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Lung nodule detection from CT scans using 3D convolutional neural networks without candidate selection

机译:使用无候选选择的3D卷积神经网络从CT扫描的肺结节检测

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Early detection of lung nodules from CT scans is key to improving lung cancer treatment, but poses a significant challenge for radiologists due to the high throughput required of them. Computer-Aided Detection (CADe) systems aim to automatically detect these nodules with computer algorithms, thus improving diagnosis. These systems typically use a candidate selection step, which identifies all objects that resemble nodules, followed by a machine learning classifier which separates true nodules from false positives. We create a CADe system that uses a 3D convolutional neural network (CNN) to detect nodules in CT scans without a candidate selection step. Using data from the LIDC database, we train a 3D CNN to analyze subvolumes from anywhere within a CT scan and output the probability that each subvolume contains a nodule. Once trained, we apply our CNN to detect nodules from entire scans, by systematically dividing the scan into overlapping subvolumes which we input into the CNN to obtain the corresponding probabilities. By enabling our network to process an entire scan, we expect to streamline the detection process while maintaining its effectiveness. Our results imply that with continued training using an iterative training scheme, the one-step approach has the potential to be highly effective.
机译:早期检测CT扫描的肺结核是改善肺癌治疗的关键,但由于它们所需的高吞吐量,对放射科学家的挑战显着挑战。计算机辅助检测(CADE)系统旨在通过计算机算法自动检测这些结节,从而改善诊断。这些系统通常使用候选选择步骤,该步骤识别类似于结节的所有对象,然后是机器学习分类器,其将真实结节与误报分离。我们创建了一个CADE系统,它使用3D卷积神经网络(CNN)来检测CT扫描中的结节,而无需候选选择步骤。使用来自LIDC数据库的数据,我们将3D CNN从CT扫描中的任何位置培训3D CNN,并输出每个子培布包含结节的概率。一旦接受培训,我们将通过系统地将扫描分成在CNN中以获得相应的概率的重叠子卷中来应用我们的CNN来检测来自整个扫描的结区。通过使我们的网络能够处理整个扫描,我们希望在保持其有效性的同时简化检测过程。我们的结果意味着,随着使用迭代培训计划的持续培训,一步法具有高效的潜力。

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