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Saliency-based 3D convolutional neural network for categorising common focal liver lesions on multisequence MRI.
Wang, Shu-Hui; Han, Xin-Jun; Du, Jing; Wang, Zhen-Chang; Yuan, Chunwang; Chen, Yinan; Zhu, Yajing; Dou, Xin; Xu, Xiao-Wei; Xu, Hui; Yang, Zheng-Han.
Affiliation
  • Wang SH; Department of Radiology, Beijing Friendship Hospital, Capital Medical University, No. 95 Yongan Road, Xicheng District, Beijing, 100050, People's Republic of China.
  • Han XJ; Department of Radiology, Weihai Municipal Hospital, Cheeloo College of Medicine, Shandong University, Weihai, Shandong Province, People's Republic of China.
  • Du J; Department of Radiology, Beijing Friendship Hospital, Capital Medical University, No. 95 Yongan Road, Xicheng District, Beijing, 100050, People's Republic of China.
  • Wang ZC; Department of Radiology, Beijing Friendship Hospital, Capital Medical University, No. 95 Yongan Road, Xicheng District, Beijing, 100050, People's Republic of China.
  • Yuan C; Department of Radiology, Beijing Friendship Hospital, Capital Medical University, No. 95 Yongan Road, Xicheng District, Beijing, 100050, People's Republic of China.
  • Chen Y; Center of Interventional Oncology and Liver Diseases, Beijing Youan Hospital, Capital Medical University, Beijing, People's Republic of China.
  • Zhu Y; SenseTime Research, SenseTime, Shanghai, People's Republic of China.
  • Dou X; WCH-SenseTime Joint Lab, SenseTime, Shanghai, Sichuan, People's Republic of China.
  • Xu XW; SenseTime Research, SenseTime, Shanghai, People's Republic of China.
  • Xu H; SenseBrain Technology, SenseTime, Princeton, NJ, 08540, USA.
  • Yang ZH; SenseTime Research, SenseTime, Shanghai, People's Republic of China.
Insights Imaging ; 12(1): 173, 2021 Nov 24.
Article in En | MEDLINE | ID: mdl-34817732
BACKGROUND: The imaging features of focal liver lesions (FLLs) are diverse and complex. Diagnosing FLLs with imaging alone remains challenging. We developed and validated an interpretable deep learning model for the classification of seven categories of FLLs on multisequence MRI and compared the differential diagnosis between the proposed model and radiologists. METHODS: In all, 557 lesions examined by multisequence MRI were utilised in this retrospective study and divided into training-validation (n = 444) and test (n = 113) datasets. The area under the receiver operating characteristic curve (AUC) was calculated to evaluate the performance of the model. The accuracy and confusion matrix of the model and individual radiologists were compared. Saliency maps were generated to highlight the activation region based on the model perspective. RESULTS: The AUC of the two- and seven-way classifications of the model were 0.969 (95% CI 0.944-0.994) and from 0.919 (95% CI 0.857-0.980) to 0.999 (95% CI 0.996-1.000), respectively. The model accuracy (79.6%) of the seven-way classification was higher than that of the radiology residents (66.4%, p = 0.035) and general radiologists (73.5%, p = 0.346) but lower than that of the academic radiologists (85.4%, p = 0.291). Confusion matrices showed the sources of diagnostic errors for the model and individual radiologists for each disease. Saliency maps detected the activation regions associated with each predicted class. CONCLUSION: This interpretable deep learning model showed high diagnostic performance in the differentiation of FLLs on multisequence MRI. The analysis principle contributing to the predictions can be explained via saliency maps.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Observational_studies / Prognostic_studies / Risk_factors_studies Language: En Journal: Insights Imaging Year: 2021 Document type: Article Country of publication: Germany

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Observational_studies / Prognostic_studies / Risk_factors_studies Language: En Journal: Insights Imaging Year: 2021 Document type: Article Country of publication: Germany