Detection of temporal changes in the spatial distribution of cancer rates using local Moran?s I and geostatistically simulated spatial neutral models
- 1 May 2005
- journal article
- research article
- Published by Springer Nature in Journal of Geographical Systems
- Vol. 7 (1) , 137-159
- https://doi.org/10.1007/s10109-005-0154-7
Abstract
This paper presents the first application of spatially correlated neutral models to the detection of changes in mortality rates across space and time using the local Moran’s I statistic. Sequential Gaussian simulation is used to generate realizations of the spatial distribution of mortality rates under increasingly stringent conditions: 1) reproduction of the sample histogram, 2) reproduction of the pattern of spatial autocorrelation modeled from the data, 3) incorporation of regional background obtained by geostatistical smoothing of observed mortality rates, and 4) incorporation of smooth regional background observed at a prior time interval. The simulated neutral models are then processed using two new spatio-temporal variants of the Moran’s I statistic, which allow one to identify significant changes in mortality rates above and beyond past spatial patterns. Last, the results are displayed using an original classification of clusters/outliers tailored to the space-time nature of the data. Using this new methodology the space-time distribution of cervix cancer mortality rates recorded over all US State Economic Areas (SEA) is explored for 9 time periods of 5 years each. Incorporation of spatial autocorrelation leads to fewer significant SEA units than obtained under the traditional assumption of spatial independence, confirming earlier claims that Type I errors may increase when tests using the assumption of independence are applied to spatially correlated data. Integration of regional background into the neutral models yields substantially different spatial clusters and outliers, highlighting local patterns which were blurred when local Moran’s I was applied under the null hypothesis of constant risk.Keywords
This publication has 14 references indexed in Scilit:
- Space-time visualization and analysis in the Cancer Atlas ViewerJournal of Geographical Systems, 2005
- Local clustering in breast, lung and colorectal cancer in Long Island, New YorkInternational Journal of Health Geographics, 2003
- Alternate Ranging Methods for Cancer Mortality MapsJNCI Journal of the National Cancer Institute, 2000
- Application of a weighted head-banging algorithm to mortality data mapsStatistics in Medicine, 1999
- A new proposal to adjust Moran'sI for population densityStatistics in Medicine, 1999
- Disease Models Implicit in Statistical Tests of Disease ClusteringEpidemiology, 1995
- Cancer patterns among women in the united statesSeminars in Oncology Nursing, 1995
- Adjusting Moran'sIfor population densityStatistics in Medicine, 1995
- Incidence of Dysplasia and Carcinoma of the Uterine Cervix in an Appalachian PopulationJNCI Journal of the National Cancer Institute, 1992
- Mapping Disease and Mortality Rates Using Empirical Bayes EstimatorsJournal of the Royal Statistical Society Series C: Applied Statistics, 1991