Fei Gao
6 Papers
Fei Gao is an academic researcher. The author has contributed to research in topics: Medicine & Internal medicine. The author has an hindex of 2, co-authored 5 publications.
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Papers
A Nomogram of Combining IVIM‐DWI and MRI Radiomics From the Primary Lesion of Rectal Adenocarcinoma to Assess Nonenlarged Lymph Node Metastasis Preoperatively
Hao Jia,Xueyan Jiang,Kaiyue Zhang,Jin Shang,Yu Zhang,Xin Fang,Fei Gao,Nai-yu Li,Jiang-Ning Dong +8 more
TL;DR: Preoperative detection of LN involvement is always highly challenging for radiologists, so it is important to select patients suitable for LN staging based on prior history and prior treatment decision-making.
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The Value of Intravoxel Incoherent Motion Diffusion-Weighted Magnetic Resonance Imaging Combined With Texture Analysis of Evaluating the Extramural Vascular Invasion in Rectal Adenocarcinoma
TL;DR: 3.0T MRI IVIM-DWI parameters combined with texture analysis can provide valuable information for EMVI evaluation of rectal adenocarcinoma before the operation.
4
Body composition predicts prognosis of hepatocellular carcinoma patients undergoing immune checkpoint inhibitors.
TL;DR: A nomogram based on body composition parameters and clinical factors could well predict survival in HCC patients treated with ICIs, and is in good agreement with the actual observations.
4
The value of CT radiomics features to predict visceral pleural invasion in ≤3 cm peripheral type early non-small cell lung cancer.
Shu-hua Wei,Jin-Mei Zhang,Bin Shi,Fei Gao,Zhao-Xuan Zhang,Liting Qian +5 more
TL;DR: The study demonstrates that the joint prediction model containing CT morphological features and texture features enables to predict the presence of VPI in early NSCLC preoperatively at the highest level.
A Combination Analysis of IVIM-DWI Biomarkers and T2WI-Based Texture Features for Tumor Differentiation Grade of Cervical Squamous Cell Carcinoma
Bin Shi,Jiang-Ning Dong,Li Xiang Zhang,Cui-Ping Li,Fei Gao,Nai-yu Li,Chuan-Bin Wang,Xin Fang,Peilei Wang +8 more
TL;DR: IVIM-DWI biomarkers and T2WI-based texture features had potential to evaluate the pathological differentiation of cervical squamous cell carcinoma and the combination of IVIM- DWI with texture analysis improved the predictive performance.