Partitioning methods for multifactorial risk attribution

שמור ב:
מידע ביבליוגרפי
הוצא לאור ב:Statistical Methods in Medical Research vol. 10, no. 3 (Jun 2001), p. 217
מחבר ראשי: Land, Matthias
מחברים אחרים: Vogel, Christine, Gefeller, Olaf
יצא לאור:
Sage Publications Ltd.
נושאים:
גישה מקוונת:Citation/Abstract
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Resumen:The epidemiological problem of risk attribution in the framework of multiple exposures has been the subject of intensive research activities in the last decade. In particular, partitioning methods have been developed to define new multidimensional measures of attributable risk putting the task of quantifying a proportion of disease events in a population that can be ascribed to the adverse health effects of certain risk factors into a multifactorial perspective. The parameters generalize the concept of attributable risk to different multifactorial frameworks in which multiple exposures might be arranged in hierarchically ordered classes or in equally ranking groups. Partitioning methods are reviewed and differences between the multifactorial variants of attributable risk are illustrated by a component causes model. [PUBLICATION ABSTRACT]   The epidemiological problem of risk attribution in the framework of multiple exposures has been the subject of intensive research activities in the last decade. In particular, partitioning methods have been developed to define new multidimensional measures of attributable risk putting the task of quantifying a proportion of disease events in a population that can be ascribed to the adverse health effects of certain risk factors into a multifactorial perspective. The parameters generalize the concept of attributable risk to different multifactorial frameworks in which multiple exposures might be arranged in hierarchically ordered classes or in equally ranking groups. Partitioning methods are reviewed and differences between the multifactorial variants of attributable risk are illustrated by a component causes model.
ISSN:0962-2802
1477-0334
DOI:10.1191/096228001680195166
Fuente:Science Database