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. 2004 Apr 15;23(7):1111-30.
doi: 10.1002/sim.1668.

A breast cancer prediction model incorporating familial and personal risk factors

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A breast cancer prediction model incorporating familial and personal risk factors

Jonathan Tyrer et al. Stat Med. .

Erratum in

  • Stat Med. 2005 Jan 15;24(1):156

Abstract

Many factors determine a woman's risk of breast cancer. Some of them are genetic and relate to family history, others are based on personal factors such as reproductive history and medical history. While many papers have concentrated on subsets of these risk factors, no papers have incorporated personal risk factors with a detailed genetic analysis. There is a need to combine these factors to provide a better overall determinant of risk. The discovery of the BRCA1 and BRCA2 genes has explained some of the genetic determinants of breast cancer risk, but these genes alone do not explain all of the familial aggregation of breast cancer. We have developed a model incorporating the BRCA genes, a low penetrance gene and personal risk factors. For an individual woman her family history is used in conjuction with Bayes theorem to iteratively produce the likelihood of her carrying any genes predisposing to breast cancer, which in turn affects her likelihood of developing breast cancer. This risk was further refined based on the woman's personal history. The model has been incorporated into a computer program that gives a personalised risk estimate.

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Comment in

  • A breast cancer prediction model.
    de Bock GH, Jacobi CE, Jonker MA, Nagelkerke NJ, van Houwelingen JC. de Bock GH, et al. Stat Med. 2005 May 30;24(10):1610-2; author reply 1612. doi: 10.1002/sim.2013. Stat Med. 2005. PMID: 15880578 No abstract available.