高维度遗传数据预测的基于 blockwise 和参考面板的估计器。

IF 3.2 1区 数学 Q1 STATISTICS & PROBABILITY Annals of Statistics Pub Date : 2024-06-01 Epub Date: 2024-08-11 DOI:10.1214/24-aos2378
Bingxin Zhao, Shurong Zheng, Hongtu Zhu
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引用次数: 0

摘要

基因预测为将基因发现转化为医学进步带来了巨大希望。由于遗传变异的高维协方差矩阵(或称连锁不平衡(LD)模式)通常呈现块对角结构,因此许多方法都会考虑预定局部 LD 块中变异体之间的依赖性。此外,出于隐私和数据保护的考虑,每个 LD 块中的遗传变异依赖性通常是通过外部参考面板而不是原始训练数据集估算的。本文提出了在无稀疏性限制的高维预测框架下,对基于顺时针方向和参考面板的估计方法进行统一分析。我们发现,令人惊讶的是,即使协方差矩阵具有边界明确的块对角结构,调整局部依赖性的顺时针估计方法的准确性也会大大低于控制整个协方差矩阵的方法。此外,建立在原始训练数据集和外部参考面板基础上的估算方法在高维度上可能会有不同的表现,这可能反映了只能从训练数据集中获取摘要级数据的代价。这一分析基于随机矩阵理论中块对角协方差矩阵的新结果。我们利用大量模拟和英国生物库的真实数据分析对结果进行了数值评估。
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ON BLOCKWISE AND REFERENCE PANEL-BASED ESTIMATORS FOR GENETIC DATA PREDICTION IN HIGH DIMENSIONS.

Genetic prediction holds immense promise for translating genetic discoveries into medical advances. As the high-dimensional covariance matrix (or the linkage disequilibrium (LD) pattern) of genetic variants often presents a block-diagonal structure, numerous methods account for the dependence among variants in predetermined local LD blocks. Moreover, due to privacy considerations and data protection concerns, genetic variant dependence in each LD block is typically estimated from external reference panels rather than the original training data set. This paper presents a unified analysis of blockwise and reference panel-based estimators in a high-dimensional prediction framework without sparsity restrictions. We find that, surprisingly, even when the covariance matrix has a block-diagonal structure with well-defined boundaries, blockwise estimation methods adjusting for local dependence can be substantially less accurate than methods controlling for the whole covariance matrix. Further, estimation methods built on the original training data set and external reference panels are likely to have varying performance in high dimensions, which may reflect the cost of having only access to summary level data from the training data set. This analysis is based on novel results in random matrix theory for block-diagonal covariance matrix. We numerically evaluate our results using extensive simulations and real data analysis in the UK Biobank.

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来源期刊
Annals of Statistics
Annals of Statistics 数学-统计学与概率论
CiteScore
9.30
自引率
8.90%
发文量
119
审稿时长
6-12 weeks
期刊介绍: The Annals of Statistics aim to publish research papers of highest quality reflecting the many facets of contemporary statistics. Primary emphasis is placed on importance and originality, not on formalism. The journal aims to cover all areas of statistics, especially mathematical statistics and applied & interdisciplinary statistics. Of course many of the best papers will touch on more than one of these general areas, because the discipline of statistics has deep roots in mathematics, and in substantive scientific fields.
期刊最新文献
ON BLOCKWISE AND REFERENCE PANEL-BASED ESTIMATORS FOR GENETIC DATA PREDICTION IN HIGH DIMENSIONS. RANK-BASED INDICES FOR TESTING INDEPENDENCE BETWEEN TWO HIGH-DIMENSIONAL VECTORS. Single index Fréchet regression Graphical models for nonstationary time series On lower bounds for the bias-variance trade-off
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