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Towards Deep Radiomics: Nodule Malignancy Prediction Using CNNs on Feature Images

机译:朝向深度辐射测定:在特征图像上使用CNNS结节恶性预测

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Lung cancer is a leading cause of cancer-related death worldwide and in the USA. Low Dose Computed tomography (LDCT) is the primary method of detection and diagnosis of lung cancers. Radiomics provides further analysis using LDCT scans which provide an opportunity for early detection and diagnosis of lung cancers. The convolutional neural network (CNN), a powerful method for image classification and recognition, has opened an alternative path for tumor identification and detection from LDCT scans. Nodules have different shapes, boundaries or patterns. In this study, we created feature images from different texture features of nodules and then used a CNN to classify each of the feature images. We call this approach "Deep Radiomics". Law's 3-D texture images were used for our analysis. Ten Law's texture images were generated and used to train an ensemble of CNNs. Texture provides information about how an image looks. The use of feature images as CNN input is a novel approach to enable the generation and extraction of new types of features and lends itself to ensemble generation. From the LDCT arm of the national lung cancer screening study (NLST) dataset, a subset of nodule positive and screen-detected lung cancer (SDLC) cases were used in our study. The best result obtained from this study was 79.32% accuracy and 0.88 AUC, which is an improvement in accuracy over using just image features or just original images as input to CNNs for classification.
机译:肺癌是全世界癌症相关死亡的主要原因。低剂量计算断层扫描(LDCT)是肺癌检测和诊断的主要方法。辐射瘤提供了使用LDCT扫描的进一步分析,这为早期检测和诊断肺癌提供了机会。卷积神经网络(CNN),用于图像分类和识别的强大方法,已经开启了肿瘤识别和从LDCT扫描检测的替代路径。结节具有不同的形状,边界或模式。在本研究中,我们创建了来自结节的不同纹理特征的特征图像,然后使用CNN来对每个特征图像进行分类。我们称之为“深度辐射族”方法。法律的3-D纹理图像用于我们的分析。生成十种法律的纹理图像并用于培训CNN的集合。纹理提供有关图像如何外观的信息。使用特征图像作为CNN输入是一种新颖的方法,可以实现新类型的功能,并将其自身带到集合生成。来自国家肺癌筛查研究(NLST)数据集的LDCT ARM,我们的研究中使用了结节阳性和筛选肺癌(SDLC)病例的子集。从本研究中获得的最佳结果是79.32%的精度和0.88 AUC,这是使用Just Image特征的准确性或仅作为输入到CNN的输入来改进。

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