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Trans-population graph-based coverage optimization of allogeneic cellular therapy

BACKGROUND: Pre-clinical development and in-human trials of ‘off-the-shelf’ immune effector cell therapy (IECT) are burgeoning. IECT offers many potential advantages over autologous products. The relevant HLA matching criteria vary from product to product and depend on the strategies employed to red...

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Autores principales: Israeli, Sapir, Krakow, Elizabeth F., Maiers, Martin, Summers, Corinne, Louzoun, Yoram
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10227669/
https://www.ncbi.nlm.nih.gov/pubmed/37261360
http://dx.doi.org/10.3389/fimmu.2023.1069749
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author Israeli, Sapir
Krakow, Elizabeth F.
Maiers, Martin
Summers, Corinne
Louzoun, Yoram
author_facet Israeli, Sapir
Krakow, Elizabeth F.
Maiers, Martin
Summers, Corinne
Louzoun, Yoram
author_sort Israeli, Sapir
collection PubMed
description BACKGROUND: Pre-clinical development and in-human trials of ‘off-the-shelf’ immune effector cell therapy (IECT) are burgeoning. IECT offers many potential advantages over autologous products. The relevant HLA matching criteria vary from product to product and depend on the strategies employed to reduce the risk of GvHD or to improve allo-IEC persistence, as warranted by different clinical indications, disease kinetics, on-target/off-tumor effects, and therapeutic cell type (T cell subtype, NK, etc.). OBJECTIVE: The optimal choice of candidate donors to maximize target patient population coverage and minimize cost and redundant effort in creating off-the-shelf IECT product banks is still an open problem. We propose here a solution to this problem, and test whether it would be more expensive to recruit additional donors or to prevent class I or class II HLA expression through gene editing. STUDY DESIGN: We developed an optimal coverage problem, combined with a graph-based algorithm to solve the donor selection problem under different, clinically plausible scenarios (having different HLA matching priorities). We then compared the efficiency of different optimization algorithms – a greedy solution, a linear programming (LP) solution, and integer linear programming (ILP) -- as well as random donor selection (average of 5 random trials) to show that an optimization can be performed at the entire population level. RESULTS: The average additional population coverage per donor decrease with the number of donors, and varies with the scenario. The Greedy, LP and ILP algorithms consistently achieve the optimal coverage with far fewer donors than the random choice. In all cases, the number of randomly-selected donors required to achieve a desired coverage increases with increasing population. However, when optimal donors are selected, the number of donors required may counter-intuitively decrease with increasing population size. When comparing recruiting more donors vs gene editing, the latter was generally more expensive. When choosing donors and patients from different populations, the number of random donors required drastically increases, while the number of optimal donors does not change. Random donors fail to cover populations different from their original populations, while a small number of optimal donors from one population can cover a different population. DISCUSSION: Graph-based coverage optimization algorithms can flexibly handle various HLA matching criteria and accommodate additional information such as KIR genotype, when such information becomes routinely available. These algorithms offer a more efficient way to develop off-the-shelf IECT product banks compared to random donor selection and offer some possibility of improved transparency and standardization in product design.
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spelling pubmed-102276692023-05-31 Trans-population graph-based coverage optimization of allogeneic cellular therapy Israeli, Sapir Krakow, Elizabeth F. Maiers, Martin Summers, Corinne Louzoun, Yoram Front Immunol Immunology BACKGROUND: Pre-clinical development and in-human trials of ‘off-the-shelf’ immune effector cell therapy (IECT) are burgeoning. IECT offers many potential advantages over autologous products. The relevant HLA matching criteria vary from product to product and depend on the strategies employed to reduce the risk of GvHD or to improve allo-IEC persistence, as warranted by different clinical indications, disease kinetics, on-target/off-tumor effects, and therapeutic cell type (T cell subtype, NK, etc.). OBJECTIVE: The optimal choice of candidate donors to maximize target patient population coverage and minimize cost and redundant effort in creating off-the-shelf IECT product banks is still an open problem. We propose here a solution to this problem, and test whether it would be more expensive to recruit additional donors or to prevent class I or class II HLA expression through gene editing. STUDY DESIGN: We developed an optimal coverage problem, combined with a graph-based algorithm to solve the donor selection problem under different, clinically plausible scenarios (having different HLA matching priorities). We then compared the efficiency of different optimization algorithms – a greedy solution, a linear programming (LP) solution, and integer linear programming (ILP) -- as well as random donor selection (average of 5 random trials) to show that an optimization can be performed at the entire population level. RESULTS: The average additional population coverage per donor decrease with the number of donors, and varies with the scenario. The Greedy, LP and ILP algorithms consistently achieve the optimal coverage with far fewer donors than the random choice. In all cases, the number of randomly-selected donors required to achieve a desired coverage increases with increasing population. However, when optimal donors are selected, the number of donors required may counter-intuitively decrease with increasing population size. When comparing recruiting more donors vs gene editing, the latter was generally more expensive. When choosing donors and patients from different populations, the number of random donors required drastically increases, while the number of optimal donors does not change. Random donors fail to cover populations different from their original populations, while a small number of optimal donors from one population can cover a different population. DISCUSSION: Graph-based coverage optimization algorithms can flexibly handle various HLA matching criteria and accommodate additional information such as KIR genotype, when such information becomes routinely available. These algorithms offer a more efficient way to develop off-the-shelf IECT product banks compared to random donor selection and offer some possibility of improved transparency and standardization in product design. Frontiers Media S.A. 2023-05-05 /pmc/articles/PMC10227669/ /pubmed/37261360 http://dx.doi.org/10.3389/fimmu.2023.1069749 Text en Copyright © 2023 Israeli, Krakow, Maiers, Summers and Louzoun https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Immunology
Israeli, Sapir
Krakow, Elizabeth F.
Maiers, Martin
Summers, Corinne
Louzoun, Yoram
Trans-population graph-based coverage optimization of allogeneic cellular therapy
title Trans-population graph-based coverage optimization of allogeneic cellular therapy
title_full Trans-population graph-based coverage optimization of allogeneic cellular therapy
title_fullStr Trans-population graph-based coverage optimization of allogeneic cellular therapy
title_full_unstemmed Trans-population graph-based coverage optimization of allogeneic cellular therapy
title_short Trans-population graph-based coverage optimization of allogeneic cellular therapy
title_sort trans-population graph-based coverage optimization of allogeneic cellular therapy
topic Immunology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10227669/
https://www.ncbi.nlm.nih.gov/pubmed/37261360
http://dx.doi.org/10.3389/fimmu.2023.1069749
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