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Abstrakty
Chronic obstructive pulmonary disease (COPD) is a complex and multi-component respiratory disease. Computed tomography (CT) images can characterize lesions in COPD patients, but the image intensity and morphology of lung components have not been fully exploited. Two datasets (Dataset 1 and 2) comprising a total of 561 subjects were obtained from two centers. A multiple instance learning (MIL) method is proposed for COPD identification. First, randomly selected slices (instances) from CT scans and multi-view 2D snapshots of the 3D airway tree and lung field extracted from CT images are acquired. Then, three attention-guided MIL models (slice-CT, snapshot-airway, and snapshot-lung-field models) are trained. In these models, a deep convolution neural network (CNN) is utilized for feature extraction. Finally, the outputs of the above three MIL models are combined using logistic regression to produce the final prediction. For Dataset 1, the accuracy of the slice-CT MIL model with 20 instances was 88.1%. The backbone of VGG-16 outperformed Alexnet, Resnet18, Resnet26, and Mobilenet_v2 in feature extraction. The snapshotairway and snapshot-lung-field MIL models achieved accuracies of 89.4% and 90.0%, respectively. After the three models were combined, the accuracy reached 95.8%. The proposed model outperformed several state-of-the-art methods and afforded an accuracy of 83.1% for the external dataset (Dataset 2). The proposed weakly supervised MIL method is feasible for COPD identification. The effective CNN module and attention-guided MIL pooling module contribute to performance enhancement. The morphology information of the airway and lung field is beneficial for identifying COPD.
Wydawca
Czasopismo
Rocznik
Tom
Strony
568--585
Opis fizyczny
Bibliogr. 87 poz., rys., tab., wykr.
Twórcy
autor
- College of Medicine and Biological Information Engineering, Northeastern University, Shenyang, China
- Key Laboratory of Intelligent Computing in Medical Image, Ministry of Education, Northeastern University, Shenyang, China
autor
- College of Medicine and Biological Information Engineering, Northeastern University, Shenyang, China
- Key Laboratory of Intelligent Computing in Medical Image, Ministry of Education, Northeastern University, Shenyang, China
autor
- School of Chemical Equipment, Shenyang University of Technology, Liaoyang, China
autor
- College of Medicine and Biological Information Engineering, Northeastern University, Shenyang, China
- Key Laboratory of Intelligent Computing in Medical Image, Ministry of Education, Northeastern University, Shenyang, China
autor
- College of Medicine and Biological Information Engineering, Northeastern University, Shenyang, China
- Key Laboratory of Intelligent Computing in Medical Image, Ministry of Education, Northeastern University, Shenyang, China
autor
- College of Medicine and Biological Information Engineering, Northeastern University, Shenyang, China
- Department of Radiology, General Hospital of Northern Theater Command, Shenyang, China
autor
- Graduate School, Dalian Medical University, Dalian, China
- Department of Respiratory, the Second Affiliated Hospital of Dalian Medical University, Dalian, China
autor
- Graduate School, Dalian Medical University, Dalian, China
- Respiratory Department, Central Hospital Affiliated to Shenyang Medical College, Shenyang, China
autor
- Respiratory Department, Central Hospital Affiliated to Shenyang Medical College, Shenyang, China
autor
- College of Medicine and Biological Information Engineering, Northeastern University, Shenyang, China
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Bibliografia
Identyfikator YADDA
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