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引用次数: 0
摘要
众所周知,成瘾是通过摄入药物、违禁药物、食物、酒精和烟草等物质而产生的。这些成瘾可以被视为毒瘾,是由于摄入了其中所含的化学物质而导致的。据信,多种神经网络,包括大脑中的奖赏系统、反奖赏/压力系统和中枢免疫系统,都与药物成瘾的发生有关。虽然已经使用微电极阵列(MEA)作为评估神经活动的体外测试方法进行了各种化合物评估,但评估药物成瘾的方法尚未建立。在本研究中,我们旨在利用人体 iPS 细胞衍生的多巴胺能神经元和 MEA 测量方法,开发一种评估化合物成瘾性的体外方法,以替代动物实验。长期暴露前后的 MEA 数据显示,与非成瘾性化合物相比,成瘾性化合物会发生特定变化,这证明了评估化合物成瘾性的能力。此外,在测试后对培养样本进行基因表达分析,发现由于长期服用成瘾性化合物,各种受体(尼古丁、多巴胺和 GABA)的表达水平发生了变化,这表明在 MEA 测量中,这些表达变化有可能被解释为类似成瘾的反应。本研究采用在源自人类 iPS 细胞的多巴胺能神经元中测量 MEA 的成瘾性评估方法,证明可有效评估化合物对人类神经网络的成瘾性。
Development of an evaluation method for addictive compounds based on electrical activity of human iPS cell-derived dopaminergic neurons using microelectrode array
Addiction is known to occur through the consumption of substances such as pharmaceuticals, illicit drugs, food, alcohol and tobacco. These addictions can be viewed as drug addiction, resulting from the ingestion of chemical substances contained in them. Multiple neural networks, including the reward system, anti-reward/stress system and central immune system in the brain, are believed to be involved in the onset of drug addiction. Although various compound evaluations using microelectrode array (MEA) as an in vitro testing methods to evaluate neural activities have been conducted, methods for assessing addiction have not been established. In this study, we aimed to develop an in vitro method for assessing the addiction of compounds, as an alternative to animal experiments, using human iPS cell-derived dopaminergic neurons with MEA measurements. MEA data before and after chronic exposure revealed specific changes in addictive compounds compared to non-addictive compounds, demonstrating the ability to estimate addiction of compound. Additionally, conducting gene expression analysis on cultured samples after the tests revealed changes in the expression levels of various receptors (nicotine, dopamine and GABA) due to chronic administration of addictive compounds, suggesting the potential interpretation of these expression changes as addiction-like responses in MEA measurements. The addiction assessment method using MEA measurements in human iPS cell-derived dopaminergic neurons conducted in this study proves effective in evaluating addiction of compounds on human neural networks.
期刊介绍:
Addiction Biology is focused on neuroscience contributions and it aims to advance our understanding of the action of drugs of abuse and addictive processes. Papers are accepted in both animal experimentation or clinical research. The content is geared towards behavioral, molecular, genetic, biochemical, neuro-biological and pharmacology aspects of these fields.
Addiction Biology includes peer-reviewed original research reports and reviews.
Addiction Biology is published on behalf of the Society for the Study of Addiction to Alcohol and other Drugs (SSA). Members of the Society for the Study of Addiction receive the Journal as part of their annual membership subscription.