Overview
This AI-driven model leverages multimodal data-such as radiomics, pathomics, genomics, and broader multi-omics profiles-to capture complementary aspects of tumor biology and predict treatment response and prognosis.
Description
Built upon retrospective cohorts for model development and rigorously validated in prospective cohorts, the proposed AI predictive model integrates multimodal data (radiomics, pathomics, genomics, and multi-omics)-each reflecting distinct dimensions of tumor heterogeneity-to enable joint prediction of treatment response and clinical outcomes.
Eligibility
Inclusion Criteria:
- Histopathologically diagnosed esophageal cancer
- Complete baseline clinical data available (including demographic characteristics, ECOG performance score, TNM staging, etc.)
- No other primary malignant tumors
- Provision of informed consent
- Availability of pre-treatment CT imaging
Exclusion Criteria:
- Imaging data quality insufficient for analysis
- Presence of another primary malignant tumor
- Severe systemic disease