Immune Algorithm Optimization for Organ Transplantation in Poland.

Grażyna Moszkowska,Hanna Zielińska, Maciej Zieliński,Anna Dukat-Mazurek, Joanna Dębska-Zielkowska, Dorota Lewandowska,Magdalena Durlik, Alicja Dębska-Ślizień,Piotr Trzonkowski

Transplantation proceedings(2020)

引用 5|浏览19
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摘要
The lack of a uniform method for determining unacceptable HLA mismatches (UAMs) for organ transplantation worldwide has resulted in many different algorithms for donor-recipient matching. Here we present our proposal for changes to the current algorithm for immune evaluation of potential kidney recipients in Poland based on the experience of various transplantation centers. The most important finding of this article is an algorithm that stratifies the pretransplant immunologic risk based on strict laboratory criteria, enabling harmonization between transplant centers in Poland. This is because of a step-by-step algorithm for alloantibody assessment using solid-phase assays (SPA) and clearly defined technical issues, as well as cutoffs for reporting UAMs. Our novel approach focuses on a laboratory testing extension in the scope of HLA typing; detection and characterization of alloantibodies before transplantation; desensitization; and post-transplant monitoring. The proposed changes will allow for the assessment of clinically relevant anti-HLA antibodies with complement binding properties; the determination of UAMs in the potential donor; the calculation of virtual panel reactive antibodies (vPRA); the calculation of the recipient's immunologic rejection risk stratification; the assessment of the donor-recipient virtual cross-match (vXM); and the determination of the final recipient's selection for the biological cross-match testing. Collectively, the optimized algorithm permit for UAM verification is based on laboratory proofed data and will firmly improve organ allocation and transplant outcomes in Poland. We hope that this novel approach also improves the individual patient's risk stratification and future personalized treatment.
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