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A novel segmentation algorithm for volumetric analysis of macular hole boundaries identified with optical coherence tomography

机译:用光学相干断层扫描技术识别黄斑裂孔边界的体积分析的新型分割算法

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Methods. A computer algorithm was developed for automated MH segmentation in spectral-domain optical coherence tomography (SD-OCT). Algorithm validation was performed by trained graders with performance characterized by absolute accuracy and intraclass correlation coefficient. A retrospective case series of 56 eyes of 55 patients with idiopathic MHs analyzed using the custom algorithm to measure MH volume, base area/diameter, top area/diameter, minimum diameter, and height-to-base diameter ratio. Five eyes were excluded due to poor signal quality (1), motion artifact (1), and failure of surgical closure (3) for a final cohort of 51 eyes. Preoperative MH measurements were correlated with clinical MH stage, baseline, and 6-month postoperative best-corrected Snellen visual acuity (BCVA). Results. The algorithm achieved 96% absolute accuracy and an intraclass correlation of 0.994 compared to trained graders. In univariate analysis, MH volume, base area, base diameter, top area, top diameter, minimum diameter, and MH height were significantly correlated to baseline BCVA (P value from 0.0003-0.011). Volume, base area, base diameter, and height-to-base diameter ratio were significantly correlated to 6-month postoperative BCVA (P value from <0.0001-0.029). In multivariate analysis, only base area (P < 0.0001) and volume (P = 0.0028) were significant predictors of 6-month postoperative BCVA. Conclusions. The computerized segmentation algorithm enables rapid volumetric analysis of MH geometry and correlates with baseline and postoperative visual function. Further research is needed to better understand the algorithm's role in prognostication and clinical management.
机译:方法。开发了一种用于在光谱域光学相干断层扫描(SD-OCT)中自动进行MH分割的计算机算法。算法验证是由训练有素的分级员执行的,其性能以绝对准确性和类内相关系数为特征。使用自定义算法分析了55例特发性MH患者的56只眼的回顾性病例系列,以测量MH体积,基部面积/直径,顶部面积/直径,最小直径以及高度与底部的直径比。由于不良信号质量(1),运动伪影(1)和手术结局失败(3)而导致五只眼被排除,最终队列为51只眼。术前MH值与临床MH分期,基线和术后6个月最佳矫正Snellen视力(BCVA)相关。结果。与训练有素的平地机相比,该算法达到96%的绝对准确度和0.994的组内相关性。在单变量分析中,MH的体积,底部面积,底部直径,顶部面积,顶部直径,最小直径和MH高度与基线BCVA显着相关(P值为0.0003-0.011)。体积,基底面积,基底直径和高度与基底直径之比与术后6个月BCVA显着相关(P值<0.0001-0.029)。在多变量分析中,只有基础面积(P <0.0001)和体积(P = 0.0028)是术后6个月BCVA的重要预测指标。结论。计算机化的分割算法可实现MH几何的快速体积分析,并与基线和术后视觉功能相关。需要进一步研究以更好地了解算法在预后和临床管理中的作用。

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