Detection and Segmentation of Lungs Regions Using CNN Combined with Levelset

Pedro Cavalcante Sousa Júnior, L. F. D. F. Souza, J. C. Nascimento, Lucas de Oliveira Santos, A. G. Marques, Francisco Eduardo Sales Ribeiro, P. P. Rebouças Filho
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引用次数: 1

Abstract

Lung diseases are among the leaders in ranking diseases that kill the most globally. A quick and accurate diagnosis made by a specialist doctor facilitates the treatment of the disease and can save lives. In recent decades, an area that has gained strength in computing has been the aid to medical diagnosis. Several techniques were created to help health professionals in their work using Computer Vision Techniques and Machine Learning. This work presents a method of lung segmentation based on deep learning and computer vision techniques to aid in the medical diagnosis of lung diseases. The method uses the Detectron2 convolutional neural network for detection, which obtained 99.89% accuracy for detecting the pulmonary region. It was then combined with the LevelSet method for segmentation, which got 99.32% accuracy in segmentation in Lung Computed Tomography images being equivalent in state of the art, surpassing different deep learning models for segmentation.
结合水平集的CNN肺区域检测与分割
在全球最致命的疾病排名中,肺部疾病名列前茅。由专科医生作出的快速而准确的诊断有助于疾病的治疗,并可以挽救生命。近几十年来,计算机技术在医疗诊断方面取得了很大的进步。创建了一些技术来帮助卫生专业人员使用计算机视觉技术和机器学习。这项工作提出了一种基于深度学习和计算机视觉技术的肺分割方法,以帮助肺部疾病的医学诊断。该方法采用Detectron2卷积神经网络进行检测,对肺区检测准确率达到99.89%。然后将其与LevelSet方法相结合进行分割,该方法在肺ct图像的分割中获得了99.32%的准确率,与目前的技术水平相当,超过了其他深度学习模型的分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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