A pathology atlas of the human cancer transcriptome

Mathias Uhlén(Science for Life Laboratory), Cheng Zhang(Science for Life Laboratory), Sunjae Lee(Science for Life Laboratory), Evelina Sjöstedt(Uppsala University), Linn Fagerberg(Science for Life Laboratory), Gholamreza Bidkhori(Science for Life Laboratory), Rui Benfeitas(Science for Life Laboratory), Muhammad Arif(Science for Life Laboratory), Zhengtao Liu(Science for Life Laboratory), Fredrik Edfors(Science for Life Laboratory), Kemal Sanli(Science for Life Laboratory), Kalle von Feilitzen(Science for Life Laboratory), Per Oksvold(Science for Life Laboratory), Emma Lundberg(Science for Life Laboratory), Sophia Hober(KTH Royal Institute of Technology), Peter Nilsson(Science for Life Laboratory), Johanna Sofia Margareta Mattsson(Uppsala University), Jochen M. Schwenk(Science for Life Laboratory), Hans Brunnström(Lund University), Bengt Glimelius(Uppsala University), Tobias Sjöblom(Uppsala University), Per‐Henrik Edqvist(Uppsala University), Dijana Djureinovic(Uppsala University), Patrick Micke(Uppsala University), Cecilia Lindskog(Uppsala University), Adil Mardinoğlu(Science for Life Laboratory), Fredrik Pontén(Uppsala University)
Science
August 17, 2017
Cited by 3,504Open Access
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Abstract

Cancer is one of the leading causes of death, and there is great interest in understanding the underlying molecular mechanisms involved in the pathogenesis and progression of individual tumors. We used systems-level approaches to analyze the genome-wide transcriptome of the protein-coding genes of 17 major cancer types with respect to clinical outcome. A general pattern emerged: Shorter patient survival was associated with up-regulation of genes involved in cell growth and with down-regulation of genes involved in cellular differentiation. Using genome-scale metabolic models, we show that cancer patients have widespread metabolic heterogeneity, highlighting the need for precise and personalized medicine for cancer treatment. All data are presented in an interactive open-access database (www.proteinatlas.org/pathology) to allow genome-wide exploration of the impact of individual proteins on clinical outcomes.


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