Department of Clinical Immunology, Rigshospitalet, Copenhagen University Hospital, Copenhagen, Denmark.
Adipocyte. 2021 Dec;10(1):621-630. doi: 10.1080/21623945.2021.2000696.
Quantitative methods for assessing differentiative potency of adipose-derived stem/stromal cells may lead to improved clinical application of this multipotent stem cell, by advancing our understanding of specific processes such as adipogenic differentiation. Conventional cell staining methods are used to determine the formation of adipose areas during adipogenesis as a qualitative representation of adipogenic potency. Staining methods such as oil-red-O are quantifiable using absorbance measurements, but these assays are time and material consuming. Detection methods for cell characteristics using advanced image analysis by machine learning are emerging. Here, live-cell imaging was combined with a deep learning-based detection tool to quantify the presence of adipose areas and lipid droplet formation during adipogenic differentiation of adipose-derived stem/stromal cells. Different detection masks quantified adipose area and lipid droplet formation at different time points indicating kinetics of adipogenesis and showed differences between individual donors. Whereas and expression seems to precede the increase in adipose area and lipid droplets, it might be able to predict expression of . The applied method is a proof of concept, demonstrating that deep learning methods can be used to investigate adipogenic differentiation and kinetics using specific detection masks based on algorithm produced from annotation of image data.
评估脂肪来源的干细胞/基质细胞分化能力的定量方法,可能通过加深我们对成脂分化等特定过程的理解,从而促进这种多能干细胞的临床应用。传统的细胞染色方法用于确定成脂分化过程中脂肪区域的形成,作为成脂能力的定性表示。油红-O 等染色方法可以通过吸光度测量进行量化,但这些测定方法既耗时又耗材料。使用基于机器学习的先进图像分析来检测细胞特征的方法正在出现。在这里,活细胞成像与基于深度学习的检测工具相结合,用于量化脂肪来源的干细胞/基质细胞在成脂分化过程中脂肪区域的存在和脂滴的形成。不同的检测掩模在不同的时间点定量脂肪区域和脂滴形成,表明成脂发生的动力学,并显示出个体供体之间的差异。虽然 和 表达似乎先于脂肪区域和脂滴的增加,但它可能能够预测 的表达。所应用的方法是一个概念验证,表明深度学习方法可以用于使用基于算法生成的特定检测掩模来研究成脂分化和动力学,该算法来自图像数据的注释。