Advancing systemic disease diagnosis through ophthalmic image-based artificial intelligence

Hanpei Miao, Zixing Zou, Jie Xu, Yuanxu Gao
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Abstract

The eye serves as a unique window into systemic health, offering clinicians a valuable opportunity for early detection and targeted treatment. Against this backdrop, advancements in artificial intelligence (AI) and ophthalmic imaging are converging to pave the way for more precise and predictive diagnostics. This review aims to elucidate the transformative role of AI in utilizing ophthalmic imaging for the detection and prediction of systemic diseases. We begin by introducing the advantages of the eye as a valuable tool for detecting systemic diseases. We also provide an overview of various ophthalmic imaging techniques that have proven useful in predicting systemic ailments. Then, we summarize two research patterns for analyzing ocular data, followed by the introduction of current AI applications using ophthalmic images that significantly increase diagnostic precision. Despite the promise, challenges such as data heterogeneity and model interpretability persist, which are also covered in this review. We conclude by discussing future directions and the immense potential these AI-enabled approaches hold for revolutionizing healthcare. As AI technologies advance, their potential integration with ophthalmic imaging offers promising avenues for improving the diagnosis, prediction, and management of various systemic diseases, thereby contributing to the evolving landscape of integrated healthcare.

Abstract Image

通过眼科图像人工智能推进系统性疾病诊断
眼睛是了解全身健康状况的独特窗口,为临床医生提供了早期检测和针对性治疗的宝贵机会。在这一背景下,人工智能(AI)和眼科成像技术的进步正在为更精确的预测性诊断铺平道路。本综述旨在阐明人工智能在利用眼科成像检测和预测系统性疾病方面的变革性作用。我们首先介绍了眼睛作为检测系统性疾病的重要工具的优势。我们还概述了已被证明有助于预测系统性疾病的各种眼科成像技术。然后,我们总结了分析眼部数据的两种研究模式,接着介绍了目前使用眼科图像的人工智能应用,这些应用大大提高了诊断的精确度。尽管前景广阔,但数据异质性和模型可解释性等挑战依然存在,这也是本综述所涉及的内容。最后,我们将讨论未来的发展方向以及这些人工智能方法在彻底改变医疗保健方面所蕴含的巨大潜力。随着人工智能技术的进步,它们与眼科成像技术的潜在整合为改善各种系统性疾病的诊断、预测和管理提供了大有可为的途径,从而为不断发展的综合医疗保健做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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