Fuzzy masks: boosting radiomic reliability in head and neck tumors amid delineation uncertainty
Jin Cao, Jiang Zhang, Xinzhi Teng, Xinyu Zhang, Saikit Lam, Ta Zhou, Yuanpeng Zhang, Jing Cai

TL;DR
A new fuzzy mask method improves the reliability of radiomic features in head and neck tumors by accounting for contour uncertainty.
Contribution
FuzzMask introduces gradient transitions to model tumor contour uncertainty, enhancing radiomic reliability.
Findings
FuzzMask yields up to 29 more reliable features than binary masks in head and neck cancers.
FuzzMask increases model reliability with ICC values up to 0.99 for predictive outputs.
Abstract
•Fuzzy mask models tumor contour uncertainty via gradient transitions.•The method yields up to 29 more reliable features than binary masks.•Gradient weighting produces 2% more independent feature clusters.•Intraclass correlation coefficient of the predictive outputs of model up to 0.99.•Intensity equalization mechanisms drive the observed reliability gains. Fuzzy mask models tumor contour uncertainty via gradient transitions. The method yields up to 29 more reliable features than binary masks. Gradient weighting produces 2% more independent feature clusters. Intraclass correlation coefficient of the predictive outputs of model up to 0.99. Intensity equalization mechanisms drive the observed reliability gains. The clinical utility of radiomics in head-and-neck (H&N) cancer is hindered by poor reliability caused by delineation uncertainties from the use of binary mask (BinMask).…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Effects of Radiation Exposure · Artificial Intelligence in Healthcare and Education
