Roy Priyatanu, House Margaret L, Dutcher Cari S
Department of Mechanical Engineering, University of Minnesota-Twin Cities, Minneapolis, MN 55455, USA.
Department of Chemical Engineering & Materials Science, University of Minnesota-Twin Cities, Minneapolis, MN 55455, USA.
Micromachines (Basel). 2021 Mar 11;12(3):296. doi: 10.3390/mi12030296.
Measurement of ice nucleation (IN) temperature of liquid solutions at sub-ambient temperatures has applications in atmospheric, water quality, food storage, protein crystallography and pharmaceutical sciences. Here we present details on the construction of a temperature-controlled microfluidic platform with multiple individually addressable temperature zones and on-chip temperature sensors for high-throughput IN studies in droplets. We developed, for the first time, automated droplet freezing detection methods in a microfluidic device, using a deep neural network (DNN) and a polarized optical method based on intensity thresholding to classify droplets without manual counting. This platform has potential applications in continuous monitoring of liquid samples consisting of aerosols to quantify their IN behavior, or in checking for contaminants in pure water. A case study of the two detection methods was performed using Snomax (Snomax International, Englewood, CO, USA), an ideal ice nucleating particle (INP). Effects of aging and heat treatment of Snomax were studied with Fourier transform infrared (FTIR) spectroscopy and a microfluidic platform to correlate secondary structure change of the IN protein in Snomax to IN temperature. It was found that aging at room temperature had a mild impact on the ice nucleation ability but heat treatment at 95 °C had a more pronounced effect by reducing the ice nucleation onset temperature by more than 7 °C and flattening the overall frozen fraction curve. Results also demonstrated that our setup can generate droplets at a rate of about 1500/min and requires minimal human intervention for DNN classification.
在低于环境温度下测量液体溶液的冰核化(IN)温度在大气、水质、食品储存、蛋白质晶体学和制药科学等领域有应用。在此,我们详细介绍一种具有多个可单独寻址温度区的温控微流控平台以及用于液滴高通量IN研究的片上温度传感器的构建。我们首次在微流控装置中开发了自动液滴冻结检测方法,使用深度神经网络(DNN)和基于强度阈值的偏振光学方法对液滴进行分类,无需人工计数。该平台在连续监测由气溶胶组成的液体样品以量化其IN行为,或检测纯水中的污染物方面具有潜在应用。使用理想的冰核粒子(INP)Snomax(美国科罗拉多州恩格尔伍德市的Snomax International)对这两种检测方法进行了案例研究。利用傅里叶变换红外(FTIR)光谱和微流控平台研究了Snomax的老化和热处理效果,以将Snomax中IN蛋白的二级结构变化与IN温度相关联。结果发现,室温下的老化对冰核化能力有轻微影响,但95℃的热处理有更显著的效果,使冰核化起始温度降低超过7℃,并使整体冻结分数曲线变平。结果还表明,我们的装置可以以约1500个/分钟的速率生成液滴,并且DNN分类所需的人工干预最少。