| Literature DB >> 18492246 |
Edward Fottrell1, Peter Byass.
Abstract
BACKGROUND: Population-based sample surveys and sentinel surveillance methods are commonly used as substitutes for more widespread health and demographic monitoring and intervention studies in resource-poor settings. Such methods have been criticised as only being worthwhile if the results can be extrapolated to the surrounding 100-fold population. With an emphasis on measuring mortality, this study explores the extent to which choice of sampling method affects the representativeness of 1% sample data in relation to various demographic and health parameters in a rural, developing-country setting.Entities:
Year: 2008 PMID: 18492246 PMCID: PMC2440730 DOI: 10.1186/1478-7954-6-2
Source DB: PubMed Journal: Popul Health Metr ISSN: 1478-7954
Summary of sampling methods used, outline of sampling technique and example of how the sampling technique relates to real field survey and DSS designs.
| Sampling Method | Technique | Example situation in field surveys |
| Simple Random | Step 1: Assign a random number to each sampling unit | Cross-sectional surveys within DSS settings |
| Step 2: Sort sampling units by their random number | ||
| Step 3: Select sampling units in ascending order of random numbers until desired sample size is reached | ||
| Probability Proportional to Size | Step 1: Assign a random number to each sampling unit | |
| Step 2: Multiply the population of each sampling unit by the random number | ||
| Step 3: Sort sampling units on the number generated in Step 2 | ||
| Step 4: Select sampling units in descending order of number generated in Step 2 until desired sample size is reached | ||
| Proportional Stratified Sampling | Step 1: Determine the proportion of sampling units needed in each strata | Cross-sectional surveys within DSS settings or establishing a DSS |
| Step 2: Assign a random number to each sampling unit | ||
| Step 3: Select sampling units from each strata using simple random methods until the desired sample size and ratio between strata is obtained | ||
| Multi-stage Sampling (Stage 1 random; Stage 2 random) | Step 1: Randomly select geographical area for sampling | Establishing a DSS |
| Step 2: Assign a random number to each sampling unit in the selected area | ||
| Step 3: Sort sampling units by their random number | ||
| Step 4: Select sampling units in ascending order of random number until desired sample size is reached | ||
| Multi-stage Sampling (Stage 1 random; Stage 2 PPS) | Step 1: Randomly select geographical area | |
| Step 2: Assign a random number to each sampling unit in the selected area | ||
| Step 3: Multiply the population of each sampling unit by the random number | ||
| Step 4: Sort sampling units on the number generated in Step 3 | ||
| Step 5: Select sampling units in descending order of number generated in Step 3 until desired sample size is reached | ||
| Geographically Dispersed (Stage 1 random; Stage 2 random; Stage 3 random) | Step 1: Randomly select two geographical areas | Multi-centre study |
| Step 2: Assign a random number to each sampling unit in each of the selected areas | ||
| Step 3: Sort sampling units by their random number | ||
| Step 4: Select sampling units in ascending order of random number until 50% of the desired sample is selected from each geographical area | ||
| Geographically Dispersed (Stage 1 random; Stage 2 random; Stage 3 PPS) | Step 1: Randomly select two geographical areas | |
| Step 2: Assign a random number to each sampling unit in each of the selected areas | ||
| Step 3: Multiply the population of each sampling unit by the random number | ||
| Step 4: Sort sampling units on the number generated in Step 3 | ||
| Step 5: Select sampling units in descending order of number generated in Step 3 until 50% of the sample is selected from each geographical area |
Selected parameters from the survey disaggregated by three administrative levels: département, ZD and concession.
| Parameter | Overall | By Département (8 in each district) | By ZD | By Concession | |||||||
| (n = 16) | (n = 507) | (n = 44072) | |||||||||
| Number | % | Mean | Max. | Min. | Mean | Max. | Min. | Mean | Max. | Min. | |
| Population | 512878 | 100 | 32054.88 | 52207 | 8785 | 1011.59 | 3498 | 144 | 11.64 | 185 | 1 |
| Male | 252624 | 49.26 | 49.21% | 50.74% | 47.55% | 49.29% | 58.03% | 41.98% | 50.39% | 100% | 0.00% |
| Age < 5 years | 94828 | 18.49 | 18.30% | 20.02% | 16.54% | 18.40% | 24.35% | 0.20% | 17.15% | 83.33% | 0.00% |
| Completed secondary education or above | 10352 | 2.02 | 2.33% | 6.39% | 0.80% | 2.14% | 40.14% | 0.00% | 3.68% | 100% | 0.00% |
| 85428 | 100 | 5339.25 | 8397 | 1520 | 168.50 | 543 | 22 | 1.94 | 29 | 1 | |
| Lowest wealth quintile | 17142 | 20.07 | 18.38% | 43.30% | 1.03% | 21.00% | 86.11% | 0.00% | 20.65% | 100% | 0.00% |
| Adult female residents | 112000 | 21.84 | 22.02% | 23.40% | 20.71% | 21.86% | 32.27% | 15.90% | 21.49% | 100% | 0.00% |
| Maternal Deaths (n) | 488 | 100 | 30.50 | 63 | 12 | 0.96 | 8 | 0 | 0.01 | 2 | 0 |
| Crude Maternal Mortality Rate (per 100000 adult female population) | 435.71 | 435.71 | 434.57 | 393.70 | |||||||
Figure 1Overall proportions and maximum and minimum values of selected parameters disaggregated by three administrative levels.
Mean results of 280 samples as a percentage of the unsampled value for each of the key parameters.
| Parameter | Simple Random | PPS | Stratified | DSS Multistage | Dispersed Multistage | ||||||||||
| ZD | Conc. | ZD | Conc. | ZD | Conc. | ZD Random | ZD PPS | Conc. Random | Conc. PPS | ZD Random | ZD PPS | Conc. Random | Conc. PPS | ||
| Mean number of units | 5.65 | 440.95 | 2.25 | 66.85 | 5.70 | 437.20 | 5.55 | 4.10 | 458.50 | 174.80 | 5.75 | 3.35 | 464.20 | 157.70 | |
| Mean Sample Population (%) | 951.50 (1.11) | 855.15 (1.00) | 996.60 (1.13) | 858.85 (1.01) | 928.35 (1.09) | 855.65 (1.00) | 971.35 (1.14) | 941.85 (1.10) | 855.65 (1.00) | 856.35 (1.00) | 917.50 (1.07) | 970.25 (1.14) | 854.10 (1.00) | 854.85 (1.00) | |
| Male | Mean% | 100.26 | 102.48 | 99.39 | 101.26 | 100.16 | 101.75 | 99.70 | 99.80 | 102.94 | 101.66 | 100.20 | 100.67 | 101.95 | 100.77 |
| Aged < 5 years | Mean% | 100.87 | 92.32 | 100.97 | 103.68 | 99.73 | 92.97 | 97.73 | 96.43 | 91.18 | 99.78 | 98.27 | 97.08 | 91.94 | 104.22 |
| Educated to secondary level or higher | Mean% | 94.06 | 179.70 | 130.20 | 62.87 | 104.95 | 160.89 | 124.26 | 172.28 | 222.77 | 123.27 | 95.05 | 109.90 | 176.73 | 118.81 |
| Lowest Wealth Quintile | Mean% | 107.22 | 100.95 | 73.49 | 116.94 | 96.96 | 99.20 | 76.23 | 69.96 | 105.03 | 92.97 | 105.93 | 108.37 | 89.94 | 75.24 |
| Adult female residents | Mean% | 100.18 | 98.58 | 102.66 | 107.01 | 100.50 | 98.08 | 100.50 | 102.34 | 97.94 | 106.04 | 101.01 | 99.45 | 98.03 | 107.28 |
| Maternal Deaths | Mean% | 105.69 | 203.05 | 101.50 | 127.23 | 104.57 | 203.05 | 104.20 | 103.17 | 203.05 | 159.09 | 104.53 | 103.19 | 203.05 | 162.54 |
| Crude MMR | Mean% | 113.90 | 294.92 | 108.06 | 189.72 | 115.36 | 288.91 | 110.11 | 104.98 | 293.46 | 216.50 | 113.20 | 106.17 | 305.95 | 209.36 |
Figure 2Proportion of male residents (%) by sample (blue circle), mean of 20 samples (red square), and unsampled population value (green line) for each of 7 sampling methods at two administrative levels, ZD and concession.
Figure 7Maternal mortality rate by sample (blue circle), mean of 20 samples (red square), and unsampled population value (green line) for each of 7 sampling methods at two administrative levels, ZD and concession.
Accuracy of the 20 1% for six parameters samples by each of 14 sampling methods, to within 5 and 10% tolerances of the unsampled value.
| Parameter (mean) | Criterion | Overall (%) | Simple Random | PPS | Stratified | DSS Multistage | Dispersed Multistage | |||||||||
| ZD | Conc. | ZD | Conc. | ZD | Conc. | ZD Random | Conc. Random | ZD PPS | Conc. PPS | ZD Random | ZD PPS | Conc. Random | Conc. PPS | |||
| Male (49.25%) | Samples ± 5% (%) | 264 (94.29) | 20 (100) | 19 (95) | 19 (95) | 20 (100) | 20 (100) | 19 (95) | 18 (90) | 16 (80) | 19 (95) | 18 (90) | 20 (100) | 19 (95) | 18 (90) | 19 (95) |
| Samples ± 10% | 278 (99.29) | 20 (100) | 20 (100) | 20 (100) | 20 (100) | 20 (100) | 20 (100) | 20 (100) | 18 (90) | 20 (100) | 20 (100) | 20 (100) | 20 (100) | 20 (100) | 20 (100) | |
| (%) | ||||||||||||||||
| Aged < 5 years (18.49%) | Samples ± 5% (%) | 120 (42.86) | 12 (60) | 1 (5) | 10 (50) | 12 (60) | 10 (50) | 6 (30) | 10 (50) | 8 (40) | 7 (35) | 6 (30) | 13 (65) | 11 (55) | 4 (20) | 10 (50) |
| Samples ± 10% | 233 (83.21) | 19 (95) | 15 (75) | 15 (75) | 20 (100) | 19 (95) | 15 (75) | 17 (85) | 11 (55) | 17 (85) | 17 (85) | 20 (100) | 18 (90) | 14 (70) | 16 (80) | |
| (%) | ||||||||||||||||
| Educated to secondary level or higher (2.02%) | Samples ± 5% (%) | 8 (2.86) | 0 | 0 | 1 (5) | 0 | 0 | 0 | 2 (10) | 0 | 1 (5) | 2 (10) | 0 | 1 (5) | 1 (5) | 0 |
| Samples ± 10% | 20 (7.14) | 2 (10) | 1 (5) | 4 (20) | 0 | 0 | 1 (5) | 3 (15) | 0 | 1 (5) | 3 (15) | 1 (5) | 1 (5) | 1 (5) | 2 (10) | |
| (%) | ||||||||||||||||
| Lowest Wealth Quintile (20.07) | Samples ± 5% (%) | 43 (15.36) | 3 (15) | 7 (35) | 2 (10) | 3 (15) | 2 (10) | 9 (45) | 2 (10) | 4 (20) | 0 | 3 (15) | 3 (15) | 0 | 5 (25) | 0 |
| Samples ± 10% | 64 (22.86) | 3 (15) | 14 (70) | 3 (15) | 5 (25) | 5 (25) | 12 (60) | 3 (15) | 4 (20) | 0 | 4 (20) | 3 (15) | 1 (5) | 7 (35) | 0 | |
| (%) | ||||||||||||||||
| Adult female residents (21.84%) | Samples ± 5% (%) | 194 (69.29) | 19 (95) | 18 (90) | 13 (65) | 2 (10) | 17 (85) | 19 (95) | 16 (80) | 16 (80) | 11 (55) | 7 (35) | 17 (85) | 18 (90) | 17 (85) | 4 (20) |
| Samples ± 10% | 271 (96.79) | 20 (100) | 20 (100) | 20 (100) | 19 (95) | 19 (95) | 20 (100) | 20 (100) | 20 (100) | 19 (95) | 18 (90) | 20 (100) | 20 (100) | 20 (100) | 16 (80) | |
| (%) | ||||||||||||||||
| Maternal Mortality Rate (per 100000 adult female residents) (435.68) | Samples ± 5% (%) | 32 (11.43) | 2 (10) | 2 (10) | 2 (10) | 6 (30) | 2 (10) | 2 (10) | 3 (15) | 1 (5) | 0 | 3 (15) | 1 (5) | 2 (10) | 2 (10) | 4 (20) |
| Samples ± 10% | 41 (14.64) | 2 (10) | 3 (15) | 2 (10) | 6 (30) | 3 (15) | 2 (10) | 5 (25) | 2 (10) | 0 | 4 (20) | 2 (10) | 2 (10) | 2 (10) | 6 (30) | |
| (%) | ||||||||||||||||
| Overall (%) | Samples ± 5% | 56 (46.67) | 47 (39.17) | 47 (39.17) | 43 (35.83) | 51 (42.50) | 55 (45.83) | 51 (42.50) | 45 (37.50) | 38 (31.67) | 39 (32.50) | 54 (45) | 51 (42.50) | 47 (39.17) | 37 (30.83) | |
| (%) | ||||||||||||||||
| Samples ± 10% | 66 (55) | 64 (53.33) | 70 (58.33) | 66 (55) | 70 (58.33) | 68 (56.67) | 55 (45.83) | 57 (47.50) | 66 (55) | 66 (55) | 62 (51.67) | 64 (53.33) | 60 (50) | 73 (60.83) | ||
| (%) | ||||||||||||||||
Figure 4Proportion of individuals educated to secondary level or higher (%) by sample (blue circle), mean of 20 samples (red square), and unsampled population value (green line) for each of 7 sampling methods at two administrative levels, ZD and concession.
Figure 5Proportion of households in the poorest wealth quintile (%) by sample (blue circle), mean of 20 samples (red square), and unsampled population value (green line) for each of 7 sampling methods at two administrative levels, ZD and concession.
Figure 3Proportion of children under 5 years of age (%) by sample (blue circle), mean of 20 samples (red square), and unsampled population value (green line) for each of 7 sampling methods at two administrative levels, ZD and concession.
Figure 6Proportion of adult female residents (%) by sample (blue circle), mean of 20 samples (red square), and unsampled population value (green line) for each of 7 sampling methods at two administrative levels, ZD and concession.