Development of a Physiologically-Based Mathematical Model for Quantifying Nanoparticle Distribution in Tumors
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Vittorio Cristini | Zhihui Wang | Prashant Dogra | Joseph D. Butner | Yao-li Chuang | V. Cristini | Y. Chuang | J. D. Butner | P. Dogra | Zhihui Wang
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