A.P. Ershov Institute of Informatics Systems SB RAS, Novosibirsk 630090, Russia.
Novel Software Systems LLC, Novosibirsk 630090, Russia.
Sensors (Basel). 2020 Jun 29;20(13):3653. doi: 10.3390/s20133653.
In vitro cellular models are promising tools for studying normal and pathological conditions. One of their important applications is the development of genetically engineered biosensor systems to investigate, in real time, the processes occurring in living cells. At present, there are fluorescence, protein-based, sensory systems for detecting various substances in living cells (for example, hydrogen peroxide, ATP, Ca etc.,) or for detecting processes such as endoplasmic reticulum stress. Such systems help to study the mechanisms underlying the pathogenic processes and diseases and to screen for potential therapeutic compounds. It is also necessary to develop new tools for the processing and analysis of obtained microimages. Here, we present our web-application CellCountCV for automation of microscopic cell images analysis, which is based on fully convolutional deep neural networks. This approach can efficiently deal with non-convex overlapping objects, that are virtually inseparable with conventional image processing methods. The cell counts predicted with CellCountCV were very close to expert estimates (the average error rate was < 4%). CellCountCV was used to analyze large series of microscopic images obtained in experimental studies and it was able to demonstrate endoplasmic reticulum stress development and to catch the dose-dependent effect of tunicamycin.
体外细胞模型是研究正常和病理条件的有前途的工具。它们的一个重要应用是开发基因工程生物传感器系统,实时研究活细胞中发生的过程。目前,有用于检测活细胞中各种物质(例如过氧化氢、ATP、Ca 等)或检测内质网应激等过程的荧光、基于蛋白质的传感器系统。这些系统有助于研究致病过程和疾病的机制,并筛选潜在的治疗化合物。还需要开发用于处理和分析获得的微图像的新工具。在这里,我们展示了我们的基于全卷积深度神经网络的 CellCountCV 网络应用程序,用于自动化显微镜细胞图像分析。这种方法可以有效地处理非凸重叠对象,这些对象与传统图像处理方法几乎无法分离。CellCountCV 预测的细胞计数与专家估计非常接近(平均误差率<4%)。CellCountCV 用于分析在实验研究中获得的大量显微镜图像,能够证明内质网应激的发展,并捕捉到衣霉素的剂量依赖性效应。