RT Journal Article SR Electronic T1 Immune monitoring using the predictive power of immune profiles JF Journal for ImmunoTherapy of Cancer JO J Immunother Cancer FD BMJ Publishing Group Ltd SP 7 DO 10.1186/2051-1426-1-7 VO 1 IS 1 A1 Michael P Gustafson A1 Yi Lin A1 Betsy LaPlant A1 Courtney J Liwski A1 Mary L Maas A1 Stacy C League A1 Philippe R Bauer A1 Roshini S Abraham A1 Matthew K Tollefson A1 Eugene D Kwon A1 Dennis A Gastineau A1 Allan B Dietz YR 2013 UL http://jitc.bmj.com/content/1/1/7.abstract AB Background We have developed a novel approach to categorize immunity in patients that uses a combination of whole blood flow cytometry and hierarchical clustering.Methods Our approach was based on determining the number (cells/μl) of the major leukocyte subsets in unfractionated, whole blood using quantitative flow cytometry. These measurements were performed in 40 healthy volunteers and 120 patients with glioblastoma, renal cell carcinoma, non-Hodgkin lymphoma, ovarian cancer or acute lung injury. After normalization, we used unsupervised hierarchical clustering to sort individuals by similarity into discreet groups we call immune profiles.Results Five immune profiles were identified. Four of the diseases tested had patients distributed across at least four of the profiles. Cancer patients found in immune profiles dominated by healthy volunteers showed improved survival (p < 0.01). Clustering objectively identified relationships between immune markers. We found a positive correlation between the number of granulocytes and immunosuppressive CD14+HLA-DRlo/neg monocytes and no correlation between CD14+HLA-DRlo/neg monocytes and Lin-CD33+HLA-DR- myeloid derived suppressor cells. Clustering analysis identified a potential biomarker predictive of survival across cancer types consisting of the ratio of CD4+ T cells/μl to CD14+HLA-DRlo/neg monocytes/μL of blood.Conclusions Comprehensive multi-factorial immune analysis resulting in immune profiles were prognostic, uncovered relationships among immune markers and identified a potential biomarker for the prognosis of cancer. Immune profiles may be useful to streamline evaluation of immune modulating therapies and continue to identify immune based biomarkers.Abbreviations:GBMGlioblastoma multiformaNHLNon-Hodgkin’s lymphomaRCCRenal cell carcinomaTregRegulatory T cellsOVAOvarian cancer patientsALIAcute lung injuryTT lymphocytesBB lymphocytesNKNatural killer cellsHVHealthy volunteersDEXDexamethasonePBMCPeripheral blood mononuclear cells.