Université Clermont Auvergne, Clermont Auvergne INP, CNRS, Institut Pascal, 63 000, Clermont-Ferrand, France.
Logiroad.AI, 63 178, Aubière, France.
Sci Rep. 2023 Dec 12;13(1):22045. doi: 10.1038/s41598-023-48733-x.
An in situ microscope based on pulsed transmitted light illumination via optical fiber was combined to artificial-intelligence to enable for the first time an online cell classification according to well-known cellular morphological features. A 848 192-image database generated during a lab-scale production process of antibodies was processed using a convolutional neural network approach chosen for its accurate real-time object detection capabilities. In order to induce different cell death routes, hybridomas were grown in normal or suboptimal conditions in a stirred tank reactor, in the presence of substrate limitation, medium addition, pH regulation problem or oxygen depletion. Using such an optical system made it possible to monitor real-time the evolution of different classes of animal cells, among which viable, necrotic and apoptotic cells. A class of viable cells displaying bulges in feast or famine conditions was also revealed. Considered as a breakthrough in the catalogue of process analytical tools, in situ microscopy powered by artificial-intelligence is also of great interest for research.
基于光纤脉冲透射光照明的原位显微镜与人工智能相结合,首次实现了根据已知细胞形态特征的在线细胞分类。在抗体实验室规模生产过程中生成的 848192 张图像数据库使用卷积神经网络方法进行处理,选择该方法是因为它具有准确的实时目标检测能力。为了诱导不同的细胞死亡途径,将杂交瘤在搅拌罐反应器中在正常或亚最佳条件下生长,存在底物限制、培养基添加、pH 调节问题或缺氧。使用这种光学系统,可以实时监测不同类别的动物细胞的演变,其中包括活细胞、坏死细胞和凋亡细胞。还揭示了一类在饱食或饥饿条件下显示出隆起的活细胞。原位显微镜与人工智能结合被认为是过程分析工具目录中的一项突破,对于研究也具有很大的意义。