Systematic comparison of deep-learning based fusion strategies for multi-modal ultrasound in diagnosis of liver cancer

Ming De Li, Wei Li, Man Xia Lin, Xin Xin Lin, Hang Tong Hu, Ying Chen Wang, Si Min Ruan, Ze Rong Huang, Rui Fang Lu, Lv Li, Ming Kuang, Ming De Lu, Li Da Chen, Wei Wang, Qing hua Huang

Research output: Contribution to journalArticlepeer-review

8 Scopus citations

Abstract

For the diagnosis of liver cancer, conventional brightness mode (B-mode) can only provide morphological information. Multi-modal ultrasound, including shear-wave elastography (SWE) and contrast enhanced ultrasound (CEUS), can provide comprehensive diagnostic information on tumor microenvironment and tissue perfusion. The challenge is to effectively explore the multi-modal features of ultrasound. Besides, there are many fusion strategies currently available, but there is a lack of systematic comparative research on the various fusion strategies. In this study, we designed 'Lesions Pairing' to construct the dataset, addressing the challenge of small sample sizes in multi-modal learning. We then compared the effectiveness of different strategies and proposed hybrid-fusion strategies based on the combination of conventional layer-level fusion (i.e. early-fusion, mid-fusion and late-fusion), which can efficiently extract intra-/inter- modal information. Specifically, we first systematically compared different deep-learning-based fusion strategies for multi-modal ultrasound in the diagnosis of liver cancer. Secondly, based on the comparison results of a multimodal framework that integrates B-mode, SWE, CEUS ultrasound data, and clinical data simultaneously, we propose a hybrid-fusion strategies for the diagnosis of hepatocellular carcinoma and intrahepatic cholangiocarcinoma. The experimental results showed that the area under the curve of the early-late fusion strategy combined with clinical data was 0.9854, which was superior to other single mode and other fusion strategies, increasing by 13.8–25.88 % and 2.22 %-9.79 %, respectively.

Original languageEnglish
Article number128257
JournalNeurocomputing
Volume603
DOIs
StatePublished - 28 Oct 2024

Keywords

  • Classification
  • Fusion strategy
  • Hybrid-fusion
  • Liver cancer
  • Multi-modality
  • Ultrasound

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