Cataract is one of the leading causes of reversible visual impairment and blindness globally. Over the years, researchers have achieved significant progress in developing state-of-the-art artificial intelligence techniques for automatic cataract classification and grading, helping clinicians prevent and treat cataract in time. This paper provides a comprehensive survey of recent advances in machine learning for cataract classification and grading based on ophthalmic images. We summarize existing literature from two research directions: conventional machine learning techniques and deep learning techniques. This paper also provides insights into existing works of both merits and limitations. In addition, we discuss several challenges of automatic cataract classification and grading based on machine learning techniques and present possible solutions to these challenges for future research.
翻译:白内障是全球可逆转视力损伤和失明的主要原因之一,多年来,研究人员在开发先进的人工智能技术以自动白内障分类和分级方面取得了重大进展,帮助临床医生及时预防和治疗白内障,本文件全面调查了最近在根据眼科图像进行白内障分类和分级的机器学习方面取得的最新进展,我们总结了两个研究方向的现有文献:传统机器学习技术和深层学习技术,本文件还介绍了现有关于优点和局限性的著作。此外,我们还讨论了基于机器学习技术的自动白内障分类和分级的若干挑战,并为未来研究提出了应对这些挑战的可能解决办法。