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使用表观遗传衰老预测青少年肺功能:一种机器学习方法。

Prediction of Lung Function in Adolescence Using Epigenetic Aging: A Machine Learning Approach.

作者信息

Arefeen Md Adnan, Nimi Sumaiya Tabassum, Rahman M Sohel, Arshad S Hasan, Holloway John W, Rezwan Faisal I

机构信息

Department of Computer Science Electrical Engineering, University of Missouri-Kansas City, Kansas City, MO 64110, USA.

Department of Computer Science and Engineering, Bangladesh University of Engineering and Technology, Dhaka 1205, Bangladesh.

出版信息

Methods Protoc. 2020 Nov 9;3(4):77. doi: 10.3390/mps3040077.

Abstract

Epigenetic aging has been found to be associated with a number of phenotypes and diseases. A few studies have investigated its effect on lung function in relatively older people. However, this effect has not been explored in the younger population. This study examines whether lung function in adolescence can be predicted with epigenetic age accelerations (AAs) using machine learning techniques. DNA methylation based AAs were estimated in 326 matched samples at two time points (at 10 years and 18 years) from the Isle of Wight Birth Cohort. Five machine learning regression models (linear, lasso, ridge, elastic net, and Bayesian ridge) were used to predict FEV (forced expiratory volume in one second) and FVC (forced vital capacity) at 18 years from feature selected predictor variables (based on mutual information) and AA changes between the two time points. The best models were ridge regression (R = 75.21% ± 7.42%; RMSE = 0.3768 ± 0.0653) and elastic net regression (R = 75.38% ± 6.98%; RMSE = 0.445 ± 0.069) for FEV and FVC, respectively. This study suggests that the application of machine learning in conjunction with tracking changes in AA over the life span can be beneficial to assess the lung health in adolescence.

摘要

表观遗传衰老已被发现与多种表型和疾病相关。一些研究调查了其对相对年长者肺功能的影响。然而,在较年轻人群中尚未探讨这种影响。本研究使用机器学习技术检验是否可以通过表观遗传年龄加速(AA)来预测青少年的肺功能。在怀特岛出生队列的326个匹配样本中,于两个时间点(10岁和18岁)估计了基于DNA甲基化的AA。使用五种机器学习回归模型(线性、套索、岭回归、弹性网络和贝叶斯岭回归),根据所选特征预测变量(基于互信息)和两个时间点之间的AA变化,来预测18岁时的一秒用力呼气量(FEV)和用力肺活量(FVC)。对于FEV和FVC,最佳模型分别是岭回归(R = 75.21% ± 7.42%;RMSE = 0.3768 ± 0.0653)和弹性网络回归(R = 75.38% ± 6.98%;RMSE = 0.445 ± 0.069)。本研究表明,将机器学习与追踪生命过程中AA的变化相结合,可能有助于评估青少年的肺健康状况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2396/7712054/de15be1fdf12/mps-03-00077-g001.jpg

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