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首页> 外文期刊>Investigative ophthalmology & visual science >Optimizing Structurea??Function Relationship by Maximizing Correspondence Between Glaucomatous Visual Fields and Mathematical Retinal Nerve Fiber Models
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Optimizing Structurea??Function Relationship by Maximizing Correspondence Between Glaucomatous Visual Fields and Mathematical Retinal Nerve Fiber Models

机译:通过最大化青光眼视野和数学上的视网膜神经纤维模型之间的对应关系来优化结构功能关系

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Purpose.: To introduce a method to optimize structural retinal nerve fiber layer (RNFL) models based on glaucomatous visual field data and to show how such an optimized model can be used to reduce noise in visual fields while probably preserving clinically important features. Methods.: Correlation coefficients between age-adjusted deviation values of pairs of visual field test locations were calculated from 103 visual fields of eyes with moderate glaucomatous damage. Distances between those test locations were defined for various parameters of a mathematical RNFL model. Then, the correspondence between the structural and functional data was defined by the spread, or variance, of the correlation coefficients for all distances. The model parameters that minimized this spread constituted the optimized model. To reduce noise in visual fields, the optimized model was used to smooth visual field data according to the RNFL's structure. The resulting fields were compared with visual fields that were smoothed based on the regular testing grid. Results.: The optimal parameters for the RNFL model reduced the variance of the correlation coefficients by 78% and were well within the range of parameters previously determined from fundus photographs. Smoothing the visual fields based on the optimized RNFL model strongly reduced noise while keeping important features. Conclusions.: Mathematic RNFL models can be optimized based on visual field data, resulting in a strong structurea??function relationship. Taking the RNFL's shape, as defined by such an optimized model, into account when smoothing visual fields results in better noise reduction while preserving important details.
机译:目的:介绍一种基于青光眼视野数据来优化结构性视网膜神经纤维层(RNFL)模型的方法,并展示如何将这种优化的模型用于减少视野中的噪声,同时又可能保留临床上的重要特征。方法:根据中度青光眼损伤的103个视野计算成对的视野测试位置对的年龄校正偏差值之间的相关系数。对于数学RNFL模型的各种参数,定义了这些测试位置之间的距离。然后,通过所有距离的相关系数的扩展或方差定义结构数据和功能数据之间的对应关系。使此分布最小的模型参数构成了优化模型。为了减少视野中的噪声,根据RNFL的结构,使用优化的模型对视野数据进行平滑处理。将生成的字段与根据常规测试网格平滑的视野进行比较。结果:RNFL模型的最佳参数使相关系数的方差降低了78%,并且处于先前从眼底照片确定的参数范围内。基于优化的RNFL模型对视场进行平滑处理,可在保持重要功能的同时大大降低噪声。结论:可以基于视野数据对数学RNFL模型进行优化,从而建立强大的结构与功能关系。在平滑视场时,考虑到由这种优化模型定义的RNFL形状,可以更好地降低噪声,同时保留重要细节。

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