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Topography-based screening for previous laser correction of hyperopia

机译:基于地形的筛查用于以前的远视眼激光矫正

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摘要

A screening tool based on corneal topography, for the detection of previous hyperopic laser correction is described. A total of 312 topographies were randomly selected: 251 from unoperated corneas and 61 from corneas with previous LASIK to correct hyperopia. All topographies were performed using an Orbscan II unit. LASIK surgeries were performed using a Technolas 217C excimer laser and a Hansatome microkeratome. The algorithms use two criteria: DE and DC. DE is the sum of differences between the cornea elevation and its "best-fit-sphere" for a central region minus the same sum for a mid-periphery region of the cornea. DC is the difference between the mean curvatures in each region. To classify between operated and unoperated corneas, we used the support vector machine (SVM) learning algorithm. Each criterion allows useful classification of the topographic data but curvature-based detection is more accurate with 2.4% false positive and 3.3% false negative.
机译:描述了一种基于角膜地形图的筛查工具,用于检测先前的远视激光矫正。总共随机选择了312个地形图:未手术的角膜中的251个和先前使用LASIK矫正远视的角膜中的61个。所有地形均使用Orbscan II单元进行。使用Technolas 217C准分子激光和Hansatome微型角膜刀进行LASIK手术。该算法使用两个标准:DE和DC。 DE是中心区域的角膜高度与其“最佳适应球”之间的差之和,减去角膜中部周围区域的差之和。 DC是每个区域中的平均曲率之差。为了对手术角膜和非手术角膜进行分类,我们使用了支持向量机(SVM)学习算法。每个标准都可以对地形数据进行有用的分类,但是基于曲率的检测具有2.4%的假阳性和3.3%的假阴性更为准确。

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