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Evaluating Biomarker Features for Lung Cancer Using Machine Learning

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Abstract

Machine learning is being applied to enhance the information garnered from biomarkers that are quantified from buccal samples for determining an individuals’ predisposition to lung cancer using partial wave spectroscopy.

© 2021 The Author(s)

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