Machine learning-based quantitative texture analysis of CT images of small renal masses: Differentiation of angiomyolipoma without visible fat from renal cell carcinoma
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Zhichao Feng | Pengfei Rong | Peng Cao | Qingyu Zhou | Wenwei Zhu | Zhimin Yan | Qianyun Liu | Wei Wang | Q. Zhou | Qingyu Zhou
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