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RELIABLE CLASSIFICATION OF VISUAL FIELD DEFECTS IN AUTOMATED PERIMETRY USING CLUSTERING

机译:使用聚类对自动视野中的视场缺陷进行可靠分类

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Automated perimetry allows examination of the visual field for diagnostic purposes. Location, shape and size of defects in the visual field detected during a perimetric examination are characteristic hints for the underlying disease of the vi sual system. Thus a reliable identification of defect types is essential for the proper treatment. We present a classi fying system based on cluster analysis and Self-Organizing Maps for the automatic classification of visual field defects. The classifying system distinguishes between eight defect classes and was evaluated on over 8.800 perimetric exam inations with a mean classification success of 78%. The classification algorithm is integrated into a software pack age that can be run on common computers using minor re sources; its output can be considered as a suggestion for the physician. As the classification framework is decou pled from the perimetric hardware, it can also be used for the remote classification of perimetric examinations, e.g. in tele-medicine.
机译:自动视野检查可以检查视野以进行诊断。在视野检查过程中检测到的视野中缺陷的位置,形状和大小是视觉系统潜在疾病的特征提示。因此,正确识别缺陷类型对于正确处理至关重要。我们提出一种基于聚类分析和自组织图的分类系统,用于视野缺陷的自动分类。该分类系统区分了八个缺陷类别,并在超过8.800个视野检查检查中进行了评估,平均分类成功率为78%。分类算法已集成到可以使用少量资源在普通计算机上运行的软件包年龄中。它的输出可以被认为是对医生的建议。由于分类框架是从视野检查硬件中分离出来的,因此它也可以用于视野检查的远程分类,例如:在远程医疗中。

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