Department of Ophthalmology and Visual Sciences, University of Michigan Kellogg Eye Center, Ann Arbor, MI, United States.
School of Engineering and Applied Science, University of Pennsylvania, Philadelphia, PA, United States.
Asia Pac J Ophthalmol (Phila). 2024 Jul-Aug;13(4):100095. doi: 10.1016/j.apjo.2024.100095. Epub 2024 Aug 28.
Artificial Intelligence (AI) is transforming healthcare, notably in ophthalmology, where its ability to interpret images and data can significantly enhance disease diagnosis and patient care. Recent developments in oculomics, the integration of ophthalmic features to develop biomarkers for systemic diseases, have demonstrated the potential for providing rapid, non-invasive methods of screening leading to enhance in early detection and improve healthcare quality, particularly in underserved areas. However, the widespread adoption of such AI-based technologies faces challenges primarily related to the trustworthiness of the system. We demonstrate the potential and considerations needed to develop trustworthy AI in oculomics through a pilot study for HbA1c assessment using an AI-based approach. We then discuss various challenges, considerations, and solutions that have been developed for powerful AI technologies in the past in healthcare and subsequently apply these considerations to the oculomics pilot study. Building upon the observations in the study we highlight the challenges and opportunities for advancing trustworthy AI in oculomics. Ultimately, oculomics presents as a powerful and emerging technology in ophthalmology and understanding how to optimize transparency prior to clinical adoption is of utmost importance.
人工智能(AI)正在改变医疗保健行业,尤其是在眼科领域,其解读图像和数据的能力可以极大地提高疾病诊断和患者护理的水平。眼科学组学的最新发展,即将眼科特征整合以开发用于系统性疾病的生物标志物,已经展示了提供快速、非侵入性筛查方法的潜力,从而提高早期检测和改善医疗质量,特别是在服务不足的地区。然而,这种基于人工智能的技术的广泛采用面临着主要与系统可信度相关的挑战。我们通过使用基于人工智能的方法评估 HbA1c 的试点研究来展示在眼科学组学中开发可信人工智能的潜力和需要考虑的问题。然后,我们讨论了过去在医疗保健领域为强大的人工智能技术开发的各种挑战、考虑因素和解决方案,并将这些考虑因素应用于眼科学组学试点研究。在研究观察的基础上,我们强调了在眼科学组学中推进可信人工智能的挑战和机遇。最终,眼科学组学在眼科领域是一项强大且新兴的技术,了解如何在临床应用之前优化透明度至关重要。