
Harnessing AI in Biomarker Analysis for Early-Onset CRC: Enrique Velazquez Villarreal, MD, PhD, MPH, MS
Enrique Velazquez Villarreal, MD, PhD, MPH, MS, reveals how AI is being used to identify early-onset CRC and enhance precision oncology.
The rapid rise of early-onset
The findings were presented at the
This transcript was lightly edited for clarity; captions were auto-generated.
Transcript
How did the study utilize AI to enhance precision oncology for patients with early-onset CRC?
The title of this study is “Artificial Intelligence Enhanced Biomarker Analysis of WNY TGF-β and PIK3 Pathway Alterations in FOLFOX-Treated Early-Onset Colorectal Cancers in High-Risk Populations.”
In general, as a big picture, [for] the why, I will say early-onset colorectal cancer, or cancer diagnosed before age 50, is increasing rapidly, and the rise is especially pronounced in Hispanic and Latino populations. However, most genomic studies guiding treatment decisions are still based largely on non-Hispanic White patients. That means we may be missing important biology that affects how younger, diverse patients respond to standard chemotherapy.
About explaining the treatment, FOLFOX immunotherapy is a cornerstone treatment for colorectal cancer. We still don't fully understand how it interacts with key cancer signaling pathways in younger patients or across different ancestries. In this study, we are focused on 3 major pathways, WNT, TGF-β, and PIK3, because they play a central role in tumor growth, treatment resistance, and survival.
Now about the innovation. What makes this work distinct is that we didn't just look at mutations in isolation. We use artificial intelligence–driven platforms to systematically stratify more than 2500 colorectal cancer patients by age of onset, ancestry, and whether they receive FOLFOX. That includes us asking very specific, clinically relevant questions that are nearly impossible to do manually at this scale.
Newsletter
Stay ahead of policy, cost, and value—subscribe to AJMC for expert insights at the intersection of clinical care and health economics.




























































