Darling Eric M, Guilak Farshid
Department of Surgery, Duke University Medical Center, Durham, North Carolina, USA.
Tissue Eng Part A. 2008 Sep;14(9):1507-15. doi: 10.1089/ten.tea.2008.0180.
The potential success of tissue engineering or other cell-based therapies is dependent on factors such as the purity and homogeneity of the source cell populations. The ability to enrich cell harvests for specific phenotypes can have significant effects on the overall success of such therapies. While most techniques for cell sorting or enrichment have relied on cell surface markers, recent studies have shown that single-cell mechanical properties can serve as identifying markers of phenotype. In this study, a neural network modeling approach was developed to classify mesenchymal-derived primary and stem cells based on their biomechanical properties. Cell sorting was simulated using previously published data characterizing the mechanical properties of several different cell types as measured by atomic force microscopy. Neural networks were trained using combined data sets, with the resultant groupings analyzed for their purity, efficiency, and enrichment. Heterogeneous populations of zonal chondrocytes, chondrosarcoma cells, and mesenchymal-lineage cells, respectively, could all be classified into enriched subpopulations. Additionally, adult stem cells (adipose-derived or bone marrow-derived) separated disproportionately into nodes associated with the three primary mesenchymal lineages examined. These findings suggest that mathematical approaches such as neural network modeling, in combination with novel measures of cell properties, may provide a means of classifying and eventually sorting mixed populations of cells that are otherwise difficult to identify using more established techniques. In this respect, the identification of biomechanically based cell properties that increase the percentage of stem cells capable of differentiating into predictable lineages may improve the overall success of cell-based therapies.
组织工程或其他基于细胞的疗法的潜在成功取决于多种因素,如源细胞群体的纯度和同质性。富集特定表型细胞收获物的能力可能会对这类疗法的整体成功产生重大影响。虽然大多数细胞分选或富集技术依赖于细胞表面标志物,但最近的研究表明,单细胞力学特性可作为表型的识别标志物。在本研究中,开发了一种神经网络建模方法,以根据间充质来源的原代细胞和干细胞的生物力学特性对其进行分类。使用先前发表的通过原子力显微镜测量的几种不同细胞类型的力学特性数据来模拟细胞分选。使用组合数据集训练神经网络,并对所得分组的纯度、效率和富集情况进行分析。分别来自不同区域的软骨细胞、软骨肉瘤细胞和间充质谱系细胞的异质群体都可以被分类为富集亚群。此外,成体干细胞(脂肪来源或骨髓来源)不成比例地分离到与所研究的三个主要间充质谱系相关的节点中。这些发现表明,诸如神经网络建模之类的数学方法,结合新的细胞特性测量方法,可能提供一种对混合细胞群体进行分类并最终分选的方法,而使用更成熟的技术则难以识别这些细胞群体。在这方面,识别基于生物力学的细胞特性,这些特性可提高能够分化为可预测谱系的干细胞百分比,可能会提高基于细胞的疗法的整体成功率。