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A Flexible Estimating Equations Approach for Mapping Function-Valued Traits

机译:映射函数值特征的一种灵活的估计方程方法

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摘要

In genetic studies, many interesting traits, including growth curves and skeletal shape, have temporal or spatial structure. They are better treated as curves or function-valued traits. Identification of genetic loci contributing to such traits is facilitated by specialized methods that explicitly address the function-valued nature of the data. Current methods for mapping function-valued traits are mostly likelihood-based, requiring specification of the distribution and error structure. However, such specification is difficult or impractical in many scenarios. We propose a general functional regression approach based on estimating equations that is robust to misspecification of the covariance structure. Estimation is based on a two-step least-squares algorithm, which is fast and applicable even when the number of time points exceeds the number of samples. It is also flexible due to a general linear functional model; changing the number of covariates does not necessitate a new set of formulas and programs. In addition, many meaningful extensions are straightforward. For example, we can accommodate incomplete genotype data, and the algorithm can be trivially parallelized. The framework is an attractive alternative to likelihood-based methods when the covariance structure of the data is not known. It provides a good compromise between model simplicity, statistical efficiency, and computational speed. We illustrate our method and its advantages using circadian mouse behavioral data.
机译:在遗传研究中,许多有趣的特征,包括生长曲线和骨骼形状,都具有时间或空间结构。最好将它们视为曲线或函数值特征。通过专门处理数据的功能值性质的专门方法,有助于鉴定有助于此类性状的遗传基因座。映射函数值特征的当前方法大部分是基于似然性的,需要指定分布和错误结构。但是,在许多情况下,这样的规范是困难的或不切实际的。我们提出了一种基于估计方程的通用函数回归方法,该方法对于协方差结构的错误指定具有鲁棒性。估计基于两步最小二乘算法,即使时间点数量超过样本数量,该算法也很快且适用。由于通用的线性功能模型,它也很灵活;更改协变量的数量并不需要新的公式和程序集。另外,许多有意义的扩展很简单。例如,我们可以容纳不完整的基因型数据,并且可以对算法进行微不足道的并行化。当数据的协方差结构未知时,该框架是基于似然方法的一种有吸引力的替代方法。它在模型简单性,统计效率和计算速度之间提供了很好的折衷方案。我们使用昼夜节律的小鼠行为数据说明了我们的方法及其优势。

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