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Related Concept Videos

Adaptive Mechanisms in Cancer Cells02:53

Adaptive Mechanisms in Cancer Cells

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Cancer cells accumulate genetic changes at an abnormally rapid rate due to the defects in the DNA repair mechanisms. From an evolutionary perspective, such genetic instability is advantageous for cancer development. Mutant cell lines accumulate a series of beneficial mutations that contribute to their progression into cancer.
Some of the advantages that cancer cells have on normal cells include - enhanced ability to divide without terminally differentiating, induce new blood vessel formation,...
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Combining two or more treatment methods increases the life span of cancer patients while reducing damage to vital organs or tissue from the overuse of a single treatment. Combination therapy also targets different cancer-inducing pathways, thus reducing the chances of developing resistance to treatment.
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Related Experiment Video

Updated: Jan 11, 2026

Implementation of In Vitro Drug Resistance Assays: Maximizing the Potential for Uncovering Clinically Relevant Resistance Mechanisms
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Deciphering context-specific Axitinib escape pathways via multi-omics and explainable machine learning.

Samriddhi Gupta1, Khyati Patni1, Simarpreet Kaur2

  • 1Department of Computational Biology, Indraprastha Institute of Information Technology Delhi (IIIT-Delhi), New Delhi, 110020, India.

Journal of Translational Medicine
|November 13, 2025
PubMed
Summary
This summary is machine-generated.

Axitinib resistance in cancer is context-specific. Multi-omics and AI reveal distinct adaptations in blood cancers and solid tumors, guiding personalized re-sensitization strategies.

Keywords:
AxitinibDrug resistanceExplainable AIMachine learningMolecular targeted therapy

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Area of Science:

  • Oncology
  • Computational Biology
  • Genomics

Background:

  • Targeted cancer therapies like Axitinib face resistance, limiting efficacy.
  • Patient responses to Axitinib are heterogeneous due to molecular adaptations.
  • Comprehensive multi-omics analysis is crucial to understand resistance mechanisms.

Purpose of the Study:

  • To define mechanisms of Axitinib resistance using a multi-omics approach.
  • To identify compensatory survival pathways limiting Axitinib efficacy.
  • To develop predictive models for Axitinib response.

Main Methods:

  • High-throughput transcriptomic and proteomic profiling of ~1000 pan-cancer cell lines.
  • Machine learning framework to predict cell-line-specific drug response.
  • Explainable AI (LIME) to identify resistance features and hierarchical clustering for subtype discovery.

Main Results:

  • Axitinib showed the highest predictive accuracy among 44 drugs.
  • Machine learning reliably classified resistant/sensitive cell lines from multi-omics data.
  • Two distinct Axitinib resistance subtypes identified: blood cancers (purine metabolism, growth factors) and solid tumors (hypoxia adaptation, ECM remodeling, EMT, immune evasion).

Conclusions:

  • Axitinib resistance is driven by tissue- and context-specific adaptations.
  • Multi-omics and explainable AI reveal distinct resistance strategies.
  • Precision re-sensitization approaches tailored to tumor context are necessary.