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Bioimage informatics approach to automated meibomian gland analysis in infrared images of meibography

机译:生物图像信息学方法在X线成像的红外图像中自动进行睑板腺分析

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Background: Infrared (IR) meibography is an imaging technique to capture the Meibomian glands in the eyelids. These ocular surface structures are responsible for producing the lipid layer of the tear film which helps to reduce tear evaporation. In a normal healthy eye, the glands have similar morphological features in terms of spatial width, in-plane elongation, length. On the other hand, eyes with Meibomian gland dysfunction show visible structural irregularities that help in the diagnosis and prognosis of the disease. However, currently there is no universally accepted algorithm for detection of these image features which will be clinically useful. We aim to develop a method of automated gland segmentation which allows images to be classified. Methods: A set of 131 meibography images were acquired from patients from the Singapore National Eye Center. We used a method of automated gland segmentation using Gabor wavelets. Features of the imaged glands including orientation, width, length and curvature were extracted and the IR images enhanced. The images were classified as 'healthy', 'intermediate' or 'unhealthy', through the use of a support vector machine classifier (SVM). Half the images were used for training the SVM and the other half for validation. Independently of this procedure, the meibographs were classified by an expert clinician into the same 3 grades. Results: The algorithm correctly detected 94% and 98% of mid-line pixels of gland and inter-gland regions, respectively, on healthy images. On intermediate images, correct detection rates of 92% and 97% of mid-line pixels of gland and inter-gland regions were achieved respectively. The true positive rate of detecting healthy images was 86%, and for intermediate images, 74%. The corresponding false positive rates were 15% and 31% respectively. Using the SVM, the proposed method has 88% accuracy in classifying images into the 3 classes. The classification of images into healthy and unhealthy classes achieved a 100% accuracy, but 7/38 intermediate images were incorrectly classified. Conclusions: This technique of image analysis in meibography can help clinicians to interpret the degree of gland destruction in patients with dry eye and meibomian gland dysfunction.
机译:背景技术:红外(IR)热成像是一种捕获眼睑睑板腺的成像技术。这些眼表结构负责产生泪膜的脂质层,这有助于减少泪液蒸发。在正常健康的眼睛中,腺体在空间宽度,平面内延伸,长度方面具有相似的形态特征。另一方面,患有睑板腺功能障碍的眼睛显示可见的结构不规则,有助于疾病的诊断和预后。然而,目前尚没有用于临床上有用的检测这些图像特征的普遍接受的算法。我们旨在开发一种自动腺体分割方法,可以对图像进行分类。方法:从新加坡国家眼科中心的患者那里获得了131幅X线摄影图像。我们使用了Gabor小波的自动腺体分割方法。提取成像腺体的特征,包括方向,宽度,长度和曲率,并增强红外图像。通过使用支持向量机分类器(SVM)将图像分类为“健康”,“中级”或“不健康”。一半的图像用于训练SVM,另一半用于验证。独立于此程序,近摄图由专业临床医生分为相同的3个等级。结果:该算法正确检测到健康图像上腺体和腺体间区域的中线像素分别为94%和98%。在中间图像上,分别达到腺体和腺间区域中线像素的正确检测率分别为92%和97%。检测健康图像的真实阳性率为86%,中间图像的阳性率为74%。相应的假阳性率分别为15%和31%。使用支持向量机,该方法在将图像分类为3类中具有88%的准确性。将图像分类为健康和不健康的类别可达到100%的准确性,但是7/38中间图像被错误地分类了。结论:这种影像学检查技术可以帮助临床医生解释干眼症和睑板腺功能障碍患者的腺体破坏程度。

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