1)北京信息科技大学仪器科学与光电工程学院,光学成像与医学仪器实验室,北京 102206;2)清华大学生物医学工程学院,北京 100084
国家重点研发计划(2022YFC3502300, 2022YFC3502301) 和北 京市属高校基本科研业务费(bistu71E2510931) 资助项目。
1)Laboratory of Optical Imaging and Medical Instruments, School of Instrumentation Science and Opto-electronics Engineering, Beijing Information Science and Technology University, Beijing 102206, China;2)School of Biomedical Engineering, Tsinghua University, Beijing 100084, China
This work was supported by grants from the National Key Research and Development Program of China (2022YFC3502300, 2022YFC3502301) and the Fundamental Research Funds for the Beijing Municipal Universities (bistu71E2510931).
目的 在中医理论中,目为“五脏六腑之精气”所注,巩膜(即白睛)表面的血管形态与色泽变化是判断人体气血盛衰及脏腑病变的重要依据。然而,传统目诊依赖医者主观经验,且现有的血管分割算法在面对巩膜图像特有的强反光干扰、微血管对比度低以及复杂纹理等方面时常出现误检与血管断裂现象。对此,本研究提出了一种融合Frangi-Sato双滤波器自适应增强与像素级反光检测的巩膜血管分割方法。方法 首先,利用Frangi与Sato滤波器的互补特性,通过多尺度加权融合策略,在增强主干血管连续性的同时提升末梢血管的检测灵敏度;其次,设计了基于多特征协同的像素级反光检测模块,利用信息熵、梯度及亮度统计特征剔除高光伪影;最后,提出基于核心保护的双级自适应阈值策略,在去噪的同时保持血管拓扑结构的完整性。结果 在临床采集数据集与公开数据集上的实验结果表明,所提方法在Dice系数、灵敏度及血管拓扑完整性等关键指标上均优于传统的对比方法及经典深度学习模型,特别是在强反光场景下表现出良好的鲁棒性。结论 本研究实现了巩膜血管的高完整性自动分割,为中医目诊的数字化与智能化提供了可能的技术支撑。
Objective In traditional Chinese medicine (TCM), the foundational doctrine that the eyes reflect the essence of the internal viscera establishes ocular observation as a cornerstone of diagnostic practice. Specifically, the morphological characteristics and coloration variations of the scleral microvasculature serve as critical clinical indicators for assessing the dynamic balance of Qi and Blood, as well as the pathological status of internal organs. Historically, however, TCM eye diagnosis has relied predominantly on the subjective clinical experience and visual acuity of individual practitioners, leading to inherent challenges in standardization and reproducibility. While automated computer-aided diagnostic systems offer a promising solution, existing vessel segmentation algorithms encounter significant domain-specific bottlenecks when applied to scleral imagery. These challenges primarily stem from the highly reflective and moist nature of the ocular surface, which generates severe reflective interference. Furthermore, the inherent low contrast of fine capillary networks against complex background textures, compounded by non-uniform illumination, frequently results in high false-positive rates, misdetections, and severe vessel fragmentation. To address these critical limitations and advance the objective quantification of TCM diagnostics, this paper proposes a novel, highly robust sclera vessel segmentation framework that innovatively integrates Frangi-Sato dual-filter adaptive enhancement with pixel-level reflection detection.Methods The proposed methodology systematically addresses the segmentation pipeline through three synergistic stages. First, to overcome the structural limitations of single-filter approaches, a multi-scale weighted fusion strategy is meticulously designed to harness the complementary extraction capabilities of both Frangi and Sato filters. This adaptive enhancement optimally balances the preservation of main vessel trunk continuity with the heightened sensitivity required for delineating delicate, low-contrast peripheral capillaries. Second, to tackle the persistent issue of reflective highlights, a sophisticated multi-feature synergistic reflection detection module is introduced. By jointly analyzing local information entropy, gradient field variations, and intensity statistical distributions, this module achieves precise, pixel-level identification and elimination of reflective artifacts without compromising the underlying vascular structures. Finally, a dual-level adaptive thresholding strategy, featuring an innovative “core protection” mechanism, is implemented. This critical step effectively suppresses complex background noise while rigorously preserving the structural and topological integrity of the intricate vessel network, preventing the structural breaks often seen in conventional binarization methods.Results The efficacy of the proposed framework was rigorously evaluated using both self-constructed clinical datasets specifically acquired for TCM research and standardized public datasets. Extensive experimental results demonstrate that the proposed method consistently outperforms state-of-the-art traditional approaches and contemporary deep learning models. Specifically, the proposed method achieves a Dice similarity coefficient of approximately 0.71 on the private clinical dataset, and secures the best performance across the majority of quantitative metrics on both datasets. Notably, the framework exhibits exceptional robustness and generalization capabilities in highly challenging scenarios characterized by intense reflective interference, low signal-to-noise ratios, and cross-domain image variations.Conclusion This study successfully realizes the high-integrity, automated segmentation of scleral vessel networks under complex clinical imaging conditions. By overcoming the fundamental algorithmic challenges of reflection interference and micro-vessel loss, the proposed methodology provides potential support for the digitization, objective standardization, and intelligent advancement of modern TCM eye diagnosis systems.
范明轩,马宗庆,高楚翔,石艺璇,张滋航,贾哲轩,樊凡,黄国亮,朱疆.研究报告: 基于融合滤波与反光抑制的巩膜血管分割算法研究[J].生物化学与生物物理进展,2026,53(5):1195-1206 FAN Ming-Xuan, MA Zong-Qing, GAO Chu-Xiang, SHI Yi-Xuan, ZHANG Zi-Hang, JIA Zhe-Xuan, FAN Fan, HUANG Guo-Liang, ZHU Jiang.Research: Sclera Vessel Segmentation Based on Fusion Filtering and Reflection Suppression[J]. Progress in Biochemistry and Biophysics,2026,53(5):1195-1206
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