Joslin Diabetes Center, Beetham Eye Institute , Boston, MA, United States.
Department of Ophthalmology, Harvard Medical School , Boston, MA, United States.
Semin Ophthalmol. 2020 Nov 16;35(7-8):325-332. doi: 10.1080/08820538.2020.1855358. Epub 2021 Feb 4.
: Over the next 25 years, the global prevalence of diabetes is expected to grow to affect 700 million individuals. Consequently, an unprecedented number of patients will be at risk for vision loss from diabetic eye disease. This demand will almost certainly exceed the supply of eye care professionals to individually evaluate each patient on an annual basis, signaling the need for 21st century tools to assist our profession in meeting this challenge. Methods: Review of available literature on artificial intelligence (AI) as applied to diabetic retinopathy (DR) detection and prediction: The field of AI has seen exponential growth in evaluating fundus photographs for DR. AI systems employ machine learning and artificial neural networks to teach themselves how to grade DR from libraries of tens of thousands of images and may be able to predict future DR progression based on baseline fundus photographs. : AI algorithms are highly promising for the purposes of DR detection and will likely be able to reliably predict DR worsening in the future. A deeper understanding of these systems and how they interpret images is critical as they transition from the bench into the clinic.
在未来 25 年,预计全球糖尿病患病率将上升至 7 亿,由此将有大量的糖尿病患者面临致盲风险。这一需求将远超眼科医生对每位患者进行年度评估的能力,这意味着我们需要 21 世纪的工具来辅助我们的专业领域迎接这一挑战。方法:回顾人工智能(AI)在糖尿病视网膜病变(DR)检测和预测方面的现有文献:AI 领域在评估眼底照片以诊断 DR 方面取得了飞速发展。AI 系统采用机器学习和人工神经网络,通过对成千上万张图像库进行学习,从而自行判断 DR 的严重程度,并且可能能够根据基线眼底照片预测未来 DR 的进展。结论:AI 算法在 DR 检测方面很有前景,可能能够可靠地预测未来 DR 的恶化。随着 AI 系统从实验室走向临床,我们需要深入了解这些系统及其对图像的解释方式。