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Using Deep Learning to Classify X-ray Images of Potential Tuberculosis Patients

机译:使用深度学习对潜在结核病患者的X射线图像进行分类

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Deep Learning is widely used for image classification. Its success heavily relies on data which contains a sufficient amount of region of interest (~10%). However, due to the region of interest in medical images being as low as 1% of the entire image, Deep Learning has not been conveniently used for such cases. In this study, we employ recent techniques brought forth in Deep Learning and aim to classify X-ray images of potential Tuberculosis patients. Different types of learning rate enhancement techniques were used. Significant improvement was observed when coarse-to-fine knowledge transfer was employed to fine-tune the model further using multiple data augmentation techniques. We achieved an overall accuracy of 94.89% on the augmented images.
机译:深度学习广泛用于图像分类。它的成功在很大程度上取决于包含足够数量的感兴趣区域(约10%)的数据。但是,由于医学图像中的关注区域低至整个图像的1%,因此深度学习尚未方便地用于此类情况。在这项研究中,我们采用了深度学习中提出的最新技术,旨在对潜在结核病患者的X射线图像进行分类。使用了不同类型的学习速率增强技术。当使用从粗到精的知识转移来进一步使用多种数据增强技术对模型进行微调时,观察到了显着的改进。我们在增强图像上的总体准确度达到94.89%。

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