Uncertainty quantification in epigenetic clocks via conformalized quantile regression.

Yanping Li, Jaclyn M Goodrich, Karen E Peterson, Peter X-K Song, Lan Luo
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Abstract

DNA methylation (DNAm) is a chemical modification of DNA that can be influenced by various factors, including age, the environment, and lifestyle. An epigenetic clock is a predictive tool that measures biological age based on DNAm levels. It can provide insights into an individual's biological age, which may differ from their chronological age. This difference, known as the epigenetic age acceleration, may reflect health status and the risk for age-related diseases. Moreover, epigenetic clocks are used in studies of aging to assess the effectiveness of anti-aging interventions and to understand the underlying mechanisms of aging and disease. Various epigenetic clocks have been developed using samples from different populations, tissues, and cell types, typically by training high-dimensional linear regression models with an elastic net penalty. While these models can predict mean biological age based on DNAm with high precision, there is a lack of uncertainty quantification which is important for interpreting the precision of age estimations and for clinical decision-making. To understand the distribution of a biological age clock beyond its mean, we propose a general pipeline for training epigenetic clocks, based on an integration of high-dimensional quantile regression and conformal prediction, to effectively reveal population heterogeneity and construct prediction intervals. Our approach produces adaptive prediction intervals not only achieving nominal coverage but also accounting for the inherent variability across individuals. By using the data collected from 728 blood samples in 11 DNAm datasets from children, we find that our quantile regression-based prediction intervals are narrower than those derived from conventional mean regression-based epigenetic clocks. This observation demonstrates an improved statistical efficiency over the existing pipeline for training epigenetic clocks. In addition, the resulting intervals have a synchronized varying pattern to age acceleration, effectively revealing cellular evolutionary heterogeneity in age patterns in different developmental stages during individual childhoods and adolescent cohort. Our findings suggest that conformalized high-dimensional quantile regression can produce valid prediction intervals and uncover underlying population heterogeneity. Although our methodology focuses on the distribution of measures of biological aging in children, it is applicable to a broader range of age groups to improve understanding of epigenetic age beyond the mean. This inference-based toolbox could provide valuable insights for future applications of epigenetic interventions for age-related diseases.

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通过保形量化回归量化表观遗传时钟的不确定性。
DNA 甲基化(DNAm)是 DNA 的一种化学修饰,会受到年龄、环境和生活方式等各种因素的影响。表观遗传时钟是一种根据 DNAm 水平测量生物年龄的预测工具。它可以帮助人们了解个人的生理年龄,而这一年龄可能与他们的实际年龄不同。这种差异被称为 "表观遗传年龄加速度",可以显示一个人的健康状况和罹患与年龄相关疾病的风险。此外,表观遗传时钟还被用于衰老研究,以评估抗衰老干预措施的有效性,并了解衰老和疾病的潜在机制。人们利用不同人群、组织和细胞类型的样本,通常通过训练具有弹性网惩罚的高维线性回归模型,开发出了各种表观遗传时钟。虽然这些模型可以高精度地预测平均生物年龄,但缺乏不确定性量化,而不确定性量化对于解释年龄估计的精度和临床决策非常重要。为了了解生物年龄钟在其平均值之外的分布,我们提出了一种训练表观遗传时钟的通用方法,该方法基于高维量子回归和保形预测的整合,可有效揭示群体异质性并构建预测区间。我们的方法能产生自适应预测区间,不仅能实现名义覆盖率,还能考虑个体间的固有变异性。通过使用从 11 个 DNAm 数据集的 728 个儿童血液样本中收集的数据,我们发现基于量子回归的预测区间比基于传统平均回归的表观遗传时钟得出的预测区间更窄。这一观察结果表明,与现有的表观遗传时钟训练管道相比,我们提高了统计效率。此外,得出的区间与年龄加速度具有同步变化的模式,有效揭示了个体童年和青春期不同发育阶段年龄模式的细胞进化异质性。我们的研究结果表明,保形高维量子回归可以产生有效的预测区间,并揭示潜在的人群异质性。虽然我们的方法侧重于儿童的衰老分布,但它适用于更广泛的人群,以提高对平均值以外的表观遗传年龄的理解。这个基于推理的工具箱可以为未来应用表观遗传干预治疗年龄相关疾病提供有价值的见解。
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