Google Research, Mountain View, United States.
Buck Institute for Research on Aging, Novato, United States.
Elife. 2023 Apr 17;12:e82364. doi: 10.7554/eLife.82364.
Biological age, distinct from an individual's chronological age, has been studied extensively through predictive aging clocks. However, these clocks have limited accuracy in short time-scales. Here we trained deep learning models on fundus images from the EyePACS dataset to predict individuals' chronological age. Our retinal aging clocking, 'eyeAge', predicted chronological age more accurately than other aging clocks (mean absolute error of 2.86 and 3.30 years on quality-filtered data from EyePACS and UK Biobank, respectively). Additionally, eyeAge was independent of blood marker-based measures of biological age, maintaining an all-cause mortality hazard ratio of 1.026 even when adjusted for phenotypic age. The individual-specific nature of eyeAge was reinforced via multiple GWAS hits in the UK Biobank cohort. The top GWAS locus was further validated via knockdown of the fly homolog, , which slowed age-related decline in vision in flies. This study demonstrates the potential utility of a retinal aging clock for studying aging and age-related diseases and quantitatively measuring aging on very short time-scales, opening avenues for quick and actionable evaluation of gero-protective therapeutics.
生物年龄与个体的实际年龄不同,通过预测性衰老时钟已经进行了广泛的研究。然而,这些时钟在短时间尺度上的准确性有限。在这里,我们利用 EyePACS 数据集的眼底图像训练深度学习模型来预测个体的实际年龄。我们的视网膜老化时钟“eyeAge”比其他老化时钟更准确地预测实际年龄(在 EyePACS 和 UK Biobank 的质量过滤数据上,平均绝对误差分别为 2.86 岁和 3.30 岁)。此外,eyeAge 与基于血液标志物的生物年龄测量值无关,即使在调整表型年龄后,全因死亡率的危险比仍为 1.026。通过在 UK Biobank 队列中进行多次全基因组关联研究(GWAS)命中,进一步证实了 eyeAge 的个体特异性。通过敲低果蝇同源物 ,进一步验证了 GWAS 的最高位点,该同源物减缓了果蝇视觉的衰老相关下降。这项研究表明,视网膜老化时钟在研究衰老和与年龄相关的疾病以及在非常短的时间尺度上定量测量衰老方面具有潜在的应用价值,为快速和可行的衰老保护治疗评估开辟了途径。