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将眼科学与基因组学相结合可揭示用于动脉动脉瘤预防和个性化预测的影像生物标志物。

Integrating oculomics with genomics reveals imaging biomarkers for preventive and personalized prediction of arterial aneurysms.

作者信息

Huang Yu, Li Cong, Shi Danli, Wang Huan, Shang Xianwen, Wang Wei, Zhang Xueli, Zhang Xiayin, Hu Yijun, Tang Shulin, Liu Shunming, Luo Songyuan, Zhao Ke, Mordi Ify R, Doney Alex S F, Yang Xiaohong, Yu Honghua, Li Xin, He Mingguang

机构信息

Guangdong Eye Institute, Department of Ophthalmology, Guangdong Provincial People's Hospital (Guangdong Academy of Medical Sciences), Southern Medical University, Guangzhou, 510080 China.

Guangdong Cardiovascular Institute, Guangdong Provincial People's Hospital (Guangdong Academy of Medical Sciences), Southern Medical University, Guangzhou, 510080 China.

出版信息

EPMA J. 2023 Feb 13;14(1):73-86. doi: 10.1007/s13167-023-00315-7. eCollection 2023 Mar.

Abstract

OBJECTIVE

Arterial aneurysms are life-threatening but usually asymptomatic before requiring hospitalization. Oculomics of retinal vascular features (RVFs) extracted from retinal fundus images can reflect systemic vascular properties and therefore were hypothesized to provide valuable information on detecting the risk of aneurysms. By integrating oculomics with genomics, this study aimed to (i) identify predictive RVFs as imaging biomarkers for aneurysms and (ii) evaluate the value of these RVFs in supporting early detection of aneurysms in the context of predictive, preventive and personalized medicine (PPPM).

METHODS

This study involved 51,597 UK Biobank participants who had retinal images available to extract oculomics of RVFs. Phenome-wide association analyses (PheWASs) were conducted to identify RVFs associated with the genetic risks of the main types of aneurysms, including abdominal aortic aneurysm (AAA), thoracic aneurysm (TAA), intracranial aneurysm (ICA) and Marfan syndrome (MFS). An aneurysm-RVF model was then developed to predict future aneurysms. The performance of the model was assessed in both derivation and validation cohorts and was compared with other models employing clinical risk factors. An RVF risk score was derived from our aneurysm-RVF model to identify patients with an increased risk of aneurysms.

RESULTS

PheWAS identified a total of 32 RVFs that were significantly associated with the genetic risks of aneurysms. Of these, the number of vessels in the optic disc ('ntreeA') was associated with both AAA ( = -0.36, = 6.75e-10) and ICA ( = -0.11, = 5.51e-06). In addition, the mean angles between each artery branch ('curveangle_mean_a') were commonly associated with 4 MFS genes (: = -0.10, = 1.63e-12; : = -0.07, = 3.14e-09; : = -0.06, = 1.89e-05; : = 0.07, = 1.02e-05). The developed aneurysm-RVF model showed good discrimination ability in predicting the risks of aneurysms. In the derivation cohort, the -index of the aneurysm-RVF model was 0.809 [95% CI: 0.780-0.838], which was similar to the clinical risk model (0.806 [0.778-0.834]) but higher than the baseline model (0.739 [0.733-0.746]). Similar performance was observed in the validation cohort, with a -index of 0.798 (0.727-0.869) for the aneurysm-RVF model, 0.795 (0.718-0.871) for the clinical risk model and 0.719 (0.620-0.816) for the baseline model. An aneurysm risk score was derived from the aneurysm-RVF model for each study participant. The individuals in the upper tertile of the aneurysm risk score had a significantly higher risk of aneurysm compared to those in the lower tertile (hazard ratio = 17.8 [6.5-48.8], = 1.02e-05).

CONCLUSION

We identified a significant association between certain RVFs and the risk of aneurysms and revealed the impressive capability of using RVFs to predict the future risk of aneurysms by a PPPM approach. Our finds have great potential to support not only the predictive diagnosis of aneurysms but also a preventive and more personalized screening plan which may benefit both patients and the healthcare system.

SUPPLEMENTARY INFORMATION

The online version contains supplementary material available at 10.1007/s13167-023-00315-7.

摘要

目的

动脉动脉瘤危及生命,但在需要住院治疗之前通常没有症状。从眼底图像中提取的视网膜血管特征(RVF)的眼组学可以反映全身血管特性,因此推测其可为检测动脉瘤风险提供有价值的信息。通过将眼组学与基因组学相结合,本研究旨在:(i)识别预测性RVF作为动脉瘤的成像生物标志物;(ii)在预测、预防和个性化医学(PPPM)背景下评估这些RVF在支持动脉瘤早期检测中的价值。

方法

本研究纳入了51597名英国生物银行参与者,他们有视网膜图像可用于提取RVF的眼组学。进行全表型关联分析(PheWAS)以识别与主要类型动脉瘤的遗传风险相关的RVF,包括腹主动脉瘤(AAA)、胸主动脉瘤(TAA)、颅内动脉瘤(ICA)和马凡综合征(MFS)。然后开发了一个动脉瘤-RVF模型来预测未来的动脉瘤。在推导队列和验证队列中评估该模型的性能,并与采用临床风险因素的其他模型进行比较。从我们的动脉瘤-RVF模型中得出RVF风险评分,以识别动脉瘤风险增加的患者。

结果

PheWAS共识别出32个与动脉瘤遗传风险显著相关的RVF。其中,视盘血管数量('ntreeA')与AAA( = -0.36, = 6.75e-10)和ICA( = -0.11, = 5.51e-06)均相关。此外,每个动脉分支之间的平均角度('curveangle_mean_a')通常与4个MFS基因相关(: = -0.10, = 1.63e-12;: = -0.07, = 3.14e-09;: = -0.06, = 1.89e-05;: = 0.07, = 1.02e-05)。所开发的动脉瘤-RVF模型在预测动脉瘤风险方面显示出良好的区分能力。在推导队列中,动脉瘤-RVF模型的C指数为0.809 [95% CI:0.780-0.838],与临床风险模型(0.806 [0.778-0.834])相似,但高于基线模型(0.739 [0.733-0.746])。在验证队列中观察到类似的性能,动脉瘤-RVF模型的C指数为0.798(0.727-0.869),临床风险模型为0.795(0.718-0.871),基线模型为0.719(0.620-0.816)。为每个研究参与者从动脉瘤-RVF模型中得出动脉瘤风险评分。动脉瘤风险评分处于上三分位数的个体与下三分位数的个体相比,动脉瘤风险显著更高(风险比 = 17.8 [6.5-48.8], = 1.02e-05)。

结论

我们确定了某些RVF与动脉瘤风险之间的显著关联,并通过PPPM方法揭示了使用RVF预测动脉瘤未来风险的强大能力。我们的发现不仅在支持动脉瘤的预测诊断方面有巨大潜力,而且在制定预防性和更个性化的筛查计划方面也有潜力,这可能使患者和医疗系统都受益。

补充信息

在线版本包含可在10.1007/s13167-023-00315-7获取的补充材料。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5995/9971392/f9ab175d6587/13167_2023_315_Fig1_HTML.jpg

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