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首页> 外文期刊>Computers in Biology and Medicine >Automatic feature learning using multichannel ROI based on deep structured algorithms for computerized lung cancer diagnosis
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Automatic feature learning using multichannel ROI based on deep structured algorithms for computerized lung cancer diagnosis

机译:基于深层结构化算法的计算机化肺癌诊断,使用多通道ROI自动特征学习

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Abstract This study aimed to analyze the ability of extracting automatically generated features using deep structured algorithms in lung nodule CT image diagnosis, and compare its performance with traditional computer aided diagnosis (CADx) systems using hand-crafted features. All of the 1018 cases were acquired from Lung Image Database Consortium (LIDC) public lung cancer database. The nodules were segmented according to four radiologists’ markings, and 13,668 samples were generated by rotating every slice of nodule images. Three multichannel ROI based deep structured algorithms were designed and implemented in this study: convolutional neural network (CNN), deep belief network (DBN), and stacked denoising autoencoder (SDAE). For the comparison purpose, we also implemented a CADx system using hand-crafted features including density features, texture features and morphological features. The performance of every scheme was evaluated by using a 10-fold cross-validation method and an assessment index of the area under the receiver operating characteristic curve (AUC). The observed highest area under the curve (AUC) was 0.899±0.018 achieved by CNN, which was significantly higher than traditional CADx with the AUC=0.848±0.026. The results from DBN was also slightly higher than CADx, while SDAE was slightly lower. By visualizing the automatic generated features, we found some meaningful detectors like curvy stroke detectors from deep structured schemes. The study results showed the deep structured algorithms with automatically generated features can achieve desirable performance in lung nodule diagnosis. With well-tuned parameters and large enough dataset, the deep learning algorithms can have better performance than current popular CADx. We believe the deep learning algorithms with similar data preprocessing procedure can be used in other medical image analysis areas as well.
机译:摘要本研究旨在通过肺结核CT图像诊断中的深层结构化算法来分析自动产生的功能的能力,并使用手工制作功能与传统计算机辅助诊断(CADX)系统的性能进行比较。 1018例中的所有患者都是从肺部图像数据库联盟(LIDC)公共肺癌数据库中的所有1018例。根据四个放射科学家的标记进行结节,通过旋转每片Nodule图像产生13,668个样品。本研究设计和实施了三种多通道ROI的深层结构化算法:卷积神经网络(CNN),深度信仰网络(DBN)和堆叠的去噪AutoEncoder(SDAE)。为了比较目的,我们还使用手工制作的功能实现了CADX系统,包括密度特征,纹理特征和形态特征。通过使用10倍的交叉验证方法和接收器操作特征曲线(AUC)下区域的评估指数来评估每个方案的性能。 CNN曲线(AUC)下观察到的最高面积为0.899±0.018,其CNN显着高于AUC = 0.848±0.026的传统CADX。 DBN的结果也略高于CADX,而SDAE略低。通过可视化自动产生的功能,我们发现一些有意义的探测器,如来自深层结构化方案的曲线笔划探测器。研究结果表明,具有自动产生的特征的深层结构化算法可以在肺结节诊断中实现所需的性能。通过调整良好的参数和足够大的数据集,深度学习算法可以具有比当前流行的CADX更好的性能。我们相信具有类似数据预处理程序的深度学习算法也可用于其他医学图像分析区域。

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