Valentim Carolina C S, Wu Anna K, Yu Sophia, Manivannan Niranchana, Zhang Qinqin, Cao Jessica, Song Weilin, Wang Victoria, Kang Hannah, Kalur Aneesha, Iyer Amogh I, Conti Thais, Singh Rishi P, Talcott Katherine E
Center for Ophthalmic Bioinformatics, Cole Eye Institute, Cleveland Clinic Foundation, 9500 Euclid Ave. i32, Cleveland, OH, USA.
Case Western Reserve University School of Medicine, Cleveland, OH, USA.
Int J Retina Vitreous. 2024 Jan 23;10(1):9. doi: 10.1186/s40942-024-00526-8.
Automated identification of spectral domain optical coherence tomography (SD-OCT) features can improve retina clinic workflow efficiency as they are able to detect pathologic findings. The purpose of this study was to test a deep learning (DL)-based algorithm for the identification of Idiopathic Full Thickness Macular Hole (IFTMH) features and stages of severity in SD-OCT B-scans.
In this cross-sectional study, subjects solely diagnosed with either IFTMH or Posterior Vitreous Detachment (PVD) were identified excluding secondary causes of macular holes, any concurrent maculopathies, or incomplete records. SD-OCT scans (512 × 128) from all subjects were acquired with CIRRUS HD-OCT (ZEISS, Dublin, CA) and reviewed for quality. In order to establish a ground truth classification, each SD-OCT B-scan was labeled by two trained graders and adjudicated by a retina specialist when applicable. Two test sets were built based on different gold-standard classification methods. The sensitivity, specificity and accuracy of the algorithm to identify IFTMH features in SD-OCT B-scans were determined. Spearman's correlation was run to examine if the algorithm's probability score was associated with the severity stages of IFTMH.
Six hundred and one SD-OCT cube scans from 601 subjects (299 with IFTMH and 302 with PVD) were used. A total of 76,928 individual SD-OCT B-scans were labeled gradable by the algorithm and yielded an accuracy of 88.5% (test set 1, 33,024 B-scans) and 91.4% (test set 2, 43,904 B-scans) in identifying SD-OCT features of IFTMHs. A Spearman's correlation coefficient of 0.15 was achieved between the algorithm's probability score and the stages of the 299 (47 [15.7%] stage 2, 56 [18.7%] stage 3 and 196 [65.6%] stage 4) IFTMHs cubes studied.
The DL-based algorithm was able to accurately detect IFTMHs features on individual SD-OCT B-scans in both test sets. However, there was a low correlation between the algorithm's probability score and IFTMH severity stages. The algorithm may serve as a clinical decision support tool that assists with the identification of IFTMHs. Further training is necessary for the algorithm to identify stages of IFTMHs.
光谱域光学相干断层扫描(SD - OCT)特征的自动识别能够检测出病理结果,从而提高视网膜诊所的工作流程效率。本研究的目的是测试一种基于深度学习(DL)的算法,用于识别特发性全层黄斑裂孔(IFTMH)的特征以及SD - OCT B扫描中的严重程度阶段。
在这项横断面研究中,排除黄斑裂孔的继发原因、任何并发的黄斑病变或不完整记录后,确定仅诊断为IFTMH或玻璃体后脱离(PVD)的受试者。使用CIRRUS HD - OCT(蔡司,加利福尼亚州都柏林)采集所有受试者的SD - OCT扫描图像(512×128),并检查图像质量。为了建立真实分类,每个SD - OCT B扫描图像由两名经过培训的分级人员进行标记,并在适用时由视网膜专家进行裁决。基于不同的金标准分类方法构建了两个测试集。确定该算法在SD - OCT B扫描中识别IFTMH特征的敏感性、特异性和准确性。进行Spearman相关性分析,以检查该算法的概率得分是否与IFTMH的严重程度阶段相关。
使用了来自601名受试者的601次SD - OCT立方体扫描图像(299例IFTMH患者和302例PVD患者)。该算法总共标记了76,928个可分级的个体SD - OCT B扫描图像,在识别IFTMH的SD - OCT特征方面,测试集1(33,024次B扫描)的准确率为88.5%,测试集2(43,904次B扫描)的准确率为91.4%。在研究的299个IFTMH立方体(47个[15.7%]为2期,56个[18.7%]为3期,196个[65.6%]为4期)中,该算法的概率得分与阶段之间的Spearman相关系数为0.15。
基于深度学习的算法能够在两个测试集中准确检测个体SD - OCT B扫描图像上的IFTMH特征。然而,该算法的概率得分与IFTMH严重程度阶段之间的相关性较低。该算法可作为一种临床决策支持工具,协助识别IFTMH。该算法要识别IFTMH的阶段还需要进一步训练。