Theory of partitioning of disease prevalence and mortality in observational data.

dc.contributor.author

Akushevich, I

dc.contributor.author

Yashkin, AP

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Kravchenko, J

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Fang, F

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Arbeev, K

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Sloan, F

dc.contributor.author

Yashin, AI

dc.coverage.spatial

United States

dc.date.accessioned

2017-06-02T15:52:56Z

dc.date.available

2017-06-02T15:52:56Z

dc.date.issued

2017-04

dc.description.abstract

In this study, we present a new theory of partitioning of disease prevalence and incidence-based mortality and demonstrate how this theory practically works for analyses of Medicare data. In the theory, the prevalence of a disease and incidence-based mortality are modeled in terms of disease incidence and survival after diagnosis supplemented by information on disease prevalence at the initial age and year available in a dataset. Partitioning of the trends of prevalence and mortality is calculated with minimal assumptions. The resulting expressions for the components of the trends are given by continuous functions of data. The estimator is consistent and stable. The developed methodology is applied for data on type 2 diabetes using individual records from a nationally representative 5% sample of Medicare beneficiaries age 65+. Numerical estimates show excellent concordance between empirical estimates and theoretical predictions. Evaluated partitioning model showed that both prevalence and mortality increase with time. The primary driving factors of the observed prevalence increase are improved survival and increased prevalence at age 65. The increase in diabetes-related mortality is driven by increased prevalence and unobserved trends in time-periods and age-groups outside of the range of the data used in the study. Finally, the properties of the new estimator, possible statistical and systematical uncertainties, and future practical applications of this methodology in epidemiology, demography, public health and health forecasting are discussed.

dc.identifier

https://www.ncbi.nlm.nih.gov/pubmed/28130147

dc.identifier

S0040-5809(17)30007-2

dc.identifier.eissn

1096-0325

dc.identifier.uri

https://hdl.handle.net/10161/14750

dc.language

eng

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Elsevier BV

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Theor Popul Biol

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10.1016/j.tpb.2017.01.003

dc.subject

Diabetes

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Incidence

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Mortality

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Partitioning

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Prevalence

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Time trend

dc.title

Theory of partitioning of disease prevalence and mortality in observational data.

dc.type

Journal article

duke.contributor.orcid

Yashkin, AP|0000-0002-1185-148X

duke.contributor.orcid

Arbeev, K|0000-0002-4195-7832

pubs.author-url

https://www.ncbi.nlm.nih.gov/pubmed/28130147

pubs.begin-page

117

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127

pubs.organisational-group

Center for Child and Family Policy

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Center for Population Health & Aging

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Clinical Science Departments

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Duke

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Duke Cancer Institute

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Duke Population Research Center

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Duke Population Research Institute

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Economics

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Institutes and Centers

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Institutes and Provost's Academic Units

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Nursing

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Physics

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Sanford

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Sanford School of Public Policy

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School of Medicine

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School of Nursing

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Social Science Research Institute

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Staff

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Surgery

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Surgery, Surgical Sciences

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Trinity College of Arts & Sciences

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University Institutes and Centers

pubs.publication-status

Published

pubs.volume

114

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