Graduate School of Medical Care and Technology, Teikyo University, Tokyo, Japan.
Department of Stem Cell Biology, Medical Research Institute, Tokyo Medical and Dental University (TMDU), Tokyo, Japan.
Stem Cells. 2021 Aug;39(8):1091-1100. doi: 10.1002/stem.3371. Epub 2021 Mar 30.
Stem cell-based products have clinical and industrial applications. Thus, there is a need to develop quality control methods to standardize stem cell manufacturing. Here, we report a deep learning-based automated cell tracking (DeepACT) technology for noninvasive quality control and identification of cultured human stem cells. The combination of deep learning-based cascading cell detection and Kalman filter algorithm-based tracking successfully tracked the individual cells within the densely packed human epidermal keratinocyte colonies in the phase-contrast images of the culture. DeepACT rapidly analyzed the motion of individual keratinocytes, which enabled the quantitative evaluation of keratinocyte dynamics in response to changes in culture conditions. Furthermore, DeepACT can distinguish keratinocyte stem cell colonies from non-stem cell-derived colonies by analyzing the spatial and velocity information of cells. This system can be widely applied to stem cell cultures used in regenerative medicine and provides a platform for developing reliable and noninvasive quality control technology.
基于干细胞的产品具有临床和工业应用。因此,需要开发质量控制方法来规范干细胞制造。在这里,我们报告了一种基于深度学习的自动细胞跟踪(DeepACT)技术,用于非侵入性的质量控制和培养的人类干细胞的鉴定。基于深度学习的级联细胞检测与基于卡尔曼滤波算法的跟踪相结合,成功地跟踪了培养物的相差图像中密集排列的人表皮角质形成细胞集落内的单个细胞。DeepACT 可以快速分析单个角质形成细胞的运动,从而可以定量评估角质形成细胞对培养条件变化的动态响应。此外,DeepACT 可以通过分析细胞的空间和速度信息来区分角质形成干细胞集落和非干细胞衍生的集落。该系统可广泛应用于再生医学中使用的干细胞培养,并为开发可靠和非侵入性的质量控制技术提供了平台。