Literature DB >> 24263053

Proximity of TCR and its CD8 coreceptor controls sensitivity of T cells.

Jessica G Borger1, Rose Zamoyska1, Dmitry M Gakamsky2.   

Abstract

Spatial organisation of T cell receptor (TCR) and its coreceptor CD8 on the surface of live naïve and Ag-experienced CD8(+) T cells was resolved by fluorescence lifetime cross-correlation microscopy. We found that exposure of naïve CD8(+) T cells to antigen (Ag) causes formation of [TCR, CD8] functional ensembles on the cell surface which correlated with significantly enhanced sensitivity of these cells. In contrast, TCR and CD8 are randomly distributed on the surface of naïve cells. Our model suggests that close proximity of TCR and CD8 can increase Ag sensitivity of T cells by significant accelerating the TCR-peptide-major histocompatibility complex (pMHC) binding rate and stabilisation of this complex. We suggest that the proximity of these primary signalling molecules contributes to the mechanism of functional avidity maturation of CD8(+) T cells by switching them from a low to high sensitivity mode.
Copyright © 2013 The Authors. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  APC; Ag; Antigen recognition; CD8 coreceptor; CTL; EM; FCS; Fluorescence lifetime cross-correlation microscopy; Functional avidity maturation; LN; NSOM; T cell receptor; T cell receptor signalling; T cell sensitivity; TCR; antigen; antigen presenting cell; cytotoxic T cell lymphocyte; electron microscopy; fetal calf serum; lymph node; mAb; monoclonal antibody; near-field scanning optical microscopy

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Year:  2013        PMID: 24263053      PMCID: PMC3931270          DOI: 10.1016/j.imlet.2013.11.005

Source DB:  PubMed          Journal:  Immunol Lett        ISSN: 0165-2478            Impact factor:   3.685


Introduction

CD8+ T cells can substantially increase in sensitivity in the course of immune response by the mechanism of functional avidity maturation [1], [2], [3] to provide effective defence from re-infection [4]. The increase in sensitivity of T cells in contrast with B cells is not caused by the mechanism of somatic hypermutation [5]. Functional avidity maturation was explained in part by predominant expansion of clones with highest sensitivity to pMHC. However, cells expressing the same TCR can also increase sensitivity and become less dependent on CD28 co-stimulatory signal [6]. No correlation of T cell sensitivity with expression levels of the primary activation molecules (TCR and CD8) or adhesion molecules (LFA-1, CD2, CD43 and CD49d) was found [1]. All these findings suggested that that functional avidity maturation is caused by permanent changes in the signal transduction machinery regulating intermolecular events which follow the TCR–pMHC interaction. A critical role of Lck association with CD8 has been demonstrated [7], [8], [9], [10], [11]. It was found that Lck mediated phosphorylation of immunotyrosine-based activation motifs of the cytoplasmatic tails of the CD3 is necessary for T cell signalling [12]. An important role for the alpha-chain connecting peptide motif in mediating TCR-CD8 cooperation was also shown [13] It is noteworthy that in vitro stimulation of naïve T cells substantially increases the spatial coordination of the CD8 coreceptor and Lck which leads to more efficient organisation of the TCR signalling machinery [14]. In addition, co-capping CD8/TCR experiments suggested that optimal colocalisation of TCR and CD8 controls functional avidity of T cells [15]. Our earlier real-time data on tetramer association with T cell clones and hybridomas [16], [17] led us to suggest a kinetic promotion mechanism of CD8 cooperation which requires a colocalisation of TCR and CD8 on the cell surface which was named the proximity model. We also found that CD8 can significantly stabilise the formed TCR–pMHC complex. Disruption of rafts in the cellular membrane significantly slowed down the rate of tetramer association with T cells suggesting that the functional TCR and CD8 complexes reside in the cholesterol-rich domains [16]. Other studies investigating the involvement of CD8 in fine tuning of T cell sensitivity came to similar conclusions: namely that CD8 can influence both the TCR–pMHC association and dissociation rate and improve the binding efficiency of T cells particularly those with low affinity TCR and the CD8 involvement in Ag recognition recruits the TCR–pMHC complex to membrane microdomains where TCR mediated signalling steps proceed significantly faster [18], [19]. Using near-field scanning optical microscopy (NSOM) the physical distribution of the TCR and CD8 on the surface of antibody stimulated Rhesus monkey peripheral blood T cells was examined and showed that TCR and CD8 were organised in nanoclusters on the cell surface. In contrast, in the same study, unstimulated primary cells had a random distribution of TCR and CD8 as single molecules or small clusters of 2–4 molecules [20]. Furthermore, electron microscopy (EM) data showed that Ag-stimulated and memory T cells have more and larger TCR oligomers on the cell surface than their naïve counterparts [21]. These data indicate that the distribution of TCR and CD8 varies between naïve and antigen experienced cells although both above results were obtained in fixed cells. Nanoscale proximity of TCR and CD8 was also reported on the surface of unfixed low dose Ag-stimulated cells by fluorescence resonance energy transfer between CD8 labelled with a fluorescence donor and TCR labelled with a fluorescence acceptor by the interaction with a cognate pMHC ligand [22] however this interaction may bring about spatial coordination TCR and CD8. Measurement of TCR and CD8 organisation in live cells represents a considerable experimental challenge. Here we employed fluorescence lifetime cross-correlation microscopy to measure the proximity of TCR and CD8 molecules in naïve and Ag-experienced CD8+ T cells. In contrast with NSOM or EM, this method does not require intensive labelling of the proteins which can disturb their organisation and allows the measurements at virtually non-invasive level of optical excitation in live cells. Our results show nearly total colocalisation of TCR with CD8 on the surface of Ag-experienced T cells but virtually their random distribution on the surface of naïve cells. Based on these results we discuss a model which can explain, at least in part, the different sensitivity of naïve and Ag-experienced cells and suggest that the proximity of these primary signalling molecules contributes to the mechanism of functional avidity maturation of CD8+ T cells by switching them from a low to high sensitivity mode.

Materials and methods

Cells, antibodies and chemicals

Unless otherwise stated, all chemicals were purchased from Sigma–Aldrich (Haverhill, UK). Naïve T cells isolated from lymph nodes (LN) of 2–4 months old RAG1−/− F5 transgenic mice [23] which recognise an influenza virus specific peptide in the context of H-2Db, were cultured in IMDM supplemented with 5% FCS, l-glutamine, 100 U/mL penicillin and streptomycin and 50 μM β-mercaptoethanol. Ag-experienced cells were produced by in vitro stimulation of naïve F5 T cells with 100 nM NP68 peptide (ASNENMDAM) for 3 days, and then rested in 5 μg/mL IL-2 for 4–10 days. Fab fragment preparation [24] was as follows: 1 mg of CD8α-specific (YTS 169.4) mAbs [25] was digested into Fab with immobilised papain (Thermo Fisher Scientific, Loughborough, UK) in digesting buffer (50 mM PBS, 0.01 M EDTA, 0.1 M cystein, papain, mAb/enzyme ratio 100:1). The Fab preparation was confirmed to form a single band of 50 kD on SDS-PAGE. A relative affinity of Fab was measured by FACS in a competition labelling assay with intact Fluorescein-labelled YTS 169.4 mAbs. Quantum dots (Qdot) Qdot655 and Qdot800 Streptavidin conjugates were purchased from Invitrogen (Paisley, UK). Biotinylated TCRβ (H57-597) and CD8α-specific (YTS156.7.7) mAbs were purchased from BioLegend (London, UK).

FACS measurements

Naïve cells from LNs or Ag-experienced cell cultures were washed once and resuspended in IMDM medium supplemented with 5% FCS, l-glutamine, 100 U/mL penicillin and streptomycin and 50 μM β-mercaptoethanol. Triplicate cultures at 5 × 105 cells per well were added in 50 μL to 96-well plates containing media supplemented with NP68 and with or without CD8α-specific Fab fragments and incubated for 3 h at 37°/5%CO2. Stimulated cells were stained with CD8-PerCP (53–6.7), TCRβ-FITC (H57-597) and CD69-FITC (H1.2F3) specific mAbs (eBioscience, Hatfield, UK). A minimum of 30,000 events was collected using an LSRII (BD Biosciences, Oxford, UK), and data were analysed with FlowJo software (Tree Star, Olten, Switzerland).

Proximity measurements by fluorescence lifetime cross-correlation microscopy

For proximity correlation measurements cells were reacted with 1 nM of Qdot655-CD8β and Qdot800-TCRβ specific mAb conjugates in 50 mM PBS 2% BSA, 0.1% NaN3 pH 7.8 buffer at room temperature for 20 min. The conjugates were prepared in 50 mM Borate buffer, pH 8 by titration of streptavidin-coated Qdots with small fractions of biotinylated antibody to 60% of the total Qdot concentration to get less than 1 quantum dot: antibody stoichiometry. 3× washed cell samples were measured in the photon correlator module (Fig. 1) attached to an Eclipse T2000 inverted fluorescence microscope (Nikon, Edinburgh, UK) through the C-mount port. Excitation light beam of a single mode fibre-coupled 405 nm picosecond laser (EPL405, Edinburgh Instruments, Livingston, UK) operated at 20 MHz was directed to the microscope through the back port and Dichroic beam splitter 1 (FF510-DiO1-25-36, Semrock, Laser 2000, Ringstead, UK) and focused on a sample by Fluor 100× Oil Immersion Objective, N.A. 1.3 (Nikon, Edinburgh, UK). Sample fluorescence separated from the excitation light by Dichroic beam splitter 1 was directed to the Photon Correlation Module, where it was filtered by 50 μm Pinhole and split into two channels by Dichroic beam splitter 2 (FF740-Di01-25-36 Semrock, Laser 2000, Ringstead, UK) to be detected by two Single-Photon Avalanche Diodes (SPAD, SPMC-AQR-13, PerkinElmer, Cambridge, UK) trough interference filters 655 nm (FF01-655/15-25 Semrock, Laser 2000, Ringstead, UK) and 800 nm (FF01-800/12-25 Semrock, Laser 2000, Ringstead, UK). Detector signals and laser reference pulses were measured by DPC-230 photon correlator operated in a Time-Tagged Time Correlated Single Photon Counting mode (Becker & Hickl, Berlin, Germany). Exported to Matlab (MathWorks, Natick, MA) data were gated in the 3–15 ns lifetime range to discriminate fluorescence background and calculate auto-and cross-correlation functions.
Fig. 1

Schematics of the photon correlation module. The laser light is focused by objective with high numerical aperture to the diffraction limit on the cell surface. Fluorescence from the confocal volume separated from the excitation by Dichroic beam splitter 1 and filtered by 50 μm Pinhole is split into two channels by Dichroic beam splitter 2 and focused onto SPAD1 and SPAD2 detectors through interference filters 1 and 2.

Schematics of the photon correlation module. The laser light is focused by objective with high numerical aperture to the diffraction limit on the cell surface. Fluorescence from the confocal volume separated from the excitation by Dichroic beam splitter 1 and filtered by 50 μm Pinhole is split into two channels by Dichroic beam splitter 2 and focused onto SPAD1 and SPAD2 detectors through interference filters 1 and 2. Autocorrelation function was calculated aswhere n(t) and n(t + τ) are 0 or 1, N is a total number of photons and N is a number of time-intervals (laser periods) in the fluctuation measurement. Cross-correlation between the first and second channels was calculated aswhere N and N total numbers of photons in channels 1 and 2. Relative concentration of a spatially coordinated components were calculated as

Results

Naïve and antigen-experienced T-cells express similar levels of TCR and CD8

The aim of this study was to compare the spatial organisation of the TCR and CD8 in live naïve versus Ag-experienced CD8+ T cells and compare it with T cell sensitivity. Cells were obtained from a TCR transgenic mice in order to keep the TCR and CD8 constant. Naïve T cells were obtained directly from LN of a transgenic F5 Rag1−/− mice and Ag-experienced cells were produced by in vitro stimulation of naïve F5 T cells with NP68 peptide and then further cultured in presence of IL-2. First we compared expression levels of TCR and CD8 in naïve and Ag-experienced cells. Flow cytometry results of the cells reacted with labelled CD8 and TCR-specific mAbs show that Ag-experienced cells expressed slightly higher levels of these molecules than naïve cells. However, Ag-experienced cells were also larger as evaluated from the forward scatter signal (Fig. 2). Hence, the naïve and Ag experienced cells showed similar average densities of TCR and CD8.
Fig. 2

Relative expression of CD8 and TCR on naïve and Ag experienced cells. Ag-experienced CD8+ T cells were generated by stimulation of splenocytes cells from Rag1−/–F5 mice with 100 nM NP68 for 3 days, rested in 5 μg/mL IL-2 for 4 days, and then compared to naïve LN cells. (A) CD8+ T cells were assessed by flow cytometry to determine cell size (FSC) and CD8α and TCRβ expression. (B) Graphs show the mean values of FSC and CD8α and TCRβ associated fluorescence (MFI). Values are the mean of triplicate samples ± SD. All data are representative of at least two independent experiments.

Relative expression of CD8 and TCR on naïve and Ag experienced cells. Ag-experienced CD8+ T cells were generated by stimulation of splenocytes cells from Rag1−/–F5 mice with 100 nM NP68 for 3 days, rested in 5 μg/mL IL-2 for 4 days, and then compared to naïve LN cells. (A) CD8+ T cells were assessed by flow cytometry to determine cell size (FSC) and CD8α and TCRβ expression. (B) Graphs show the mean values of FSC and CD8α and TCRβ associated fluorescence (MFI). Values are the mean of triplicate samples ± SD. All data are representative of at least two independent experiments.

Involvement of CD8 in Ag recognition strongly affects T cell sensitivity

Then we studied sensitivity of naïve and Ag-experienced cells to Ag. CD69 is a convenient marker of T cell activation as its expression rapidly upregulates upon triggering of the TCR [26]. We employed this marker to compare the sensitivity of Ag-experienced and naïve F5 T cells (Fig. 3). As shown previously [27], [28] Ag-experienced F5 T cells are more sensitive to stimulation than naïve F5 T cells. Half-maximal upregulation of CD69 in naïve cells (black closed circles) occurred at ∼16-fold higher peptide concentration than in Ag-experienced cells (gray closed circles), i.e. Ag-experienced cells are ∼16-fold more sensitive than naïve cells. To examine the extent to which CD8 binding to pMHC influences the sensitivity of F5 T cells we blocked the CD8-MHC interaction by Fab fragments (100 μg/mL) of a CD8α-specific mAb (YTS 169.4) before pulsing the cells with NP68 peptide. The Fab concentration required to block the CD8-MHC interaction was measured in a competition binding assay with intact YTS 169.4 antibody (Supplementary Fig. S1). The abrogation of the CD8-pMHC interaction brought about an ∼8-fold reduction in sensitivity of Ag-experienced cells compared to a ∼20-fold reduction in naïve cells showing that CD8 strongly affects sensitivity to antigenic stimulation in the both cell types.
Fig. 3

Comparison of sensitivity of naïve and Ag experienced cells by upregulation of CD69. Naïve and Ag. Exp. CD8+ T cells were incubated with Fab (100 μg/mL) prior to stimulation with NP68 and assessed by flow cytometry. The graph represents the percentage of cells that upregulated CD69 expression in response to NP68 measured at 3 h. Values are the mean of triplicate samples ± SD. All data are representative of one experiment.

Comparison of sensitivity of naïve and Ag experienced cells by upregulation of CD69. Naïve and Ag. Exp. CD8+ T cells were incubated with Fab (100 μg/mL) prior to stimulation with NP68 and assessed by flow cytometry. The graph represents the percentage of cells that upregulated CD69 expression in response to NP68 measured at 3 h. Values are the mean of triplicate samples ± SD. All data are representative of one experiment.

TCR and CD8 spatial organisation

We employed fluorescence lifetime cross-correlation microscopy to investigate TCR and CD8 organisation on the surface of naïve and Ag-experienced cells expressing the same TCR but having different sensitivity. T cells were reacted with mono-functionalised Qdots with either CD8 or TCR-specific mAb, which have non-overlapping emission spectra with maxima at 655 nm or 800 nm, to get optimal density of labelled TCR and CD8 molecules on the cell surface. Live cells were imaged through a 50 μm pinhole aperture and events caused by the passage of individual labelled molecules through the confocal volume were measured. In this manner associations between TCR and CD8 could be monitored as the coincident emission of both wavelengths if both molecules passed through the confocal volume together at the moment of excitation. The upper panels in Fig. 4 show typical fluctuation traces of emission intensity of CD8-Qdot655 (dash line) and TCR-Qdot800 (dots) on the surface of naïve (left panel) and Ag-experienced (right panel) cells taken day 7 post-stimulation. The lower panels show auto-correlation functions of the QD655-CD8 (dash line) and QD800-TCR (dots) fluctuation signals and their cross-correlation function (solid line) for naïve (left panel) and Ag-experienced (right panel) cells. Similar results were observed for Ag-experienced cells between days 5–10 post-stimulation (data not shown). The cross-correlation trace (solid line) shows remarkable coincidences of TCR-Qdot800 and CD8-Qdot655 emission photons excited by the same or adjacent laser pulses in Ag-experienced cells only, indicating that, in this cell population most of the TCR molecules are colocalised with a CD8. In contrast, naïve T cells show much lower level of colocalisation of these two molecules. The amplitudes of the auto-correlation functions can be used to calculate the average number (N) of labelled molecules present in the confocal volume: N = 1/(G(0) − G(∞)), where G(0) and G(∞) are the values of the auto-correlation function in 0 and ∞ moments of time-delay. Thus, we calculate ∼10 CD8 and ∼1.4 TCR labelled molecules on the surface of both naïve and Ag-experienced cells. Fractions of TCR and CD8 correlated molecules can be calculated using Eq. (3). Averaging over 10 cells of each type gave (5 ± 5%) colocalisation for naïve cells and (90 ± 10%) for Ag-experienced cells. Because the surface density of CD8 was 7-fold higher than that of TCR the TCR/CD8 colocalisation implies that a TCR is surrounded by one or several CD8 coreceptors.
Fig. 4

Proximity measurements of TCR and CD8. Intensity fluctuations of Qdot labelled TCR-Qdot800 (dots) and CD8-Qdot655 (dash line) specific mAbs on the surface of naïve (top left) and Ag-experienced cells (top right). Auto-correlation (TCR-Qdot800 (dots), CD8-Qdot655, (dash line)) and cross-correlation functions (solid line) for naïve (bottom left) and Ag-experienced cells (bottom right). Further examples are shown in Supplementary Figure S2 (Supplementary materials).

Proximity measurements of TCR and CD8. Intensity fluctuations of Qdot labelled TCR-Qdot800 (dots) and CD8-Qdot655 (dash line) specific mAbs on the surface of naïve (top left) and Ag-experienced cells (top right). Auto-correlation (TCR-Qdot800 (dots), CD8-Qdot655, (dash line)) and cross-correlation functions (solid line) for naïve (bottom left) and Ag-experienced cells (bottom right). Further examples are shown in Supplementary Figure S2 (Supplementary materials).

Discussion

The molecular mechanisms behind the functional affinity maturation of Ag-experienced T cells which endows them with increased sensitivity to stimulation by pMHC are not well understood. In this study we show a different cell surface spatial organisation of TCR and CD8 between live naïve and Ag-experienced CD8+ T cells. These molecules are present as preformed [TCR, CD8] functional ensembles on the surface of Ag-experienced cells while they are predominantly randomly distributed on the surface of naïve T cells. Importantly, the surface density of TCR and CD8 were almost equal in both these cell types, so changes in molecular association were not due to alterations in relative abundance of the two proteins. The sensitivity of Ag-experienced cells was greatly reduced by reacting the cells with CD8α-specific Fab fragments known to abrogate the pMHC-CD8 interaction but to not affect expression levels of TCR or CD8 or concentrations of downstream signalling molecules. Hence, the T cell sensitivity is likely to be controlled by the proximity of CD8 and TCR which interact with pMHC at the very first steps of Ag recognition. There is a significant difference in the interaction of TCR and CD8 with pMHC. The latter binds to the conservative α3 domain of the MHC heavy chain and to β2m whereas TCR binds to the pMHC antigenic epitope shaped by the peptide structure. The first interaction with the affinity range of 100–200 μM is characterised by a relatively fast on-rate constant (≥105 M−1 s−1) and weak temperature dependence [29], [30], [31]. This binding rate complies with the rate predicted by the “grey spheres” model (5 × 105–5 × 106 M−1 s−1) which is about an order of magnitude smaller than the diffusion controlled limit for globular proteins of this molecular mass, ∼107 M−1 s−1, due to the geometrical factor accounting for their mutual orientation. In contrast, the interaction of TCR with non-self peptide-MHC class I restricted antigen is characterised by higher affinity (1–50 μM) [30], [32] and may involve significant conformational adjustments of the TCR and pMHC binding sites [33], [34] proceeding in the millisecond range [35]. As a result this interaction has typically a slower on-rate constant (102–104 M−1 s−1) and is temperature dependent [36], [37], [38]. Namely this interaction endows the specificity to Ag whereas CD8 can just facilitate antigen recognition and is not always necessary. The binding sites of these two interactions on pMHC are spatially separated by ∼4 nM and no cooperativity was observed in binding of soluble CD8 and TCR to the same pMHC ligand [31]. Nevertheless a cooperation between TCR and CD8 expressed on the cell surface has been reported [32], [39]. Indeed, being anchored in the cell surface membrane and bound to the same pMHC ligand the CD8-MHC interaction can stabilise the TCR–pMHC complex by increasing its rebinding probability. This mechanism has been discussed in the literature [32], [40] and considered as the major mechanism of CD8 cooperation. Another less obvious mechanism of CD8 cooperation is a possibility to affect the binding rate of the TCR–pMHC interaction. Assume that a T cell forms a stable contact interface with an APC and both TCR and CD8 can interact with the same pMHC ligand by a two-step reversible reaction mechanism which can proceed by one of the following reaction schemes starting either with the association of pMHC with CD8 (Eq. (4)) or with TCR (Eq. (5)). For both these reaction schemes the first step forward rate constants, k1 or k3, are proportional to the surface densities of pMHC and TCR or CD8, and on-rate constants of pMHC-CD8 () or pMHC–TCR () interactions respectively (Eqs. (6), (7)). For simplicity we assume that TCR and CD8 form a functional ensemble [TCR, CD8] with the minimal (1:1) stoichiometry when TCR and CD8 have equal local surface density. Hence, k1 and k3 differ only by the on-rate constants of the pMHC-CD8 or pMHC-TCR interactions. CD8 binds pMHC much faster than TCR and hence the first step operates faster in the first reaction scheme. If TCR and CD8 are colocalised at a short enough distance (≤5 nm), at which they can form a ternary complex with pMHC without involvement of lateral diffusion, their local surface density is to be ≥4 × 104 molecules/μm2. At such a high density the forward rate constants k2 or k4 of the second step will be considerably faster than the corresponding first step backward rate constant, i.e. k2 ≫ k−1 and k4 ≫ k−3. Hence, in both these cases the overall forward rate constants (Eq. (8)) will be close to the corresponding forward rate constants of the first step, i.e. in the first case to the rate of the CD8-pMHC binding () and in the second case to the rate of the TCR–pMHC binding (). Because k1 > k3, the first reaction route dominates in the formation of the pMHC·CD8·TCR ternary complex and the major fraction of pMHC will bind TCR at the rate of association of CD8 with pMHC (k1), i.e. significantly faster than it would be without the CD8 cooperation (k3).A different scenario is expected if TCR and CD8 are randomly distributed on the cell surface and separated such far that the formation of TCR·pMHC·CD8 ternary complex requires lateral diffusion. In this case the time between the first (pMHC-TCR or pMHC-CD8) and the second (TCR·pMHC-CD8 or CD8·pMHC-TCR) binding steps is expected to be ∼0.014 s [16]. The reciprocal of this value gives the frequency factor of the TCR–pMHC on-rate constant ∼70 s−1. Thus, the second step on-rate constant in the first reaction scheme being a product of the frequency factor by the geometrical (∼10−1) and activation energy factors (∼10−2) will be ≤0.1 s−1, whereas the dissociation rate constant of the CD8·pMHC complex is ∼10 s−1, i.e. k−1 ≫ k2. In contrast, the off-rate constant of the first step k−3 in the second reaction scheme is 0.1 − 1 s−1 and the on-rate constant of the second step k4 is ∼1 s−1 (because the activation energy factor for the CD8·pMHC interaction is at least 10-fold larger and than that of the TCR–pMHC interaction) and hence k−3 ≤ k4. Thus, for randomly distributed TCR and CD8 the second reaction scheme (Eq. (5)) predominantly operates where pMHC binds first to TCR and then CD8 binds to this complex. Hence, in this case CD8 can only stabilise the already formed TCR–pMHC complex by binding to the same pMHC ligand and getting thereby spatially coordinated with the TCR. Summarising the reaction mechanism we note that the formation of [TCR, CD8] functional ensembles can significantly accelerate the binding of pMHC and TCR and switch thereby a T cell to a high sensitivity mode. Importantly, the model predicts that all pMHC ligands irrespective of peptide structure will bind TCR with nearly the same rate close to the rate of the CD8-pMHC association. This high sensitivity mode is more important for slow binding pMHC ligands and less so for those which bind TCR with rate constants comparable with that of the CD8-pMHC interaction, i.e. T cell clones can be more or less CD8-dependent. In respect to a pMHC ligand a [TCR, CD8] functional ensemble can be considered as a bivalent receptor. However, in contrast with B cell receptor affinities of its binding sites are not equal. A question arises why the evolution developed the mechanism of non-constitutive association of TCR and CD8 to enhance the TCR–pMHC interaction instead of including CD8 into the TCR complex or by increasing TCR affinity? It is apparently because the proximity mechanism allows fine tuning of T cell sensitivity by the possibility to regulate the fraction of functional [TCR, CD8] ensembles and optimise the strength of immune response. Any structural changes in the binding site of a clonally preselected TCR may extend the TCR repertoire and increase the risk of autoimmunity. In contrast, the proximity mechanism does not affect the T cell repertoire but only kinetically promotes the binding of pMHC to TCR by giving an equal chance to any pMHC ligand to produce a transient complex with a TCR with a similar rate constant independently of its structure. At the same time the possibility that a stable TCR–pMHC complex will be formed is strictly determined by the structure of the pMHC antigenic epitope. Affinity of the CD8-pMHC interaction should be significantly lower than that of a TCR-cognate pMHC interaction to maintain peptide Ag specificity of the TCR–pMHC interaction [41], [42]. This is consistent with our model which suggests that the major role of this interaction is not to stabilise the TCR–pMHC complex but to provide the highest robustness of Ag screening on the surface of APC by stopping every pMHC ligand in front of a TCR and giving to it an equal chance to produce a stable TCR–pMHC complex with a lifetime longer than a threshold of Ag recognition. To provide the highest robustness of the Ag screening CD8 should bind pMHC as quickly as possible and the on-rate constant ≥105 M−1 s−1 is apparently the maximal rate which can be achieved for binding of these two globular proteins. Thus, lifetime of this complex should be long enough to facilitate the formation of a TCR·pMHC complex which in some cases involves millisecond conformational adjustments [35] but on the other hand it should not be too long to avoid increasing the lifetime of the CD8·pMHC·TCR ternary complexes with non-cognate ligands which comprise the major fraction of the pMHC population on the surface of APCs and to not largely reduce in the number of non-engaged TCRs available for Ag recognition. Thus, the delicate balance between CD8-pMHC and TCR–pMHC affinities and the proximity of TCR and CD8 are key factors providing the highest robustness to Ag recognition without compromising its specificity. Lifetime of the CD8-pMHC complex in the range of 50–100 ms is apparently a reasonable trade-off for the above conditions which gives the 100–200 μM range of CD8-pMHC affinity. Our data show that blocking the CD8-pMHC interaction significantly reduces sensitivity of Ag-experiences cells in accord with the prediction of the kinetic model. However the sensitivity did not decrease to the level of sensitivity of naïve cells. This suggests that together with the spatial CD8-TCR coordination there are other mechanisms affecting sensitivity of T cells. We know that TCRs can form nanoclusters on the surface of Ag-experienced cells [20], [21] and this differs them from naïve cells. Assembling of TCR into nanoclusters increases their local density and consequently the probability of pMHC rebinding, which can also contribute to the sensitivity of Ag-experienced cells. Previously we showed that CD8-pMHC interaction plays an important role in binding of Qdot-based pMHC nano-sensors to Ag-experienced T cells: the nano-sensors can bind to T cells even when all MHC molecules are “loaded” with a non-cognate peptide but do not bind when the CD8-MHC interaction was abrogated by a mutation in the α3 domain of the MHC heavy chain [43]. This means that CD8 also plays a role of adhesion molecule in the formation of T cell–APC contacts. We suggest that the random distribution of TCR on the surface of naïve cells makes this role even more important for naïve cells whereas in Ag-experienced cells the blockage of the CD8-MHC interaction can be partially compensated by a higher rebinding probability of pMHC to a TCR nanocluster. Therefore, naïve cells greatly loose their capacity to form stable contacts with APCs without the CD8-MHC interaction and their sensitivity dramatically decreases. In addition, the abrogation of CD8-MHC interaction can also reduce lifetime of TCR–pMHC complex which is likely to be me more important for naïve cells. In conclusion we note that the spatial organisation of the primary signalling molecules is formed in naïve CD8+ T cells by the interaction with Ag and remains over the lifespan of these cells. The proximity of TCR and CD8 increases the rate of Ag recognition and increases thereby the sensitivity of T cells. Detailed molecular mechanisms controlling TCR and CD8 organisation and the switching of T cells from a low to high sensitivity mode are yet to be elucidated.
  43 in total

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Journal:  Immunity       Date:  1999-02       Impact factor: 31.745

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Authors:  Rebecca L Davis-Harrison; Kathryn M Armstrong; Brian M Baker
Journal:  J Mol Biol       Date:  2005-01-05       Impact factor: 5.469

Review 5.  Spatial coordination of CD8 and TCR molecules controls antigen recognition by CD8+ T-cells.

Authors:  Israel Pecht; Dmitry M Gakamsky
Journal:  FEBS Lett       Date:  2005-04-26       Impact factor: 4.124

6.  Profound block in thymocyte development in mice lacking p56lck.

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Journal:  Nature       Date:  1992-05-14       Impact factor: 49.962

7.  Functional differences between memory and naive CD8 T cells.

Authors:  B K Cho; C Wang; S Sugawa; H N Eisen; J Chen
Journal:  Proc Natl Acad Sci U S A       Date:  1999-03-16       Impact factor: 11.205

8.  Interaction between the CD8 coreceptor and major histocompatibility complex class I stabilizes T cell receptor-antigen complexes at the cell surface.

Authors:  Linda Wooldridge; Hugo A van den Berg; Meir Glick; Emma Gostick; Bruno Laugel; Sarah L Hutchinson; Anita Milicic; Jason M Brenchley; Daniel C Douek; David A Price; Andrew K Sewell
Journal:  J Biol Chem       Date:  2005-04-18       Impact factor: 5.157

9.  Developmental regulation of Lck targeting to the CD8 coreceptor controls signaling in naive and memory T cells.

Authors:  M F Bachmann; A Gallimore; S Linkert; V Cerundolo; A Lanzavecchia; M Kopf; A Viola
Journal:  J Exp Med       Date:  1999-05-17       Impact factor: 14.307

10.  Positive and negative selection in transgenic mice expressing a T-cell receptor specific for influenza nucleoprotein and endogenous superantigen.

Authors:  C Mamalaki; J Elliott; T Norton; N Yannoutsos; A R Townsend; P Chandler; E Simpson; D Kioussis
Journal:  Dev Immunol       Date:  1993
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  5 in total

1.  Extent of MHC Clustering Regulates Selectivity and Effectiveness of T Cell Responses.

Authors:  Nadia Anikeeva; Nicholas O Fischer; Craig D Blanchette; Yuri Sykulev
Journal:  J Immunol       Date:  2018-12-12       Impact factor: 5.422

2.  T-cell trans-synaptic vesicles are distinct and carry greater effector content than constitutive extracellular vesicles.

Authors:  Pablo F Céspedes; Ashwin Jainarayanan; Lola Fernández-Messina; Salvatore Valvo; David G Saliba; Elke Kurz; Audun Kvalvaag; Lina Chen; Charity Ganskow; Huw Colin-York; Marco Fritzsche; Yanchun Peng; Tao Dong; Errin Johnson; Jesús A Siller-Farfán; Omer Dushek; Erdinc Sezgin; Ben Peacock; Alice Law; Dimitri Aubert; Simon Engledow; Moustafa Attar; Svenja Hester; Roman Fischer; Francisco Sánchez-Madrid; Michael L Dustin
Journal:  Nat Commun       Date:  2022-06-16       Impact factor: 17.694

3.  Interleukin-10 Directly Inhibits CD8+ T Cell Function by Enhancing N-Glycan Branching to Decrease Antigen Sensitivity.

Authors:  Logan K Smith; Giselle M Boukhaled; Stephanie A Condotta; Sabrina Mazouz; Jenna J Guthmiller; Rahul Vijay; Noah S Butler; Julie Bruneau; Naglaa H Shoukry; Connie M Krawczyk; Martin J Richer
Journal:  Immunity       Date:  2018-01-23       Impact factor: 31.745

Review 4.  Constant regulation for stable CD8 T-cell functional avidity and its possible implications for cancer immunotherapy.

Authors:  Connie B Gilfillan; Michael Hebeisen; Nathalie Rufer; Daniel E Speiser
Journal:  Eur J Immunol       Date:  2021-03-30       Impact factor: 5.532

5.  Relative Movements of Domains in Large Molecules of the Immune System.

Authors:  Wolfgang Schreiner; Rudolf Karch; Reiner Ribarics; Michael Cibena; Nevena Ilieva
Journal:  J Immunol Res       Date:  2015-12-21       Impact factor: 4.818

  5 in total

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