4.8 Article

Three-dimensional facial-image analysis to predict heterogeneity of the human ageing rate and the impact of lifestyle

Journal

NATURE METABOLISM
Volume 2, Issue 9, Pages 946-+

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s42255-020-00270-x

Keywords

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Funding

  1. National Natural Science Foundation of China [91749205]
  2. China Ministry of Science and Technology [2016YFE0108700]
  3. Shanghai Municipal Science and Technology Major Project [2017SHZDZX01]

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Not all individuals age at the same rate. Methods such as the 'methylation clock' are invasive, rely on expensive assays of tissue samples and infer the ageing rate by training on chronological age, which is used as a reference for prediction errors. Here, we develop models based on convoluted neural networks through training on non-invasive three-dimensional (3D) facial images of approximately 5,000 Han Chinese individuals that achieve an average difference between chronological or perceived age and predicted age of +/- 2.8 and 2.9 yr, respectively. We further profile blood transcriptomes from 280 individuals and infer the molecular regulators mediating the impact of lifestyle on the facial-ageing rate through a causal-inference model. These relationships have been deposited and visualized in the Human Blood Gene Expression-3D Facial Image (HuB-Fi) database. Overall, we find that humans age at different rates both in the blood and in the face, but do so coherently and with heterogeneity peaking at middle age. Our study provides an example of how artificial intelligence can be leveraged to determine the perceived age of humans as a marker of biological age, while no longer relying on prediction errors of chronological age, and to estimate the heterogeneity of ageing rates within a population.

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