MYC regulation of Glutamine-Proline regulatory axis is key in Luminal B breast cancer

Craze, M.L., Cheung, H., Jewa, N., Coimbra, N.D.M., Soria, D., El-Ansari, R., Aleskandarany, M.A., Cheng, K.W., Diez-Rodriguez, M., Nolan, C.C., Ellis, I.O., Rakha, E. and Green, A.R. 2018. MYC regulation of Glutamine-Proline regulatory axis is key in Luminal B breast cancer. British Journal of Cancer. 118 (2), pp. 258-265. https://doi.org/10.1038/bjc.2017.387

TitleMYC regulation of Glutamine-Proline regulatory axis is key in Luminal B breast cancer
TypeJournal article
AuthorsCraze, M.L.
Cheung, H.
Jewa, N.
Coimbra, N.D.M.
Soria, D.
El-Ansari, R.
Aleskandarany, M.A.
Cheng, K.W.
Diez-Rodriguez, M.
Nolan, C.C.
Ellis, I.O.
Rakha, E.
Green, A.R.
Keywordsmetabolism, breast cancer, prognosis, Luminal B, glutamine, proline
JournalBritish Journal of Cancer
Journal citation118 (2), pp. 258-265
ISSN0007-0920
Year2018
PublisherCancer Research UK (Publisher)
Accepted author manuscript
Publisher's version
Digital Object Identifier (DOI)https://doi.org/10.1038/bjc.2017.387
Publication dates
Published23 Nov 2017
Published online23 Nov 2017
Published in print23 Jan 2018
FunderUniversity of Nottingham
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