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Development and clinical application of deep learning model for lung nodules screening on CT images

机译:肺结核深度学习模型对CT图像筛选的开发与临床应用

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Lung cancer screening based on low-dose CT (LDCT) has now been widely applied because of its effectiveness and ease of performance. Radiologists who evaluate a large LDCT screening images face enormous challenges, including mechanical repetition and boring work, the easy omission of small nodules, lack of consistent criteria, etc. It requires an efficient method for helping radiologists improve nodule detection accuracy with efficiency and cost-effectiveness. Many novel deep neural network-based systems have demonstrated the potential for use in the proposed technique to detect lung nodules. However, the effectiveness of clinical practice has not been fully recognized or proven. Therefore, the aim of this study to develop and assess a deep learning (DL) algorithm in identifying pulmonary nodules (PNs) on LDCT and investigate the prevalence of the PNs in China. Radiologists and algorithm performance were assessed using the FROC score, ROC-AUC, and average time consumption. Agreement between the reference standard and the DL algorithm in detecting positive nodules was assessed per-study by Bland–Altman analysis. The Lung Nodule Analysis (LUNA) public database was used as the external test. The prevalence of NCPNs was investigated as well as other detailed information regarding the number of pulmonary nodules, their location, and characteristics, as interpreted by two radiologists.
机译:基于低剂量CT(LDCT)的肺癌筛选现在已被广泛应用,因为其有效性和性能易于性能。评估大型LDCT筛选图像的放射科医师面临巨大的挑战,包括机械重复和无聊的工作,易于省略小结节,缺乏一致标准等。它需要一种有效的方法来帮助放射科学医生提高结节检测精度,效率和成本 - 效力。许多新型的基于深度神经网络的系统已经证明了在所提出的技术上检测肺结节的可能性。然而,临床实践的有效性尚未得到充分认可或证明。因此,该研究的目的是在LDCT上鉴定肺结核(PNS)并调查中国的患病率来开发和评估深度学习(DL)算法。使用FROC得分,ROC-AUC和平均时间消耗评估放射科和算法性能。通过Bland-Altman分析评估了参考标准和DL算法在检测阳性结节的DL算法之间的一致性。使用肺结核分析(LUNA)公共数据库作为外部测试。研究了NCPN的患病率以及有关两个放射科医生的解释的肺结节,其位置和特征的数量的其他详细信息。

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