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在使用视网膜双折射扫描的儿科视力筛查仪中,通过人工神经网络检测中心注视。

Detecting central fixation by means of artificial neural networks in a pediatric vision screener using retinal birefringence scanning.

作者信息

Gramatikov Boris I

机构信息

Laboratory of Ophthalmic Instrument Development, The Krieger Children's Eye Center at the Wilmer Institute, Wilmer Eye Institute, 233, The Johns Hopkins University School of Medicine, 600 N. Wolfe Street, Baltimore, MD, 21287-9028, USA.

出版信息

Biomed Eng Online. 2017 Apr 27;16(1):52. doi: 10.1186/s12938-017-0339-6.

Abstract

BACKGROUND

Reliable detection of central fixation and eye alignment is essential in the diagnosis of amblyopia ("lazy eye"), which can lead to blindness. Our lab has developed and reported earlier a pediatric vision screener that performs scanning of the retina around the fovea and analyzes changes in the polarization state of light as the scan progresses. Depending on the direction of gaze and the instrument design, the screener produces several signal frequencies that can be utilized in the detection of central fixation. The objective of this study was to compare artificial neural networks with classical statistical methods, with respect to their ability to detect central fixation reliably.

METHODS

A classical feedforward, pattern recognition, two-layer neural network architecture was used, consisting of one hidden layer and one output layer. The network has four inputs, representing normalized spectral powers at four signal frequencies generated during retinal birefringence scanning. The hidden layer contains four neurons. The output suggests presence or absence of central fixation. Backpropagation was used to train the network, using the gradient descent algorithm and the cross-entropy error as the performance function. The network was trained, validated and tested on a set of controlled calibration data obtained from 600 measurements from ten eyes in a previous study, and was additionally tested on a clinical set of 78 eyes, independently diagnosed by an ophthalmologist.

RESULTS

In the first part of this study, a neural network was designed around the calibration set. With a proper architecture and training, the network provided performance that was comparable to classical statistical methods, allowing perfect separation between the central and paracentral fixation data, with both the sensitivity and the specificity of the instrument being 100%. In the second part of the study, the neural network was applied to the clinical data. It allowed reliable separation between normal subjects and affected subjects, its accuracy again matching that of the statistical methods.

CONCLUSION

With a proper choice of a neural network architecture and a good, uncontaminated training data set, the artificial neural network can be an efficient classification tool for detecting central fixation based on retinal birefringence scanning.

摘要

背景

可靠地检测中心注视和眼位对齐对于弱视(“懒眼症”)的诊断至关重要,弱视可导致失明。我们实验室早些时候开发并报告了一种儿科视力筛查仪,该仪器可对中央凹周围的视网膜进行扫描,并在扫描过程中分析光的偏振态变化。根据注视方向和仪器设计,该筛查仪会产生多个信号频率,可用于检测中心注视。本研究的目的是比较人工神经网络和经典统计方法在可靠检测中心注视方面的能力。

方法

使用了一种经典的前馈、模式识别、两层神经网络架构由一个隐藏层和一个输出层组成。该网络有四个输入,代表视网膜双折射扫描过程中产生的四个信号频率处的归一化光谱功率。隐藏层包含四个神经元。输出表明是否存在中心注视。使用反向传播算法,以梯度下降算法和交叉熵误差作为性能函数来训练网络。该网络在一组从先前研究中十只眼睛的600次测量获得的受控校准数据上进行训练、验证和测试,并另外在一组由眼科医生独立诊断的78只眼睛的临床数据上进行测试。

结果

在本研究的第一部分,围绕校准集设计了一个神经网络。通过适当的架构和训练,该网络提供的性能与经典统计方法相当,能够完美区分中心注视和旁中心注视数据,仪器的灵敏度和特异性均为100%。在研究的第二部分,将神经网络应用于临床数据。它能够可靠地区分正常受试者和受影响受试者,其准确性再次与统计方法相匹配。

结论

通过适当选择神经网络架构和良好、未受污染的训练数据集,人工神经网络可以成为基于视网膜双折射扫描检测中心注视的有效分类工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1c5e/5408446/2a33221e114f/12938_2017_339_Fig1_HTML.jpg

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