Department of Electrical and Computer Engineering, The University of Iowa, Iowa City, IA, 52242, United States.
Department of Electrical and Computer Engineering, The University of Iowa, Iowa City, IA, 52242, United States; Department of Biomedical Engineering, The University of Iowa, Iowa City, IA, 52242, United States; Department of Ophthalmology and Visual Sciences, The University of Iowa, Iowa City, IA, 52242, United States; Iowa City VA Health Care System, Iowa City, IA, 52246, United States.
Med Image Anal. 2017 Jul;39:206-217. doi: 10.1016/j.media.2017.04.007. Epub 2017 May 6.
Bruch's membrane opening-minimum rim width (BMO-MRW) is a recently proposed structural parameter which estimates the remaining nerve fiber bundles in the retina and is superior to other conventional structural parameters for diagnosing glaucoma. Measuring this structural parameter requires identification of BMO locations within spectral domain-optical coherence tomography (SD-OCT) volumes. While most automated approaches for segmentation of the BMO either segment the 2D projection of BMO points or identify BMO points in individual B-scans, in this work, we propose a machine-learning graph-based approach for true 3D segmentation of BMO from glaucomatous SD-OCT volumes. The problem is formulated as an optimization problem for finding a 3D path within the SD-OCT volume. In particular, the SD-OCT volumes are transferred to the radial domain where the closed loop BMO points in the original volume form a path within the radial volume. The estimated location of BMO points in 3D are identified by finding the projected location of BMO points using a graph-theoretic approach and mapping the projected locations onto the Bruch's membrane (BM) surface. Dynamic programming is employed in order to find the 3D BMO locations as the minimum-cost path within the volume. In order to compute the cost function needed for finding the minimum-cost path, a random forest classifier is utilized to learn a BMO model, obtained by extracting intensity features from the volumes in the training set, and computing the required 3D cost function. The proposed method is tested on 44 glaucoma patients and evaluated using manual delineations. Results show that the proposed method successfully identifies the 3D BMO locations and has significantly smaller errors compared to the existing 3D BMO identification approaches.
Bruch 膜开口-最小边缘宽度(BMO-MRW)是最近提出的一种结构参数,用于估计视网膜中剩余的神经纤维束,优于其他用于诊断青光眼的传统结构参数。测量这个结构参数需要在光谱域光学相干断层扫描(SD-OCT)体积中识别 BMO 位置。虽然大多数用于 BMO 分割的自动方法要么分割 BMO 点的 2D 投影,要么在单个 B 扫描中识别 BMO 点,但在这项工作中,我们提出了一种基于机器学习图的方法,用于从青光眼 SD-OCT 体积中真正分割 BMO。该问题被表述为在 SD-OCT 体积中找到 3D 路径的优化问题。具体来说,SD-OCT 体积被转换到径向域,原始体积中的封闭 BMO 点在径向体积中形成路径。通过使用图论方法找到 BMO 点的投影位置,并将投影位置映射到 Bruch 膜(BM)表面,来识别 3D 中 BMO 点的估计位置。为了找到体积内的 3D BMO 位置作为最低成本路径,采用动态规划。为了计算找到最低成本路径所需的成本函数,利用随机森林分类器学习 BMO 模型,该模型通过从训练集中的体积中提取强度特征,并计算所需的 3D 成本函数来获得。该方法在 44 名青光眼患者中进行了测试,并使用手动描绘进行了评估。结果表明,该方法成功地识别了 3D BMO 位置,与现有的 3D BMO 识别方法相比,误差显著更小。