A log-linear model for binary pedigree data.

J L Hopper, P L Derrick
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引用次数: 19

Abstract

A pedigree model for binary data, motivated by log-linear modelling, has been developed to examine evidence for familial aggregation in disease status. From an epidemiological point of view a convenient way to express disease concordance between a pair of relatives is in terms of the odds ratio. For a rare disease this is almost equivalent to the relative risk of one family member being affected given that the other is affected, and in extending this to pedigrees it is assumed that these relative risks are multiplicative. In applying the model to the breast cancer data, pedigrees on a rare disease ascertained through an affected proband, it has been shown that estimation of concordance is dependent critically on knowing the probability that a sampled individual is affected. Therefore known population estimates of prevalence or cumulative risk, and an appropriate ascertainment correction, need to be invoked for the model to give proper estimates of disease concordance. The model is flexible in that measured ancillary risk factors, including genetic marker information, can be incorporated into the analysis. Therefore in future studies this information should be collected on all individuals, not just those affected. Suggested statistics for examining a fitted model are presented.

二元谱系数据的对数线性模型。
由对数线性模型驱动的二值数据系谱模型,已开发用于检查疾病状态中家族聚集的证据。从流行病学的观点来看,用比值比来表示一对亲属之间的疾病一致性是一种方便的方法。对于一种罕见疾病,这几乎相当于一个家庭成员受到影响的相对风险,而另一个家庭成员受到影响,并且在将其扩展到谱系时,假设这些相对风险是倍增的。在将该模型应用于乳腺癌数据,即通过受影响先证者确定的罕见疾病的谱系时,已经表明一致性的估计严重依赖于知道采样个体受影响的概率。因此,需要调用已知的患病率或累积风险的人口估计值,以及适当的确定校正,以便模型给出疾病一致性的适当估计值。该模型是灵活的,在测量辅助风险因素,包括遗传标记信息,可以纳入分析。因此,在未来的研究中,应该收集所有个体的信息,而不仅仅是那些受影响的个体。提出了检验拟合模型的建议统计量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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