LSSANet: A Long Short Slice-Aware Network for Pulmonary Nodule Detection
- URL: http://arxiv.org/abs/2208.02122v1
- Date: Wed, 3 Aug 2022 14:57:42 GMT
- Title: LSSANet: A Long Short Slice-Aware Network for Pulmonary Nodule Detection
- Authors: Rui Xu, Yong Luo, Bo Du, Kaiming Kuang, Jiancheng Yang
- Abstract summary: We propose a long short slice-aware network (LSSANet) for the detection of pulmonary nodules.
In particular, we develop a new non-local mechanism termed long short slice grouping (LSSG)
This not only reduces the computational burden, but also keeps long-range dependencies among any elements across slices.
- Score: 38.92730845107276
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Convolutional neural networks (CNNs) have been demonstrated to be highly
effective in the field of pulmonary nodule detection. However, existing CNN
based pulmonary nodule detection methods lack the ability to capture long-range
dependencies, which is vital for global information extraction. In computer
vision tasks, non-local operations have been widely utilized, but the
computational cost could be very high for 3D computed tomography (CT) images.
To address this issue, we propose a long short slice-aware network (LSSANet)
for the detection of pulmonary nodules. In particular, we develop a new
non-local mechanism termed long short slice grouping (LSSG), which splits the
compact non-local embeddings into a short-distance slice grouped one and a
long-distance slice grouped counterpart. This not only reduces the
computational burden, but also keeps long-range dependencies among any elements
across slices and in the whole feature map. The proposed LSSG is easy-to-use
and can be plugged into many pulmonary nodule detection networks. To verify the
performance of LSSANet, we compare with several recently proposed and
competitive detection approaches based on 2D/3D CNN. Promising evaluation
results on the large-scale PN9 dataset demonstrate the effectiveness of our
method. Code is at https://github.com/Ruixxxx/LSSANet.
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