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Balance the nodule shape and surroundings: a new artificial multichannel image based convolutional neural network scheme on lung nodule diagnosis

机译:平衡结节的形状和周围环境:一种新的基于人工多通道图像的卷积神经网络方案,用于肺结节的诊断

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Deep learning is a trending promising method in medical image analysis area, but how to efficiently prepare the input image for the deep learning algorithms remains a challenge. In this paper, we introduced a novel artificial multichannel region of interest (ROI) generation procedure for convolutional neural networks (CNN). From LIDC database, we collected 54880 benign nodule samples and 59848 malignant nodule samples based on the radiologists' annotations. The proposed CNN consists of three pairs of convolutional layers and two fully connected layers. For each original ROI, two new ROIs were generated: one contains the segmented nodule which highlighted the nodule shape, and the other one contains the gradient of the original ROI which highlighted the textures. By combining the three channel images into a pseudo color ROI, the CNN was trained and tested on the new multichannel ROIs (multichannel ROI II). For the comparison, we generated another type of multichannel image by replacing the gradient image channel with a ROI contains whitened background region (multichannel ROI I). With the 5-fold cross validation evaluation method, the CNN using multichannel ROI II achieved the ROI based area under the curve (AUC) of 0.8823±0.0177, compared to the AUC of 0.8484±0.0204 generated by the original ROI. By calculating the average of ROI scores from one nodule, the lesion based AUC using multichannel ROI was 0.8793±0.0210. By comparing the convolved features maps from CNN using different types of ROIs, it can be noted that multichannel ROI II contains more accurate nodule shapes and surrounding textures.
机译:深度学习是医学图像分析领域中一种有前途的有前途的方法,但是如何有效地为深度学习算法准备输入图像仍然是一个挑战。在本文中,我们介绍了一种用于卷积神经网络(CNN)的新型人工多通道感兴趣区域(ROI)生成过程。从LIDC数据库中,我们根据放射科医生的注释收集了54880个良性结节样本和59848个恶性结节样本。提出的CNN由三对卷积层和两个完全连接的层组成。对于每个原始ROI,都会生成两个新的ROI:一个包含分段结节,突出显示结节的形状,另一个包含原始ROI的渐变,突出显示纹理。通过将三个通道图像合并为伪彩色ROI,CNN在新的多通道ROI(多通道ROI II)上进行了培训和测试。为了进行比较,我们通过将梯度图像通道替换为包含白色背景区域的ROI(多通道ROI I)来生成另一种类型的多通道图像。使用5倍交叉验证评估方法,使用多通道ROI II的CNN达到了基于曲线下的基于ROI的面积(AUC)为0.8823±0.0177,相比之下,原始ROI生成的AUC为0.8484±0.0204。通过计算一个结节的ROI平均值,使用多通道ROI的基于病变的AUC为0.8793±0.0210。通过使用不同类型的ROI比较来自CNN的卷积特征图,可以注意到,多通道ROI II包含更准确的结节形状和周围纹理。

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