| Literature DB >> 24725434 |
Rikke Baastrup Nordsborg1, Jaymie R Meliker, Annette Kjær Ersbøll, Geoffrey M Jacquez, Aslak Harbo Poulsen, Ole Raaschou-Nielsen.
Abstract
BACKGROUND: A large proportion of breast cancer cases are thought related to environmental factors. Identification of specific geographical areas with high risk (clusters) may give clues to potential environmental risk factors. The aim of this study was to investigate whether clusters of breast cancer existed in space and time in Denmark, using 33 years of residential histories.Entities:
Mesh:
Year: 2014 PMID: 24725434 PMCID: PMC3990271 DOI: 10.1186/1471-2407-14-255
Source DB: PubMed Journal: BMC Cancer ISSN: 1471-2407 Impact factor: 4.430
Descriptive statistics of breast cancer cases and matched controls by factors used for adjustment
| Full data set | 3138 | 6276 | | |
| Women with missing data on adjustment variables | 1060 | 2121 | | |
| Women with data on adjustment variables | 2078 | 4155 | | |
| Age at diagnosis/index datea | 62.6 (41.5 - 85.9) | 62.6 (41.5 - 85.9) | | |
| | | |||
| Child birth yes/no | 1838/240 (88%/12%) | 3734 / 421 (90%/10%) | 0.09d | |
| Number of children | | | 0.01e | |
| | 0 | 240 (12%) | 421 (10%%) | - |
| | 1 | 328 (16%) | 623 (15%) | - |
| | 2 | 953 (46%) | 1910 (46%) | - |
| | ≥3 | 557 (27%) | 1201 (29%) | - |
| Age at first child birtha,b | 24.1 (18.6 - 33.5) | 23.6 (18.3 - 32.7) | 0.0004e | |
| Area-level educationa,c | 6.5 (1–31) | 5.9 (1–28.2) | 0.007e | |
| Area-level income in 100.000 DKKa | 4.9 (2.9 - 7.6) | 4.8 (2.8 - 7.4) | 0.052e | |
aNumbers are medians (5% - 95% percentiles).
bAmong parous women.
cPercentage of households in the area having the highest possible educational level.
DKK: the Danish currency.
dUnivariate χ2-test of categorical variable.
eUnivariate Wilcoxon test of linear variables.
Figure 1Overview map of the study area.1a shows the 98 municipalities of Denmark with two boxes indicating areas where clusters were detected. 1b shows an enlargement of the Odense area. 1c shows an enlargement of the Copenhagen area with names of the municipalities referred to in the text. The colours indicate for each municipality the density (number of addresses per square kilometre) of geo-coded residential addresses included in the study. The maps contain data from the Danish Geodata Agency.
Figure 2Results of unadjusted space-time cluster analyses performed in SpaceStat. Analyses were carried out with 999 permutations, k =25 and 100. 2a shows cluster areas detected at k = 25 in the Odense (inserted map) and Copenhagen areas with each of the two control groups as well as when control groups were combined. 2b shows cluster areas detected at k = 100 with each of the two control groups and the combined control group. The cluster areas presented in the figures illustrate the maximum extent of the cluster areas based on the location of significant cases, and the colours of the areas indicate the control group used. This presentation of results secures the anonymity of the study participants (in contrast to presenting the actual address points on the maps). For each cluster area the text box show how many cases it comprised and its temporal extent. CG: Control Group. The maps contain data from the Danish Geodata Agency and © OpenStreetMap (and) contributors, CC- BY-SA.
Figure 3Results of space-only cluster analyses performed in SaTScan. Analyses were based on residential addresses of cases and controls in 1987 (3a) and 1997 (3b). Clusters were found in the Odense (inserted maps) and Copenhagen areas. The colours of the areas indicate the control group used. The number of cases and the p-value for each cluster are given in the text boxes. CG: Control Group. The maps contain data from the Danish Geodata Agency and © OpenStreetMap (and) contributors, CC- BY-SA.
Figure 4Unadjusted and adjusted results of space-time cluster analyses. Analyses were based on the 66% of the study population with data on reproduction and socioeconomic indicators and performed in SpaceStat with 999 permutations, k = 100. 4a shows cluster areas in the Copenhagen areas with each of the two control groups and the combined control group before adjustment. 4b shows cluster areas detected by identical analyses after adjustment for ever/never child birth, age at first birth, number of child births, area-level income and education. The cluster areas presented in the figures illustrate the maximum extent of the cluster areas based on the location of significant cases, and the colours of the areas indicate the control group used. For each cluster area the text box shows how many cases it comprised and its temporal extent. CG: Control Group. The maps contain data from the Danish Geodata Agency and © OpenStreetMap (and) contributors, CC- BY-SA.
Summary of findings from space-time cluster analyses performed in SpaceStat and confirmatory “space-only” cluster analyses performed in SaTScan
| | | | |||||||||
| 1b | 2c | 1 & 2d | 1 | 2 | 1 & 2 | 1 | 2 | 1 & 2 | | ||
| Unadjusted, all cases | | | | | | | | | | | |
| Calendar year | 25 | x | x | x | | x | x | | | | 2.a |
| | 100 | x | x | x | | | | | x | | 2.b |
| Age | 25 | x | | | | | | | | | - |
| | 100 | x | x | x | | | | | | | - |
| Unadjusted, 66% of cases | | | | | | | | | | | |
| Calendar year | 25 | x | | x | | | | | | | - |
| | 100 | x | x | x | | | | | | | 4.a |
| Age | 25 | | | | | | | | | | - |
| | 100 | | | | | | | | | | - |
| Adjusted, 66% of cases | | | | | | | | | | | |
| Calendar year | 25 | | | | | | | | | | - |
| | 100 | | | x | | | | | | | 4.b |
| Age | 25 | | | | | | | | | | - |
| | 100 | | | | | | | | | | - |
| | | | | | | | | | | | |
| Year 1987 | | xe | xe | x | | | x | | | | 3.a |
| Year 1997 | x | x | x | 3.b | |||||||
For each cluster area, the “x” indicates in which analyses the cluster was detected according to method, number of cases, adjustment, time scale, choice of ak-nearest neighbours and by control group b1, c2 and d1 & 2 combined. eOnly borderline significant. For selected analyses the cluster areas are depicted in the figures listed in the last column.