Next generation pan-cancer blood proteome profiling using proximity extension assay

Author:

Uhlen Mathias1ORCID,Álvez María Bueno1ORCID,Edfors Fredrik2ORCID,von Feilitzen Kalle3,Zwahlen Martin1,mardinoglu adil4,Edqvist Per-Henrik5ORCID,Sjöblom Tobias5ORCID,Lundin Emma6,Rameika Natallia6,Axelsson Tomas7,Åberg Mikael8,Nordlund Jessica9ORCID,Zhong Wen3ORCID,Karlsson Max1ORCID,Gyllensten Ulf5ORCID,Pontén Fredrik6ORCID,Fagerberg Linn10ORCID

Affiliation:

1. Science for Life Laboratory, Department of Protein Science, KTH Royal Institute of Technology

2. Stanford University

3. Royal Institute of Technology

4. KTH

5. Uppsala University

6. Department of Immunology, Genetics and Pathology, Uppsala University

7. Department of Medical Sciences, Uppsala University

8. Department of Medical Sciences, Clinical Chemistry and SciLifeLab, Uppsala University, Uppsala, Sweden

9. European Infrastructure for Translational Medicine; Department of Medical Sciences, Molecular Medicine and Science for Life Laboratory, Uppsala University

10. Department of Protein Science, Science for Life Laboratory, KTH-Royal Institute of Technology

Abstract

Abstract Cancer is a highly heterogeneous disease in need of accurate and non-invasive diagnostic tools. Here, we describe a novel strategy to explore the proteome signature by comprehensive analysis of protein levels using a pan-cancer approach of patients representing the major cancer types. Plasma profiles of 1,463 proteins from more than 1,400 cancer patients representing altogether 12 common cancer types were measured in minute amounts of blood plasma collected at the time of diagnosis and before treatment. AI-based disease prediction models allowed for the identification of a set of proteins associated with each of the analyzed cancers. By combining the results from all cancer types, a panel of proteins suitable for the identification of all individual cancer types was defined. The results are presented in a new open access Human Disease Blood Atlas. The implication for cancer precision medicine of next generation plasma profiling is discussed.

Publisher

Research Square Platform LLC

Reference27 articles.

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