Meat Consumption in Sao Paulo – Brazil: Trend in the
Last Decade
Aline Martins de Carvalho1, Chester Luiz Galvão César2, Regina Mara Fisberg3, Dirce Maria Marchioni4*
1 Departament of Nutrition, School of Public Health – University of São Paulo, São Paulo, São Paulo, Brazil, 2 Departament of Epidemiology, School of Public Health –
University of São Paulo, São Paulo, São Paulo, Brazil, 3 Departament of Nutrition, School of Public Health – University of São Paulo, São Paulo, São Paulo, Brazil,
4 Departament of Nutrition, School of Public Health – University of São Paulo, São Paulo, São Paulo, Brazil
Abstract
Objective: To characterize trends in meat consumption, and verify the percentage of excessive red and processed meat
consumption in the last decade in São Paulo, Brazil.
Design: Cross-sectional weighted data from the Health Survey for São Paulo, conducted in São Paulo, Brazil among people
aged 12 years and older.
Setting: Diet was assessed by two 24-hour recalls in each survey. Usual meat consumption was estimated by Multiple
Source Method. Wald tests were used to compare means across survey years. Data were collected from adolescents, adults,
and elderly using a representative, complex, multistage probability-based survey in 2003 and in 2008 in São Paulo,
southeast of Brazil.
Subjects: 2631 Brazilians were studied in 2003 and 1662 in 2008.
Results: Daily mean of red and processed meat consumption was 100 g/day in 2003, and 113 g/day in 2008. Excessive red
and processed meat consumption was observed in almost 75% of the subjects, especially among adolescents in both
surveys. Beef represented the largest proportion of meat consumed, followed by poultry, pork and fish in both surveys.
Conclusions: Daily red and processed meat consumption was higher in 2008 than in 2003, and almost the entire population
consumed more than what is recommended by World Cancer Research Fund. Public health strategies are needed, in order
to reduce red and processed meat consumption to the recommended amounts, for a healthy diet.
Citation: de Carvalho AM, César CLG, Fisberg RM, Marchioni DM (2014) Meat Consumption in Sao Paulo – Brazil: Trend in the Last Decade. PLoS ONE 9(5): e96667.
doi:10.1371/journal.pone.0096667
Editor: Suminori Akiba, Kagoshima University Graduate School of Medical and Dental Sciences, Japan
Received November 4, 2013; Accepted April 10, 2014; Published May 2, 2014
Copyright: ß 2014 de Carvalho et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits
unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Funding: This work had financial support from: São Paulo Research Foundation (FAPESP - procedural 2007/51488-2 and 2009/15831-0) and National Counsel of
Technological and Scientific Development for (CNPq - procedural 502948/2003-5 and 481176/2008-0). The funders had no role in study design, data collection
and analysis, decision to publish, or preparation of the manuscript.
Competing Interests: The authors have declared that no competing interests exist.
* E-mail:
[email protected]
World Cancer Research Fund recommends a limited intake of up
to 500 g of red or processed meat per week as a measure for
cancer prevention [4]. However, many developed countries
present over-consumption of meat [2,13].
In Brazil, there are few representative studies about meat
consumption and its health impacts. However, Brazil is the world’s
second largest beef producer and the world’s largest beef exporter
[14]. So, it is important to monitor the Brazilian population to
promote healthy eating policies. The present study characterizes
the trends in meat consumption and the percentage of excessive
red and processed meat consumption in the last decade in São
Paulo, Brazil.
Introduction
Meat is an important food item for human nutrition because it
contains protein, minerals and vitamins [1], and also unsaturated
and conjugated fatty acids that help prevent cardiovascular
diseases [2]. Nevertheless, excessive meat consumption has been
linked to chronic diseases. Some studies show the relationship
between processed meat intake and cardiovascular diseases and
diabetes [3], and other studies show the relationship between red
and processed meat intake and colorectal cancer [4–8], weight
gain [9] and high death risk [10–12]. Potential carcinogenic
substances such as heterocyclic amines and polycyclic aromatic
hydrocarbons (formed during the cooking process), high saturated
fat, and cholesterol content can increase the risks for the diseases
mentioned above. The addition of sodium and nitrite in processed
meats also increase these risks [4–6].
Currently, the Brazilian Ministry of Health recommends one
daily serving of meat (190 kcal) as part of a healthy diet [1]. The
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Materials and Methods
Study population and data collection
The School of Public Health of the University of São Paulo
Ethics Committee approved the project.
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Meat Consumption in Brazil
Data was derived from two independent cross-sectional
representative, complex, multistage probability-based surveys
titled Health Survey for São Paulo, conducted in São Paulo,
Brazil in 2003 and in 2008 (ISA – Capital 2003 and ISA – Capital
2008). These surveys collected information on health, food intake,
and life conditions of the population of São Paulo.
A two-stage cluster sampling was used: census tracts and
household, in both surveys. In ISA – Capital 2003, in the first
stage, the census tracts were drawn using probability proportional
to the number of households in the PNAD 2002 (National
Household Sample Survey 2002). In ISA- Capital 2008, in the first
stage, the census tracts were drawn using probability proportional
to the number of households in the PNAD 2005 (National
Household Sample Survey 2005). In the second stage, the
households were drawn using inverse probability of the number
of households in each PNAD.
The draw was systematic, and the census tracts were stratified
according to the percentage of heads of family with academic
degrees into three categories (less than 5%; 5 to 25%; more than
25%).
Six study domains were defined in ISA – Capital 2003 and
ISA – Capital 2008 by age groups and gender: women and men
aged 13 to 19 years old (adolescents), women and men aged 20
to 59 years old (adults) and women and men aged 60 years old
or over (elderly).
In 2003, it was estimated a minimum sample size of 420
interviews for each of the six domains based on a prevalence of 0.5
with a standard error of 0.06 at a 5% significance level and a
design effect of 1.5. In ISA – Capital 2003, a total of 2515
individuals were selected, however the final sample comprised
2361 subjects (both males and females), 805 adolescents, 743
adults and 813 elderly. Of all selected participants, 6% (n = 153)
refused to participate or could not be found at home, even after
three visits made at different times (during weekdays and
weekends).
In 2008, a new two-stage cluster sampling was used based on
PNAD 2005, and the minimum of 300 interviews for each of the
same six domains enabled estimation of a prevalence of 0.5 with a
standard error of 0.07 at a 5% significance level and a design effect
of 1.5. In ISA – Capital 2008, a total of 2691 individuals were
selected, however the final sample comprised 1662 subjects (both
males and females), 560 adolescents, 585 adults and 517 elderly.
Of all selected participants, 38% (n = 1029) refused to participate
or changed their address/telephone and could not be located or
found at home, even after three visits made at different times
(during weekdays and weekends). Even the loss was randomized
among census tracts and socio demographic features, sampling
weights were recalculated for each individual considering the
sample design, the adjustment for non-response, and poststratification adjustment for gender and age group, in order to
equalize the socio demographic features of the sample. Other
details on sampling are available elsewhere [15,16].
Information on health and life condition was collected by a
structured questionnaire administered during a household interview in 2003 and another in 2008. The questionnaires were
structured for collecting demographic (age and gender) and
socioeconomic (family income) data, and were administered by
trained interviewers.
In ISA – Capital 2003, the participation rate of two 24-hour
recalls was 35%, and both 24HR was administered at households
using Multiple Pass Method [18]. In ISA – Capital 2008, the
participation rate of two 24-hour recalls was 50%, and the first
24HR was administered at households using Multiple Pass
Method [18] and the second 24HR was administered by telephone
using Automated Multiple Pass Method [19]. The telephone calls
were made to the participants home or their mobile phone. These
methods are structured in five steps: 1) quick list, that participants
list all the foods and beverages consumed uninterruptedly; 2)
forgotten list, that participants are asked about commonly
forgotten foods consumed, such as candies, coffees and sodas; 3)
time and location of food and beverage intake; 4) detailing cycle,
that the way of preparation and amounts consumed are described;
and 5) final review, that verifies whether a certain food consumed
during the day was not previously recorded [18,19].
The household measures reported in 24HR were converted into
grams and milliliters according standard Brazilian references, that
measure many foods in precision balance [20,21]. Recipes were
broken down into ingredients to estimate the amount of meat in
each preparation.
Data from the 24HR were entered into the Nutrition Data
System for Research – NDSR (version 5.0, 2007, Nutrition
Coordinating Center at the University of Minnesota, Minneapolis,
MN, USA) [22] and were converted into energy and nutrients. We
compared the American database for the nutrition facts (energy,
protein, carbohydrate and lipid) from the NDSR with the
Brazilian nutrition facts database. We only considered the foods
from the NDSR that were similar (between 0.8 until 1.2 times) to
Brazilian nutrition facts in terms of energy and macronutrients.
The meats of the diet were classified according to origin: beef,
pork, poultry and fish; and processing: processed meat (cured,
salted, smoked or containing chemical preservatives); no processed
red meat (beef and pork), no processed white meat (poultry and
fish).
The World Cancer Research Fund [4] maximum recommendation intake of 500 g of red and processed meat per week
(corresponding to mean of 71.4 g red and processed meat per day)
was the cut-off point to estimate excessive red and processed meat
consumption.
Statistical Analysis
In both surveys, the second 24HR was used to remove withinperson variation that would otherwise inflate the distribution
thereby distorting the percentiles [23]. This adjustment was made
by the Multiple Source Method (MSM), which requires that at
least one participant provides both 24HR. However, a high
participation rate of two 24HR (around 40%) leads more precise
estimates [24].
The MSM is a statistical modeling technique which calculates
usual dietary intake in three steps [25,26]. In the first, the
probability of eating the food on a random day for each individual
was estimated by a logistic regression model. Secondly, the usual
amount of food intake is estimated by a linear regression model.
Finally, the resulting numbers from step one and two are
multiplied by each other to estimate the usual daily intake for
each individual. The models were performed separately by gender,
furthermore age group and date of interview were included as
model covariates in logistic and linear regressions to estimate
probability of eating the meat and usual amount of meat.
All participants were considered meat consumers in MSM,
because the technique could modify the first percentiles of
distribution and it does not modify mean of usual intake of meat
[27].
Assessment of dietary intake
The dietary assessment consisted of two 24-hour dietary recalls
(24HR) for each survey; they were collected over one year
covering all weekdays, weekends and seasons [17].
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These increasing intake tendencies shown in this study can be
explained due to the low prices of poultry and processed meats
[30], the increasing poultry and processed meat production, the
Brazil economic stability over the past few years, what increased
the population purchasing power [31], and also because meat is a
typical food within Brazilian eating habits and desired by most of
the population.
We observed that red meat and beef did not show a significant
consumption increase in any of the analyzed categories, but were
the most consumed in both periods. Fish, on the contrary, was the
least consumed by the city’s residents. We found similar data to the
tendency observed in São Paulo in the last Brazilian Household
Budget Survey (1987–1988; 1995–1996; 2002–2003; 2008–2009).
Beef had the greatest energy contribution in the Brazilian
population diet in the periods studied, but underwent a decline
over the last years. Meanwhile, poultry consumption showed a
progressive increase throughout the whole period (150%). Fish
intake had low and constant contribution, less than 1% [32,33].
In regards to meat consumption around the world, available
data from the Food and Agriculture Organization show an
increasing number in daily total meat intake in developed
countries such as the US [13] and the European Nations [2].
We also noticed an increase in white meat intake (from 25 g to
55 g/day) and decrease in red meat intake (from 105 g to 85 g/
day) in the US from 1999 to 2007 [13].
Total meat and red meat intake in São Paulo proved to be
higher or similar than those found in developed countries such as
the US [13], Germany, Ireland, Spain and the Netherlands [2].
That is, the citizens of São Paulo consumed more red meat than
those in developed countries. For processed meat, the intake was
the same as that of the US [13] and greater than that of Ireland,
Greece and Italy [4].
Meat provides an important source of protein and micronutrients for humans, however excessive red and processed meat
consumption is known to be associated to an increase in risk of
colon and rectal cancer [4]. It is known that the intake of 50 g of
processed meat a day increases the risk of CVD by 42%, and of
diabetes by 19% in the US [3]. In our study, we noticed that
almost 75% of the population showed excessive red and processed
meat intake, what may increase the prevalence of these diseases in
the city of São Paulo. Red and processed meat intake among
adolescents was also high, what may contribute to increased risk of
cancer later in life. An American cohort study showed that
processed meat intake during adolescence increased the risk of
colon and rectal cancer [34] in 25% among adolescents with high
consumption.
Cancer incidence has been increasing significantly for the past
decades and was one of the main causes of death from 1980 to
2010, in the city of São Paulo. Colon and rectal cancer is the third
most frequent type of cancer among men and women. From 1997
to 2008 almost 17.0 thousand new cases were diagnosed in men;
and at the same time there were 18.5 thousand new cases among
women. The incidence of this type of cancer increased in 24% and
39% among men and women, respectively, from 2003 to 2008
[35]. It is well known that diet has an important role in preventing
and causing this type of cancer and there is convincing evidence of
the relationship among red and processed meats increase in risks
of colon and rectal cancer [4].
Mean values and standard errors were calculated considering
the predicted usual intake distribution by MSM. The normality
was verified by skewness and kurtosis normality test. Differences
between means were analyzed using the Wald test, which
calculates point estimates using F-statistics and considers the
weights from complex samples.
The analyses were conducted using weighting variables
(primary sampling unit, stratum and sampling weight) to account
for the complex survey design. Data were analyzed separately by
gender, per capita family income and age group. For all analyses,
STATA statistical software package version 10 [28] was used and
a p,0.05 was considered statistically significant.
Results
The unweighted sample comprised a total of 4023 people from
both data collection, 49% were male in 2003 and 44% were male
in 2008; mean age was 41624 years in 2003 and 37626 years in
2008; mean per capita family income was U$$167 in 2003 and
U$$383 in 2008. The proportions of men and women were the
same in each age group and in each tertile of per capita income in
both surveys. The population in the study showed an increase in
consumption of the different types of meat from 2003 to 2008.
Women, elderly and low-income groups were the only ones who
did not show higher red meat consumption in 2008 than in 2003.
There was an increase in white and processed meat intake for the
entire population (Table 1). Adolescents and men also showed an
increase in beef intake, while the elderly showed a decrease. Fish
consumption rose for all groups but for the elderly and individuals
with intermediary income. Intake of pork did not increase among
the elderly and individuals with low and intermediary income.
Poultry consumption increased for the entire population (Table 2).
There was a 20% increase in average meat consumption, with a
greater increase in white meat intake (35%) and lower increase in
red meat intake (11%). Processed meat intake also increased
during the periods studied (20%), especially among adolescents
(29%). As for the origin of the meat, the increase in consumption
was greater for fish (46%), followed by poultry (30%), pork (30%)
and beef (1%).
Among the most frequently consumed processed meats by the
citizens of São Paulo, sausages and frankfurter represented 60% of
the processed meat intake in both the periods studied, and were
followed by ham, industrialized breaded chicken and mortadella
(data not shown).
In 2003, 72% of residents of the city of São Paulo exceeded red
and processed meat intake recommendations from the WCRF,
and in 2008, this number was 74% (a non significant variation).
The proportion of individuals from the different age groups and
genders that exceeded red and processed meat intake recommendations was the same in both studies (data not shown).
Discussion
We observed a significant increase in meat consumption in the
city of São Paulo from 2003 to 2008, especially in total meat,
poultry, white and processed meat intakes that increased
regardless of gender and per capita family income.
It is known that there is an increasing tendency of poultry
production in Brazil, and this might be a good factor once poultry
has leaner meat and therefore can improve diet quality [1,29].
However, there is also an increased tendency in producing
processed meats that have higher fat contents, apart from having
potentially carcinogenic substances such as nitrites and nitrates,
and sodium [1,4].
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Limitation
The ISA – Capital is a cross-sectional study in which we cannot
determine causality of events, but by using a probability sample
and being a population-based study, results can be extrapolated to
the total population of São Paulo, the biggest city of Brazil.
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Table 1. Dietary intake of total meat, red meat, processed and white meat (g/day) according to age, gender, per capita family income and year studied. São Paulo. 2013.
Total meat (g/day)a
2003
n
2008
Mean
SE
n
Mean
SE
Red meat (g/day)b
White meat (g/day)c
Processed meat (g/day)d
2003
2003
2003
Mean
2008
SE
Mean
SE
Mean
2008
SE
Mean
SE
Mean
2008
SE
Mean
SE
Age group
adolescent
805
142.7
1.6
560
178.6*
5.2
74.8
1.5
92.6*
3.5
35.7
1.0
45.3*
1.2
32.9
0.8
42.3*
1.3
adult
743
136.5
1.7
585
167.7*
4.4
72.7
1.2
81.4*
2.5
37.7
1.0
52.6*
1,.7
28,.1
1.1
32.8*
0.9
elderly
813
121.3
1.3
517
124.9
2.8
65.5
1.3
62.0
2.3
37.8
0.9
45.8*
1.1
19.8
0.7
23.1*
0.9
male
1155
164.7
0.99
722
200.2*
6.0
89.0
1.3
104.1*
3.2
42.6
1.3
57.2*
2.1
33.7
1.1
39.6*
1.0
female
1206
112.2
1.4
940
130.6*
2.3
58.5
1.1
59.4
1.4
33.1
0.7
44.8*
1.2
23.2
0.8
26.8*
0.9
1 tertile
664
130.2
2.6
531
150.0*
5.2
68.3
1.6
74.1
3.8
34.2
1.3
48.5*
1.9
26.3
1.5
31.7*
1.3
2 tertile
745
138.4
2.1
582
163.8*
6.1
72.4
1.6
83.1*
3.2
38.0
1.5
49.5*
2.3
29.0
1.3
32.4*
1.3
Gender
Per capita income
3 tertile
TOTAL
821
138.9
1.7
549
171.5*
4.9
75.8
1.6
82.2*
2.9
39.5
1.2
53.0*
1.9
28.4
0.9
33.8*
1.1
2361
135.8
1.25
1662
163.2*
3.5
72.2
0.9
80.3*
1.8
37.4
0.8
50.6*
1.2
27.9
0.8
32.8*
0.7
4
*Wald test (difference between consumption in 2003 and consumption in 2008, considering p,0.05 significant).
a
Total meat: all types of meat consumed.
b
Red meat: unprocessed beef and pork.
c
White meat: unprocessed fish and poultry.
d
Processed meat: cured, salted, and smoked meats or meats containing preservatives.
SE: standard error.
doi:10.1371/journal.pone.0096667.t001
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Table 2. Beef, pork, poultry and fish intake (g/day) according to age group, gender, per capita family income and year studied. São Paulo. 2013.
Beef (g/day)
Pork (g/day)
2003
N
2008
Mean
SE
N
2003
Mean
SE
Mean
Poultry (g/day)
2008
SE
Mean
2003
SE
mean
Fish (g/day)
2008
SE
mean
2003
SE
mean
2008
SE
mean
SE
Age group
adolescent
805
74.2
1.8
560
89.3*
2.7
27.1
1.1
41.4*
2.6
33.0
0.9
41.3*
1.0
6.7
0.8
11.6*
0.7
adult
743
72.4
1.4
585
76.7
2
24.6
1.4
30.7*
1.7
32.5
1.0
42.5*
1.2
10.0
1.0
14.8*
0.9
elderly
813
63.1
1.2
517
57.6*
1.7
18.2
1.0
20.3
1.6
29.3
0.8
37.8*
0.9
11.2
0.9
12.4
0.6
Gender
male
1155
87.4
1.8
722
96.5*
2.6
30.7
1.7
39.3*
2.2
35.0
1.2
44.3*
1.5
13.3
1.5
17.5*
1.2
female
1206
58.8
1.1
940
57.5
1.2
19
1.0
23.2*
1.1
29.9
0.7
39.3*
0.9
6.6
0.4
10.9*
0.7
1 tertile
664
68.4
1.9
531
70.9
3.3
22.8
2.2
28
2.3
30.4
1.1
40.9*
1.3
7.4
0.9
12.6*
1.3
2 tertile
745
72.2
1.9
582
78
2.9
26.4
1.6
29.4
2.5
32.5
1.3
41.6*
2.2
9.8
1.7
12.9
1
Per capita income
3 tertile
TOTAL
821
74.1
1.7
549
77.2
2.2
24.1
1.3
33.7*
2.4
34.1
1.4
42.2*
1.3
10.6
0.8
15.9*
1.1
2361
71.7
1.1
1662
75.8*
1.4
24.3
1.1
30.8*
1.3
32.2
0.8
41.7*
0.8
9.6
0.7
14.0*
0.7
5
*Wald test (difference between consumption in 2003 and consumption in 2008, considering p,0.05 significant).
SE: standard error.
doi:10.1371/journal.pone.0096667.t002
Meat Consumption in Brazil
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The loss of subjects in ISA – Capital 2008 was high, however
sampling weights were recalculated for each individual, in order to
equalize the socio demographic features of the sample and to
produce validated results.
particularly poultry and processed meats, in 2008 than in 2003.
Therefore, developing public health actions is critical for health
promotion and health food choices.
Author Contributions
Conclusions
Conceived and designed the experiments: CLGC RMF DMM. Performed
the experiments: AMdC DMM. Analyzed the data: AMdC DMM.
Contributed reagents/materials/analysis tools: CLGC RMF DMM. Wrote
the paper: AMdC CLGC RMF DMM.
Data from the present study allowed us to conclude that red and
processed meat intake was excessive in almost the entire
population studied, and there was a higher consumption of meats,
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