| Literature DB >> 32303231 |
Garyfallos Konstantinoudis1,2, Dominic Schuhmacher3, Roland A Ammann4, Tamara Diesch5, Claudia E Kuehni6, Ben D Spycher6.
Abstract
BACKGROUND: The aetiology of most childhood cancers is largely unknown. Spatially varying environmental factors such as traffic-related air pollution, background radiation and agricultural pesticides might contribute to the development of childhood cancer. This study is the first investigation of the spatial disease mapping of childhood cancers using exact geocodes of place of residence.Entities:
Keywords: Bayesian spatial modelling; Cancer clusters; Central nervous system cancer; Childhood cancer; Point processes
Mesh:
Year: 2020 PMID: 32303231 PMCID: PMC7165384 DOI: 10.1186/s12942-020-00211-7
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Number of cases and median age at diagnosis for the analysis based on the location at birth and diagnosis
| Birth | Diagnosis | |||||
|---|---|---|---|---|---|---|
| Total N (%) | Female N (%) | Median age at diagnosis | Total N (%) | Female N (%) | Median age at diagnosis | |
| All cancers | 4198 (100) | 1875 (45) | 4.8 | 5947 (100) | 2654 (45) | 6.4 |
| Leukaemia | 1384 (33) | 570 (41) | 4.2 | 1880 (32) | 781 (42) | 4.9 |
| Lymphoma | 459 (11) | 161 (35) | 10.2 | 772 (13) | 279 (36) | 11.5 |
| CNS tumours | 902 (21) | 421 (47) | 6.0 | 1290 (22) | 590 (456) | 7.1 |
N number of cases, CNS Central Nervous System
Fig. 1Maps of the median prosterior of the spatial relative risk for different cancer types during 1985–2015 in Switzerland. The adjusted models are models adjusted for predicted ambient NO2 concentration, predicted dose rate from terrestrial gamma and cosmic radiation, SEP, years of existing general cancer registry in the canton, language region and level of urbanisation
Median posterior of the variance hyperparameter of the Gaussian field () for the unadjusted and adjusted model, median posterior of variation explained () and median posterior of grid specific relative risk based on residence at diagnosis
| LGCPs | ||||
|---|---|---|---|---|
| All cancers | Leukaemia | Lymphoma | CNS tumours | |
| 0.01 (0, 0.02) | 0.00 (0, 0.03) | 0.01 (0, 0.04) | 0.02 (0.01, 0.06) | |
| 0.01 (0, 0.03) | 0.00 (0, 0.01) | 0.00 (0, 0.03) | 0.02 (0, 0.06) | |
| Variation explainedc (median; 95% CI) | 0.72 (0.43, 0.89) | 0.81 (0.58, 0.94) | 0.82 (0.60, 0.94) | 0.64 (0.31, 0.84) |
| RR unadjusteda (median; ranged) | 0.99 (0.83, 1.13) | 1.00 (0.96, 1.09) | 0.99 (0.9, 1.13) | 1.01 (0.82, 1.23) |
| RR adjustedb (median; ranged) | 1.02 (0.86, 1.08) | 1.00 (0.97, 1.04) | 1.00 (0.96, 1.07) | 1.00 (0.87, 1.25) |
CI credibility intervals, RR grid specific relative risk compared to Switzerland as a whole, LGCP log-Gaussian Cox process, CNS Central and Nervous System
aThe unadjusted model refers to the models without any covariates
bAdjusted for NO2, background radiation, years of general cancer registration, linguistic region and degree of urbanicity
cVariation explained by the covariates from the fully adjusted model, defined as where denotes the variance over the spatial units, is the vector of intercept and covariates, the design matrix and the Gaussian field. The variation here refers to the fully adjusted model
dRange is defined as [min, max]
Fig. 2Maps of posterior probabilities that the spatial relative risk per grid cell is larger than 1 (exceedance probabilities) for different childhood cancers groups during 1985–2015 in Switzerland. The adjusted models are adjusted for predicted ambient NO2 air concentration, predicted dose rate from terrestrial gamma and cosmic radiation, SEP, duration in years of general cancer registration in the canton, language region and level of urbanisation
Fig. 3Univariable and fully adjusted regression analysis at time of diagnosis. The fixed effects are summarized using the posterior median of the relative risk together with 95% credibility regions. NO nitrogen dioxide, CNS Central Nervous System tumours, BR total dose background radiation, SEP socio-economic position, YoR years of existing cantonal registry, G German speaking part, F French speaking part, I Italian speaking part, r rural areas, s semi-urban areas, u urban areas. Predicted ambient NO2 air concentration, predicted background ionising radiation, SEP and duration in years of general cancer registration in the canton were scaled so that the standard deviations (SD) are 1 and considered as linear effects. Their interpretation is a multiplicative increase (or decrease) in the number of observed cases compared to the number of the expected cases per 1 SD increase (or decrease) in the covariate. The sd for predicted ambient NO2 air concentration is 77.7 μg/m3 × 10, for predicted background ionising radiation 60.2 , for SEP 8.7 units and for duration in years of general cancer registration in the canton 11.6 years. The fully-adjusted models are models adjusted for predicted ambient NO2 air concentration, predicted dose rate from terrestrial gamma and cosmic radiation, SEP, duration in years of general cancer registration in the canton, language region and level of urbanisation