卷积神经网络在早期肺结节分类中的高效超参数优化

Lucas L. Lima, J. Ferreira, M. C. Oliveira
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引用次数: 7

摘要

肺癌是癌症死亡的主要原因,约占所有癌症相关死亡的20%。早期诊断的患者1年生存率为81-85%,而晚期患者的生存率为15-19%。因此,早期诊断肺癌是非常必要的,无论是恶性还是良性,此时的结节还很小,但即使是经验丰富的专家,这也是一项复杂的任务,并且存在一些挑战。为了协助专家,计算机辅助诊断系统已被用于提高诊断的准确性。在本文中,我们利用超参数调谐技术来寻找卷积神经网络的最佳架构,以分类直径为5-10mm的小肺结节。最佳结果为错误率为12%,灵敏度为94%,特异性为83%,准确度为88%,F-measure为89%
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Efficient Hyperparameter Optimization of Convolutional Neural Networks on Classification of Early Pulmonary Nodules
Lung cancer is the leading cause of cancer mortality, accounting for approximately 20% of all cancer-related deaths. Patients diagnosed in the early stages have a 1-year survival rate of 81-85% while in an advanced stage have 15-19% chances of survival. Therefore, it is very necessary to diagnose lung cancer in early stages in malignant or benign, when the nodules are still very small, but it is a complex task even for experienced specialists and presents some challenges. To assist specialists, computer-aided diagnosis systems have been used to improve the accuracy in the diagnosis. In this paper, we exploit the use of a technique of hyperparameter tuning to find the best architecture of a Convolutional Neural Network to classify small pulmonary nodules balanced with diameter 5-10mm. The best results achieved were an error rate of 12%, sensitivity of 94%, specificity of 83%, accuracy of 88% and F-measure of 89%
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