Gavara Núria
School of Engineering and Materials Science, Queen Mary University of London, Mile End Road, E1 3NS, London, UK.
Sci Rep. 2016 Feb 19;6:21267. doi: 10.1038/srep21267.
Atomic Force Microscopy (AFM) is a widely used tool to study cell mechanics. Current AFM setups perform high-throughput probing of living cells, generating large amounts of force-indentations curves that are subsequently analysed using a contact-mechanics model. Here we present several algorithms to detect the contact point in force-indentation curves, a crucial step to achieve fully-automated analysis of AFM-generated data. We quantify and rank the performance of our algorithms by analysing a thousand force-indentation curves obtained on thin soft homogeneous hydrogels, which mimic the stiffness and topographical profile of adherent cells. We take advantage of the fact that all the proposed algorithms are based on sequential search strategies, and show that a combination of them yields the most accurate and unbiased results. Finally, we also observe improved performance when force-indentation curves obtained on adherent cells are analysed using our combined strategy, as compared to the classical algorithm used in the majority of previous cell mechanics studies.
原子力显微镜(AFM)是一种广泛用于研究细胞力学的工具。当前的AFM装置对活细胞进行高通量探测,生成大量的力-压痕曲线,随后使用接触力学模型对这些曲线进行分析。在此,我们提出了几种用于检测力-压痕曲线中接触点的算法,这是实现对AFM生成的数据进行全自动分析的关键步骤。我们通过分析在薄的柔软均匀水凝胶上获得的一千条力-压痕曲线来量化并对我们算法的性能进行排名,这些水凝胶模拟了贴壁细胞的刚度和地形轮廓。我们利用所有提出的算法都基于顺序搜索策略这一事实,并表明将它们组合可产生最准确且无偏差的结果。最后,与大多数先前细胞力学研究中使用的经典算法相比,当使用我们的组合策略分析在贴壁细胞上获得的力-压痕曲线时,我们还观察到了性能的提升。