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Length of urban residence and obesity among within-country rural-to-urban Andean migrants

Published online by Cambridge University Press:  14 September 2015

Daniel A Antiporta*
Affiliation:
CRONICAS Center of Excellence in Chronic Diseases, Universidad Peruana Cayetano Heredia, Av. Armendáriz 497, Miraflores, Lima 18, Peru
Liam Smeeth
Affiliation:
CRONICAS Center of Excellence in Chronic Diseases, Universidad Peruana Cayetano Heredia, Av. Armendáriz 497, Miraflores, Lima 18, Peru Faculty of Epidemiology and Population Health, London School of Hygiene and Tropical Medicine, London, UK
Robert H Gilman
Affiliation:
CRONICAS Center of Excellence in Chronic Diseases, Universidad Peruana Cayetano Heredia, Av. Armendáriz 497, Miraflores, Lima 18, Peru Asociación Benéfica PRISMA, Lima, Peru Program in Global Disease Epidemiology and Control, Department of International Health, Bloomberg School of Public Health, Johns Hopkins University, Baltimore, MD, USA
J Jaime Miranda
Affiliation:
CRONICAS Center of Excellence in Chronic Diseases, Universidad Peruana Cayetano Heredia, Av. Armendáriz 497, Miraflores, Lima 18, Peru School of Medicine, Universidad Peruana Cayetano Heredia, Lima, Peru
*
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Abstract

Objective

To evaluate the association between length of residence in an urban area and obesity among Peruvian rural-to-urban migrants.

Design

Cross-sectional database analysis of the migrant group from the PERU MIGRANT Study (2007). Exposure was length of urban residence, analysed as both a continuous (10-year units) and a categorical variable. Four skinfold site measurements (biceps, triceps, subscapular and suprailiac) were used to calculate body fat percentage and obesity (body fat percentage >25% males, >33% females). We used Poisson generalized linear models to estimate adjusted prevalence ratios and 95 % confidence intervals. Multicollinearity between age and length of urban residence was assessed using conditional numbers and correlation tests.

Setting

A peri-urban shantytown in the south of Lima, Peru.

Subjects

Rural-to-urban migrants (n 526) living in Lima.

Results

Multivariable analyses showed that for each 10-year unit increase in residence in an urban area, rural-to-urban migrants had, on average, a 12 % (95 % CI 6, 18 %) higher prevalence of obesity. This association was also present when length of urban residence was analysed in categories. Sensitivity analyses, conducted with non-migrant groups, showed no evidence of an association between 10-year age units and obesity in rural (P=0·159) or urban populations (P=0·078). High correlation and a large conditional number between age and length of urban residence were found, suggesting a strong collinearity between both variables.

Conclusions

Longer lengths of urban residence are related to increased obesity in rural-to-urban migrant populations; therefore, interventions to prevent obesity in urban areas may benefit from targeting migrant groups.

Type
Research Papers
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
Copyright © The Authors 2015

Overweight and obesity currently affect more than 50 % of the female population in Peru( 1 ), a country undergoing an epidemiological and nutritional transition, especially in urban areas( Reference Popkin 2 Reference Chaparro and Estrada 4 ). This transition has not only affected the urban population but also the rural-to-urban migrant population with residence in peri-urban areas of Peru( Reference Miranda, Gilman and Smeeth 5 ). The living conditions facing many rural-to-urban migrants, including poverty, restricted access to health care( Reference García 6 Reference Islam and Azad 8 ) and the acculturation process, can increase their chances to develop obesity, diabetes and other non-communicable diseases compared with non-migrants( Reference Kaushal 9 , Reference Oster and Yung 10 ). Different techniques other than BMI, such as bioelectrical impedance, waist-to-hip ratio and skinfold measurements, provide a more detailed assessment of the excess of body fat mass( Reference Kotler, Burastero and Wang 11 Reference Fuller, Jebb and Laskey 13 ).

Previous studies that measured the effect of the length of urban residence among migrants and the risk of obesity have shown conflicting results. Some studies demonstrated a significant positive effect( Reference Goel, McCarthy and Phillips 14 , Reference Kaplan, Huguet and Newsom 15 ) whereas others did not( Reference Gutierrez-Fisac, Marin-Guerrero and Regidor 16 , Reference Barcenas, Wilkinson and Strom 17 ). One possible explanation for these conflicting data is the potential multicollinearity existing between length of residence in an urban area, age at first migration and age, which has not been properly explored( Reference Roshania, Narayan and Oza-Frank 18 , Reference Olivares-Navarrete, Hamelin and Jacques 19 ).

Using skinfold measurements, we assessed the relationship between the length of residence in an urban area and obesity in rural-to-urban migrants from the PERU MIGRANT Study( Reference Miranda, Gilman and Garcia 20 ), including the examination of multicollinearity between three time-related factors: length of urban residence, age of first migration and age.

Methods

Study design

The present study is a cross-sectional database analysis of the PERU MIGRANT Study. The PERU MIGRANT Study was a population-based, age- and sex-stratified cross-sectional study with the objective of characterizing differences in cardiovascular risk profiles in rural, rural-to-urban migrant and urban groups. Details and main findings of the PERU MIGRANT Study have been published elsewhere( Reference Miranda, Gilman and Smeeth 5 , Reference Miranda, Gilman and Garcia 20 ).

Participants

All participants in the PERU MIGRANT Study were ≥30 years old. For the main analysis we only included data from rural-to-urban migrants: people born in an Andean rural area, San José de Secce in Ayacucho, who migrated to urban areas and are currently living in a shantytown called Papas de San Juan de Miraflores in Lima, Peru’s capital city located in the coastal region. To ensure consistency with age intervals in the Durnin and Womersley equation for the assessment of body fat percentage( Reference Durnin and Womersley 21 ), we excluded males aged >72 years (n 19) and females aged >68 years (n 32).

Variables of interest

The exposure, length of residence in urban areas, was assessed in the migrant population by the question ‘On average, how many years have you lived in an urban setting?’ First, we used the variable as a scaled continuous variable where one unit was equal to 10 years of urban residence. We also categorized this variable into four groups: <20 years, 20–29 years, 30–39 years and ≥40 years.

Obesity was calculated using the sum of four skinfold sites: biceps, triceps, subscapular and suprailiac. Evaluators were health professionals trained in anthropometric measurements using skinfolds; they were standardized using the kappa statistic (κ≥0·8). Each skinfold site was measured in triplicate to the nearest 0·2 mm using a Holtain Tanner/Whitehouse Skinfold Caliper; the average of those measurements was recorded as the final result. The Durnin and Womersley( Reference Durnin and Womersley 21 ) equation was used to calculate specific body density by age and sex, and the Siri specific equation was used to calculate body fat percentage( Reference Martín, Gómez and Antoranz 22 ). The cut-off points used for the classification of obesity, our outcome of interest, were established by the Spanish Society for Obesity Studies( 23 ) and were sex-specific: >25 % for males and >33 % for females( 23 ). In addition to skinfolds and given the familiarity with BMI categories, we also considered overweight (BMI=25·0–29·99 kg/m2) and obesity (BMI≥30·0 kg/m2) as secondary outcomes.

Other variables of interest included were age, sex and socio-economic factors, the latter being assessed through education level and, separately, using a deprivation index that aggregated education level, household income, number of people per room and asset possession( Reference Gordon 24 ). Additionally, to control for the possible effects of acculturation to a Western lifestyle( Reference Roshania, Narayan and Oza-Frank 18 ) on body fat mass, we also adjusted for self-reported current smoking status (yes, no), alcohol drinking (never, ≤1 time/month and ≥2 times/month) and physical activity (low, moderate and high level using individual MET scores, where MET=metabolic equivalents of task). Details on the generation and aggregation of these variables are reported in previous PERU MIGRANT Study publications( Reference Miranda, Gilman and Smeeth 5 , Reference Miranda, Gilman and Garcia 20 ).

Statistical analysis

The association between length of urban residence, both as a continuous and a categorical exposure, and obesity was assessed by Poisson generalized linear models with robust variance to calculate prevalence ratios (PR) and 95 % confidence intervals controlling for potential confounding factors( Reference Barros and Hirakata 25 ).

We conducted the analyses using two different models: (i) Model A included length of urban residence adjusted by sex and age at first migration; (ii) Model B adjusted for sex, age at first migration, deprivation index, education level, physical activity, smoking status and alcohol consumption. In the analysis of the exposure as a categorical variable, both models used the <20 years of length of urban residence as the reference group. These analyses were repeated for the secondary outcomes based on BMI categories using a multinomial logistic regression to allow comparisons between overweight and obesity against the normal category as the base outcome; thus relative prevalence ratios were calculated for each category of BMI except for the underweight population (n 3) which was excluded from latter analyses.

Correlation between length of urban residence (exposure) and age, as well as age and the sum of age at first migration and length of urban residence, was explored using Spearman tests. To explore multicollinearity between length of urban residence and time-related variables, we also calculated an additional model including length of urban residence, age at first migration and current age. This was done because in the case of rural-to-urban migrant populations the age of an individual, in most cases, corresponds to the sum of age at first migration and time in urban areas( Reference Roshania, Narayan and Oza-Frank 18 ).

To avoid over-adjustment and the introduction of collinearity with age in our associations of interest, we explored multicollinearity using post-regression analysis (Model C). We conducted a post-regression diagnosis adding age into Model B using the variance inflation factor (VIF), the correlation matrix of coefficients and the independence coefficient matrix( Reference Belsley, Kuh and Welsch 26 , Reference Dormann, Elith and Bacher 27 ). Conditional numbers derived from the matrix of independent variables greater than 30 indicate serious problems of multicollinearity in the regression models( Reference Belsley, Kuh and Welsch 26 ), as do VIF values greater than 10( Reference Chatterjee, Hadi and Price 28 ).

For comparison purposes, and given the time-dependent nature of our association of interest, a sensitivity analysis was conducted in non-migrant groups to explore the effect of age, as a continuous variable in 10-year units, on obesity using the same regression equations as in Model B by replacing age at first migration and length of urban residence for age.

All analyses were conducted using the statistical software package STATA version 12 for Windows.

Results

Participants and characteristics of the study population

We included 526 rural-to-urban migrants in the analysis, 52·3 % female, mean age 46·1 (sd 9·87) years (range 30–71 years), mean age of first migration 14 (sd 6·91) years (range 0–50 years), mean length of residence in urban areas 31·5 (sd 9·52) years (range 7–58 years). The overall prevalence of obesity according to the Spanish Society for Obesity Studies was 78 % (n 412). Table 1 shows the different sociodemographic characteristics of the rural-to-urban migrant population, including missing data in each category.

Table 1 Sociodemographic characteristics of rural-to-urban migrants according to obesity as assessed by skinfolds, PERU MIGRANT Study, 2007

* Deprived household was assessed by the deprivation index, an index that includes education level, household income, the number of people per room and asset possession.

P values determined by χ 2 tests.

P values determined by t test of means.

Urban residence and obesity

Migrant groups with longer time of urban residence showed a higher prevalence of obesity than the reference group (P for trend=0·001), and it was shown predominantly in the female population (P<0·001). On the bivariate analysis, there was evidence of an association between obesity and age, education level and smoking status, but not with physical activity, deprivation index or alcohol consumption (Table 1).

Multivariable Poisson linear analyses showed that for each increase in 10-year unit of residence in an urban area, rural-to-urban migrants had 12 % higher prevalence of obesity (Table 2).

Table 2 Prevalence ratios and adjusted prevalence ratios for the association between length of residence in urban area and obesity as assessed by skinfolds, PERU MIGRANT Study, 2007

PR, prevalence ratio; Ref. reference category.

Model A shows adjusted PR from the multivariable Poisson generalized linear model that included sex and age at first migration.

Model B is equal to Model A adjusted also by deprivation index, education level, smoking status, physical activity and alcohol consumption.

When analysed in categories of duration of residence in urban areas, and compared with the <20 years reference group, the groups with 30–39 years and ≥40 years of urban residency had consistently higher prevalence of obesity. This association became stronger with further adjustment, from 26 % higher in the crude model to 39 % in the fully adjusted model (Model B) for the group with 30–39 years of urban residency. This pattern was not observed in the category of 20–29 years of urban residency (Table 2).

Sensitivity analyses conducted in non-migrant groups showed no evidence of an association between age and obesity in rural (P=0·159) or urban groups (P=0·078). Data from a total of 184 rural and 182 urban participants were analysed. For each 10-year increase in age, PR estimates were 1·18 (95 % CI 0·90, 1·54) in the rural group and 1·05 (95 % CI 0·99, 1·10) in the urban group (data not shown).

Multicollinearity evaluation

Correlation between age and length of urban residence was suggested by the graph matrix (see online supplementary material, Supplemental Fig. 1) and was confirmed with Spearman’s tests between length of urban residence and age (r=0·73), as well as age and the sum of length of residence and age at first migration (r=0·96).

We also analysed the effects of age in the association of interest. Adding age to the models weakened all the estimates, and all of the associations between length of urban residence and the obesity, as described before, became non-significant (see online supplementary material, Supplemental Table 1, Model C). The correlation matrix of coefficients resulted in a high rho coefficient (0·87) and a large conditional number shown in the matrix of independent variables (44·41) strongly linked with age (0·99) and length of urban residence (0·93). Furthermore, the mean VIF for Model C was 33·45; age (VIF=196·5) and length of urban residence (VIF=98·9) VIF values suggested a high multicollinearity effect.

Our evaluation of multicollinearity using post-regression diagnosis such as the VIF, correlation matrix and conditional numbers reinforced the approach followed in Model B and the estimates obtained from it as our main findings.

Secondary outcomes by BMI categories

Obese participants, as per skinfolds, had a higher mean BMI than non-obese participants (28·1 v. 23·1 kg/m2, P<0·001); the kappa estimate showed moderate agreement between obesity by skinfolds and BMI (κ=42·59 %, P<0·001). BMI categories, shown in Table 1, revealed that 99·1 % of participants classified as obese by BMI, were classified as obese by the methodology used in our study. Also, half of those in the normal BMI category were deemed obese by skinfolds definition.

Table 3 displays results from multinomial regression analysis by BMI categories, using the normal category as the base outcome. Multivariable analysis of length of urban residence as continuous 10-year units showed no association in both overweight and obesity outcomes, as demonstrated by estimates spanning the value of 1. Whereas no evidence of a difference was displayed in prevalence of overweight among length of urban residence categories, obesity prevalence among categories differed and was greater than 1 shown in the reference group (<20 years).

Table 3 Prevalence ratios and adjusted prevalence ratios for the associations between length of residence in urban area and overweight and obesity as assessed by BMI, PERU MIGRANT Study, 2007

PR, prevalence ratio; Ref. reference category.

Model A shows adjusted relative PR from multinomial logistic regression that included sex and age at first migration.

Model B is equal to Model A adjusted also by deprivation index, education level, smoking status, physical activity and alcohol consumption.

Significant associations are shown in bold font.

Discussion

Our results confirmed a trend of an increase of obesity prevalence according to the number of years of residence in urban areas among Peruvian rural-to-urban migrants. The relationship became stronger when adjusted for sex, age at first migration and other important confounding factors, such as deprivation index, education level, physical activity, smoking status and alcohol consumption.

On sensitivity analyses, this relationship was not observed in non-migrant groups, thus indicating that the effect observed can be ascribed to the migration experience. We also showed that migrant groups living in an urban area for more than 30 years have a 39 % higher prevalence of obesity when compared with migrants living in an urban area for less than 20 years. In our analysis of secondary outcomes by BMI, prevalence of obesity was much higher in those with longer years of urban residence. The relevance of this characterization of migration profiles relies on informing the design and targeting of obesity prevention interventions in similar groups.

Increased obesity risk in migrants compared with non-migrants, whether rural or urban populations, might lie in two important factors: rapid weight gain and acculturation. Childhood malnutrition is higher in deprived settings like rural areas or indigenous communities; this lack of nutrition during early periods of life is often followed by a rapid weight gain which is associated with obesity later in life( Reference Young, Johnson and Krebs 29 , Reference Stettler, Kumanyika and Katz 30 ). Additionally, urban areas offer obesogenic conditions (i.e. highly energy-dense foods or sedentary lifestyles) that can impact dietary patterns of migrant populations through the process of acculturation( Reference Arambepola, Allender and Ekanayake 31 Reference Fraser 33 ). Obesogenic conditions may accelerate weight gain during childhood and may increase the chances of obesity in adult populations proportionally with the length of urban residence.

The positive trend of an increase of obesity shown in migrants residing in urban areas for longer periods is consistent with the results of obesity risk in other studies( Reference Kaplan, Huguet and Newsom 15 , Reference Roshania, Narayan and Oza-Frank 18 , Reference Olivares-Navarrete, Hamelin and Jacques 19 , Reference Garnier, Ndiaye and Benefice 34 , Reference Kinra, Andersen and Ben-Shlomo 35 ). The risk for obesity has been shown in different settings for rural-to-urban migrants( Reference Garnier, Ndiaye and Benefice 34 Reference Gordon-Larsen, Harris and Ward 39 ), as well as for international migrants moving to the USA( Reference Goel, McCarthy and Phillips 14 , Reference Kaplan, Huguet and Newsom 15 , Reference Fu and VanLandingham 40 ) and Portugal( Reference Alkerwi, Sauvageot and Pagny 41 ). However, the magnitude of association reported varies among these studies and this issue might be related to the study design and methods of ascertainment of obesity. For instance, some studies used self-reported weight and height to calculate BMI( Reference Goel, McCarthy and Phillips 14 , Reference Gutierrez-Fisac, Marin-Guerrero and Regidor 16 , Reference Faskunger, Eriksson and Johansson 42 ), while others objectively measured weight and height( Reference Unwin, James and McLarty 37 , Reference Alkerwi, Sauvageot and Pagny 41 ).

In using the sum of four skinfolds and the Siri age- and sex-specific equation to calculate the percentage of body fat mass, we added a more sensitive measurement of obesity( Reference Martín, Gómez and Antoranz 22 , Reference Ketel, Volman and Seidell 43 , Reference Glaner 44 ) since obesity has been defined by the WHO as the excess of fat in the human body( 45 ). In previous reports of the PERU MIGRANT Study( Reference Miranda, Gilman and Smeeth 5 , Reference Bernabe-Ortiz, Gilman and Smeeth 46 ), using BMI only, the prevalence of obesity and overweight in the rural-to-urban migrant group was reported at 21 % and 46 %, respectively. However, our study showed a prevalence of obesity of 78 % for the same group. Discrepancies in obesity prevalence calculated from BMI and skinfold measurements have been reported also by Minghelli et al., who found a threefold increase in the prevalence of obesity using the skinfold method compared with the BMI results( Reference Minghelli, Nunes and Oliveira 47 ). This was also evident in our classification of participants, as nearly half of those with normal BMI status were indeed classified as obese based on skinfold measurements. Furthermore, secondary analysis of overweight and obesity by BMI categories showed similar results to our main analysis. While overweight prevalence did not differ by length of urban residence groups, obesity prevalence by BMI was greatly different in all the groups compared with the reference group. These results reconfirm the heterogeneity of addressing obesity using different anthropometric techniques. In reality, for wider public health and obesity prevention efforts, our results signal to the potential to reach different magnitudes of effect in epidemiological associations.

A potential explanation for these discrepancies lies with BMI limitations, which have been related to both differential and non-differential misclassification errors regarding body fat percentage that can produce bias, even more if the BMI is based on self-reported weight and height( Reference Rothman 48 ). BMI does not disentangle the effect of fat mass, or adiposity, from lean mass since it takes whole body mass in the nutritional assessment( Reference Romero-Corral, Somers and Sierra-Johnson 49 , Reference Frankenfield, Rowe and Cooney 50 ). Furthermore, BMI is dependent on age, sex( Reference Gallagher, Visser and Sepulveda 51 ) and ethnicity( Reference Rush, Goedecke and Jennings 52 ) when related to body fat mass or adiposity, which can lead to the paradox of low BMI and excess of body fat mass( Reference Deurenberg-Yap, Schmidt and van Staveren 53 , Reference Kesavachandran, Bihari and Mathur 54 ). In our study, we found that almost half of the participants classified as normal by BMI status were classified as obese using skinfolds, which supports the statement that non-obese categories of BMI can hide high levels of adiposity or obesity( Reference Okorodudu, Jumean and Montori 55 ). Therefore, our study improves on the ascertainment of adiposity, taking advantage of skinfolds to characterize obesity through body fat mass. In so doing, our approach is better positioned to examine the relationship between within-country rural-to-urban migration and obesity.

Migrant studies have a challenge in disentangling the effects that length of urban residence and age at first migration have on different outcomes when age is present as a confounding factor because of the lack of independence between the latter and one of the first two( Reference Roshania, Narayan and Oza-Frank 18 , Reference Kinra 56 ). Some studies exclude age as part of the final regression equation without explanation( Reference Kaplan, Huguet and Newsom 15 , Reference Ebrahim, Kinra and Bowen 38 ), while in others the issue of multicollinearity is not assessed( Reference Olivares-Navarrete, Hamelin and Jacques 19 ). In our study, this lack of independence was shown through the strong correlation between age, length of urban residence and the sum of length of urban residence and age at first migration. Furthermore, our study found a high degree of multicollinearity between the three mentioned time-dependent variables: the mean VIF found in Model C was above 10 and even four times greater than the one reported in another migrant study about obesity risk in the USA( Reference Roshania, Narayan and Oza-Frank 18 ). In addition, we performed different analysis that confirmed this multicollinearity, such as correlation matrix of coefficients and the matrix of independent variables. After this detailed evaluation, it was decided to preserve Model B – the model including length of urban residence and age of first migration only – as the final multivariable regression model to be used. Despite these challenges, particularly in today’s world with ongoing patterns of human mobilization, migrants appear a suitable target group for obesity prevention initiatives( Reference Tovar, Renzaho and Guerrero 57 ).

The present study shows scientific evidence that strengthens the relationship between urban residence and obesity in rural-to-urban migrants. First, the study has calculated obesity using four skinfold sites and the sex- and age-specific Siri equation that is a more specific index of adiposity than the BMI alone( Reference Martín, Gómez and Antoranz 22 , Reference Ketel, Volman and Seidell 43 ). Furthermore, multicollinearity that is rarely assessed in migrant studies was evaluated and characterized in detail in the study; thus informing of potential explanations for non-significant associations between length of urban residence and obesity found in previous publications( Reference Gutierrez-Fisac, Marin-Guerrero and Regidor 16 , Reference Barcenas, Wilkinson and Strom 17 , Reference Dijkshoorn, Nierkens and Nicolaou 58 , Reference Park, Neckerman and Quinn 59 ). In addition, we had access to well-defined non-migrant groups, both in rural and in urban settings, that confirmed that the association of interest explored in the study was not explained by an age effect alone.

Some limitations in our study deserve consideration. Causality cannot be established because of the study’s cross-sectional nature; obesity, rapid weight gain or other risk factors could exist before migration. Yet, given the long-term exposure to urban environments, we could argue that migration precedes the development of obesity. Data from the PERU MIGRANT Study were collected in 2007 and obesity in rural areas has increased since then due to the nutritional transition; however, the increment from 2007 until 2011 was only 0·3 kg/m2 in the mean BMI in rural areas and differences with urban area still remained( Reference Loret de Mola, Quispe and Valle 60 ). Skinfold methods have shown difficulty in measuring skinfolds precisely in adults with high levels of obesity( Reference Gray, Bray and Bauer 61 ); consequently, each skinfold site was measured three times by trained professionals( Reference Miranda, Gilman and Garcia 20 ). Reproducibility of results based on skinfold measurements is less than for other anthropometric measurements( Reference Willett 62 ); however, minimum technical errors and coefficient variation can be achieved as shown in the HERITAGE Family Study( Reference Wilmore, Stanforth and Domenick 63 ). Although the Durnin and Wormsley equation has been recommended for Hispanic groups( Reference Martín, Gómez and Antoranz 22 ) and has been used as reference method for the construction of new prediction equations in the Chilean population( Reference Díaz and Espinoza-Navarro 64 ), it is important to highlight that racial differences in body composition can affect the precision of the estimates of body fat mass from prediction equations( Reference Cornier, Despres and Davis 65 ). Length of urban residence can serve as an indicator of acculturation( Reference Perez-Escamilla and Putnik 66 ) and might have an effect on lifestyles and dietary changes( Reference Popkin 2 , Reference Perez-Escamilla and Putnik 66 , Reference Lesser, Gasevic and Lear 67 ) which can increase the risk of obesity. Dietary information was not collected in the PERU MIGRANT Study; yet, given the long-term nature of our exposure–outcome association of interest, we anticipated that short-term dietary recall instruments could also have limitations. Furthermore, the migration patterns observed did not allow for more detailed assessments of shorter exposures to urban residency, i.e. a better characterization of the <20 years, used as reference group, which could certainly affect the magnitude of associations observed in our study. Last but not least, despite the effect of multicollinearity between age and length of residence, our regression Model B is not exempt from the residual effect of age in the hypothesized association.

Conclusion

Length of urban residence affects the health of rural-to-urban migrant populations in Peru, by increasing their obesity risk in accordance with the number of years living in urban areas. Therefore, rural-to-urban migrant populations should be targeted for nutritional interventions in order to avoid the increase of the obesity rate and its effects on health outcomes in Peru.

Acknowledgements

Acknowledgements: The authors would like to thank several colleagues from the CRONICAS Center of Excellence in Chronic Diseases at Universidad Peruana Cayetano Heredia (UPCH) including Mr Juan Carlos Bazo for critical input with the analysis, Dr Alana Lerner and Dr Daniel Lopez de Romaña for their editorial revisions. In addition, the authors would like to thank to the faculty members and students of the Master in Epidemiological Research Program at UPCH and the US Naval Medical Research Unit 6 (NAMRU-6) (NIH/FIC grant 2D43-TW007393) for their overall contributions, guidance and suggestions on the analysis plan, data analysis and manuscript preparation of this publication. This work was performed by D.A.A. in partial fulfillment of the requirements for an MSc degree in Epidemiologic Research from the UPCH. Financial support: The PERU MIGRANT Study was funded by the Wellcome Trust (grant number GR074833MA). D.A.A., J.J.M. and the CRONICAS Center of Excellence in Chronic Diseases at UPCH were supported by the National Heart, Lung, and Blood Institute (NHLBI), National Institutes of Health, Department of Health and Human Services (under contract number HHSN268200900033C). The Wellcome Trust and NHLBI had no role in the design, analysis or writing of this article. Conflict of interest: None. Authorship: D.A.A. conceived the idea of the study, contributed to the design of the study, undertook the statistical analysis and drafted the article. L.S., R.H.G. and J.J.M. designed and conducted the PERU MIGRANT Study. All authors provided critical inputs, contributed to the final article and approved its contents. Ethics of human subject participation: The present study was approved by the ethics committee at UPCH in Peru. In addition, ethical approval for the PERU MIGRANT Study was obtained from institutional review boards at UPCH in Peru and the London School of Hygiene and Tropical Medicine in the UK.

Supplementary Material

To view supplementary material for this article, please visit http://dx.doi.org/10.1017/S1368980015002578

References

1. Instituto Nacional de Estadística e Informática (2013) Encuesta Demográfica y de Salud Familiar ENDES 2012. Lima: INEI.Google Scholar
2. Popkin, BM (1999) Urbanization, lifestyle changes and the nutrition transition. World Dev 27, 19051916.CrossRefGoogle Scholar
3. Huynen, MM, Vollebregt, L, Martens, P et al. (2005) The epidemiologic transition in Peru. Rev Panam Salud Publica 17, 5159.CrossRefGoogle ScholarPubMed
4. Chaparro, MP & Estrada, L (2012) Mapping the nutrition transition in Peru: evidence for decentralized nutrition policies. Rev Panam Salud Publica 32, 241244.CrossRefGoogle ScholarPubMed
5. Miranda, JJ, Gilman, RH & Smeeth, L (2011) Differences in cardiovascular risk factors in rural, urban and rural-to-urban migrants in Peru. Heart 97, 787796.CrossRefGoogle Scholar
6. García, A (2007) The Peruvian Migration Phenomena. Gender and Development Program: Centro de Asesoría Laboral del Perú. http://www.caritas.pt/ficheiros/nacional/file/naranjo.pdf (accessed August 2015).Google Scholar
7. López-Acuña, D (August 2008) Overcoming migrants’ barriers to health. Bull World Health Organ 86, 583584.Google Scholar
8. Islam, M & Azad, K (2008) Rural and urban migration and child survival in urban Bangladesh: are the urban migrants and poor disadvantaged? J Biosoc Sci 40, 8396.CrossRefGoogle Scholar
9. Kaushal, N (2009) Adversities of acculturation? Prevalence of obesity among immigrants. Health Econ 18, 291303.CrossRefGoogle ScholarPubMed
10. Oster, A & Yung, J (2010) Dietary acculturation, obesity, and diabetes among Chinese immigrants in New York City. Diabetes Care 33, e109.CrossRefGoogle ScholarPubMed
11. Kotler, DP, Burastero, S, Wang, J et al. (1996) Prediction of body cell mass, fat-free mass, and total body water with bioelectrical impedance analysis: effects of race, sex, and disease. Am J Clin Nutr 64, 3 Suppl., 489S497S.CrossRefGoogle ScholarPubMed
12. Durnin, JV & Rahaman, MM (1967) The assessment of the amount of fat in the human body from measurements of skinfold thickness. Br J Nutr 21, 681689.CrossRefGoogle ScholarPubMed
13. Fuller, NJ, Jebb, SA, Laskey, MA et al. (1992) Four-component model for the assessment of body composition in humans: comparison with alternative methods, and evaluation of the density and hydration of fat-free mass. Clin Sci (Lond) 82, 687693.CrossRefGoogle ScholarPubMed
14. Goel, M, McCarthy, EP, Phillips, RS et al. (2004) Obesity among US immigrant subgroups by duration of residence. JAMA 292, 28602867.CrossRefGoogle ScholarPubMed
15. Kaplan, MS, Huguet, N, Newsom, JT et al. (2004) The association between length of residence and obesity among Hispanic immigrants. Am J Prev Med 27, 323326.CrossRefGoogle ScholarPubMed
16. Gutierrez-Fisac, JL, Marin-Guerrero, A, Regidor, E et al. (2010) Length of residence and obesity among immigrants in Spain. Public Health Nutr 13, 15931598.CrossRefGoogle ScholarPubMed
17. Barcenas, CH, Wilkinson, AV, Strom, SS et al. (2007) Birthplace, years of residence in the United States, and obesity among Mexican-American adults. Obesity (Silver Spring) 15, 10431052.CrossRefGoogle ScholarPubMed
18. Roshania, R, Narayan, KM & Oza-Frank, R (2008) Age at arrival and risk of obesity among US immigrants. Obesity (Silver Spring) 16, 26692675.CrossRefGoogle ScholarPubMed
19. Olivares-Navarrete, E-P, Hamelin, A-M & Jacques, H (2013) Changes in fat but not fruit and vegetable intakes linked with body weight change in Mexican women immigrants in Quebec. Health 5, 5259.CrossRefGoogle Scholar
20. Miranda, JJ, Gilman, RH, Garcia, HH et al. (2009) The effect on cardiovascular risk factors of migration from rural to urban areas in Peru: PERU MIGRANT Study. BMC Cardiovasc Disord 9, 23.CrossRefGoogle ScholarPubMed
21. Durnin, JV & Womersley, J (1974) Body fat assessed from total body density and its estimation from skinfold thickness: measurements on 481 men and women aged from 16 to 72 years. Br J Nutr 32, 7797.CrossRefGoogle ScholarPubMed
22. Martín, V, Gómez, J & Antoranz, M (2001) Medición de la grasa corporal mediante impedancia bioeléctrica, pliegues cutáneos y ecuaciones a partir de medidas antropométricas. Análisis comparativo. Rev Esp Salud Publica 75, 221236.Google Scholar
23. Sociedad Española para el Estudio de la Obesidad (2000) Consenso SEEDO 2000 para la evaluación del sobrepeso y la obesidad y el establecimiento de criterios de intervención terapeútica. Med Clin (Barc) 115, 587597.Google Scholar
24. Gordon, D (1995) Census based deprivation indices: their weighting and validation. J Epidemiol Community Health 49, Suppl. 2, S39S44.CrossRefGoogle ScholarPubMed
25. Barros, AJ & Hirakata, VN (2003) Alternatives for logistic regression in cross-sectional studies: an empirical comparison of models that directly estimate the prevalence ratio. BMC Med Res Methodol 3, 21.CrossRefGoogle ScholarPubMed
26. Belsley, DA, Kuh, K & Welsch, RE (1980) Regression Diagnostics: Identifying Influential Data and Sources of Collinearity. New York: John Wiley & Sons, Inc.CrossRefGoogle Scholar
27. Dormann, CF, Elith, J, Bacher, S et al. (2013) Collinearity: a review of methods to deal with it and a simulation study evaluating their performance. Ecography 36, 2746.CrossRefGoogle Scholar
28. Chatterjee, S, Hadi, A & Price, B (2000) Regression Analysis by Example, 3rd ed. New York: John Wiley & Sons, Inc.Google Scholar
29. Young, BE, Johnson, SL & Krebs, NF (2012) Biological determinants linking infant weight gain and child obesity: current knowledge and future directions. Adv Nutr 3, 675686.CrossRefGoogle ScholarPubMed
30. Stettler, N, Kumanyika, SK, Katz, SH et al. (2003) Rapid weight gain during infancy and obesity in young adulthood in a cohort of African Americans. Am J Clin Nutr 77, 13741378.CrossRefGoogle Scholar
31. Arambepola, C, Allender, S, Ekanayake, R et al. (2008) Urban living and obesity: is it independent of its population and lifestyle characteristics? Trop Med Int Health 13, 448457.CrossRefGoogle ScholarPubMed
32. Reardon, T, Timmer, CP, Barrett, CB et al. (2003) The rise of supermarkets in Africa, Asia, and Latin America. Am J Agric Econ 85, 11401146.CrossRefGoogle Scholar
33. Fraser, B (2005) Latin America’s urbanisation is boosting obesity. Lancet 365, 19951996.CrossRefGoogle ScholarPubMed
34. Garnier, D, Ndiaye, G & Benefice, E (2003) Influence of urban migration on physical activity, nutritional status and growth of Senegalese adolescents of rural origin. Bull Soc Pathol Exot 96, 223227.Google ScholarPubMed
35. Kinra, S, Andersen, E, Ben-Shlomo, Y et al. (2011) Association between urban life-years and cardiometabolic risk: the Indian migration study. Am J Epidemiol 174, 154164.CrossRefGoogle ScholarPubMed
36. Sobngwi, E, Mbanya, JC, Unwin, NC et al. (2004) Exposure over the life course to an urban environment and its relation with obesity, diabetes, and hypertension in rural and urban Cameroon. Int J Epidemiol 33, 769776.CrossRefGoogle Scholar
37. Unwin, N, James, P, McLarty, D et al. (2010) Rural to urban migration and changes in cardiovascular risk factors in Tanzania: a prospective cohort study. BMC Public Health 10, 272.CrossRefGoogle ScholarPubMed
38. Ebrahim, S, Kinra, S, Bowen, L et al. (2010) The effect of rural-to-urban migration on obesity and diabetes in India: a cross-sectional study. PLoS Med 7, e1000268.CrossRefGoogle ScholarPubMed
39. Gordon-Larsen, P, Harris, KM, Ward, DS et al. (2003) Acculturation and overweight-related behaviors among Hispanic immigrants to the US: the National Longitudinal Study of Adolescent Health. Soc Sci Med 57, 20232034.CrossRefGoogle Scholar
40. Fu, H & VanLandingham, MJ (2012) Disentangling the effects of migration, selection and acculturation on weight and body fat distribution: results from a natural experiment involving Vietnamese Americans, returnees, and never-leavers. J Immigr Minor Health 14, 786796.CrossRefGoogle ScholarPubMed
41. Alkerwi, A, Sauvageot, N, Pagny, S et al. (2012) Acculturation, immigration status and cardiovascular risk factors among Portuguese immigrants to Luxembourg: findings from ORISCAV-LUX study. BMC Public Health 12, 864.CrossRefGoogle ScholarPubMed
42. Faskunger, J, Eriksson, U, Johansson, SE et al. (2009) Risk of obesity in immigrants compared with Swedes in two deprived neighbourhoods. BMC Public Health 9, 304.CrossRefGoogle ScholarPubMed
43. Ketel, IJ, Volman, MN, Seidell, JC et al. (2007) Superiority of skinfold measurements and waist over waist-to-hip ratio for determination of body fat distribution in a population-based cohort of Caucasian Dutch adults. Eur J Endocrinol 156, 655661.CrossRefGoogle Scholar
44. Glaner, M (2005) Body mass index as indicative of body fat compared to the skinfolds. Rev Bras Med Esporte 11, 229e232e.Google Scholar
45. World Health Organization (2000) Obesity: Preventing and Managing the Global Epidemic. Report of a WHO Consultation. WHO Technical Report Series no. 894. Geneva: WHO.Google Scholar
46. Bernabe-Ortiz, A, Gilman, RH, Smeeth, L et al. (2010) Migration surrogates and their association with obesity among within-country migrants. Obesity (Silver Spring) 18, 21992203.CrossRefGoogle ScholarPubMed
47. Minghelli, B, Nunes, C & Oliveira, R (2013) Prevalence of overweight and obesity in Portuguese adolescents: comparison of different anthropometric methods. N Am J Med Sci 5, 653659.CrossRefGoogle ScholarPubMed
48. Rothman, KJ (2008) BMI-related errors in the measurement of obesity. Int J Obes (Lond) 32, Suppl. 3, S56S59.CrossRefGoogle ScholarPubMed
49. Romero-Corral, A, Somers, VK, Sierra-Johnson, J et al. (2008) Accuracy of body mass index to diagnose obesity in the US adult population. Int J Obes (Lond) 32, 959966.CrossRefGoogle Scholar
50. Frankenfield, DC, Rowe, WA, Cooney, RN et al. (2001) Limits of body mass index to detect obesity and predict body composition. Nutrition 17, 2630.CrossRefGoogle ScholarPubMed
51. Gallagher, D, Visser, M, Sepulveda, D et al. (1996) How useful is body mass index for comparison of body fatness across age, sex, and ethnic groups? Am J Epidemiol 143, 228239.CrossRefGoogle ScholarPubMed
52. Rush, EC, Goedecke, JH, Jennings, C et al. (2007) BMI, fat and muscle differences in urban women of five ethnicities from two countries. Int J Obes (Lond) 31, 12321239.CrossRefGoogle ScholarPubMed
53. Deurenberg-Yap, M, Schmidt, G, van Staveren, WA et al. (2000) The paradox of low body mass index and high body fat percentage among Chinese, Malays and Indians in Singapore. Int J Obes Relat Metab Disord 24, 10111017.CrossRefGoogle ScholarPubMed
54. Kesavachandran, CN, Bihari, V & Mathur, N (2012) The normal range of body mass index with high body fat percentage among male residents of Lucknow city in north India. Indian J Med Res 135, 7277.Google ScholarPubMed
55. Okorodudu, DO, Jumean, MF, Montori, VM et al. (2010) Diagnostic performance of body mass index to identify obesity as defined by body adiposity: a systematic review and meta-analysis. Int J Obes (Lond) 34, 791799.CrossRefGoogle ScholarPubMed
56. Kinra, S (2004) Commentary: Can conventional migration studies really identify critical age-period effects? Int J Epidemiol 33, 12261227.CrossRefGoogle ScholarPubMed
57. Tovar, A, Renzaho, AM, Guerrero, AD et al. (2014) A systematic review of obesity prevention intervention studies among immigrant populations in the US. Curr Obes Rep 3, 206222.CrossRefGoogle ScholarPubMed
58. Dijkshoorn, H, Nierkens, V & Nicolaou, M (2008) Risk groups for overweight and obesity among Turkish and Moroccan migrants in The Netherlands. Public Health 122, 625630.CrossRefGoogle ScholarPubMed
59. Park, Y, Neckerman, KM, Quinn, J et al. (2008) Place of birth, duration of residence, neighborhood immigrant composition and body mass index in New York City. Int J Behav Nutr Phys Act 5, 19.CrossRefGoogle ScholarPubMed
60. Loret de Mola, C, Quispe, R, Valle, GA et al. (2014) Nutritional transition in children under five years and women of reproductive age: a 15-years trend analysis in Peru. PLoS One 9, e92550.CrossRefGoogle ScholarPubMed
61. Gray, DS, Bray, GA, Bauer, M et al. (1990) Skinfold thickness measurements in obese subjects. Am J Clin Nutr 51, 571577.CrossRefGoogle ScholarPubMed
62. Willett, W (2013) Nutritional Epidemiology, 3rd ed. New York: Oxford University Press.Google Scholar
63. Wilmore, JH, Stanforth, PR, Domenick, MA et al. (1997) Reproducibility of anthropometric and body composition measurements: the HERITAGE Family Study. Int J Obes Relat Metab Disord 21, 297303.CrossRefGoogle ScholarPubMed
64. Díaz, J & Espinoza-Navarro, O (2012) Determinación del porcentaje de Masa Grasa, según mediciones de perímetros corporales, peso y talla: un estudio de validación. Int J Morphol 30, 16041610.CrossRefGoogle Scholar
65. Cornier, MA, Despres, JP, Davis, N et al. (2011) Assessing adiposity: a scientific statement from the American Heart Association. Circulation 124, 19962019.CrossRefGoogle ScholarPubMed
66. Perez-Escamilla, R & Putnik, P (2007) The role of acculturation in nutrition, lifestyle, and incidence of type 2 diabetes among Latinos. J Nutr 137, 860870.CrossRefGoogle ScholarPubMed
67. Lesser, IA, Gasevic, D & Lear, SA (2014) The association between acculturation and dietary patterns of South Asian immigrants. PLoS One 9, e88495.CrossRefGoogle ScholarPubMed
Figure 0

Table 1 Sociodemographic characteristics of rural-to-urban migrants according to obesity as assessed by skinfolds, PERU MIGRANT Study, 2007

Figure 1

Table 2 Prevalence ratios and adjusted prevalence ratios for the association between length of residence in urban area and obesity as assessed by skinfolds, PERU MIGRANT Study, 2007

Figure 2

Table 3 Prevalence ratios and adjusted prevalence ratios for the associations between length of residence in urban area and overweight and obesity as assessed by BMI, PERU MIGRANT Study, 2007

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