AUTOMATIC SEGMENTATION OF BRAIN STRUCTURES FOR RADIOTHERAPY PLANNING By
نویسندگان
چکیده
Oncology planning software. I want to thank my parents for their faith in me and for all they did to support me for my higher studies. Their wisdom and love has always been the driving force behind my achievements. I also want to thank my fiancé, Sachin Deshmukh, for his motivation and for always being there for me. I also thank my friend Jayeeta and all my other friends for making me feel that I can achieve anything in this world. Special thanks to Pierre-Francois D'Haese and all my friends at the MIPLAB for their help and suggestions throughout my research work.
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