Abstract

Automatic lung cancer diagnosis from computer tomography (CT) images requires the detection of nodule location as well as nodule malignancy prediction. This article proposes a joint lung nodule detection and classification network for simultaneous lung nodule detection, segmentation and classification subject to possible label uncertainty in the training set. It operates in an end-to-end manner and provides detection and classification of nodules simultaneously together with a segmentation of the detected nodules. Both the nodule detection and classification subnetworks of the proposed joint network adopt a 3-D encoder-decoder architecture for better exploration of the 3-D data. Moreover, the classification subnetwork utilizes the features extracted from the detection subnetwork and multiscale nodule-specific features for boosting the classification performance. The former serves as valuable prior information for optimizing the more complicated 3D classification network directly to better distinguish suspicious nodules from other tissues compared with direct backpropagation from the decoder. Experimental results show that this co-training yields better performance on both tasks. The framework is validated on the LUNA16 and LIDC-IDRI datasets and a pseudo-label approach is proposed for addressing the label uncertainty problem due to inconsistent annotations/labels. Experimental results show that the proposed nodule detector outperforms the state-of-the-art algorithms and yields comparable performance as state-of-the-art nodule classification algorithms when classification alone is considered. Since our joint detection/recognition approach can directly detect nodules and classify its malignancy instead of performing the tasks separately, our approach is more practical for automatic cancer and nodules detection.

Highlights

  • Lung cancer is the primary cause of cancer deaths worldwide

  • NODULE DETECTION We first evaluate the performance of the nodule detection performance of our joint nodule segmentation/recognition (JNSC) and other state-of-the-art algorithms on the Lung Nodule Analysis 2016 (LUNA16) dataset

  • The region proposals can be extracted from the labelled map, and the center is calculated by the centre of mass of the proposed regions

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Summary

Introduction

Lung cancer is the primary cause of cancer deaths worldwide. The 2018 Global Cancer Statistics [1] shows that there are approximately 1.8 million deaths and 2.1 million new cancer cases caused by lung cancer, ranking first among other cancers. Diagnosis of a small tumor can prevent metastasis of cancer and substantially improves the prognosis and survival rate [2]. The development of an intelligent computer-aided diagnosis system (CADS) can be beneficial to the early treatment of lung cancer. The volumetric thoracic computed tomography (CT) is the most commonly used imaging technique for lung scan [3], The associate editor coordinating the review of this manuscript and approving it for publication was Essam A.

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