Purpose. Age can be an important clue in uncovering the identity of persons that left biological evidence at crime scenes. With the availability of DNA methylation data, several age prediction models are developed by using statistical and machine learning methods. From epigenetic studies, it has been demonstrated that there is a close association between aging and DNA methylation. Most of the existing studies focused on healthy samples, whereas diseases may have a significant impact on human age. Therefore, in this article, an age prediction model is proposed using DNA methylation biomarkers for healthy and diseased samples. Methods. The dataset contains 454 healthy samples and 400 diseased samples from publicly available sources with age (1-89 years old). Six CpG sites are identified from this data having a high correlation with age using Pearson's correlation coefficient. In this work, the age prediction model is developed using four different machine learning techniques, namely, Multiple Linear Regression, Support Vector Regression, Gradient Boosting Regression, and Random Forest Regression. Separate models are designed for healthy and diseased data. The data are split randomly into 80:20 ratios for training and testing, respectively. Results. Among all the techniques, the model designed using Random Forest Regression shows the best performance, and Gradient Boosting Regression is the second best model. In the case of healthy samples, the model achieved a MAD of 2.51 years for training data and 4.85 for testing data. Also, for diseased samples, a MAD of 3.83 years is obtained for training and 9.53 years for testing. Conclusion. These results showed that the proposed model can predict age for healthy and diseased samples.
机构:
Yunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R ChinaYunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R China
Ma, Yi
Pan, Hao
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Yunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R ChinaYunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R China
Pan, Hao
Qian, Guochao
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Yunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R ChinaYunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R China
Qian, Guochao
Zhou, Fangrong
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Yunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R ChinaYunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R China
Zhou, Fangrong
Ma, Yutang
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Yunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R ChinaYunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R China
Ma, Yutang
Wen, Gang
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Yunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R ChinaYunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R China
Wen, Gang
Zhao, Meng
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机构:
Beijing Inst Spacecraft Syst Engn, Beijing 100094, Peoples R ChinaYunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R China
Zhao, Meng
Li, Tianyu
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Guangdong Univ Technol, Sch Comp Sci, Guangzhou 510006, Peoples R ChinaYunnan Power Grid Co Ltd, Joint Lab Power Remote Sensing Technol Electr Powe, Kunming 650217, Peoples R China
机构:
Shaanxi Energy Inst, Coal & Chem Ind Coll, Xianyang 712000, Shaanxi, Peoples R ChinaShaanxi Energy Inst, Coal & Chem Ind Coll, Xianyang 712000, Shaanxi, Peoples R China
Tian, Xiaohong
Jin, Xinyuan
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Wenzhou Univ Technol, Wenzhou 325035, Zhejiang, Peoples R ChinaShaanxi Energy Inst, Coal & Chem Ind Coll, Xianyang 712000, Shaanxi, Peoples R China
Jin, Xinyuan
He, Xinwei
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Xian AiSheng Technol Grp Co, Res & Prod Dept, Xian 710065, Shaanxi, Peoples R ChinaShaanxi Energy Inst, Coal & Chem Ind Coll, Xianyang 712000, Shaanxi, Peoples R China