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Pneumothorax Segmentation In Chest X-Rays Using UNet++ And EfficientNet

机译:使用UNET ++和Abseralnet的胸部X射线中的气胸细分

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Pneumothorax or collapsed lung, is a condition that occurs when air enters the space between the chest wall and the lung. Normally, looking at a chest X-ray image is the best way for an expert or experienced radiologist to make sure that one has a collapsed lung or not. However, in certain cases, it is difficult for the experts to diagnose pneumothorax since other medical conditions may look similar. Moreover, diagnosing quickly this disease is a hard problem in the underdeveloped regions because of the lack of the experienced radiologists. Lately, with the growth of large neural network architectures and medical imaging datasets, deep learning has been providing diagnostic support systems in detecting and locating pneumothorax with high accuracy. In this paper, an image segmentation model was proposed to support doctors in taking crucial decision by determining pneumothorax on a chest X-ray image. The UNet++ architecture has been used with EfficientNet (EfficientNet-B4) as a backbone which is pre-trained on ImageNet dataset. The chest X-ray dataset of 2019 SIIM-ACR Pneumothorax Segmentation Challenge, which contains 12047 training images and 3205 testing images, was used for testing. This method achieves 0.8544 mean Dice coefficient placing it among the top 1,7% of competitors with a rank of 26 out of 1475 teams.
机译:气胸或塌陷的肺部,是空气进入胸壁和肺之间的空间时发生的条件。通常,看着胸部X射线图像是专家或经验丰富的放射科医生来确保一个人有折叠肺的最佳方式。然而,在某些情况下,专家难以诊断肺炎,因为其他医疗条件看起来相似。此外,由于缺乏经验丰富的放射科医师,迅速诊断这种疾病是欠发达地区的难题。最近,随着大型神经网络架构和医学成像数据集的增长,深度学习一直在提供高精度检测和定位气胸的诊断支持系统。本文提出了一种图像分割模型来支持医生通过测定胸部X射线图像上的气胸来决定。 UNET ++架构已与WequessNet(TeverningNet-B4)一起使用作为在Imagenet DataSet上预先培训的骨干网。 2019年SIIM-ACR气胸的胸部X射线数据集包含12047次训练图像和3205检测图像,用于测试。这种方法实现了0.8544个平均骰子系数,将其放置在1475队中的26个竞争对手的前1,7%。

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