Suppr超能文献

使用人工神经网络的视野分析

Visual field analysis using artificial neural networks.

作者信息

Spenceley S E, Henson D B, Bull D R

机构信息

Department of Optometry and Vision Sciences, University of Wales College of Cardiff, UK.

出版信息

Ophthalmic Physiol Opt. 1994 Jul;14(3):239-48. doi: 10.1111/j.1475-1313.1994.tb00004.x.

Abstract

There have been several reports on the application of artificial neural networks (ANNs) to visual field classification. While these have demonstrated that neural networks can be used with good results they have not explored the effects that the training set can have upon network performance nor emphasized the unique value of ANNs in visual field analysis. This paper considers the problem of differentiating normal and glaucomatous visual fields and explores different training set characteristics using field data collected from a Henson CFS2000 perimeter. Training set properties including size, balance between normals and glaucomas, extent of field loss and the spatial location of glaucomatous defects are explored. A multilayer network with 132 input nodes, 20 hidden layer nodes and 2 output nodes in trained using an error backpropagation algorithm. Both sensitivity and specificity are measured during testing. The results demonstrate that large random sets are better than small random sets since sensitivity improves with size and specificity is not adversely affected. The variability in performance also reduces as training set size increases. In addition, sets that are biased towards glaucoma examples are more sensitive and less specific, while sets biased with normal examples are more specific and less sensitive than balanced sets. Thus large training sets with class balance are generally desirable for good sensitivities and specificities. The actual glaucoma examples contained in the set are also important. A training set deficient in examples has no detrimental effect on sensitivity or specificity. The spatial distribution of defects is also crucial. Spatially biased sets are unable to recognize defects that occur in locations where no previous defect has been presented while more balanced sets lead to better performance. In conclusion the 'ideal' training set should contain many examples of early defects that represent the full range of locations where these defects may occur.

摘要

关于将人工神经网络(ANNs)应用于视野分类已有多篇报道。虽然这些报道表明神经网络可以取得良好的应用效果,但它们并未探讨训练集对网络性能的影响,也未强调人工神经网络在视野分析中的独特价值。本文考虑区分正常视野和青光眼视野的问题,并使用从Henson CFS2000周边视野计收集的视野数据探索不同的训练集特征。研究了训练集的属性,包括大小、正常视野和青光眼视野之间的平衡、视野缺损的程度以及青光眼性缺损的空间位置。使用误差反向传播算法训练一个具有132个输入节点、20个隐藏层节点和2个输出节点的多层网络。在测试过程中测量敏感性和特异性。结果表明,大的随机集比小的随机集更好,因为敏感性随大小的增加而提高,且特异性不受不利影响。随着训练集大小的增加,性能的变异性也会降低。此外,偏向青光眼示例的集合更敏感但特异性较低,而偏向正常示例的集合比平衡集合更具特异性但敏感性较低。因此,为了获得良好的敏感性和特异性,通常需要具有类平衡的大训练集。集合中实际包含的青光眼示例也很重要。缺乏示例的训练集对敏感性或特异性没有不利影响。缺损的空间分布也至关重要。空间偏向的集合无法识别在以前未出现过缺损的位置出现的缺损,而更平衡的集合则能带来更好的性能。总之,“理想”的训练集应包含许多早期缺损的示例,这些示例代表了这些缺损可能出现的所有位置。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验