Literature DB >> 26715450

MDR-1 and MRP-1 activity in peripheral blood leukocytes of rheumatoid arthritis patients.

Tamás Micsik1, András Lőrincz2,3, János Gál4, Richard Schwab5, István Peták6,7.   

Abstract

BACKGROUND: Rheumatoid Arthritis is a chronic disease leading to decreased quality of life with a rather variable response rate to Disease Modifying Anti Rheumatic Drugs. Methotrexate (MTX) is the gold standard therapy in Rheumatoid Arthritis. The Multidrug resistance Related Protein and Multi Drug Resistance protein 1, also called P-glycoprotein-170 transporters can alter the intracellular concentration of different drugs. Methotrexate is an MRP1 substrate and thus the functional activity of MRP1 might have a clinical impact on the efficiency of the Methotrexate-therapy in Rheumatoid Arthritis.
METHODS: We have compared the functional Multidrug Activity Factors (MAF) of the MDR1 and MRP1 transporters of Peripheral Blood Leukocytes of 59 Rheumatoid Arthritis patients with various response rate to MTX-therapy (MTX-responder, MTX-resistant and MTX-intolerant RA-groups) and 47 non-RA controls in six different leukocyte subpopulations (neutrophil leukocytes, monocytes, lymphocytes, CD4+, CD8+ and CD19+ cells). There was a decreased MAF of RA patients compared to non- Rheumatoid Arthritis patients and healthy controls in the leukocyte subpopulations. There was a significant difference between the MAF values of the MTX-responder and MTX intolerant groups. But we have not found significant differences between the MAF values of the MTX-responder and MTX-resistant Rheumatoid Arthritis -groups.
RESULTS: Our results suggest that MDR1 and MRP1 functional activity does not seem to affect the response rate to MTX-therapy of Rheumatoid Arthritis-patients, but it might be useful in predicting MTX-side effects. We have demonstrated the decreased functional MDR-activity on almost 60 Rheumatoid Arthritis patients, which can be interpreted as a sign of the immune-suppressive effect of the MTX-treatment.

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Year:  2015        PMID: 26715450      PMCID: PMC4696293          DOI: 10.1186/s13000-015-0447-1

Source DB:  PubMed          Journal:  Diagn Pathol        ISSN: 1746-1596            Impact factor:   2.644


Background

Rheumatoid arthritis (RA) is a chronic inflammatory disease of small articulations often leading to functional impairments and seriously affecting the quality of life [1]. Currently methotrexate (MTX) is the gold standard therapy of the disease modifying antirheumatic drugs (DMARDs), however the response rate is rather variable and many patients are completely resistant to MTX therapy [2, 3]. It has been previously reported, that the Multidrug Resistance Protein 1 (MDR1) and the Multidrug resistance Related Protein 1 (MRP1) transporters - responsible for chemo-resistance of tumor cells - may also have pathophysiological role in different chronic diseases, including rheumatoid arthritis [4, 5]. ATP Binding Cassette (ABC) -transporters are ATP-driven efflux pumps of the cell membranes present on many cell surfaces, but especially on barriers, bile-transporters, kidney-tubules, enterocytes, blood–brain barriers and inflammatory cells. These transporters extrude xenobiotic substances including various drugs via active transport [6]. According to their wide substrate specificity, these transporters may interfere with the absorption and distribution of many therapeutic agents and could influence their serum concentration which in turn can alter the efficiency of different treatments. The MRP1-transporter substrate MTX is the most widely used DMARD. Therefore, the elevated MDR1/MRP1 expression in the synovium of RA-patients suggested prognostic role to these proteins [3, 7–10]. On the other hand, many studies have reported, that expression levels of MDR1 and MRP1 proteins do not correlate with the functional activity of these proteins predicting the superiority of functional determination of transport activities over expression data [11-13]. The clinical relevance and usefulness of calcein-AM based functional multidrug-assay has been demonstrated in acute myeloid leukemia [14]. We have optimized this assay for the determination of functional MDR1- and MRP1-activity of different peripheral blood leukocyte subtypes of RA-patients to study their possible role in the response to DMARD-therapy.

Results

Our results suggest that MDR1 and MRP1 functional activity does not seem to affect the response rate to MTX-therapy of Rheumatoid Arthritis-patients, but it might be useful in predicting MTX-side effects. We have demonstrated the decreased functional MDR-activity on almost 60 Rheumatoid Arthritis patients, which can be interpreted as a sign of the immune-suppressive effect of the MTX-treatment. First, we have compared the MAFTotal, MAFMDR1 and MAFMRP1 of all six leukocyte subgroups of the five different patient groups to define if there is any significant difference between any of those. We did not find significant differences in the MAF-values of the RA-patients according to their responder-rate to MTX-therapy. Because most of the patients were taking other drugs as well, we have collected the data of medicine-intake with doses and analyzed the potential effect of these on each MAF value. After adjusting the model with the significant drug-effects on the MAF-values, we have compared each RA and non-RA groups pairwise with each other (Table 1).
Table 1

Shows the significant differences between different patient groups with (adjusted p) and without (p) the adjustment of the medicine effects on the different MAF values

Cell typeMAF typeGroup 1MeanGroup 2MeanpAdjusted pAfter adjustment
GranulocytesTotalMTX-intolerant15nonRA control11 0,0068 0,0026 significant
GranulocytesTotalMTX-responder14nonRA control11 0,0097 0,2005non significant
GranulocytesMRP1MTX-intolerant5MTX-responder2,50,3664 0,0276 significant
GranulocytesMRP1MTX-intolerant5nonRA control−2,50,0897 0,0472 significant
GranulocytesMDR1MTX-resistant11MTX-responder100,2475 0,0284 significant
MonocytesTotalMTX-responder7nonRA control12 0,0214 0,1114non significant
MonocytesTotalMTX-responder7Healthy control15,98 0,0023 0,6893non significant
MonocytesTotalMTX-intolerant9Healthy control15,98 0,0266 0,9483non significant
MonocytesTotalMTX-resistant7,5Healthy control15,98 0,0075 0,7462non significant
MonocytesMDR1MTX-resistant7Healthy control11,99 0,0044 0,6792non significant
MonocytesMDR1MTX-resistant7nonRA control12,5 0,0245 0,4869non significant
MonocytesMDR1MTX-intolerant7Healthy control11,99 0,0071 0,3590non significant
MonocytesMDR1MTX-responder5,5MTX-intolerant70,8766 0,0276 significant
MonocytesMDR1MTX-intolerant7nonRA control12,5 0,0443 0,0472 significant
LymphocytesTotalHealthy control34,29MTX-resistant27,5 0,0023 0,0504trend
LymphocytesTotalHealthy control34,29MTX-intolerant26 0,0014 0,0121 significant
LymphocytesTotalHealthy control34,29nonRA control29 0,0359 0,0537trend
LymphocytesTotalHealthy control34,29MTX-responder26 0,0011 0,0084 significant
LymphocytesMRP1nonRA control0MTX-responder6,50,08420,0510trend
LymphocytesMRP1nonRA control0MTX-intolerant70,0532 0,0139 significant
LymphocytesMRP1nonRA control0MTX-resistant40.0689 0,0022 significant
LymphocytesMRP1nonRA control0Healthy control10,55 0,0023 0,0014 significant
LymphocytesMDR1nonRA control32Healthy control21,73 0,0129 0,0847trend
LymphocytesMDR1nonRA control32MTX-responder22,5 0,0164 0,0084 significant
LymphocytesMDR1nonRA control32MTX-resistant21,5 0,003 0,0008 significant
LymphocytesMDR1nonRA control32MTX-intolerant21 0,002 0,0007 significant
CD4+ cellsTotalnonRA control23,5MTX-resistant20 0,0156 0,0270 significant
CD4+ cellsTotalHealthy control26,81MTX-responder21,5 0,036 0,2212non significant
CD4+ cellsTotalnonRA control23,5MTX-intolerant21 0,0211 0,0064 significant
CD4+ cellsTotalHealthy control26,81MTX-resistant20 0,0174 0,0278 significant
CD4+ cellsTotalHealthy control26,81MTX-intolerant21 0,0032 0,0081 significant
CD4+ cellsMRP1nonRA control−1Healthy control7,8 0,0118 0,0103 significant
CD4+ cellsMRP1Healthy control7,8MTX-resistant20,076 0,0492 significant
CD4+ cellsMRP1nonRA control−1MTX-intolerant4 0,0121 0,0950trend
CD4+ cellsMDR1nonRA control27,5MTX-intolerant16 0,0004 0,0015 significant
CD4+ cellsMDR1nonRA control27,5MTX-resistant17,5 0,0046 0,0154 significant
CD4+ cellsMDR1nonRA control27,5MTX-responder17 0,0364 0,0698trend
CD4+ cellsMDR1nonRA control27,5Healthy control17,7 0,0108 0,0448 significant
CD8+ cellsTotalnonRA control35MTX-intolerant31 0,0262 0,0585trend
CD8+ cellsTotalnonRA control35MTX-resistant31 0,0078 0,0046 significant
CD8+ cellsTotalnonRA control35MTX-responder29 0,0008 0,0001 significant
CD8+ cellsTotalHealthy control40,15MTX-intolerant31 0,0036 0,0120 significant
CD8+ cellsTotalHealthy control40,15MTX-resistant31 0,0004 0,0032 significant
CD8+ cellsTotalHealthy control40,15MTX-responder29 0,0002 0,0003 significant
CD8+ cellsTotalMTX-responder29MTX-intolerant310,13090,0601trend
CD8+ cellsMRP1Healthy control14,35MTX-intolerant5 0,0003 0,0004 significant
CD8+ cellsMRP1Healthy control14,35MTX-resistant6 0,002 0,0017 significant
CD8+ cellsMRP1Healthy control14,35MTX-responder6,5 0,0069 0,0031 significant
CD8+ cellsMRP1Healthy control14,35nonRA control0 0,0053 0,0131 significant
CD8+ cellsMDR1nonRA control37,5MTX-intolerant28 0,0302 0,0634trend
CD8+ cellsMDR1nonRA control37,5MTX-resistant24,5 0,0071 0,0014 significant
CD8+ cellsMDR1nonRA control37,5MTX-responder21,5 0,0057 0,0012 significant
CD8+ cellsMDR1nonRA control37,5Healthy control21,93 0,0089 0,0324 significant
CD19+ cellsTotalnonRA control20,5MTX-resistant16,5 0,0435 0,6173non significant
CD19+ cellsMRP1nonRA control0MTX-intolerant5 0,0426 0,0057 significant
CD19+ cellsMRP1nonRA control0MTX-resistant3,50,3154 0,0180 significant
CD19+ cellsMDR1nonRA control22,5MTX-intolerant14 0,0175 0,0491 significant
CD19+ cellsMDR1nonRA control22,5MTX-resistant15 0,0109 0,0000 significant
CD19+ cellsMDR1MTX-responder17MTX-intolerant140,4548 0,0058 significant

Significant p-values are highlighted in bold

Shows the significant differences between different patient groups with (adjusted p) and without (p) the adjustment of the medicine effects on the different MAF values Significant p-values are highlighted in bold With the adjusted model, the MAFMDR1 of the granulocytes was significantly higher in the MTX-responder group than the MTX-resistant group. Another finding was that the MTX-intolerant RA-group had significantly higher MAFMRP1 than the MTX-responders in the granulocyte subpopulation (Fig. 1). Unfortunately, the granulocyte representation was sometimes low in our samples and not all blood samples contained enough granulocytes to be subject of precise MAF determination.
Fig. 1

Significant differences among various patient-groups. The differences among the 5 groups are shown with arrows pointing towards the significantly higher MAF values according to the adjusted/justified model. Only significant differences with p < 0,05 are shown

Significant differences among various patient-groups. The differences among the 5 groups are shown with arrows pointing towards the significantly higher MAF values according to the adjusted/justified model. Only significant differences with p < 0,05 are shown With a potential clinical application, another interesting finding was the difference in MAF values in the granulocyte, monocyte and CD19+ cells between the MTX-responder and the MTX-intolerant groups. The MAFMRP1 of granulocytes in the MTX-intolerant group was significantly higher than that of MTX-responder RA-patients, and the MAFMDR1 of MTX-intolerant group was significantly higher than that of MTX-responder RA-patients in the granulocyte population. In contrast, we have found significantly lower MAFMDR1 of the CD19+ cells of RA-patients intolerant to MTX-therapy than those of MTX-responders. According to our results, the most prominent difference was found between the different RA-groups and the two control groups in almost all leukocyte subgroups. Granulocytes and CD19+ cells had higher MAFMRP1 in the RA-groups with the adjusted model, while the other leukocyte groups have higher MAFTotal and MAFMDR1 and lower MAFMRP1. The differences become more pronounced in the following sequence: monocyte, lymphocyte, CD4+ cells and CD8+ cells (Fig. 1).

Discussion

The first report on the potential role of MDR-proteins in RA found significantly higher MDR1 (P-glycoprotein) expression in steroid-treated RA-patients independently from other factors [15]. Later, in a small study by Yudoh et al. increased expression of P-Glycoprotein on Th1-cells correlated with drug resistance was observed after two month of therapy with bucillamin or sulfsalazine [16]. As DMARD therapy moved forwards, the MRP1-susbtrate MTX and the role of the MRP1 proteins have emerged in defining the response to MTX-therapy [17]. Despite our original hypothesis on the effect of functional MDR-activity on the response rate to MTX-therapy, in this study we were not able to demonstrate significant differences in the functional MDR-activities of MTX-responder and MTX-resistant RA patients, except for the higher MAFMDR1 of granulocytes of MTX-responders than MTX-resistants. However, we found another significant difference in the MAF values of the granulocytes: the MTX-intolerant RA-group had significantly higher MAFMRP1 than the MTX-responder RA-group. This difference may be useful in identifying the MTX-intolerant patients, who cannot benefit from MTX-therapy. The MAFMRP1 of granulocytes and the MAFMDR1 of monocytes was significantly higher in the MTX-intolerant patients than in MTX-responders, while they had significantly lower MAFMDR1 in the CD19+ population. The combination of these three results could be clinically relevant in determining the MTX intolerant patient population. In clinical setting: if a patient needs dose escalation of MTX and has side effects probably related to MTX, a scheduled MDR-functional assessment finding the upper mentioned triad of granulocytic MAFMRP1 and monocytic, CD19+ lymphocytic MAFMDR1 values might help in deciding to turn off ineffective dose-escalation of MTX. Titrating MTX-dosage in RA-patients is quite laborious, so disclosing patients who will not benefit from dose elevation and thus avoiding the harmful side effects of MTX-treatment might have clinical relevance in the future. Although, further studies are still needed for the clinical implementation/validation of these findings. There are only few previous studies on RA patients investigating the role of MDR-transporters in MTX-response. Wolf et al. determined the functional activity of Reduced Folate Carrier (RFC), which transports MTX into the cells, and MRP1, which effluxes MTX out of the cells. They logically anticipated that RFC+ and MRP- patients should have better response to MTX-therapy, but instead, they observed the opposite result, since these patients had the worse response rate, while the lack or presence of both proteins was linked to significantly better therapeutic outcome [18]. In another study, they determined the mRNA-levels of FolylPolyGlutamyl Synthetase (FPGS) enzyme, which accumulates MTX into the cells, and they also found the contradictory result, such that FPGS mRNA expression is an independent predictive factor associated with poor response to MTX-therapy in RA patients [19]. Considering the rather complex metabolic and effector mechanism of MTX, more studies are needed to evaluate the effects of the various functional activities on MTX-response [20]. Our most relevant finding was the major difference between the RA and control groups. In general, the significant differences were the decreased MAFTotal and MAFMDR1 and higher MAFMRP1 in the RA patients compared to the control-patients calculated with or without adjustment of the effects of medicine-intake. This difference was most prominent in case of the CD8+ cells. These cells had the highest MAF-values, which is in agreement with the literature [21, 22]. Interestingly, although MTX is an MRP1 substrate, the most important and significant differences were found in MAFTotal and MAFMDR1. Hider et al. described the down regulation of MRP1 protein in PBLs by immunocytochemistry of early RA-patients after six months of MTX-therapy. They studied the MRP1 expression of 18 RA patients and 14 control persons, but they also couldn’t find any difference between the MRP1 levels of the responder and non-responder RA-patients [23]. In our study we found similar results, but we used the dynamic data of functional activity determination of MDR1 and MRP1-proteins instead of the static representation of MRP1 proteins. This, according to the earlier data, may give better insight to the significance of the MDR-proteins on treatment. Furthermore, comparing 3 RA-groups of altogether 59 RA-patients and two control groups of altogether 47 persons, we found multiple significant differences between those groups. Our results demonstrate that MTX-treatment inhibits total MDR and MDR1 functional activity in RA-patients.

Conclusions

In conclusion, by comparing the MAF values of six leukocyte subpopulations among 3 RA-patient and 2 control groups, we have found significant difference in case of granulocytes between the MTX-responder and MTX-resistant RA-group. Our results have shown multiple differences in MAF values of the MTX-responder and MTX-intolerant RA-groups, and therefore, determining MAF in RA-patients might be useful in predicting MTX-intolerance. Titrating MTX-dosage in RA-patients is quite laborious, so disclosing patients who will not benefit from dose elevation and thus avoiding the harmful side effects of MTX-treatment may have clinical relevance in the future. Our most relevant finding was, however, the decreased functional MDR1- and MRP1-activity in MTX treated RA-patients, which might be interpreted as part of the immunosupression.

Methods

Patient samples

RA patients were categorized by their DAS28 improvement rate into MTX-responder (n = 18) and MTX-resistant (n = 20) groups. An additional MTX-intolerant group was also selected as RA-patients who terminated MTX-therapy (n = 21) due to intolerable side effects. The two control groups were composed as either hospitalized (due to other diseases or traumas) patients without RA (n = 20) as well as healthy, young volunteers (n = 27). Altogether, 106 samples were grouped in three RA-groups (n = 59) and two control groups (n = 47). All peripheral blood samples were collected with the approval of the national and local ethical committee (ETT TUKEB: Scientific and Research Ethics Committee of the Medical Research Council. Ministry of Health, Medical Research Council,Budapest, H-1051, Arany János u. 6–8, Hungary.) and all patients were involved after signing their written agreement. Blood samples were taken in 5 ml BD Vacutainer tubes with EDTA (BD #367861) and stored at 4 °C until transported and processed within 6 h after sampling. PBLs were isolated using HISTOPAQUE 1077 (Sigma-Aldrich, 10771).

Calcein assay

The original calcein assay was obtained from the MultiDrugQuant Assay™ (Product No. 5 599880 083012, SOLVO Biotechnology Inc. Budaörs, Hungary, http://www.solvobiotech.com/). MDQuant Assay™ was used to determine the functional activity of MDR1 and MRP1 transporters in MAF (Multidrug Activity Factor), which is a dimensionless and standardized value calculated by the mathematical formula: MAFTotal = 100 x (FVerapamil - FHBSS)/ FVerapamil; MAFMRP1 = 100 x (FMK571 - FHBSS)/ FVerapamil; MAFMDR1 = MAFTotal – MAFMRP1 where F stands for the average mean calcein-fluorescence values of the parallel samples. Functional MDR Activity Factor (MAF) was determined in six PBL populations (granulocytes, monocytes, lymphocytes, CD4+, CD8+, CD19+ cells).

Immunocytochemistry

Immunostaining of the different PBL-subpopulations was performed at room temperature by incubating the blood cells in 100 μl HBSS containing either 1 μg of mouse anti-IgG1 antibody for isotype control (X0931, Dako) or 6ul anti-CD3,4,8 (CD3: C7225, CD4: C24865, CD8: C9494, Dako) or 12ul of anti-CD19 (C24825, Dako). The immunolabeling was visualized by incubation with 1 μg secondary Cy5-conjugated goat anti-mouse IgG antibody (115-175-003, Jackson Immuno Research).

Viability staining

Non-viable cells were labeled by incubation in 200 μL HBSS containing 1 μg/ml propidium iodide (PI; 287075, Sigma-Aldrich,) for 30 min at room temperature.

Determination of MAF-values of different white blood cell subpopulations

Measurements were performed on a FacsCalibur (Becton Dickinson, Franklin Lakes, NJ, USA) flow cytometer. The viable cells were selected by the positive staining with Calcein and lack of PI staining. Granulocytes, monocytes and lymphocytes were gated on the FSC-SSC scatterplot. The CD4, CD8 and CD19 positive subpopulations were gated based on their positivity with the corresponding antibody detected at FL4 against the non-specific binding detected with IgG1 isotype control. (Gating algorithm is shown in Fig. 2.) The shifts in the calcein signal of the leukocyte subpopulations were determined with different MDR-blockers (verapamil and MK-571) compared to HBSS control. MAFTotal, MAFMDR1 and MAFMRP1 was calculated on each subpopulations (Fig. 3).
Fig. 2

Gating out CD3+ cell population. Part a shows how the lymphocytes are gated with R1 in the FSC-SideSCatter dot-plot. The cells in R1 gate are shown on the Fl1-Fl3 graph of part b, where the viable cells are gated out by the R2 gate. Part c and d shows how the viable lymphocytes of R2 gate stain with anti-CD3 stain. R3 gate on the FL4-SSC graph is positioned to select out only the CD3+ cells

Fig. 3

Calculating the MAF-values. This figure shows the shifts in the Fl1-Calcein-signal with the different MDR-blockers. Part a shows the two parallel samples treated with the MDR1 and MRP1 blocker Verapamil (Fl1-Calcein mean 645.72 and 619.07). Part b shows the two parallel samples of the controls incubated in HBSS (Fl1 mean 406.42 and 428.39). Part c shows the two parallel samples treated with the MRP1 blocker MK-571 (Fl1-Calcein 436.39 and 389.89). With these Fl1-Calcein values the different MAFs of the CD3+ lymphocytes are as follows MAFTotal = 34, MAFMRP1 = 0, MAFMDR1 = 34

Gating out CD3+ cell population. Part a shows how the lymphocytes are gated with R1 in the FSC-SideSCatter dot-plot. The cells in R1 gate are shown on the Fl1-Fl3 graph of part b, where the viable cells are gated out by the R2 gate. Part c and d shows how the viable lymphocytes of R2 gate stain with anti-CD3 stain. R3 gate on the FL4-SSC graph is positioned to select out only the CD3+ cells Calculating the MAF-values. This figure shows the shifts in the Fl1-Calcein-signal with the different MDR-blockers. Part a shows the two parallel samples treated with the MDR1 and MRP1 blocker Verapamil (Fl1-Calcein mean 645.72 and 619.07). Part b shows the two parallel samples of the controls incubated in HBSS (Fl1 mean 406.42 and 428.39). Part c shows the two parallel samples treated with the MRP1 blocker MK-571 (Fl1-Calcein 436.39 and 389.89). With these Fl1-Calcein values the different MAFs of the CD3+ lymphocytes are as follows MAFTotal = 34, MAFMRP1 = 0, MAFMDR1 = 34

Statistical methods

MAF measurements were modeled using analysis of covariance (ANCOVA) with residual error stratified in patient groups to allow for unequal variances. Models were fitted using the R statistical system (R Development Core Team 2007, ISBN 3-900051-07-0), with the GLS (generalized least squares) procedure of the NLME package (R Core team, 2007, R-package version 3.1-86). Models were compared by using maximum likelihood (ML) fits, and Wald-type significance tests were performed using restricted maximum likelihood (REML) estimates. Differences were considered statistically significant below the level of p = 0.05. The following predictors were considered during model selection: patient group (5 levels), sample storage duration (continuous), drug doses of methotrexate, delagil, arava, medrol (continuous), administration of the same drugs (yes/no), administration of NSAIDs (yes/no). We have selected the best model using the Akaike Information Criterion (AIC) (Akaike 1974: A new look at the statistical model identification. IEEE Transactions on Automatic Control 19 (6): 716–723.) All subsets regression was not computationally feasible due to the large number of predictors, so forward and backward stepwise variable selection algorithms were applied. When the stepwise algorithm yielded a model where the same drug was included both as a continuous and binary predictor, we checked if the coefficients corresponded to a monotonous dose-effect relationship. In case of non-monotonicity we have considered the two parameters for the same drug as overfitting, dropped the model and the stepwise algorithm was restarted twice, first omitting the binary dose variant, second omitting the continuous one. When the stepwise algorithms led to different models, the one with lowest AIC value was selected.
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Journal:  J Immunol Res       Date:  2022-08-13       Impact factor: 4.493

5.  Guidelines for the use of flow cytometry and cell sorting in immunological studies (second edition).

Authors:  Andrea Cossarizza; Hyun-Dong Chang; Andreas Radbruch; Andreas Acs; Dieter Adam; Sabine Adam-Klages; William W Agace; Nima Aghaeepour; Mübeccel Akdis; Matthieu Allez; Larissa Nogueira Almeida; Giorgia Alvisi; Graham Anderson; Immanuel Andrä; Francesco Annunziato; Achille Anselmo; Petra Bacher; Cosima T Baldari; Sudipto Bari; Vincenzo Barnaba; Joana Barros-Martins; Luca Battistini; Wolfgang Bauer; Sabine Baumgart; Nicole Baumgarth; Dirk Baumjohann; Bianka Baying; Mary Bebawy; Burkhard Becher; Wolfgang Beisker; Vladimir Benes; Rudi Beyaert; Alfonso Blanco; Dominic A Boardman; Christian Bogdan; Jessica G Borger; Giovanna Borsellino; Philip E Boulais; Jolene A Bradford; Dirk Brenner; Ryan R Brinkman; Anna E S Brooks; Dirk H Busch; Martin Büscher; Timothy P Bushnell; Federica Calzetti; Garth Cameron; Ilenia Cammarata; Xuetao Cao; Susanna L Cardell; Stefano Casola; Marco A Cassatella; Andrea Cavani; Antonio Celada; Lucienne Chatenoud; Pratip K Chattopadhyay; Sue Chow; Eleni Christakou; Luka Čičin-Šain; Mario Clerici; Federico S Colombo; Laura Cook; Anne Cooke; Andrea M Cooper; Alexandra J Corbett; Antonio Cosma; Lorenzo Cosmi; Pierre G Coulie; Ana Cumano; Ljiljana Cvetkovic; Van Duc Dang; Chantip Dang-Heine; Martin S Davey; Derek Davies; Sara De Biasi; Genny Del Zotto; Gelo Victoriano Dela Cruz; Michael Delacher; Silvia Della Bella; Paolo Dellabona; Günnur Deniz; Mark Dessing; James P Di Santo; Andreas Diefenbach; Francesco Dieli; Andreas Dolf; Thomas Dörner; Regine J Dress; Diana Dudziak; Michael Dustin; Charles-Antoine Dutertre; Friederike Ebner; Sidonia B G Eckle; Matthias Edinger; Pascale Eede; Götz R A Ehrhardt; Marcus Eich; Pablo Engel; Britta Engelhardt; Anna Erdei; Charlotte Esser; Bart Everts; Maximilien Evrard; Christine S Falk; Todd A Fehniger; Mar Felipo-Benavent; Helen Ferry; Markus Feuerer; Andrew Filby; Kata Filkor; Simon Fillatreau; Marie Follo; Irmgard Förster; John Foster; Gemma A Foulds; Britta Frehse; Paul S Frenette; Stefan Frischbutter; Wolfgang Fritzsche; David W Galbraith; Anastasia Gangaev; Natalio Garbi; Brice Gaudilliere; Ricardo T Gazzinelli; Jens Geginat; Wilhelm Gerner; Nicholas A Gherardin; Kamran Ghoreschi; Lara Gibellini; Florent Ginhoux; Keisuke Goda; Dale I Godfrey; Christoph Goettlinger; Jose M González-Navajas; Carl S Goodyear; Andrea Gori; Jane L Grogan; Daryl Grummitt; Andreas Grützkau; Claudia Haftmann; Jonas Hahn; Hamida Hammad; Günter Hämmerling; Leo Hansmann; Goran Hansson; Christopher M Harpur; Susanne Hartmann; Andrea Hauser; Anja E Hauser; David L Haviland; David Hedley; Daniela C Hernández; Guadalupe Herrera; Martin Herrmann; Christoph Hess; Thomas Höfer; Petra Hoffmann; Kristin Hogquist; Tristan Holland; Thomas Höllt; Rikard Holmdahl; Pleun Hombrink; Jessica P Houston; Bimba F Hoyer; Bo Huang; Fang-Ping Huang; Johanna E Huber; Jochen Huehn; Michael Hundemer; Christopher A Hunter; William Y K Hwang; Anna Iannone; Florian Ingelfinger; Sabine M Ivison; Hans-Martin Jäck; Peter K Jani; Beatriz Jávega; Stipan Jonjic; Toralf Kaiser; Tomas Kalina; Thomas Kamradt; Stefan H E Kaufmann; Baerbel Keller; Steven L C Ketelaars; Ahad Khalilnezhad; Srijit Khan; Jan Kisielow; Paul Klenerman; Jasmin Knopf; Hui-Fern Koay; Katja Kobow; Jay K Kolls; Wan Ting Kong; Manfred Kopf; Thomas Korn; Katharina Kriegsmann; Hendy Kristyanto; Thomas Kroneis; Andreas Krueger; Jenny Kühne; Christian Kukat; Désirée Kunkel; Heike Kunze-Schumacher; Tomohiro Kurosaki; Christian Kurts; Pia Kvistborg; Immanuel Kwok; Jonathan Landry; Olivier Lantz; Paola Lanuti; Francesca LaRosa; Agnès Lehuen; Salomé LeibundGut-Landmann; Michael D Leipold; Leslie Y T Leung; Megan K Levings; Andreia C Lino; Francesco Liotta; Virginia Litwin; Yanling Liu; Hans-Gustaf Ljunggren; Michael Lohoff; Giovanna Lombardi; Lilly Lopez; Miguel López-Botet; Amy E Lovett-Racke; Erik Lubberts; Herve Luche; Burkhard Ludewig; Enrico Lugli; Sebastian Lunemann; Holden T Maecker; Laura Maggi; Orla Maguire; Florian Mair; Kerstin H Mair; Alberto Mantovani; Rudolf A Manz; Aaron J Marshall; Alicia Martínez-Romero; Glòria Martrus; Ivana Marventano; Wlodzimierz Maslinski; Giuseppe Matarese; Anna Vittoria Mattioli; Christian Maueröder; Alessio Mazzoni; James McCluskey; Mairi McGrath; Helen M McGuire; Iain B McInnes; Henrik E Mei; Fritz Melchers; Susanne Melzer; Dirk Mielenz; Stephen D Miller; Kingston H G Mills; Hans Minderman; Jenny Mjösberg; Jonni Moore; Barry Moran; Lorenzo Moretta; Tim R Mosmann; Susann Müller; Gabriele Multhoff; Luis Enrique Muñoz; Christian Münz; Toshinori Nakayama; Milena Nasi; Katrin Neumann; Lai Guan Ng; Antonia Niedobitek; Sussan Nourshargh; Gabriel Núñez; José-Enrique O'Connor; Aaron Ochel; Anna Oja; Diana Ordonez; Alberto Orfao; Eva Orlowski-Oliver; Wenjun Ouyang; Annette Oxenius; Raghavendra Palankar; Isabel Panse; Kovit Pattanapanyasat; Malte Paulsen; Dinko Pavlinic; Livius Penter; Pärt Peterson; Christian Peth; Jordi Petriz; Federica Piancone; Winfried F Pickl; Silvia Piconese; Marcello Pinti; A Graham Pockley; Malgorzata Justyna Podolska; Zhiyong Poon; Katharina Pracht; Immo Prinz; Carlo E M Pucillo; Sally A Quataert; Linda Quatrini; Kylie M Quinn; Helena Radbruch; Tim R D J Radstake; Susann Rahmig; Hans-Peter Rahn; Bartek Rajwa; Gevitha Ravichandran; Yotam Raz; Jonathan A Rebhahn; Diether Recktenwald; Dorothea Reimer; Caetano Reis e Sousa; Ester B M Remmerswaal; Lisa Richter; Laura G Rico; Andy Riddell; Aja M Rieger; J Paul Robinson; Chiara Romagnani; Anna Rubartelli; Jürgen Ruland; Armin Saalmüller; Yvan Saeys; Takashi Saito; Shimon Sakaguchi; Francisco Sala-de-Oyanguren; Yvonne Samstag; Sharon Sanderson; Inga Sandrock; Angela Santoni; Ramon Bellmàs Sanz; Marina Saresella; Catherine Sautes-Fridman; Birgit Sawitzki; Linda Schadt; Alexander Scheffold; Hans U Scherer; Matthias Schiemann; Frank A Schildberg; Esther Schimisky; Andreas Schlitzer; Josephine Schlosser; Stephan Schmid; Steffen Schmitt; Kilian Schober; Daniel Schraivogel; Wolfgang Schuh; Thomas Schüler; Reiner Schulte; Axel Ronald Schulz; Sebastian R Schulz; Cristiano Scottá; Daniel Scott-Algara; David P Sester; T Vincent Shankey; Bruno Silva-Santos; Anna Katharina Simon; Katarzyna M Sitnik; Silvano Sozzani; Daniel E Speiser; Josef Spidlen; Anders Stahlberg; Alan M Stall; Natalie Stanley; Regina Stark; Christina Stehle; Tobit Steinmetz; Hannes Stockinger; Yousuke Takahama; Kiyoshi Takeda; Leonard Tan; Attila Tárnok; Gisa Tiegs; Gergely Toldi; Julia Tornack; Elisabetta Traggiai; Mohamed Trebak; Timothy I M Tree; Joe Trotter; John Trowsdale; Maria Tsoumakidou; Henning Ulrich; Sophia Urbanczyk; Willem van de Veen; Maries van den Broek; Edwin van der Pol; Sofie Van Gassen; Gert Van Isterdael; René A W van Lier; Marc Veldhoen; Salvador Vento-Asturias; Paulo Vieira; David Voehringer; Hans-Dieter Volk; Anouk von Borstel; Konrad von Volkmann; Ari Waisman; Rachael V Walker; Paul K Wallace; Sa A Wang; Xin M Wang; Michael D Ward; Kirsten A Ward-Hartstonge; Klaus Warnatz; Gary Warnes; Sarah Warth; Claudia Waskow; James V Watson; Carsten Watzl; Leonie Wegener; Thomas Weisenburger; Annika Wiedemann; Jürgen Wienands; Anneke Wilharm; Robert John Wilkinson; Gerald Willimsky; James B Wing; Rieke Winkelmann; Thomas H Winkler; Oliver F Wirz; Alicia Wong; Peter Wurst; Jennie H M Yang; Juhao Yang; Maria Yazdanbakhsh; Liping Yu; Alice Yue; Hanlin Zhang; Yi Zhao; Susanne Maria Ziegler; Christina Zielinski; Jakob Zimmermann; Arturo Zychlinsky
Journal:  Eur J Immunol       Date:  2019-10       Impact factor: 6.688

6.  Alpha2beta1 Integrin (VLA-2) Protects Activated Human Effector T Cells From Methotrexate-Induced Apoptosis.

Authors:  Amna Abderrazak; Mohammed-Amine El Azreq; Dalila Naci; Paul R Fortin; Fawzi Aoudjit
Journal:  Front Immunol       Date:  2018-10-15       Impact factor: 7.561

  6 in total

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