首页> 外文会议>SPIE Conference on Computer-Aided Diagnosis >Deep neural network convolution (NNC) for three-class classification of diffuse lung disease opacities in high-resolution CT (HRCT): Consolidation, ground-glass opacity (GGO), and normal opacity
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Deep neural network convolution (NNC) for three-class classification of diffuse lung disease opacities in high-resolution CT (HRCT): Consolidation, ground-glass opacity (GGO), and normal opacity

机译:深度神经网络卷积(NNC)对于高分辨率CT(HRCT)弥漫性肺病的三类分类:固结,地玻璃不透明度(GGO)和正常不透明度

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Consolidation and ground-glass opacity (GGO) are two major types of opacities associated with diffuse lung diseases. Accurate detection and classification of such opacities are crucially important in the diagnosis of lung diseases, but the process is subjective, and suffers from interobserver variability. Our study purpose was to develop a deep neural network convolution (NNC) system for distinguishing among consolidation, GGO, and normal lung tissue in high-resolution CT (HRCT). We developed ensemble of two deep NNC models, each of which was composed of neural network regression (NNR) with an input layer, a convolution layer, a fully-connected hidden layer, and a fully-connected output layer followed by a thresholding layer. The output layer of each NNC provided a map for the likelihood of being each corresponding lung opacity of interest. The two NNC models in the ensemble were connected in a class-selection layer. We trained our NNC ensemble with pairs of input 2D axial slices and "teaching" probability maps for the corresponding lung opacity, which were obtained by combining three radiologists' annotations. We randomly selected 10 and 40 slices from HRCT scans of 172 patients for each class as a training and test set, respectively. Our NNC ensemble achieved an area under the receiver-operating-characteristic (ROC) curve (AUC) of 0.981 and 0.958 in distinction of consolidation and GGO, respectively, from normal opacity, yielding a classification accuracy of 93.3% among 3 classes. Thus, our deep-NNC-based system for classifying diffuse lung diseases achieved high accuracies for classification of consolidation, GGO, and normal opacity.
机译:合并和磨削玻璃不透明度(GGO)是与弥漫性肺病相关的两种主要类型的不透明度。在肺病的诊断中,这种不透明度的准确检测和分类对于肺病的诊断至关重要,但该过程是主观的,并且遭受Interobserver变异性。我们的研究目的是开发一种深度神经网络卷积(NNC)系统,用于区分高分辨率CT(HRCT)的固结,GGO和正常肺组织。我们开发了两个深NNC型号的集合,每个模型由内部网络回归(NNR)组成,其中输入层,卷积层,完全连接的隐藏层和完全连接的输出层后跟阈值层。每个NNC的输出层提供了一种地图,用于每个感兴趣的每个相应的肺不透明度的可能性。合奏中的两个NNC模型在类选择层中连接。我们用对相应的肺不透明度的对输入2D轴向切片和“教学”概率图培训了我们的NNC集合,通过组合三位放射科学家的注释来获得。我们分别随机选择了来自172名患者的HRCT扫描的10和40片作为培训和测试集。我们的NNC集合在分别从正常不透明度分别在0.981和0.958的接收器 - 工作特征(ROC)曲线(AUC)的一个区域,分别从正常的不透明度,在3个课程中产生93.3%的分类准确性。因此,我们的深度基于NNC的分类系统,用于分类弥漫性肺部疾病的分类,用于固结,GGO和正常不透明度的分类。

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