Login / Signup

Machine Learning Approximations to Predict Epigenetic Age Acceleration in Stroke Patients.

Isabel Fernández-PérezJoan Jiménez-BaladoUxue LazcanoEva Giralt-SteinhauerLucía Rey ÁlvarezElisa Cuadrado GodiaAna Rodríguez-CampelloAdrià Macias-GómezAntoni Suárez-PérezAnna Revert-BarberáIsabel Estragués-GázquezCarolina Soriano-TarragaJaume RoquerMaria Pilar Gracia ArnillasJordi Jiménez-Conde
Published in: International journal of molecular sciences (2023)
Age acceleration (Age-A) is a useful tool that is able to predict a broad range of health outcomes. It is necessary to determine DNA methylation levels to estimate it, and it is known that Age-A is influenced by environmental, lifestyle, and vascular risk factors (VRF). The aim of this study is to estimate the contribution of these easily measurable factors to Age-A in patients with cerebrovascular disease (CVD), using different machine learning (ML) approximations, and try to find a more accessible model able to predict Age-A. We studied a CVD cohort of 952 patients with information about VRF, lifestyle habits, and target organ damage. We estimated Age-A using Hannum's epigenetic clock, and trained six different models to predict Age-A: a conventional linear regression model, four ML models (elastic net regression (EN), K-Nearest neighbors, random forest, and support vector machine models), and one deep learning approximation (multilayer perceptron (MLP) model). The best-performing models were EN and MLP; although, the predictive capability was modest (R 2 0.358 and 0.378, respectively). In conclusion, our results support the influence of these factors on Age-A; although, they were not enough to explain most of its variability.
Keyphrases