McKetta Department of Chemical Engineering, University of Texas at Austin, Austin, TX, USA.
Sci Rep. 2022 Jul 18;12(1):12239. doi: 10.1038/s41598-022-16158-7.
Myofibroblasts are a highly secretory and contractile cell phenotype that are predominant in wound healing and fibrotic disease. Traditionally, myofibroblasts are identified by the de novo expression and assembly of alpha-smooth muscle actin stress fibers, leading to a binary classification: "activated" or "quiescent (non-activated)". More recently, however, myofibroblast activation has been considered on a continuous spectrum, but there is no established method to quantify the position of a cell on this spectrum. To this end, we developed a strategy based on microscopy imaging and machine learning methods to quantify myofibroblast activation in vitro on a continuous scale. We first measured morphological features of over 1000 individual cardiac fibroblasts and found that these features provide sufficient information to predict activation state. We next used dimensionality reduction techniques and self-supervised machine learning to create a continuous scale of activation based on features extracted from microscopy images. Lastly, we compared our findings for mechanically activated cardiac fibroblasts to a distribution of cell phenotypes generated from transcriptomic data using single-cell RNA sequencing. Altogether, these results demonstrate a continuous spectrum of myofibroblast activation and provide an imaging-based strategy to quantify the position of a cell on that spectrum.
肌成纤维细胞是一种高度分泌和收缩的细胞表型,在伤口愈合和纤维化疾病中占主导地位。传统上,肌成纤维细胞通过α-平滑肌肌动蛋白应激纤维的从头表达和组装来识别,导致二元分类:“激活”或“静止(非激活)”。然而,最近,肌成纤维细胞的激活被认为是连续谱,但目前还没有确定的方法来量化细胞在该谱上的位置。为此,我们开发了一种基于显微镜成像和机器学习方法的策略,以在体外连续尺度上定量肌成纤维细胞的激活。我们首先测量了超过 1000 个单个心脏成纤维细胞的形态特征,发现这些特征提供了足够的信息来预测激活状态。接下来,我们使用降维技术和自我监督的机器学习,根据从显微镜图像中提取的特征创建了一个基于激活的连续尺度。最后,我们将机械激活的心脏成纤维细胞的发现与使用单细胞 RNA 测序生成的基于转录组数据的细胞表型分布进行了比较。总之,这些结果表明肌成纤维细胞的激活存在连续谱,并提供了一种基于成像的策略来量化细胞在该谱上的位置。