| Literature DB >> 21261992 |
Susanna M Cramb1, Kerrie L Mengersen, Peter D Baade.
Abstract
BACKGROUND: Achieving health equity has been identified as a major challenge, both internationally and within Australia. Inequalities in cancer outcomes are well documented, and must be quantified before they can be addressed. One method of portraying geographical variation in data uses maps. Recently we have produced thematic maps showing the geographical variation in cancer incidence and survival across Queensland, Australia. This article documents the decisions and rationale used in producing these maps, with the aim to assist others in producing chronic disease atlases.Entities:
Mesh:
Year: 2011 PMID: 21261992 PMCID: PMC3039552 DOI: 10.1186/1476-072X-10-9
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Cancers examined for geographic variation, Queensland, 1998-2007
| Type of cancer | ICD-O3 code | Total number males diagnosed | Total number females diagnosed |
|---|---|---|---|
| All invasive cancers | C00-C80 (excluding C44 (M805 to 811)) | 105,053 | 82,470 |
| Bladder cancer | C67 | 5,034 | 1,571 |
| Brain cancer | C70, C71, C72 | 1,504 | 1,067 |
| Breast cancer | C50 | Not included | 22,420 |
| Cervical cancer | C53 | Not applicable | 1,639 |
| Colorectal cancer | C18-C20 and C218 | 13,405 | 10,871 |
| Kidney cancer | C64-C66 and C68 | 3,117 | 1,883 |
| Leukaemia | M980-M994 | 3,084 | 2,094 |
| Lung cancer | C33-C34 | 11,152 | 5,683 |
| Melanoma | C44 and M872-M879 | 13,793 | 10,110 |
| Myeloma | M973 | 1,192 | 913 |
| Non-Hodgkin lymphoma | M959, M967-M971 | 3,547 | 2,889 |
| Oesophageal cancer | C15 | 1,464 | 639 |
| Ovarian cancer | C56 | Not applicable | 2,120 |
| Pancreatic cancer | C25 | 1,940 | 1,706 |
| Prostate cancer | C61 | 25,222 | Not applicable |
| Stomach cancer | C16 | 2,193 | 1,070 |
| Thyroid cancer | C73 | 765 | 2,221 |
| Uterine cancer | C54 | Not applicable | 3,112 |
Selected Cancer Atlases published from 1995 onwards
| Region | Time period | Outcome | Statistic mapped | Smoothing method | N regionsa | N cancers mappedb | Presentation methodc |
|---|---|---|---|---|---|---|---|
| Canada [ | 1986-1990 | Incidence | CIF | None | 290 | 17 (M, F or P) | Ecumene |
| Europe [ | ~1981-1990 | Incidence Mortality | DSR | Floating average of neighbouring rates for non-cities | Not stated | 31 (M, F) | Isopleth |
| India [ | 2001-2002 | Incidence | DSR | None | 593 | 1 (M, F) | Areal |
| Limburg [ | 1996-1998 | Incidence | SIR | Poisson-Gamma and CAR Bayesian models | 44 | 5 (M, F) | Areal |
| Netherlands [ | 1989-2003 | Incidence | DSR | Floating average of neighbouring rates for non-cities | 458 | 11 (M, F) | Isopleth |
| New York [ | Not stated | Incidence | DSR | None | 62 | 12 (M, F) | Areal |
| New South Wales [ | 1998-2002 | Incidence Mortality | SIR, SMR | CAR Bayesian model | 192 | 22 - inc (M, F) 12-mort (M, F) | Areal |
| Pennsylvania [ | 1994-2002 | Incidence | DSR | None | 67 | 2 (M, F, P) | Areal |
| Queensland [ | 1998-2007 | Incidence Survival | SIR, RER | Bayesian hierarchical models: BYM and relative survival | 478 | 19 (M, F) | Areal |
| South Australia [ | 1991-2000 | Incidence Mortality | DSR | None | 117 | 11 (P) | Ecumene |
| Spain [ | 1987-1995 | Mortality | SIR | Non-parametric empirical Bayes estimation method | 2218 | 4 (M, F) out of 14 maps | Areal |
| Sweden [ | 1971-1989 | Incidence | DSR, CIF | None | 286 | 37 (M, F) | Areal |
| UK [ | 2003-2005 | Incidence Survival Mortality | DSR, RS | None | 350 | 17 (M, F, P) | Areal |
| UK/Ireland [ | 1991-2000 | Incidence Mortality | CIF or CMF | None | 127 | 21 (M, F) | Areal |
| USA [ | 1950-1994 | Mortality | DSR, CIF | None | 3055 | 41 (M, F) | Areal |
a. When multiple areas are available, as for some of the online Atlases, the number of regions is the number at the most detailed level.
b. M = males, F = females and P = persons.
c. Ecumene means only populated areas were coloured, Areal indicates that each individual region was coloured, and Isopleth means a continuous gradient was used.
BYM = Besag, York and Mollié
CAR = Conditional AutoRegressive
CIF/CMF = Comparative Incidence/Mortality Figure, and is the ratio of the DSR of the area to the DSR of the entire region or country
DSR = Directly age Standardised Rates
RER = Relative Excess Risk of death
RS = Relative Survival
SIR/SMR = indirectly Standardised Incidence/Mortality Ratio
Sensitivity analyses for oesophageal cancer incidence among males
| Prior 1 | Prior 2 | Prior 3 | Prior 4 | Prior 5 | Prior 6 | |
|---|---|---|---|---|---|---|
| Distribution of SIR | ||||||
| Mean | 100.8 | 99.4 | 101.5 | 100.7 | 100.6 | 103.6 |
| Standard deviation | 10.2 | 30.8 | 16.3 | 14.5 | 13.5 | 23.2 |
| Maximum | 140.6 | 455.1 | 181.2 | 169.5 | 166.4 | 201.8 |
| 75% Quartile | 107.2 | 113.1 | 111.7 | 110.2 | 109.4 | 109.8 |
| Median | 96.5 | 93.5 | 95.1 | 95.6 | 95.9 | 95.7 |
| 25% Quartile | 93.3 | 78.7 | 89.4 | 89.9 | 90.7 | 90.2 |
| Minimum | 87.4 | 55.9 | 79.6 | 79.3 | 80.0 | 79.8 |
| 90% ratio1 | 1.3 | 2.3 | 1.6 | 1.5 | 1.5 | 1.6 |
| pD2 | 34.112 | 138.047 | 51.305 | 53.828 | 53.709 | 54.098 |
| DIC3 | 1652.57 | 1660.32 | 1650.62 | 1648.51 | 1651.02 | 1650.71 |
| Spatial fraction4 | 0.56 | 0.44 | 0.63 | 0.48 | 0.52 | 0.57 |
| Percent SLAs with Geweke <0.01 for SIR | 41.0% | 1.9% | 3.3% | 9.4% | 10.3% | 10.5% |
Notes:
1. The 90% ratio is calculated as the 95th percentile divided by the 5th percentile of the smoothed SIR estimates.
2. pD represents the effective number of parameters in the model. Larger values indicate less smoothing of estimates.
3. DIC = Deviance Information Criterion. Smaller values (of at least 5 below) indicate a better model fit.
4. The spatial fraction estimates the relative contribution of spatial and unstructured heterogeneity, and is calculated as:
where = marginal spatial variance, σ 2= marginal variability of the unstructured random effects between areas. A value close to 1 indicates the spatial heterogeneity dominates, whereas a value close to 0 indicates the unstructured heterogeneity dominates.
Sensitivity analyses for oesophageal cancer survival among males
| Prior 1 | Prior 2 | Prior 3 | Prior 4 | Prior 5 | Prior 6 | |
|---|---|---|---|---|---|---|
| Distribution of RER | ||||||
| Mean | 100.2 | 100.7 | 100.4 | 100.1 | 100.4 | 100.0 |
| Standard deviation | 6.5 | 11.5 | 8.2 | 3.8 | 9.3 | 0.3 |
| Maximum | 119.6 | 140.7 | 127.6 | 111.3 | 129.5 | 102.1 |
| 75% Quartile | 105.3 | 105.0 | 105.7 | 102.6 | 106.3 | 100.2 |
| Median | 98.0 | 97.3 | 97.7 | 99.2 | 97.0 | 100.0 |
| 25% Quartile | 95.2 | 92.6 | 94.7 | 97.2 | 93.7 | 99.8 |
| Minimum | 80.9 | 63.4 | 75.0 | 89.4 | 72.5 | 98.3 |
| 90% ratio1 | 1.2 | 1.4 | 1.3 | 1.1 | 1.3 | 1.0 |
| pD2 | 23.988 | 36.021 | 33.105 | 18.663 | 30.524 | 18.218 |
| DIC3 | 3690.23 | 3690.27 | 3691.24 | 3691.32 | 3690.07 | 3694.96 |
| Spatial fraction4 | 0.62 | 0.87 | 0.51 | 0.48 | 0.80 | 0.00 |
| Percent SLAs with Geweke <0.01 for RER | 89.3% | 9.8% | 10.5% | 19.5% | 21.5% | 63.0% |
Notes:
1. The 90% ratio is calculated as the 95th percentile divided by the 5th percentile of the smoothed RER estimates.
2. pD represents the effective number of parameters in the model. Larger values indicate less smoothing of estimates.
3. DIC = Deviance Information Criterion. Smaller values (of at least 5 below) indicate a better model fit.
4. The spatial fraction estimates the relative contribution of spatial and unstructured heterogeneity, and is calculated as:
Where = marginal spatial variance, σ 2= marginal variability of the unstructured random effects between areas. A value close to 1 indicates the spatial heterogeneity dominates, whereas a value close to 0 indicates the unstructured heterogeneity dominates.
Figure 1An example of the incidence (risk of diagnosis) and survival (risk of death within 5 years of diagnosis) maps for all invasive cancers, males.
Figure 2An example of the incidence graphs for all invasive cancers, males.