Abstract

The 3D convolutional neural network (CNN) is able to make full use of the spatial 3D context information of lung nodules, and the multi-view strategy has been shown to be useful for improving the performance of 2D CNN in classifying lung nodules. In this paper, we explore the classification of lung nodules using the 3D multi-view convolutional neural networks (MV-CNN) with both chain architecture and directed acyclic graph architecture, including 3D Inception and 3D Inception-ResNet. All networks employ the multi-view-one-network strategy. We conduct a binary classification (benign and malignant) and a ternary classification (benign, primary malignant and metastatic malignant) on Computed Tomography (CT) images from Lung Image Database Consortium and Image Database Resource Initiative database (LIDC-IDRI). All results are obtained via 10-fold cross validation. As regards the MV-CNN with chain architecture, results show that the performance of 3D MV-CNN surpasses that of 2D MV-CNN by a significant margin. Finally, a 3D Inception network achieved an error rate of 4.59% for the binary classification and 7.70% for the ternary classification, both of which represent superior results for the corresponding task. We compare the multi-view-one-network strategy with the one-view-one-network strategy. The results reveal that the multi-view-one-network strategy can achieve a lower error rate than the one-view-one-network strategy.

Highlights

  • We explore the classification of lung nodules using the 3D multi-view convolutional neural networks (MV-CNN) with both chain architecture and directed acyclic graph architecture, including 3D Inception and 3D Inception-ResNet

  • We investigate empirically the challenge of classifying lung nodules captured by computed tomography (CT) in an end-to-end manner using the 3D multi-view convolutional neural networks (MV-CNN), and conduct a binary classification and a ternary classification on Computed Tomography (CT) images from the Lung Image Database Consortium image collection (LIDC-IDRI)

  • We conducted two classification tasks: 1.) the binary classification, in which nodules are divided into benign and malignant, and 2.) the ternary classification, in which nodules are divided into benign, primary malignant and metastatic malignant

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Summary

Objectives

We aim to investigate the effect of this model on the automatic detection of lung nodules in CT combined with object detection techniques

Methods
Findings
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Conclusion
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