Haydak Jonathan, Azeloglu Evren U
Division of Nephrology, Icahn School of Medicine at Mount Sinai, New York, New York; Department of Pharmacological Sciences, Icahn School of Medicine at Mount Sinai, New York, New York.
Division of Nephrology, Icahn School of Medicine at Mount Sinai, New York, New York; Department of Pharmacological Sciences, Icahn School of Medicine at Mount Sinai, New York, New York.
Biophys J. 2025 Jun 17;124(12):1891-1901. doi: 10.1016/j.bpj.2025.05.005. Epub 2025 May 8.
Atomic force microscope (AFM) indentation allows high-resolution spatial characterization of biomechanical properties of cells and tissues. Rapid, reproducible, and quantitative analysis of AFM force curves has been challenging due to several technical limitations, such as excessive noise and uncertainty associated with contact-point determination. Here, we propose a novel machine-learning algorithm composed of convolutional bidirectional long short-term memory neural networks called Convolutional Bidirectional Recurrent Architecture (COBRA) that can reliably process raw AFM elastography data, triage poor-quality curves, and accurately identify the contact point without any a priori knowledge of underlying material properties. Using over 5000 manually curated force curves on seven different healthy and diseased cell types, we trained several regression and classification algorithms to compare their utility. In contrast to classical analytical or semi-quantitative techniques and other machine-learning methods, the COBRA approach identified low-quality or anomalous indentation events better, with an area under the curve of 0.92, and it estimated the contact point with the minimal absolute error of 28 ± 3 nm and pointwise elastic modulus with mean absolute percentage error of 5.3% ± 0.7%. The method was also successful in identifying the contact point in independently acquired AFM data from the literature with divergent probes and substrates. In conclusion, our method can rapidly filter low-quality AFM force curves and automatically process raw indentation data with the lowest error levels, allowing high-throughput analyses with increased precision and reproducibility.
原子力显微镜(AFM)压痕技术能够对细胞和组织的生物力学特性进行高分辨率的空间表征。由于存在一些技术限制,如过多的噪声以及与接触点确定相关的不确定性,对AFM力曲线进行快速、可重复且定量的分析一直具有挑战性。在此,我们提出一种由卷积双向长短期记忆神经网络组成的新型机器学习算法,称为卷积双向循环架构(COBRA),它能够可靠地处理原始AFM弹性成像数据,筛选出质量较差的曲线,并在无需任何关于基础材料属性的先验知识的情况下准确识别接触点。我们使用了七种不同的健康和患病细胞类型上的5000多条人工整理的力曲线,训练了几种回归和分类算法以比较它们的效用。与经典的分析或半定量技术以及其他机器学习方法相比,COBRA方法能更好地识别低质量或异常的压痕事件,曲线下面积为0.92,它估计接触点的最小绝对误差为28±3nm,逐点弹性模量的平均绝对百分比误差为5.3%±0.7%。该方法还成功地从文献中使用不同探针和底物独立获取的AFM数据中识别出接触点。总之,我们的方法能够快速过滤低质量的AFM力曲线,并以最低的误差水平自动处理原始压痕数据,从而实现具有更高精度和可重复性的高通量分析。