在体外细胞模型系统中估计碱性磷酸酶活性的一种创新和经济有效的方法。

International journal of biochemistry and molecular biology Pub Date : 2021-02-15 eCollection Date: 2021-01-01
Poonam Kanta, Tulikalipi Ghosh, Anit Kaur, Thungapathra Muthukumarappa
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引用次数: 0

摘要

碱性磷酸酶是一种在pH为10.5的2-氨基,2-甲基,1-丙醇缓冲液中将对硝基苯基磷酸盐转化为对硝基苯酚(黄色)的酶。然而,当该方案应用于体外细胞模型系统来估计碱性磷酸酶活性时,它往往会产生基因组DNA团块,导致不准确的移液来估计蛋白质。该研究的目的是在现有的方案中引入微小的修改,使其简单,具有成本效益,在估计细胞模型系统中的碱性磷酸酶活性时,使用最少的劳动密集型程序。基因组DNA团块在酶测定时通过去嘌呤(加入0.2 N HCl)和片段化(加入0.2 N NaOH)溶解。此外,这些微小的修饰已经通过血清样本(碱性磷酸酶的丰富来源)、hFOB/ER9(人胎儿成骨细胞)和HepG2细胞进行了广泛的标准化和优化。我们的结果表明,先前发表的方法中包含的修饰足以准确估计ALP活性和蛋白质浓度。改良后ALP活性无显著变化(P > 0.05)。这种创新的方法可以为研究人员提供一种简单,成本效益高,劳动强度低的解决方案,用于估计细胞模型系统中的酶活性。
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An innovative and cost-effective way to estimate alkaline phosphatase activity in in vitro cellular model systems.

Alkaline phosphatase is an enzyme that converts para-nitrophenyl phosphate to para-nitrophenol (yellow coloured) in 2-amino, 2-methyl, 1-propanol buffer at pH 10.5. However, when this protocol is applied to the in vitro cellular model systems to estimate alkaline phosphatase activity, it tends to generate clumps of genomic DNA, leading to inaccurate pipetting for protein estimation. The aim of the study was to introduce minor modifications in the existing protocol to make it simple, cost-effective, with minimal labor-intensive procedures while estimating alkaline phosphatase activity in cellular model systems. The genomic DNA clumps were dissolved by depurination (adding 0.2 N HCl) and fragmentation (adding 0.2 N NaOH) during enzyme estimation. Moreover, these minor modifications have been standardized and optimized extensively by using serum samples (rich source of alkaline phosphatase), hFOB/ER9 (human Fetal osteoblastic cell) and HepG2 cells. Our results suggest that the modification incorporated in previously published method was robust enough to estimate ALP activity and protein concentration accurately. There was no significant variation in ALP activity estimated after modification (P > 0.05). This innovative approach could be beneficial for a researcher by providing an easy, cost effective and less labor-intensive solution for estimation of enzymatic activity in cellular model systems.

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