Impact of harmonization and oversampling methods on radiomics analysis of multi-center imbalanced datasets: Application to PET-based prediction of lung cancer subtypes
Dongyang Du(Southern Medical University), Arman Rahmim(BC Cancer Agency), Lijun Lu(Southern Medical University), Wentao Zhu(Zhejiang Lab), Fereshteh Yousefirizi(The University of Texas MD Anderson Cancer Center), Jieqin Lv(Southern Medical University), Mohammad R. Salmanpour(University of British Columbia), Isaac Shiri(University of Bern), Huiqin Wu(Southern Medical University), Habib Zaidi(University Medical Center Groningen)
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