Comparative study with new accuracy metrics for target volume contouring in PET image guided radiation therapy.
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Xiaodong Wu | Habib Zaidi | Valery Naranjo | Volker Dicken | Sébastien Lefèvre | Michel Bruynooghe | Ronald Boellaard | Ziming Zeng | Tony Shepherd | Heikki Minn | Mika Teras | Peter J Julyan | Reinhard R Beichel | Mark J Gooding | R. Boellaard | H. Zaidi | Xiaodong Wu | V. Dicken | V. Naranjo | S. Lefèvre | H. Minn | P. Julyan | M. Teras | M. Mix | J. Lee | R. Beichel | M. Gooding | Michael Mix | John A Lee | T. Shepherd | M. Bruynooghe | Ziming Zeng
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