UNIGE researchers unveil AI tool predicting cancer metastasis

Researchers at the University of Geneva have developed MangroveGS, an AI model that predicts cancer metastasis risk with nearly 80% accuracy. The tool analyzes gene expression patterns in tumor cells, initially from colon cancer, and applies to other types like breast and lung. Published in Cell Reports, it aims to enable more personalized treatments.

Researchers led by Ariel Ruiz i Altaba, professor in the Department of Genetic Medicine and Development at the University of Geneva (UNIGE) Faculty of Medicine, studied colon tumor cells to understand metastasis. They found that cancer spread follows structured biological programs rather than random processes, reactivating early developmental pathways through genetic and epigenetic changes. Metastasis accounts for most deaths in colon, breast, and lung cancers, but detecting it early remains challenging as it often begins before cells are found in blood or lymphatics. No single mutation fully explains why some cells migrate while others do not. To address this, the team isolated, cloned, and grew about thirty cell clones from two primary colon tumors. These were tested in vitro and in mouse models for migration and metastasis formation. Analysis of hundreds of genes revealed expression patterns linking groups of cancer cells to metastatic potential, rather than individual cells. These patterns were integrated into MangroveGS, an AI tool that uses dozens or hundreds of gene signatures for robust predictions. Aravind Srinivasan noted, 'The great novelty of our tool, called Mangrove Gene Signatures (MangroveGS), is that it exploits dozens, even hundreds, of gene signatures. This makes it particularly resistant to individual variations.' The model predicts metastasis and colon cancer recurrence with nearly 80% accuracy, outperforming prior methods, and applies to stomach, lung, and breast cancers. It processes hospital tumor samples via RNA sequencing, generating risk scores shared securely with doctors and patients. Ruiz i Altaba stated, 'This information will prevent the overtreatment of low-risk patients, thereby limiting side effects and unnecessary costs, while intensifying the monitoring and treatment of those at high risk.' The study appears in Cell Reports (2026; 45(1):116834).

관련 기사

Realistic microscopic illustration of cancer and epithelial cells sensing distant tissue features via collagen matrix, highlighting research on extended cellular reach and metastasis.
AI에 의해 생성된 이미지

Cells can sense 10 times farther than expected, a finding that may shed light on cancer spread

AI에 의해 보고됨 AI에 의해 생성된 이미지 사실 확인됨

Engineers at Washington University in St. Louis report that while single abnormal cells can mechanically probe roughly 10 microns beyond what they directly touch, groups of epithelial cells can combine forces through collagen to sense features more than 100 microns away—an effect the researchers say could help explain how cancer cells navigate tissue.

Scientists at the European Molecular Biology Laboratory (EMBL) in Heidelberg have created an AI-powered tool named MAGIC to identify cells with early chromosomal abnormalities linked to cancer. This system automates the detection of micronuclei, small DNA-containing structures that signal potential cancer development. The technology verifies a theory proposed over a century ago by Theodor Boveri.

AI에 의해 보고됨

Scientists at Johns Hopkins Medicine have pinpointed the gene KLF5 as a key driver of pancreatic cancer metastasis through epigenetic changes rather than DNA mutations. Using CRISPR technology, researchers found that KLF5 promotes tumor growth and invasion by altering DNA packaging and activating other cancer-related genes. The findings, published in Molecular Cancer, suggest potential new treatment targets.

Researchers at the University of Waterloo have developed engineered bacteria designed to invade and eat solid tumors from the inside out. The approach uses microbes that thrive in oxygen-free environments, targeting the low-oxygen cores of tumors. A genetic modification allows the bacteria to survive near oxygenated edges, controlled by a quorum-sensing mechanism.

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