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Evaluation of Dental Image Augmentation for the Severity Assessment of Periodontal Disease

机译:牙科图像增强技术在牙周病严重性评估中的应用

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By exploring the feasibility of medical imaging applicable to periodontal disease, we have designed a MapReduce-like deep learning model for the severity assessment by estimating the pocket depth from oral images. However, deep learning typically relies on supervised training with a large annotated dataset, and medical data often faces an insufficiency in quantity and variety. Furthermore, obtaining patient data and annotating such data by experts still remain a challenge. To overcome the insufficiency in the data, we propose random cropping and GAN-based augmentation methods on tooth pocket region images extracted from oral images. We verify that the proposed methods successfully increase the number of training data and its variety, and these synthetic data contribute to improving the estimation accuracy from 78.3% to 84.5%, and sensitivity from 50.4% to 74.0%, with specificity of around 90%, compared to the MapReduce-like model without the augmentation.
机译:通过探索适用于牙周疾病的医学成像的可行性,我们设计了一种MapReduce式深度学习模型,用于通过从口腔图像估计口袋深度来进行严重程度评估。但是,深度学习通常依赖于具有大量注释数据集的监督训练,而医学数据通常面临数量和种类不足的情况。此外,获得患者数据并由专家注释这些数据仍然是一个挑战。为了克服数据不足的问题,我们建议对从口腔图像中提取的牙齿口袋区域图像进行随机裁剪和基于GAN的增强方法。我们验证了所提出的方法成功增加了训练数据的数量及其种类,并且这些合成数据有助于将估计准确性从78.3%提高到84.5%,并将灵敏度从50.4%提高到74.0%,特异性在90%左右,相比于没有增强功能的类似MapReduce的模型。

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