| Literature DB >> 23087687 |
Denise A Kaminski1, Chungwen Wei, Yu Qian, Alexander F Rosenberg, Ignacio Sanz.
Abstract
To advance our understanding and treatment of disease, research immunologists have been called-upon to place more centralized emphasis on impactful human studies. Such endeavors will inevitably require large-scale study execution and data management regulation ("Big Biology"), necessitating standardized and reliable metrics of immune status and function. A well-known example setting this large-scale effort in-motion is identifying correlations between eventual disease outcome and T lymphocyte phenotype in large HIV-patient cohorts using multiparameter flow cytometry. However, infection, immunodeficiency, and autoimmunity are also characterized by correlative and functional contributions of B lymphocytes, which to-date have received much less attention in the human Big Biology enterprise. Here, we review progress in human B cell phenotyping, analysis, and bioinformatics tools that constitute valuable resources for the B cell research community to effectively join in this effort.Entities:
Keywords: B lymphocyte; autoimmunity; data clustering; data management; flow cytometry; human
Year: 2012 PMID: 23087687 PMCID: PMC3467643 DOI: 10.3389/fimmu.2012.00302
Source DB: PubMed Journal: Front Immunol ISSN: 1664-3224 Impact factor: 7.561
Surface-phenotype defined human peripheral B cell subsets.
| Name | Type | Phenotype | Markers to sub-fractionate | Ascribed functions | Biomarker potential |
|---|---|---|---|---|---|
| Transitional | T1 | Precursor to T2; IL10 production (?) | Early reconstitution ∞ SLE remission post-BCDT | ||
| T2 | Precursor to T3; IL10 production (?) | ↓ IL10 in SLE | |||
| T3 | Precursor to mature-naïve; IL10 production (?) | ||||
| Mature-naïve | CD23, CD69, CD80, CD86 | Precursor to GC, memory, and antibody-secreting cells | ↑ activation in SLE | ||
| Memory | Double-negative | CD21, CD24, CD95, CXCR3 | Recall responses (and effector functions?) | ↓ in SS | |
| Non-switched | CD1c, CD21, CD24 | Immunoprotective self antibody (?); circulating MZ-like (?); regulatory (?) | ↓ in SLE; inverse correlation with autoAb | ||
| IgM-only | IgM+ | CD1c, CD21, CD24 | Immunoprotective self antibody (?); circulating MZ-like (?); regulatory (?) | ↑ in SS | |
| Switched | IgMneg
| CD21, CD24, CD95, CXCR3 | Pathogen protection; autoimmune pathology | ↑ ∞ relapse in SLE and RA post-BCDT | |
| ↓ ∞ poor vaccine response in elderly | |||||
| Antibody-secreting cell | Plasmablast | CD20, HLA-DR | Antibody secretion | ↑ in SLE | |
| Plasma cell | CD20, HLA-DR | Antibody secretion |
Markers in .
MTG, mitotracker green; SLE, systemic lupus erythematosus; RA, rheumatoid arthritis; SS, Sjögren’s syndrome; BCDT, B cell-depletion therapy; autoAb, autoantibody levels.
∞, “correlates or positively associates with”; ↑, increased; ↓, decreased.
Human memory B cell panel as per Wei et al. (.
| Marker | Purpose/function |
|---|---|
| Aqua live/dead dye | Dead cell/debris exclusion |
| CD3 | T cell exclusion |
| CD19 | B lineage cell inclusion |
| IgD | Non-switched BCR isotype |
| CD27 | Memory/activation |
| CD38 | Differentiation |
| CD24 | Differentiation |
| CD21 | BCR co-receptor down-regulated upon activation |
| CD95 | FAS death receptor up-regulated upon activation |
| CXCR3 | Inflamed tissue homing receptor |
| B220 (CD45 isoform) | Differentiation/9G4+ Ab target autoantigen |
| 9G4 | BCR self-reactive idiotype |
Figure 1Human B cell subsets identified with an established memory B cell fluorescent reagent panel (see Wei et al., . Schematized flow cytometry plot (gated on viable PBMC CD19+ B cells) indicates four core B cell subsets (gray ovals) defined by CD27 and IgD expression. SwMe, switched memory; DN, double-negative; NSM, non-switched memory. The naïve core subset can be further subdivided into transitional and mature-naïve B cells. Distinguishing T3 from mature-naïve requires a mitochondrial dye extrusion step not included in the memory B cell panel. The switched memory and CD27+/int memory-phenotype core subsets can be further evaluated for changes (thick red and green arrows) in the indicated markers known to be associated with B cell activation.
Figure 2Event clusters identified by FLOCK analysis. FLOCK (Qian et al., 2010) version 1.0 was run unsupervised on human PBMC stained with the 12-color memory B cell reagent panel described in OMIP-003 (Wei et al., 2011) pre-gated on single, viable CD19+ lymphoid events. (A) Overlay of 25 populations, indicated in unique colors, identified in the sample displayed as two-dimensional plots. (B) Representative event clusters of the indicated Patterns based on CD27 versus IgD signals. Numbers below the plots indicate IDs of populations (see Table 3) with similar event distributions as displayed in the corresponding plot. (C) Population 19 displayed as all parameters analyzed by FLOCK. In (B,C), white events on the gray background are the total CD19+ population, for reference. Characteristics of all 25 populations can be found in Table 3.
Characteristics of PBMC B cell clusters identified by FLOCK.
| Popln | IgD | CD27 | CD38 | CD24 | CD21 | CD95 | CXCR3 | B220 | 9G4 | % of CD19+ | |
|---|---|---|---|---|---|---|---|---|---|---|---|
| Pattern 1 | 3 | + | − | + | + | + | − | − | + | − | 12.80 |
| 9 | + | − | Low | Low | + | − | − | + | − | 11.06 | |
| 11 | + | − | + | + | + | − | − | + | − | 6.41 | |
| 21 | + | − | Low/− | +/Low | +/Low | − | − | + | − | 5.51 | |
| 25 | + | − | + | Low/− | − | − | − | + | + | 2.04 | |
| Pattern 2 | 16 | + | −/+ | Low/− | + | +/Low | − | − | + | − | 2.99 |
| 19 | + | −/+ | High/+ | +/Low | + | − | − | + | + | 5.12 | |
| 20 | + | −/+ | +/Low | +/Low | + | − | − | + | − | 7.29 | |
| 22 | + | −/+ | + | + | +/Low | − | ± | + | + | 2.95 | |
| 23 | + | −/+ | − | − | − | − | − | + | − | 3.17 | |
| 24 | + | −/+ | Low/− | Low/− | − | − | − | +/Low | − | 5.00 | |
| Pattern 3 | 2 | Low | − | Low | Low | + | − | − | + | − | 5.64 |
| 7 | Low | − | + | + | + | − | − | − | − | 1.47 | |
| 12 | Low | − | High | High | Low/− | − | − | + | − | 2.13 | |
| Pattern 4 | 1 | − | −/+ | Spread | − | − | − | − | ± | − | 1.34 |
| Pattern 5 | 17 | + | + | Low/− | + | + | − | − | +/Low | − | 2.61 |
| Pattern 6 | 4 | − | + | Low/− | Low/− | ± | + | − | Low/− | − | 1.56 |
| Pattern 7 | 5 | −/+ | + | − | + | + | − | − | +/Low | − | 2.74 |
| 6 | −/+ | + | Low/− | + | + | − | − | +/Low | − | 4.14 | |
| 8 | −/+ | + | − | + | + | − | − | + | − | 2.31 | |
| 10 | −/+ | + | ± | + | +/Low | − | ± | − | − | 1.49 | |
| 13 | −/+ | + | ± | + | + | − | − | − | − | 2.61 | |
| 14 | −/+ | + | +/Low | + | + | − | + | +/Low | − | 2.05 | |
| 15 | −/+ | + | +/Low | + | + | − | − | Low | − | 2.94 | |
| 18 | −/+ | + | ± | ± | ± | ± | + | +/Low | − | 2.63 |
FLOCK analysis of B cells was performed as described (Qian et al., .
The identical phenotypes of populations 3 and 11 may result from overpartitioning by FLOCK.
Note that the autoreactive idiotype 9G4 populations add-up to 10.1% and are found exclusively in naïve-phenotype (IgD.