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Automatic Detection of Free Intra-abdominal Air in Computed Tomography

机译:在计算机断层扫描中自动检测自由内空气

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Pneumoperitoneum, the presence of air within the peritoneal cavity, is a comparatively rare but potentially urgent critical finding in patients presenting with acute abdominal pain. When prior laparoscopic treatment can be ruled out as a cause, it can indicate perforation of the wall of a hollow organ, which typically necessitates immediate surgery. Computed tomography (CT) is the gold standard for detecting free intra-abdominal air, yet subtle cases are easy to miss. More crucially though, if there is no initial suspicion of pneumoperitoneum, the scans may not be read immediately as other emergency patients take precedence. Therefore, fully automatic detection would provide a direct clinical benefit. In this work, an algorithm for this purpose is proposed which follows a sliding-window approach and has a deep-learning based classifier at its core. In addition to the baseline method, variants that rely on multi-scale inputs and recurrent layers to increase robustness are presented. In a fivefold cross validation on the training data, consisting in abdominal CT scans of 110 affected patients and 29 controls, our method achieved an area under the receiver-operating characteristic curve of 89% for case-level classification. Due to its high specificity at reasonable detection rates, it shows potential for use in triage, where false alerts are considered particularly harmful as they may disrupt the clinical workflow.
机译:腹腔内腹腔内的空气存在,是患有急性腹痛的患者的相对罕见但潜在迫切的危急。当先前的腹腔镜处理可以作为原因排出时,它可以表示中空器官壁的穿孔,这通常需要立即手术。计算机断层扫描(CT)是检测腹腔内空气的黄金标准,但细微的情况很容易错过。然而,更令人遗症的是,如果没有敏感的肺胆碱,可能无法立即读取扫描,因为其他紧急患者优先于优先效果。因此,全自动检测将提供直接的临床益处。在这项工作中,提出了一种遵循滑动窗口方法的算法,并在其核心处具有深度学习的分类器。除了基线方法之外,还提出了依赖多尺度输入和复发层来增加鲁棒性的变体。在培训数据的五倍交叉验证中,在110名受影响的患者和29个对照的腹部CT扫描中,我们的方法在接收器 - 操作特性曲线下实现了89%的面积,以案例级别分类。由于其在合理的检测速率下的特异性,它显示出在分类中使用的可能性,其中假警报被认为特别有害,因为它们可能会破坏临床工作流程。

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