Automated skull stripping in mouse fMRI analysis using 3D U-Net
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Wufan Chen | Zhifeng Liang | Xinyuan Zhang | Chuanjun Tong | Yanqiu Feng | Jiaming Liu | Ziqi An | K. Wu | G. Ruan | Qiang Liu | Ping Liang
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