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PhotoAgeClock: deep learning algorithms for development of non-invasive visual biomarkers of aging

机译:PhotoAgeClock:深度学习算法用于开发衰老的非侵入性视觉生物标记

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摘要

Aging biomarkers are the qualitative and quantitative indicators of the aging processes of the human body. Estimation of biological age is important for assessing the physiological state of an organism. The advent of machine learning lead to the development of the many age predictors commonly referred to as the “aging clocks” varying in biological relevance, ease of use, cost, actionability, interpretability, and applications. Here we present and investigate a novel non-invasive class of visual photographic biomarkers of aging. We developed a simple and accurate predictor of chronological age using just the anonymized images of eye corners called the PhotoAgeClock. Deep neural networks were trained on 8414 anonymized high-resolution images of eye corners labeled with the correct chronological age. For people within the age range of 20 to 80 in a specific population, the model was able to achieve a mean absolute error of 2.3 years and 95% Pearson and Spearman correlation.
机译:衰老生物标志物是人体衰老过程的定性和定量指标。估计生物年龄对于评估生物体的生理状态很重要。机器学习的出现导致许多年龄预测指标的发展,这些预测指标通常在生物学相关性,易用性,成本,可操作性,可解释性和应用等方面有所变化,通常被称为“老化时钟”。在这里,我们介绍和研究衰老的视觉摄影生物标记物的一种新型的非侵入性。我们仅使用称为PhotoAgeClock的匿名眼角图像,开发了一种简单而准确的时间顺序预测器。深度神经网络是在8414张匿名的高分辨率眼角图像高分辨率图像上进行训练的,这些图像标有正确的年代年龄。对于特定人群中年龄在20到80岁之间的人,该模型能够实现2.3年的平均绝对误差以及95%的Pearson和Spearman相关性。

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