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Published in: Cancer Immunology, Immunotherapy 7/2018

01-07-2018 | Original Article

Novel non-invasive early detection of lung cancer using liquid immunobiopsy metabolic activity profiles

Authors: Yochai Adir, Shoval Tirman, Shirley Abramovitch, Cynthia Botbol, Aviv Lutaty, Tali Scheinmann, Eyal Davidovits, Irit Arbel, Giora Davidovits, Sonia Schneer, Michal Shteinberg, Hagit Peretz Soroka, Ruven Tirosh, Fernando Patolsky

Published in: Cancer Immunology, Immunotherapy | Issue 7/2018

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Abstract

Lung cancer is the leading cause of cancer death worldwide. Survival is largely dependent on the stage of diagnosis: the localized disease has a 5-year survival greater than 55%, whereas, for spread tumors, this rate is only 4%. Therefore, the early detection of lung cancer is key for improving prognosis. In this study, we present an innovative, non-invasive, cancer detection approach based on measurements of the metabolic activity profiles of immune system cells. For each Liquid ImmunoBiopsy test, a 384 multi-well plate is loaded with freshly separated PBMCs, and each well contains 1 of the 16 selected stimulants in several increasing concentrations. The extracellular acidity is measured in both air-open and hermetically-sealed states, using a commercial fluorescence plate reader, for approximately 1.5 h. Both states enable the measurement of real-time accumulation of ‘soluble’ versus ‘volatile’ metabolic products, thereby differentiating between oxidative phosphorylation and aerobic glycolysis. The metabolic activity profiles are analyzed for cancer diagnosis by machine-learning tools. We present a diagnostic accuracy study, using a multivariable prediction model to differentiate between lung cancer and control blood samples. The model was developed and tested using a cohort of 200 subjects (100 lung cancer and 100 control subjects), yielding 91% sensitivity and 80% specificity in a 20-fold cross-validation. Our results clearly indicate that the proposed clinical model is suitable for non-invasive early lung cancer diagnosis, and is indifferent to lung cancer stage and histological type.
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Literature
40.
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Metadata
Title
Novel non-invasive early detection of lung cancer using liquid immunobiopsy metabolic activity profiles
Authors
Yochai Adir
Shoval Tirman
Shirley Abramovitch
Cynthia Botbol
Aviv Lutaty
Tali Scheinmann
Eyal Davidovits
Irit Arbel
Giora Davidovits
Sonia Schneer
Michal Shteinberg
Hagit Peretz Soroka
Ruven Tirosh
Fernando Patolsky
Publication date
01-07-2018
Publisher
Springer Berlin Heidelberg
Published in
Cancer Immunology, Immunotherapy / Issue 7/2018
Print ISSN: 0340-7004
Electronic ISSN: 1432-0851
DOI
https://doi.org/10.1007/s00262-018-2173-5

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