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A knowledge-enhanced interpretable network for early recurrence prediction of hepatocellular carcinoma via multi-phase CT imaging.
Gao, Yu; Yang, Xue; Li, Hongjun; Ding, Da-Wei.
Affiliation
  • Gao Y; School of Automation and Electrical Engineering, University of Science and Technology Beijing, Beijing 100083, China; Key Laboratory of Knowledge Automation for Industrial Processes, Ministry of Education, Beijing 100083, China.
  • Yang X; First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan 450052, China; Department of Radiology, Beijing Youan Hospital, Capital Medical University, Beijing 100069, China.
  • Li H; Department of Radiology, Beijing Youan Hospital, Capital Medical University, Beijing 100069, China. Electronic address: lihongjun00113@ccmu.edu.cn.
  • Ding DW; School of Automation and Electrical Engineering, University of Science and Technology Beijing, Beijing 100083, China; Key Laboratory of Knowledge Automation for Industrial Processes, Ministry of Education, Beijing 100083, China. Electronic address: ddaweiauto@163.com.
Int J Med Inform ; 189: 105509, 2024 Sep.
Article in En | MEDLINE | ID: mdl-38851131
ABSTRACT

BACKGROUND:

Predicting early recurrence (ER) of hepatocellular carcinoma (HCC) accurately can guide treatment decisions and further enhance survival. Computed tomography (CT) imaging, analyzed by deep learning (DL) models combining domain knowledge, has been employed for the prediction. However, these DL models utilized late fusion, restricting the interaction between domain knowledge and images during feature extraction, thereby limiting the prediction performance and compromising decision-making interpretability.

METHODS:

We propose a novel Vision Transformer (ViT)-based DL network, referred to as Dual-Style ViT (DSViT), to augment the interaction between domain knowledge and images and the effective fusion among multi-phase CT images for improving both predictive performance and interpretability. We apply the DSViT to develop pre-/post-operative models for predicting ER. Within DSViT, to balance the utilization between domain knowledge and images within DSViT, we propose an adaptive self-attention mechanism. Moreover, we present an attention-guided supervised learning module for balancing the contributions of multi-phase CT images to prediction and a domain knowledge self-supervision module for enhancing the fusion between domain knowledge and images, thereby further improving predictive performance. Finally, we provide the interpretability of the DSViT decision-making.

RESULTS:

Experiments on our multi-phase data demonstrate that DSViTs surpass the existing models across multiple performance metrics and provide the decision-making interpretability. Additional validation on a publicly available dataset underscores the generalizability of DSViT.

CONCLUSIONS:

The proposed DSViT can significantly improve the performance and interpretability of ER prediction, thereby fortifying the trustworthiness of artificial intelligence tool for HCC ER prediction in clinical settings.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Tomography, X-Ray Computed / Carcinoma, Hepatocellular / Deep Learning / Liver Neoplasms / Neoplasm Recurrence, Local Limits: Humans Language: En Journal: Int J Med Inform Year: 2024 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Tomography, X-Ray Computed / Carcinoma, Hepatocellular / Deep Learning / Liver Neoplasms / Neoplasm Recurrence, Local Limits: Humans Language: En Journal: Int J Med Inform Year: 2024 Document type: Article