High frequency of central memory regulatory T cells allows detection of liver recipients at risk of early acute rejection within the first month after transplantation
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Boix Giner, Francisco; Millán, Olga; San Segundo Arribas, David; Muñoz Cacho, Pedro; Mancebo, Esther; Llorente, Santiago; Rafael Valdivia, Lourdes; Rimola, Antoni; Fábrega García, Emilio
; Mrowiec, Anna; Allende, Luis; Minguela, Alfredo; Bolarín, José M.; Paz Artal, Estela; López Hoyos, Marcos
; Brunet, Mercé; Muro, Manuel
Fecha
2016-02Derechos
Alojado según Resolución CNEAI 10/12/25 (ANECA) © The Japanese Society for Immunology. 2015. All rights reserved.
Publicado en
International Immunology, 2016, 28(2), 55-64
Editorial
Oxford : [Oxford University Press]
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Palabras clave
Acute rejection
Liver transplantation
Receiver operating characteristic curves
Treg
Resumen/Abstract
Several studies have analyzed the potential of T regulatory cells (Treg cells) as biomarkers of acute rejection (AR). The aim of the present multicenter study was to correlate the percentage of peripheral Treg cells in liver graft recipients drawn at baseline up to 12 months after transplantation with the presence of AR. The percentage of central memory (cm) Treg cells (CD4(+)CD25(high)CD45RO(+)CD62L(+)) was monitored at pre-transplant and at 1 and 2 weeks, and 1, 2, 3 and 6 months and 1 year post-transplantation. The same validation standard operating procedures were used in all participating centers. Fifteen patients developed AR (23.4%). Hepatitis C virus recurrence was observed in 16 recipients, who displayed low peripheral blood cmTreg levels compared with patients who did not. A steady increase of cmTregs was observed during the first month after transplantation with statistically significant differences between AR and non-AR patients. The high frequency of memory Treg cells allowed us to monitor rejection episodes during the first month post-transplantation. On the basis of these data, we developed a prediction model for assessing risk of AR that can provide clinicians with useful information for managing patients individually and customizing immunosuppressive therapies.
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