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A Novel Computer-Aided Lung Cancer Detection Method Based on Transfer Learning from GoogLeNet and Median Intensity Projections

机译:基于GoogLeNet转移学习和强度中值投影的新型计算机辅助肺癌检测方法

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In this research, a fast, accurate, and stable system of lung cancer detection based on novel deep learning techniques is proposed. A convolutional neural network (CNN) structure akin to that of GoogLeNet was built using a transfer learning approach. In contrast to previous studies, Median Intensity Projection (MIP) was employed to include multi-view features of three-dimensional computed tomography (CT) scans. The system was evaluated on the LIDC-IDRI public dataset of lung nodule images and 100-fold data augmentation was performed to ensure training efficiency. The trained system produced 81% accuracy, 84% sensitivity, and 78% specificity after 300 epochs, better than other available programs. In addition, a t-based confidence interval for the population mean of the validation accuracies verified that the proposed system would produce consistent results for multiple trials. Subsequently, a controlled variable experiment was performed to elucidate the net effects of two core factors of the system - fine-tuned GoogLeNet and MIPs - on its detection accuracy. Four treatment groups were set by training and testing fine-tuned GoogLeNet and Alexnet on MIPs and common 2D CT scans, respectively. It was noteworthy that MIPs improved the network's accuracy by 12.3%, and GoogLeNet outperformed Alexnet by 2%. Lastly, remote access to the GPU-based system was enabled through a web server, which allows long-distance management of the system and its future transition into a practical tool.
机译:在这项研究中,提出了一种基于新型深度学习技术的快速,准确和稳定的肺癌检测系统。使用迁移学习方法构建了类似于GoogLeNet的卷积神经网络(CNN)结构。与以前的研究相比,中值强度投影(MIP)被用来包括三维计算机断层扫描(CT)扫描的多视图特征。该系统在肺结节图像的LIDC-IDRI公共数据集上进行了评估,并进行了100倍的数据增强以确保训练效率。经过训练的系统在300个周期后产生了81%的准确度,84%的灵敏度和78%的特异性,比其他可用程序更好。另外,验证准确性的总体均值的基于t的置信区间验证了所提出的系统将为多次试验产生一致的结果。随后,进行了控制变量实验,以阐明系统的两个核心因素(微调的GoogLeNet和MIP)对其检测精度的净影响。通过分别在MIP和常见的2D CT扫描上训练和测试微调的GoogLeNet和Alexnet来设置四个治疗组。值得注意的是,MIP将网络的准确性提高了12.3%,而GoogLeNet则比Alexnet高出2%。最后,通过Web服务器启用了对基于GPU的系统的远程访问,该服务器允许对系统进行远程管理并将其将来转换为实用工具。

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