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A Deep Learning Method for Alerting Emergency Physicians about the Presence of Subphrenic Free Air on Chest Radiographs

机译:一种深入学习方法用于提醒急诊医生关于胸部X射线照相骨折空气的存在

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摘要

Hollow organ perforation can precipitate a life-threatening emergency due to peritonitis followed by fulminant sepsis and fatal circulatory collapse. Pneumoperitoneum is typically detected as subphrenic free air on frontal chest X-ray images; however, treatment is reliant on accurate interpretation of radiographs in a timely manner. Unfortunately, it is not uncommon to have misdiagnoses made by emergency physicians who have insufficient experience or who are too busy and overloaded by multitasking. It is essential to develop an automated method for reviewing frontal chest X-ray images to alert emergency physicians in a timely manner about the life-threatening condition of hollow organ perforation that mandates an immediate second look. In this study, a deep learning-based approach making use of convolutional neural networks for the detection of subphrenic free air is proposed. A total of 667 chest X-ray images were collected at a local hospital, where 587 images (positiveegative: 267/400) were used for training and 80 images (40/40) for testing. This method achieved 0.875, 0.825, and 0.889 in sensitivity, specificity, and AUC score, respectively. It may provide a sensitive adjunctive screening tool to detect pneumoperitoneum on images read by emergency physicians who have insufficient clinical experience or who are too busy and overloaded by multitasking.
机译:中空器官穿孔可以促使由于腹膜炎的危及生命的紧急性,其次是令人兴奋的败血症和致命的循环塌陷。肺胆固物通常在正面胸部X射线图像上被检测为伯文自由空气;然而,治疗依赖于及时对射线照相的准确解释。不幸的是,急诊医生没有经验或过于忙碌并通过多任务处理超载的急救医生制作并不罕见。重要的是开发一种自动化方法,用于审查正面胸部X射线图像,以及时了解中空器官穿孔的危及生命状态,以便立即第二外观来提醒紧急医生。在这项研究中,提出了一种利用卷积神经网络来检测伯文自由空气的深度学习的方法。在当地医院收集了总共667个胸部X射线图像,其中587个图像(正/阴性:267/400)用于训练和80张图像(40/40)进行测试。该方法分别实现了0.875,0.825和0.889的敏感性,特异性和AUC分数。它可以提供一种敏感的辅助筛查工具,用于检测急诊医生读取的图像上的肺胆管内,或者由多任务处理过于繁忙并超载。

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