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首页> 外文期刊>Behavior Genetics: An International Journal Devoted to Research in the Inheritance of Behavior in Animals and Man >Evaluation and extensions of a structural equation modeling approach to the analysis of survival data.
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Evaluation and extensions of a structural equation modeling approach to the analysis of survival data.

机译:对生存数据分析的结构方程建模方法的评估和扩展。

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Recently a new method for the analysis of survival data using a structural equation modeling approach has been suggested by Pickles and colleagues using twin data they demonstrated the application of this model to study the correlation in age of onset. The purpose of the current research is twofold: 1) to evaluate the statistical performance of the model as presented by Pickles and colleagues, and 2) to expand and evaluate the model in more applications, including both genetically informative data and other multivariate examples. Results evaluated from this study involve three areas of method performance: Type-I error rates, power, and parameter estimates under four different distributions (normal, Gamma-2, Gamma-6 and g-and-h) and four different sample sizes (n = 125, 250, 500 and 750). Results based on the original Pickles model indicated that in all sample size and distribution conditions the Type-I error rate was adequate, in fact below the nominal level of .05. Additionally, power was greater than .80 for sample sizes of 500 or more for all distribution conditions. Parameter estimates were upwardly biased when the population value was rho = .20. This bias varied across distributions; the g-and-h distribution showed the largest bias. Results from the expanded model indicated that Type-I error rates were adequate. Power results were not affected by distribution type; sample sizes of 500 were above the .80 level. Parameter estimates continued to be upwardly biased in this more general model, although the degree of bias was smaller.
机译:最近,Pickles及其同事使用孪生数据提出了一种使用结构方程建模方法分析生存数据的新方法,他们证明了该模型在研究发病年龄相关性方面的应用。当前研究的目的是双重的:1)评估Pickles及其同事提出的模型的统计性能,以及2)在更多应用中扩展和评估模型,包括遗传信息数据和其他多变量示例。这项研究评估的结果涉及方法性能的三个方面:四种不同分布(正态,Gamma-2,Gamma-6和g-h)下的I型错误率,功效和参数估计,以及四种不同的样本量( n = 125、250、500和750)。根据原始Pickles模型得出的结果表明,在所有样本量和分布条件下,I型错误率均足够,实际上低于名义水平0.05。此外,对于所有分布条件下的500个或更多样本量,功效大于.80。当总体值是rho = .20时,参数估计值会出现偏差。这种偏见因分布而异。 g-h分布显示最大偏差。扩展模型的结果表明,I型错误率已足够。功率结果不受分配类型的影响; 500个样本量大于.80水平。尽管偏差程度较小,但在这种更通用的模型中,参数估计值仍继续向上偏差。

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