4.7 Article

Leukemia surfaceome analysis reveals new disease-associated features

Journal

BLOOD
Volume 121, Issue 25, Pages E149-E159

Publisher

AMER SOC HEMATOLOGY
DOI: 10.1182/blood-2012-11-468702

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Funding

  1. National Center of Competence in Research Neural Plasticity and Repair
  2. Mach-Gaensslen Foundation
  3. Swiss Cancer League
  4. Empiris Foundation
  5. Novartis Research Foundation
  6. Swiss National Science Foundation
  7. Hanne-Liebermann Foundation
  8. Foundation Kind und Krebs
  9. University of Zurich [GAUK 15710, P301/10/1877, NT13462]
  10. University of Zurich, ERA-NET PRIOMEDCHILD

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A better description of the leukemia cell surface proteome (surfaceome) is a prerequisite for the development of diagnostic and therapeutic tools. Insights into the complexity of the surfaceome have been limited by the lack of suitable methodologies. We combined a leukemia xenograft model with the discovery-driven chemoproteomic Cell Surface Capture technology to explore the B-cell precursor acute lymphoblastic leukemia (BCP-ALL) surfaceome; 713 cell surface proteins, including 181 CD proteins, were detected through combined analysis of 19 BCP-ALL cases. Diagnostic immunophenotypes were recapitulated in each case, and subtype specific markers were detected. To identify new leukemia-associated markers, we filtered the surfaceome data set against gene expression information from sorted, normal hematopoietic cells. Nine candidate markers (CD18, CD63, CD31, CD97, CD102, CD157, CD217, CD305, and CD317) were validated by flow cytometry in patient samples at diagnosis and during chemotherapy. CD97, CD157, CD63, and CD305 accounted for the most informative differences between normal and malignant cells. The ALL surfaceome constitutes a valuable resource to assist the functional exploration of surface markers in normal and malignant lymphopoiesis. This unbiased approach will also contribute to the development of strategies that rely on complex information for multidimensional flow cytometry data analysis to improve its diagnostic applications.

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