灌注生物反应器中CAR - T细胞扩增的数字阴影:告知自体细胞治疗的最佳收获时间。

IF 2.5 3区 生物学 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Joseph R Egan, Núria Marí-Buyé, Elia Vallejo Benítez-Cano, Miquel Costa, Linda Wanika, Michael J Chappell, Ursula Schultz, Jelena Ochs, Manuel Effenberger, David Horna, Qasim Rafiq, Stephen Goldrick
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引用次数: 0

摘要

嵌合抗原受体(CAR) T细胞疗法在治疗癌症和其他疾病方面具有巨大的潜力。为了制造出所需数量和质量的细胞,将CAR - T细胞体外扩增至最佳持续时间是很重要的。然而,确定最佳的收获时间需要了解扩增期间的细胞浓度。为了应对这一挑战,我们开发了一种CAR - T细胞扩增的数字阴影,提供了一种实时的细胞浓度软传感器。具体而言,利用非线性常微分方程建立了一种新型的比例-积分-导数(PID)控制灌注生物反应器内细胞生长的机械数学模型。该模型与Aglaris FACER生物反应器运行产生的数据相匹配,其中供体和患者细胞都在两种不同的培养基中扩增。离线数据包括初始和最终细胞浓度,在线数据包括葡萄糖和乳酸浓度以及灌注率。训练数字影子利用所有离线和在线数据为每次运行。相比之下,实时测试只利用初始细胞浓度和模型拟合时可用的在线数据。实时测试表明,通过至少2.5天的在线数据,预测2.5天后的最终细胞浓度,平均相对误差为13%(标准偏差≈6%)。通过数字阴影对细胞浓度进行信息丰富的实时预测,可以指导CAR - T细胞最佳收获时间的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A digital shadow of CAR T cell expansion in a perfusion bioreactor: Informing optimal harvest times for autologous cell therapy.

Chimeric antigen receptor (CAR) T cell therapy has tremendous potential for the treatment of cancer and other diseases. To manufacture cells of the desired quantity and quality, it is important to expand the CAR T cells ex vivo for an optimal duration. However, identifying the optimal harvest time requires knowledge of the cell concentration during the expansion period. To address this challenge, we have developed a digital shadow of CAR T cell expansion that provides a soft sensor of cell concentration in real-time. Specifically, a novel mechanistic mathematical model of cell growth within a proportional-integral-derivative (PID) controlled perfusion bioreactor has been developed using nonlinear ordinary differential equations. The model is fitted to data generated via bioreactor runs of the Aglaris FACER, in which both donor and patient cells have been expanded in two different media. Off-line data includes the initial and final cell concentrations, and online data includes the glucose and lactate concentrations as well as the perfusion rate. Training the digital shadow utilizes all the off-line and online data for each run. In contrast, real-time testing utilizes only the initial cell concentration and the available online data at the time of model fitting. Real-time testing shows that with at least 2.5 days of online data, the final cell concentration up to 2.5 days later is predicted with a mean relative error of 13% (standard deviation ≈ 6%). Informative real-time predictions of cell concentration via the digital shadow can guide decisions regarding the optimal harvest time of CAR T cells.

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来源期刊
Biotechnology Progress
Biotechnology Progress 工程技术-生物工程与应用微生物
CiteScore
6.50
自引率
3.40%
发文量
83
审稿时长
4 months
期刊介绍: Biotechnology Progress , an official, bimonthly publication of the American Institute of Chemical Engineers and its technological community, the Society for Biological Engineering, features peer-reviewed research articles, reviews, and descriptions of emerging techniques for the development and design of new processes, products, and devices for the biotechnology, biopharmaceutical and bioprocess industries. Widespread interest includes application of biological and engineering principles in fields such as applied cellular physiology and metabolic engineering, biocatalysis and bioreactor design, bioseparations and downstream processing, cell culture and tissue engineering, biosensors and process control, bioinformatics and systems biology, biomaterials and artificial organs, stem cell biology and genetics, and plant biology and food science. Manuscripts concerning the design of related processes, products, or devices are also encouraged. Four types of manuscripts are printed in the Journal: Research Papers, Topical or Review Papers, Letters to the Editor, and R & D Notes.
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