Lang Andrew, Carass Aaron, Al-Louzi Omar, Bhargava Pavan, Solomon Sharon D, Calabresi Peter A, Prince Jerry L
Department of Electrical and Computer Engineering, The Johns Hopkins University.
Department of Neurology, The Johns Hopkins University School of Medicine.
Proc SPIE Int Soc Opt Eng. 2016 Feb 27;9784. doi: 10.1117/12.2217157. Epub 2016 Mar 21.
Optical coherence tomography (OCT) has become an important modality for examination of the eye. To measure layer thicknesses in the retina, automated segmentation algorithms are often used, producing accurate and reliable measurements. However, subtle changes over time are difficult to detect since the magnitude of the change can be very small. Thus, tracking disease progression over short periods of time is difficult. Additionally, unstable eye position and motion alter the consistency of these measurements, even in healthy eyes. Thus, both registration and motion correction are important for processing longitudinal data of a specific patient. In this work, we propose a method to jointly do registration and motion correction. Given two scans of the same patient, we initially extract blood vessel points from a fundus projection image generated on the OCT data and estimate point correspondences. Due to saccadic eye movements during the scan, motion is often very abrupt, producing a sparse set of large displacements between successive B-scan images. Thus, we use lasso regression to estimate the movement of each image. By iterating between this regression and a rigid point-based registration, we are able to simultaneously align and correct the data. With longitudinal data from 39 healthy control subjects, our method improves the registration accuracy by 50% compared to simple alignment to the fovea and 22% when using point-based registration only. We also show improved consistency of repeated total retina thickness measurements.
光学相干断层扫描(OCT)已成为眼部检查的一种重要方式。为了测量视网膜各层的厚度,通常会使用自动分割算法,从而得出准确可靠的测量结果。然而,由于变化幅度可能非常小,随时间的细微变化很难被检测到。因此,在短时间内追踪疾病进展很困难。此外,即使是健康的眼睛,不稳定的眼球位置和运动也会改变这些测量的一致性。所以,配准和运动校正对于处理特定患者的纵向数据都很重要。在这项工作中,我们提出了一种联合进行配准和运动校正的方法。给定同一患者的两次扫描,我们首先从基于OCT数据生成的眼底投影图像中提取血管点,并估计点对应关系。由于扫描过程中的眼球扫视运动,运动通常非常突然,在连续的B扫描图像之间产生一组稀疏的大位移。因此,我们使用套索回归来估计每个图像的运动。通过在这种回归和基于刚性点的配准之间进行迭代,我们能够同时对齐和校正数据。对于39名健康对照受试者的纵向数据,我们的方法与仅简单对齐到中央凹相比,配准精度提高了50%,与仅使用基于点的配准相比提高了22%。我们还展示了重复测量整个视网膜厚度时一致性的提高。