Status
Conditions
Treatments
About
Primary liver cancer, mainly including hepatocellular carcinoma (HCC) and intrahepatic cholangiocarcinoma (ICC), represents the third leading cause of cancer-related mortality. Enhancing the precision of liver cancer diagnosis and providing early therapeutic efficacy and prognostic evaluation during clinical decision-making hold significant clinical importance. Ultrasound is the preferred imaging modality for liver cancer screening. Contrast-enhanced ultrasound (CEUS) can dynamically visualize the microvascular perfusion of liver cancer lesions. Liver elastography has become a commonly used clinical assessment tool for cirrhosis. Photoacoustic imaging (PAI), an emerging non-invasive functional imaging technique, enables visualization of specific molecules through their spectroscopic characteristics at designated wavelengths.
The objectives of this study include: (1) Conducting an observational investigation combining CEUS, elastography, and superb microvascular imaging (SMI) to collect imaging data; (2) Preserving tumor specimens from participants to investigate heterogeneous protein characteristics of primary liver cancer organoids using PAI; (3) Analyzing peripheral venous blood samples to study transcriptomic profiles. Artificial intelligence (AI) technology will be employed to establish models integrating ultrasound radiomics with tumor multi-omics characteristics, aiming to provide novel strategies for precision diagnosis and treatment of liver cancer.
Key questions:(1) How to develop a multimodal imaging model combining CEUS, elastography, and SMI for predicting differentiation of liver cancer, microvascular invasion (MVI) and prognosis; (2) Whether PAI can identify heterogeneous proteins in liver cancer organoids through specific spectral recognition; (3) Whether AI can integrate multi-dimensional data to establish models based on ultrasound radiomics and multi-omics features.
Full description
Research Background Primary liver cancer, predominantly comprising hepatocellular carcinoma (HCC) and intrahepatic cholangiocarcinoma (ICC), ranks as the third leading cause of cancer-related mortality. In China, approximately 70% of liver cancer patients are diagnosed at intermediate or advanced stages, where localized therapies such as surgery and ablation yield limited efficacy, and targeted therapies exhibit low overall response rates in advanced cases. This may be attributed to the heterogeneity of liver cancer, which manifests at multiple molecular levels-including genomic, transcriptomic, and metabolomic variations-both across individuals and within individual tumors. Such heterogeneity leads to divergent therapeutic responses and clinical outcomes among patients with identical pathological types and stages. Therefore, there is an urgent need to develop preoperative diagnostic methods capable of early assessment and prediction of tumor heterogeneity to guide precision clinical decision-making.
Ultrasound is the preferred imaging modality for liver cancer screening due to its cost-effectiveness, safety and widespread clinical adoption. Contrast enhanced ultrasound (CEUS), the secondary guideline-recommended imaging technique for liver cancer diagnosis, offers economic and low-risk advantages compared to first-line recommendations like dynamic contrast-enhanced CT or MRI. Liver elastography has become a standard clinical tool for assessing cirrhosis. Photoacoustic imaging (PAI), an emerging non-invasive functional imaging technology, enables visualization of specific molecules based on their spectroscopic characteristics at designated wavelengths. Extensive studies have demonstrated the significant value of combined photoacoustic/ultrasound imaging in the diagnosis and prognostic evaluation of various cancers, including breast cancer and melanoma.
This study aims to: (1) Conduct an observational investigation combining CEUS, elastography, and superb microvascular imaging (SMI) to collect imaging data; (2) Collect tumor specimens from participants for investigating heterogeneous protein characteristics in primary liver cancer organoids using PAI; (3) Analyze peripheral venous blood samples to study transcriptomic profiles. Artificial intelligence (AI) will be employed to establish prognostic models integrating ultrasound radiomics and tumor heterogeneity multi-omics features, providing novel insights for precision diagnosis and treatment of liver cancer.
Research workflow
Enrollment
Sex
Ages
Volunteers
Inclusion criteria
Exclusion criteria
Loading...
Central trial contact
Meng Yang, Doctor
Data sourced from clinicaltrials.gov
Clinical trials
Research sites
Resources
Legal