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Deep Neural Network-Based Method for Detecting Obstructive Meibomian Gland Dysfunction With in Vivo Laser Confocal Microscopy

机译:基于深度神经网络的检测梗阻性睑板腺体功能障碍与体内激光共焦显微镜

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Purpose: To evaluate the ability of deep learning (DL) models to detect obstructive meibomian gland dysfunction (MGD) using in vivo laser confocal microscopy images. Methods: For this study, we included 137 images from 137 individuals with obstructive MGD (mean age, 49.9 +/- 17.7 years; 44 men and 93 women) and 84 images from 84 individuals with normal meibomian glands (mean age, 53.3 +/- 19.6 years; 29 men and 55 women). We constructed and trained 9 different network structures and used single and ensemble DL models and calculated the area under the curve, sensitivity, and specificity to compare the diagnostic abilities of the DL. Results: For the single DL model (the highest model; DenseNet-201), the area under the curve, sensitivity, and specificity for diagnosing obstructive MGD were 0.966%, 94.2%, and 82.1%, respectively, and for the ensemble DL model (the highest ensemble model; VGG16, DenseNet-169, DenseNet-201, and InceptionV3), 0.981%, 92.1%, and 98.8%, respectively. Conclusions: Our network combining DL and in vivo laser confocal microscopy learned to differentiate between images of healthy meibomian glands and images of obstructive MGD with a high level of accuracy that may allow for automatic obstructive MGD diagnoses in patients in the future.
机译:目的:评估深度学习(DL)模型检测妨碍睑板腺功能障碍(MGD)的能力,使用体内激光共焦显微镜图像。方法:对于这项研究,我们包括137个患有阻塞MGD(平均年龄,49.9 +/- 17.7岁的137张图片(平均年龄,49.9 +/- 17.7岁)和84个具有普通美鸟腺(平均年龄,53.3 + / - 19.6岁; 29名男子和55名女性)。我们构建和培训了9种不同的网络结构,并使用单个和集合DL模型,并计算曲线下的区域,灵敏度和特异性,以比较DL的诊断能力。结果:对于单一DL模型(最高型号; Densenet-201),曲线下的面积,诊断阻塞MGD的特异性分别为0.966%,94.2%和82.1%,以及集合DL模型分别为0.966%,94.2%和82.1% (最高合奏模型; VGG16,DENSENET-169,DENSENET-201和INCEPIONV3)分别为0.981%,92.1%和98.8%。结论:我们的网络组合DL和体内激光共焦显微镜学会了解到,在未来患者中可能允许自动阻塞性MGD诊断的高度精度,分辨于健康美肌腺体和梗阻性MGD的图像的图像。

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