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首页> 外文期刊>Investigative ophthalmology & visual science >Evaluation of Automated Segmentation Algorithms for Optic Nerve Head Structures in Optical Coherence Tomography Images
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Evaluation of Automated Segmentation Algorithms for Optic Nerve Head Structures in Optical Coherence Tomography Images

机译:光学相干断层扫描图像中视神经头部结构自动分割算法的评估

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Purpose : To compare the identification of optic nerve head (ONH) structures in optical coherence tomography images by observers and automated algorithms. Methods : ONH images in 24 radial scan sets by optical coherence tomography were obtained in 51 eyes of 29 glaucoma patients and suspects. Masked intraobserver and interobserver comparisons were made of marked endpoints of Bruch's membrane opening (BMO) and the anterior lamina cribrosa (LC). BMO and LC positional markings were compared between observer and automated algorithm. Repeated analysis on 20 eyes by the algorithm was compared. Regional ONH data were derived from the algorithms. Results : Intraobserver difference in BMO width was not significantly different from zero (P ≥ 0.32) and the difference in LC position was less than 1% different (P = 0.04). Interobserver were slightly larger than intraobserver differences, but interobserver BMO width difference was 0.36% (P = 0.63). Mean interobserver difference in LC position was 14.74 μm (P = 0.004), 3% of the typical anterior lamina depth (ALD). Between observer and algorithm, BMO width differed by 1.85% (P = 0.23) and mean LC position was not significantly different (3.77 μm, P = 0.77). Repeat algorithmic analysis had a mean difference in BMO area of 0.38% (P = 0.47) and mean ALD difference of 0.54 ± 0.72%. Regional ALD had greater variability in the horizontal ONH regions. Some individual outlier images were not validly marked by either observers or algorithm. Conclusions : Automated identification of ONH structures is comparable to observer markings for BMO and anterior LC position, making BMO a practical reference plane for algorithmic analysis.
机译:目的:比较观察者和自动算法在光学相干断层扫描图像中对视神经乳头(ONH)结构的识别。方法:采用光学相干断层扫描技术在29例青光眼和疑似患者的51眼中获得24幅放射状扫描的ONH图像。对观察者之间和观察者之间的掩盖比较是对布鲁赫膜开口(BMO)和前筛板(LC)的明显终点进行的。在观察者和自动算法之间比较了BMO和LC的位置标记。比较了该算法对20只眼睛的重复分析。区域ONH数据是从算法中得出的。结果:观察者内BMO宽度的差异无明显差异,为零(P≥0.32),LC位置差异小于1%(P = 0.04)。观察者间的差异略大于观察者间的差异,但观察者间的BMO宽度差异为0.36%(P = 0.63)。 LC位置之间的平均观察者间差异为14.74μm(P = 0.004),是典型前板层深度(ALD)的3%。在观察者和算法之间,BMO宽度相差1.85%(P = 0.23),平均LC位置无显着差异(3.77μm,P = 0.77)。重复算法分析的BMO区域平均差异为0.38%(P = 0.47),ALD平均差异为0.54±0.72%。区域ALD在水平ONH区域具有更大的变异性。观察者或算法均未有效标记某些个别异常图像。结论:ONH结构的自动识别与观察者对BMO和前LC位置的标记相当,使BMO成为算法分析的实用参考平面。

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