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In-process evaluation of culture errors using morphology-based image analysis

机译:使用基于形态学的图像分析对培养错误进行过程中评估

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Introduction Advancing industrial-scale manufacture of cells as therapeutic products is an example of the wide applications of regenerative medicine. However, one bottleneck in establishing stable and efficient cell manufacture is quality control. Owing to the lack of effective in-process measurement technology, analyzing the time-consuming and complex cell culture process that essentially determines cellular quality is difficult and only performed by manual microscopic observation. Our group has been applying advanced image-processing and machine-learning modeling techniques to construct prediction models that support quality evaluations during cell culture. In this study, as a model of errors during the cell culture process, intentional errors were compared to the standard culture and analyzed based only on the time-course morphological information of the cells. Methods Twenty-one lots of human mesenchymal stem cells (MSCs), including both bone-marrow-derived MSCs and adipose-derived MSCs, were cultured under 5 conditions (one standard and 4 types of intentional errors, such as clear failure of handlings and machinery malfunctions). Using time-course microscopic images, cell morphological profiles were quantitatively measured and utilized for visualization and prediction modeling. For visualization, modified principal component analysis (PCA) was used. For prediction modeling, linear regression analysis and the MT method were applied. Results By modified PCA visualization, the differences in cellular lots and culture conditions were illustrated as traits on a morphological transition line plot and found to be effective descriptors for discriminating the deviated samples in a real-time manner. In prediction modeling, both the cell growth rate and error condition discrimination showed high accuracy (80%), which required only 2 days of culture. Moreover, we demonstrated the applicability of different concepts of machine learning using the MT method, which is effective for manufacture processes that mostly collect standard data but not a large amount of failure data. Conclusions Morphological information that can be quantitatively acquired during cell culture has great potential as an in-process measurement tool for quality control in cell manufacturing processes.
机译:引言推动细胞作为治疗产品的工业规模生产是再生医学广泛应用的一个例子。然而,建立稳定和有效的电池制造的一个瓶颈是质量控制。由于缺乏有效的过程中测量技术,因此很难分析耗时且复杂的细胞培养过程,而该过程实际上决定了细胞的质量,因此仅通过手动显微镜观察即可完成。我们的小组一直在应用先进的图像处理和机器学习建模技术来构建预测模型,以支持细胞培养过程中的质量评估。在这项研究中,作为细胞培养过程中错误的模型,将故意错误与标准培养进行了比较,并仅根据细胞的时程形态学信息对其进行了分析。方法在5种条件下培养21种人类间充质干细胞(MSCs),包括骨髓来源的MSCs和脂肪来源的MSCs(一种标准和四种类型的故意错误,例如明显的操作失误和机械故障)。使用时程显微图像,对细胞形态特征进行了定量测量,并用于可视化和预测建模。为了进行可视化,使用了改进的主成分分析(PCA)。对于预测建模,应用了线性回归分析和MT方法。结果通过改进的PCA可视化,将细胞批次和培养条件的差异显示为形态学转变线图上的性状,并被发现为实时区分偏差样品的有效描述符。在预测模型中,细胞生长速率和错误条件判别均显示出较高的准确性(> 80%),仅需培养2天。此外,我们展示了使用MT方法的各种机器学习概念的适用性,这对于大多数收集标准数据但不收集大量故障数据的制造过程是有效的。结论在细胞培养过程中可以定量获取的形态学信息作为细胞生产过程中质量控制的过程中测量工具具有巨大潜力。

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