LOWERING CANCER-SPECIFIC MORTALITY RATES USING PROTEIN BIOMARKERS
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Background
Late-stage diagnosis remains a significant contributor to cancer mortality worldwide. Protein biomarkers have emerged as critical tools in both early detection and monitoring. This study investigates whether specific protein biomarkers can be leveraged not only to detect cancers at earlier stages but to reverse tumor progression toward more treatable stages, ultimately reducing mortality.
Methods
We evaluated 39 protein biomarkers across eight prevalent cancer types: breast, colorectal, esophageal, liver, lung, ovarian, pancreatic, and stomach. Biomarker performance was assessed using receiver operating characteristic (ROC) curve analysis to calculate the area under the curve (AUC) and sensitivities at 90% specificity across cancer stages I through III. The highest-performing biomarkers were subsequently used to estimate potential stage-shift effects and the corresponding reduction in mortality.
Results
Specific protein biomarkers demonstrated high predictive accuracy and strong potential for stage shifting across multiple cancers, which in turn may help reduce mortality. In breast cancer, a combination of prolactin and IL-8 achieved a 48.2% stage shift, translating into a 33.7% reduction in mortality. For colorectal cancer, integrating OPN and IL-8 led to a 68.7% stage shift, contributing to a 26.8% reduction in mortality. In esophageal cancer, OPN, HGF, and GDF15 shifted 65.4% of late-stage cases into earlier stages, resulting in a 12.4% mortality reduction. For liver cancer, Endoglin, HGF, and OPN together shifted 63% of late-stage cases to earlier stages, yielding a 4.4% reduction in mortality. In lung cancer, prolactin showed notable performance, shifting 65.1% of late-stage cancers to early stage, contributing to a 19% mortality reduction. Ovarian cancer demonstrated the greatest benefit, where prolactin and CA-125 shifted 79.1% of late-stage cancers to earlier stages, leading to a 50.3% decrease in projected deaths. In pancreatic cancer, TIMP-2 and CA19-9 shifted 81.1% of cases to earlier stages, helping lower mortality by 9.3%. Finally, in stomach cancer, OPN shifted 63.1% of late-stage cases to earlier stages, reducing mortality by 16.4%.
Conclusions
Protein biomarkers offer a promising path not only for early detection but also for mortality reduction. This study highlights the potential of biomarker-driven strategies to reduce cancer mortality through stage regression, particularly in common and lethal cancers.
Impact
These findings underscore the potential for integrating biomarker-guided interventions into cancer care, offering a new paradigm in personalized oncology focused on shifting the stage landscape toward improved survival.