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Modified UNet++ Model: A Deep Model for Automatic Segmentation of Lungs from Chest X-ray Images

机译:修改的UNET ++模型:胸部X射线图像自动分割的深层模型

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In medical imaging, automatic lung segmentation from Chest X-ray (CXR) images helps doctors to diagnose various diseases and guide for further treatment. U-Net is the most popular model for biomedical image segmentation. But it does not consider regions outside the target, thus its performance decreases for complex images. An advanced U-Net++ model provides better performance on complex images than U-Net. In this paper, we propose a modified UNet++ framework for the segmentation of lungs in CXR images. This model is a deep supervised encoder-decoder architecture with dense skip connections. The proposed model used an easily accessible NLM-China CXR dataset and achieved promising performance for the segmentation of the lung fields. The experimental results showed that the modified UNet++ model achieved a Dice Similarity Coefficient (DSC) score of 0.9680 for lung segmentation that identifies tuberculosis disease.
机译:在医学成像中,胸X射线(CXR)图像的自动肺分割有助于医生诊断各种疾病和进一步治疗指南。 U-Net是生物医学图像分割最受欢迎的模型。 但它不考虑目标外部的区域,因此其性能降低了复杂的图像。 高级U-Net ++模型在复杂图像上提供比U-Net更好的性能。 在本文中,我们向CXR图像中的肺部分割提出了修饰的UNET ++框架。 该模型是具有密集跳过连接的深度监督编码器解码器架构。 所提出的模型使用易于访问的NLM-China CXR数据集,并为肺部分割而取得了有希望的性能。 实验结果表明,修饰的UNET ++模型达到鉴定结核病疾病的肺部分割的骰子相似度系数(DSC)得分为0.9680。

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