An infectious aetiology for childhood brain tumours? Evidence from space-time clustering and seasonality analyses

  • Richard J. Q. McNally
  • , Donal Cairns
  • , O. B. Eden
  • , F. E. Alexander
  • , G. M. Taylor
  • , A. M. Kelsey
  • , J. M. Birch

    Research output: Contribution to journalArticlepeer-review

    Abstract

    To investigate whether infections or other environmental exposures may be involved in the aetiology of childhood central nervous system tumours, we have analysed for space-time clustering and seasonality using population-based data from the North West of England for the period 1954 to 1998. Knox tests for space-time interactions between cases were applied with fixed thresholds of close in space, <5 km, and close in time, <1 year apart. Addresses at birth and diagnosis were used. Tests were repeated replacing geographical distance with distance to the Nth nearest neighbour. N was chosen such that the mean distance was 5 km. Data were also examined by a second order procedure based on K-functions. Tests for heterogeneity and Edwards' test for sinusoidal variation were applied to examine changes of incidence with month of birth or diagnosis. There was strong evidence of space-time clustering, particularly involving cases of astrocytoma and ependymoma. Analyses of seasonal variation showed excesses of cases born in the late Autumn or Winter. Results are consistent with a role for infections in a proportion of cases from these diagnostic groups. Further studies are needed to identify putative infectious agents. © 2002 Cancer Research UK.
    Original languageEnglish
    Pages (from-to)1070-1077
    Number of pages7
    JournalBritish Journal of Cancer
    Volume86
    Issue number7
    DOIs
    Publication statusPublished - 8 Apr 2002

    Keywords

    • Aetiology
    • Brain tumours
    • Children
    • Infection
    • Seasonal variation
    • Space-time clustering

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