Abstract
To improve the detection rate of pulmonary nodules in early lung cancer
screening, a low-dose CT pulmonary nodule detection algorithm based on
3D CNN-CapsNet (3D convolution neural network and capsule network) was
presented. However, the convolution kernel size of the traditional CNN
is relatively simple at each layer, and it is difficult to obtain more
abundant features, which is not effective for medical images with a
hierarchical structure and does not fully consider the spatial
information of medical sequence data. CapsNet is a new network
architecture that can be used to classify, using a group of neurons as a
capsule to replace the traditional neural networks, it may be made to
the attribute information and spatial feature extraction. The network
structure we designed includes FCN and CapsNet. First, the convolution
kernels of different sizes are used to extract features at different
scales. Then enter the initial feature map to obtain the first part into
the designed CapsNet to get the final classification result. Through the
experimental verification of the ELCAP database, the nodule detection
rate is 95.19%, the sensitivity is 92.31%, the specificity is 98.08%
and the F1-score is 0.95 which are much better than other baseline
methods.