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首页> 外文期刊>Translational Engineering in Health and Medicine, IEEE Journal of >Cloud-Based Automated Clinical Decision Support System for Detection and Diagnosis of Lung Cancer in Chest CT
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Cloud-Based Automated Clinical Decision Support System for Detection and Diagnosis of Lung Cancer in Chest CT

机译:基于云的自动临床决策支持系统,用于胸部CT中肺癌的检测和诊断

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摘要

Lung cancer is a major cause for cancer-related deaths. The detection of pulmonary cancer in the early stages can highly increase survival rate. Manual delineation of lung nodules by radiologists is a tedious task. We developed a novel computer-aided decision support system for lung nodule detection based on a 3D Deep Convolutional Neural Network (3DDCNN) for assisting the radiologists. Our decision support system provides a second opinion to the radiologists in lung cancer diagnostic decision making. In order to leverage 3-dimensional information from Computed Tomography (CT) scans, we applied median intensity projection and multi-Region Proposal Network (mRPN) for automatic selection of potential region-of-interests. Our Computer Aided Diagnosis (CAD) system has been trained and validated using LUNA16, ANODE09, and LIDC-IDR datasets; the experiments demonstrate the superior performance of our system, attaining sensitivity, specificity, AUROC, accuracy, of 98.4, 92, 96 and 98.51 with 2.1 FPs per scan. We integrated cloud computing, trained and validated our Cloud-Based 3DDCNN on the datasets provided by Shanghai Sixth People's Hospital, as well as LUNA16, ANODE09, and LIDC-IDR. Our system outperformed the state-of-the-art systems and obtained an impressive 98.7 sensitivity at 1.97 FPs per scan. This shows the potentials of deep learning, in combination with cloud computing, for accurate and efficient lung nodule detection via CT imaging, which could help doctors and radiologists in treating lung cancer patients.
机译:肺癌是癌症相关死亡的主要原因。在早期阶段的肺癌检测可以高度增加存活率。通过放射科医生的肺结节手动描绘是一个繁琐的任务。我们开发了一种基于3D深卷积神经网络(3DDCNN)的肺结核检测的新型计算机辅助决策支持系统,用于辅助放射科医师。我们的决策支持系统为肺癌诊断决策的放射科医生提供了第二种意见。为了利用计算机断层扫描(CT)扫描的三维信息,我们应用了中值强度投影和多区域提议网络(MRPN)以自动选择潜在的兴趣区域。我们的计算机辅助诊断(CAD)系统已培训并使用LUNA16,ANODE09和LIDC-IDR数据集进行验证;实验证明了我们的系统的卓越性能,实现了每次扫描2.1fps的敏感性,特异性,菌波,精度为98.4,92,96和98.51。我们在上海第六人民医院提供的数据集中综合云计算,培训并验证了我们的基于云的3DDCNN,以及Luna16,Anode09和LIDC-IDR。我们的系统优于最先进的系统,并在每次扫描的1.97 FPS下获得令人印象深刻的98.7灵敏度。这表明了深入学习的潜力,与云计算相结合,可通过CT成像进行准确,有效的肺结核检测,这可以帮助医生和放射科医师治疗肺癌患者。

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