Purpose:

Colorectal cancer is the second leading cause of cancer-related deaths worldwide, and early detection significantly improves treatment outcomes, but existing blood-based tests often have limited sensitivity in early-stage disease. We developed a blood-based test combining orphan noncoding RNAs (oncRNA), a group of small cell-free RNAs, with generative artificial intelligence to detect colorectal cancer.

Experimental Design:

We leveraged a cohort of 613 colorectal cancer cases and controls to train a model that demonstrated both high clinical performance and minimal technical variability in robustness testing. We further validated our model in an independent, single-source cohort of 192 colorectal cancer cases and controls. Model performance was assessed by sensitivity, specificity, and area under the ROC curve, with attention to early-stage detection.

Results:

In our independent validation set, we achieved an overall sensitivity of 89% at 90% specificity, with an 80% sensitivity for stage I—an important milestone, as early-stage colorectal cancer detection remains a challenge for other blood-based technologies. Performance was consistent across demographic subgroups.

Conclusions:

Our oncRNA–based blood test, powered by artificial intelligence, offers strong performance for early colorectal cancer detection, including in stage I disease for which existing blood-based assays are limited. These findings support further development toward a minimally invasive colorectal cancer screening tool.

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First page of Detection of Early-Stage Colorectal Cancer Using Cell-Free oncRNA Biomarkers and Artificial Intelligence<alt-title alt-title-type="short">Early Detection of Colorectal Cancer with oncRNA and AI</alt-title>