4.8 Article

SANet: A Slice-Aware Network for Pulmonary Nodule Detection

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2021.3065086

关键词

Lung; Three-dimensional displays; Computed tomography; Two dimensional displays; Feature extraction; Proposals; Object detection; Pulmonary nodule detection; nodule dataset; slice grouped non-local; false positive reduction

资金

  1. Major Project for New Generation of AI [2018AAA0100400]
  2. NSFC [61922046]
  3. S&T innovation project from Chinese Ministry of Education
  4. Tianjin Natural Science Foundation [18ZXZNGX00110]

向作者/读者索取更多资源

Lung cancer is the most common cause of cancer death globally, and timely diagnosis of pulmonary nodules is crucial for early detection of lung cancer. This study collected the largest dataset PN9 for pulmonary nodule detection and proposed a slice-aware network (SANet) with effective false positive reduction and high sensitivity in candidate generation. Evaluation on PN9 proves the effectiveness of SANet in lung nodule detection.
Lung cancer is the most common cause of cancer death worldwide. A timely diagnosis of the pulmonary nodules makes it possible to detect lung cancer in the early stage, and thoracic computed tomography (CT) provides a convenient way to diagnose nodules. However, it is hard even for experienced doctors to distinguish them from the massive CT slices. The currently existing nodule datasets are limited in both scale and category, which is insufficient and greatly restricts its applications. In this paper, we collect the largest and most diverse dataset named PN9 for pulmonary nodule detection by far. Specifically, it contains 8,798 CT scans and 40,439 annotated nodules from 9 common classes. We further propose a slice-aware network (SANet) for pulmonary nodule detection. A slice grouped non-local (SGNL) module is developed to capture long-range dependencies among any positions and any channels of one slice group in the feature map. And we introduce a 3D region proposal network to generate pulmonary nodule candidates with high sensitivity, while this detection stage usually comes with many false positives. Subsequently, a false positive reduction module (FPR) is proposed by using the multi-scale feature maps. To verify the performance of SANet and the significance of PN9, we perform extensive experiments compared with several state-of-the-art 2D CNN-based and 3D CNN-based detection methods. Promising evaluation results on PN9 prove the effectiveness of our proposed SANet. The dataset and source code is available at https://mmcheng.net/SANet/.

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