| Literature DB >> 16569243 |
Jonathan I Levy1, Susan M Chemerynski, Jessica L Tuchmann.
Abstract
BACKGROUND: Although environmental policy decisions are often based in part on both risk assessment information and environmental justice concerns, formalized approaches for addressing inequality or inequity when estimating the health benefits of pollution control have been lacking. Inequality indicators that fulfill basic axioms and agree with relevant definitions and concepts in health benefits analysis and environmental justice analysis can allow for quantitative examination of efficiency-equality tradeoffs in pollution control policies.Entities:
Year: 2006 PMID: 16569243 PMCID: PMC1459160 DOI: 10.1186/1475-9276-5-2
Source DB: PubMed Journal: Int J Equity Health ISSN: 1475-9276
Four Approaches for Inequality Comparisons [36]
| Relative to average | The mean inequality of all individuals within a group | Often the easiest metric to obtain and compare. Can be used for both individual and group vs. group comparisons. | Group averages can mask important inter- individual inequalities |
| Relative to the best- off | Experience of the single best-off person in society | Can identify differences between poorest and richest individuals; easy to quantify for income | The best-off may not be a realistic equality standard, and the experience of the best off person may be difficult to quantify in a risk context |
| Relative to all those better off | The range of experiences of all those who are better- off than a given person/group | Allows a deeper understanding of scope of inequality within a group | Hard to identify the level at which claims would be deemed unequal |
| Relative to the best- off person whose condition is not anomalous | Compares individual claims to a determined "good enough" level | Allows for a more reasonable expectation of equality | Hard to define "not anomalous" in real-world context |
Methods of Devising Composite Inequality Measures [36]
| Additive principle | Sum of each individual complaint of inequality; the higher the number, the greater the inequality |
| Weighted additive principle | Claims with greater significance are given greater value in the assessment |
| Maximim principle | The extent to which societal institutions maximize the average level of the worst-off group |
Summary of Inequality Indicators Evaluated for Health Benefits Analysis.
| Formula | ||||||
| Approach for comparisons | Relative to all those better off | Relative to the average | Relative to the average | Relative to the average | Relative to the average | Relative to the average |
| Method for aggregation | Additive | Weighted additive | Weighted additive | Weighted additive | Weighted additive | Weighted additive |
| Principle of transfers? | Y | N (fails for transfers at high levels) | N (fails for transfers at high levels) | Y | Y | Y |
| Subgroup decomposable in standard form? | N (unless subgroups strictly ordered by income) | N | Y (within-group and between-group not independent) | Y (although not strictly additive) | Y | Y |
| Avoids value judgment about weights? | N (in standard application; extended Gini can address) | N | N | Y | N | N |
| Conclusions | Rejected as stand- alone indicator; potentially useful for sensitivity analyses | Rejected | Rejected | Accepted | Rejected as stand-alone indicator; useful in combination with other indicators | Rejected as stand-alone indicator; useful in combination with other indicators |
Baseline Exposure and Population Characteristics for Illustrative Pollution Control Example (Scenario 1)
| Geographic Area/Exposure Level | # Type A People | # Type B People | Individual Risk, Type A People | Individual Risk, Type B People | Total Risk, Type A People | Total Risk, Type B People |
| 1 | 100 | 0 | 1 | 2 | 100 | 0 |
| 2 | 90 | 10 | 2 | 4 | 180 | 40 |
| 3 | 80 | 20 | 3 | 6 | 240 | 120 |
| 4 | 70 | 30 | 4 | 8 | 280 | 240 |
| 5 | 60 | 40 | 5 | 10 | 300 | 400 |
| 6 | 50 | 50 | 6 | 12 | 300 | 600 |
| 7 | 40 | 60 | 7 | 14 | 280 | 840 |
| 8 | 30 | 70 | 8 | 16 | 240 | 1120 |
| 9 | 20 | 80 | 9 | 18 | 180 | 1440 |
| 10 | 10 | 90 | 10 | 20 | 100 | 1800 |
| Total | 550 | 450 | 2200 | 6600 |
Figure 1Health benefits and changes in inequality indicators for Scenario 1; High-risk people are highly exposed – see Table 4 for details. The numbers in the plot refer to the geographic areas in which exposure was reduced by 50%. X-axes = Health benefits, Y-axes = inequality benefits (positive numbers imply decreases in inequality).
Figure 2Health benefits and changes in between-group and within-group Atkinson index for Scenario 1; High-risk people are highly exposed – see Table 4 for details. The numbers in the plot refer to the geographic areas in which exposure was reduced by 50%. X-axes = Health benefits, Y-axes = inequality benefits (positive numbers imply decreases in inequality).
Figure 3Health benefits and changes in inequality indicators for Scenario 2; Low-risk people are highly exposed – the scenario is as presented in Table 4, but area 1 has exposure 10, area 2 has exposure 9, etc. The numbers in the plot refer to the geographic areas in which exposure was reduced by 50%. X-axes = Health benefits, Y-axes = inequality benefits (positive numbers imply decreases in inequality).
Figure 4Health benefits and changes in between-group and within-group Atkinson index for Scenario 2; Low-risk people are highly exposed – the scenario is as presented in Table 4, but area 1 has exposure 10, area 2 has exposure 9, etc. The numbers in the plot refer to the geographic areas in which exposure was reduced by 50%. X-axes = Health benefits, Y-axes = inequality benefits (positive numbers imply decreases in inequality).