| Literature DB >> 23597320 |
Leilei Pei1, Lin Ren, Duolao Wang, Hong Yan.
Abstract
BACKGROUND: There are multiple adverse effects of anemia on human function, particularly on women. However, few researches are conducted on women anemia in rural Western China. This study mainly aims to investigate the levels and associated factors of maternal anemia between 2001 and 2005 in this region.Entities:
Mesh:
Year: 2013 PMID: 23597320 PMCID: PMC3637149 DOI: 10.1186/1471-2458-13-366
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Prevalence of anemia of mothers with children under-three years by years among baseline characteristics
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|---|---|---|---|---|---|---|---|---|---|---|
| Gansu | 635 | 163(25.7) | 137(21.6) | 25(3.9) | 1(0.2) | 256 | 50(19.5) | 44(17.2) | 4(1.6) | 2(0.8) |
| Guangxi | 823 | 374(45.4) | 318(38.6) | 51(6.2) | 5(0.6) | 734 | 383(52.2)** | 330(45.0)* | 52(7.1) | 1(0.1)*** |
| Guizhou | - | - | - | - | - | 455 | 252(55.4) | 224(49.2) | 28(6.2) | 0(0.0) |
| Inner Mongolia | 816 | 227(27.8) | 209(25.6) | 17(2.1) | 1(0.1) | 590 | 177(30.0) | 161(27.3) | 15(2.5) | 1(0.2) |
| Ningxia | 832 | 202(24.3) | 182(21.9) | 18(2.2) | 2(0.2) | 550 | 187(34.0)*** | 165(30.0)*** | 22(4.0)* | 0(0.0) |
| Qinghai | 957 | 467(48.8) | 350(36.6) | 108(11.3) | 9(0.9) | 615 | 375(61.0)*** | 198(32.2) | 175(28.5)*** | 2(0.3) |
| Sichuan | 688 | 221(32.1) | 195(28.3) | 24(3.5) | 2(0.3) | 640 | 268(41.9)*** | 236(36.9)** | 29(4.5) | 3(0.5) |
| Xinjiang | 666 | 210(31.5) | 179(26.9) | 29(4.4) | 2(0.3) | 1028 | 467(45.4)*** | 351(34.1)*** | 111(10.8)*** | 5(0.5) |
| Chongqing | 755 | 212(28.1) | 192(25.4) | 20(2.6) | 0(0.0) | 504 | 295(58.5)*** | 177(35.1)*** | 118(23.4)*** | 0(0.0) |
| Han | 4036 | 1208(29.9) | 1062(26.3) | 140(3.5) | 6(0.1) | 3078 | 1303(42.3)*** | 1029(33.4)*** | 270(8.8)*** | 4(0.1) |
| Tibet | 446 | 189(42.4) | 142(31.8) | 42(9.4) | 5(1.1) | 317 | 143(45.1) | 90(28.4) | 51(16.1)** | 2(0.6) |
| Uighur | 569 | 190(33.4) | 161(28.3) | 27(4.7) | 2(0.4) | 621 | 246(39.6)* | 197(31.7) | 46(7.4) | 3(0.5) |
| Hui | 334 | 128(38.3) | 101(30.2) | 26(7.8) | 1(0.3) | 260 | 106(40.8) | 59(22.7)* | 45(17.3)*** | 2(0.8) |
| Zhuang | 398 | 199(50.0) | 159(39.9) | 36(9.0) | 4(1.0) | 334 | 196(58.7)* | 155(46.4) | 40(12.0) | 1(0.3) |
| Others | 386 | 162(42.0) | 137(35.5) | 21(5.4) | 4(1.0) | 751 | 453(60.3)*** | 351(46.7)*** | 100(13.3)*** | 2(0.3) |
| 1 | 3718 | 1272(34.2) | 1076(28.9) | 183(4.9) | 13(0.3) | 3127 | 1424(45.5)*** | 1094(35.0)*** | 326(10.4)*** | 4(0.1) |
| 2 | 2016 | 673(33.4) | 579(28.7) | 88(4.4) | 6(0.3) | 1921 | 886(46.1)*** | 690(35.9)*** | 190(9.9)*** | 6(0.3) |
| >2 | 436 | 131(30.0) | 107(24.5) | 21(4.8) | 3(0.7) | 324 | 144(44.4)*** | 102(31.5)* | 38(11.7)** | 4(1.2) |
| <500 | 1521 | 477(31.4) | 409(26.9) | 65(4.3) | 3(0.2) | 1222 | 545(44.6)*** | 445(36.4)*** | 98(8.0)*** | 2(0.2) |
| 500 ~ 1500 | 2370 | 651(27.5) | 574(24.2) | 69(2.9) | 8(0.3) | 2430 | 1098(45.2)*** | 832(34.2)*** | 262(10.8)*** | 4(0.2) |
| >1500 | 2281 | 948(41.6) | 779(34.2) | 158(6.9) | 11(0.5) | 1720 | 811(47.2)*** | 609(35.4) | 194(11.3)*** | 8(0.5) |
| Poorest | 1956 | 707(36.1) | 594(30.4) | 108(5.5) | 5(0.3) | 1656 | 759(45.8)*** | 581(35.1)** | 173(10.4)*** | 5(0.3) |
| Middle | 2370 | 773(32.6) | 665(28.1) | 98(4.1) | 10(0.4) | 2108 | 970(46.0)*** | 715(33.9)*** | 250(11.9)*** | 5(0.2) |
| Wealthiest | 1846 | 596(32.3) | 503(27.2) | 86(4.7) | 7(0.4) | 1608 | 725(45.1)*** | 590(36.7)*** | 131(8.1)*** | 4(0.2) |
| 6172 | 2076(33.6) | 1762(28.5) | 292(4.7) | 22(0.4) | 5372 | 2454(45.7)*** | 1886(35.1)*** | 554(10.3)*** | 14(0.3) | |
a Values are the number of anemic mothers and the prevalence rate of anemia is included in the bracket.
b Missing values: 3 for ethnicity and 2 for parity in 2001; 11 for ethnicity in 2005.
c Differences in women anemia between 2001 and 2005 were statistically analyzed by χ2 test. *denoted P < 0.05, ** P < 0.01, ***P < 0.001.
Factors related to anemia: results from two-level logistic regression in 2001 and 2005
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| 0.7 ± 0.1 | <0.001 | 0.8 ± 0.1 | <0.001 | |
| VPC | 16.5% | - | 20.4% | - |
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| Ningxia | 0.58(0.40,0.83) | <0.01 | 0.63(0.33,1.22) | 0.173 |
| Xinjiang | 0.63(0.34,1.14) | 0.124 | 1.14(0.62,2.11) | 0.663 |
| Gansu | 0.77(0.51,1.15) | 0.201 | 0.31(0.13,0.74) | <0.01 |
| Inner Mongolia | 0.85(0.59,1.23) | 0.386 | 0.49(0.26,0.93) | <0.05 |
| Sichuan | 1.04(0.72,1.51) | 0.83 | 1.21(0.68,2.17) | 0.515 |
| Guizhou | - | - | 1.56(0.82,2.96) | 0.174 |
| Chongqing | 1.20(0.80,1.82) | 0.378 | 2.00(1.03,3.85) | <0.05 |
| Qinghai | 1.46(1.01,2.11) | <0.05 | 1.86(1.00,3.48) | <0.05 |
| Guangxi | 2.32(1.54,3.50) | <0.001 | 1.31(0.71,2.44) | 0.387 |
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| Han | 1.00 | | 1.00 | |
| Tibet | 1.29(0.92,1.79) | 0.136 | 1.23(0.79,1.92) | 0.355 |
| Uighur | 2.35(1.28,4.30) | <0.01 | 1.42(0.74,2.73) | 0.288 |
| Hui | 1.36(0.99,1.87) | 0.060 | 0.57(0.40,0.82) | <0.01 |
| Zhuang | 1.06(0.68,1.63) | 0.806 | 2.09(1.34,3.26) | <0.01 |
| Others | 1.26(0.93,1.70) | 0.133 | 1.42(1.05,1.93) | <0.05 |
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| 1 | 1.00 | | 1.00 | |
| 2 | 0.91(0.79,1.05) | 0.194 | 0.84(0.71,0.98) | <0.05 |
| >2 | 0.76(0.57,0.99) | <0.05 | 0.83(0.62,1.12) | 0.228 |
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| Poorest | 1.00 | | 1.00 | |
| Middle | 0.93(0.81,1.06) | 0.280 | 1.05(0.91,1.22) | 0.496 |
| Wealthiest | 0.90(0.80,0.99) | <0.05 | 1.09(0.92,1.28) | 0.313 |
| 1.00(0.99,1.03) | 0.252 | 1.02(1.01,1.04) | <0.01 | |
| 0.99(0.98,1.00) | <0.05 | 0.995(0.991,0.999) | <0.05 | |
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| <500 | 1.00 | | 1.00 | |
| 500 ~ 1500 | 1.03(0.70,1.53) | 0.868 | 1.19(0.69,2.04) | 0.530 |
| >1500 | 2.47(1.58,3.84) | <0.001 | 1.86(1.05,3.64) | <0.05 |
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| 0.4 + 0.1 | <0.001 | −1.7 ± 0.3 | <0.001 | |
| VPC | 10.2% | - | 16.2% | - |
Abbreviation: VPC variance partition coefficient, u, random effect.
a Values were given as mean ± SD or odds ratio (95%CI) unless otherwise stated.
b Effect coding was used for provinces. The reference group is the average of all 10 provinces.