HMN 2025: How Machine learning predicts drug response for personalized colorectal cancer treatment

New machine learning tool predicts drug response in colorectal cancer, opening doors to personalized treatment
Graphical abstract. Credit: Cell Reports Medicine (2025). DOI: 10.1016/j.xcrm.2025.102053

A Singaporean research team has developed CAN-Scan (short for Cancer Scan), a next-generation precision oncology platform designed to “scan” the molecular features of each patient’s cancer. Published in Cell Reports Medicine, CAN-Scan integrates patient-derived tumor models, multi-omics profiling, and machine learning to predict disease progression and therapeutic response, with the potential to personalize treatment for colorectal cancer (CRC) patients in the future.

Led by Drs. Ramanuj DasGupta, Shumei Chia and Niranjan Nagarajan from the A*STAR Genome Institute of Singapore (A*STAR GIS), and Professor Iain Tan from the National Cancer Centre Singapore (NCCS), together with an international research team, the study addresses a critical gap in by improving the ability to provide smarter, individualized therapies for patients who do not respond to standard chemotherapy.

Tackling a longstanding challenge in cancer treatment

Colorectal cancer (CRC) is the third most commonly diagnosed cancer and the second leading cause of cancer-related deaths worldwide. In Singapore, it is among the most prevalent cancers, with 12,704 new cases reported between 2018 and 2022, according to the Singapore Cancer Registry Annual Report (2022).

Despite advances in oncology, many CRC patients still receive the standard 5-fluorouracil (FU)-based chemotherapy treatments, which remain a mainstay of care. However, these generalized approaches often do not account for in tumors, leading to poor treatment responses and unnecessary side effects, including toxicity, in some patients.

This research seeks to overcome those limitations by enabling treatment decisions to be based on the biology of the patient’s cancer cell, an approach aimed at improving treatment outcomes and minimizing toxicity.

How CAN-Scan works

CAN-Scan was built using a library of “live” tumor samples called patient-derived cell lines (PDCs), taken directly from CRC patients at NCSS. These PDCs were cultured outside the body and treated with 84 different clinically approved drugs, using doses similar to those given in patients.

Leveraging machine learning, CAN-Scan analyzes the genetic profile of PDCs and compares its molecular signature with empirically established drug response data. This enables the identification of biomarkers that can predict how tumors will respond to specific treatments.

A key finding was that some CRC tumors had extra copies of DNA in Chromosome 7—a part of our DNA that contains the cancer-linked gene BRAF. These tumors were resistant to standard chemotherapy. CAN-Scan was able to identify alternative treatments, such as targeted drugs like regorafenib or vemurafenib, offering more effective and personalized options for patients whose tumors carry this genetic feature.

“Cancer cells from different patients can behave very differently, even within the same cancer type,” said Dr. Ramanuj DasGupta, Senior Principal Scientist at A*STAR GIS and senior author of the study. “CAN-Scan helps us understand these differences and uncover the genetic features that influence how each tumor responds to treatment.”

Key benefits of CAN-Scan to patients and clinicians:

  • Improved Treatment Outcomes: Helps avoid ineffective therapies and reduces side effects by identifying patients unlikely to benefit from standard chemotherapy.
  • Faster and Smarter Decisions: Enables proactive, data-driven treatment planning rather than trial-and-error approaches.
  • Better Patient Stratification: Identifies new biomarkers, like extra copies of Chromosome 7q, to group patients more accurately.

A route towards precision oncology

Unlike other personalized cancer tools, CAN-Scan brings together multi-omics data, functional drug testing, and AI/ML-powered analysis into one integrated platform. Its predictions were validated across four independent CRC cohorts, including patients from Belgium, Korea and Thailand, highlighting its potential for real-world clinical use.

More importantly, CAN-Scan can enable clinicians to tailor treatments before therapy begins, rather than adjusting only after failure. This marks a shift towards smarter, more precise cancer care.

“This work illustrates the potential of functional precision oncology,” said Professor Iain Tan, corresponding author and Deputy Chairman of the Division of Medical Oncology at NCCS. “It combines biological relevance with computational power to deliver insights that may inform patient care.”

The research team is now building on these findings to bring CAN-Scan closer to clinical use. They are planning observational studies to test the platform in real-time patient care and working with cancer centers and diagnostic partners to integrate CAN-Scan into existing clinical workflows. Beyond , they are also exploring how the platform could be applied to other solid tumors, expanding its potential impact across oncology.

“This is a major step forward in functional precision oncology,” said Dr. Wan Yue, Executive Director at A*STAR GIS. “CAN-Scan reflects A*STAR GIS’ deep expertise in cancer biology, genomics, and data science, and how we bring these together to enable smarter, more personalized cancer care. It underscores our commitment to translational research that delivers real impact for patients.”

More information:
Shumei Chia et al, CAN-Scan: A multi-omic phenotype-driven precision oncology platform identifies prognostic biomarkers of therapy response for colorectal cancer, Cell Reports Medicine (2025). DOI: 10.1016/j.xcrm.2025.102053


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