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Thoughts concerning the application of thermogram images for automated diagnosis of dry eye - A review

机译:关于热分析图像应用程序自动诊断的思考 - 评论

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摘要

Dry eye disease (DED) is a multifactorial condition of the tear and ocular surface that is characterized by loss of homeostasis and symptoms of tear instability. Some symptoms of DED include blurring of vision, crusting of eyelids, and irritation to the eyes. An array of clinical methods, such as Schirmer's test, is used to classify DED. Yet, these approaches are often invasive, need to be performed manually by clinicians, and/or they do not have reproducible results. They are also prone to interobserver variation among clinicians. Thus, computer-aided detection (CAD) systems are preferred for DED diagnosis. This paper reviews the existing CAD techniques used to automatically diagnose DED, and focuses on the benefits of thermographic CAD systems. CAD systems for DED using thermography are found to be highly sensitive, specific, accurate, minimally invasive, convenient, and satisfactory. Also, deep learning techniques are discussed to precede conventional machine learning techniques in the development of a CAD system. It is concluded that the use of thermographic CAD systems coupled with a deep learning technique is likely to be useful for DED assessment in future work.
机译:干眼症(DED)是撕裂和眼表面的多学会条件,其特征在于稳态损失和撕裂不稳定性的症状。 DED的一些症状包括模糊的视觉,眼睑壳,眼睛的刺激。一系列临床方法,例如Schirmer的测试,用于分类DED。然而,这些方法往往是侵入性的,需要通过临床医生手动进行,和/或它们没有可重复的结果。它们也容易发生临床医生之间的interobserver变异。因此,计算机辅助检测(CAD)系统是专用诊断的优选。本文综述了现有的CAD技术,用于自动诊断DED,并专注于热成像CAD系统的好处。发现DED使用热成像的CAD系统是高度敏感,具体,准确,微创,方便和令人满意的。此外,讨论了深度学习技术以在传统的机器学习技术之前在开发CAD系统中。结论是,使用与深层学习技术相结合的热成分CAD系统可能对未来工作中的DED评估有用。

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