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输入数据对神经网络区分正常和青光眼视野表现的影响。

Effects of input data on the performance of a neural network in distinguishing normal and glaucomatous visual fields.

作者信息

Bengtsson Boel, Bizios Dimitrios, Heijl Anders

机构信息

Department of Ophthalmology, Malmö University Hospital, Lund University, Sweden.

出版信息

Invest Ophthalmol Vis Sci. 2005 Oct;46(10):3730-6. doi: 10.1167/iovs.05-0175.

Abstract

PURPOSE

To compare the performance of neural networks for perimetric glaucoma diagnosis when using different types of data inputs: numerical threshold sensitivities, Statpac Total Deviation and Pattern Deviation, and probability scores based on Total and Pattern Deviation probability maps (Carl Zeiss Meditec, Inc., Dublin, CA).

METHODS

The results of SITA Standard visual field tests in 213 healthy subjects, 127 patients with glaucoma, 68 patients with concomitant glaucoma and cataract, and 41 patients with cataract only were included. The five different types of input data were entered into five identically designed artificial neural networks. Network thresholds were adjusted for each network. Receiver operating characteristic (ROC) curves were constructed to display the combinations of sensitivity and specificity.

RESULTS

Input data in the form of Pattern Deviation probability scores gave the best results, with an area of 0.988 under the ROC curve, and were significantly better (P < 0.001) than threshold sensitivities and numerical Total Deviations and Total Deviation probability scores. The second best result was obtained with numerical Pattern Deviations with an area of 0.980.

CONCLUSIONS

The choice of type of data input had important effects on the performance of the neural networks in glaucoma diagnosis. Refined input data, based on Pattern Deviations, resulted in higher sensitivity and specificity than did raw threshold values. Neural networks may have high potential in the production of useful clinical tools for the classification of visual field tests.

摘要

目的

比较使用不同类型数据输入时神经网络在周边性青光眼诊断中的表现,这些数据输入包括:数值阈值敏感度、Statpac总偏差和模式偏差,以及基于总偏差和模式偏差概率图的概率分数(卡尔蔡司医疗技术公司,加利福尼亚州都柏林)。

方法

纳入213名健康受试者、127名青光眼患者、68名合并青光眼和白内障的患者以及41名单纯白内障患者的SITA标准视野测试结果。将五种不同类型的输入数据输入五个设计相同的人工神经网络。对每个网络的阈值进行调整。构建受试者操作特征(ROC)曲线以显示敏感度和特异度的组合。

结果

模式偏差概率分数形式的输入数据给出了最佳结果,ROC曲线下面积为0.988,并且显著优于阈值敏感度、数值总偏差和总偏差概率分数(P<0.001)。第二好的结果是数值模式偏差,面积为0.980。

结论

数据输入类型的选择对神经网络在青光眼诊断中的表现有重要影响。基于模式偏差的精细输入数据比原始阈值具有更高的敏感度和特异度。神经网络在生产用于视野测试分类的有用临床工具方面可能具有很大潜力。

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