Department of Electrical and Computer Engineering, University of North Carolina at Charlotte, Charlotte, NC, United States.
Department of Surgical Ophthalmology, Atrium-Health Wake Forest Baptist, Winston-Salem, NC, United States.
Exp Biol Med (Maywood). 2024 Oct 23;249:10333. doi: 10.3389/ebm.2024.10333. eCollection 2024.
This study explores the feasibility of quantitative Optical Coherence Tomography Angiography (OCTA) features translated from OCT using generative machine learning (ML) for characterizing vascular changes in retina. A generative adversarial network framework was employed alongside a 2D vascular segmentation and a 2D OCTA image translation model, trained on the OCT-500 public dataset and validated with data from the University of Illinois at Chicago (UIC) retina clinic. Datasets are categorized by scanning range (Field of view) and disease status. Validation involved quality and quantitative metrics, comparing translated OCTA (TR-OCTA) with ground truth OCTAs (GT-OCTA) to assess the feasibility for objective disease diagnosis. In our study, TR-OCTAs showed high image quality in both 3 and 6 mm datasets (high-resolution and contrast quality, moderate structural similarity compared to GT-OCTAs). Vascular features like tortuosity and vessel perimeter index exhibits more consistent trends compared to density features which are affected by local vascular distortions. For the validation dataset (UIC), the metrics show similar trend with a slightly decreased performance since the model training was blind on UIC data, to evaluate inference performance. Overall, this study presents a promising solution to the limitations of OCTA adoption in clinical practice by using vascular features from TR-OCTA for disease detection. By making detailed vascular imaging more widely accessible and reducing reliance on expensive OCTA equipment, this research has the potential to significantly enhance the diagnostic process for retinal diseases.
本研究探讨了使用生成式机器学习 (ML) 将来自 OCT 的定量光学相干断层扫描血管造影 (OCTA) 特征转换为简体中文,以对视网膜血管变化进行特征描述的可行性。该研究采用生成对抗网络框架,结合 2D 血管分割和 2D OCTA 图像转换模型,在 OCT-500 公共数据集上进行训练,并在芝加哥伊利诺伊大学 (UIC) 眼科诊所的数据上进行验证。数据集按扫描范围 (视野) 和疾病状态进行分类。验证包括质量和定量指标,将翻译后的 OCTA (TR-OCTA) 与真实的 OCTA (GT-OCTA) 进行比较,以评估用于客观疾病诊断的可行性。在我们的研究中,TR-OCTA 在 3mm 和 6mm 数据集 (高分辨率和对比度质量,与 GT-OCTA 相比结构相似度适中) 中均显示出较高的图像质量。与密度特征相比,血管特征如迂曲度和血管周长指数表现出更一致的趋势,而密度特征受局部血管扭曲的影响。对于验证数据集 (UIC),由于模型在 UIC 数据上是盲训练的,因此评估推断性能,指标显示出相似的趋势,但性能略有下降。总的来说,本研究通过使用 TR-OCTA 的血管特征进行疾病检测,为 OCTA 在临床实践中的应用局限性提供了一种有前途的解决方案。通过使详细的血管成像更广泛地普及,并减少对昂贵的 OCTA 设备的依赖,这项研究有可能显著增强视网膜疾病的诊断过程。