Literature DB >> 22139860

Estimating net transition probabilities from cross-sectional data with application to risk factors in chronic disease modeling.

J van de Kassteele1, R T Hoogenveen, P M Engelfriet, P H M van Baal, H C Boshuizen.   

Abstract

A problem occurring in chronic disease modeling is the estimation of transition probabilities of moving from one state of a categorical risk factor to another. Transitions could be obtained from a cohort study, but often such data may not be available. However, under the assumption that transitions remain stable over time, age specific cross-sectional prevalence data could be used instead. Problems that then arise are parameter identifiability and the fact that age dependent cross-sectional data are often noisy or are given in age intervals. In this paper we propose a method to estimate so-called net annual transition probabilities from cross-sectional data, including their uncertainties. Net transitions only describe the net inflow or outflow into a certain risk factor state at a certain age. Our approach consists of two steps: first, smooth the data using multinomial P-splines, second, from these data estimate net transition probabilities. This second step can be formulated as a transportation problem, which is solved using the simplex algorithm from linear programming theory. A sensible specification of the cost matrix is crucial to get meaningful results. Uncertainties are assessed by parametric bootstrapping. We illustrate our method using data on body mass index. We conclude that this method provides a flexible way of estimating net transitions and that the use of net transitions has implications for model dynamics, for example when modeling interventions.
Copyright © 2011 John Wiley & Sons, Ltd.

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Year:  2011        PMID: 22139860     DOI: 10.1002/sim.4423

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  15 in total

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3.  Modeling and calibration for exposure to time-varying, modifiable risk factors: the example of smoking behavior in India.

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4.  To what extent could cardiovascular diseases be reduced if Germany applied fiscal policies to increase fruit and vegetable consumption? A quantitative health impact assessment.

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5.  Heterogeneity in Blood Pressure Transitions Over the Life Course: Age-Specific Emergence of Racial/Ethnic and Sex Disparities in the United States.

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6.  DYNAMO-HIA--a Dynamic Modeling tool for generic Health Impact Assessments.

Authors:  Stefan K Lhachimi; Wilma J Nusselder; Henriette A Smit; Pieter van Baal; Paolo Baili; Kathleen Bennett; Esteve Fernández; Margarete C Kulik; Tim Lobstein; Joceline Pomerleau; Johan P Mackenbach; Hendriek C Boshuizen
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7.  Potential health gains and health losses in eleven EU countries attainable through feasible prevalences of the life-style related risk factors alcohol, BMI, and smoking: a quantitative health impact assessment.

Authors:  Stefan K Lhachimi; Wilma J Nusselder; Henriette A Smit; Paolo Baili; Kathleen Bennett; Esteve Fernández; Margarete C Kulik; Tim Lobstein; Joceline Pomerleau; Hendriek C Boshuizen; Johan P Mackenbach
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8.  Estimating the Transitional Probabilities of Smoking Stages with Cross-sectional Data and 10-Year Projection for Smoking Behavior in Iranian Adolescents.

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Review 9.  Current recommendations on the estimation of transition probabilities in Markov cohort models for use in health care decision-making: a targeted literature review.

Authors:  Elena Olariu; Kevin K Cadwell; Elizabeth Hancock; David Trueman; Helene Chevrou-Severac
Journal:  Clinicoecon Outcomes Res       Date:  2017-09-01

10.  Disparities in Early Transitions to Obesity in Contemporary Multi-Ethnic U.S. Populations.

Authors:  Christy L Avery; Katelyn M Holliday; Sujatro Chakladar; Joseph C Engeda; Shakia T Hardy; Jared P Reis; Pamela J Schreiner; Christina M Shay; Martha L Daviglus; Gerardo Heiss; Dan Yu Lin; Donglin Zeng
Journal:  PLoS One       Date:  2016-06-27       Impact factor: 3.752

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