IDH mutation assessment of glioma using texture features of multimodal MR images
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Xi Zhang | Hongbing Lu | Yang Liu | Qiang Tian | Baojuan Li | Xiaopan Xu | Yuxia Wu | Yi-Xiong Liu
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