the stage of the nutrition transition reflected by the diet: ‘stage 1’, traditional diet consisting of high-starch and low-fat foods with low diversity of food groups consumed; ‘stage 2’, elements of the traditional diet remain with increasing range of high-fibre foods as well as high-fat foods consumed; ‘stage 3’, higher in processed foods and animal products that contain high fat and sugar, with less of the traditional high-fibre foods; and ‘stage 4’, with high diversity of food group consumption including high-fibre, high-fat and high-sugar foods, indicative of a fully transitioned diet.

Table 2 Summarised food group dietary patterns, obtained using latent class analysis, among Peruvian adults in the CRONICAS Cohort Study 2010–2013 (n 3280). Percentages are the conditional probability of a class member falling into the stated category of intake frequency of the stated food group

UPF, ultra-processed foods.

In Fig. 2, we show the distribution of the dietary patterns among the study areas. In Lima 62·6 % of the study population were likely to fall within the stage 4 dietary pattern. In urban Puno, the stage 2 pattern had the highest prevalence at 52·1 %. In rural Puno the majority of the study population were in either the stage 2 (48·1 %) or stage 1 (43·5 %) pattern. In Tumbes, the stage 3 pattern was the one into which the majority of the population (81·4 %) were likely to fall.

Fig. 2 Overall dietary pattern (, stage 1; , stage 2; , stage 3; , stage 4) prevalence among Peruvian adults in the CRONICAS Cohort Study 2010–2013 (n 3280) and distribution according to study site

Site-specific dietary pattern analysis was also performed. However, characteristics of the site-specific dietary patterns did appear to reflect the patterns obtained by dietary pattern analysis of the cohort in its entirety (see online supplementary material, Supplemental Table S2). Therefore, the overall dietary patterns were used in further analyses rather than the site-specific patterns.

Association of dietary patterns with cardiometabolic outcomes

A total of 833 (25·5 %) study participants had hypertension at baseline, 272 (8·7 %) had T2DM and 2208 (71·0 %) had BMI ≥25 kg/m2. Prevalence of each outcome varied by dietary pattern (Table 3): prevalence of hypertension and T2DM was highest among participants with the stage 3 dietary pattern. High BMI was more prevalent in those with the stage 4 (76·6 %), stage 3 (75·1 %) and stage 2 (67·7 %) dietary patterns than in those with the stage 1 pattern (41·3 %). Participants with the stage 1 dietary pattern had the lowest prevalence of all three outcomes. Although numbers were small, some site-specific patterns were observed within Lima, where prevalence of hypertension was highest among those with the stage 3 dietary pattern (33·6 %; see online supplementary material, Supplemental Table S3).

Table 3 Baseline prevalence of cardiometabolic outcomes by dietary pattern among Peruvian adults in the CRONICAS Cohort Study 2010–2013 (n 3280)

T2DM, type 2 diabetes mellitus.

* High BMI defined as ≥25 kg/m2 to incorporate both overweight and obesity.

Significance test derived from Pearson’s χ 2 test.

Prevalence rates

Crude and adjusted models of the association of dietary patterns with prevalence of cardiometabolic outcomes are shown in Table 4. The covariates ‘site’ and ‘level of urbanisation’ were introduced separately into the models, however made little difference to model fit; hence the simpler model without these covariates was selected to report results. There was no evidence of effect modification between either of these two covariates and other potential confounders.

Table 4 Association between dietary pattern and hypertension, type 2 diabetes mellitus (T2DM) and high BMI at baseline and follow-up among Peruvian adults in the CRONICAS Cohort Study 2010–2013. Average follow-up period 30 months

T2DM, type 2 diabetes mellitus; PR, prevalence ratio; IRR, incidence risk ratio.

Results with P < 0·05 shown in bold.

* High BMI defined as ≥25 kg/m2 to incorporate both overweight and obesity.

Adjusted for age, sex, education level, currently working, socio-economic status, smoking, heavy drinking, physical activity, watching television and high BMI.

Adjusted for age, sex, education level, currently working, socio-economic status, smoking, heavy drinking, physical activity and watching television.

Overall, the stage 3 diet was associated with the highest burden of disease in the cardiometabolic outcomes and was therefore used as a reference diet to estimate prevalence ratios.

Hypertension

After adjusting for potential confounders, those with the stage 1 diet were shown to be 39 % less likely to have hypertension compared with those with the stage 3 diet (PR = 0·61; 95 % CI 0·46, 0·81); those with a stage 2 diet were shown to be 43 % less likely to be hypertensive as compared with the stage 3 group (PR = 0·57; 95 % CI 0·48, 0·68). Within Lima, a reduction in prevalence of approximately 30 % was reported for those with the stage 4 diet (PR = 0·70; 95 % CI 0·58, 0·86) and the stage 2 diet (PR = 0·69; 95 % CI 0·51, 0·93) as compared with the stage 3 reference diet. In rural Puno, the stage 1, 2 and 4 dietary patterns were associated with a much lower prevalence of hypertension (stage 1: PR = 0·08; 95 % CI 0·02, 0·27; stage 2: PR = 0·05; 95 % CI 0·01, 0·19; stage 4: PR = 0·16; 95 % CI 0·05, 0·52) compared with the stage 3 dietary pattern (see online supplementary material, Supplemental Table S4). However, study power was lower when running the models by site, creating more uncertainty in the estimates.

Type 2 diabetes mellitus

The prevalence of T2DM was almost three times higher in those with the stage 3 diet compared with those with the stage 1 diet (PR = 0·29; 95 % CI 0·09, 0·99). There was no statistically significant difference in prevalence of T2DM between the two other diets (stage 2 and 4); however, a (non-significant) trend could be observed in both overall and site-specific data sets in which the lowest prevalence of T2DM was found among those with a stage 1 diet followed by stage 2, stage 4 and stage 3.

High BMI

Those with the stage 1 diet had the lowest prevalence of high BMI, which was 37 % lower (PR = 0·63; 95 % CI 0·55, 0·72) in comparison to those with the stage 3 reference diet.

Incidence rates

A total of 2669 (81·4 %) participants completed follow-up of blood pressure; 2536 (76·9 %) for blood sugar; and 2619 (79·8 %) completed follow-up of BMI. Of those who returned for follow-up, 669 were excluded from hypertension incidence calculations, 212 from T2DM incidence calculations and 1925 from incidence of high BMI calculations due to pre-existing diagnosis at baseline. Overall, 203 new cases of hypertension were identified, 111 new cases of T2DM and 139 new cases of overweight and obesity.

Incidence of hypertension was highest among individuals consuming the stage 3 dietary pattern (63·75 per 1000 person-years; 95 % CI 52·40, 77·55). In comparison to this diet, a reduction in hypertension incidence of 66, 56 and 31 % was found for those with the stage 1, 2 and 4 diets, respectively, after adjustment for confounders (stage 1: IRR = 0·34; 95 % CI 0·18, 0·64; stage 2: IRR = 0·44; 95 % CI 0·29, 0·66; stage 4: IRR = 0·69; 95 % CI 0·51, 0·94). Incidence of T2DM was highest among those consuming the stage 3 dietary pattern (24·92 per 1000 person-years; 95 % CI 18·89, 32·89), and incidence of high BMI was highest among those with the stage 2 pattern (133·77 per 1000 person-years; 95 % CI 96·49, 185·44). There was no evidence for a difference in the risk of T2DM or high BMI among the dietary patterns.

Discussion

The present study demonstrates an association between food group consumption patterns and hypertension, T2DM and high BMI in a cohort of Peruvian adults, and that the distribution of these patterns differs between the diverse geographic areas of Peru. An interesting trend in prevalence of cardiometabolic outcomes among the different diets was seen, with prevalence lowest in the more traditional stage 1 and 2 diets, and higher in the stage 3 and 4 dietary patterns, which contain more processed foods and animal products. Thus, our results support the use of dietary pattern analysis in furthering understanding of the impact of dietary risk factors in NCD development.

Although no dietary diversity scoring was undertaken within the study, and therefore no formal conclusions on the impact of dietary diversity can be drawn, the dietary patterns most prevalent in highly urbanised Lima and semi-urban Tumbes incorporated higher consumption of a greater number of food groups in comparison to highland Puno, inclusive of ultra-processed foods (UPF), animal products, refined grains, seafood and fruit. This is in keeping with the benefits of greater availability and affordability of such products that result from urbanisation. Dietary diversity is encouraged in public health messages to ensure requirements of essential nutrients are met(Reference Steyn, Nel and Nantel30); however, health outcomes may differ depending on the nature of the foods comprising the different interpretations of diversity(Reference de Oliveira Otto, Padhye and Bertoni31). For example, patterns of consumption typical of a Western diet high in a range of animal products, refined carbohydrates and processed foods are linked to higher rates of NCD and NCD-related mortality, whereas diets high in diverse fruits, vegetables and whole grains and low in processed foods are associated with better outcomes(Reference Heidemann, Schulze and Franco32Reference van Dam, Rimm and Willett35). Consistent with this, results presented here show that the diets with comparatively higher intake frequency of UPF, refined grains and animal products were associated with greater prevalence of hypertension, T2DM and high BMI, and incidence of hypertension.

Rates of sale of UPF products in Peru were among the fastest growing in Latin America from 2000 to 2013, and fast-food purchases (typically high in refined carbohydrates and processed meat) doubled during this time making Peru one of the biggest consumers of fast foods in the region(36). Consumption of UPF is associated with an increase in BMI(Reference Asfaw37), higher prevalence of obesity(Reference Canella, Levy and Martins38) and incidence of hypertension(Reference Mendonca, Lopes and Pimenta39). Sugar-sweetened beverages, a form of UPF, are the preferred choice of drink by an alarming amount throughout the country(40) and their consumption is also associated with obesity and T2DM(Reference Hu and Malik41, Reference Schulze, Manson and Ludwig42). In Peru, sugar-sweetened beverage consumption is much higher in urban and coastal areas than in rural or highland parts of the country(Reference Lazaro43), giving further support to the finding of the present study that the dietary patterns more prevalent in the urban and semi-urban coastal settings had higher risk of cardiometabolic outcomes.

Interestingly, of the dietary patterns more in line with the typical Western diet, the stage 3 pattern most consumed in Tumbes was associated with a higher prevalence of the cardiometabolic outcomes than the stage 4 pattern more prevalent in Lima. This is in keeping with previous studies demonstrating that the semi-urban coastal area of Tumbes had a worse cardiometabolic risk profile than the urban capital Lima(Reference Bernabé-Ortiz, Carrillo-Larco and Gilman10, Reference Bernabe-Ortiz, Carrillo-Larco and Gilman11); but is somewhat surprising given the extensive research linking degree of urbanisation to obesity and NCD risk, especially in low- and middle-income country settings(Reference Popkin, Adair and Ng44, Reference Albala, Vio and Kain45). As the predominant dietary pattern of Lima had a higher comparative frequency of fruit and vegetable intake, it may be that a more diverse diet inclusive of these foods confers some protection. This can be supported by many previous studies using dietary pattern analysis to examine the relationship between diet and NCD risk(Reference Joy, Green and Agrawal24, Reference Heidemann, Schulze and Franco32, Reference van Dam, Rimm and Willett35, Reference Ganguli, Das and Saha46).

The predominant dietary pattern of Tumbes was the only pattern with high frequency of fish and seafood consumption, consistent with Tumbes being a coastal area known for its seafood dishes. Fish, in particular oily fish, are an important source of n-3 fatty acids which are known to have cardiovascular and anti-inflammatory benefits, and accordingly fish consumption has been associated with lower cardiovascular risk profiles when included as part of the ‘healthier’ diet in dietary pattern studies(Reference Heidemann, Schulze and Franco32, Reference van Dam, Rimm and Willett35). However, this effect may depend on the type of fish and how it is cooked, as well as other components of the diet, such as fruits, vegetables and whole grains. In Tumbes the population may eat healthy fish; however, the diet does not appear to be complemented by a high intake of vegetables and whole grains, and the potential benefits may be limited by consumption of UPF, as increased consumption of UPF has previously been associated with a greater risk of hypertension(Reference Mendonca, Lopes and Pimenta39). As the dietary patterns in the current study are model-driven based on consumption frequency of multiple food groups, it is difficult to distinguish the negative effect of the high salt and saturated fat content of the UPF from the potentially positive effect of fish, or absent effect of other components.

The dietary pattern with the most favourable cardiometabolic risk profile, the stage 1 diet, was most widely consumed in rural Puno. Incidence of hypertension and T2DM are lowest at this highland site in comparison to Lima and Tumbes(Reference Bernabé-Ortiz, Carrillo-Larco and Gilman10, Reference Bernabe-Ortiz, Carrillo-Larco and Gilman12), which would be consistent with a diet lower in UPF and higher in vegetables. Low energy intake suggested by the low dietary diversity may also help to explain the lower incidence of T2DM and hypertension, for which overweight and obesity are risk factors(Reference Guh, Zhang and Bansback47). A previous study in Puno reported a mean energy intake of 5439 kJ/d (1300 kcal/d)(Reference McCloskey, Tarazona-Meza and Jones-Smith18), in keeping with the lower prevalence of overweight and obesity associated with the dietary patterns commonly consumed in this high-altitude area. While a low cardiometabolic risk profile is encouraging, the low mean energy intake is likely to indicate a high level of undernutrition and micronutrient deficiency in the area, especially if there is a low diversity of food groups consumed as our findings suggest. In the 2012 Peruvian nutrition transition mapping, Puno was one of the many areas undergoing rapid nutrition transition and experiencing the double burden of nutrition-related disease(Reference Chaparro and Estrada4). Programmes and policies in Peru therefore face the challenge of addressing micronutrient deficiency by increasing availability and affordability of a diverse range of foods associated with reduced health risk, such as fruits, vegetables and whole grains(Reference Heidemann, Schulze and Franco32, Reference van Dam, Rimm and Willett35, Reference Ganguli, Das and Saha46), while being careful not to contribute to the increasing burden of obesity and NCD by promotion of high-sugar and high-fat foods.

The exact length of time for dietary changes to be reflected in clinical outcomes is unknown, therefore longitudinal analysis was performed to explore the role of diet as a risk factor for cardiometabolic outcomes over time. However, results at follow-up were less robust than for cross-sectional analysis due to a relatively short follow-up period and smaller sample size. Nevertheless, the stage 3 diet mostly consumed in semi-urban Tumbes was associated with the highest incidence of hypertension, consistent with Tumbes having the highest incidence of hypertension among the study sites in a previous study(Reference Bernabé-Ortiz, Carrillo-Larco and Gilman10). This suggests an interplay between diet, location and chronic disease, further exploration of which was limited in the current study by paucity of data when individually analysing the association of dietary patterns with the outcomes in each site but could be the focus of future studies.

The present study is the first to use latent class analysis for the investigation of dietary patterns in Peru and substantially adds to previous studies by examining the prospective relationship of diet with disease burden in regions of the country. In support of studies done elsewhere, the study has found an association between dietary pattern and prevalence of hypertension, T2DM(Reference Daniel, Prabhakaran and Kapur48) and obesity(Reference Joy, Green and Agrawal24, Reference Ganguli, Das and Saha46, Reference Satija, Hu and Bowen49, Reference Pou, del Pilar Díaz and De La Quintana50). Use of this method in the investigation of diet as a risk factor for disease has allowed for examination of the effect of diet as a whole, rather than focusing on specific nutrients and food groups taken out of the context of how food is consumed.

However, there are a number of limitations to consider when interpreting the present findings. First, the results may have been subject to selection bias due to loss to follow-up and missing data. Although sample size was large, final numbers in the analysis of the follow-up data were small due to loss to follow-up, missing data and exclusion of those who already had the outcomes of interest (see Fig. 1). Second, assessment of diet relied on self-reporting in response to a short FFQ, which can lead to non-differential measurement bias that may weaken the strength of the associations; therefore the estimates presented here may be conservative. Third, energy intake was not adjusted for, nor was portion size taken into account, which can make the results of dietary pattern analysis easier to interpret(Reference Fahey, Thane and Bramwell27). Latent class analysis was therefore based on frequency of daily consumption rather than quantity in this case. While not able to give an accurate quantitative description of the diet, this did give a qualitative indication of the composition of the diet. Fourth, ethnicity was not included in the final adjusted model due to collinearity with other risk factors. This may have resulted in a portion of the genetic component of disease risk being unaccounted for, leading to an overestimation of the association between diet and the cardiometabolic outcomes. However, the role of genetics in the present study may be relatively small, as participants were mainly of native or mixed native background and therefore likely to have shared ancestry(Reference Mao, Bigham and Mei51). Lastly, this cohort had a short follow-up period, though because the exact length of time for development of chronic diseases to occur in response to diet is unknown, our results still provide interesting and relevant findings.

Conclusion

In conclusion, the present study revealed clear dietary patterns indicative of consumption habits and diet composition in four different settings in Peru. The distribution of dietary patterns was found to closely reflect the distribution of disease risk profile among the settings, demonstrating that diet may explain some of the variation in disease prevalence among the different areas in addition to urbanisation and socio-economic status, acknowledging that these are all closely linked. Characterising local diets can contribute towards development of locally relevant guidelines for health promotion and disease prevention, for example by discouraging the consumption of commonly eaten foods associated with adverse health outcomes (such as through tax strategies), and informing policies to improve access to a diverse range of food groups associated with lower disease risk.

Acknowledgements

Acknowledgements: The authors would like to thank Dr Rosemary Green of the London School of Hygiene & Tropical Medicine for her advice and guidance on the use of Mplus for latent class analysis. Thanks are also extended to the CRONICAS staff members and field teams for their collection and provision of the data. Financial support: This research received no specific grant from any funding agency in the public, commercial or not-for-profit sectors. Conflict of interest: None. Authorship: The research question was formulated by C.A.-C. in consultation with P.S. and J.J.M. The data analysis was carried out primarily by C.A.-C. with guidance on the statistical analysis strategy from P.S. and advice on the data set and aspects of the CRONICAS Cohort Study from R.M.C.-L. The article was written by C.A.-C. incorporating contributions from P.S., J.J.M. and R.M.C.-L. Contributions to writing were also provided by A.B.-O. and W.C., in addition to guidance on statistical methods and analysis. Ethics of human subject participation: This study was conducted according to the guidelines laid down in the Declaration of Helsinki and all procedures involving research study participants were approved by the Ethics Committees at Universidad Peruana Cayetano Heredia and A.B. PRISMA in Lima, Peru, and the Institutional Review Board at the Johns Hopkins Bloomberg School of Public Health, in Baltimore, MD, USA. Verbal informed consent was obtained from all participants.

Supplementary material

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Figure 0

Fig. 1 Inclusion of participants at baseline and follow-up of the CRONICAS Cohort Study 2010–2013. *Incidence calculations were performed separately for each outcome; therefore numbers represent those excluded from calculations for the specified outcome only (T2DM, type 2 diabetes mellitus)

Figure 1

Table 1 Baseline participant characteristics of Peruvian adults in the CRONICAS Cohort Study 2010–2013 (n 3280) and their distribution according to study site

Figure 2

Table 2 Summarised food group dietary patterns, obtained using latent class analysis, among Peruvian adults in the CRONICAS Cohort Study 2010–2013 (n 3280). Percentages are the conditional probability of a class member falling into the stated category of intake frequency of the stated food group

Figure 3

Fig. 2 Overall dietary pattern (, stage 1; , stage 2; , stage 3; , stage 4) prevalence among Peruvian adults in the CRONICAS Cohort Study 2010–2013 (n 3280) and distribution according to study site

Figure 4

Table 3 Baseline prevalence of cardiometabolic outcomes by dietary pattern among Peruvian adults in the CRONICAS Cohort Study 2010–2013 (n 3280)

Figure 5

Table 4 Association between dietary pattern and hypertension, type 2 diabetes mellitus (T2DM) and high BMI† at baseline and follow-up among Peruvian adults in the CRONICAS Cohort Study 2010–2013. Average follow-up period 30 months

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