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A cloud-based computer-aided detection system improves identification of lung nodules on computed tomography scans of patients with extra-thoracic malignancies

机译:基于云的计算机辅助检测系统改善了胸腔内扫描的肺结核扫描患者的肺结节的鉴定

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ObjectivesTo compare unassisted and CAD-assisted detection and time efficiency of radiologists in reporting lung nodules on CT scans taken from patients with extra-thoracic malignancies using a Cloud-based system.Materials and methodsThree radiologists searched for pulmonary nodules in patients with extra-thoracic malignancy who underwent CT (slice thickness/spacing 2 mm/1.7 mm) between September 2015 and March 2016. All nodules detected by unassisted reading were measured and coordinates were uploaded on a cloud-based system. CAD marks were then reviewed by the same readers using the cloud-based interface. To establish the reference standard all nodules 3 mm detected by at least one radiologist were validated by two additional experienced radiologists in consensus. Reader detection rate and reporting time with and without CAD were compared. The study was approved by the local ethics committee. All patients signed written informed consent.ResultsThe series included 225 patients (age range 21-90 years, mean 62 years), including 75 patients having at least one nodule, for a total of 215 nodules. Stand-alone CAD sensitivity for lesions 3 mm was 85% (183/215, 95% CI: 82-91); mean false-positive rate per scan was 3.8. Sensitivity across readers in detecting lesions 3 mm was statistically higher using CAD: 65% (95% CI: 61-69) versus 88% (95% CI: 86-91, p0.01). Reading time increased by 11% using CAD (296 s vs. 329 s; p0.05).ConclusionIn patients with extra-thoracic malignancies, CAD-assisted reading improves detection of 3-mm lung nodules on CT, slightly increasing reading time.Key Points center dot CAD-assisted reading improves the detection of lung nodules compared with unassisted reading on CT scans of patients with primary extra-thoracic tumour, slightly increasing reading time.center dot Cloud-based CAD systems may represent a cost-effective solution since CAD results can be reviewed while a separated cloud back-end is taking care of computations.center dot Early identification of lung nodules by CAD-assisted interpretation of CT scans in patients with extra-thoracic primary tumours is of paramount importance as it could anticipate surgery and extend patient life expectancy.
机译:ObjectiveSto比较辐射学家在报告肺结核患者中,从基于云的系统报告肺结核患者报告肺结核患者的肺结节。关于胸部恶性肿瘤患者寻找肺结核的材料和方法的CT扫描上谁在2015年9月和2016年3月之间接受了CT(切片厚度/间距2 mm / 1.7 mm)。测量了由无归档读数检测的所有结节,并在基于云的系统上上传了坐标。然后,使用基于云的界面的相同读者审查CAD标记。为了建立参考标准,通过两种经验丰富的放射科医生在共识中验证了至少一个放射科医生检测到的所有结节3mm。比较读取器检测率和没有CAD的报告时间。该研究得到了当地伦理委员会的批准。所有患者签署了书面知情同意。培养型患者(21-90岁)包括225名患者(平均62岁),其中包括至少一个结节的75名,共215名结节。单独的病变CAD敏感性3 mm为85%(183/215,95%CI:82-91);每次扫描的均值假速率为3.8。使用CAD,检测病变的读取器对读取器的敏感性:65%(95%CI:61-69)与88%(95%CI:86-91,P <0.01)。使用CAD读数时间增加了11%(296S与329秒; P <0.05)。CAD辅助阅读患者的患者,改善了CT的3mm肺结节的检测,略微增加读取时间.KEY积分中心CAD辅助读数改善了肺结核的检测,而初级胸肿瘤患者的CT扫描相比,略微增加的阅读时间。基于CAD的CADER点云的CAD系统可以代表一种成本效益的解决方案在分离的云后端正在处理计算的同时可以审查结果。通过CAD辅助解释CT扫描的CT疾病的CT扫描的肺结节的早期鉴定至关重要的重要性,因为它可能预期手术和延长患者预期寿命。

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