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Phenotype-driven precision oncology as a guide for clinical decisions one patient at a time

Author

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  • Shumei Chia

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Joo-Leng Low

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Xiaoqian Zhang

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Xue-Lin Kwang

    (National Cancer Centre Singapore, Cancer Therapeutics Research Laboratory)

  • Fui-Teen Chong

    (National Cancer Centre Singapore, Cancer Therapeutics Research Laboratory)

  • Ankur Sharma

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Denis Bertrand

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Shen Yon Toh

    (National Cancer Centre Singapore, Cancer Therapeutics Research Laboratory)

  • Hui-Sun Leong

    (National Cancer Centre Singapore, Cancer Therapeutics Research Laboratory)

  • Matan T. Thangavelu

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Jacqueline S. G. Hwang

    (Singapore General Hospital)

  • Kok-Hing Lim

    (Singapore General Hospital)

  • Thakshayeni Skanthakumar

    (National Cancer Centre Singapore, Cancer Therapeutics Research Laboratory)

  • Hiang-Khoon Tan

    (Singapore General Hospital)

  • Yan Su

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Siang Hui Choo

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Hannes Hentze

    (Biological Resource Centre (BRC), A*STAR)

  • Iain B. H. Tan

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology
    National Cancer Centre Singapore, Cancer Therapeutics Research Laboratory)

  • Alexander Lezhava

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Patrick Tan

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Daniel S. W. Tan

    (National Cancer Centre Singapore, Cancer Therapeutics Research Laboratory)

  • Giridharan Periyasamy

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • Judice L. Y. Koh

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

  • N. Gopalakrishna Iyer

    (National Cancer Centre Singapore, Cancer Therapeutics Research Laboratory)

  • Ramanuj DasGupta

    (Genome Institute of Singapore, A*STAR, Cancer Therapeutics & Stratified Oncology, PerkinElmer-GIS Centre for Precision Oncology)

Abstract

Genomics-driven cancer therapeutics has gained prominence in personalized cancer treatment. However, its utility in indications lacking biomarker-driven treatment strategies remains limited. Here we present a “phenotype-driven precision-oncology” approach, based on the notion that biological response to perturbations, chemical or genetic, in ex vivo patient-individualized models can serve as predictive biomarkers for therapeutic response in the clinic. We generated a library of “screenable” patient-derived primary cultures (PDCs) for head and neck squamous cell carcinomas that reproducibly predicted treatment response in matched patient-derived-xenograft models. Importantly, PDCs could guide clinical practice and predict tumour progression in two n = 1 co-clinical trials. Comprehensive “-omics” interrogation of PDCs derived from one of these models revealed YAP1 as a putative biomarker for treatment response and survival in ~24% of oral squamous cell carcinoma. We envision that scaling of the proposed PDC approach could uncover biomarkers for therapeutic stratification and guide real-time therapeutic decisions in the future.

Suggested Citation

  • Shumei Chia & Joo-Leng Low & Xiaoqian Zhang & Xue-Lin Kwang & Fui-Teen Chong & Ankur Sharma & Denis Bertrand & Shen Yon Toh & Hui-Sun Leong & Matan T. Thangavelu & Jacqueline S. G. Hwang & Kok-Hing Li, 2017. "Phenotype-driven precision oncology as a guide for clinical decisions one patient at a time," Nature Communications, Nature, vol. 8(1), pages 1-12, December.
  • Handle: RePEc:nat:natcom:v:8:y:2017:i:1:d:10.1038_s41467-017-00451-5
    DOI: 10.1038/s41467-017-00451-5
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    Cited by:

    1. Hong Sheng Quah & Elaine Yiqun Cao & Lisda Suteja & Constance H. Li & Hui Sun Leong & Fui Teen Chong & Shilpi Gupta & Camille Arcinas & John F. Ouyang & Vivian Ang & Teja Celhar & Yunqian Zhao & Hui C, 2023. "Single cell analysis in head and neck cancer reveals potential immune evasion mechanisms during early metastasis," Nature Communications, Nature, vol. 14(1), pages 1-19, December.
    2. Daniele Ramazzotti & Fabrizio Angaroni & Davide Maspero & Gianluca Ascolani & Isabella Castiglioni & Rocco Piazza & Marco Antoniotti & Alex Graudenzi, 2022. "Variant calling from scRNA-seq data allows the assessment of cellular identity in patient-derived cell lines," Nature Communications, Nature, vol. 13(1), pages 1-3, December.

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