Abstract

Abstract Background: The American Cancer Society (ACS) and the NCI collaborate every 5–8 years to update the methods for estimating numbers of new cancer cases and deaths in the current year in the United States and in every state and the District of Columbia. In this article, we reevaluate the statistical method for estimating unavailable historical incident cases which are needed for projecting the current year counts. Methods: We compared the current county-level model developed in 2012 (M0) with three new models, including a state-level mixed effect model (M1) and two state-level hierarchical Bayes models with varying random effects (M2 and M3). We used 1996–2014 incidence data for 16 sex-specific cancer sites to fit the models. An average absolute relative deviation (AARD) comparing the observed with the model-specific predicted counts was calculated for each site. Models were also cross-validated for six selected sex-specific cancer sites. Results: For the cross-validation, the AARD ranged from 2.8% to 33.0% for M0, 3.3% to 31.1% for M1, 6.6% to 30.5% for M2, and 10.4% to 393.2% for M3. M1 encountered the least technical issues in terms of model convergence and running time. Conclusions: The state-level mixed effect model (M1) was overall superior in accuracy and computational efficiency and will be the new model for the ACS current year projection project. Impact: In addition to predicting the unavailable state-level historical incidence counts for cancer surveillance, the updated algorithms have broad applicability for disease mapping and other activities of public health planning, advocacy, and research.

Keywords

Cancer incidenceCurrent (fluid)Incidence (geometry)CancerDemographyState (computer science)GeographyMedicineComputer scienceMathematicsInternal medicineGeologySociologyOceanographyAlgorithm

MeSH Terms

American Cancer SocietyBayes TheoremFemaleForecastingHumansIncidenceMaleNeoplasmsUnited States

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Publication Info

Year
2021
Type
letter
Volume
30
Issue
9
Pages
1620-1626
Citations
22
Access
Closed

Citation Metrics

22
OpenAlex
2
Influential
15
CrossRef

Cite This

Benmei Liu, Li Zhu, Joe Zou et al. (2021). Updated Methodology for Projecting U.S.- and State-Level Cancer Counts for the Current Calendar Year: Part I: Spatio-temporal Modeling for Cancer Incidence. Cancer Epidemiology Biomarkers & Prevention , 30 (9) , 1620-1626. https://doi.org/10.1158/1055-9965.epi-20-1727

Identifiers

DOI
10.1158/1055-9965.epi-20-1727
PMID
34162657
PMCID
PMC8419141

Data Quality

Data completeness: 90%