Prevalence of Dietary Behavior and Determinants of Quality of Diet among Beneficiaries of Government Welfare Assistance in Poland
Abstract
:1. Introduction
Study Aim
2. Material and Methods
2.1. Characteristics of the Examined Region
2.2. Characteristics of the Study Sample
2.3. Characteristics of the Participants’ Survey
2.4. Characteristics of the Statistical Analyses
3. Results
3.1. Socio-Demographic Characteristics of the Study Population
3.2. Dietary Quality Score Characteristics among the Study Population
4. Discussion
5. Strengths and Limitations of the Study
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Food | Frequency | Score |
---|---|---|
Vegetables | >5 servings/week | 2 points |
2–5 servings/week | 1 point | |
<2 servings/week | 0 point | |
Fruit | >3 pieces/day | 2 points |
>3 pieces/week and <2 pieces/day | 1 point | |
<3 pieces/week | 0 point | |
Fish | >200 g/week | 2 points |
<200 g/week | 1 point | |
No intake | 0 point | |
Fat | None | 2 points |
Fat, spread | vegetable margarine | 1 point |
butter, blended spread, lard | 0 point | |
Fat, cooking | none/olive oil | 2 points |
vegetable margarine, oil | 1 point | |
margarine/butter/blended spread/lard | 0 point | |
Fat, summarized | 6 points, summarized | 2 points |
3–5 points, summarized | 1 point | |
2 points, summarized | 0 point |
Category | Score |
---|---|
Healthy dietary habits | 7–8 points |
Average dietary habits | 4–6 points |
Unhealthy dietary habits | 0–3 points |
Variable | Total N = 1710 | Men n = 568 (33.2%) | Women n = 1142 (66.8%) | p-Value |
---|---|---|---|---|
Age (years) | ||||
<30 | 194 (11.3%) | 47 (24.2%) | 147 (75.8%) | p < 0.001 |
30–39 | 725 (42.4%) | 201 (27.7%) | 524 (72.3%) | |
40–49 | 578 (33.8%) | 211 (36.5%) | 367 (63.5%) | |
50–59 | 213 (12.5%) | 109 (51.2%) | 104 (48.2%) | |
Education | ||||
Primary | 468 (27.4%) | 204 (43.6%) | 264 (56.4%) | p < 0.001 |
Vocational | 566 (33.1%) | 228 (40.3%) | 338 (59.7%) | |
Secondary | 583 (34.1%) | 128 (22.0%) | 455 (78.0%) | |
High | 93 (5.4%) | 8 (8.6%) | 109 (91.4%) | |
Employment status | ||||
Permanent job | 507 (29.6%) | 215 (42.4%) | 292 (57.6%) | p < 0.001 |
Temporary job | 149 (8.7%) | 70 (47.0%) | 79 (53.0%) | |
Disabled or retired | 55 (3.2%) | 28 (50.9%) | 27 (49.1%) | |
Unemployed | 999 (58.4%) | 255 (25.5%) | 744 (74.5%) | |
Subjective assessment of monthly income | ||||
Sufficient to cover all living needs plus may save a certain amount | 20 (1.2%) | 4 (20.0%) | 16 (80.0%) | p < 0.001 |
Sufficient to cover all living needs | 188 (11.0%) | 53 (28.2%) | 135 (71.8%) | |
Sufficient to cover basic needs only | 894 (52.3%) | 275 (28.7%) | 619 (71.3%) | |
Not sufficient to cover even the basic needs | 433 (25.3%) | 183 (42.3%) | 250 (57.7%) | |
Difficult to say | 175 (10.2%) | 53 (30.3%) | 122 (69.7%) | |
Subjective assessment of living conditions | ||||
Fair | 180 (10.5%) | 58 (32.2%) | 122 (67.8%) | p < 0.03 |
Rather fair | 607 (35.5%) | 173 (28.5%) | 434 (71.5%) | |
Neither fair nor poor | 774 (45.3%) | 284 (36.7%) | 490 (63.3%) | |
Rather poor | 85 (5.0%) | 28 (32.9%) | 57 (67.1%) | |
Poor | 30 (1.7%) | 14 (46.7%) | 16 (53.3%) | |
Difficult to say. | 34 (2.0%) | 11 (32.4%) | 23 (67.6%) | |
Cohabitation with partner and/or family | ||||
No (living alone) | 1444 (84.4%) | 479 (33.2%) | 965 (66.8%) | p > 0.05 |
Yes | 266 (15.6%) | 89 (33.5%) | 177 (66.5%) |
Variable | Total | Healthy Dietary Habits | Average Dietary Habits | Unhealthy Dietary Habits | |||
---|---|---|---|---|---|---|---|
N = 1710 | n = 52 (3.0%) | p-Value | n = 108 (6.3%) | p-Value | n = 1550 (90.7%) | p-Value | |
Gender | |||||||
Men | 568 (33.2%) | 12 (2.1%) | p > 0.05 | 31 (5.5%) | p > 0.05 | 525 (92.4%) | p > 0.05 |
Women | 1142 (66.8%) | 40 (3.5%) | 77 (6.7%) | 1025 (89.7%) | |||
Age (years) | |||||||
<30 | 194 (11.3%) | 5 (2.6%) | p > 0.05 | 13 (6.7%) | p > 0.05 | 176 (90.7%) | p > 0.05 |
30–39 | 725 (42.4%) | 27 (3.7%) | 47 (6.5%) | 651 (89.8%) | |||
40–49 | 578 (33.8%) | 14 (2.4%) | 38 (6.6%) | 526 (91.0%) | |||
50–59 | 213 (12.5%) | 6 (2.8%) | 10 (4.7%) | 197 (92.5%) | |||
Education | |||||||
Primary | 468 (27.4%) | 3 (0.6%) | p < 0.001 | 24 (5.1%) | p < 0.02 | 441 (94.2%) | p < 0.001 |
Vocational | 566 (33.1%) | 9 (1.6%) | 27 (4.8%) | 530 (93.6%) | |||
Secondary | 583 (34.1%) | 15 (2.6%) | 46 (7.9%) | 522 (89.5%) | |||
High | 93 (5.4%) | 25 (26.9%) | 11 (11.8%) | 57 (61.3%) | |||
Employment status | |||||||
Permanent job | 507 (29.6%) | 20 (3.9%) | p > 0.05 | 40 (7.9%) | p > 0.05 | 447 (88.2%) | p > 0.05 |
Temporary job | 149 (8.7%) | 3 (2.0%) | 5 (3.4%) | 141 (94.6%) | |||
Disabled or retired | 55 (3.2%) | 2 (3.6%) | 2 (3.6%) | 51 (92.8%) | |||
Unemployed | 999 (58.4%) | 27 (2.7%) | 61 (6.1%) | 911 (91.2%) | |||
Subjective assessment of monthly income | |||||||
Sufficient to cover all living needs plus may save a certain amount | 20 (1.2%) | 1 (5.0%) | p > 0.05 | 0 (0.0%) | p > 0.05 | 19 (95.0%) | p > 0.05 |
Sufficient to cover all living needs | 188 (11.0%) | 11 (5.8%) | 17 (9.0%) | 160 (85.1%) | |||
Sufficient to cover basic needs only | 894 (52.3%) | 18 (2.0%) | 59 (6.6%) | 817 (91.4%) | |||
Not sufficient to cover even the basic needs | 433 (25.3%) | 13 (3.0%) | 21 (4.8%) | 399 (92.2%) | |||
Difficult to say | 175 (10.2%) | 9 (5.1%) | 11 (6.3%) | 155 (88.6%) | |||
Subjective assessment of living conditions | |||||||
Fair | 180 (10.5%) | 4 (2.2%) | p > 0.05 | 14 (7.8%) | p > 0.05 | 162 (90.0%) | p > 0.05 |
Rather fair | 607 (35.5%) | 25 (4.1%) | 39 (6.4%) | 543(89.5%) | |||
Neither fair nor poor | 774 (45.3%) | 18 (2.3%) | 46 (5.9%) | 710 (91.7%) | |||
Rather poor | 85 (5.0%) | 3 (3.5%) | 5 (5.9%) | 77 (90.6%) | |||
Poor | 30 (1.7%) | 0 (0.0%) | 1 (3.3%) | 29 (96.7%) | |||
Difficult to say. | 34 (2.0%) | 2 (5.9%) | 3 (8.8%) | 29 (85.3%) | |||
Cohabitation with partner and/or family | |||||||
No (living alone) | 1444 (84.4%) | 45 (3.1%) | p > 0.05 | 96 (6.6%) | p > 0.05 | 1303 (90.2%) | p > 0.05 |
Yes | 266 (15.6%) | 7 (2.6%) | 12 (4.5%) | 247 (92.9%) |
Food | Frequency | Total (N = 1710) | Men (n = 568) | Women (n = 1142) | p-Value |
---|---|---|---|---|---|
Vegetables | >5 servings/week | 198 (11.6%) | 60 (10.6%) | 138 (12.1%) | 0.3616 |
2–5 servings/week | 200 (11.7%) | 62 (10.9%) | 138 (12.1%) | 0.4672 | |
<2 servings/week | 1312 (76.7%) | 446 (78.5%) | 866 (75.8%) | 0.2135 | |
Fruit | >3 pieces/day | 210 (12.3%) | 53 (9.3%) | 157 (13.7%) | 0.0089 |
>3 pieces/week and <2 pieces/day | 934 (54.6%) | 290 (51.1%) | 644 (59.4%) | 0.0011 | |
<3 pieces/week | 566 (33.1%) | 225 (39.6%) | 341 (29.9%) | 0.0001 | |
Fish | >200 g/week | 75 (4.4%) | 15 (2.6%) | 60 (5.3%) | 0.0104 |
<200 g/week | 96 (5.6%) | 33 (5.8%) | 63 (5.5%) | 0.7994 | |
No intake | 1539 (90%) | 520 (91.6%) | 1019 (89.2%) | 0.1193 | |
Fat Fat, spread Fat, Cooking | None minarine, vegetable margarine butter, blended spread, lard none/olive oil vegetable margarine, oil margarine/butter/blended spread/lard | 96 (5.6%) 563 (32.9%) 1051 (61.5%) 36 (2.1%) 986 (57.7%) 688 (40.2%) | 45 (7.9%) 188 (33.1%) 335 (59.0%) 14 (2.5%) 318 (56.0%) 236 (41.5%) | 51 (4.5%) 375 (32.8%) 716 (62.7%) 22 (1.9%) 668 (58.5%) 452 (39.6%) | 0.0041 0.9010 0.1387 0.4150 0.3244 0.0655 |
Characteristics | Total N = 1710 | ||||||
---|---|---|---|---|---|---|---|
Total | Unhealthy Dietary Habits | Univariable Logistic Regression | Multivariable Logistic Regression | ||||
N% | N% | p-Value | OR | 95% CI | OR | 95% CI | |
Gender | |||||||
Men | 568 (33.2%) | 525 (92.4%) | 0.0737 | 1.39 # | 0.97–2.01 | 1.02 | 0.68–1.54 |
Women | 1142 (66.8%) | 1025 (89.7%) | Ref. | Ref. | |||
Age (years) | |||||||
<30 | 194 (11.3%) | 176 (90.7%) | 0.3652 | Ref. | Ref. | ||
30–39 | 725 (42.4%) | 651 (89.8%) | 0.90 | 0.52–1.55 | 0.90 | 0.51–1.60 | |
40–49 | 578 (33.8%) | 526 (91.0%) | 1.03 | 0.59–1.82 | 0.96 | 0.36–1.33 | |
50–59 | 213 (12.5%) | 197 (92.5%) | 1.26 | 0.62–2.55 | 1.05 | 0.33–1.55 | |
Education | |||||||
Primary | 468 (27.4%) | 441 (94.2%) | p < 0.001 | 10.32 | 5.82–18.27 *** | 11.10 *** | 5.86–21.01 |
Vocational | 566 (33.1%) | 530 (93.6%) | 9.30 | 5.43–15.93 *** | 10.54 *** | 5.79–19.18 | |
Secondary | 583 (34.1%) | 522 (89.5%) | 5.40 | 3.29–8.87 *** | 5.83 *** | 3.48–9.79 | |
High | 93 (5.4%) | 57 (61.3%) | Ref. | Ref. | |||
Employment status | |||||||
Permanent job | 507 (29.6%) | 447 (88.2%) | 0.1403 | Ref | Ref. | ||
Temporary job | 149 (8.7%) | 141 (94.6%) | 2.37 * | 1.10–5.07 | 1.99 | 0.90–4.39 | |
Disabled or retired | 55 (3.2%) | 51 (92.8%) | 1.71 | 0.60–4.91 | 1.58 | 0.53–4.76 | |
Unemployed | 999 (58.4%) | 911 (91.2%) | 1.39# | 0.98–1.97 | 1.18 | 0.80–1.74 | |
Subjective assessment of monthly income | |||||||
Sufficient to cover all living needs plus may save a certain amount | 20 (1.2%) | 19 (95.0%) | 0.4076 | 2.45 | 0.31–19.38 | 3.50 | 0.40–30.42 |
Sufficient to cover all living needs | 188 (11.0%) | 160 (85.1%) | 0.74 | 0.40–1.36 | 0.92 | 0.47–1.80 | |
Sufficient to cover basic needs only | 894 (52.3%) | 817 (91.4%) | 1.37 | 0.81–2.31 | 1.35 | 0.78–2.36 | |
Not sufficient to cover even the basic needs | 433 (25.3%) | 399 (92.2%) | 1.51 | 0.84–2.71 | 1.27 | 0.67–2.39 | |
Difficult to say | 175 (10.2%) | 155 (88.6%) | Ref. | Ref. | |||
Subjective assessment of living conditions | |||||||
Fair | 180 (10.5%) | 162 (90.0%) | 0.5320 | Ref. | Ref. | ||
Rather fair | 607 (35.5%) | 543(89.5%) | 0.94 | 0.54–1.64 | 0.88 | 0.49–1.58 | |
Neither fair nor poor | 774 (42.3%) | 710 (91.7%) | 1.23 | 0.71–2.14 | 1.03 | 0.51–1.70 | |
Rather poor | 85 (5.0%) | 77 (90.6%) | 1.07 | 0.45–2.57 | 0.97 | 0.25–1.70 | |
Poor | 30 (1.7%) | 29 (96.7%) | 3.22 | 0.41–25.18 | 2.29 | 0.28–18.92 | |
Difficult to say | 34 (2.0%) | 29 (85.3%) | 0.64 | 0.22–1.87 | 0.80 | 0.25–2.59 | |
Cohabitation with partner and/or family | |||||||
No (living alone) | 1444 (84.4%) | 1303 (90.2%) | 0.1773 | Ref. | Ref. | ||
Yes | 266 (15.6%) | 247 (92.9%) | 1.41 | 0.85–2.32 | 1.52 | 0.90–2.55 |
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
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Kałucka, S.; Kaleta, D.; Makowiec-Dabrowska, T. Prevalence of Dietary Behavior and Determinants of Quality of Diet among Beneficiaries of Government Welfare Assistance in Poland. Int. J. Environ. Res. Public Health 2019, 16, 501. https://doi.org/10.3390/ijerph16030501
Kałucka S, Kaleta D, Makowiec-Dabrowska T. Prevalence of Dietary Behavior and Determinants of Quality of Diet among Beneficiaries of Government Welfare Assistance in Poland. International Journal of Environmental Research and Public Health. 2019; 16(3):501. https://doi.org/10.3390/ijerph16030501
Chicago/Turabian StyleKałucka, Sylwia, Dorota Kaleta, and Teresa Makowiec-Dabrowska. 2019. "Prevalence of Dietary Behavior and Determinants of Quality of Diet among Beneficiaries of Government Welfare Assistance in Poland" International Journal of Environmental Research and Public Health 16, no. 3: 501. https://doi.org/10.3390/ijerph16030501
APA StyleKałucka, S., Kaleta, D., & Makowiec-Dabrowska, T. (2019). Prevalence of Dietary Behavior and Determinants of Quality of Diet among Beneficiaries of Government Welfare Assistance in Poland. International Journal of Environmental Research and Public Health, 16(3), 501. https://doi.org/10.3390/ijerph16030501