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Non-invasive measurement of PD-L1 status and prediction of immunotherapy response using deep learning of PET/CT images
by
Gray, Jhanelle E
, Tunali, Ilke
, Gillies, Robert J
, Katsoulakis, Evangelia
, Jiang, Lei
, Schabath, Matthew B
, Mu, Wei
, Shi, Yu
, Tian, Jie
in
B7-H1 Antigen - metabolism
/ Biomarkers, Tumor - metabolism
/ Cancer
/ Cohort Studies
/ Deep learning
/ Deep Learning - standards
/ Epidermal growth factor
/ Female
/ Humans
/ Immunotherapy
/ Immunotherapy - methods
/ Immunotherapy Biomarkers
/ Ligands
/ Lung cancer
/ Male
/ Medical prognosis
/ Middle Aged
/ Patients
/ Positron Emission Tomography Computed Tomography - methods
/ Radiomics
/ Software
/ tumor biomarkers
2021
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Non-invasive measurement of PD-L1 status and prediction of immunotherapy response using deep learning of PET/CT images
by
Gray, Jhanelle E
, Tunali, Ilke
, Gillies, Robert J
, Katsoulakis, Evangelia
, Jiang, Lei
, Schabath, Matthew B
, Mu, Wei
, Shi, Yu
, Tian, Jie
in
B7-H1 Antigen - metabolism
/ Biomarkers, Tumor - metabolism
/ Cancer
/ Cohort Studies
/ Deep learning
/ Deep Learning - standards
/ Epidermal growth factor
/ Female
/ Humans
/ Immunotherapy
/ Immunotherapy - methods
/ Immunotherapy Biomarkers
/ Ligands
/ Lung cancer
/ Male
/ Medical prognosis
/ Middle Aged
/ Patients
/ Positron Emission Tomography Computed Tomography - methods
/ Radiomics
/ Software
/ tumor biomarkers
2021
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Non-invasive measurement of PD-L1 status and prediction of immunotherapy response using deep learning of PET/CT images
by
Gray, Jhanelle E
, Tunali, Ilke
, Gillies, Robert J
, Katsoulakis, Evangelia
, Jiang, Lei
, Schabath, Matthew B
, Mu, Wei
, Shi, Yu
, Tian, Jie
in
B7-H1 Antigen - metabolism
/ Biomarkers, Tumor - metabolism
/ Cancer
/ Cohort Studies
/ Deep learning
/ Deep Learning - standards
/ Epidermal growth factor
/ Female
/ Humans
/ Immunotherapy
/ Immunotherapy - methods
/ Immunotherapy Biomarkers
/ Ligands
/ Lung cancer
/ Male
/ Medical prognosis
/ Middle Aged
/ Patients
/ Positron Emission Tomography Computed Tomography - methods
/ Radiomics
/ Software
/ tumor biomarkers
2021
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Non-invasive measurement of PD-L1 status and prediction of immunotherapy response using deep learning of PET/CT images
Journal Article
Non-invasive measurement of PD-L1 status and prediction of immunotherapy response using deep learning of PET/CT images
2021
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Overview
BackgroundCurrently, only a fraction of patients with non-small cell lung cancer (NSCLC) treated with immune checkpoint inhibitors (ICIs) experience a durable clinical benefit (DCB). According to NCCN guidelines, Programmed death-ligand 1 (PD-L1) expression status determined by immunohistochemistry (IHC) of biopsies is the only clinically approved companion biomarker to trigger the use of ICI therapy. Based on prior work showing a relationship between quantitative imaging and gene expression, we hypothesize that quantitative imaging (radiomics) can provide an alternative surrogate for PD-L1 expression status in clinical decision support.Methods18F-FDG-PET/CT images and clinical data were curated from 697 patients with NSCLC from three institutions and these were analyzed using a small-residual-convolutional-network (SResCNN) to develop a deeply learned score (DLS) to predict the PD-L1 expression status. This developed model was further used to predict DCB, progression-free survival (PFS), and overall survival (OS) in two retrospective and one prospective test cohorts of ICI-treated patients with advanced stage NSCLC.ResultsThe PD-L1 DLS significantly discriminated between PD-L1 positive and negative patients (area under receiver operating characteristics curve ≥0.82 in the training, validation, and two external test cohorts). Importantly, the DLS was indistinguishable from IHC-derived PD-L1 status in predicting PFS and OS, suggesting the utility of DLS as a surrogate for IHC. A score generated by combining the DLS with clinical characteristics was able to accurately (C-indexes of 0.70–0.87) predict DCB, PFS, and OS in retrospective training, prospective testing and external validation cohorts.ConclusionHence, we propose DLS as a surrogate or substitute for IHC-determined PD-L1 measurement to guide individual pretherapy decisions pending in larger prospective trials.
Publisher
BMJ Publishing Group Ltd,BMJ Publishing Group LTD,BMJ Publishing Group
Subject
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