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Risk stratification of gallbladder masses by machine learning-based ultrasound radiomics models: a prospective and multi-institutional study.

Li-Fan WangQiao WangFeng MaoShi-Hao XuLi-Ping SunTing-Fan WuBo-Yang ZhouHao-Hao YinHui ShiYa-Qin ZhangXiao-Long LiYi-Kang SunDan LuCong-Yu TangHai-Xia YuanChong-Ke ZhaoHui-Xiong Xu
Published in: European radiology (2023)
• The XGBoost-based US radiomics models are useful for the risk stratification of GB masses. • The XGBoost-based US radiomics model is superior to the conventional US model for discriminating neoplastic from non-neoplastic GB lesions and may potentially decrease unnecessary cholecystectomy rate for lesions sized over 10 mm in comparison with the current consensus guideline. • The XGBoost-based US radiomics model could overmatch CEUS model in discriminating GB carcinomas from benign GB lesions.
Keyphrases
  • contrast enhanced
  • machine learning
  • lymph node metastasis
  • magnetic resonance imaging
  • contrast enhanced ultrasound
  • ultrasound guided
  • computed tomography
  • clinical evaluation