Qoppa as a New Pan-Tumor Synthetic Parameter Derived from Tumor-Associated Biomarkers for Identifying Oncology Patients at High Risk of Metastasis: A Prospective Pilot Study
Javier Diaz-Santos, Alba Rodriguez-Valle, Beatriz Berrocal-Gavilan, Olivia Urquizar-Rodriguez, Silvia Montoro-Garcia

TL;DR
This study introduces Qoppa, a new synthetic parameter combining tumor-related biomarkers and lab tests to identify cancer patients at high risk of metastasis.
Contribution
Qoppa is a novel synthetic parameter derived from tumor-associated biomarkers and global lab parameters for metastasis risk stratification.
Findings
Qoppa showed acceptable discrimination for de novo metastasis (AUC = 0.78).
Kaplan–Meier analysis confirmed significant survival differences in non-metastatic patients.
Biomarker and clinical variable differences were observed between high and low Qoppa strata.
Abstract
Background/Objective: Early detection of metastatic progression remains a major challenge in precision oncology. Conventional radiological imaging cannot reliably identify micrometastatic disease. Although circulating tumor DNA is promising for minimal residual disease detection, organ-derived response biomarkers reflecting tissue adaptation to secreted factors remain unexplored. We hypothesized that integrating such biomarkers with global laboratory parameters would generate a synthetic variable with improved discrimination for de novo metastasis and mortality. Methods: This prospective observational pilot study enrolled 30 patients (median age 64.4 years; 56.7% female) with heterogeneous solid malignancies. Peripheral blood biomarkers responsive to tumor-secreted soluble factors (n = 11) were quantified using a multiplexed beads Luminex immunoassay. Global analytical parameters (n =…
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Taxonomy
TopicsCancer Genomics and Diagnostics · Cancer Cells and Metastasis · Radiomics and Machine Learning in Medical Imaging
