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Non-invasive decision support for NSCLC treatment using PET/CT radiomics

Author

Listed:
  • Wei Mu

    (H. Lee Moffitt Cancer Center and Research Institute)

  • Lei Jiang

    (Tongji University School of Medicine)

  • JianYuan Zhang

    (the Fourth Hospital of Hebei Medical University
    Baoding No.1 Central Hospital)

  • Yu Shi

    (H. Lee Moffitt Cancer Center and Research Institute)

  • Jhanelle E. Gray

    (H. Lee Moffitt Cancer Center and Research Institute)

  • Ilke Tunali

    (H. Lee Moffitt Cancer Center and Research Institute)

  • Chao Gao

    (Harbin Medical University
    TOF−PET/CT/MR center, the Fourth Hospital of Harbin Medical University, Harbin Medical University)

  • Yingying Sun

    (Harbin Medical University
    TOF−PET/CT/MR center, the Fourth Hospital of Harbin Medical University, Harbin Medical University)

  • Jie Tian

    (Beihang University
    Chinese Academy of Sciences)

  • Xinming Zhao

    (the Fourth Hospital of Hebei Medical University)

  • Xilin Sun

    (Harbin Medical University
    TOF−PET/CT/MR center, the Fourth Hospital of Harbin Medical University, Harbin Medical University)

  • Robert J. Gillies

    (H. Lee Moffitt Cancer Center and Research Institute)

  • Matthew B. Schabath

    (H. Lee Moffitt Cancer Center and Research Institute
    H. Lee Moffitt Cancer Center and Research Institute)

Abstract

Two major treatment strategies employed in non-small cell lung cancer, NSCLC, are tyrosine kinase inhibitors, TKIs, and immune checkpoint inhibitors, ICIs. The choice of strategy is based on heterogeneous biomarkers that can dynamically change during therapy. Thus, there is a compelling need to identify comprehensive biomarkers that can be used longitudinally to help guide therapy choice. Herein, we report a 18F-FDG-PET/CT-based deep learning model, which demonstrates high accuracy in EGFR mutation status prediction across patient cohorts from different institutions. A deep learning score (EGFR-DLS) was significantly and positively associated with longer progression free survival (PFS) in patients treated with EGFR-TKIs, while EGFR-DLS is significantly and negatively associated with higher durable clinical benefit, reduced hyperprogression, and longer PFS among patients treated with ICIs. Thus, the EGFR-DLS provides a non-invasive method for precise quantification of EGFR mutation status in NSCLC patients, which is promising to identify NSCLC patients sensitive to EGFR-TKI or ICI-treatments.

Suggested Citation

  • Wei Mu & Lei Jiang & JianYuan Zhang & Yu Shi & Jhanelle E. Gray & Ilke Tunali & Chao Gao & Yingying Sun & Jie Tian & Xinming Zhao & Xilin Sun & Robert J. Gillies & Matthew B. Schabath, 2020. "Non-invasive decision support for NSCLC treatment using PET/CT radiomics," Nature Communications, Nature, vol. 11(1), pages 1-11, December.
  • Handle: RePEc:nat:natcom:v:11:y:2020:i:1:d:10.1038_s41467-020-19116-x
    DOI: 10.1038/s41467-020-19116-x
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    Cited by:

    1. Sheeba J. Sujit & Muhammad Aminu & Tatiana V. Karpinets & Pingjun Chen & Maliazurina B. Saad & Morteza Salehjahromi & John D. Boom & Mohamed Qayati & James M. George & Haley Allen & Mara B. Antonoff &, 2024. "Enhancing NSCLC recurrence prediction with PET/CT habitat imaging, ctDNA, and integrative radiogenomics-blood insights," Nature Communications, Nature, vol. 15(1), pages 1-14, December.

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