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Influence of image analysis strategy, cooling rate, and sample volume on apparent protein cloud-point temperature determination

机译:图像分析策略,冷却率和样品体积对表观蛋白浊点温度测定的影响

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摘要

The protein cloud-point temperature (T-Cloud) is a known representative of protein-protein interaction strength and provides valuable information during the development and characterization of protein-based products, such as biopharmaceutics. A high-throughput low volume T-Cloud detection method was introduced in preceding work, where it was concluded that the extracted value is an apparent T-Cloud (T-Cloud,T-app). As an understanding of the apparent nature is imperative to facilitate inter-study data comparability, the current work was performed to systematically evaluate the influence of 3 image analysis strategies and 2 experimental parameters (sample volume and cooling rate) on T-Cloud,T-app detection of lysozyme. Different image analysis strategies showed that T-Cloud,T-app is detectable by means of total pixel intensity difference and the total number of white pixels, but the latter is also able to extract the ice nucleation temperature. Experimental parameter variation showed a T-Cloud,T-app depression for increasing cooling rates (0.1-0.5 degrees C/min), and larger sample volumes (5-24 mu L). Exploratory thermographic data indicated this resulted from a temperature discrepancy between the measured temperature by the cryogenic device and the actual sample temperature. Literature validation confirmed that the discrepancy does not affect the relative inter-study comparability of the samples, regardless of the image analysis strategy or experimental parameters. Additionally, high measurement precision was demonstrated, as T-Cloud,T-app changes were detectable down to a sample volume of only 5 mu L and for 0.1 degrees C/min cooling rate increments. This work explains the apparent nature of the T-Cloud detection method, showcases its detection precision, and broadens the applicability of the experimental setup.
机译:蛋白质浊点温度(T-云)是蛋白质 - 蛋白质相互作用强度的已知代表,并在开发和表征蛋白质的产品(如生物药物)期间提供有价值的信息。在前面的工作中引入了高通量低容量T云检测方法,其中结论是提取的值是表观T云(T-Cloud,T-APP)。作为对表观性质的理解,必须促进学习间数据可比性,目前的作品进行了系统地评估了3个图像分析策略和2个实验参数(样品体积和冷却速率)对T云,T-的影响溶菌酶的应用检测。不同的图像分析策略表明,T云,T-App可通过总像素强度差和白色像素的总数来检测,但后者也能够提取冰成核温度。实验参数变异显示出用于增加冷却速率(0.1-0.5℃/分钟)的T云,T-APP凹陷,以及较大的样品体积(5-24μl)。探索热显数据表明,由低温装置和实际样品温度测量温度之间的温度差异导致。文献验证证实,无论图像分析策略还是实验参数,差异不影响样品的相对研究间可比性。另外,证明了高测量精度,作为T云,T-APP变化可检测到仅5μl的样品体积,并且为0.1℃/ min冷却速率增量。这项工作解释了T云检测方法的明显性,展示了其检测精度,并扩大了实验设置的适用性。

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