Single Molecule Analysis Group, Department of Chemistry and Center for RNA Biomedicine, The University of Michigan, Ann Arbor, MI, USA.
Bristol-Myers Squibb Company, New Brunswick, NJ, USA.
Nat Commun. 2020 Nov 17;11(1):5833. doi: 10.1038/s41467-020-19673-1.
Traces from single-molecule fluorescence microscopy (SMFM) experiments exhibit photophysical artifacts that typically necessitate human expert screening, which is time-consuming and introduces potential for user-dependent expectation bias. Here, we use deep learning to develop a rapid, automatic SMFM trace selector, termed AutoSiM, that improves the sensitivity and specificity of an assay for a DNA point mutation based on single-molecule recognition through equilibrium Poisson sampling (SiMREPS). The improved performance of AutoSiM is based on accepting both more true positives and fewer false positives than the conventional approach of hidden Markov modeling (HMM) followed by hard thresholding. As a second application, the selector is used for automated screening of single-molecule Förster resonance energy transfer (smFRET) data to identify high-quality traces for further analysis, and achieves ~90% concordance with manual selection while requiring less processing time. Finally, we show that AutoSiM can be adapted readily to novel datasets, requiring only modest Transfer Learning.
从单分子荧光显微镜(SMFM)实验中得到的轨迹表现出光物理伪影,通常需要人工专家筛选,这既耗时又容易引入用户依赖的预期偏差。在这里,我们使用深度学习开发了一种快速、自动的 SMFM 轨迹选择器,称为 AutoSiM,它通过平衡泊松采样(SiMREPS)提高了基于单分子识别的 DNA 点突变检测的灵敏度和特异性。AutoSiM 的改进性能基于接受比传统的隐马尔可夫模型(HMM)加硬阈值处理方法更多的真阳性和更少的假阳性。作为第二个应用,该选择器用于自动筛选单分子Förster 共振能量转移(smFRET)数据,以识别用于进一步分析的高质量轨迹,并实现与手动选择约 90%的一致性,同时需要更少的处理时间。最后,我们表明 AutoSiM 可以很容易地适应新的数据集,只需要适度的迁移学习。