Multiparametric ultrasomics of significant liver fibrosis: A machine learning-based analysis.
Wei LiYang HuangBo-Wen ZhuangGuang-Jian LiuHang-Tong HuXin LiJin-Yu LiangZhu WangXiao-Wen HuangChu-Qing ZhangSi-Min RuanXiao-Yan XieMing KuangMing-De LuLi-Da ChenWei WangPublished in: European radiology (2018)
• Multiparametric ultrasomics has achieved much better performance in the discrimination of significant fibrosis (≥ F2) than the single modality of conventional radiomics, original radiofrequency and contrast-enhanced micro-flow. • Adaptive boosting, random forest and support vector machine are the optimal algorithms for machine learning.
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