Impact of the accuracy of automatic tumour functional volume delineation on radiotherapy treatment planning
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Dimitris Visvikis | Mathieu Hatt | Olivier Pradier | Amandine Le Maitre | Catherine Cheze-le Rest | M. Hatt | D. Visvikis | C. Cheze-le Rest | O. Pradier | A. Le Maitre
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