Cluster detection methods applied to the Upper Cape Cod cancer data.

Al Ozonoff, Thomas Webster, Veronica Vieira, Janice Weinberg, David Ozonoff, Ann Aschengrau
Author Information
  1. Al Ozonoff: Department of Biostatistics, Boston University School of Public Health, 715 Albany Street, Boston, MA 02118, USA. aozonoff@bu.edu

Abstract

BACKGROUND: A variety of statistical methods have been suggested to assess the degree and/or the location of spatial clustering of disease cases. However, there is relatively little in the literature devoted to comparison and critique of different methods. Most of the available comparative studies rely on simulated data rather than real data sets.
METHODS: We have chosen three methods currently used for examining spatial disease patterns: the M-statistic of Bonetti and Pagano; the Generalized Additive Model (GAM) method as applied by Webster; and Kulldorff's spatial scan statistic. We apply these statistics to analyze breast cancer data from the Upper Cape Cancer Incidence Study using three different latency assumptions.
RESULTS: The three different latency assumptions produced three different spatial patterns of cases and controls. For 20 year latency, all three methods generally concur. However, for 15 year latency and no latency assumptions, the methods produce different results when testing for global clustering.
CONCLUSION: The comparative analyses of real data sets by different statistical methods provides insight into directions for further research. We suggest a research program designed around examining real data sets to guide focused investigation of relevant features using simulated data, for the purpose of understanding how to interpret statistical methods applied to epidemiological data with a spatial component.

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Grants

  1. P42 ES007381/NIEHS NIH HHS
  2. 5P42ES 07381/NIEHS NIH HHS
  3. R01 AI028076/NIAID NIH HHS
  4. R01 LM007677/NLM NIH HHS
  5. R01-LM007677/NLM NIH HHS
  6. R01-AI28076/NIAID NIH HHS

MeSH Term

Adult
Breast Neoplasms
Case-Control Studies
Cluster Analysis
Female
Geographic Information Systems
Geography
Humans
Incidence
Maps as Topic
Massachusetts
Middle Aged
Registries
Risk

Word Cloud

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