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Ctown 5 Interpreting data emergencies long term descriptive trends for causality and intervention decisions.

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Presentation on theme: "Ctown 5 Interpreting data emergencies long term descriptive trends for causality and intervention decisions."— Presentation transcript:

1 Ctown 5 Interpreting data emergencies long term descriptive trends for causality and intervention decisions

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3 Access to Food Source: http://www.nso.malawi.net/data_on_line/economics/prices/urban_cpi.htm

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5 Area level survey results, Kenya: GAM % by season

6 Area level survey results, pooled & smoothed: Kenya, GAM%, by season

7 Area level survey results, pooled & smoothed: Ethiopia, GAM%, by season

8 Figure 2. Trends in Underweight and HIV prevalence by region in Ethiopia

9 Figure 6. Trends in Underweight and HIV prevalences by region in Uganda

10 Child underweight prevalences are higher in lower HIV prevalence areas

11 Figure 8. Kenya, Ethiopia, Uganda: Scatterplot of Underweight and HIV prevalences by country

12 Under 5 mortality with HIV prevalence by area

13 + Increases + SES HIV Malnutrition Decreases –

14 Table 4. Associations of underweight with HIV and SES variables Ethiopia, Kenya, and Uganda, pooled. Variable Model 1Model 2Model 3 Prevalence of HIV (%) -0.527 (-3.114, 0.003) -0.333 (-2.290, 0.027) -0.243 (-1.721, 0.092) Improved flooring in household (%) ----0.290 (-6.088, 0.000) -0.333 (-5.141, 0.000) Safe water (%)--- 0.133 (2.391, 0.021) Safe excreta (%)--- -0.0712 (-2.145, 0.037) Constant31.06836.80833.589 Adj R sq0.1280.5350.588 N6050 Dependent variable =underweight prevalence (%).

15 Interaction between drought and HIV on changes in child underweight.

16 Figures and Tables Figure 1. Kenya, Ethiopia, and Uganda: Drought (negative y-values) plotted over time 1989-2006.

17 Figure 9. Scatterplot of Underweight and Drought with HIV results for all countries pooled (hivcat07=1 refers to high prevalence HIV).

18 Differences in stunting and wasting in two regions of Kenya

19 Differential growth patterns in Uganda and Somalia

20 Different relations between GAM% and child mortality in different populations Hence interpret GAM within populations, not across...

21 Conclude Horn: effect of drought > HIV Srn: drought and HIV interact – both together give rapid deterioration Both: HIV still associated with lower malnutrition, because of assocn with SES.

22 Size of effects: Season: about 4 ppts wasting (GAM) Drought: >= 10 ppts wasting (GAM)

23 Wasting in different populations. Similar mortality risk (e.g. U5MR of 2.0) at 5% GAM in (e.g. Uganda), 25% N Kenya Hence interpret for specific population, and use trends more About 10 ppts change in GAM suggests 0.5—1.0 increase in U5MR

24 Policies and programmes to improve nutrition Long-term: high priority for community-based (CBHNPs) with CHNWs Reduce vulnerability, esp to drought Mitigate emergencies

25 Levels of food aid

26 Estimating food aid levels: per need Denominator changes can give large fluctuations

27 Estimating food aid levels: per population For descriptive, easier to see what’s happening

28 Food aid levels per population: Lesotho and Mozambique

29 Food aid levels per population: Malawi and Swaziland

30 Food aid levels per population: Zambia and Zimbabwe

31 Effects of HIV by area on underweight, controlling for SES

32 Underweight with SES

33 HIV with SES

34 CountryCoefficient (B)P-valueR sqN All-0.5430.0000.4355 Lesotho-0.3170.120.784 Malawi-0.2750.150.1417 Mozambique-0.4150.350.1011 Swaziland-0.2940.080.764 Zambia-0.6350.080.299 Zimbabwe-0.1260.220.1810 Underweight with HIV

35 + Increases + SES HIV Malnutrition Decreases –

36 Variable \ Models 1234 Prevalence of HIV (%) (hivprev4) -0.543 -6.358 0.000 --0.292 -2.789 0.007 -0.198 -1.804 0.078 % head of hh with more than primary education (eduprim2) --0.314 -7.790 0.000 -0.190 -3.170 0.003 -0.218 -2.760 0.009 % urban population (urban) ---0.025 -0.839 0.405 -0.04358 -0.932 0.357 % hhs with electricity (electric) ---0.06598 0.658 0.514 % children >= 12 mo immunized for measles (measles) ---0.06633 1.126 0.267 % hhs with safe water (safewatr) ----0.01724 -0.415 0.680 % hhs with safe excreta disposal (safexcrt) ---0.05414 1.295 0.202 Constant 35.78630.83035.24325.719 N 55615550 Adj R squ 0.4220.4990.5510.563 Dep = underweight HIV is less associated with underweight controlling for SES In cells B T P

37 CountryCoefficientP-valueR sqN All-0.1270.1000.05055 * Lesotho-0.1290.3790.0794 Malawi-0.2410.1180.15517 Mozambique-0.3660.3400.10211 * Swaziland-0.1780.6360.1334 Zambia-0.1020.7340.0189 Zimbabwe0.06220.3780.09810 Removing SES from underweight, association with HIV becomes insignificant Coefficient smaller and less significant

38 Significant overall To recap …

39 Effects of HIV by area on change in underweight, controlling for SES

40 + Increases + SES HIV Malnutrition Decreases – To recap …

41 HIV with change underweight: no clear relation

42 Variable \ Models 1234 Dhivcat36.646 1.807 0.077 8.215 2.285 0.027 8.911 2.849 0.007 9.141 2.521 0.015 Eduprim2 -0.206 -2.276 0.027 -0.406 -4.373 0.000 -0.172 -1.808 0.077 Uwt -1.257 -4.036 0.000 - Safeexctr 0.151 1.583 0.120 urban -0.0704 -0.990 0.328 Constant-2.6061.36533.758-8.721 N50 Adj R squ0.0440.1210.3370.131 F = 4.463, n = 50, p = 0.018 Dependent = change in underweight, ppts/yr Means adjusted for SES (education) Change in underweight deteriorated more in higher HIV areas when SES is controlled. In cells B T P

43 Effects of food aid

44 Lower need Higher coverage Higher need Higher coverage Lower need Lower coverage Higher need Lower coverage Targeting: actual food aid coverage vs VAC need Some areas had high coverage with low need: these did worst in terms of child nutrition Most targeting worked, to high need areas A few high need areas had low coverage

45 Change in underweight (ppts/yr) by need and food aid coverage More coverage improves nutrition in high need areas Low need areas do OK anyway Need to look into …

46 Change in underweight by RDA met by food aid Findings as before when stratified by VAC need

47 Report CHUWY Change in underweight per year (percentage points) (+=deter; -=improv) (-1.1902)(1). -3.652064.98730 -3.300374.64688 7.398355.14885 2.0388107.09411 3.8253156.83859 5.966965.78813 -.0953166.82520 1.5581226.99192 FA1CATUS Food aid 1 category (unstandardized) (low & high) 1 Low (<=11.50) 2 High (>11.50) Total 1 Low (<=11.50) 2 High (>11.50) Total 1 Low (<=11.50) 2 High (>11.50) Total HIVCAT3 HIV category (relative to the country) (low & high) 1 Low 2 High Total MeanNStd. Deviation Effect of food aid in high need group, by HIV (areas) High need, low food aid, high HIV, deteriorates fast; high food aid helps

48 100% Coverage 50% Coverage 80% Coverage Coverage > 50% need Coverage < 50% need Need <50%>50% How coverage of food aid met assessed need in drought Change in Underweight ppts/yr -0.5 +3.4 +4.5 +1.3

49 BVACAT (beneficiaries / need category) Need Lo (Vaccat2=0) Need Hi (Vaccat2= 1) Low (<0.5) 1.30 (9)4.49 (9) High (>=0.5) 3.44 (10)-0.47 (13) Change in underweight prevalence by beneficiary/need coverage

50 Effects of food assistance on child nutrition (24-59 mo) in Zimbabwe, 2002-3: regressions (HLM) of wt/age, relating changes between May 2002 to Feb 2003 to levels of supplementary feeding (SF) and food distribution; in cells – coefficient (B, unstandardized), t value, p, n. May 2002 Feb 2003 WAZ Z-score Test if slopes are different High Supplementary Feeding Low Supplementary Feeding

51 Intervention, outcome Supplementary Feeding WAZ Food distrn WAZ Area by HIVLow HIVHigh HIVLow HIVHigh HIV Model (HLM), number 1256 Year (DYEAR) -0.1040 -1.77 0.077 5696 -0.05270 -1.42 0.1568 8309 0.01544 0.47 0.6401 9048 -0.01642 -0.66 0.5092 12000 Food aid category (SFEDCAT or FDXCAT) -0.1469 -2.28 0.0715 5 -0.1064 -2.51 0.0335 9 -0.09806 -0.87 0.4059 9 -0.1221 -1.52 0.1536 13 Interaction (INDYRSFE or INTDYFD) 0.04441 1.27 0.204 5696 0.06030 2.61 0.0092 8309 0.01782 0.37 0.7130 9048 0.05869 1.43 0.1541 12000 Constant-0.8412-1.0057-1.0820-1.0729 Total N5705832211800 Chi-sq, P52.3 0.000187.52 0.0001 153.11 <0.0001 137.44 <0.0001 Interaction by OLS 0.040 1.183 0.237 0.064 2.96 0.003 0.039 0.842 0.400 0.101 2.600 0.009 NS In cells B T P N

52 Changes in mean WAZ by supplementary feeding coverage group, low and high HIV areas together, May 2002 – Feb 2003; results calculated from regression. Higher supplementary feeding improved No supplementary feeding deteriorated, but remained best


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