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Zebrafish Avatar-test forecasts clinical response to chemotherapy in patients with colorectal cancer

Author

Listed:
  • Bruna Costa

    (Champalimaud Foundation)

  • Marta F. Estrada

    (Champalimaud Foundation)

  • António Gomes

    (Hospital Prof. Doutor Fernando Fonseca)

  • Laura M. Fernandez

    (Champalimaud Clinical Centre, Champalimaud Foundation)

  • José M. Azevedo

    (Champalimaud Clinical Centre, Champalimaud Foundation)

  • Vanda Póvoa

    (Champalimaud Foundation)

  • Márcia Fontes

    (Champalimaud Foundation)

  • António Alves

    (Faculty of Medicine of the University of Lisbon)

  • António Galzerano

    (Champalimaud Foundation)

  • Mireia Castillo-Martin

    (Champalimaud Foundation)

  • Ignacio Herrando

    (Champalimaud Clinical Centre, Champalimaud Foundation)

  • Shermann Brandão

    (Champalimaud Foundation)

  • Carla Carneiro

    (Hospital Prof. Doutor Fernando Fonseca)

  • Vítor Nunes

    (Hospital Prof. Doutor Fernando Fonseca)

  • Carlos Carvalho

    (Champalimaud Foundation)

  • Amjad Parvaiz

    (Champalimaud Clinical Centre, Champalimaud Foundation)

  • Ana Marreiros

    (University of Algarve
    University of Algarve)

  • Rita Fior

    (Champalimaud Foundation)

Abstract

Cancer patients often undergo rounds of trial-and-error to find the most effective treatment because there is no test in the clinical practice for predicting therapy response. Here, we conduct a clinical study to validate the zebrafish patient-derived xenograft model (zAvatar) as a fast predictive platform for personalized treatment in colorectal cancer. zAvatars are generated with patient tumor cells, treated exactly with the same therapy as their corresponding patient and analyzed at single-cell resolution. By individually comparing the clinical responses of 55 patients with their zAvatar-test, we develop a decision tree model integrating tumor stage, zAvatar-apoptosis, and zAvatar-metastatic potential. This model accurately forecasts patient progression with 91% accuracy. Importantly, patients with a sensitive zAvatar-test exhibit longer progression-free survival compared to those with a resistant test. We propose the zAvatar-test as a rapid approach to guide clinical decisions, optimizing treatment options and improving the survival of cancer patients.

Suggested Citation

  • Bruna Costa & Marta F. Estrada & António Gomes & Laura M. Fernandez & José M. Azevedo & Vanda Póvoa & Márcia Fontes & António Alves & António Galzerano & Mireia Castillo-Martin & Ignacio Herrando & Sh, 2024. "Zebrafish Avatar-test forecasts clinical response to chemotherapy in patients with colorectal cancer," Nature Communications, Nature, vol. 15(1), pages 1-13, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-49051-0
    DOI: 10.1038/s41467-024-49051-0
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