| Literature DB >> 24883244 |
Sonya Crowe1, Andrew Seal2, Carlos Grijalva-Eternod2, Marko Kerac3.
Abstract
Tackling childhood malnutrition is a global health priority. A key indicator is the estimated prevalence of malnutrition, measured by nutrition surveys. Most aspects of survey design are standardised, but data 'cleaning criteria' are not. These aim to exclude extreme values which may represent measurement or data-entry errors. The effect of different cleaning criteria on malnutrition prevalence estimates was unknown. We applied five commonly used data cleaning criteria (WHO 2006; EPI-Info; WHO 1995 fixed; WHO 1995 flexible; SMART) to 21 national Demographic and Health Survey datasets. These included a total of 163,228 children, aged 6-59 months. We focused on wasting (low weight-for-height), a key indicator for treatment programmes. Choice of cleaning criteria had a marked effect: SMART were least inclusive, resulting in the lowest reported malnutrition prevalence, while WHO 2006 were most inclusive, resulting in the highest. Across the 21 countries, the proportion of records excluded was 3 to 5 times greater when using SMART compared to WHO 2006 criteria, resulting in differences in the estimated prevalence of total wasting of between 0.5 and 3.8%, and differences in severe wasting of 0.4-3.9%. The magnitude of difference was associated with the standard deviation of the survey sample, a statistic that can reflect both population heterogeneity and data quality. Using these results to estimate case-loads for treatment programmes resulted in large differences for all countries. Wasting prevalence and caseload estimations are strongly influenced by choice of cleaning criterion. Because key policy and programming decisions depend on these statistics, variations in analytical practice could lead to inconsistent and potentially inappropriate implementation of malnutrition treatment programmes. We therefore call for mandatory reporting of cleaning criteria use so that results can be compared and interpreted appropriately. International consensus is urgently needed regarding choice of criteria to improve the comparability of nutrition survey data.Entities:
Keywords: Data cleaning; Disease burden; Malnutrition prevalence; Nutrition survey
Year: 2014 PMID: 24883244 PMCID: PMC4034601 DOI: 10.7717/peerj.380
Source DB: PubMed Journal: PeerJ ISSN: 2167-8359 Impact factor: 2.984
Cleaning criteria: five methods currently in use for cleaning survey data prior to calculation of malnutrition prevalence.
| Cleaning method | Statistical probability criteria | Biological plausibility criteria | Reference mean | ||
|---|---|---|---|---|---|
| WHO (2006) | HAZ < −6 | WAZ < −6 | WHZ < −5 | - | Growth |
| Growth standards ( | HAZ > 6 | WAZ > 5 | WHZ > 5 | Standards | |
| SMART flags | HAZ < −3 | WAZ < −3 | WHZ < −3 | - | Survey |
| HAZ > 3 | WAZ > 3 | WHZ > 3 | Sample | ||
| WHO 1995 | HAZ < −4 | WAZ < −4 | WHZ < −4 | - | Survey |
| Flexible criteria | HAZ > 3 | WAZ > 4 | WHZ > 4 | Sample | |
| WHO 1995 | HAZ < −5 | WAZ < −5 | WHZ < −4 | - | Growth |
| Fixed criteria ( | HAZ > 3 | WAZ > 5 | WHZ > 5 | - | Reference |
| Epi-Info ( | HAZ < −6 | WAZ < −6 | WHZ < −4 | HAZ > 3.09 and WHZ < −3.09 | Growth |
| HAZ > 6 | WAZ > 6 | WHZ > 6 | HAZ < −3.09 and WHZ > 3.09 | Reference | |
Notes.
Height-for-age z-score
Weight-for-age z-score
Weight-for-height z-score
The upper and lower values are flexible, i.e., can be increased based on judgment (WHO, 2006b).
Recommended for use when the observed mean z-score is below 1.5 (WHO, 1995).
Case definitions of wasting.
| Case definition | |
|---|---|
| Wasting | WHZ |
| Moderate wasting | WHZ < −2 and WHZ ⩾−3 |
| Severe wasting | WHZ < −3 |
Notes.
WHZ, Weight-for-height z-score, which represents standard deviations below the WHO growth standard mean (e.g., a Z-score of −1 = 1 standard deviation below the reference mean).
International ‘integrated food security phase classification’ (IPC) version 2.
| IPC classification of food insecurity level | Prevalence of wasting |
|---|---|
| Minimal | < 5% |
| Stressed | 5–10% |
| Crisis | 10–15% |
| Emergency | 15–30% |
| Famine | >30% |
Figure 1Percentage of records excluded from prevalence estimates for children aged 6–59 months on the basis of five different cleaning criteria, by country.
Figure 2Prevalence of wasting (WHZ < −2) for children 6–59 months under different cleaning criteria, by country.
The coloured boundaries relate to the international ‘integrated food security phase classification’ (IPC) (see Table 3).
Figure 3Prevalence of severe wasting (WHZ < −3) for children 6–59 months under different cleaning criteria, by country.
Figure 4Scatterplot of the difference between prevalence with no cleaning and SMART cleaning, versus the standard deviation of the WHZ distribution for non-cleaned data.
Each point is a country (not labelled): black points denote wasting (WHZ < −2) whilst blue points denote severe wasting (WHZ < −3).