C. E. Desantis, Breast cancer statistics, CA: A Cancer Journal for Clinicians, vol.69, pp.438-451, 2019.

N. Sang-kyu-yang, W. Cho, and . Moon, The role of PET/CT for evaluating breast cancer, In: Korean journal of radiology, vol.8, pp.429-437, 2007.

B. Foster, A review on segmentation of positron emission tomography images, Computers in Biology and Medicine, vol.50, pp.76-96, 2014.

G. Litjens, A survey on deep learning in medical image analysis, Medical Image Analysis, vol.42, pp.60-88, 2017.

R. Coleman and R. Rubens, The clinical course of bone metastases from breast cancer, British Journal of Cancer, vol.55, pp.61-66, 1987.

H. Demirci, Uveal metastasis from breast cancer in 264 patients, American Journal of Ophthalmology, vol.136, pp.264-271, 2003.

, Comparison of ground truth (blue) vs automatic (orange) PET Bone index (PBI) per patient sorted according to their ground truth PBI. A good agreement is achieved except for a few cases like patient 15 illustrated on the middle row of Fig, vol.4

M. Imbriaco, A new parameter for measuring metastatic bone involvement by prostate cancer: The bone scan index, Clinical Cancer Research, vol.4, pp.1765-1772, 1998.

A. Idota, Bone Scan Index predicts skeletalrelated events in patients with metastatic breast cancer, 2016.

M. Colombié, Évaluation d'une méthode de quantification de la masse métastatique osseuse par mesure automatisée du Bone Scan Index, dans le suivi thérapeutique des cancers du sein, Médecine Nucléaire, vol.4101, pp.233-273, 2013.

C. K. Kim, Standardized Uptake Values of FDG: Body Surface Area Correction is Preferable to Body Weight Correction, Journal of Nuclear Medicine, 1994.

F. Isensee, Automated Design of Deep Learning Methods for Biomedical Image Segmentation, 2020.

F. Isensee, nnU-Net: Breaking the Spell on Successful Medical Image Segmentation, 2019.

O. Ronneberger, P. Fischer, and T. Brox, U-Net: Convolutional Networks for Biomedical Image Segmentation, Medical Image Computing and Computer-Assisted Intervention -MICCAI, vol.9351, 2015.

N. Heller, The state of the art in kidney and kidney tumor segmentation in contrast-enhanced CT imaging: Results of the KiTS19 Challenge, 2019.

, Keosys Medical Imaging Viewer, pp.2020-2021

S. Banik, R. Rangayyan, and G. Boag, Landmarking and Segmentation of 3D CT Images, 2009.