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Abnormality detection for infection and fluid cases in chest radiograph

机译:胸部X线检查中感染和液体病例的异常检测

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This paper presents an automated abnormality detection system for infection and fluid cases in the lung field for chest radiograph. The abnormality features represented as abnormality scores are investigated based on the sharpness of costophrenic angle (Scoreθn), symmetrical lung area (ScoreLp), area of the lung (Scorearea), as well as the lung level (ScoreLlevel). The radiograph will be detected as abnormal if any of the score is `1'. Total numbers of classified normal and with disease radiographs are 177 and 35 respectively. From the results at the image level, 78% and 100% of the infection and fluid images are correctly detected as abnormal.
机译:本文介绍了一种自动异常检测系统,用于胸部X光片上肺部感染和液体病例的检测。根据肋骨角的锐度(Scoreθn),对称肺区域(ScoreLp),肺区域(Scorearea)以及肺水平(ScoreLlevel),研究以异常评分表示的异常特征。如果任何得分为“ 1”,则放射线照片将被检测为异常。分类的正常X光片和疾病X光片的总数分别为177和35。从图像级别的结果中,正确地将78%和100%的感染和液体图像检测为异常。

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