Cross-sectional Study on the Effects of Socioeconomic Factors on Lead Exposure in Children by Gender in Serpong, Indonesia
Abstract
:1. Introduction
2. Methods
2.1. Subjects
2.2. Collection and Analysis of Blood Samples
2.3. Questionnaire
2.4. Statistical Analysis
3. Results
Parent’s characteristics a | Males | Females |
---|---|---|
Father’s income | ||
Low | 25 (86) | 25 (100) * |
High | 4 (14) | 0 (0) |
Father’s education | ||
Low | 14 (48) | 14 (56) |
High | 15 (52) | 11 (44) |
Mother’s education | ||
Low | 22 (76) * | 17 (68) |
High | 7 (24) | 8 (32) |
Father’s job | ||
Unskilled | 25 (86) * | 23 (92) * |
Skilled | 4 (14) | 2 (8) |
Standardized regression coefficient | |||
---|---|---|---|
Male (n = 56) | Female (n = 52) | Total (n = 108) | |
Independent variables | |||
Gender | 0.200 * | ||
Father’s income (Rupiahs) | −0.013 | 0.122 | 0.157 |
Father’s education | 0.117 | −0.010 | 0.051 |
Mother’s education | 0.204 | 0.028 | 0.186 |
Father’s job | 0.009 | 0.200 | −0.054 |
Drinking water sources | 0.033 | 0.167 | 0.107 |
Adjusted R square | 0.173 | 0.064 | 0.177 * |
Independent Variables | Odds Ratio [95 % Confidence Interval] | |||
---|---|---|---|---|
Male (n = 56) | Female (n = 52) | Total (n = 108) | ||
Gender | ||||
Female | 1 | |||
Male | 2.627 [1.139–6.056] * | |||
Father’s income (Rupiahs) | ||||
>3,000,000 | 1 | 1 | 1 | |
1,000,000–3,000,000 | 1.991 [0.320–12.389] | 2.958 [0.196–44.736] | 2.557 [0.643–10.165] | |
< 1,000,000 | 6.466 [0.592–70.629] | 1.552 [0.071–34.033] | 3.072 [0.588–16.057] | |
Father’s education | ||||
High education | 1 | 1 | 1 | |
Low education | 1.686 [0.385–7.383] | 1.102 [0.257–4.715] | 1.425 [0.511–3.970] | |
Mother’s education | ||||
High education | 1 | 1 | 1 | |
Low education | 1.730 [0.340–8.812] | 2.435 [0.514–11.538] | 1.926 [0.661–5.610] | |
Father’s job | ||||
Skilled | 1 | 1 | 1 | |
Unskilled | 0.153 [0.024–0.981] | 0.522 [0.081–3.366] | 0.262 [0.075–0.915] * | |
Drinking water sources | ||||
Non-well water | 1 | 1 | 1 | |
Well | 1.806 [0.474–6.887] | 3.491 [0.815–14.953] | 2.515 [0.984–6.427] |
4. Discussion
5. Conclusions
Acknowledgments
Conflict of Interests
References
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Appendix
Variable a | Males | Females | Total | |
---|---|---|---|---|
Age (year) | 7.1 (0.5, 6.1–7.9) | 6.9 (0.5, 6.0–7.8) | 7.0 (0.5, 6.0–7.9) | |
Weight (kg) | 21.9 (4.7, 15.0–37.0) | 20.6 (4.8, 11.5–39.0) | 21.3 (4.8, 11.5–39.0) | |
Height (cm) | 118.6 (5.8, 107–137) | 116.3 (5.2, 105–132) | 117.5 (5.6, 105–137) | |
Birth weight (g) | 3,060.70 | 3,158.10 | 3,107.60 | |
(559.7, 1,500–4,300) | (514.9, 1,400–4,500) | (538.3, 1,400–4,500) | ||
BMI | 21.9 (4.7, 15.0–37.0) | 20.6 (4.8, 11.5–39.0) | 21.3 (4.7, 11.5–39.0) | |
Birth order | 1.9 (1.2, 1–5) | 1.9 (1.2, 1–7) | 1.9 (1.2, 1–7) | |
Number of children in family | 2.4 (1.3, 1–6) | 2.4 (1.2, 1–7) | 2.4 (1.2, 1–7) | |
Milk consumption | 31 (55.4 %) | 29 (55.8 %) | 60 (55.6 %) | |
Volume (mL) | 200.4 (52.5, 0–1,000) | 222.5 (267.9, 0–900) | 211.02 (259.07, 0–1,000) | |
Breakfast | ||||
No | 7 (12.5%) | 6 (11.5%) | 13 (12.0%) | |
Sometimes | 13 (23.2 %) | 18 (34.6 %) | 31 (28.7 %) | |
Yes | 36 (64.3 %) | 28 (53.8 %) | 64 (59.3 %) | |
Breastfeeding history | ||||
All | 30 (53.6%) | 27 (51.9%) | 57 (52.8%) | |
Mostly | 10 (17.9%) | 11 (21.2%) | 21 (19.4%) | |
Partially | 9 (16.1%) | 10 (19.2%) | 19 (17.6%) | |
None | 7 (12.5%) | 4 (7.7%) | 11 (10.2%) |
Variable a | Males | Females | Total |
---|---|---|---|
Age (years) | |||
Father | 39.1 (7.8, 27–65) | 38.6 (7.1, 28–67) | 33.6 (5.8, 24–47) |
Mother | 33.0 (7.0, 22–54) | 33.6 (5.8, 24–47) | 33.3 (6.4, 22–54) |
Weight (kg) | |||
Father | 65.8 (8.6, 45.0–90.0) | 62.6 ( 8.5,45.0–85.0) | 64.3 (8.7, 45.0–90.0) |
Mother | 55.8 (10.7, 35.0–90.0) | 55.4 (8.1, 37.0–78.0) | 55.6 (9.5, 35.0–90.0) |
Height (cm) | |||
Father | 165.9 (6.5, 135.0–170.0) | 166.7 (6.6, 150.0–183.0) | 166.3 (6.6, 135.0–183.0) |
Mother | 155.3 (5.7, 141.0–170.0) | 154.8 (6.3, 140.0–165.0) | 155.1 (5.9, 140.0–170.0) |
Father’s income (Rupiahs) | |||
<1,000,000 | 12 (21.4%) | 11 (21.2%) | 23 (21.3%) |
1,000,000–3,000,000 | 35 (62.5%) | 31 (59.6%) | 66 (61.1%) |
>3,000,000 | 9 (16.1%) | 10 (19.2%) | 19 (17.6%) |
Education | |||
Father | |||
Elementary school | 11 (19.6%) | 8 (15.4%) | 19 (17.6%) |
Junior high school | 14 (25%) | 9 (17.31%) | 23(21.3%) |
Senior high school | 22 (39.3%) | 24 (46.2%) | 46 (42.6%) |
Diploma/University | 9 (16.1%) | 11 (21.2%) | 20 (18.5%) |
Mother | |||
Elementary school | 15 (26.5%) | 15 (28.8%) | 30 (27.8%) |
Junior high school | 18 (32.1%) | 14 (26.9%) | 32 (29.6%) |
Senior high school | 18 (32.1%) | 14 (26.9%) | 32 (29.6%) |
Diploma/University | 5 (8.9%) | 9 (17.3%) | 14 (13.0%) |
Smoking status | |||
Father | |||
Smoke at home | 34 (60.7%) | 32 (61.5%) | 66 (61.1%) |
Smoke but not at home | 4 (7.1%) | 8 (15.4%) | 12 (11.1%) |
Ex-smoker | 6 (10.7%) | 1 (1.9%) | 7 (6.5%) |
Never | 12 (21.4%) | 11 (21.2%) | 23 (21.3%) |
Mother | |||
Smoke at home | 1 (1.8%) | 1 (1.9%) | 2 (1.9%) |
Smoke but not at home | 11 (19.6%) | 3 (5.8%) | 14 (13.0%) |
Ex-smoker | 0 (0.0%) | 3 (5.8%) | 3 (2.8%) |
Never | 44 (78.6%) | 45 (86.5%) | 89 (82.4%) |
Number of cigarettes (cigarettes/year) | |||
Father | 2,990.4 (2,681.9, 12–11,520) | 3,223.3 (3,112, 0–8,760) | 3,101.7 (2,388.6, 12–11,520) |
Mother | 1,825 (-,1,825) | 1,525 (-,1,525) | 1,675 (212.1, 1,525–1,825) |
Job | |||
Father | |||
Managers | 3 (5.4%) | 3 (5.8%) | 6 (5.6%) |
Professionals | 8 (14.3%) | 7 (13.5%) | 15 (13.9%) |
Technicians and associate professionals | 3 (5.4%) | 3 (5.8%) | 6 (5.6%) |
Clerical and support workers | 2 (3.6%) | 2 (3.8%) | 4 (3.7%) |
Service and sales workers | 13 (23.2%) | 17 (32.7%) | 30 (27.8%) |
Craft and related trades workers | 8 (14.3%) | 7 (13.5%) | 15 (13.9%) |
Plant and machine operators and assemblers | 9 (16.1%) | 6 (11.5%) | 15 (13.9%) |
Elementary occupations | 9 (16.1%) | 7 (13.5%) | 16 (14.8%) |
Armed forces occupations | 1 (1.8%) | 0 (0%) | 1 (0.9%) |
Mother | |||
Manager | 0 (0.0%) | 1 (1.9%) | 1 (0.9%) |
Professionals | 2 (3.6%) | 8 (15.4%) | 10 (9.3%) |
Technician and associate professionals | 0 (0.0%) | 0 (0.0%) | 0 (0.0%) |
Clerical support workers | 2 (3.6%) | 0 (0.0%) | 2 (1.9%) |
Service and sales workers | 5 (8.9%) | 7 (13.5%) | 12 (11.1%) |
Craft and related trades workers | 7 (12.5%) | 9 (17.3%) | 16 (14.8%) |
Plant and machine operators and assemblers | 0 (0.0%) | 1 (1.9%) | 1 (0.9%) |
Elementary occupations | 2 (3.6%) | 1 (1.9%) | 3 (2.8%) |
Armed forces occupations | 0 (0.0%) | 0 (0.0%) | 0 (0.0%) |
Unemployed | 38 (67.9%) | 25 (48.1%) | 63 (58.3%) |
Variable a | Males | Females | Total |
---|---|---|---|
Distance house to school (m) | 766.8 (678.2,3–3.000) | 993.9 (1.090.3,3–6.000) | 876.1 (903.3,3–6.000) |
Time length to school (minutes) | 10.9 (8.9, 2–60) | 9.1 (4.7, 2–20) | 10.1 (7.2, 2–60) |
House near street (m) | 380.5 (10–3,000) | 281.5 (2–1,500) | 332.8 (2–3,000) |
Transportation to school | |||
Foot | 24 (42.9%) | 24 (42.9%) | 48 (44.4%) |
Bus | 3 (5.4%) | 2 (3.6%) | 5 (4.6%) |
Motorcycle | 23 (41.1%) | 21 (37.5%) | 44 (40.7%) |
Car | 1 (1.8%) | 4 (7.1%) | 5 (4.6%) |
Bicycle | 5 (8.9%) | 1 (1.8%) | 6 (5.7%) |
Drinking water sources | |||
Well water | 29 (51.8%) | 25 (48.1%) | 54 (50.0%) |
Tap water | 4 (7.1%) | 3 (5.8%) | 7 (6.5%) |
Bottled mineral water | 23 (41.1%) | 24 (46.2%) | 47 (43.5%) |
Home painted | 52 (92.9 %) | 47 (90.4 %) | 99 (91.7 %) |
Peeled paint at home | 25 (44.6 %) | 26 (50 %) | 51 (47.2 %) |
Home near factory | 17 (30.4 %) | 19 (36.5 %) | 36 (33.3 %) |
Plastic toys use | 44 (78.6%) | 39 (75.0%) | 83 (76.9%) |
Canned food/drink consumption | 26 (46.4%) | 28 (53.8%) | 54 (50.0%) |
Traditional medicine | 27 (48.2%) | 23 (44.2%) | 50 (46.3%) |
consumption |
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Share and Cite
Iriani, D.U.; Matsukawa, T.; Tadjudin, M.K.; Itoh, H.; Yokoyama, K. Cross-sectional Study on the Effects of Socioeconomic Factors on Lead Exposure in Children by Gender in Serpong, Indonesia. Int. J. Environ. Res. Public Health 2012, 9, 4135-4149. https://doi.org/10.3390/ijerph9114135
Iriani DU, Matsukawa T, Tadjudin MK, Itoh H, Yokoyama K. Cross-sectional Study on the Effects of Socioeconomic Factors on Lead Exposure in Children by Gender in Serpong, Indonesia. International Journal of Environmental Research and Public Health. 2012; 9(11):4135-4149. https://doi.org/10.3390/ijerph9114135
Chicago/Turabian StyleIriani, Dewi U., Takehisa Matsukawa, Muhammad K. Tadjudin, Hiroaki Itoh, and Kazuhito Yokoyama. 2012. "Cross-sectional Study on the Effects of Socioeconomic Factors on Lead Exposure in Children by Gender in Serpong, Indonesia" International Journal of Environmental Research and Public Health 9, no. 11: 4135-4149. https://doi.org/10.3390/ijerph9114135
APA StyleIriani, D. U., Matsukawa, T., Tadjudin, M. K., Itoh, H., & Yokoyama, K. (2012). Cross-sectional Study on the Effects of Socioeconomic Factors on Lead Exposure in Children by Gender in Serpong, Indonesia. International Journal of Environmental Research and Public Health, 9(11), 4135-4149. https://doi.org/10.3390/ijerph9114135