Dynamic factor analysis with dependent Gaussian processes for high-dimensional gene expression trajectories.

IF 1.4 4区 数学 Q3 BIOLOGY Biometrics Pub Date : 2024-10-03 DOI:10.1093/biomtc/ujae131
Jiachen Cai, Robert J B Goudie, Colin Starr, Brian D M Tom
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Abstract

The increasing availability of high-dimensional, longitudinal measures of gene expression can facilitate understanding of biological mechanisms, as required for precision medicine. Biological knowledge suggests that it may be best to describe complex diseases at the level of underlying pathways, which may interact with one another. We propose a Bayesian approach that allows for characterizing such correlation among different pathways through dependent Gaussian processes (DGP) and mapping the observed high-dimensional gene expression trajectories into unobserved low-dimensional pathway expression trajectories via Bayesian sparse factor analysis. Our proposal is the first attempt to relax the classical assumption of independent factors for longitudinal data and has demonstrated a superior performance in recovering the shape of pathway expression trajectories, revealing the relationships between genes and pathways, and predicting gene expressions (closer point estimates and narrower predictive intervals), as demonstrated through simulations and real data analysis. To fit the model, we propose a Monte Carlo expectation maximization (MCEM) scheme that can be implemented conveniently by combining a standard Markov Chain Monte Carlo sampler and an R package GPFDA,which returns the maximum likelihood estimates of DGP hyperparameters. The modular structure of MCEM makes it generalizable to other complex models involving the DGP model component. Our R package DGP4LCF that implements the proposed approach is available on the Comprehensive R Archive Network (CRAN).

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针对高维基因表达轨迹的依存高斯过程动态因子分析。
越来越多的高维纵向基因表达测量方法有助于了解生物机制,这是精准医疗所必需的。生物学知识表明,描述复杂疾病的最佳方法可能是在可能相互影响的潜在通路层面上进行描述。我们提出了一种贝叶斯方法,可以通过隶属高斯过程(DGP)描述不同通路之间的这种相关性,并通过贝叶斯稀疏因子分析将观察到的高维基因表达轨迹映射到未观察到的低维通路表达轨迹中。我们的建议是对纵向数据放宽独立因子经典假设的首次尝试,并通过模拟和实际数据分析,在恢复通路表达轨迹的形状、揭示基因和通路之间的关系以及预测基因表达(更接近的点估计和更窄的预测区间)方面表现出卓越的性能。为了拟合模型,我们提出了蒙特卡洛期望最大化(MCEM)方案,通过结合标准马尔可夫链蒙特卡洛采样器和 R 软件包 GPFDA(可返回 DGP 超参数的最大似然估计值),可以方便地实现该方案。MCEM 的模块化结构使其可以推广到涉及 DGP 模型组件的其他复杂模型。我们的 R 软件包 DGP4LCF 可在 R Archive Network (CRAN) 上查阅。
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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来源期刊
Biometrics
Biometrics 生物-生物学
CiteScore
2.70
自引率
5.30%
发文量
178
审稿时长
4-8 weeks
期刊介绍: The International Biometric Society is an international society promoting the development and application of statistical and mathematical theory and methods in the biosciences, including agriculture, biomedical science and public health, ecology, environmental sciences, forestry, and allied disciplines. The Society welcomes as members statisticians, mathematicians, biological scientists, and others devoted to interdisciplinary efforts in advancing the collection and interpretation of information in the biosciences. The Society sponsors the biennial International Biometric Conference, held in sites throughout the world; through its National Groups and Regions, it also Society sponsors regional and local meetings.
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