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Multi-stage Neural Networks with Single-Sided Classifiers for False Positive Reduction and Its Evaluation Using Lung X-Ray CT Images

机译:具有单面分类器的多级神经网络用于假阳性减少及其使用肺部X射线CT图像进行评估

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Lung nodule classification is a class imbalanced problem because nodules axe found in much lower frequency than non-nodules. In the class imbalanced problem, conventional classifiers tend to be overwhelmed by the majority class and ignore the minority class. We therefore propose cascaded convolutional neural networks to cope with the class imbalanced problem. In the proposed approach, multi-stage convolutional neural networks perform as single-sided classifiers to filter out obvious non-nodules. Successively, a convolutional neural network trained with a balanced data set calculates nodule probabilities. The proposed method achieved the sensitivity of 92.4% and 94.5% at 4 and 8 false positives per scan in Free Receiver Operating Characteristics (FROC) curve analysis, respectively.
机译:肺结节分类是一类不平衡问题,因为发现结节斧的频率远低于非结节。在阶级不平衡的问题中,传统的分类器往往被多数派淹没,而忽略了少数派。因此,我们提出了级联卷积神经网络来解决类不平衡问题。在提出的方法中,多级卷积神经网络充当单面分类器,以过滤掉明显的非结节。随后,用平衡数据集训练的卷积神经网络计算结节概率。所提出的方法在自由接收器工作特性(FROC)曲线分析中,每次扫描4次和8次假阳性时分别获得92.4%和94.5%的灵敏度。

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