Next Article in Journal
COVID-19 Peritraumatic Distress as a Function of Age and Gender in a Spanish Sample
Next Article in Special Issue
Functional Food—Consumer Motivations and Expectations
Previous Article in Journal
Housing, Living Arrangements and Mental Health of Young Adults in Independent Living
Previous Article in Special Issue
The Impact of COVID-19 on Consumers’ Psychological Behavior Based on Data Mining for Online User Comments in the Catering Industry in China
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Analysis of Environmental Determinants of Heme and Nonheme Iron Intake in a National Sample of Polish Adolescents

by
Dominika Skolmowska
and
Dominika Głąbska
*
Department of Dietetics, Institute of Human Nutrition Sciences, Warsaw University of Life Sciences (WULS-SGGW), 159C Nowoursynowska Street, 02-776 Warsaw, Poland
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2021, 18(10), 5252; https://doi.org/10.3390/ijerph18105252
Submission received: 15 February 2021 / Revised: 7 May 2021 / Accepted: 11 May 2021 / Published: 14 May 2021
(This article belongs to the Special Issue Consumer Behaviors, Food, Nutrition, and Human Health)

Abstract

:
Intake of sufficient amounts of iron by adolescents is a matter of great concern. Therefore, it is crucial to determine the factors that may influence iron intake in this specific population. The present study aimed to analyze the environmental determinants of the intake of heme and nonheme iron in a national homogenous sample of Polish adolescents. Adolescents (aged 15–20 years) were randomly chosen from all the regions of Poland by performing a sampling of secondary schools (random quota sampling). The total iron intake, as well as the intake of heme iron, nonheme iron, animal iron, plant iron, and iron from various food products, was assessed among 1385 female respondents and 1025 male respondents using the validated IRON Intake Calculation—Food Frequency Questionnaire (IRONIC-FFQ). The intake was compared between the subgroups stratified by meat intake in the region, gross domestic product (GDP) in the region, and size of the city (rural vs. urban environment). It was observed that meat intake in the region did not influence the intake of total iron, as well as the intake of heme iron, nonheme iron, animal iron, plant iron, and iron from various food products (p > 0.05). However, GDP and the size of the city were determined as the most influencing factors, as they were associated with iron intake in both female and male adolescents, with the most prominent differences between the subgroups found in the case of females. Female adolescents from high-GDP regions had significantly higher intake of heme iron (p = 0.0047) and animal iron (p = 0.0029), and lower intake of nonheme iron compared to those from low-GDP regions (p = 0.0342). The total iron intake was higher among female adolescents who were from medium cities than those from big cities (p = 0.0350), but significantly higher animal iron intake (p = 0.0404) and plant iron intake (p = 0.0385) were observed among females from villages and small towns compared to females from other groups. Based on the results, it may be concluded that size of the city and the economic status of the region are the most important environmental determinants of iron intake in adolescents and, hence, they should be taken into account while developing educational programs, especially for the female adolescent population.

1. Introduction

Adolescence is a unique stage of life marked by biological, cognitive, and social changes [1]. During this period, health behaviors, including dietary choices, are most vulnerable [2] and may be influenced by both individual and environmental factors [3].
Environmental factors, in particular, may be decisive of food choices, as these factors affect not only the availability and choices of food products but also the development of specific preferences [4]. Environment can be distinguished into four different types as follows: physical, political, sociocultural, and economic [5]. However, all the factors associated with the environment may influence the availability of food products for purchase [6] and determine the food choices in a household [7].
Not only the choice of products but also the resultant nutritional value of the diet is governed by various factors, including the environmental factors [8]. However, the impact of the environment seems to be negligible for a number of nutrients [9]. The products that are most vulnerable to the effect of the indicated environmental factors include meat products [10], which are directly associated with iron intake and also show high variations depending on the environmental conditions [11].
One of the most important environmental factors is socioeconomic status. A study conducted by Clonan et al. [12] showed that this factor affects the intake of both red and processed meat. Consequently, the income of individuals may be perceived as one of the most important determinants of nutrient intake, as shown by the study of Knez et al. [13], in which no general differences in iron intake were observed, except for the differences between the low-income and affluent subgroups.
Another important environmental determinant is the type of area, namely urban or rural environment, as studies have indicated some general differences in dietary habits and dietary intake based on this factor [14,15]. Various studies have shown that area influences the consumption of meat [16], as well as the resultant intake of iron [17] and other derived nutrients [18].
Taking into account the abovementioned differences, it can be stated that the environmental influence may be crucial, especially in the case of iron, for the prevention of diet-related diseases, the prevalence of which varies worldwide [19]. Such geographical disparity has been observed for anemia, as various proportions of the population are affected by this condition throughout the world. The global prevalence of anemia is estimated at 24.8%, but among young women, who are the most vulnerable group, its prevalence ranges from 17.8% to 47.5% [20]. The World Health Organization (WHO) has declared anemia as a general problem for public health with serious consequences [21]. Particularly in the case of children and adolescents, it is known that anemia adversely affects their behavioral characteristics, cognitive performance, and physical growth [22,23]. Therefore, providing adequate amounts of iron is important to meet individual iron requirements, and so it is crucial to determine the factors that may influence iron intake in specific populations. However, it should be noted that dietary iron is present in two chemical forms—as heme and nonheme—which differ in their bioavailability and uptake [24]. Heme iron, derived from animal products, is absorbed up to 25–35% [25], whereas nonheme iron, derived from both animal and plant products [26], is absorbed much less, in the range of 2–20% [27]. The greater efficiency of absorption of heme iron results from specific transporters that allow it to pass directly across cell membranes and into the bloodstream, while these transporters cannot be utilized by nonheme iron and require ferric iron (Fe3+) to be reduced to ferrous iron (Fe2+) prior to absorption [28].
Hence, understanding the determinants influencing iron intake may be of help to improve the dietary patterns of adolescents, as well as the resultant health status of this age group. This study was conducted with an aim of analyzing the environmental determinants of the intake of heme and nonheme iron in a national homogenous sample of Polish adolescents.

2. Materials and Methods

2.1. Ethical Statement

The study was conducted at the Department of Dietetics of the Warsaw University of Life Sciences (WULS-SGGW). The study was carried out in accordance with the guidelines of the Declaration of Helsinki. All the procedures were approved by the Ethics Committee of the Faculty of Human Nutrition and Consumer Sciences at the Warsaw University of Life Sciences (No 24/2018). Both the study participants and their parents/legal guardians submitted their written informed consent for participation in the study.

2.2. Studied Group

The study was carried out in a group of Polish secondary school students, aged 15–20 years. This age is typical for the secondary level of education in Poland, and the current net enrollment rate (NER) for secondary school students is 89.01% [29].
The participants were recruited during the period of November 2018 to February 2019 from all regions of Poland, based on geographical distribution. To gather a national sample of Polish adolescents, the sampling procedure was stratified and random quota sampling was performed with the quotas attributed to voivodeships and counties (voivodeships are the basic administrative units in Poland, which are comparable to provinces or states in other countries and are further divided into counties).
Sampling was conducted in two phases within this study: (1) in the main phase, 400 secondary schools were randomly selected; (2) in the subsidiary phase, 625 secondary schools were randomly selected. If the selected schools agreed to conduct the study, the further procedure was carried out according to the previously described methodology [30]. The procedure of inviting randomly chosen secondary schools is also detailed in the previous paper [30].
The inclusion criteria for students were as follows:
-
Caucasian;
-
Aged 15–20 years;
-
Being a student of a randomly chosen secondary school;
-
In the case of female respondents—declared regular menstrual cycle;
-
Providing informed consent to take part in the study;
-
In the case of minor participants—providing informed consent of parents/legal guardians to take part in the study.
The following students were excluded from the study:
-
Female respondents who are currently pregnant/breastfeeding (due to their higher iron requirement compared to other women of childbearing age [17]);
-
Those with iron intake higher than 45 mg (level of tolerable upper intake—UL)—interpreted as unreliable [31].

2.3. Applied Questionnaire

The study used an electronic questionnaire (IRON Intake Calculation—Food Frequency Questionnaire (IRONIC-FFQ)) which was forwarded to every student who agreed to participate in the study. The questionnaire has been validated and proven to provide reliable data in the Polish population [32] for the assessment of the intake of specific food products constituting iron sources. Iron intake was calculated using previously developed formulas [32], based on Polish food composition tables [33].
The iron intake was calculated as follows:
-
Total iron intake, as well as the intake of various forms of iron—heme iron, nonheme iron, animal iron, and plant iron, as presented in the previous study [30], based on a commonly applied estimation [34];
-
Intake of iron from the specific groups of products, as presented in the previous study [30].
The iron intake was compared separately for female and male respondents, between subgroups stratified by major environmental characteristics such as meat intake in the region, size of the city, and Gross Domestic Product (GDP) in the region.

2.4. Statistical Analysis

The sample size was calculated for the population of Polish adolescents aged 15–20 years (a total of 2,170,464, based on the data from the Central Statistical Office [35] in Poland), at a 95% confidence level and 5% margin of error. Assuming a percentage of 50%, which maximizes the sample size (due to the fact that no data on expected percentage of outcome were available), the required sample size was estimated at 384 respondents. Thus, the gathered sample of 2410 respondents was interpreted as sufficient.
The respondents were compared in subgroups, stratified based on the following characteristics:
-
Meat intake in the region—this was estimated from the average meat intake in the voivodeship, and was categorized into groups of low and high meat intake, based on the calculations of the Polish Central Statistical Office [36]. Low meat intake in the region was defined as the intake of <5.08 kg per year (below-average intake for Poland) and high meat intake as the intake of ≥5.08 kg per year (above-average intake for Poland), as the average meat intake in Poland is 5.08 kg per year [36].
-
Size of the city (rural/urban environment)—this was identified on the basis of the city size, and was categorized as villages and small towns (<20,000 inhabitants), medium cities, and big cities (>100,000 inhabitants) based on the calculations of the Polish Central Statistical Office [37].
-
Socioeconomic status of the region—this was determined from the GDP for the voivodeship, based on the calculations of Eurostat [38], and was categorized into low GDP (24–54% in purchasing power standard), medium GDP, and high GDP (73–86% in purchasing power standard), as defined by Eurostat [38].
The statistical analysis was carried out using:
-
Shapiro–Wilk test to verify normality of distribution;
-
Chi2 test;
-
Mann–Whitney U test;
-
Kruskal–Wallis analysis of variance (ANOVA) with post hoc Tukey test;
-
Multi-factor ANOVA in general linear model of three factors (meat intake in region, size of the city, and GDP for the voivodeship).
The statistical analysis was conducted using Statgraphics Plus for Windows 5.1 (Statgraphics Technologies Inc., The Plains, VA, USA).

3. Results

Table 1 presents intake of iron in the studied population-based sample of Polish female adolescents, stratified by meat intake in the region. There was no difference of intake of iron forms in the subgroups of female adolescents from the regions with low and high meat intake. At the same time, female adolescents from the regions with high meat intake were characterized by higher iron intake from fat, comparing to female adolescents from the regions with low meat intake (p = 0.0087), but not by higher iron intake from meat products (p = 0.8849).
Table 2 presents intake of iron in the studied population-based sample of Polish male adolescents, stratified by meat intake in the region. There was no difference of intake of iron forms, as well as in intake of iron from various food products, including meat products (p = 0.2937), in the subgroups of male adolescents from the regions with low and high meat intake.
Table 3 presents intake of iron in the studied population-based sample of Polish female adolescents, stratified by GDP in the region. Female adolescents from the regions of high GDP were characterized by significantly higher heme iron (p = 0.0047) and animal iron (p = 0.0029) than those from the regions of low GDP. Female adolescents from the regions of low GDP were characterized by significantly higher nonheme iron intake than those of the regions with high GDP (p = 0.0342). At the same time, female adolescents from the regions of low GDP were characterized by significantly higher intake of iron from cereals and fruit than those from regions of low GDP (p = 0.0495; p = 0.0273, respectively).
Table 4 presents intake of iron in the studied population-based sample of Polish male adolescents, stratified by GDP in the region. There was no difference of intake of iron forms. At the same time, male adolescents from the regions of low GDP were characterized by significantly higher iron intake from vegetables than those from the regions of medium GDP (p = 0.0180). Male adolescents from the regions of high GDP were characterized by significantly higher iron intake from cocoa than those from the regions of low and medium GDP (p = 0.0103).
Table 5 presents intake of iron in the studied population-based sample of Polish female adolescents, stratified by the size of the city. Total iron intake was higher among female adolescents from medium cities than those from big cities (p = 0.0350). Female adolescents from villages and small towns were characterized by significantly higher animal iron intake (p = 0.0404) and plant iron intake (p = 0.0385) than those from big and medium cities, respectively. At the same time, female adolescents from villages and small towns were characterized by significantly higher iron intake from meat products (p = 0.0082), eggs (p = 0.0016), dairy products (p = 0.0034) and fish (p = 0.0010) than those from big cities.
Table 6 presents intake of iron in the studied population-based sample of Polish male adolescents, stratified by the size of the city. There was no difference of intake of iron forms. At the same time, male adolescents from villages and small towns were characterized by significantly higher iron intake from nuts than those from medium and big cities (p = 0.0258).
Table 7 presents the deepen analysis to test between-subjects effect in a general linear model of 3 factors (meat intake in region, size of the city, and GDP for the region). The conducted statistical analysis confirmed the previous observations formulated for a single factors analyzed. Namely, it was observed that the meat intake in the region was not an important factor influencing iron intake. At the same time, the presented analysis indicated that in the model including meat intake in region, environment, and GDP for the voivodeship, the size of the city was revealed to be significant determinant of iron intake in case of female adolescents.

4. Discussion

In the studied group, in the previous analysis [30], it was observed that male respondents were characterized by higher intake of various forms of iron compared to female respondents. This may be related to the fact that, compared to women, men consume a distinctly higher amount of meat, which is a source of highly absorbable heme iron [25,39]. Although women are more likely to follow a vegan or vegetarian diet [40], it should be indicated that independent of gender, the proportion of adolescents following vegetarian diets is increasing [41]. Moreover, the intake of most nutrients is correlated with energy intake [42] and, therefore, it may be assumed that in this study, male adolescents had higher energy intake and consequently higher iron intake than female adolescents.
The study did not find any difference in iron intake, as well as in iron intake from various food products, in the subgroups stratified by meat intake in the region. Meat, particularly red meat, is rich in highly bioavailable heme iron [43], and thus, its adequate intake is necessary to prevent anemia [44], especially for women [45]. Studies show that a statistically significant difference in iron status can be observed between women of childbearing age who are following a diet that includes meat products, compared to those following a vegetarian diet [46]. On the other hand, high consumption of red meat is known to increase the risk of colorectal cancer [47]. Therefore, it is essential to maintain a proper balance between meat intake and the intake of other iron sources in order to prevent both anemia and colorectal cancer. In the present study, it was supposed that respondents from the regions with high habitual meat intake will be characterized by higher total iron intake and heme iron intake, but no differences were observed between this group and the other groups. Therefore, it can be considered that the other potential determinants of iron intake may also play an important role.
It was found that female adolescents from the regions of high GDP had significantly higher intake of heme iron and animal iron than those from low-GDP regions. However, no differences were noted in the total iron intake between the female adolescents from low- and high-GDP regions. This is due to the fact that the differences in the intake of heme iron were compensated by the differences in the intake of nonheme iron, as female respondents from the regions of low GDP were characterized by significantly higher intake of nonheme iron than those from the regions of high GDP. Nevertheless, it should be emphasized that heme iron is more effective than nonheme iron in preventing anemia due to its higher availability [48]. This corresponds with other results which suggest that socioeconomic status may affect iron intake [49,50]. In the study by Kim et al. [49], conducted in a group of Korean adolescent girls, it was observed that girls with a higher household income consumed more iron and had a lower prevalence of anemia, compared to those with a low income. Similarly, in the study by Akram et al. [50], carried out in a group of pregnant Pakistani women, women belonging to the upper class were characterized by higher iron intake than women belonging to the lower and middle class. Thus, it can be stated that inadequate iron supply may be a common problem in the low-economic-status group, but it may not be reflected only by total iron intake, and so, heme iron intake should also be monitored in this group.
The type of residence (rural/urban environment) may influence the intake of some nutrients, including iron [51]. Urban areas are associated with higher energy density and higher consumption of purchased goods [52]. Moreover, rural settings are known to have a higher prevalence of anemia [53] and stunting [54], compared to urban settings. However, studies show that iron intake in rural areas is not actually lower than in urban areas, but is higher indeed [51,55,56]. For instance, the study by Martin et al. [51] reported that Australian women of reproductive age from rural areas had higher intake of iron than urban women. Similarly, the Bosnian study by Alibabić et al. [56] showed that rural women were characterized by significantly higher iron intake than their urban counterparts. Similar results regarding the influence of the type of residence on iron intake were obtained in the present study, as the total iron intake was found to be significantly higher among adolescent girls from medium cities than those from big cities. Additionally, adolescent girls from villages and small towns had significantly higher animal iron and plant iron intake compared to girls from medium and big cities At the same time, these female adolescents were characterized by significantly higher iron intake from certain products, such as meat, eggs, and dairy products, than those from big cities. Such results may be, to some extent, explained by various dietary patterns which are, in general, observed in rural and urban areas, as it is well known that the environment may influence the diet [15]. Urbanization may induce people to adopt a Western diet [57] which is characterized by a high proportion of energy-dense and processed foods and [58] and a low proportion of fruit and vegetables [59]. Therefore, it can be assumed that the lower iron intake observed in respondents from big cities in the present study might be because their diet is unbalanced and lacks essential nutrients, such as iron.
Anemia is an important health problem in both developing and developed countries [60]. It is associated with the impairment of oxygen transport [61] and affects the physical and mental well-being of an individual [62]. One of the Global Nutrition Targets 2025 set by the WHO is a 50% reduction in the prevalence of anemia among women of childbearing age by the year 2025 [63]. Therefore, understanding the possible determinants of iron intake may be a key factor in establishing effective public health strategies aimed at preventing and controlling anemia. According to the WHO recommendations, such strategies should focus on improving dietary diversity and promoting the use of iron-fortified foods as well as iron supplements [63]. While iron fortification of staple food products is recommended in developing countries, in Poland it is not common, as mostly cereals and corn flakes are iron-fortified [64,65]. Moreover, it seems that communication campaigns may help in decreasing the prevalence of anemia among women and children [66]. However, no such educational campaign aiming at the prevention of anemia has been conducted in Poland so far. It is also indicated that nutritional education strategies achieve limited success when implemented alone; therefore, they should be applied along with fortification or supplementation programs [67]. Understanding the factors that influence dietary iron intake, such as the socioeconomic status of the region or the size of the city (rural/urban environment), will help to create cost-effective strategies targeted at specific population groups in the regions affected by anemia and insufficient iron intake.
Although the study was conducted in a large national homogenous group of Polish adolescents and interesting results were obtained, there are some limitations to be indicated. The most important one is that the study was conducted only in a population of Polish adolescents, and so it does not provide a broader international perspective, which would be valuable. Another limitation is the fact that iron intake was assessed without the general energy value of diet, so it was impossible to recalculate iron per energy value of diet to compare not only intake of iron but also iron density of the diet. Last but not least, the data on the potential interfering factors were not gathered within the study (e.g., menstruation age, parents’ education), so they should be taken into account in further studies.

5. Conclusions

Based on the results obtained, it may be concluded that the economic status of the region and size of the city are the most important environmental determinants of iron intake in adolescents and, hence, they should be taken into account while developing educational programs, especially for the female adolescent population.

Author Contributions

Conceptualization, D.S. and D.G.; methodology, D.S. and D.G.; formal analysis, D.S. and D.G.; investigation, D.S. and D.G.; writing—original draft preparation, D.S. and D.G.; writing—review and editing, D.S. and D.G. Both authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

The study was conducted according to the guidelines of the Declaration of Helsinki, and approved by the Ethics Committee of the Faculty of Human Nutrition and Consumer Sciences of the Warsaw University of Life Sciences (No 24/2018).

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

No new data were created or analyzed in this study. Data sharing is not applicable to this article.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. National Academies of Sciences, Engineering, and Medicine. Adolescent Development. In The Promise of Adolescence: Realizing Opportunity For All Youth; National Academies Press: Washington, DC, USA, 2019. [Google Scholar]
  2. Lassi, Z.; Moin, A.; Bhutta, Z. Nutrition in Middle Childhood and Adolescence. In Child and Adolescent Health and Development, 3rd ed.; Bundy, D.A.P., de Silva, N., Horton, S., Jamison, D.T., Patton, G.C., Eds.; The International Bank for Reconstruction and Development, The World Bank: Washington DC, USA, 2017. [Google Scholar]
  3. Verstraeten, R.; Leroy, J.L.; Pieniak, Z.; Ochoa-Avilès, A.; Holdsworth, M.; Verbeke, W.; Maes, L.; Kolsteren, P. Individual and environmental factors influencing adolescents’ dietary behavior in low-and middle-income settings. PLoS ONE 2016, 11, e0157744. [Google Scholar] [CrossRef]
  4. Chen, P.J.; Antonelli, M. Conceptual Models of Food Choice: Influential Factors Related to Foods, Individual Differences, and Society. Foods 2020, 9, 1898. [Google Scholar] [CrossRef] [PubMed]
  5. Nieuwendyk, L.M.; Belon, A.P.; Vallianatos, H.; Raine, K.D.; Schopflocher, D.; Spence, J.C.; Plotnikoff, R.C.; Nykiforuk, C.I. How perceptions of community environment influence health behaviours: Using the Analysis Grid for Environments Linked to Obesity Framework as a mechanism for exploration. Health Promot. Chronic Dis. Prev. Can. Res. Policy Pract. 2016, 36, 175. [Google Scholar] [CrossRef] [Green Version]
  6. Paquet, C. Environmental Influences on Food Behaviour. Int. J. Environ. Res. Public Health 2019, 16, 2763. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  7. French, S.A.; Tangney, C.C.; Crane, M.M.; Wang, Y.; Appelhans, B.M. Nutrition quality of food purchases varies by household income: The SHoPPER study. BMC Public Health 2019, 19, 1–7. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  8. Walker, C.; Gibney, E.R.; Hellweg, S. Comparison of environmental impact and nutritional quality among a European sample population–findings from the Food4Me study. Sci. Rep. 2018, 8, 1–10. [Google Scholar] [CrossRef] [PubMed]
  9. Liu, J.; Tuvblad, C.; Raine, A.; Baker, L. Genetic and environmental influences on nutrient intake. Genes Nutr. 2013, 8, 241–252. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  10. Schmid, A.; Gille, D.; Piccinali, P.; Bütikofer, U.; Chollet, M.; Altintzoglou, T.; Honkanen, P.; Walther, B.; Stoffers, H. Factors predicting meat and meat products consumption among middle-aged and elderly people: Evidence from a consumer survey in Switzerland. Food Nutr. Res. 2017, 61. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  11. Sang-Ngoen, D.; Hutchinson, C.; Satheannoppakao, W.; Tipayamongkholgul, M. Dietary iron intake and availability in hill tribe and urban women, Chiang Rai province, Northern Thailand. Ecol. Food Nutr. 2020, 59, 399–419. [Google Scholar] [CrossRef]
  12. Clonan, A.; Roberts, K.E.; Holdsworth, M. Socioeconomic and demographic drivers of red and processed meat consumption: Implications for health and environmental sustainability. Proc. Nutr. Soc. 2016, 75, 367–373. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  13. Knez, M.; Nikolic, M.; Zekovic, M.; Stangoulis, J.C.; Gurinovic, M.; Glibetic, M. The influence of food consumption and socio-economic factors on the relationship between zinc and iron intake and status in a healthy population. Public Health Nutr. 2017, 20, 2486–2498. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  14. Andrissi, L.; Mottini, G.; Sebastiani, V.; Boldrini, L.; Giuliani, A. Dietary habits and growth: An urban/rural comparison in the Andean region of Apurimac, Peru. Ann. Ist. Super. 2013, 49, 340–346. [Google Scholar] [CrossRef]
  15. Kosaka, S.; Suda, K.; Gunawan, B.; Raksanagara, A.; Watanabe, C.; Umezaki, M. Urban-rural difference in the determinants of dietary and energy intake patterns: A case study in West Java, Indonesia. PLoS ONE 2018, 13, e0197626. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  16. Sans, P.; Combris, P. World meat consumption patterns: An overview of the last fifty years (1961–2011). Meat Sci. 2015, 109, 106–111. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  17. Milman, N.T. Dietary Iron intake in pregnant women in Europe: A review of 24 studies from 14 countries in the period 1991–2014. J. Nutr. Metab. 2020. [Google Scholar] [CrossRef] [Green Version]
  18. Horiuchi, Y.; Kusama, K.; Kanha, S.; Yoshiike, N.; The FIDR research team. Urban-Rural Differences in Nutritional Status and Dietary Intakes of School-Aged Children in Cambodia. Nutrients 2019, 11, 14. [Google Scholar] [CrossRef] [Green Version]
  19. Niessen, L.W.; Mohan, D.; Akuoku, J.K.; Mirelman, A.J.; Ahmed, S.; Koehlmoos, T.P.; Trujillo, A.; Khan, J.; Peters, D.H. Tackling socioeconomic inequalities and non-communicable diseases in low-income and middle-income countries under the Sustainable Development agenda. Lancet 2018, 391, 2036–2046. [Google Scholar] [CrossRef] [Green Version]
  20. World Health Organization. Worldwide Prevalence of Anaemia 1993–2005; WHO Global Database of Anaemia; De Benoist, B., McLean, E., Egli, I., Cogswell, M., Eds.; World Health Organization: Geneva, Switzerland, 2008. [Google Scholar]
  21. World Health Organization. Focusing on Anaemia: Towards an Integrated Approach for Effective Anaemia Control; World Health Organization: Genevea, Switzerland, 2004. [Google Scholar]
  22. Shaka, M.F.; Wondimagegne, Y.A. Anemia, a moderate public health concern among adolescents in South Ethiopia. PLoS ONE 2018, 13, e0191467. [Google Scholar] [CrossRef]
  23. Pan American Health Organization. Anemia among Adolescent and Young Adult Women in Latin America and the Caribbean: A Cause for Concern; Pan American Health Organization: Washington, DC, USA, 2008. [Google Scholar]
  24. Weinborn, V.; Pizarro, F.; Olivares, M.; Brito, A.; Arredondo, M.; Flores, S.; Valenzuela, C. The Effect of Plant Proteins Derived from Cereals and Legumes on Heme Iron Absorption. Nutrients 2015, 7, 8977–8986. [Google Scholar] [CrossRef]
  25. Ems, T.; Huecker, M.R. Biochemistry, iron absorption. In StatPearls; 2020. Available online: https://www.ncbi.nlm.nih.gov/books/NBK448204/ (accessed on 9 February 2021).
  26. Moustarah, F.; Mohiuddin, S.S. Dietary iron. In StatPearls; 2020. Available online: https://www.ncbi.nlm.nih.gov/books/NBK540969/ (accessed on 9 February 2021).
  27. Lesjak, M.K.S.; Srai, S. Role of Dietary Flavonoids in Iron Homeostasis. Pharmaceuticals 2019, 12, 119. [Google Scholar] [CrossRef] [Green Version]
  28. Young, I.; Parker, H.M.; Rangan, A.; Prvan, T.; Cook, R.L.; Donges, C.E.; Steinbeck, K.S.; O’Dwyer, N.J.; Cheng, H.L.; Franklin, J.L.; et al. Association between Haem and Non-Haem Iron Intake and Serum Ferritin in Healthy Young Women. Nutrients 2018, 10, 81. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  29. Central Statistical Office in Poland. December 2019. Available online: https://bdl.stat.gov.pl/BDL/dane/podgrup/temat (accessed on 9 February 2021).
  30. Skolmowska, D.; Głąbska, D. Analysis of Heme and Non-Heme Iron Intake and Iron Dietary Sources in Adolescent Menstruating Females in a National Polish Sample. Nutrients 2019, 11, 1049. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  31. Institute of Medicine. Dietary Reference Intakes for Vitamin A, Vitamin K, Arsenic, Boron, Chromium, Copper, Iodine, Iron, Manganese, Molybdenum, Nickel, Silicon, Vanadium, and Zinc; The National Academies Press: Washington, DC, USA, 2001. [Google Scholar]
  32. Głąbska, D.; Guzek, D.; Ślązak, J.; Włodarek, D. Assessing the Validity and Reproducibility of an Iron Dietary Intake Questionnaire Conducted in a Group of Young Polish Women. Nutrients 2017, 9, 199. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  33. Kunachowicz, H.; Nadolna, J.; Przygoda, B.; Iwanow, K. Food Composition Tables; PZWL Medical Publishing Group: Warsaw, Poland, 2005. [Google Scholar]
  34. Zhu, Z.; Wu, F.; Lu, Y.; Wu, C.; Wang, Z.; Zang, J.; Guo, C.; Jia, X.; Yao, J.; Peng, H.; et al. Total and Nonheme Dietary Iron Intake Is Associated with Metabolic Syndrome and Its Components in Chinese Men and Women. Nutrients 2018, 10, 1663. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  35. The Central Statistical Office in Poland. December 2019. Available online: http://demografia.stat.gov.pl/bazademografia/Tables.aspx. (accessed on 10 June 2020).
  36. Central Statistical Office in Poland. Available online: https://bdl.stat.gov.pl/BDL/dane/podgrup/tablica (accessed on 9 February 2021).
  37. Central Statistical Office in Poland. Available online: https://stat.gov.pl/cps/rde/xbcr/gus/oz_miasta_w_liczbach_2009_notatka_infor.pdf (accessed on 9 February 2021).
  38. Eurostat. GDP per Inhabitant in PPS (% of the EU-27 Average). Available online: https://ec.europa.eu/eurostat/web/regions/statistics-illustrated (accessed on 9 February 2021).
  39. Milman, N.T. A review of nutrients and compounds, which promote or inhibit intestinal iron absorption: Making a platform for dietary measures that can reduce iron uptake in patients with genetic haemochromatosis. J. Nutr. Metab. 2020. [Google Scholar] [CrossRef] [PubMed]
  40. Love, H.J.; Sulikowski, D. Of meat and men: Sex differences in implicit and explicit attitudes toward meat. Front. Psychol. 2018, 9, 559. [Google Scholar] [CrossRef]
  41. Sergentanis, T.N.; Chelmi, M.-E.; Liampas, A.; Yfanti, C.-M.; Panagouli, E.; Vlachopapadopoulou, E.; Michalacos, S.; Bacopoulou, F.; Psaltopoulou, T.; Tsitsika, A. Vegetarian Diets and Eating Disorders in Adolescents and Young Adults: A Systematic Review. Children 2021, 8, 12. [Google Scholar] [CrossRef]
  42. Rhee, J.J.; Cho, E.; Willett, W.C. Energy adjustment of nutrient intakes is preferable to adjustment using body weight and physical activity in epidemiological analyses. Public Health Nutr. 2014, 17, 1054–1060. [Google Scholar] [CrossRef] [Green Version]
  43. Czerwonka, M.; Tokarz, A. Iron in red meat–friend or foe. Meat Sci. 2017, 123, 157–165. [Google Scholar] [CrossRef]
  44. World Health Organization. Nutritional Anaemias: Tools for Effective Prevention and Control; World Health Organization: Geneva, Svitzerland, 2017. [Google Scholar]
  45. Mintz, J.; Mirza, J.; Young, E.; Bauckman, K. Iron Therapeutics in Women’s Health: Past, Present, and Future. Pharmaceuticals 2020, 13, 449. [Google Scholar] [CrossRef] [PubMed]
  46. Haider, L.M.; Schwingshackl, L.; Hoffmann, G.; Ekmekcioglu, C. The effect of vegetarian diets on iron status in adults: A systematic review and meta-analysis. Crit. Rev. Food Sci. Nutr. 2018, 58, 1359–1374. [Google Scholar] [CrossRef] [PubMed]
  47. Aykan, N.F. Red meat and colorectal cancer. Oncol. Rev. 2015, 9, 288. [Google Scholar] [CrossRef] [PubMed]
  48. Prentice, A.M.; Mendoza, Y.A.; Pereira, D.; Cerami, C.; Wegmuller, R.; Constable, A.; Spieldenner, J. Dietary strategies for improving iron status: Balancing safety and efficacy. Nutr. Rev. 2017, 75, 49–60. [Google Scholar] [CrossRef] [PubMed]
  49. Kim, J.Y.; Shin, S.; Han, K.; Lee, K.C.; Kim, J.H.; Choi, Y.S.; Kim, D.H.; Nam, G.E.; Yeo, H.D.; Lee, H.G.; et al. Relationship between socioeconomic status and anemia prevalence in adolescent girls based on the fourth and fifth Korea National Health and Nutrition Examination Surveys. Eur. J. Clin. Nutr. 2014, 68, 253–258. [Google Scholar] [CrossRef] [PubMed]
  50. Akram, M.; Akram, H.; Basharat, S.; Amir, S. Comparison of dietary iron intake with recommended dietary allowance among pregnant women belonging to different socio-economic strata. Biomed. Lett. 2020, 6, 11–16. [Google Scholar]
  51. Martin, J.C.; Moran, L.J.; Teede, H.J.; Ranasinha, S.; Lombard, C.B.; Harrison, C.L. Exploring Diet Quality between Urban and Rural Dwelling Women of Reproductive Age. Nutrients 2017, 9, 586. [Google Scholar] [CrossRef] [Green Version]
  52. Viteri, F.E. Nutrition-related health consequences of urbanization. Food Nutr. Bull. 1987, 9, 1–20. [Google Scholar] [CrossRef]
  53. Regasa, R.T.; Haidar, J.A. Anemia and its determinant of in-school adolescent girls from rural Ethiopia: A school based cross-sectional study. BMC Womens Health 2019, 19, 1–7. [Google Scholar] [CrossRef] [Green Version]
  54. Berheto, T.M.; Mikitie, W.K.; Argaw, A. Urban-rural disparities in the nutritional status of school adolescent girls in the Mizan district, south-western Ethiopia. Rural Remote Health 2015, 15, 1–10. [Google Scholar]
  55. Evang, E.C.; Habte, T.-Y.; Owino, W.O.; Krawinkel, M.B. The Nutritional and Micronutrient Status of Urban Schoolchildren with Moderate Anemia is Better than in a Rural Area in Kenya. Nutrients 2020, 12, 207. [Google Scholar] [CrossRef] [Green Version]
  56. Alibabić, V.; Šertović, E.; Mujić, I.; Živković, J.; Blažić, M.; Zavadlav, S. The level of nutrition knowledge and dietary iron intake of Bosnian women. Procedia Soc. Behav. Sci. 2016, 217, 1071–1075. [Google Scholar] [CrossRef] [Green Version]
  57. Tripathy, J.P.; Thakur, J.S.; Jeet, G.; Chawla, S.; Jain, S.; Prasad, R. Urban rural differences in diet, physical activity and obesity in India: Are we witnessing the great Indian equalisation? Results from a cross-sectional STEPS survey. BMC Public Health 2016, 16, 1–10. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  58. Shi, Z. Gut microbiota: An important link between western diet and chronic diseases. Nutrients 2019, 11, 2287. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  59. Statovci, D.; Aguilera, M.; MacSharry, J.; Melgar, S. The impact of western diet and nutrients on the microbiota and immune response at mucosal interfaces. Front. Immunol. 2017, 8, 838. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  60. Asrie, F. Prevalence of anemia and its associated factors among pregnant women receiving antenatal care at Aymiba Health Center, northwest Ethiopia. J. Blood Med. 2017, 8, 35. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  61. Bahrami, A.; Khorasanchi, Z.; Tayefi, M.; Avan, A.; Seifi, N.; Tavakoly Sany, S.B.; Ferns, G.A.; Bahrami-Taghanaki, H.; Ghayour-Mobarhan, M. Anemia is associated with cognitive impairment in adolescent girls: A cross-sectional survey. Appl. Neuropsychol. Child 2020, 9, 165–171. [Google Scholar] [CrossRef] [PubMed]
  62. Korkmaz, S.; Yıldız, S.; Korucu, T.; Gundogan, B.; Sunbul, Z.E.; Korkmaz, H.; Atmaca, M. Frequency of anemia in chronic psychiatry patients. Neuropsychiatr. Dis. Treat. 2015, 11, 2737. [Google Scholar] [CrossRef] [Green Version]
  63. World Health Organization. Global Nutrition Targets 2025: Anemia Policy Brief; World Health Organization: Geneva, Svitzerland, 2014. [Google Scholar]
  64. World Health Organization; Food and Agriculture Organization. Guidelines on Food Fortification with Micronutrients; Allen, L., de Benoist, B., Dary, O., Hurrell, R., Eds.; WHO: Geneva, Switzerland, 2006. [Google Scholar]
  65. Ratkovska, B.; Kunachowicz, H.; Przygoda, B. Polish market of vitamins and minerals enriched food products beside the EU legal requirements. Zywn. Nauk. Technol. Jakosc 2007, 6, 90–99. (In Polish) [Google Scholar]
  66. Baizhumanova, A.; Nishimura, A.; Ito, K.; Sakamoto, J.; Karsybekova, N.; Tsoi, I.; Hamajima, N. Effectiveness of communication campaign on iron deficiency anemia in Kyzyl-Orda region, Kazakhstan: A pilot study. BMC Hematol. 2010, 10, 1–8. [Google Scholar] [CrossRef] [Green Version]
  67. García-Casal, M.N.; Landaeta-Jiménez, M.; Puche, R.; Leets, I.; Carvajal, Z.; Patiño, E.; Ibarra, C. A program of nutritional education in schools reduced the prevalence of iron deficiency in students. Anemia 2011, 2011. [Google Scholar] [CrossRef]
Table 1. Intake of iron in a population-based sample of Polish female adolescents, stratified by meat intake in the region.
Table 1. Intake of iron in a population-based sample of Polish female adolescents, stratified by meat intake in the region.
Iron IntakeLow Meat Intake in the RegionHigh Meat Intake in the Regionp-Value **
Mean ± SDMedianMinMaxMean ± SDMedianMinMax
Intake of various forms of ironTotal iron (mg)12.77 ± 6.9911.01 *0.4843.5912.83 ± 7.2311.01 *1.9444.880.8445
Heme iron (mg)1.70 ± 1.551.16 *0.009.861.67 ± 1.521.18 *0.0011.380.9534
Nonheme iron (mg)11.07 ± 5.969.72 *0.3840.8411.16 ± 6.259.61 *1.7043.730.7876
Animal iron (mg)4.24 ± 3.872.91 *0.0024.654.18 ± 3.792.95 *0.0028.450.9532
Plant iron (mg)8.53 ± 4.957.56 *0.007.848.65 ± 5.297.34 *0.0042.000.7901
Intake of iron from various food productsCereals (mg)3.59 ± 2.293.15 *0.0017.343.57 ± 2.303.04 *0.0019.930.5817
Meat products (mg)3.34 ± 3.662.02 *0.0024.213.27 ± 3.562.04 *0.0024.460.8849
Vegetables (mg)2.21 ± 2.021.60 *0.0012.072.24 ± 2.121.60 *0.0014.430.8537
Nuts (mg)0.97 ± 1.260.64 *0.0010.841.09 ± 1.520.72 *0.0020.240.3785
Fruit (mg)0.74 ± 0.660.56 *0.006.440.70 ± 0.630.55 *0.007.340.3012
Cocoa (mg)0.53 ± 0.570.36 *0.004.340.53 ± 0.570.36 *0.004.710.8447
Eggs (mg)0.52 ± 0.560.47 *0.006.290.53 ± 0.440.47 *0.003.140.1574
Potatoes (mg)0.36 ± 0.320.29 *0.003.570.38 ± 0.380.29 *0.003.570.2694
Dairy products (mg)0.27 ± 0.200.24 *0.001.810.27 ± 0.180.24 *0.001.870.3037
Fat (mg)0.13 ± 0.120.09 *0.001.430.14 ± 0.150.11 *0.001.710.0087
Fish products (mg)0.11 ± 0.160.06 *0.001.380.11 ± 0.160.06 *0.001.710.7239
* nonparametric distribution (for Shapiro–Wilk test p ≤ 0.05). ** Mann–Whitney U test used (nonparametric distribution).
Table 2. Intake of iron in a population-based sample of Polish male adolescents, stratified by meat intake in the region.
Table 2. Intake of iron in a population-based sample of Polish male adolescents, stratified by meat intake in the region.
Iron IntakeLow Meat Intake in the RegionHigh Meat Intake in the Regionp-Value **
Mean ± SDMedianMinMaxMean ± SDMedianMinMax
Intake of various forms of ironTotal iron (mg)17.56 ± 9.1615.50 *2.0644.7418.11 ± 9.4215.81 *3.4443.530.5202
Heme iron (mg)3.01 ± 2.162.43 *0.0013.083.12 ± 2.202.66 *0.1813.620.4365
Nonheme iron (mg)14.55 ± 7.6212.73 *1.2539.8114.99 ± 7.8012.85 *2.6537.120.5593
Animal iron (mg)7.53 ± 5.396.06 *0.0032.707.80 ± 5.516.64 *0.4434.040.4365
Plant iron (mg)10.03 ± 6.068.75 *0.0019.5910.31 ± 6.128.56 *1.4720.260.6747
Intake of iron from various food productsCereals (mg)4.50 ± 3.213.78 *0.0026.534.54 ± 3.103.80 *0.0015.960.7894
Meat products (mg)6.08 ± 5.004.60 *0.0031.256.41 ± 5.135.03 *0.0031.810.2937
Vegetables (mg)2.46 ± 2.381.76 *0.0015.218.61 ± 2.401.94 *0.0011.910.7787
Nuts (mg)1.06 ± 1.560.72 *0.0014.611.02 ± 1.540.55 *0.0014.050.3934
Fruit (mg)0.70 ± 0.680.46 *0.006.470.73 ± 0.690.46 *0.004.610.8951
Cocoa (mg)0.60 ± 0.660.42 *0.004.810.70 ± 0.810.48 *0.005.720.3368
Eggs (mg)0.90 ± 0.930.63 *0.006.290.83 ± 0.930.47 *0.006.290.0580
Potatoes (mg)0.54 ± 0.570.36 *0.003.570.61 ± 0.740.36 *0.003.570.6951
Dairy products (mg)0.36 ± 0.280.28 *0.002.040.33 ± 0.260.26 *0.001.640.1183
Fat (mg)0.18 ± 0.220.11 *0.001.970.17 ± 0.220.09 *0.001.430.1339
Fish products (mg)0.19 ± 0.250.13 *0.002.030.24 ± 0.340.13 *0.001.960.2344
* nonparametric distribution (for Shapiro–Wilk test p ≤ 0.05). ** Mann–Whitney U test used (nonparametric distribution).
Table 3. Intake of iron in a population-based sample of Polish female adolescents, stratified by Gross Domestic Product (GDP) in the region.
Table 3. Intake of iron in a population-based sample of Polish female adolescents, stratified by Gross Domestic Product (GDP) in the region.
Iron IntakeLow GDP in the RegionMedium GDP in the RegionHigh GDP in the Regionp-Value **
Mean ± SDMedianMinMaxMean ± SDMedianMinMaxMean ± SDMedianMinMax
Intake of various forms of ironTotal iron (mg)13.03 ± 7.4411.06 *1.5843.5912.71 ± 6.8811.04 *0.4844.8812.43 ± 6.8310.80 * 1.7437.170.4556
Heme iron (mg)1.66 ± 1.521.14 *A0.0010.321.68 ± 1.471.20 *A0.0011.381.76 ± 1.721.17 *B 0.038.390.0047
Nonheme iron (mg)11.38 ± 6.499.78 *A1.5840.8411.03 ± 5.929.72 *AB0.3843.7310.67 ± 5.529.39 *B 1.5529.120.0342
Animal iron (mg)4.14 ± 3.812.86 *A0.0025.814.21 ± 3.673.01 *A0.0028.454.41 ± 4.302.92 *B 0.0720.970.0029
Plant iron (mg)8.89 ± 5.577.40 *0.0020.618.50 ± 4.977.59 *0.2342.008.02 ± 4.177.10 * 1.1822.720.6638
Intake of iron from various food productsCereals (mg)3.66 ± 2.413.08 *A0.0019.933.53 ± 2.183.07 *AB0.0516.913.49 ± 2.283.04 *B 0.2616.400.0495
Meat products (mg)3.22 ± 3.571.93 *0.0022.693.28 ± 3.472.05 *0.0024.463.60 ± 4.042.22 * 0.0020.470.2370
Vegetables (mg)2.37 ± 2.251.60 *0.0012.862.16 ± 1.971.60 *0.0014.432.01 ± 1.771.44 *0.0011.660.1608
Nuts (mg)1.07 ± 1.310.72 *0.0010.841.05 ± 1.560.55 *0.0020.240.86 ± 1.150.37 *0.007.230.5640
Fruit (mg)0.76 ± 0.670.64 *A0.006.440.71 ± 0.660.55 *AB0.007.340.63 ± 0.520.55 *B0.004.140.0273
Cocoa (mg)0.53 ± 0.550.36 *0.003.760.52 ± 0.580.36 *0.004.710.52 ± 0.590.41 *0.003.870.9303
Eggs (mg)0.53 ± 0.480.47 *0.006.290.53 ± 0.480.47 *0.004.710.47 ± 0.580.31 *0.006.290.7161
Potatoes (mg)0.36 ± 0.350.29 *0.003.570.38 ± 0.380.29 *0.003.570.39 ± 0.320.29 *0.002.860.5341
Dairy products (mg)0.28 ± 0.200.24 *0.001.870.28 ± 0.190.25 *0.001.790.24 ± 0.190.21 *0.001.320.5437
Fat (mg)0.14 ± 0.120.11 *0.001.140.14 ± 0.160.11 *0.001.710.12 ± 0.100.11 *0.000.800.5341
Fish products (mg)0.11 ± 0.140.06 *0.001.710.12 ± 0.180.06 *0.001.380.10 ± 0.140.06 *0.001.020.7093
* nonparametric distribution (for Shapiro–Wilk test p ≤ 0.05). ** Kruskal–Wallis analysis of variance (ANOVA) with post hoc Tukey test used (nonparametric distribution)–values with different letters in rows (A, B) are significantly different.
Table 4. Intake of iron in a population-based sample of Polish male adolescents, stratified by Gross Domestic Product (GDP) in the region.
Table 4. Intake of iron in a population-based sample of Polish male adolescents, stratified by Gross Domestic Product (GDP) in the region.
Iron intakeLow GDP in the RegionMedium GDP in the RegionHigh GDP in the Regionp-Value **
Mean ± SDMedianMinMaxMean ± SDMedianMinMaxMean ± SDMedianMinMax
Intake of various forms of ironTotal iron (mg)18.59 ± 9.5516.52 *2.9543.6217.30 ± 9.0515.26 *2.0644.7420.58 ± 10.2820.705.8233.040.5323
Heme iron (mg)3.25 ± 2.312.64 *0.1813.622.95 ± 2.112.37 *0.0013.083.11 ± 1.963.27 *0.595.350.1193
Nonheme iron (mg)15.34 ± 7.8913.53 *2.6537.1214.35 ± 7.5412.53 *1.2539.8117.47 ± 8.9815.644.9129.760.4329
Animal iron (mg)8.12 ± 5.786.59 *0.4434.047.38 ± 5.285.92 *0.0032.707.78 ± 4.918.191.4913.370.2324
Plant iron (mg)10.47 ± 6.249.20 *1.4710.919.92 ± 5.998.57 *0.0037.6112.80 ± 7.5910.53 *3.5424.850.7868
Intake of iron from various food productsCereals (mg)4.52 ± 3.173.89 *0.0022.564.49 ± 3.193.78 *0.0026.535.39 ± 4.264.25 *1.5914.540.0656
Meat products (mg)6.46 ± 5.434.82 *0.0031.816.03 ± 4.884.73 *0.0030.616.01 ± 4.594.18 *0.6711.730.1557
Vegetables (mg)2.68 ± 2.422.10 *A0.0011.292.40 ± 2.361.60 *B0.0015.213.03 ± 3.482.41 *AB0.0010.310.0180
Nuts (mg)1.19 ± 1.820.72 *0.0014.051.01 ± 1.450.72 *0.0014.610.67 ± 0.760.37 *0.002.170.0563
Fruit (mg)0.80 ± 0.790.55 *0.005.010.66 ± 0.610.46 *0.005.541.50 ± 2.220.830.196.470.3031
Cocoa (mg)0.60 ± 0.720.39 *A0.004.440.62 ± 0.680.42 *A0.005.721.27 ± 0.871.00B0.452.990.0103
Eggs (mg)1.06 ± 1.150.63 *0.006.290.82 ± 0.820.63 *0.006.291.10 ± 1.290.630.313.930.0952
Potatoes (mg)0.50 ± 0.590.36 *0.003.570.57 ± 0.610.36 *0.003.570.60 ± 0.690.360.212.140.1285
Dairy products (mg)0.37 ± 0.290.28 *0.001.730.34 ± 0.270.28 *0.002.040.46 ± 0.310.370.050.900.2975
Fat (mg)0.17 ± 0.250.09 *0.001.430.17 ± 0.210.11 *0.001.970.33 ± 0.380.140.091.140.1285
Fish products (mg)0.22 ± 0.310.13 *0.001.960.19 ± 0.260.13 *0.002.030.21 ± 0.260.130.000.720.0988
* nonparametric distribution (for Shapiro–Wilk test p ≤ 0.05). ** Kruskal–Wallis analysis of variance (ANOVA) with post hoc Tukey test used (nonparametric distribution)–values with different letters in rows (A, B) are significantly different.
Table 5. Intake of iron in a population-based sample of Polish female adolescents, stratified by the size of the city.
Table 5. Intake of iron in a population-based sample of Polish female adolescents, stratified by the size of the city.
Iron IntakeVillages and Small TownsMedium CitiesBig Citiesp-Value **
Mean ± SDMedianMinMaxMean ± SDMedianMinMaxMean ± SDMedianMinMax
Intake of various forms of ironTotal iron (mg)13.35 ± 7.2511.42 *AB1.5843.5912.46 ± 6.9710.99 *A0.4844.8811.16 ± 6.739.72 *B2.2238.230.0350
Heme iron (mg)1.73 ± 1.611.15 *0.0011.381.68 ± 1.461.22 *0.009.781.39 ± 1.461.01 *0.019.860.0527
Nonheme iron (mg)11.62 ± 6.2510.23 *1.5540.8410.79 ± 5.969.40 *0.3843.739.77 ± 5.808.62 *2.1933.530.8179
Animal iron (mg)4.33 ± 4.022.87 *A0.0028.454.19 ± 3.643.05 *AB0.0024.443.47 ± 3.642.52 *B0.0224.650.0404
Plant iron (mg)9.02 ± 5.347.79 *A0.007.848.27 ± 4.897.13 *B0.2342.007.69 ± 4.936.52 *AB1.5233.190.0385
Intake of iron from various food productsCereals (mg)3.71 ± 2.333.24 *0.0017.343.48 ± 2.232.92 *0.0016.913.29 ± 2.443.00 *0.2619.930.1293
Meat products (mg)3.40 ± 3.761.94 *A0.0024.463.30 ± 3.452.16 *AB0.0022.692.63 ± 3.531.53 *B0.0024.210.0082
Vegetables (mg)2.39 ± 2.211.76 *0.0014.432.12 ± 1.951.57 *0.0012.861.75 ± 1.621.29 *0.0010.160.7926
Nuts (mg)1.09 ± 1.400.72 *0.0010.840.99 ± 1.410.55 *0.0020.240.92 ± 1.380.37 *0.007.230.9542
Fruit (mg)0.78 ± 0.740.64 *0.007.340.67 ± 0.540.55 *0.005.560.71 ± 0.630.55 *0.003.690.1472
Cocoa (mg)0.55 ± 0.550.42 *0.004.710.51 ± 0.590.36 *0.004.340.46 ± 0.530.33 *0.004.230.1153
Eggs (mg)0.54 ± 0.490.47 *A0.006.290.52 ± 0.470.47 *AB0.004.710.48 ± 0.710.31 *B0.006.290.0016
Potatoes (mg)0.37 ± 0.340.29 *0.003.570.37 ± 0.360.29 *0.003.570.41 ± 0.460.36 *0.003.570.0541
Dairy products (mg)0.28 ± 0.200.25 *A0.001.810.26 ± 0.180.23 *B0.001.870.25 ± 0.230.21 *B0.001.790.0034
Fat (mg)0.14 ± 0.140.11 *0.001.710.14 ± 0.130.11 *0.001.430.14 ± 0.140.11 *0.000.860.0541
Fish products (mg)0.11 ± 0.160.06 *A0.001.710.11 ± 0.160.06 *B0.001.250.10 ± 0.120.06 *B0.000.590.0010
* nonparametric distribution (for Shapiro–Wilk test p ≤ 0.05). ** Kruskal–Wallis analysis of variance (ANOVA) with post hoc Tukey test used (nonparametric distribution)–values with different letters in rows (A, B) are significantly different.
Table 6. Intake of iron in a population-based sample of Polish male adolescents, stratified by the size of the city.
Table 6. Intake of iron in a population-based sample of Polish male adolescents, stratified by the size of the city.
Iron IntakeVillages and Small TownsMedium CitiesBig Citiesp-Value **
Mean ± SDMedianMinMaxMean ± SDMedianMinMaxMean ± SDMedianMinMax
Intake of various forms of ironTotal iron (mg)17.97 ± 9.3016.03 *2.6744.7417.49 ± 9.1715.29 *2.0943.6215.55 ± 8.2213.95 *2.0637.170.2751
Heme iron (mg)3.07 ± 2.142.48 *0.2013.623.01 ± 2.202.37 *0.0013.082.69 ± 2.132.32 *0.0011.340.9783
Nonheme iron (mg)14.90 ± 7.7512.94 *2.2739.8114.47 ± 7.5912.50 *1.2537.6112.86 ± 6.8611.53 *1.5033.950.1406
Animal iron (mg)7.68 ± 5.356.20 *0.4934.047.53 ± 5.515.93 *0.0032.706.74 ± 5.325.80 *0.0028.350.3230
Plant iron (mg)10.30 ± 6.138.95 *1.478.929.95 ± 6.018.57 *0.0037.618.81 ± 5.767.69 *0.6629.120.2478
Intake of iron from various food productsCereals (mg)4.53 ± 3.193.86 *0.0026.534.55 ± 3.203.76 *0.0018.093.84 ± 3.052.85 *0.2615.290.3982
Meat products (mg)6.22 ± 4.964.82 *0.0031.816.14 ± 5.164.56 *0.0031.255.27 ± 4.453.84 *0.0018.970.5999
Vegetables (mg)2.52 ± 2.361.94 *0.0014.512.43 ± 2.431.60 *0.0015.212.43 ± 2.222.26 *0.0011.290.8223
Nuts (mg)1.16 ± 1.790.72 *A0.0014.610.95 ± 1.270.55 *B0.0012.250.71 ± 0.830.45 *AB0.003.610.0258
Fruit (mg)0.74 ± 0.740.55 *0.006.470.67 ± 0.640.46 *0.005.540.58 ± 0.410.46 *0.092.040.0668
Cocoa (mg)0.62 ± 0.730.42 *0.005.720.63 ± 0.660.45 *0.004.810.50 ± 0.540.43 *0.003.170.3588
Eggs (mg)0.90 ± 0.970.63 *0.006.290.87 ± 0.850.63 *0.006.290.94 ± 1.140.63 *0.006.290.2050
Potatoes (mg)0.55 ± 0.590.36 *0.003.570.55 ± 0.610.36 *0.003.570.59 ± 0.770.36 *0.003.570.3218
Dairy products (mg)0.35 ± 0.290.27 *0.001.730.35 ± 0.250.29 *0.002.040.35 ± 0.370.26 *0.002.000.1877
Fat (mg)0.17 ± 0.220.11 *0.001.430.18 ± 0.230.11 *0.001.970.17 ± 0.130.14 *0.000.570.3217
Fish products (mg)0.21 ± 0.280.13 *0.001.960.18 ± 0.260.06 *0.002.030.18 ± 0.300.10 *0.001.500.2074
* nonparametric distribution (for Shapiro–Wilk test p ≤ 0.05). ** Kruskal–Wallis analysis of variance (ANOVA) with post hoc Tukey test used (nonparametric distribution)–values with different letters in rows (A, B) are significantly different.
Table 7. Analysis to test between-subjects effect in a general linear model of 3 factors (meat intake in region, size of the city, and GDP for the region) (multi-factor ANOVAp-Values presented).
Table 7. Analysis to test between-subjects effect in a general linear model of 3 factors (meat intake in region, size of the city, and GDP for the region) (multi-factor ANOVAp-Values presented).
Iron IntakeFemale AdolescentsMale Adolescents
Meat Intake in the RegionGDP in the RegionSize of the CityMeat Intake in the RegionGDP in the RegionSize of the City
Total iron0.93310.87680.01010.52200.11100.2134
Heme iron0.90190.49470.08720.57350.15010.4322
Nonheme iron0.94670.67080.00960.54130.13210.2133
Animal iron0.90190.49470.08720.57350.15010.4322
Plant iron0.98060.27920.01780.63960.25610.2931
GDP—Gross Domestic Product.
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Skolmowska, D.; Głąbska, D. Analysis of Environmental Determinants of Heme and Nonheme Iron Intake in a National Sample of Polish Adolescents. Int. J. Environ. Res. Public Health 2021, 18, 5252. https://doi.org/10.3390/ijerph18105252

AMA Style

Skolmowska D, Głąbska D. Analysis of Environmental Determinants of Heme and Nonheme Iron Intake in a National Sample of Polish Adolescents. International Journal of Environmental Research and Public Health. 2021; 18(10):5252. https://doi.org/10.3390/ijerph18105252

Chicago/Turabian Style

Skolmowska, Dominika, and Dominika Głąbska. 2021. "Analysis of Environmental Determinants of Heme and Nonheme Iron Intake in a National Sample of Polish Adolescents" International Journal of Environmental Research and Public Health 18, no. 10: 5252. https://doi.org/10.3390/ijerph18105252

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop