2023
DOI: 10.3389/fonc.2023.1156009
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Development of a machine learning framework for radiation biomarker discovery and absorbed dose prediction

Abstract: BackgroundMolecular radiation biomarkers are an emerging tool in radiation research with applications for cancer radiotherapy, radiation risk assessment, and even human space travel. However, biomarker screening in genome-wide expression datasets using conventional tools is time-consuming and underlies analyst (human) bias. Machine Learning (ML) methods can improve the sensitivity and specificity of biomarker identification, increase analytical speed, and avoid multicollinearity and human bias.AimTo develop a … Show more

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