Zhu Zhuoting, Wang Yueye, Qi Ziyi, Hu Wenyi, Zhang Xiayin, Wagner Siegfried K, Wang Yujie, Ran An Ran, Ong Joshua, Waisberg Ethan, Masalkhi Mouayad, Suh Alex, Tham Yih Chung, Cheung Carol Y, Yang Xiaohong, Yu Honghua, Ge Zongyuan, Wang Wei, Sheng Bin, Liu Yun, Lee Andrew G, Denniston Alastair K, Wijngaarden Peter van, Keane Pearse A, Cheng Ching-Yu, He Mingguang, Wong Tien Yin
Centre for Eye Research Australia, Ophthalmology, University of Melbourne, Melbourne, VIC, Australia; Department of Surgery (Ophthalmology), University of Melbourne, Melbourne, VIC, Australia.
School of Optometry, The Hong Kong Polytechnic University, Kowloon, Hong Kong, China.
Prog Retin Eye Res. 2025 May;106:101350. doi: 10.1016/j.preteyeres.2025.101350. Epub 2025 Mar 4.
The eye provides novel insights into general health, as well as pathogenesis and development of systemic diseases. In the past decade, growing evidence has demonstrated that the eye's structure and function mirror multiple systemic health conditions, especially in cardiovascular diseases, neurodegenerative disorders, and kidney impairments. This has given rise to the field of oculomics-the application of ophthalmic biomarkers to understand mechanisms, detect and predict disease. The development of this field has been accelerated by three major advances: 1) the availability and widespread clinical adoption of high-resolution and non-invasive ophthalmic imaging ("hardware"); 2) the availability of large studies to interrogate associations ("big data"); 3) the development of novel analytical methods, including artificial intelligence (AI) ("software"). Oculomics offers an opportunity to enhance our understanding of the interplay between the eye and the body, while supporting development of innovative diagnostic, prognostic, and therapeutic tools. These advances have been further accelerated by developments in AI, coupled with large-scale linkage datasets linking ocular imaging data with systemic health data. Oculomics also enables the detection, screening, diagnosis, and monitoring of many systemic health conditions. Furthermore, oculomics with AI allows prediction of the risk of systemic diseases, enabling risk stratification, opening up new avenues for prevention or individualized risk prediction and prevention, facilitating personalized medicine. In this review, we summarise current concepts and evidence in the field of oculomics, highlighting the progress that has been made, remaining challenges, and the opportunities for future research.
眼睛为整体健康以及全身性疾病的发病机制和发展提供了全新的见解。在过去十年中,越来越多的证据表明,眼睛的结构和功能反映了多种全身性健康状况,尤其是在心血管疾病、神经退行性疾病和肾脏损伤方面。这催生了眼组学领域——应用眼科生物标志物来理解机制、检测和预测疾病。该领域的发展因三项重大进展而加速:1)高分辨率和非侵入性眼科成像(“硬件”)的可得性及在临床中的广泛应用;2)用于探究关联的大型研究(“大数据”)的可得性;3)包括人工智能(AI)在内的新型分析方法(“软件”)的发展。眼组学为增进我们对眼睛与身体之间相互作用的理解提供了契机,同时支持创新诊断、预后和治疗工具的开发。人工智能的发展,以及将眼部成像数据与全身性健康数据相联系的大规模关联数据集,进一步加速了这些进展。眼组学还能够检测、筛查、诊断和监测多种全身性健康状况。此外,结合人工智能的眼组学能够预测全身性疾病的风险,实现风险分层,为预防或个性化风险预测及预防开辟新途径,推动个性化医疗。在本综述中,我们总结了眼组学领域的当前概念和证据,突出已取得的进展、尚存的挑战以及未来研究的机遇。