Xue Xiaozhong, Du Weiwei, Hu Qinghua, Miyake Masahiro, Sado Keina
Kyoto Institute of Technology, Kyoto, 606-8585, Japan.
Kyoto Institute of Technology, Kyoto, 606-8585, Japan.
Comput Med Imaging Graph. 2025 Sep;124:102613. doi: 10.1016/j.compmedimag.2025.102613. Epub 2025 Jul 31.
Optical Coherence Tomography (OCT) is a widely utilized imaging modality in clinical ophthalmology, particularly for retinal imaging. B-scan is a two-dimensional slice of the OCT volume. It enables high-resolution cross-sectional visualization of retinal layers, facilitating the analysis of retinal structure and the detection of pathological features such as fluid regions. Accurate segmentation of these fluid regions is crucial not only for determining appropriate treatment dosages but also serves as a foundation for the development of automated retinal disease diagnosis systems and visual acuity prediction models. However, the segmentation of fluid regions from OCT B-scans poses two major challenges: (1) the difficulty in delineating fine details and small fluid regions, and (2) the heterogeneity of fluid regions, which often leads to under-segmentation. This study introduces Fluid-SegNet, a novel deep learning-based segmentation framework designed to enhance the accuracy of fluid region segmentation in OCT B-scans. The proposed method is evaluated on three public datasets, UMN, AROI, and OIMHS. achieving mean Dice of 0.8725, 0.6967, and 0.8020, respectively. These results highlight the effectiveness and robustness of Fluid-SegNet in segmenting fluid regions across varied datasets and imaging conditions. Compared to existing methods, Fluid-SegNet effectively addresses the two aforementioned challenges. The source code for Fluid-SegNet is publicly available at: https://github.com/xuexiaozhong/Fluid-SegNet.
光学相干断层扫描(OCT)是临床眼科中广泛使用的成像方式,尤其用于视网膜成像。B 扫描是 OCT 容积的二维切片。它能够对视网膜层进行高分辨率的横断面可视化,有助于分析视网膜结构以及检测诸如液性区域等病理特征。准确分割这些液性区域不仅对于确定合适的治疗剂量至关重要,而且是开发自动化视网膜疾病诊断系统和视力预测模型的基础。然而,从 OCT B 扫描中分割液性区域存在两个主要挑战:(1)难以描绘精细细节和小的液性区域,以及(2)液性区域的异质性,这常常导致分割不足。本研究介绍了 Fluid-SegNet,这是一种基于深度学习的新型分割框架,旨在提高 OCT B 扫描中液性区域分割的准确性。所提出的方法在三个公共数据集UMN、AROI 和 OIMHS 上进行了评估,平均 Dice 系数分别达到 0.8725、0.6967 和 0.8020。这些结果凸显了 Fluid-SegNet 在跨不同数据集和成像条件下分割液性区域的有效性和稳健性。与现有方法相比,Fluid-SegNet 有效地解决了上述两个挑战。Fluid-SegNet 的源代码可在以下网址公开获取:https://github.com/xuexiaozhong/Fluid-SegNet。