The Key Laboratory of Geriatrics, Beijing Institute of Geriatrics, Institute of Geriatric Medicine, Chinese Academy of Medical Sciences, Beijing Hospital/National Center of Gerontology of National Health Commission, Beijing, 100730, PR China.
College of Traditional Chinese Medicine, Hebei University, Baoding, 071000, PR China.
Comput Methods Programs Biomed. 2023 Oct;240:107686. doi: 10.1016/j.cmpb.2023.107686. Epub 2023 Jun 24.
Rates of aging vary markedly among individuals, and biological age serves as a more reliable predictor of current health status than does chronological age. As such, the ability to predict biological age can support appropriate and timely active interventions aimed at improving coping with the aging process. However, the aging process is highly complex and multifactorial. Therefore, it is more scientific to construct a prediction model for biological age from multiple dimensions systematically.
Physiological and biochemical parameters were evaluated to gage individual health status. Then, age-related indices were screened for inclusion in a model capable of predicting biological age. For subsequent modeling analyses, samples were divided into training and validation sets for subsequent deep learning model-based analyses (e.g. linear regression, lasso model, ridge regression, bayesian ridge regression, elasticity network, k-nearest neighbor, linear support vector machine, support vector machine, and decision tree models, and so on), with the model exhibiting the best ability to predict biological age thereby being identified.
First, we defined the individual biological age according to the individual health status. Then, after 22 candidate indices (DNA methylation, leukocyte telomere length, and specific physiological and biochemical indicators) were screened for inclusion in a model capable of predicting biological age, 14 age-related indices and gender were used to construct a model via the Bagged Trees method, which was found to be the most reliable qualitative prediction model for biological age (accuracy=75.6%, AUC=0.84) by comparing 30 different classification algorithm models. The most reliable quantitative predictive model for biological age was found to be the model developed using the Rational Quadratic method (R=0.85, RMSE=8.731 years) by comparing 24 regression algorithm models.
Both qualitative model and quantitative model of biological age were successfully constructed from a multi-dimensional and systematic perspective. The predictive performance of our models was similar in both smaller and larger datasets, making it well-suited to predicting a given individual's biological age.
个体的衰老速度差异显著,生物年龄比实际年龄更能可靠地预测当前健康状况。因此,预测生物年龄的能力可以支持适当和及时的积极干预,以改善应对衰老过程的能力。然而,衰老过程非常复杂,涉及多个因素。因此,从多个维度系统地构建生物年龄预测模型更为科学。
评估生理和生化参数以评估个体健康状况。然后,筛选与年龄相关的指标纳入能够预测生物年龄的模型中。对于后续建模分析,将样本分为训练集和验证集,然后进行基于深度学习模型的分析(例如线性回归、套索模型、岭回归、贝叶斯岭回归、弹性网络、k-最近邻、线性支持向量机、支持向量机和决策树模型等),从而确定预测生物年龄能力最佳的模型。
首先,我们根据个体健康状况定义个体的生物年龄。然后,在筛选出 22 个候选指标(DNA 甲基化、白细胞端粒长度和特定的生理生化指标)纳入预测生物年龄的模型后,使用 14 个与年龄相关的指标和性别,通过 Bagged Trees 方法构建模型,通过比较 30 种不同的分类算法模型,发现该模型是预测生物年龄最可靠的定性预测模型(准确率=75.6%,AUC=0.84)。通过比较 24 种回归算法模型,发现预测生物年龄最可靠的定量预测模型是使用理性二次法开发的模型(R=0.85,RMSE=8.731 年)。
从多维和系统的角度成功构建了生物年龄的定性和定量模型。我们的模型在较小和较大数据集上的预测性能相似,因此非常适合预测给定个体的生物年龄。