基于模拟视野数据的监督式自动动态视距测量(SAKP)——一种新的检测技术。

IF 0.8 4区 医学 Q4 OPHTHALMOLOGY
Ulrich Schiefer, Michael Wörner, Ditta Zobor
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引用次数: 0

摘要

目的:本研究的目的是开发、优化、训练和评估一种算法,该算法使用数字化周边测量模拟数据执行监督式自动动态周边测量(SAKP)。方法:最初的SAKP算法基于一项多中心研究的结果,通过半自动动力学视野测量(SKP)结合自动检测方法(日本开发的“程序K”)建立参考值。该算法评估等距线段的外角,并通过放置检查向量来测量视野的外边界(VF)来响应与期望值的偏差。专门的插值方法也用于创建单独的3D视觉山和局部“探测向量”,以优化矢量原点的偏心。该算法对五个典型类别的七个具有代表性的数字化三维VF结果进行迭代训练,并对每一步进行优化:(1)正常VF,(2)中心暗点,(3)同心VF收缩,(4)视场视网膜神经纤维层缺陷(vfd),(5)相对于垂直经络的vfd。然后将优化后的SAKP算法应用于一组新的20个不同起源和严重程度的3D VF结果。主要目标的测量与实际计算的VF之间的一致性一致,VF表示为准确性(A),即包含正确预测的面积与在0 =最差和1 =最佳之间测量的预测总面积之间的比率,以及检查持续时间(T)。结果以中位数(和四分位数范围)给出。我们还通过改变个体错误率(er)和误差幅度(EMs)验证了测试的稳健性。结果:总的代表性VFs的中位数和四分位数范围(IQR,括号内)分别为A的0.93(0.02)和T的7.0 min(5.2)。A组纵向vfd和偏视性vfd及黄斑保留效果最佳(各0.98),上楔形vfd最差(0.78);盲点移位的T时间最短(3.9 min),而具有偏视特征并保留颞月牙的黄斑保留的偏视vfd的T时间最长(12.1 min)。错误率和幅度(各为30%)仅对a和t的影响相对较低。结论:本文提出的SAKP算法在可接受的检查时间内对实际、模拟的视野数据具有较高的准确性和鲁棒性。该算法目前正在准备应用于临床条件下的实际患者检查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised Automated Kinetic Perimetry (SAKP) Using Simulated Visual Field Data - Presentation of a New Examination Technique.

Purpose: The aim of this study was to develop, optimise, train, and evaluate an algorithm for performing Supervised Automated Kinetic Perimetry (SAKP) using digitalised perimetric simulation data.

Methods: The original SAKP algorithm was based on findings from a multicentre study to establish reference values by semi-automated kinetic perimetry (SKP) combined with an automated examination method with moving stimuli ("Program K", developed in Japan). The algorithm evaluated the outer angles of isopter segments and responded to deviations from expected values by placing examination vectors to measure the outer boundaries of the visual field (VF). Specialised interpolation methods were also used to create individual 3D hills of vision and local "probing vectors" to optimise the eccentricity of the vector origins. This algorithm was trained iteratively on seven representative digitalised 3D VF results from five typical classes and optimised in each step: (1) Normal VF, (2) Central scotoma, (3) Concentric VF constriction, (4) Retinal nerve fibre layer defects in the visual field (VFDs), (5) VFDs with respect to the vertical meridian. The optimised SAKP algorithm was then applied to a new set of twenty 3D VF results of varying origin and severity. The primary targets were measured in agreement between actual calculated VF expressed as accuracy (A), that is, the ratio between the area containing correct predictions and total area of predictions measured between 0 = worst and 1 = best, and examination duration (T). The results are given as median (and interquartile range). We also verified the test's robustness by varying individual error rates (ERs) and error magnitudes (EMs).

Results: The median and interquartile range (IQR, in brackets) for the total of representative VFs were 0.93 (0.02) for A and 7.0 min (5.2 min) for T, respectively. A gave the best result for altitudinal VFDs and VFDs with hemianopic character and macular sparing (0.98 each) and worst in superior wedge-shaped VFDs (0.78); T was shortest in blind spot displacement (3.9 min) and longest in hemianopic VFDs with hemianopic character and macular sparing with preserved temporal crescent (12.1 min). Error rate and magnitude (up to 30% each) only showed a comparatively low influence on A and T.

Conclusion: The SAKP algorithm presented here achieves a comparatively high degree of accuracy and robustness for actual, simulated visual field data within acceptable examination times. This algorithm is currently being prepared for application in real patient examinations under clinical conditions.

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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
235
审稿时长
4-8 weeks
期刊介绍: -Konzentriertes Fachwissen aus Klinik und Praxis: Die entscheidenden Ergebnisse der internationalen Forschung - für Sie auf den Punkt gebracht und kritisch kommentiert, Übersichtsarbeiten zu den maßgeblichen Themen der täglichen Praxis, Top informiert - breite klinische Berichterstattung. -CME-Punkte sammeln mit dem Refresher: Effiziente, CME-zertifizierte Fortbildung, mit dem Refresher, 3 CME-Punkte pro Ausgabe - bis zu 36 CME-Punkte im Jahr!. -Aktuelle Rubriken mit echtem Nutzwert: Kurzreferate zu den wichtigsten Artikeln internationaler Zeitschriften, Schwerpunktthema in jedem Heft: Ausführliche Übersichtsarbeiten zu den wichtigsten Themen der Ophthalmologie – so behalten Sie das gesamte Fach im Blick!, Originalien mit den neuesten Entwicklungen, Übersichten zu den relevanten Themen.
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