计算机科学与探索 ›› 2024, Vol. 18 ›› Issue (8): 1960-1978.DOI: 10.3778/j.issn.1673-9418.2310083
汪有崧,裴峻鹏,李增辉,王伟
出版日期:
2024-08-01
发布日期:
2024-07-29
WANG Yousong, PEI Junpeng, LI Zenghui, WANG Wei
Online:
2024-08-01
Published:
2024-07-29
摘要: 视网膜眼底图像的分割结果可为糖尿病视网膜病变、青光眼和年龄相关性黄斑病等眼科疾病的诊断提供辅助。通过准确分割视网膜血管,医生能够更好地了解患者眼部状况,为诊断、治疗和评估提供有力支持。对近年来的基于深度学习的眼底血管分割论文进行回顾整理,介绍了最常用于眼底血管分割的数据集,以及预处理方式,并将近期的模型算法分为单网络模型、多网络模型以及Transformer模型几个大类。对每一类网络中所存在的各个模块文章进行了介绍分析,探讨了它们的优势以及在处理眼底血管分割任务时的局限性。这些分析有助于理解不同模块的特点和适用场景。将所检索的模型数据进行总结,通过比较不同算法模型在同一数据集上的表现,以及根据相同的评价指标获得的分数,比较各算法模型的优劣,分析分数较好算法存在优势的原因,并指出了现如今的算法所存在的缺陷,总结深度学习的方法在视网膜血管分割中面临的诸多挑战,指出了未来深度学习在眼底血管分割方面可侧重的发展方向。
汪有崧, 裴峻鹏, 李增辉, 王伟. 深度学习的视网膜血管分割研究综述[J]. 计算机科学与探索, 2024, 18(8): 1960-1978.
WANG Yousong, PEI Junpeng, LI Zenghui, WANG Wei. Review of Research on Deep Learning in Retinal Blood Vessel Segmentation[J]. Journal of Frontiers of Computer Science and Technology, 2024, 18(8): 1960-1978.
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