4.6 Article

PAM-DenseNet: A Deep Convolutional Neural Network for Computer-Aided COVID-19 Diagnosis

Journal

IEEE TRANSACTIONS ON CYBERNETICS
Volume 52, Issue 11, Pages 12163-12174

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2020.3042837

Keywords

Computed tomography; COVID-19; Lung; Pulmonary diseases; Feature extraction; Predictive models; Sensitivity; Computer-aided diagnosis; convolutional neural network (CNN); coronavirus disease 2019 (COVID-19); lung computed tomography (CT) scans

Funding

  1. National Key Research and Development Project [2016YFC1000307-3, 2019YFE0110800]
  2. National Natural Science Foundation of China [61976031]
  3. Chongqing Research Program of Application Foundation Advanced Technology [cstc2018jcyjAX0117]
  4. Scientific Technological Key Research Program of Chongqing Municipal Education Commission [KJZD-K201800601]

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The article introduces a CNN called PAM-DenseNet with a parallel attention module, which performs well without manually delineated infection regions. By utilizing dense connectivity structure and parallel attention module, the network can extract representative features effectively and make predictions on CT slices.
Currently, several convolutional neural network (CNN)-based methods have been proposed for computer-aided COVID-19 diagnosis based on lung computed tomography (CT) scans. However, the lesions of pneumonia in CT scans have wide variations in appearances, sizes, and locations in the lung regions, and the manifestations of COVID-19 in CT scans are also similar to other types of viral pneumonia, which hinders the further improvement of CNN-based methods. Delineating infection regions manually is a solution to this issue, while excessive workload of physicians during the epidemic makes it difficult for manual delineation. In this article, we propose a CNN called dense connectivity network with parallel attention module (PAM-DenseNet), which can perform well on coarse labels without manually delineated infection regions. The parallel attention module automatically learns to strengthen informative features from both channelwise and spatialwise simultaneously, which can make the network pay more attention to the infection regions without any manual delineation. The dense connectivity structure performs feature maps reuse by introducing direct connections from previous layers to all subsequent layers, which can extract representative features from fewer CT slices. The proposed network is first trained on 3530 lung CT slices selected from 382 COVID-19 lung CT scans, 372 lung CT scans infected by other pneumonia, and 200 normal lung CT scans to obtain a pretrained model for slicewise prediction. We then apply this pretrained model to a CT scans dataset containing 94 COVID-19 CT scans, 93 other pneumonia CT scans, and 93 normal lung scans, and achieve patientwise prediction through a voting mechanism. The experimental results show that the proposed network achieves promising results with an accuracy of 94.29%, a precision of 93.75%, a sensitivity of 95.74%, and a specificity of 96.77%, which is comparable to the methods that are based on manually delineated infection regions.

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