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Comparison of machine learning algorithms to predict clinically significant prostate cancer of the peripheral zone with multiparametric MRI using clinical assessment categories and radiomic features.

Simon BernatzJörg AckermannPhilipp MandelBenjamin KaltenbachYauheniya ZhdanovichPatrick N HarterClaudia DöringRenate HammerstinglBoris BodelleKevin SmithAndreas BucherMoritz AlbrechtNicolas RosbachLajos BastenIbrahim YelMike WenzelKatrin BankovIna KochFelix K-H ChunJens KöllermannPeter J WildThomas J Vogl
Published in: European radiology (2020)
• Quantitative imaging features differ between normal and malignant tissue of the peripheral zone in prostate cancer. • Radiomic feature analysis of clinical routine multiparametric MRI has the potential to improve the stratification of clinically significant versus insignificant prostate cancer lesions in the peripheral zone. • Certain combinations of standard multiparametric MRI reporting and assessment categories with feature subsets and machine learning algorithms reduced the diagnostic performance over standard clinical assessment categories alone.
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