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Reduction of missed thoracic findings in emergency whole-body computed tomography using artificial intelligence assistance

机译:使用人工智能援助减少紧急全身计算断层扫描中的错过胸廓调查结果

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Background: Radiology reporting of emergency whole-body computed tomography (CT) scans is time-critical and therefore involves a significant risk of pathology under-detection. We hypothesize a relevant number of initially missed secondary thoracic findings that would have been detected by an artificial intelligence (AI) software platform including several pathology-specific AI algorithms. Methods: This retrospective proof-of-concept-study consecutively included 105 shock-room whole-body CT scans. Image data was analyzed by platform-bundled AI-algorithms, findings were reviewed by radiology experts and compared with the original radiologist’s reports. We focused on secondary thoracic findings, such as cardiomegaly, coronary artery plaques, lung lesions, aortic aneurysms and vertebral fractures. Results: We identified a relevant number of initially missed findings, with their quantification based on 105 analyzed CT scans as follows: up to 25 patients (23.8%) with cardiomegaly or borderline heart size, 17 patients (16.2%) with coronary plaques, 34 patients (32.4%) with aortic ectasia, 2 patients (1.9%) with lung lesions classified as “recommended to control” and 13 initially missed vertebral fractures (two with an acute traumatic origin). A high number of false positive or non-relevant AI-based findings remain problematic especially regarding lung lesions and vertebral fractures. Conclusions: We consider AI to be a promising approach to reduce the number of missed findings in clinical settings with a necessary time-critical radiological reporting. Nevertheless, algorithm improvement is necessary focusing on a reduction of “false positive” findings and on algorithm features assessing the finding relevance, e.g., fracture age or lung lesion malignancy.
机译:背景:紧急全体计算机断层扫描(CT)扫描的放射学报告是时间至上的,因此涉及病理缺失的显着风险。我们假设一个相关的初始错过的二次胸廓发现,该结果将被包括几种病理学特定的AI算法的人工智能(AI)软件平台检测到。方法:这种回顾性概念验证 - 概念研究连续包括105个震荡室全身CT扫描。通过平台捆绑的AI算法分析图像数据,通过放射专家审查了调查结果,并与原始放射科医师的报告进行了比较。我们专注于次级胸廓调查,如心脏肿大,冠状动脉斑块,肺病变,主动脉瘤和椎体骨折。结果:我们确定了一个相关数量的最初错过的调查结果,其量化基于105分析的CT扫描如下:最多25名患者(23.8%),患有冠状动脉,17名患者(16.2%),34名患者(16.2%)患者(32.4%)与主动脉畸形,2名患者(1.9%),肺病灶分为“推荐控制”和13次最初错过的椎体骨折(两种具有急性创伤源)。大量的假阳性或非相关的AI基因结果仍然有问题,特别是肺病变和椎体骨折。结论:我们认为AI是一个有希望的方法,以减少临床环境中未存在的发现的数量,具有必要的时间 - 临界放射性报告。然而,算法改进是必要的,专注于减少“假阳性”调查结果和评估查找相关性的算法特征,例如裂缝年龄或肺病变恶性肿瘤。

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