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Deep learning, reusable and problem-based architectures for detection of consolidation on chest X-ray images

机译:深入学习,可重用和基于问题的架构,用于检测胸部X射线图像的整合

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摘要

Background and objective: In most patients presenting with respiratory symptoms, the findings of chest radiography play a key role in the diagnosis, management, and follow-up of the disease. Consolidation is a common term in radiology, which indicates focally increased lung density. When the alveolar structures become filled with pus, fluid, blood cells or protein subsequent to a pulmonary pathological process, it may result in different types of lung opacity in chest radiograph. This study aims at detecting consolidations in chest x-ray radiographs, with a certain precision, using artificial intelligence and especially Deep Convolutional Neural Networks to assist radiologist for better diagnosis.
机译:背景和目的:在大多数患有呼吸系统症状的患者中,胸部射线照相的结果在疾病的诊断,管理和随访中发挥着关键作用。 合并是放射学中的共同术语,其表明肺密度局部增加。 当肺泡结构充满肺病理过程后患有脓液,流体,血细胞或蛋白质时,它可能导致胸部射线照片中不同类型的肺不透明度。 本研究旨在检测胸部X射线射线照相的整合,具有一定的精确度,使用人工智能,特别是深度卷积神经网络来帮助放射科医师进行更好的诊断。

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