Literature DB >> 31074326

Attributable fraction for multiple risk factors: Methods, interpretations, and examples.

Matteo Di Maso1,2, Francesca Bravi1, Jerry Polesel3, Eva Negri4, Adriano Decarli1, Diego Serraino3, Carlo La Vecchia1, Monica Ferraroni1.   

Abstract

The attributable fraction is the candidate tool to quantify individual shares of each risk factor on the disease burden in a population, expressing the proportion of cases ascribable to the risk factors. The original formula ignored the presence of other factors (i.e. multiple risk factors and/or confounders), and several adjusting methods for potential confounders have been proposed. However, crude and adjusted attributable fractions do not sum up to their joint attributable fraction (i.e. the number of cases attributable to all risk factors together) and their sum may exceed one. A different approach consists of partitioning the joint attributable fraction into exposure-specific shares leading to sequential and average attributable fractions. We provide an example using Italian case-control data on oral cavity cancer comparing crude, adjusted, sequential, and average attributable fractions for smoking and alcohol and provide an overview of the available software routines for their estimation. For each method, we give interpretation and discuss shortcomings. Crude and adjusted attributable fractions added up over than one, whereas sequential and average methods added up to the joint attributable fraction = 0.8112 (average attributable fractions for smoking and alcohol were 0.4894 and 0.3218, respectively). The attributable fraction is a well-known epidemiological measure that translates risk factors prevalence and disease occurrence in useful figures for a public health perspective. This work endorses their proper use and interpretation.

Entities:  

Keywords:  Attributable fraction; adjusted methods; case–control study; multiple risk factors; partitioning methods

Mesh:

Year:  2019        PMID: 31074326     DOI: 10.1177/0962280219848471

Source DB:  PubMed          Journal:  Stat Methods Med Res        ISSN: 0962-2802            Impact factor:   3.021


  2 in total

1.  Simulation study on the validity of the average risk approach in estimating population attributable fractions for continuous exposures.

Authors:  Yibing Ruan; Stephen D Walter; Priyanka Gogna; Christine M Friedenreich; Darren R Brenner
Journal:  BMJ Open       Date:  2021-07-01       Impact factor: 2.692

2.  Alcohol drinking and head and neck cancer risk: the joint effect of intensity and duration.

Authors:  Gioia Di Credico; Jerry Polesel; Luigino Dal Maso; Francesco Pauli; Nicola Torelli; Daniele Luce; Loredana Radoï; Keitaro Matsuo; Diego Serraino; Paul Brennan; Ivana Holcatova; Wolfgang Ahrens; Pagona Lagiou; Cristina Canova; Lorenzo Richiardi; Claire M Healy; Kristina Kjaerheim; David I Conway; Gary J Macfarlane; Peter Thomson; Antonio Agudo; Ariana Znaor; Silvia Franceschi; Rolando Herrero; Tatiana N Toporcov; Raquel A Moyses; Joshua Muscat; Eva Negri; Marta Vilensky; Leticia Fernandez; Maria Paula Curado; Ana Menezes; Alexander W Daudt; Rosalina Koifman; Victor Wunsch-Filho; Andrew F Olshan; Jose P Zevallos; Erich M Sturgis; Guojun Li; Fabio Levi; Zuo-Feng Zhang; Hal Morgenstern; Elaine Smith; Philip Lazarus; Carlo La Vecchia; Werner Garavello; Chu Chen; Stephen M Schwartz; Tongzhang Zheng; Thomas L Vaughan; Karl Kelsey; Michael McClean; Simone Benhamou; Richard B Hayes; Mark P Purdue; Maura Gillison; Stimson Schantz; Guo-Pei Yu; Shu-Chun Chuang; Paolo Boffetta; Mia Hashibe; Amy Lee Yuan-Chin; Valeria Edefonti
Journal:  Br J Cancer       Date:  2020-08-24       Impact factor: 7.640

  2 in total

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