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Superficial Punctate Keratitis Grading for Dry Eye Screening Using Deep Convolutional Neural Networks

机译:使用深卷积神经网络干眼筛选的浅表刺点角膜炎分级

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摘要

Ocular surface damage is a major characteristic of dry eye syndrome. Ocular surface damage caused from dry eye refers to that there is superficial punctate keratitis (SPK), or also called the punctate dots, on the ocular surface. In the current diagnostic methods such as the ocular surface fluorescein-staining test, ophthalmologists dye the ocular surface to visualize punctate dots and then identify as well as count them for grading. Based on the grading results, ophthalmologists conduct a further diagnosis. For an expert, it is hard to achieve consistent results. Method: This study proposed to train a deep CNN (convolutional neural network) model to automatically detect punctate dots. Then we obtain a value, called the CNN-SPK value, which represents the coverage of punctate dots. Standard fluorescein-staining images from 101 participants were collected. Results: The correlation between the estimated CNN-SPK values of the rest 81 participants and the clinical grades were significant (r = 0.85; p < 0.05). Based on this observation, we suggest a statistical approach for the final grading. Using CNN-SPK values from 81 participants, as well as the corresponding clinical grades, we find CNN-SPK thresholds between any two adjacent grades. Also, we obtain the threshold between with- and without- SPK-symptoms, leading to 0.94 in sensitivity, and 0.79 in specificity. Conclusion: Our automatic method may be used to reliably grade the severity of punctate dots, to improve the efficiency of the dry diagnosis.
机译:眼表面损伤是干眼症综合征的主要特征。由干眼引起的眼表面损伤是指在眼表面上存在浅表浅表角膜炎(SPK),或者也称为点状点。在目前的诊断方法,如眼表面荧光素染色试验,眼科医生染色眼表面以可视化点状点,然后识别它们的算作。根据分级结果,眼科医生进一步诊断。对于专家来说,很难实现一致的结果。方法:本研究提出培训深层CNN(卷积神经网络)模型,以自动检测点状点。然后我们获得称为CNN-SPK值的值,表示点状点的覆盖范围。收集来自101名参与者的标准荧光素染色图像。结果:其余81参与者的估计CNN-SPK值与临床等级之间的相关性显着(r = 0.85; p <0.05)。根据这一观察,我们建议最终分级的统计方法。使用来自81名参与者的CNN-SPK值以及相应的临床等级,我们在任何两个相邻等级之间找到CNN-SPK阈值。此外,我们在敏感度的敏感度和症状之间获得阈值,敏感度为0.94,特异性为0.79。结论:我们的自动方法可用于可靠地级分级点状点,提高干燥诊断的效率。

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