National Eye Institute, Bethesda, MD, USA.
Cleveland Clinic Lerner College of Medicine, Cleveland, OH, USA.
Transl Vis Sci Technol. 2022 Jul 8;11(7):19. doi: 10.1167/tvst.11.7.19.
The purpose of this paper was to develop a deep learning algorithm to detect retinal vascular leakage (leakage) in fluorescein angiography (FA) of patients with uveitis and use the trained algorithm to determine clinically notable leakage changes.
An algorithm was trained and tested to detect leakage on a set of 200 FA images (61 patients) and evaluated on a separate 50-image test set (21 patients). The ground truth was leakage segmentation by two clinicians. The Dice Similarity Coefficient (DSC) was used to measure concordance.
During training, the algorithm achieved a best average DSC of 0.572 (95% confidence interval [CI] = 0.548-0.596). The trained algorithm achieved a DSC of 0.563 (95% CI = 0.543-0.582) when tested on an additional set of 50 images. The trained algorithm was then used to detect leakage on pairs of FA images from longitudinal patient visits. Longitudinal leakage follow-up showed a >2.21% change in the visible retina area covered by leakage (as detected by the algorithm) had a sensitivity and specificity of 90% (area under the curve [AUC] = 0.95) of detecting a clinically notable change compared to the gold standard, an expert clinician's assessment.
This deep learning algorithm showed modest concordance in identifying vascular leakage compared to ground truth but was able to aid in identifying vascular FA leakage changes over time.
This is a proof-of-concept study that vascular leakage can be detected in a more standardized way and that tools can be developed to help clinicians more objectively compare vascular leakage between FAs.
本文旨在开发一种深度学习算法,以检测葡萄膜炎患者荧光素血管造影(FA)中的视网膜血管渗漏(渗漏),并利用训练好的算法来确定临床上显著的渗漏变化。
我们训练并测试了一种算法,以检测 200 张 FA 图像(61 名患者)中的渗漏,并在 50 张独立测试图像(21 名患者)上进行了评估。金标准是由两位临床医生对渗漏进行分割。使用 Dice 相似系数(DSC)来衡量一致性。
在训练过程中,算法的最佳平均 DSC 为 0.572(95%置信区间[CI]:0.548-0.596)。当在另外 50 张图像的测试集上进行测试时,训练好的算法的 DSC 为 0.563(95%CI:0.543-0.582)。然后,我们使用训练好的算法来检测纵向患者就诊时 FA 图像对中的渗漏。纵向渗漏随访显示,渗漏(由算法检测到)覆盖的可见视网膜区域变化超过 2.21%,其敏感性和特异性为 90%(曲线下面积[AUC]=0.95),与金标准(专家临床医生的评估)相比,能更好地检测到临床上显著的变化。
与金标准相比,这种深度学习算法在识别血管渗漏方面的一致性一般,但能够帮助识别随时间推移的 FA 血管渗漏变化。
汪竹