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Automated and Online Characterization of Adherent Cell Culture Growth in a Microfabricated Bioreactor

机译:微型生物反应器中粘附细胞培养生长的自动化和在线表征

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Adherent cell lines are widely used across all fields of biology, including drug discovery, toxicity studies, and regenerative medicine. However, adherent cell processes are often limited by a lack of advances in cell culture systems. While suspension culture processes benefit from decades of development of instrumented bioreactors, adherent cultures are typically performed in static, noninstrumented flasks and well-plates. We previously described a microfabricated bioreactor that enables a high degree of control on the microenvironment of the cells while remaining compatible with standard cell culture protocols. In this report, we describe its integration with automated image-processing capabilities, allowing the continuous monitoring of key cell culture characteristics. A machine learning–based algorithm enabled the specific detection of one cell type within a co-culture setting, such as human embryonic stem cells against the background of fibroblast cells. In addition, the algorithm did not confuse image artifacts resulting from microfabrication, such as scratches on surfaces, or dust particles, with cellular features. We demonstrate how the automation of flow control, environmental control, and image acquisition can be employed to image the whole culture area and obtain time-course data of mouse embryonic stem cell cultures, for example, for confluency.
机译:粘附细胞系广泛用于生物学的所有领域,包括药物发现,毒性研究和再生医学。但是,贴壁细胞过程常常受到细胞培养系统缺乏先进性的限制。尽管悬浮培养过程得益于数十年来仪器化生物反应器的发展,但贴壁培养通常在静态,无仪器的烧瓶和孔板中进行。先前我们描述了一种微型生物反应器,它能够高度控制细胞的微环境,同时保持与标准细胞培养方案的相容性。在此报告中,我们描述了其与自动图像处理功能的集成,从而可以连续监控关键细胞培养特性。基于机器学习的算法可以在共培养环境中特异性检测一种细胞类型,例如在成纤维细胞背景下的人类胚胎干细胞。另外,该算法没有将由于微细加工而产生的图像伪影(例如表面上的划痕或灰尘颗粒)与细胞特征相混淆。我们演示了如何使用流控制,环境控制和图像采集的自动化来对整个培养区域进行成像,并获得小鼠胚胎干细胞培养物的时程数据,例如,用于融合。

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