Deep learning with test-time augmentation for radial endobronchial ultrasound image differentiation: a multicentre verification study

被引:1
|
作者
Yu, Kai-Lun [1 ,2 ]
Tseng, Yi-Shiuan [3 ]
Yang, Han-Ching [1 ]
Liu, Chia-Jung [1 ]
Kuo, Po-Chih [3 ]
Lee, Meng-Rui [4 ]
Huang, Chun-Da [4 ]
Kuo, Lu-Cheng [4 ]
Wang, Jann-Yuan [4 ]
Ho, Chao-Chi [4 ]
Shih, Jin-Yuan [2 ,4 ]
Yu, Chong-Jen [1 ,4 ]
机构
[1] Natl Taiwan Univ Hosp, Dept Internal Med, Hsin Chu Branch, Hsinchu, Taiwan
[2] Natl Taiwan Univ, Grad Inst Clin Med, Coll Med, Taipei, Taiwan
[3] Natl Tsing Hua Univ, Dept Comp Sci, Hsinchu, Taiwan
[4] Natl Taiwan Univ Hosp, Dept Internal Med, Taipei, Taiwan
关键词
bronchoscopy; lung cancer; PERIPHERAL PULMONARY-LESIONS; LUNG-CANCER TREATMENT; TRANSBRONCHIAL BIOPSY; DIAGNOSIS;
D O I
10.1136/bmjresp-2022-001602
中图分类号
R56 [呼吸系及胸部疾病];
学科分类号
摘要
PurposeDespite the importance of radial endobronchial ultrasound (rEBUS) in transbronchial biopsy, researchers have yet to apply artificial intelligence to the analysis of rEBUS images. Materials and methodsThis study developed a convolutional neural network (CNN) to differentiate between malignant and benign tumours in rEBUS images. This study retrospectively collected rEBUS images from medical centres in Taiwan, including 769 from National Taiwan University Hospital Hsin-Chu Branch, Hsinchu Hospital for model training (615 images) and internal validation (154 images) as well as 300 from National Taiwan University Hospital (NTUH-TPE) and 92 images were obtained from National Taiwan University Hospital Hsin-Chu Branch, Biomedical Park Hospital (NTUH-BIO) for external validation. Further assessments of the model were performed using image augmentation in the training phase and test-time augmentation (TTA). ResultsUsing the internal validation dataset, the results were as follows: area under the curve (AUC) (0.88 (95% CI 0.83 to 0.92)), sensitivity (0.80 (95% CI 0.73 to 0.88)), specificity (0.75 (95% CI 0.66 to 0.83)). Using the NTUH-TPE external validation dataset, the results were as follows: AUC (0.76 (95% CI 0.71 to 0.80)), sensitivity (0.58 (95% CI 0.50 to 0.65)), specificity (0.92 (95% CI 0.88 to 0.97)). Using the NTUH-BIO external validation dataset, the results were as follows: AUC (0.72 (95% CI 0.64 to 0.82)), sensitivity (0.71 (95% CI 0.55 to 0.86)), specificity (0.76 (95% CI 0.64 to 0.87)). After fine-tuning, the AUC values for the external validation cohorts were as follows: NTUH-TPE (0.78) and NTUH-BIO (0.82). Our findings also demonstrated the feasibility of the model in differentiating between lung cancer subtypes, as indicated by the following AUC values: adenocarcinoma (0.70; 95% CI 0.64 to 0.76), squamous cell carcinoma (0.64; 95% CI 0.54 to 0.74) and small cell lung cancer (0.52; 95% CI 0.32 to 0.72). ConclusionsOur results demonstrate the feasibility of the proposed CNN-based algorithm in differentiating between malignant and benign lesions in rEBUS images.
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页数:9
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