移植
小岛
免疫学
背景(考古学)
医学
同种免疫
1型糖尿病
免疫系统
胰岛细胞移植
疾病
生物
生物信息学
糖尿病
内科学
内分泌学
古生物学
作者
Braulio A. Marfil‐Garza,Joshua Hefler,Mario Bermúdez de León,Rena Pawlick,Nidheesh Dadheech,A. M. James Shapiro
出处
期刊:Endocrine Reviews
[Oxford University Press]
日期:2020-11-28
卷期号:42 (2): 198-218
被引量:31
标识
DOI:10.1210/endrev/bnaa028
摘要
Abstract Regulatory T cells (Tregs) have become highly relevant in the pathophysiology and treatment of autoimmune diseases, such as type 1 diabetes (T1D). As these cells are known to be defective in T1D, recent efforts have explored ex vivo and in vivo Treg expansion and enhancement as a means for restoring self-tolerance in this disease. Given their capacity to also modulate alloimmune responses, studies using Treg-based therapies have recently been undertaken in transplantation. Islet transplantation provides a unique opportunity to study the critical immunological crossroads between auto- and alloimmunity. This procedure has advanced greatly in recent years, and reports of complete abrogation of severe hypoglycemia and long-term insulin independence have become increasingly reported. It is clear that cellular transplantation has the potential to be a true cure in T1D, provided the remaining barriers of cell supply and abrogated need for immune suppression can be overcome. However, the role that Tregs play in islet transplantation remains to be defined. Herein, we synthesize the progress and current state of Treg-based therapies in T1D and islet transplantation. We provide an extensive, but concise, background to understand the physiology and function of these cells and discuss the clinical evidence supporting potency and potential Treg-based therapies in the context of T1D and islet transplantation. Finally, we discuss some areas of opportunity and potential research avenues to guide effective future clinical application. This review provides a basic framework of knowledge for clinicians and researchers involved in the care of patients with T1D and islet transplantation.
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