类有机物
生物反应器
转录组
细胞培养
细胞生物学
生物
计算生物学
心功能曲线
体外
体内
功能(生物学)
代谢物
生物医学工程
生物技术
心脏病学
生物化学
医学
遗传学
基因表达
心力衰竭
植物
基因
作者
Marta Orłowska,James R. Krycer,Janice D. Reid,Richard J. Mills,Michael R. Doran,James E. Hudson
出处
期刊:Biomicrofluidics
[American Institute of Physics]
日期:2024-03-01
卷期号:18 (2)
摘要
The heart is a metabolic “omnivore” and adjusts its energy source depending on the circulating metabolites. Human cardiac organoids, a three-dimensional in vitro model of the heart wall, are a useful tool to study cardiac physiology and pathology. However, cardiac tissue naturally experiences shear stress and nutrient fluctuations via blood flow in vivo, whilst in vitro models are conventionally cultivated in a static medium. This necessitates the regular refreshing of culture media, which creates acute cellular disturbances and large metabolic fluxes. To culture human cardiac organoids in a more physiological manner, we have developed a perfused bioreactor for cultures in a 96-well plate format. The designed bioreactor is easy to fabricate using a common culture plate and a 3D printer. Its open system allows for the use of traditional molecular biology techniques, prevents flow blockage issues, and provides easy access for sampling and cell assays. We hypothesized that a perfused culture would create more stable environment improving cardiac function and maturation. We found that lactate is rapidly produced by human cardiac organoids, resulting in large fluctuations in this metabolite under static culture. Despite this, neither medium perfusion in bioreactor culture nor lactate supplementation improved cardiac function or maturation. In fact, RNA sequencing revealed little change across the transcriptome. This demonstrates that cardiac organoids are robust in response to fluctuating environmental conditions under normal physiological conditions. Together, we provide a framework for establishing an easily accessible perfusion system that can be adapted to a range of miniaturized cell culture systems.
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